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Register Now Save the Date


REGISTRATION

Registration is open! What’s included? The cost of registration includes all
sessions, access to the expo hall, an off-site networking event, and select
meals. Training sessions are available at an additional cost to registration.

Read more
 * Agenda
 * Registration
 * Sponsors
 * Venue
 * Health and Safety
 * FAQs
   
 * Business Purpose
 * Training Information


AGENDA

Browse the agenda and sessions for GraphConnect 2022. Registered attendees will
receive instructions to select their sessions in the coming weeks.

Learn more about the venue


 * MONDAY, JUNE 6, 2022
   
   Training Sessions & Welcome Reception


 * TUESDAY, JUNE 7, 2022
   
   General Session, Full-Length Sessions, Expo Hall Hours & Networking Event


 * WEDNESDAY, JUNE 8, 2022
   
   Luminary Speaker, Full-Length Sessions, Expo Hall Hours & Closing Keynote


SESSIONS

Take your pick of sessions and dig deep into the graph topics that interest you
most!

Speakers from around the industry are offering talks at all levels of detail:
quick, 15-minute lightning sessions that introduce a concept, full, 40-minute
sessions that put unique skills and strategies to work, and hands-on, 85-minute
workshops that give participants real experience and live guidance.



June 7-8 at GraphConnect


SESSION DESCRIPTIONS

Neo4j Presenters Presenting Companies Reset
Building Digital Twins with GCP and Neo4j

Speaker: Christopher Upkes, Neo4j

Session type: Full Length

Abstract: This presentation will outline the GCP-approved, event-driven
architecture and example graph design patterns designed for and used by
manufacturing across numerous verticals. You'll learn about best practices
defined by both GCP and Neo4j for designing, deploying, and managing enterprise
manufacturing digital twin implementations. You'll also get details related to
the design and deployment of GCP event-driven discrete manufacturing digital
twin analysis platforms that include graph analytics for discrete manufacturing
hosted by Neo4j. Also covered in the pressentation are details including the
deployment and use of GCP architecture and the specific review of specific
design patterns related to discrete manufacturing. By the end of this
presentation, you'll have a basic understanding of how to apply the technology
and expertise of GCP, including Neo4j, to drastically improve the analysis
currently available to the manufacturing world.

A Universe of Knowledge Graphs

Speakers:

 * • Dr. Maya Natarajan, Senior Director, Product Marketing, Neo4j
 * • Dr. Jesús Barrasa, Senior Director, Sales Engineering EMEA, Neo4j

Session type: Full Length

Abstract: Knowledge graphs are driving industry disruption and business
transformation by bringing together previously disparate data, using connections
for superior decision support, and adding context to AI applications. In this
session, we'll walk you through the fundamental elements of knowledge graphs
based on our recent customer experiences and successes. The majority of Neo4j
knowledge graph use cases fall on a spectrum of the three major categories of
data management, data discovery, and data analytics. Neo4j characterizes these
as Data Assurance Knowledge Graphs for data management, Insight Knowledge Graphs
for data discovery, and Decisioning Knowledge Graphs for data analytics. Each of
these use cases will be discussed in detail using customer success stories –
Data Assurance Knowledge Graphs at UBS for increased trust and explainability,
Insight Knowledge Graphs at AirBnB for complete visibility and improved
productivity, and Decisioning Knowledge Graphs at Boston Scientific for better
predictions and more breakthroughs – to showcase knowledge graphs for contextual
AI. Attend this session to learn how leading companies are using knowledge
graphs and walk away with practical insights on how to build knowledge graphs.

Get Started with the Most Advanced Edition Yet of Neo4j Graph Data Science

Speaker: Dr. Alicia Frame, Senior Director of Product Management, Data Science,
Neo4j

Session type: Full Length

Abstract: In this session, we'll cover the features of graph data science – what
it is, how it solves your most daunting business problems, and how Neo4j helps.
You'll learn how Neo4j's leading and robust Graph Data Science platform offering
solves the pain of scaling and productionizing your workflows, while also making
it super simple to get started. Additionally, to give you a more complete
picture of the possibilities of graph data science, we'll walk through a few
customer success stories that highlight how it has made a difference.

Scaling into the Billions of Nodes with Neo4j Graph Data Science

Speaker: Martin Junghanns, Senior Software Engineer, Neo4j

Session type: Full Length

Abstract: Dive into the internals of Neo4j Graph Data Science and see how to
achieve the scale you need. You'll learn the implementation choices available
for Neo4j Graph Data Science that enable customers to run graph algorithms on
large-scale graphs containing billions of nodes and relationships. Additionally,
we'll take a look at our compressed graph representations and a selected set of
algorithms implementations that make it possible. The talk will also contain a
demo, which will show how GDS allows customers to import large-scale data and
get algorithm results within minutes.

Connecting Neo4j Graph Data Science into Your Data Ecosystem and Workflows

Speakers:

 * • Zach Blumenfeld, Data Science Product Specialist, Neo4j

Session type: Full Length

Abstract: One of the most important aspects of a data science tool is how easy
it is to integrate with other tools. For Neo4j Graph Data Science, ecosystem
integrations is a core product principle, and we always strive to "meet data
scientists where they are." Join us to learn about our data science connectors,
integrations, and partnerships, including best practices and reference
architecture. Start powering your insights with graph data science today!

Bootstrapping Your Graph Project with Neo4j Data Importer and Browser

Speakers:

 * • Anurag Tandon, Senior Director, Product Management, Neo4j
 * • Junxiang Chen, Engineering, Neo4j

Session type: Full Length

Abstract: In this talk, we take a look at how you can use Neo4j’s developer
tools – Data Importer and Browser – to get you up and running quickly on your
next project.

New! Neo4j AuraDS: The Fastest Way to Get Started with Data Science in the Cloud

Speaker: Luke Gannon, Product Manager, Neo4j

Session type: Full Length

Abstract: Want to run graph analytics and machine learning with zero
administrative overhead? Neo4j AuraDS is a fully managed SaaS offering,
providing the easiest way for data scientists to get started in the cloud.

Getting Started with Neo4j on AWS

Speaker: Mark Baker, Product Manager, Neo4j

Session type: Full Length

Abstract: There are over 200 different AMIs available in AWS from sources such
as Community AMIs and AWS Marketplace that purport to provide a Neo4j graph
database. In addition to Neo4j Enterprise and Neo4j Community editions, there
are container images and Helm charts, as well as AuraDB Enterprise, Neo4j's
fully managed graph database platform. Add the 100+ AWS services that you might
want to integrate with Neo4j , the almost infinite AWS configuration options for
storage, networking, instance selection, and security, and a developer easily
becomes overloaded with choice. In this session, we'll look at the different
ways to get started with Neo4j in AWS so you can get the best setup to meet your
personal, business, and budgetary needs. We will also look at getting data into
Neo4j on AWS so you quickly get productive with your graph model.

Interpreting the Results of Community Detection Algorithms

Speaker: Nathan Smith, Senior Data Scientist, Neo4j

Session type: Full Length

Abstract: Congratulations, your Graph Data Science Community Detection Algorithm
has completed successfully! Now, how should you interpret the results and
explain them to your colleagues? In this session, you'll learn how statistics
such as modularity, conductance, and clustering coefficient can help you decide
if your communities are cohesive enough to be meaningful. They can also help you
choose the most meaningful result from the output of multiple differently
configured Community Detection Algorithm runs. We will also look at ways to
describe the communities that emerge from Community Detection Algorithms, which
includes looking at the distributions of property values and finding the nodes
that are most central within each community.

Real-World Graphs in Manufacturing and Automotive

Speaker: Mark Quinsland, Senior Field Engineer, Neo4j

Session type: Full Length

Abstract: Software-defined vehicles are a subset of Digital Twins that are used
by many auto OEMs, Tier-1 Suppliers, and other manufacturers to help deal with
supply chain disruption, product management, warranty issues, customer-360, and
validation / testing. We will explore several real-world use cases that take
advantage of Neo4j's ability to join many disparate types of data to add the
context needed for decision makers.

Communicating Complex Results to Customers Using Graph Data Science… When You
Don't Have a Front-End Developer on Your Team

Speakers:

 * • Dr. Dave Rench McCauley, Senior Director, Data Science and Machine
   Learning, Ernst & Young - Quantitative Scientific Solutions
 * • Dr. Michael Smith, Lead Scientist, Quantitative Scientific Solutions

Session type: Full Length

Abstract: In technical consulting, we help clients by building them cutting-edge
tools to solve seemingly intractable problems. However, setting up
infrastructure and building models is only part of the solution when it comes to
providing value to customers. Visualization is the last-mile element that can
make a client happy or leave them dissatisfied. In this talk, we will cover how
we used Neo4j, Graph Data Science, advanced natural language processing, and the
new Neodash visualization tool to track flows of scientific knowledge over time
for our client, the U.S. National Science Foundation. We’ll discuss how we used
language embeddings and automated clustering optimization to model the language
of scientific articles (the “content”) and their positions within a citation
network (the “context”) to model the evolution of ideas over time, at a scale
that would be impossible with other tools. We will also cover how our
collaboration with Neo4j, and specifically with the developer of the Neodash
tool, enabled us to add the final ingredient of a successful project for this
client: a front-end that allowed us to tell them an interesting and useful story
while also providing them with a tool to realize the utility for their own work.

Enter the Matrix: Synthesising a Logical Digital Twin in Neo4j

Speaker: Spencer Shiotani, Principal Cognitive Software Engineer, Northrop
Grumman

Session type: Full Length

Abstract: Maximizing efficiency in facility planning is difficult because
buildings are complex systems. Tracking components such as electrical systems,
security, network and data, people, seats, doors, etc., can become an
insurmountable task. We propose a novel strategy to grapple with this inherent
complexity through the utilization of graph-based Digital Twins in Neo4j.
Producing a Digital Twin involves many different data sources, including
architectural diagrams, HR data, and LiDAR scans to capture 3D representations
of building interiors. In this talk, we'll demonstrate how Northrop Grumman
creates and implements these Digital Twins to orient new team members, optimize
seating assignments, communicate changes to the employee base, track resource
usage, coordinate large-scale moves, and analyze the delta between what was
planned and what actually exists, thus making a historically underutilized
resource more accessible and manageable.

Cybersecurity Automation with OSCAL and Neo4j

Speaker: Alexander Koderman, Senior Developer, SerNet, Inc.

Session type: Full Length

Abstract: State-sponsored and state-tolerated cyber attacks continue to rise.
Governments and regulators also continue to respond. Companies are facing an
increasing number of compliance requirements and controls. The result is that
assessment cycles are becoming faster and control satisfaction needs to be
verifiable with high granularity down to single control statements for
individual systems or even system components. The U.S. National Institute of
Standards and Technology (NIST) has developed OSCAL, a machine-readable language
for cybersecurity control implementation and assessment. The next step is to
develop implementations to aid cybersecurity practitioners in their daily tasks,
such as: determining control prerequisites, finding related controls, tailoring
controls to the organization,and assessing control implementation. We
demonstrate "OSCL4NEO4J" – a set of open source scripts and REST API that can be
used to import and work with OSCAL data in Neo4j to solve practical problems
faced by cybersecurity practitioners every day. The open source project that we
present has already been recognized by NIST.gov and is referenced from their
official OSCAL repository.

Neo4j Drivers Best Practices

Speaker: M. David Allen, Senior Director of Developer Relations, Neo4j

Session type: Full Length

Abstract: Neo4j & Neo4j AuraDB support Python, JavaScript, Java, Go, and .NET.
In this session, we’ll cover some best practices for using Neo4j drivers in your
application. We'll provide worked code examples of the most common things people
try to do, and good patterns that will making coding with Neo4j easier. We will
also dive into how querying a Neo4j database works, how Neo4j clusters operate,
how queries are sent through the system, and what's happening under the hood of
how drivers work.

XRP Ledger Blockchain ETL with Neo4j

Speaker: Thomas Silkjaer, Head of Analytics and Compliance, XRP Ledger
Foundation

Session type: Full Length

Abstract: A story of ups, downs, learnings, and findings from working with
representing the XRP Ledger in Neo4j. What started as a hobby project in 2018 to
represent and analyze payments only, expanded in 2019 into a full history graph
representation of the XRP Ledger blockchain that has been running for more than
nine years with 2.2 billion transactions, generating more than 1.5 billion
ledger objects. In 2022, the data model is updated to better scale with
increased XRP Ledger use, reduce the storage footprint more than 50 percent by
applying learning from the past years to remove redundant properties, move
unused data to JSON strings that can be parsed with APOC as needed, and to
reflect new possibilities with Neo4j 4.x. This talk also showcases how the
database, that is kept in sync with the XRP Ledger +/- 10 seconds, is used in
the fight against criminal finances by “following the money,” and how it is used
to stay ahead of money laundering when criminals move funds quickly around prior
to moving it to legitimate exchanges.

Analyzing a 55B-Entity Graph: Combinatorial Complexity and Business Decisions

Speaker: Dr. Janez Ales, Senior Research Scientist, Mathematician, Data &
Algorithms, Knowledge Architecture & Innovation, BASF

Session type: Full Length

Abstract: World's Journal and Patent Knowledge Graph on 55 billion entities
offers endless opportunities for traversals at scale, with challenges in data
size and traversal execution times. However, todays limits of available cloud
hardware speeds can be reached with algorithms on much smaller data sets due to
combinatorial complexity. We discuss combinatorial tasks and challenges hidden
in many industry data sets and decision problems, and highlight differences and
benefits of graph database direct access via Cypher tools vs. language APIs on
various use cases.

Exploring the Patient Journey of a Chronic Disease by Using Graph Analysis

Speakers:

 * • Danai Eleni Aristeridou, Data Scientist, Pfizer, Inc.
 * • Anastasia Karatzia, Data Scientist, Pfizer, Inc.

Session type: Full Length

Abstract: Harnessing healthcare data and unraveling the steps until the
diagnosis of a chronic disease can be a challenging task. Revealing the path to
a chronic condition could potentially lead to the early diagnosis, support
treatment adherence, and adverse events mitigation. Every patient follows a
unique path until the diagnosis of the target disease. Electronic health records
and claims contain information about diagnoses, prescriptions, procedures,
hospital admissions, and so on. Graph theory could capture relationships between
the various data records, facilitate the identification of common paths between
patients, and point out key comorbidities. In this session, we present a
framework for the mapping of the patient journey by applying graph theory. The
target is to better understand the progression of a chronic disease and reveal
concealed connections between diseases that may not be visible with traditional
visualization and predictive modeling techniques. Finally, we present how this
framework can be transformed into a tool to quickly provide insights and
recommendations to the decision makers.

Pouring Coffee Into the Matrix: Building Java Applications on Neo4j

Speaker: Jennifer Reif, Developer Advocate, Neo4j

Session type: Full Length

Abstract: Many of us have built applications for traditional data structures
(like relational database tables), but is it different for graph data stores? Do
developers need to retool and relearn? In this session, we'll cover a brief
introduction to graphs, walk you through writing a typical Java application with
Spring, and connect it to Neo4j. From interacting with the graph data from the
application to deploying to the cloud, you'll see the process from start to
finish. You'll also learn how to tackle pitfalls and pick up tips along the way,
as well as explore the ways we can build, deploy, and connect applications to
the database. This will come alive through a live demo, as we see the results of
our efforts. Come to this session to build your business applications for graph
data!

99.9999% (Seriously, that Many 9's) Uptime at Adobe: How We Got There with Neo4j

Speakers:

 * • Daniel Kang, Senior DevOPs Engineer, Adobe
 * • Gabriel Tucker, SR Data Architect, Adobe
 * • Daniel Vilajeti, DevOps Engineer, Adobe

Session type: Full Length

Abstract: Did you ever think you could setup your Casual Cluster to be
self-healing and auto recoverable in the cloud? Would you like to know that your
backups will restore without error and that your data is consistent every day?
Come to this talk to learn more about running a stress-free Neo4j Causal
Cluster. We'll also cover automated backups, daily restore testing / data
consistency check, autoscaling groups, Flatcar OS, Docker implementation,
Ansible, Terraform, ELB endpoints for leader, followers, and read replicas, ENI
for persistent IP, as well as how to select the right instance types, gotchas,
and the benefits of upgrading to Neo4j 4.4.

Application of Graph Analytics for Identification of Risk Signature Profiles in
Health Care Claims

Speakers:

 * • Sal Aguinaga, Master Data Scientist, Deloitte | AI Center of Excellence
 * • Dr. Sanmitra Bhattacharya, AVP, Data Science, Deloitte | AI Center of
   Excellence

Session type: Full Length

Abstract: Each year billions of insurance claims are submitted by healthcare
providers. U.S. healthcare spending continues to grow over five percent
year-over-year and accounts for approximately 20 percent of the Gross Domestic
Product. The National Health Care Anti-Fraud Association conservatively
estimates healthcare fraud at three percent of total health care costs, which in
2019 represented over a hundred billion dollars in fraud. The Centers for
Medicare & Medicaid Services and other regulators mandate fraud, waste, and
abuse (FWA) surveillance by payors of healthcare claims. Screening providers
based on their risk profiles across various dimensions of FWA is a key component
of such surveillance. Our project identifies providers sharing common risk
signatures with other providers – uncovering pairwise similarity using
graph-theoretic algorithms and graph neural network (GNN) methods. This
two-pronged solution works with Neo4j’s graph engine at its core by applying
Graph Data Science and serving quality graph datasets to external
state-of-the-science GNN training workflows. The objective of these two
approaches is to produce complementary groupings of providers with common risk
signatures. Our analyses reveal the likelihood of hidden or unknown
relationships between providers across various FWA dimensions.

Adversarial Risk Analysis Using Knowledge Graphs

Speaker: Gal Engelberg, Research Associate Principal, Accenture

Session type: Full Length

Abstract: Today, enterprises in general and industrial manufacturers in
particular are increasingly connecting to external networks. As such, industrial
processes that were once isolated from the open internet network are now more
vulnerable to external cyber attacks. As the frequency and resulting impact of
these vulnerabilities increases, there is a need to prioritize and mitigate
risks in order of importance to the business. Unlike common risk assessment
tools that prioritize risks based on their potential damage to the
infrastructure layer alone, we add the business context to the equation. Using
Neo4j, we present a knowledge-graph-driven approach to address the above
challenges. Our work will be demonstrated over a vehicle assembly smart
manufacturing environment. First, we present the notion of process-aware
attack-graphs: a semantic representation of the factory infrastructure and
industrial-process layers. We base the approach on the usage of graph data
science algorithms to quantify the cybersecurity risk based on potential
adversary behaviors. Then, map the risk from the infrastructure layer to the
process layer. And lastly, to identify the risk root cause and recommend, which
issues to address first accordingly. This session will be focused on the usage
of Neo4j Graph Data Science algorithms over knowledge graphs while triaging
business and cybersecurity.

Real-Time Data Updates for Neo4j Using GraphQL Subscriptions

Speaker:

 * • Andres Ortiz, Engineering, Neo4j
 * • Darrell Warde, Engineering, Neo4j

Session type: Full Length

Abstract: Join Darrell and Andrés from the GraphQL Team at Neo4j as they talk
about one of the newest features of the Neo4j GraphQL Library: GraphQL
Subscriptions. Using this new feature, GraphQL API consumers can listen to data
changes in real time, which happen in Neo4j via the GraphQL Library. Following a
high-level overview of the Neo4j GraphQL Library, they will demonstrate the new
Subscriptions feature. You can also expect a deep dive of how it works under the
hood.

Boost Your Neo4j with User-Defined Procedures

Speaker: Michael Hunger, Senior Director, User Innovation, Neo4j

Session type: Full Length

Abstract: Cypher is a great, powerful query language, enabling you to quickly
get the most from your graph queries. For some, squeezing out every bit of
performance is necessary, and you wish you had the capability to do so packed
into a reusable LEGO block for your queries. In this session, you'll learn from
practical examples of how to build user-defined procedures, functions, and
aggregation functions with just a few lines of Java code. We'll dive into how to
efficiently use the Java API and what to watch out for to ensure you get the
most out of your work. This will help you to build your own extensions to Neo4j
or understand better how the existing procedures and functions work under the
hood.

Making the Connection Between GraphQL and Your Neo4j Graph Database

Speaker: Darrell Warde, Engineering, Neo4j

Session type: Lightning Talk

Abstract: With Neo4j as the graph database, the GraphQL Library makes it simple
for applications to have application data treated as a graph natively from the
front-end all the way to storage, avoiding duplicate schema work and ensuring
flawless integration between front-end and backend developers. In this session,
we'll walk through how to use GraphQL with your existing Neo4j database.

Fun with Fabric in 15

Speaker: Eric Monk, Principal Solutions Engineer, Neo4j

Session type: Lightning Talk

Abstract: New to Fabric? Join Eric Monk for a quick introduction on how to get
started with Fabric. The session will briefly breakdown important Fabric
concepts and then show you the steps of how to configure the Fabric database,
setup users, and perform a Cypher query that queries an Aura database and a
local database using Fabric.

Using Connected Data and Graph Technology to Enhance Machine Learning and
Artificial Intelligence

Speaker: Cynthia Femano, Senior Solutions Architect, Neo4j

Session type: Lightning Talk

Abstract: Graph databases and graph data science tools bring the connections and
context needed to make AI / ML algorithms work better, revealing insights
embedded deep within your data. In today's world of highly connected data, the
use of graph algorithms to supplement traditional data science methods can help
you uncover knowledge that may be overlooked otherwise. This presentation will
introduce you to the topic of Neo4j Graph Data Science at a high level, why it
deserves your attention, and will leave you wanting to learn more. This is a
wave you most definitely want to jump on... don't be left behind!

Visualizing Insights with Bloom and Graph Data Science

Speaker: Yi Ren Sum, Software Engineer, Neo4j

Session type: Lightning Talk

Abstract: Data represented as graphs usually contain some wonderful stories.
Using graph data science, one can calculate interesting insights about this
data. Without the final step of conveying these insights, however, the true
color of data is often under-appreciated. In this lightning talk, we'll show you
some ways to visualize data using Neo4j Bloom and Neo4j Graph Data Science.

Why We Decided on Transforming Our Operational Database from Firebase to Neo4j
AuraDB

Speakers:

 * • Arthur Zverko, Software Engineering Team Lead, EquityBee
 * • Gal Bello, Senior Field Engineer, Neo4j

Session type: Lightning Talk

Abstract: EquityBee is a growing startup, and as such, scaling up and expansion
is a super crucial step for their business success. The unique use case has
placed a harsh demand for the ability to expand and scale. The decision was to
transit to a graph database and present a custom ORM within it. The ORM was
originally built to define all schemas, relationships, and data validations.
This transition was made with harsh performance requirements, and that is why
EquityBee aimed to keep the NodeJS codebase clean and performant – while making
the dev team’s life easier – by using a custom-built Query Builder to enable
developers to code in a JS object manner. Presented by EquityBee's Founder and
CTO, this session will focus on their unique use case and how they have scaled
their operational database from Firebase to Neo4j AuraDB.

Using Graph Analytics to Solve Cloud Security Problems

Speaker: Krishnan Narayan, Distingushed Engineer, Palo Alto Networks

Session type: Lightning Talk

Abstract: Prisma Cloud from Palo Alto Networks is a leader in cloud security,
securing over 1B+ assets and providing the most comprehensive enterprise
security solution for cloud users. One of the unique challenges with security
posture detection in a deeply connected ecosystem like the public clouds of AWS,
Azure, GCP, etc. is to be able to actually use these relationships to uncover
advanced threats to the infrastructure that may otherwise go completely
unnoticed. Join Krishnan Narayan for a quick overview of how PaloAlto Networks
apply graph theory to solve some of the most advanced challenges around security
posture detection and response.

Using Graphs to Take Down Fraudsters in Real Time

Speaker: Dr. Edgar Osuna, Chief Data & Analytica Officer, Todo1

Session type: Lightning Talk

Abstract: Digital transformation in the financial industry has been profound in
the last decade and continues to accelerate. Unfortunately, fraudsters have also
modernized and are exploiting the advantages of the digital landscape to make a
profit. This presentation covers the success story of a graph-based machine
learning application built to fight digital fraud in real time that is currently
helping a wide array of financial institutions.

Exploring the GraphConnect 2022 Audience as a Graph

Speakers:

 * • Alexander Erdl, Senior Director Marketing Manager, Neo4j
 * • Michael Hunger, Senior Director, User Innovation , Neo4j

Session type: Lightning Talk

Abstract: Ever wondered about the background of the audience around you at a
conference? At GraphConnect 2022, we will show you! At registration every
participant is sharing some details about themselves and during our session we
will showcase where people are from, what favorite programming languages they
use, and more. We'll also import the agenda of the conference into Neo4j and
make it accessible in Neo4j Bloom. In this session, we want to showcase how easy
it is to go from model to graph. We'll start with a concept, with the Neo4j Data
Importer, and then load data into Neo4j and explore this data in Neo4j AuraDB
Free and Neo4j Bloom. By including data from the audience, we make the results
more tangible and interesting for everybody. We can host the graph afterwards on
AuraDB for everybody to explore (at least the schedule part).

Applying Network Analytics in KYC

Speakers:

 * • Erik Bijl, Data Scientist, Rabobank
 * • Salomon Tetelepta, Data Scientist, Rabobank

Session type: Lightning Talk

Abstract: As Rabobank, we are striving to apply existing risk assessment with
insights from network analytics. As a first step, we launched a project aiming
at detection of clients participating in money laundering schemes. This project
will be the main topic of our presentation. In this project, the central
question was how to determine whether a client is actively participating in
money laundering by using network analytics. The network was captured by
extracting network features. These features were a result of running a variety
of graph queries and Algorithms on top of our graph model. In this presentation,
we will discuss how we build up the graph data model, how we apply graph
queries, and which algorithms can be run on these graphs. Sharing our lessons
learned, we hope to give you valuable insights on this topic.

Discovery and Insights with Graph Visualization Using Neo4j Bloom

Speakers:

 * • Jeff Gagnon, Product Manager, Neo4j
 * • Sebastian Wictorin, Engineering, Neo4j

Session type: Lightning Talk

Abstract: Deriving insights from data is a naturally inquisitive process
grounded in exploration. Neo4j Bloom is graph data visualization software built
for investigation, exploration, and collaboration without requiring any coding
experience. Join Jeff and Sebastian as they show how Bloom’s easy-to-use,
illustrative design and powerful graph analytics help you to paint a beautiful
picture of what your data is telling you.

Mastering Neo4j with Go and GoGM

Speakers:

 * • Florent Biville, Developer, Neo4j
 * • Eric Solender, CTO, MindStand
 * • Nikita Wootten, Chief Data Scientist, MindStand

Session type: Workshop

Abstract: In this session, learn the different ways to interact with Neo4j from
Go. We will go over usage of the official Go driver, including connecting to the
database, running queries, and managing transactions. We'll then explain how
using an Object Graph Mapper (aka OGM) like GoGM can simplify the process of
interacting with Neo4j.

Hands-On with SwiftUI, GraphQL, and Neo4j AuraDB

Speaker: William Lyon, Developer Advocate, Neo4j

Session type: Workshop

Abstract: Given the importance of supply chains and the global maritime trade,
you would think that modern technologies make it easy for a ship owner to create
a route for a crude oil tanker or cargo vessel. Wrong! Most routing services
produce a default route that is the shortest distance between two ports. But the
shortest distance might not be the safest (can you say pirates? storms?), or the
most efficient in terms of GHG emissions. Furthermore, most routing services use
unstable infrastructure, struggle with big data feeds, and offer limited
visualization options. For these reasons, OrbitMI decided to build its own
routing service solution. To build this world-class, enterprise-grade service,
we needed a graph that could process large volumes of data, provide reliable
storage, serve and support spatial – in addition to linear and tabular datasets
– delivered in real time (and at scale), as well as a library of pathfinding
algorithms. Our goal was to develop a routing service to give ship owners and
managers (really anyone in the industry), the ability to create and select the
smartest route for their vessels. Routes can be optimized for distance, safety,
speed, GHG emissions, weather, or revenue, among others.

3 Ways You Can Use Ontologies in Neo4j

Speaker: Dr. Jesús Barrasa, Senior Director Sales Engineering EMEA, Neo4j

Session type: Workshop

Abstract: This workshop is a hands-on lab with an ambitious goal: show three
practical examples of using ontologies in Neo4j, step by step, in a way that
attendees can follow and understand or even join and code along (on their local
Neo4j or in a Sandbox). The three examples are as follows. Data import: Use an
ontology as the target model for the graph that your ETL pipeline will build in
Neo4j. Model validation: Use an ontology to define constraints on the shape of
your graph and create a data quality dashboard reporting on the violations of
those constraints in your Neo4j graph. Semantic search: Use the ontology to
semantically annotate a dataset and implement semantic search and semantic
similarity using Cypher over your data and the ontology. For this workshop, we
will use public ontologies in different domains (FIBO, Schema.org, ESCO...) and
open datasets that will be shared day of with attendees.

Hands-On Graph Drawing and Modeling with Arrows.app

Speakers:

 * • Alistair Jones, Director of Engineering, Neo4j
 * • Irfan Nuri Karaca, Staff Software Engineer, Neo4j

Session type: Workshop

Abstract: Learn how to draw graphs using the arrows.app tool from Neo4j Labs. In
this hands-on session, you'll learn the quickest way to create a simple graph in
your web browser and then use this graph to develop a data model for your graph
application. We'll run through a series of interactive exercises that will teach
you how to draw simple graphs, import text, import from a spreadsheet style and
format, share graphs, export images, develop a data model, use powerful editing
features, refactor graphs, import into a Neo4j graph database, and run
algorithms on imported data.

From Idea to Implementation: Introducing Neo4j Into a Forensic Analytics Team

Speaker:

 * • Thomas Larsen, Forensic Analytics Manager, ABB Inc

Session type: Lightning Talk

Abstract: Discover how a newly-formed Forensic Analytics team at ABB got started
on their graph journey. This session will share how the team moved from a vague
idea to a critical tool used daily by its members. You’ll learn how the team was
able to seamlessly integrate the tool into their existing data pipeline without
additional, burdensome overhead.

Adeo DiY Knowledge Graph

Speakers:

 * • Gaëtan Belbéoc'h, Head of Product - Digital Experience Platform, Adeo
 * • Charles Gouwy, Product Owner Knowledge Graph for Publication, Adeo

Session type: Full Length Session

Abstract: This session will explore how Adeo improves the experience of its
e-commerce sites thanks to the knowledge graph. You’ll learn about the design of
the semantic digital platform developed by Adeo, what its main components are,
especially the Neo4j knowledge graph, and how they contribute to improving the
customer experience of the brand's e-commerce sites.

Building an Authorization Solution for Microservices Using Neo4j and OPA

Speakers:

 * • Ido Faran, Software Team Leader, AppsFlyer
 * • Olga Kogan, Software Architect, AppsFlyer

Session type: Workshop

Abstract: Join us to learn how we built an innovative centralized policy-based
authorization solution for microservices architecture using Neo4j and OPA (open
policy agent). We will explore the advantages and challenges of having a shared
repository for entities and an authorization data model. Our business-critical
domain model, which provides the context to all AppsFlyer data analytics
products, is managed in Neo4j and reflects the entire graph of relationships
between our customers and partners. In addition, we use Neo4j as the control
plane repository of the authorization service. Managing permissions
configuration and entities as part of the same graph allows us to easily manage
the lifecycle dependencies between the two. Our innovative authorization
solution, on top of Neo4j, allows us to easily change the authorization logic
when new functionality is added or when data sharing policies or privacy
regulations change. We help more than 80K customers by providing advanced
analytics solutions and products for marketing teams and application owners. Our
customers include global brands such as Coca-Cola, Nike, Pinterest, Visa and
more. We also integrate with over 9K partners, including media partners,
customer engagement platforms, campaign management platforms and more.

Modeling Physical Systems in the Metaverse Easily with Graphs

Speakers:

 * • Mike Morley, Director AI/ML Technology, Arcurve
 * • Peter Tunkis, Lead Data Scientist, Arcurve

Session type: Workshop

Abstract: In this presentation, we will demonstrate how graph database
technology and 3D modeling software can be utilized to address a wide variety of
business questions and challenges. We take a basic example of modeling a
physical system (engineering design model for building ventilation) using Neo4j
and Graph Data Science to project a visualization of the physical model into a
AR/VR-style environment and help users track and predict contaminate transport.
This approach is designed to be versatile and can be applied across contexts.

Graph Application for AI Tutor: Knowledge Tracing Prediction and Learner
Patterns

Speakers:

 * • Aaron Moss, Sr Data Scientist, Ascend Learning
 * • Nathan Smith, Sr Data Scientist, Neo4j

Session type: Workshop

Abstract: Within the EdTech domain, the use of AI to predict and personalize
learning has been a growing focus. In 2018, Riiid Labs released the first-ever
EdNet. “EdNet is composed of 131,441,538 interactions collected from 784,309
students using Santa since 2017." Also, in 2020, Riiid Labs sponsored a Kaggle
competition focused on “Knowledge Tracing,” the modeling of student knowledge
over time using the EdNet database. The winning solution achieved an AUC .82 on
a private leaderboard using Transformer + RNN. In this session, we will explore
what graph can achieve in performance and new applications in the EdTech
industry. Specifically, we will explore the EdNet database and validate
graph-based approaches within the Kaggle competition to understand if graph
structure can enhance performance and if by-products of database, unique to
graph, will showcase insights for application in areas such as learner deficit
identification and/or question biases.

Leveraging Neo4j to Create a Sustainable Partnership-Based Metagenomic Supply
Chain

Speaker: Saif Ur-Rehman, Senior Data Engineer, Basecamp Research

Session type: Lightning Talk

Abstract: At Basecamp Research, we believe that biodiversity is our greatest
asset, and that it should be valued as such. Through biotechnology, biodiversity
offers the first credible chance to wean our world from petrochemistry towards a
cleaner, biochemistry-based future. We are building a bridge between
biodiversity and the bioeconomy – transforming the connection between these
communities. By doing this, we are creating a new, nature-based value chain that
simultaneously promotes protection of the Earth’s wild places and provides the
building blocks for a cleaner, healthier, and more sustainable future for all.
We use Neo4j to draw links between the genomic and taxonomic contents of
samples, collected from around the world, to allow discovery of commercially
valuable products for the bioeconomy that are identified through our ML pipeline
and graph algorithms. With Neo4j, we help ensure that the benefits from these
products flow back to the stakeholder communities and guardians of biodiversity.

Lobbygraph: Delving Into the Graph of Germany's New Lobby Register

Speaker: Julian Schibberges, DIrector, Bernstein Analytics GmbH

Session type: Full Length Session

Abstract: Understanding political interests is key in a democratic society and
graphs help us understand those interests better. Based on the newly-introduced
lobby register of Germany's federal parliament, we show how structuring data as
a graph yields new insights into the networks of political advocacy. Using Neo4j
Graph Data Science we dive even deeper, identifying hidden actors and using link
prediction to connect lobbyists with parliamentary initiatives. "

Incident Root Cause Analysis with Graph

Speaker:

 * • Cyrine Kaabachi, Senior Data Scientist, BNPP

Session type: Full Length Session

Abstract: Banking information systems process various types of transactions and
produce heterogeneous data. Such IT data can be used to extract insights and
help IT Operations in their daily activities. It is a major need to build
data-driven solutions for information system management and support IT Ops.
Large scale industries have critical issues and incidents that need to be
resolved in a timely manner. Our goal is to provide data science based solutions
and ITOps tools to speed up incident root cause analysis and risk assessment. To
achieve this, we combine graph techniques and embeddings on unstructured IT data
to make complex correlations. Our final solution is based on a recommendation
system using graph features to speed up critical issues investigations. This
talk shares a use case based on real-world application of graph data science to
address IT and business goals.

The Customer Journey Is a Graph

Speakers:

 * • Matt Butler, Co-Founder, Bonsai
 * • Corey Lanum, Chief Product Evangelist, Cambridge Intelligence

Session type: Full Length Session

Abstract: Most marketing analytics tools focus on aggregate views of customer
behavior: a webpage had 1000 unique visitors, an email was opened 200 times, a
campaign generated 50 new leads. But any marketer will tell you that modern
customer behavior is rarely linear. Aggregated analysis can never tell the full
story, because the customer journey isn’t a straightforward model – it’s a
graph. At Bonsai, we built a marketing analytics platform based on that
principle. Using Neo4j, it maps out a business’s touch points and plots the
varied paths between them. The Bonsai platform combines Neo4j Bloom and KeyLines
by Cambridge Intelligence. Marketers can visualize typical customer journeys and
analyze each interaction, its timing and sequence, to understand which links in
the chain add incremental value – and which need improving. In this session, we
will share our experience at Bonsai of building the platform on Neo4j Bloom and
KeyLines, and explain how modeling our data as a graph has transformed the way
marketers think about their customer journey. Corey Lanum of Cambridge
Intelligence will also demonstrate how graph visualization enhances the platform
by making complex customer data accessible and understandable to business users.

Knowledge Graphs for Pharma: Powered by Data & AI Using KG4P

Speaker:

 * • Sébastien Tourlet, Director, Data Science & Engineering, Cap Gemini

Session type: Full Length Session

Abstract: KG4P uses an integrated technological stack including Neo4j, Dataiku,
and Linkurious to build, refactor, exploit, and visualize a multi-source, life
science knowledge graph. This graph is used to identify biomarkers for multiple
myeloma. The Neo4j, Dataiku, and Linkurious Partnership as a product offers an
all-in-one technical stack to accelerate data-driven use cases and projects.
This versatile and agile solution eases the highlighting of hidden results and
opportunities (new drug targets, strong biomarkers, new indicators, best drug
responders, new collaborations, etc.). KG4P leverages data and insights and
breaks data silos using graph technology – an all-in-one technical stack to
cross data and generate operational insights.

Visualizing CI/CD - An Attacker's Perspective

Speaker: Leon Goldberg, Chief Architect, Cider Security

Session type: Full Length Session

Abstract: CI/CD environments and processes are increasingly becoming a key area
of focus for hackers and consequently, defenders as well. However, truly
visualizing the attack surface has become a complex engineering task as the
number of exploits and vulnerabilities grow daily. This talk will walk you
through the research performed to create an improved CI/CD graph model for
hackers and defenders to provide greater control and defense mechanisms for the
most central part of today's engineering organizations. There were many
engineering complexities involved when modeling the graph, but ultimately the
goal was to provide greater observability at scale, improved attack vector blast
radius estimations, more precise defense simulations, and easier discoverability
of potential attack vectors. Join us on the journey of modeling the graph to
learn how to protect and dramatically improve visibility into the many nodes and
edges of your most lucrative systems.

Telecomms Service Assurance & Service Fulfilment with Neo4j Graph Database

Speaker: Alvaro Oslé, Director of Architecture, Ciena - Blue Planet

Session type: Full Length Session

Abstract: Attend this session to learn about how Neo4j can be used to model
telecom networks, with a deeper focus on how to automate the network planning,
design, and service assurance functions.

From Relational to Graph: How Going Graph Revealed the Unknown

Speakers:

 * • Jason Schatz, Principal Software Development Engineer, CodeLogic
 * • Rob Vrooman, Principal Software Development Engineer, CodeLogic

Session type: Full Length Session

Abstract: Making informed development decisions requires a strong understanding
of the connections and complexity within and across your application landscape.
With software changing faster than ever, and dozens of applications to manage
within a single enterprise, it is often difficult to have a clear view of how
everything fits together. CodeLogic equips engineers with the most comprehensive
software dependency data available, combining binary and runtime scanning to
create a complete graph of an application’s structure. In this session, you will
learn how CodeLogic utilizes Neo4j and CypherQL to capture and analyze data
achieved through application profiling, and how their data model visually mimics
the source code itself. Jason Schatz (Principal Software Development Engineer,
CodeLogic) and Rob Vrooman (Principal Software Development Engineer, CodeLogic)
team up to discuss how moving from a relational database to a Neo4j graph
database gave them the ability to visualize and distill complex codebases
quickly. Attendees will learn a rare use case for graph and see how the
CodeLogic backend models data into simplified maps that can be easily analyzed
to identify cross-application dependencies, navigate code change impact, and
ultimately reveal the bigger picture.

Knowledge Graph Representation for Disease Risk Estimation in Crops

Speaker: Jitendra Kumar, Product & Innovation Lead, CropIn Technology Solutions

Session type: Lightning Talk

Abstract: Crop diseases have the potential to cause devastating epidemics in the
entire agriculture supply chain. It accounts for an average of more than 40
percent loss in production. Therefore, there is a need to predict the
possibility of a disease affecting a crop in the early stage. To address this
problem, we are creating a large knowledge graph representation of crops and
diseases. The knowledge graph captures all the agronomy knowledge about crops,
their diseases, disease symptoms (relationships), and recommendations to prevent
these diseases. Therefore, the knowledge graph becomes the backbone of the
Artificial Intelligence (AI) based solutions that we are developing for early
risk estimation of disease. The agronomy knowledge is extracted from various
document sources by using natural language processing operations, and the
knowledge graph is built from that. The knowledge graph is also incremented from
the huge field data collected in the organization. We are leveraging the power
of Neo4j as a tool to build an extensive knowledge graph. The advantage of a
knowledge graph is that whole information of crop and disease eco-systems comes
in a single representation, and therefore it becomes very easy to scale our
solution for any number of crops and diseases.

Exploring Bantu Languages as a Knowledge Graph in Neo4j

Speaker: Tawanda Ewing, Machine Learning Engineer, Deep Learning Cafe

Session type: Lightning Talk

Abstract: We live in a time where large volumes of data are generated on a daily
basis, and one challenge, as a result of these volumes, is effectively exploring
the data. Finding methods to do so helps us derive useful insights that lead to
us making better decisions within an organization or as a society. Knowledge
graphs, which are created in graph databases, are proving to be a method worth
noting thanks to their ability to model relationships between our data. One way
to appreciate just how powerful they are is by looking at an example we can all
relate to – the languages we speak.

How Dell Used Neo4j Graph Database to Redesign Their Pricing-as-a-Service
Platform

Speakers:

 * • Andrew Nepogodin, Cloud Architect, Dell
 * • Bhanu Naidu, Data Engineer, Dell

Session type: Full Length Session

Abstract: Dell Digital's traditional enterprise architecture couldn't handle
data consolidation and pre-assembling needs, which impacted the performance of
their Pricing-as-a-Service offering. It needed to manage exponential data
growth, plus handle different data types within the pricing domain. Learn how
Neo4j graphs helped improve these challenges, plus the processing of their
pricing data and approaches used to optimize licensing costs. We will also walk
through the migration process from their legacy system into Neo4j and provide an
overview of the current production setup and data volume being served.

Easy Visualization of a Product's Underlying Cloud Infrastructure Using Neo4j

Speaker: Harsh Khajgiwale, DevOps Engineer, Druva Data Solutions Private
Limited, Druva Data Solutions Private Limited

Session type: Lightning Talk

Abstract: An enterprise company designs and deploys its product over a
large-scale, mission-critical, and highly reliant infrastructure. With the
recent paradigm shift, the movement of products from bare metal physical
infrastructure to the massive cloud landscape is quite captivating. Today, most
of the products and their features are deployed in the form of microservices –
hence, at times one might face some difficulty in understanding how exactly all
the components are deployed and communicate with each other. With the help of
graphs, it becomes easy to visualize the infrastructure components and how they
are interconnected. Consider a scenario, taking AWS Cloud into consideration,
where the security and proactive compliance team wants to audit the INGRESS and
EGRESS of Security Groups and their respective ports for any microservice. Using
automation, Security Groups' details could be fetched. Relations between IP
addresses and Ports for INGRESS and EGRESS traffic can be easily plotted using
Neo4j. With the help of graphical visualization, it can be understood which
security groups (INGRESS and EGRESS) are created and attached to microservices’
infrastructure (EC2, ASG), etc. This would help in easily inspecting and
identifying the hardpoints in existing cloud infrastructure.

A Real World Case Study for Implementing an Enterprise Scale Data Fabric

Speakers:

 * • Joseph Hilger, COO, Enterprise Knowledge, LLC
 * • Lulit Tesfaye, Partner and Division Director, Data & Information
   Management, Enterprise Knowledge, LLC

Session type: Full Length Session

Abstract: Data Fabric is one of the hottest solutions in the data world right
now. It is seen as the new way to democratize access to data. While the concept
makes sense, the real question is how it can work at scale in large
organizations. Enterprise Knowledge is implementing a true enterprise-wide data
fabric for one of the largest financial institutions in the United States. This
is a project against massive datasets that serves an entire organization. Our
client has over 350 petabytes of data that provides information to over 10
divisions within the organization. As part of this presentation, we’ll share how
our consultants are designing the abstraction layer, implementing governance,
and democratizing access to information across the enterprise. We’ll answer
questions about how data fabric works, how it scales, and how your organization
can implement its own data fabric solution.

Revolutionizing the Energy Industry with Graphs

Speaker: David Swain, CEO, EnXchange

Session type: Full Length Session

Abstract: Today's Energy industry is fraught with complications, from old data
silos, complex "smart" equipment, and massively changing new demand from EV to
solar and wind home generation. In this session, hear how graph databases are
revolutionizing the way the energy industry connects and powers the world. All
types of players in the industry from transmission companies, co-ops, consumers,
and equipment providers are part of the "graph" and will become integrated
players in the new world for how we all interact with the energy grid. This
session will focus on EnXchange's vision to orchestrate and optimize grid
operations serving more than 40 million commercial and residential customers
across the U.S. From generation to toaster, EnXchange is using Neo4j and Fabric
to deliver actionable insights and predictive analytics across hundreds of
independent operators.

Novel Graph Modeling Framework for Feature Importance Determination in
Unsupervised Learning

Speakers:

 * • Abhishek Singh, Technical Manager (Digital Health Data Science)
 * • Cristiana von Stosch, Assistant Director Data Science Digital Health

Session type: Full Length Session

Abstract: Not all features are created equal. Hence, feature importance
determination is one of the most fundamental problems in machine learning. Most
feature importance methods rely on the existence of a target feature (response,
output, y) to understand the importance of each feature. But if the target
feature is not present and we only have the independent features, then only
unsupervised methodologies can be applied and feature importance is not easy to
calculate. In this session, a novel graph model methodology is proposed to
identify the feature importance of datasets without a target feature. In our
proposed approach, the target feature columns of seven datasets were hidden, and
their independent feature importance was calculated utilizing the proposed
approach and another unsupervised method (Gower Distance). After that, the
feature importance was calculated using the full dataset (with the target
feature) using commonly used supervised methods (random forest and decision tree
algorithms). Finally, the rank of the most impactful features was compared for
all methodologies. It was concluded that each algorithm delivered a different
variable importance rank that may or may not match with the other’s output, but
all the approaches have some level of overlap in variable importance order.

Building the Rail Network Digital Twin at CSX

Speakers:

 * • Nicholas Jones, Software Engineer I, CSX Technology
 * • Dean Schaefer, Software Engineer I, CSX Technology

Session type: Lightning Talk

Abstract: CSX Technology is committed to leveraging the power of graph to
maintain equipment state. They have a wealth of operational data for rolling
equipment movements (locomotives, railcars, intermodal containers/trailers, and
End of Train (EOT) devices). CSX Technology is interested in more accurate and
timely equipment associations. In this session, they’ll talk about Locomotive to
Train Association (LTA), rolling equipment (railcars to trains, rail stations,
customers facilities, railroad interchanges), and roadmap (leveraging locomotive
GPS to provide granular shipment updates for associated equipment). You’ll learn
about their success story with rolling equipment in the CSX Digital Twin and
applying the MERGE keyword to create an immutable graph strategy.

Revolutionizing the Energy Industry with Graphs

Speaker:

 * • David Swain, CEO, EnXchange

Session type: Workshop

Abstract: Today's Energy industry is fraught with complications, from old data
silos, complex "smart" equipment, and massively changing new demand from EV to
solar and wind home generation. In this session, hear how graph databases are
revolutionizing the way the energy industry connects and powers the world. All
types of players in the industry from transmission companies, co-ops, consumers,
and equipment providers are part of the "graph" and will become integrated
players in the new world for how we all interact with the energy grid. This
session will focus on EnXchange's vision to orchestrate and optimize grid
operations serving more than 40 million commercial and residential customers
across the U.S. From generation to toaster, EnXchange is using Neo4j and Fabric
to deliver actionable insights and predictive analytics across hundreds of
independent operators.

How Expedia’s Entity Graph Powers Global Travel

Speakers:

 * • Raghavendra Sayana, Cloud Automation and Reliability Engineer, Expedia
   Group
 * • Chris Williams, Principal Software Development Engineer, Expedia Group

Session type: Full Length Session

Abstract: "The Expedia Group Platform serves more than 200 travel sites in 70
countries and encompasses nearly 3 million properties. Expedia developed its
Entity Key Graph (EKG) using Neo4j, unlimited entity graph traversals such as
starting at a known reservation and moving to the associated unit and then to
the property and then to the owner. The ability to traverse the business graph
in a native graph engine like Neo4j allows Expedia to easily slice off “views”
of data that can be used time and time again. This common graph platform allows
any view of data to be created with the same underlying graph supporting it,
with no extra indexes or complex SQL queries required. In this session, Chris
Williams, principal engineer, will outline how Expedia uses Neo4j in conjunction
with MongoDB to build flexible and powerful event-driven views of its massive
graph. Chris will be joined by Raghu Sayana, staff engineer, who will discuss
how Neo4j fits in Expedia’s automated deployment framework to support this and
other use cases with minimal hands-on effort."

Demystifying Environmental, Social, and Governance (ESG) Reporting With Graphs

Speakers:

 * • Harish Arora, Managing Director, EY
 * • Maxim Ogienko, Senior Manager, Data and Analytics, EY

Session type: Lightning Talk

Abstract: Organizations need to identify ESG risks associated with their
business practices and act upon them quickly to preserve their brand value and
avoid any non-compliance penalties. Organizations today spend substantial
efforts on analysis of reporting standards and frameworks (such as SFDR, TCFD,
SASB, CDP, and many others) to make sure that they are not violating any ESG
compliance standards or any voluntary ESG commitments. Many of these reporting
standards are interrelated and share common data elements; closely inspecting
relationships of such disclosures through a purpose-built ESG knowledge graph
can assist human disclosure reviewers, reduce total manual review efforts, and
significantly speed up the time taken to comply with the ever-evolving ESG
reporting landscape. In this session, we will show you how to visualize the ESG
(Environmental, Social, and Governance) reporting landscape in graphs.

Guiding Future Doctors with a Graph

Speakers:

 * • Jill Putnam, Enterprise Data Manager, Federation of State Medical Boards
 * • Anne Lam, Sr. Software Engineer, Federation of State Medical Boards
 * • Enrique Urrutia, Data Analyst, Federation of State Medical Boards

Session type: Full Length Session

Abstract: Over 30,000 physicians register each year to take the final step of
the high-stakes United States Medical Licensing Exam. The Federation of State
Medical Boards (FSMB) is the single point of entry for this registration. The
complex and arduous journey to becoming a fully licensed physician is
incomparable to any other professional requirements, with the health care of the
general population dependent on its success. This presentation explores the
first use of a Neo4j graph database by the FSMB. It was designed to improve the
flow and experience on the exam registration website, guiding physicians through
the process. Join us to learn about our journey with Neo4j, including why we
decided to use a graph database, our rookie mistakes and deployment triumphs,
and the design evolution that led to a custom data ingest tool that we fondly
call “Rocket.”

Inspector Graph: A Knowledge Graph of the Data Behind Your Data

Speakers:

 * • Matthew Wallace, Data Architect Lead, Flint Hills Resources
 * • Zach Fenton, Manager Enterprise Data and Solutions, Flint Hills Resources

Session type: Full Length Session

Abstract: The problems we're all trying to solve rarely get simpler, they get
more complex. In a world of ever expanding data, the more connected our data is
the more easily we can make informed decisions. In operations, having
information at your fingertips around who is working on an asset, where it's
located, pertinent documentation, and health can help speed up decision-making
and decrease errors. Neo4j is helping enable that vision for us, and this talk
will explain how.

Getting Medications to Patients With Graphs

Speakers:

 * • Scott Ogden, Head of Commercial Data Science, Genmab
 * • Sam Wagner, Associate Director, Commercial Data Science, Genmab

Session type: Lightning Talk

Abstract: In this session, we'll share our process to becoming a data-driven
organization, focused on deeply understanding our patient and physician journey
in the context of medical decision-making. Our customer-360 approach unifies
seemingly separate real world, marketing, CRM, and social datasets to create the
foundation for our analytics strategy. We can understand drivers of patient
activity and create the bedrock of our omnichannel recommendation engine by
analyzing the connections created in our knowledge graph. Naturally, we obtain
our key opinion leaders and influencers in novel ways so we can create a truly
unique Genmab interaction with customers.

Queries to Insights: How Healthcare Research Can Create Connections with
Knowledge Graphs

Speaker: Alexander Jarasch, Head of Data and Knowledge Management, German Center
for Diabetes Research and HealthECCO

Session type: Full Length Session

Abstract: HealthECCO is building a unique solution to combine, annotate, and
organize the world's health knowledge and get it into the hands of the right
people at the right time. HealthECCO, winner of the the Neo4j Graphie Award in
2021, is a non-profit organization committed to open source software and open
access to knowledge in order to improve the quality of guideline usage and to
foster innovative global research. The beating heart of their platform is a
Neo4j knowledge graph that integrates a growing number of different but related
data sets. Their data loading pipelines process each of the data sets, indexing
nodes and creating connections to other data sets, as well as annotating text in
the data using natural language processing (NLP). The connections in the graph
make data findable. These pipelines are portable and repeatable making their
data reusable. By incorporating ontologies, they make data interoperable so that
data can be reused and repurposed. Our objective is public access for all data
sources. Following the FAIR principles (Findable, Accessible, Interoperable,
Reuseable), their knowledge graph will not only reveal hidden connections but
will be publicly available and globally accessible. In this session, you learn
about their diabetes and COVID-19 use cases including Neo4j Graph Data Science
applications and several interactive graph applications.

How Google Cloud Dataflow Enables Graph Workloads With Neo4j Dataflow Templates

Speaker: Sachin Agarwal, Senior Product Manager, Google Cloud

Session type: Full Length Session

Abstract: Google Cloud Dataflow is a fully managed streaming analytics service
for executing Apache Beam pipelines within the Google Cloud Platform ecosystem.
Learn how Neo4j's Dataflow template and Apache Beam connector maximize your
Google Cloud Dataflow use.

Integrated Graph Machine Learning with GDS 2.0 and Python

Speaker: Sean Robinson, Lead Data Scientist, Graphable

Session type: Lightning Talk

Abstract: One of the toughest challenges for data scientists adopting Neo4j
Graph Data Science is unfamiliarity with Cypher and the Neo4j interface. In this
demonstration, we will break down this barrier by demonstrating how to integrate
Graph Data Science with Python analytics in Jupyter. Using the GDS 2.0 Python
driver, we will work through a graph machine learning use case via Python in
Jupyter. We will then integrate and interpret the results using other Python
libraries to demonstrate how the Neo4j Python driver offers seamless integration
with the tools and libraries data scientists use in their daily work. You will
get access to sample code for performing ML and graph analytics in GDS using
nothing but Jupyter, Python, and simple Cypher. You will also learn how to
integrate your results with popular data science libraries.

Tracking Data Sources of Fused Entities in Law Enforcement Graphs

Speaker: Luanne Misquitta, VP of Engineering, GraphAware

Session type: Full Length Session

Abstract: Graphs are commonplace in investigative, intelligence, and law
enforcement work. One of the primary advantages of a graph is to connect data
from various data sources, digital and human, and maximize insights across deep
and complex networks of connections, bringing them together in fusion centers
for a centralized view of suspicious activities. For analysts, data quality and
trust is key. The reliability, validity, and general consistency of data sources
that contribute to forming real world fused entities is a factor that influences
the analysts’ interpretation of events. This session talks about the challenges
related to surfacing these aspects of data provenance and various approaches
that can be employed to address them using Neo4j. We will touch on graph
modeling, implications for data security, and how sources and information
ratings can be effectively shared with analysts who need access to them.

Tracking Pandemic Recovery Using Graphs

Speakers:

 * • Erik Erickson, Chief Data Officer, Hennepin County
 * • Alexander Long, Data Engineer, Hennepin County

Session type: Full Length Session

Abstract: As local governments faced the challenges of the COVID-19 pandemic,
they were confronted with a significant amount of information. Estimates about
the state of the economy, housing, and public safety within communities were
readily available, but finding broader insights was much harder. For example,
how can we meaningfully compare quarterly unemployment rates for counties
against zip-code level small business openings and city-level unemployment
filings? To meet this challenge, we created a graph database for Hennepin County
that integrates disparate data sources in ways that broaden our understanding of
the impact of the pandemic across domains. Moreover, unifying our data in a
graph enables us to quickly integrate new data sources. This project is the
start of a promising way to integrate operational data about county services and
programs, showing who the county serves and interacts with as well as the
broader community impact. Our hope is that the flexibility of the graph will
allow us to quickly integrate new data about county residents and their
communities, improving the efficacy of government services and the well-being of
our citizens. Join our session to learn more.

A Schema Migration Tool for the Neo4j Database

Speaker:

 * • Lasse Andresen, CEO, IndyKite Inc

Session type: Lightning Talk

Abstract: Effective database change management relies on proper schema handling.
Schemas are the "blueprint" of the database – they are instrumental for modeling
and performance gains. With a strict schema, rolling out new changes or rolling
back to an older version is a function of schema version control, where
incremental changes are consistently tracked. This is particularly applicable
for relational databases, where the schema defines the data model, type
definitions, relationships, indexes, and constraints. Graph databases can be
described as schema optional, or schema flexible, because there are no standard
ways to manage schemas and version control in a graph database. Defining indexes
and constraints in a schema is useful, but without a strict model, it's
impossible to perform automatic change management. Scripts are necessary for
modifying indexes and data according to the changes introduced. Database change
management for graph databases, therefore, becomes increasingly challenging and
is often characterized by manual efforts (and chaos), which is a hindrance to
efficient CI/CD pipelines and high-performing development teams. In this talk,
we'll describe in more detail how we developed a schema migration tool for graph
databases that's used for automating the change management process.

Evaluating Drug Safety Using Graph Databases

Speaker:

 * • Zeshan Ghory, Product Director, IQVIA

Session type: Lightning Talk

Abstract: How do we determine whether drugs are safe? Most drug regulators like
the FDA and EMA maintain databases of drug adverse event reports, but these only
show a small part of the picture. In this session, we will discuss how graph
databases can be used to combine this data with real-world evidence (RWE) taken
from hospital records, prescriptions, and insurance claims data to give a more
complete picture of the safety profile of a drug.

Building a Micro ORM for Neo4j in .NET

Speaker: Donovan Bergin, Expert Software Engineer, JB Hunt

Session type: Lightning Talk

Abstract: In a world where Neo4j has solid .NET support, community drivers, and
extensions, one developer asks: But what if they didn't exist and we had to get
Java developers to use our library? Over the course of developing Graphr.Neo4j,
we shamelessly copied from Spring Data Neo4j, learned how much reflection can
damage our relationships with real-life people, and had a lot of fun along the
way. And yes, the Java expats at work seem happy enough with the results.

Trucks on a Graph: How JB Hunt Uses Neo4j

Speakers:

 * • Srinivas Kolluru, Senior Director, JB Hunt
 * • Donovan Bergin, Expert Software Engineer, JB Hunt

Session type: Full Length Session

Abstract: At JB Hunt, we needed to modernize how we store, surface, and react to
streaming telemetry data for well over 100,000 assets, including trucks,
trailers, and containers. Neo4j AuraDB enables flexibility and performance in
storing information from many disparate sources and vendors into a unified data
model for use in daily operations. Moreover, it positions us to grow our graph,
use cases, and capabilities as we continue our path to digital transformation.
Our current architecture leverages the intake of streaming data from Kafka,
writes telemetry graphs to our Neo4j instance, surfaces that data via APIs, and
reacts to events with KSQL streams. We’ll present our use case, data models, and
infrastructure, showing you how these technologies work in concert to provide
the data and insights required to remain competitive in an ever-changing market.

Starbase: Graph-Based Security Analysis for Everyone

Speaker: Adam Pierson, Senior Software Engineer, JupiterOne

Session type: Lightning Talk

Abstract: Starbase is an open source graph security analysis tool that collects
data from external services and stores the collected data in a Neo4j database.
Anyone can use it to connect to and ingest data from over 70 third-party systems
into a standardized data model. Once ingested, users can perform previously
complex queries quickly against the Neo4j database to gain knowledge of
potential vulnerabilities. In this presentation, we will consider the value of
graph-based security analysis, discuss Starbase, and briefly demonstrate a
real-world use case on how data ingested by Starbase can help organizations and
individuals protect themselves.

Leveraging Neo4j With Apache Spark

Speaker:

 * • Andrea Santurbano, CTO, LARUS Business Automation

Session type: Workshop

Abstract: Apache Spark has become the most important framework for building data
pipelines over the past few years because it's a framework that supports all
ranges of big data formats in both batch and streaming modes. Given that, you
can leverage Neo4j as a data source in Spark workflows with the official Neo4j
Connector for Apache Spark. In this workshop, we'll show you how easy it is to
move data back and forth in Neo4j with Spark in streaming and batch jobs using
Python and Scala in a cloud environment. We'll also demonstrate how data
scientists can easily combine Neo4j with Spark Python Pandas in order to provide
insights.

Exploiting a Feature Store for Graphs on Neo4j

Speakers:

 * • Filippo Minutella, Chapter Lead of AI, LARUS Business Automation
 * • Valerio Piccioni, AI Engineer, LARUS Business Automation

Session type: Full Length Session

Abstract: Reproducibility – both in machine learning and data science – is an
emerging theme because you need to repeatedly run your algorithms on different
features that can also be obtained with different graph projections to discover
which one performs best on a particular dataset. Feature Store is the right tool
for this objective. It can manage different versions of point-in-time features
for both training and inference phases. We will present a full pipeline,
starting with a graph on Neo4j and repeatedly transforming and loading it on
Feast while also using Neo4j Graph Data Science to create new features to train
a simple neural network. The talk will be organized with the first part on
Feature Store and Neo4j's capabilities, and we will end with a notebook to
present the full pipeline.

Master Real-Time Streams With Neo4j and Apache Kafka

Speakers:

 * • Mauro Roiter, Full Stack Developer, LARUS Business Automation srl
 * • Andrea Santurbano, CTO, LARUS Business Automation Srl

Session type: Workshop

Abstract: Everybody wants secure access to data as fast as possible (near
real-time), with the ability to extract meaningful insights from them. Apache
Kafka and Neo4j are two of the main platforms that facilitate the achievement of
this goal. Learn how you can easily integrate these two technologies and build
complex streaming data pipelines that leverage the power of Kafka Connect via
the Neo4j Connector for Apache Kafka. We'll show you how to setup the connector
in both Source (extracting data from Neo4j and writing to a Kafka topic) and
Sink (reading data from a Kafka topic and ingesting them into Neo4j) modes, and
demonstrate how they work together.

Fighting Fraud with Neo4j Graph Data Science

Speaker: Huong Tran, Evangelist, Linkurious

Session type: Lightning Talk

Abstract: In this presentation, you'll learn tips for using Neo4j Graph Data
Science to detect and fight fraud. This presentation will include information
about our work with Zurich Insurance (bonus points if you take the time to read
up on this client n the case study on Neo4j.com).

Leveraging Graph Analytics for Entity Resolution

Speaker: Huong Tran, Evangelist, Linkurious

Session type: Lightning Talk

Abstract: Dealing with data coming from various sources? You've probably
experienced the difficulties of consolidating a single view of each entity and
avoiding duplicates. In this session, you'll learn concrete tips on how to apply
graph analytics to tackle this challenge and power your business with accurate
information.

Enabling Materials Discovery Through Knowledge Graph Embeddings

Speakers:

 * • Vineeth Venugopal, Postdoctoral Scholar, Massachusetts Institute of
   Technology
 * • Elton Pan, Graduate Student, Massachusetts Institute of Technology

Session type: Lightning Talk

Abstract: Innovation in the materials domain is a slow and laborious process,
due to which the development of new materials has been slow. A major
contributing factor for this latency is the nature of knowledge organization in
the sciences, where all data is unstructured and is split between different
mediums. Therefore, despite decades of productive research and a profilic
publication history, organized machine-readable databases are absent in the
field. This is a major roadblock in the development of artifical intelligence
models to enable materials prediction and discovery. In this session, you'll
witness one of the largest and most comprehensive knowledge graphs in the
materials domain, which is automatically extracted from a corpus of over four
million published scientific articles. The knowledge graph framework is a
significant develoment in the organization of materials knowledge, and through
graph representation learning, is shown to not only capture complex linkages
between entities, but to also discover new relations between materials, their
applications, and properties.

Use of Neo4j Graph Database in Modern Digital Mobile Apps

Speaker:

 * • Abbas Mohammed, Director, Data Platforms, Medifast Inc

Session type: Lightning Talk

Abstract: This session will highlight the use of Neo4j Graph Database for
building a modern digital mobile app that is used by coaches of one of the
fastest growing companies in the health and wellness industry. You’ll also
receive an overview of the architecture and usage of Neo4j.

Delegate, Automate, Dominate: Putting Graph Tech to Work for You to Unlock
Hidden Insights and Opportunities

Speakers:

 * • Mark Heckler, Principal Cloud Advocate, Java/JVM Languages, Microsoft
 * • Jennifer Reif, Developer Advocate, Neo4j

Session type: Full Length Session

Abstract: Different database technologies optimize for different uses. Graph
databases excel in discovering relationships, known or unknown, within vast sets
of data and can help unlock value from overlooked or underutilized sources. Join
the presenters in this session to discover what consideration make a dataset a
candidate for graph storage and analysis. You'll also learn tips and tricks for
data ingestion and structuring while gaining insights on how to build APIs that
optimize for meaningful analysis of data relationships. Likewise, you'll learn
how to delegate tasks to tools, automate essential but non-critical path
functions, and dominate your domain with actionable insights that unlock your
data's full value.

Expanding Your Knowledge Graph Through NLP

Speaker: David Meza, AIML R&D Lead, People Analytics, NASA

Session type: Full Length Session

Abstract: The beauty of knowledge graphs is the ability to expand your knowledge
by connecting other domains. One way to develop these connections is through the
use of natural language processing (NLP). In this presentation, we will add to
NASA’s Skills knowledge graph by developing a NASA-specific skills tagger to
extract entities from documents to help us find people and positions that share
common skills and competencies. This approach can be used with skill mapping,
skills gap, project profiles, workforce plans, and more.

Build a Knowledge Graph Using NLP and Ontologies

Speaker:

 * • Jesús Barrasa, Neo4j

Session type: Workshop

Abstract: This workshop will take attendees over the process of building and
querying a knowledge graph of entities extracted from a set of unstructured
documents (news articles) and enriched with public ontologies. We will use the
APOC NLP procedures and the neosemantics plugin to import and manipulate the
public ontologies. Once built, we will show how the resulting knowledge graph
can be used to implement semantic search and semantic content recommendations. A
prerequisite of this workshop is to have a basic understanding of the property
graph model. Attendees will ideally have Neo4j Desktop downloaded and installed
locally so they can code along with the presenter.

Graph-Based Process Mining and Its Applications to Digital Twins

Speaker: Kristof Neys, Graph Data Science Specialist, Neo4j

Session type: Full Length Session

Abstract: Process mining is an important component for any large industrial
enterprise. Recently, groundbreaking research has been performed on how graph
databases are superior in analysing event logs, which has resulted in the new
research area of graph-based process mining. This presentation will illustrate
what graph-based process mining is, how graph data science is applied, and
extend the technology to Digital Twins.

NeoDash - Building Neo4j Dashboards In Minutes

Speaker: Niels de Jong, Consulting Engineer, Neo4j

Session type: Full Length Session

Abstract: NeoDash is an open source dashboard builder for Neo4j. With just
Cypher, its low-code editor enables you to visualize your Neo4j data as graphs,
bar charts, tables, maps, and more. This presentation will go over how Neo4j's
customers are using NeoDash to reduce time to value by making their Neo4j data
visible. We will give a demo of how NeoDash can be used to build an interactive
dashboard on live data in Neo4j Aura, with a variety of visualisations. We also
show how a deep-link integration with Bloom lets users go smoothly from graph
reporting to graph exploration, painting a complete picture of a visualization
journey. Next, we review how different people in an organization can use NeoDash
with Neo4j. Developers may use NeoDash to quickly prototype what a full-stack
graph solution could look like, using dashboards as a tool to communicate with
their stakeholders. A business user might use a dashboard to get a curated,
high-level view of their graph. Ultimately, data scientists and analysts could
use the different reports to analyse the results of graph algorithms, and gain a
deeper understanding of their data.

Introduction to Neo4j AuraDB: Your Fastest Path to Graph

Speaker: John Kennedy, Product Lead AuraDB self-serve : Free and Professional,
Neo4j

Session type: Lightning Talk

Abstract: Join us for a lightning talk on Neo4j AuraDB, the graph database as a
service. We'll cover all the self-serve AuraDB capabilities. AuraDB Free is a
forever free tier designed to accelerate your journey from learning to
production, without the hassle of managing the database. We'll cover sample
datasets, loading your own data, resetting the database, and cloning or pausing
your instance. You'll learn about support resources including the Neo4j
Community, free training, and more.

Achieve Blazing-Fast Ingest Speeds with Apache Arrow

Speaker: Dave Voutila, Sales Engineering Manager, Neo4j

Session type: Full Length Session

Abstract: In this talk, you'll learn about the Neo4j Graph Data Science team's
work utilizing Apache Arrow to provide high efficiency data ingress/egress from
Neo4j. We'll take attendees through an overview of the problem statement of
building large graphs quickly, exporting them even faster , how Apache Arrow
works, and applying Arrow in your data engineering pipeline for large-scale
Neo4j use cases.

The Inside Scoop on Neo4j: Meet the Builders

Speaker: Stu Moore, Product Manager, Neo4j

Session type: Full Length Session

Abstract: Join this session to hear from the experts who build Neo4j. Learn
about how Neo4j is engineered for performance at scale and how its distributed
cluster architecture makes it easy to scale out as needed. You may know that
Neo4j is incredibly flexible and powerful, but it’s also very secure. We offer a
variety of security features, including encryption, authentication, access
control, and auditing. This session is for you if you're interested in learning
more about Neo4j and what's coming in the next major release.

Graph Data Modeling Best Practices

Speaker: Eric Monk, Principal Solutions Engineer, Neo4j

Session type: Lightning Talk

Abstract: Graph data modeling is an art as well as a science. It can be much
more involved than the initial whiteboard model and can make a huge difference
in your project. In this talk, we'll discuss the iterative data modeling process
and point out some common modeling, performance, and validation issues – and
their solutions.

Neo4j Ops: Monitoring

Speaker:

 * • Max Andersson, Developer Advocate, Neo4j

Session type: Workshop

Abstract: In this hands-on workshop, we'll work with the Neo4j Docker Image to
set up our database instances and to monitor metrics and logs. We will go
through what settings to consider and what to think about when you're setting up
your own monitoring solution, as well as help you get started.

New! Monitoring and Administration with Neo4j Ops Manager

Speaker: Stu Moore, Product Manager, Neo4j

Session type: Full Length Session

Abstract: Neo4j Ops Manager (NOM) is the Neo4j solution for monitoring and
administering one or more Neo4j DBMS implementations. NOM is included with Neo4j
Enterprise Edition and supports single instance as well as clustered DBMSs. The
initial release includes features such as a dashboard for monitoring metrics, a
system topology of managed DBMSs, and a GUI for DBMS configuration and
role-based access control. Attend this session to learn how NOM makes managing
Neo4j operations easier and more intuitive.

Full-Stack Visualization: Build a React App with a Sankey Diagram

Speaker:

 * • Eric Monk, Principal Solutions Engineer, Neo4j

Session type: Workshop

Abstract: See how to build a React App that features a Sankey diagram using
Neo4j and the GraphQL Library. Sankey diagrams are a type of visualization that
show network or process flows. The talk will touch on different components of
the entire stack: what data is needed for the Sankey diagram in the Neo4j web
browser, how to write GraphQL and use the Neo4j GraphQL library to pull the data
back, and how to make GraphQL calls to render the Sankey visualization and
populate it with data. You'll see the code, libraries, and techniques to build a
full-stack visualization application.

Encrypting and Protecting Your Data in Neo4j

Speaker: Jeff Tallman, Sr Presales Engineer, Neo4j

Session type: Full Length Session

Abstract: In this presentation, Jeff Tallman shows how you can encrypt data
stored in Neo4j using certified algorithms - from full database encryption to
property-level encryption (which, in the RDBMS world, is called column
encryption). He explains the impact of encryption on query performance and how
industry standard requirements map to technology requirements. Jeff explains how
to integrate solutions such as Protegrity and Vormetric to achieve compliance.
Jeff will also describe how RBAC controls complement encryption for a full
solution.

Neo4j Bloom: What’s New with Neo4j's Data Visualization Tool

Speaker: Jeff Gagnon, Product Manager, Neo4j

Session type: Full Length Session

Abstract: In this session, Neo4j’s product manager for Bloom, Jeff Gagnon, will
discuss some of the product’s new capabilities introduced over the past year,
and will demonstrate how they can be used in various domains like cybersecurity,
fraud detection, and more.

Hands-On Neo4j for Python Developers

Speaker:

 * • Jason Koo, Python Developer Advocate, Neo4j

Session type: Workshop

Abstract: Explore Neo4j’s 5.0 Python driver with Python Developer Advocate Jason
Koo in this hands-on workshop. You’ll practice setting up and using the driver
in local and remote scenarios, find out how to handle authentication, learn a
few basic Cypher commands, and walk through resources for getting help. Bring
your laptop with Python 3.7+ installed and your favorite Python editor (Jason
will be using Visual Studio Code).

The Streaming Graph: Integration Strategies With Kafka and Neo4j for Near
Real-Time Insights

Speaker: Alex Woolford, Field Engineer, Neo4j

Session type: Full Length Session

Abstract: In this session we willl show how Kafka, Kafka Streams, and an
ecosystem of connectors can be used with Neo4j to provide real-time insights for
smarter decisions making.

Combining the Best Cloud Technologies with Innovative Engineering: How We Built
Neo4j Aura

Speaker: Alistair Jones, Director of Engineering, Neo4j

Session type: Full Length Session

Abstract: Neo4j Aura is a fully managed, cloud-native graph data platform,
designed to be your fastest path to graph. In this talk, Neo4j Aura architect
Alistair Jones will describe how Neo4j Engineering combined the best cloud
technologies with innovative processes to build and operate Neo4j Aura to meet
your most stringent requirements for scale, security, reliability, and ease of
use.

Role-Based Access Control (RBAC) in Neo4j

Speaker: Jeff Tallman, Senior Presales Engineer, Neo4j

Session type: Lightning Talk

Abstract: This presentation looks at the basics of RBAC, including which
privileges are available and how to construct roles to achieve the separation of
duties required by many corporations and security standards. These roles include
developers, data scientists, application users, and automated job processing."

Migrating LOAD CSV Processes From On-Prem to AuraDB

Speakers:

 * • Mark Andrews, Senior Professional Services Engineer, Neo4j
 * • Rutvij Vyas, PS Engineer, Neo4j

Session type: Lightning Talk

Abstract: In this session, we share how we created a Python script for Levi
Strauss & Co. that reads existing Cypher files, replaces the LOAD CSV commands
with a process to read the file locally, and sends the values as parameters for
a Cypher statement. This approach eliminates the need to host the CSV files for
Aura access and in most cases, requires no changes to the Cypher files
themselves. It supports Periodic Commit for sending the rows in batches and
allows you to simply pass in a Cypher statement instead of requiring a file.

Introducing Workspaces, a New Experience for Neo4j Developer Tools

Speaker: Ian Pollard, Product Manager, Neo4j

Session type: Full Length Session

Abstract: User tools are evolving from separate products to the unified
experience we call Workspace. In Workspace, Neo4j users can query their data,
access world-class graph data visualization, and with the new Data Importer,
model and import their data. Workspace combines the power of Browser, Bloom, and
Data Importer into a seamless experience for Neo4j users.

Top 10 Cypher Tuning Tips & Tricks

Speaker: Michael Hunger, Senior Director, User Innovation, Neo4j

Session type: Full Length Session

Abstract: I was there when Cypher was invented in 2012 and have been using it
ever since. The language is extremely powerful and easy to learn. But to truly
master it, you need to understand how it works internally and how the database
executes your queries. In this session, you'll learn to look behind the scenes
at execution plans with PROFILE and EXPLAIN and which specific clauses,
expressions, structures, and operations help you minimize Cypher and database
operations. After this talk, you should be able to speed up your Cypher
statements quite a bit.

Creating a Clinical Knowldge Graph: Pharmaceutical Collaboration With
OpenStoryBuilder

Speaker: Marius Conjeaud, Professional Services Engineer, Neo4j

Session type: Lightning Talk

Abstract: OpenStudyBuilder is an open source project for clinical study
evaluations. This tool is a new approach for working with studies that once
fully implemented will drive end-to-end consistency and more efficient processes
– all the way from protocol development and CRF design – to creation of
datasets, analysis, reporting, submission to health authorities, and public
disclosure of study information. Learn how we are building a complete solution
based on a clinical knowledge graph that includes a shared API, a custom web
application, and exploration tools to further analyze the data. We will also
share the open source vision behind the project and how you can help! The
OpenStudyBuilder, originally created by NovoNordisk, a global healthcare
company, uses Neo4j as its database, along with other products from the Neo4j
ecosystem, including NeoDash, Bloom, and the neomodel Python library. Neo4j's
professional services team is also involved in the development and deployment of
the solution.

Scale Your Mission-Critical Applications With Neo4j Fabric and Clustering
Architecture

Speaker: Stu Moore, Product Manager, Neo4j

Session type: Full Length Session

Abstract: The high-performance, distributed architecture of Neo4j is
fault-tolerant and ACID-compliant across both OLTP and Analytical workloads,
ensuring graph-native scale without compromising performance. In this session,
we’ll discuss how the distributed architecture provides continuous availability
for OLTP workloads and support for large-scale hybrid clusters. The large-scale
hybrid clusters provide virtually unlimited scale for read and write-intensive
workloads thanks to Neo4j Fabric. Fabric offers sharding and federated
capabilities in both local and geo-distributed environments. You can also scale
reads horizontally, meaning 1000x as many reads simply by adding more Read
Replicas. Exciting, isn't it? Also, as part of this session, we’ll touch on some
of the experimental features coming in the next major release of Neo4j.

ETL and Supervised ML Using Python

Speakers:

 * • Amey Mahajan, Enterprise Presale Engineer, Neo4j
 * • Alexander Fournier, Enterprise Presale Engineer, Neo4j

Session type: Full Length Session

Abstract: This presentation will be partitioned into two parts: 1) ETL best
practices using the Neo4j Python driver and 2) Running supervised ML with the
Neo4j Graph Data Science Library using the Python client. Part 1 (ETL): The ETL
portion of the presentation will cover building Neo4j property graphs using the
Python driver. We'll also go over best practices, including batching,
transaction functions, templatized Cypher, and more. Part 2 (Supervised ML): The
supervised ML portion will explore using the Python graph data science client.
You can specify all the different properties, configurations, and user inputs
that will be used to run node classification algorithms and return the results.
The function calls are modular and allow the user to quickly build a graph data
science pipeline and get results for any of the three node classification
algorithms (fastRP, Node2Vec, GraphSage).

Node Art

Speaker:

 * • M. David Allen, Senior Director of Developer Relations, Neo4j

Session type: Lightning Talk

Abstract: Neo4j is unique among all databases in terms of how interactive and
visual graphs are. In this lightning talk, we're going to put aside all
practical work to explore and have fun with this side of graphs. We will use
Cypher to create patterns in the graph to demonstrate how visualization tools
help us spot patterns. Simply put, we're going to draw pretty pictures with
graphs and math, and show you how you can do it too.

Endless Possibilities: Building a Customer360 with Neo4j, Structr, and Vendor
APIs

Speaker:

 * • Dana Canzano, Support Engineer, Neo4j

Session type: Full Length Session

Abstract: This session will explore the journey of developing an in-house
customer360 graph and describe the technologies employed, which include Neo4j,
APOC, Structr as well as references to Zendesk, Trello, and Bambo APIs. You’ll
hear about the implementation of Structr, a partner of Neo4j, along with the
benefits and usage provided to users of the graph.

Neo4j Graph Database Key Features Hands-On Lab

Speaker:

 * • Stu Moore, Product Manager, Neo4j

Session type: Workshop

Abstract: Over the past year, we released some of the most exciting and
mission-critical features for the Neo4j graph database, helping developers and
organizations build applications at scale with a faster time to market. In this
hands-on workshop, we will take you through some of the key features of the
Neo4j graph database, like relationship indexes, CALL IN Transactions, HTTP API,
Single Sign-On, Helm Charts, Server-Side Routing, and more. Bonus: we will give
you a sneak peek, as well as let you play with some of the experimental features
that are about to come with our next major version release of Neo4j. Come and
join us for some really fun and exciting hands-on labs with the product team.

How to Import JSON Using Cypher and APOC

Speaker:

 * • Eric Monk, Principal Solutions Engineer, Neo4j

Session type: Lightning Talk

Abstract: This session will walk through how to load a JSON document in a single
Cypher statement. We’ll explain how to use advanced cypher techniques such as
parameterization, how to handle data quality issues, how to iterate over nested
data, and conditional logic. These techniques are useful for loading JSON into
Neo4j without an ETL tool or a coding language such as Python or Java; you only
need Cypher. We showcase several APOC procedures and functions, as well as WITH,
UNWIND/COLLECT, list expressions, and more.

Taming Large Databases

Speaker:

 * • Ravindranatha Anthapu, Principal Consultant, Neo4j

Session type: Lightning Talk

Abstract: As your Neo4j database grows in size, it becomes crucial to understand
how to review your system for query performance and infrastructure costs. To a
certain extent, the performance SLAs can be obtained by increasing memory. But
once your database size becomes significant, it can be costly to keep on adding
memory and CPUs. This presentation walks you through various scenarios to
discuss how the growing size of your database can affect your database
performance as well as how you can address those issues through data modeling
and Cypher tuning.

Getting the Most From Today's Java Tooling With Neo4j

Speaker:

 * • Gerrit Meier, Software Engineer, Neo4j

Session type: Full Length Session

Abstract: Getting started with Neo4j instance and the Java ecosystem has never
been easier than it is today. Be it Spring, Quarkus, or just the plain driver
with the CypherDSL, get the latest update on our provided tooling and support in
the Java ecosystem. We will have a drive from a basic driver example to a full
object mapping supported enterprise application. In the end, you can decide for
yourself what abstraction is right for you.

Neo4j in a Microsoft Shop

Speaker:

 * • Richard Macaskill, Project Manager, Neo4j

Session type: Lightning Talk

Abstract: In this short session, we will cover the ins and outs of integrating a
Neo4j graph database into Microsoft Excel using the Neo4j BI Connector.

Operating Neo4j Fabric in Multi-Zone Kubernetes Cluster

Speakers:

 * • Bledi Fështi, Software Engineer, Neo4j
 * • Harshit Singhvi, Software Engineer, Neo4j

Session type: Lightning Talk

Abstract: In this session, we will show a demo of deploying Neo4j and Fabric via
Helm charts, all in a multi-zone Kubernetes cluster. Deploying in a multi-zone
cluster is a relatively complex scenario; we will show you how to use Helm
charts to their full potential.

The Power of Digital Footprints

Speakers:

 * • Gal Bello, Head of Field Engineering, Israel at Neo4j, Neo4j
 * • Itamar Niddam, CTO, Akooda

Session type: Lightning Talk

Abstract: In this session, we will examine the trend of using more and more
cloud apps for organizational communication, which increases the presence of
digital footprints constantly – and the need to organize and store the data
therein in accessible ways that match the various use-cases. Later on, we will
cover some challenges that engineering organizations experience and how public
communication can be used to improve processes and preserve knowledge. Finally,
we will go over how graph databases can help generate hidden insights and
findings from real world data that was taken from digital footprints – using
algorithms from graph theory directly to infer how organizations work and the
opportunities for alignment and transparency.

Towards GQL 1 — A Property Graph Query Language Standard

Speakers:

 * • Nathalie Charbel, Software Engineer, Neo4j
 * • Finbar Good, Senior Software Engineer, Neo4j

Session type: Lightning Talk

Abstract: Property graphs and property graph queries have gained tremendous
traction across a wide variety of verticals and use cases. Property graph
technology provides powerful tools for a variety of data analysis that could not
easily be done with SQL queries against tabular data. Multiple graph database
vendors competing in that space. Standards help to improve application and tool
portability and developer mobility and are vital for further growth of the
category. At the same time, SQL databases contain significant amounts of
business critical current and historic data not readily accessible to property
graph querying. The ISO/IEC and US committees responsible for standardizing SQL
have recognized this trend and are actively developing two standards: 1. GQL — a
full database language to allow creating, modifying and querying property
graphs. 2. SQL/PGQ — an extension to SQL to present and query tabular data as
Property Graphs. The Graph Pattern Matching query language syntax is common
between these two efforts. This talk gives a snapshot of the current
standardization efforts and timing.

Toolbelt Trifecta: Connecting to Neo4j with Java and AWS Lambda

Speaker:

 * • Jennifer Reif, Developer Advocate, Neo4j

Session type: Full Length Session

Abstract: Java, AWS Lambda, Neo4j – one or more of these technologies might be
familiar to us, but how do we use them together? In this session, we will take a
look at each of these technologies by themselves, and then assemble some code to
combine them. We will start with the available example code, and then see how to
improve and update that code with the latest and greatest features and
efficiencies offered. Through live coding, we will work through the challenges,
find answers to questions, and piece together the code. As a result, we will
have a working solution for a cloud function in Java that runs a query in Neo4j
and returns the results. Join us to combine these technologies for a powerful
trifecta!

Live Migration Between the Labs Helm Chart and the New Helm Chart

Speakers:

 * • Bledi Fështi, Software Engineer, Neo4j
 * • Harshit Singhvi, Software Engineer, Neo4j

Session type: Lightning Talk

Abstract: This session will feature a live migration between the Labs Helm chart
and the new Helm chart.

Accelerating ML Ops with Graphs and Ontology-Driven Design

Speakers:

 * • Brandon Campbell, Author, Ontologist and Software Engineer
 * • Joel Linford, SDS Digital Innovations Lead Data Scientist, Northrop Grumman

Session type: Full Length Session

Abstract: Data fusion is a prerequisite to high-leverage analytics, but
multi-source integration into data lakes becomes incomprehensible at scale. Data
lakes collocate data but do not create synergy because they lack structure and
context. When the time comes to engineer features, data lakes do not provide a
means to maintain digital threads. The burden of preserving context falls to
users, who pass tribal knowledge from one to the next through word of mouth or
documentation. This process creates bottlenecks in data processing and
analytics, resulting in loss of clarity over time. To overcome these challenges,
Ontology-Driven Design operates on the premise that data integration should be
governed by knowledge. In this paradigm, domain knowledge is modeled
ontologically, which kills two birds with one stone. Firstly, the domain
knowledge serves as an integration layer for disparate data. Secondly, the
combination of data and ontology results in a context-rich graph that preserves
domain knowledge in a digital thread. In this talk, we demonstrate how Northrop
Grumman uses Neo4j graph databases to realize ODD pipelines that generate
knowledge graphs can then be supercharged through analytical methods to turn
data and domain knowledge into customer value.

A Fusion of Machine Learning and Graph Analysis for Free-Form Data Entry
Clustering

Speaker: Andrew Flinders, Principal Data Scientist, Northrop Grumman

Session type: Full Length Session

Abstract: Free-form text often contains critical information necessary to
understand a situation. However, because the user can enter text with few
constraints, programmatically aggregating individual responses into a cohesive
whole can be extremely difficult. Similarities between individual responses can
illuminate constellations within the data that outline a bigger picture. Graph
architectures are the ideal mechanism by which these connections can be revealed
and explored. With the recent advent of transformer deep learning models,
natural language can now be embedded into vectors that more completely capture
the semantic meaning of the words. Graph analysis of similarity scores
calculated between transformer embeddings provides the big picture view that is
often so elusive. Thus, through a combination of deep learning, shallow
learning, and graph algorithms we can extract greater insight from free-form
text. In this talk, we will explore an example of this method using Neo4j and
Google’s BERT transformer model.

Fighting a Multi-Armed Monster With Graph: Master Data Management in Neo4j

Speakers:

 * • Travis Confer, Software Engineer, Northrop Grumman
 * • Steven Scott, Software Engineer, Northrop Grumman

Session type: Full Length Session

Abstract: Solving complex problems at large organizations generally requires a
variety of software applications, many of which do not interface well with each
other. This divides critical data across diverse data stores, hampering
cross-platform analytics and understanding. One way to handle this challenge is
to shuttle data between applications. However, this process results in data
duplication, synchronization problems, and difficulty tracking which data source
is authoritative. At Northrop Grumman, we have pioneered a graph-based solution
to this problem by utilizing the GRAND Stack (GraphQL, React, Apollo, Neo4j).
Our application, called Kraken, merges data from multiple sources into a graph
database. This architecture simplifies master data management by decreasing data
duplication, tracking changes through digital threads, and creating an ASOT
(authoritative source of truth) for data. In this presentation, we will cover
the story of how Kraken came to be, the problems it aims to solve, and why its
graph-based architecture is useful for Master Data Management. We will also
demonstrate how Kraken manages digital threads.

Weaving Tangled Webs: Using Graphs to Author Content (And Other Unconventional
Use Cases)

Speaker: Brandon Campbell, Author, Ontologist and Software Engineer

Session type: Full Length Session

Abstract: A satisfying narrative is complex and cohesive. Twisty, but
intentional. Surprising and satisfying. Unfortunately, the creative process
behind rich content often seems to be the mysterious byproduct of artistic
genius – unapproachable without inspiration. But as a community of graph
enthusiasts, we embrace complexity. We have the tools to break it down and
engineer twists and turns. Usually, we apply these skills to solve business
problems, but we aren't limited to them. Thinking with graphs is a superpower
with applications, limited only by the creativity of the wielder. In this talk,
you will see a demonstration of the art and science of designing a fictional
narrative using Silky, an Electron-based React application designed for this
express purpose. Silky is a graph-native word processor that encourages authors
to plan their work non-linearly and unlocks the power of graph analysis through
an interface to Neo4j. With it, we spin characters into threads, and threads
into webs. From there, a captivating story is just a graph traversal away. This
talk is for the engineer looking for a change of pace, the business professional
with a new idea to model, and the hopeless authors among us with a story to
tell.

Fighting Sanction Evasion and State-Backed Financial Crimes with Graphs: the
Syrian Regime as an Example

Speaker:

 * • Wael Alalwani, Director, OBSALYTICS

Session type: Lightning Talk

Abstract: This session showcases graph-driven efforts to raise awareness and
facilitate political change using the Observatory of Political and Economic
Networks - Syria (OPEN). OPEN is a data platform that monitors the intertwined
relations between business elites and power centers, including political,
security, and military centers. We connect the dots, follow the money, detect
corruption, and document chains of command. We capture evolving networks over
time to understand entities and formal/informal relationships by tapping into
publicly available data sources. In short, we try to understand the root cause
of atrocities, i.e. the ecosystem itself. OPEN is owned by Obsalytics, a Canada
nonprofit with the goal of leveraging data to promote transparency,
accountability, and data democratization. We employ the same advanced tools used
by the ICIJ in the Panama and Pandora Papers investigations (e.g. Neo4j and
Linkurious), as well as additional tools we developed. Also, we explain how
graph algorithms from the Neo4j Graph Data Science help us make interesting
findings.

Dude, Where's My Ship? How Graphs Have Transformed Maritime Routing

Speaker:

 * • David Levy, CMO, OrbitMI

Session type: Lightning Talk

Abstract: With the importance of supply chains and the global maritime trade,
most assume that modern technologies make it easy for a ship owner to create a
route for a crude oil tanker or cargo vessel. Wrong! Most routing services
produce a default route that is the shortest distance between two ports. But the
shortest distance might not be the safest (can you say pirates? storms?), or the
most efficient in terms of GHG emissions. Furthermore, most routing services use
unstable infrastructure, struggle with big data feeds, and offer limited
visualization options. For these reasons, OrbitMI decided to build its own
routing solution. To build this world-class, enterprise-grade service, we needed
a graph that could process large volumes of data, provide reliable storage,
serve and support spatial – in addition to linear and tabular – data sets
delivered in real time (and at scale), as well as a library of pathfinding
algorithms. Our goal was to develop a routing service to give ship owners and
managers (really anyone in the industry), the ability to create and select the
smartest route for their vessels. Routes can be optimized for distance, safety,
speed, GHG emissions, weather, or revenue, among others. Learn why we selected
Neo4j as a partner.

Natural Language Interface for Enterprise Graph Databases

Speakers:

 * • Martijn Devrome, Site Intelligence Sr. Development Specialist, Pfizer
 * • Tien Do Huu, Site Intelligence Development Lead, Pfizer

Session type: Lightning Talk

Abstract: Graph databases are increasingly being used for enterprise and
commercial applications. Most end-users have limited knowledge about a graph
database (GDB) schema and its corresponding specific query language though. The
use of a natural language interface (NLI) bridges this communication gap between
the end-user and the formal query language. However, most existing NLIs are
designed for relational databases and do not generalize well towards graph
databases. We propose a novel and generic methodology to translate natural
language questions into graph database queries. As such, end-users can type in
any question related to any of the organizational data, stored in a large graph
database, and immediately get the answer in both graphical and tabular format.
Our framework consists of various building blocks: an intermediate query
representation to uniquely and compactly store natural language queries
independent of GDB query language, a semi-automatic training dataset generator,
and a deep learning transformer model. By finetuning the transformer model on
the generated dataset, we obtain a high prediction accuracy of 94%. In addition,
given the designed diversity of the training dataset, the model is able to
generalize to questions that haven’t been seen before.

Design Thinking for Graph Data: The Secret to Successful Graph-Powered Apps

Speaker:

 * • Karen Passmore, CEO, Predictive UX

Session type: Lightning Talk

Abstract: Data that isn’t findable, easy to use, and actionable causes project
failures, especially when you need to connect multiple, disparate sources of
data and content. That’s why it’s critical for enterprises to practice design
thinking to ideate, design, and test graph-based products when collaborating
with users, data consumers, business leaders, and data experts. Design thinking
is a UX method for collaboratively and iteratively designing content and data
solutions based on user needs and testing. It puts business, data experts, data
consumers, and users at the center by defining user journeys and pain points on
both the front-end and backend to tie app and data flow to scenario-specific
outcomes. This approach puts companies on track to reap their expected returns
and nurture the health of content and data products with a defined governance
structure for managing change over time. The result: apps full of graph-powered
data insights and integrated, usable experiences that grow and protect revenue.
In this talk, we take a look at design thinking applied to graph data, using
real-world case studies from our clients.

Synthetic Graphs for Privacy: Lessons Learned and Key Takeaways

Speaker:

 * • Priyanka Angadi, Data Science Manager, PwC

Session type: Lightning Talk

Abstract: "Synthetic graphs offer a powerful method for implementing privacy by
design. We implemented several research-based algorithms on real-world data. In
particular, we focused on two algorithms: synthetic graphs by Mittal et al. that
adds nodes and edges to a graph while persevering their utility; and the
uncertainty injection approach of Boldi et al. that introduces edge
probabilities to obfuscate graph information. Although tested on research data,
these algorithms posed certain challenges when using them on real-world data.
This presentation will cover lessons learned and the modifications we applied
when processing data with personally-identifiable information."

SageOps: Data Ontology and DevOps

Speakers:

 * • Brandon Klein, Principal R&D Computer Scientist, Sandia National
   Laboratories
 * • Cody Tyler, R&D Systems Engineering, Sandia National Laboratories

Session type: Full Length Session

Abstract: Knowledge discovery from data is foundational to uncovering
information from data using data science and analytics. The ability to derive
knowledge from data quickly is an advantage sought by private and public
industry due to the many benefits it can provide. From competitive advantages to
security advantages, discovering knowledge faster is highly desired. In our
attempts to quickly discover data models (patterns and anti-patterns) from
disparate data sources more efficiently at the Pulsed Power facilities in Sandia
National Laboratories, we have developed a nascent methodology to facilitate
knowledge discovery of taxonomic relationships amongst structured and
unstructured data. We have named the methodology SageOps, which synergizes data
ontology and DevOps to empower ontological driven data science and data
analytics to support sagacious decisions. This presentation describes the
SageOps methodology, capabilities, as well as technologies (e.g. cloud
computing, containerization, graph database) used to provide an efficient and
reliable practice.

Graph-Based Network Topology Analysis for Telecom Operators

Speakers:

 * • Nouamane Bensaoud, Senior Consultant, Sopra Steria
 * • Daniel Schmitz, Data Science Consultant, Sopra Steria

Session type: Full Length Session

Abstract: Telecom providers suffer from outdated, manually-maintained inventory
data, which leads to network mismanagement and impedes network automatization.
To overcome these challenges, Sopra Steria developed a solution that
reconstructs the actual network topology from network configuration data, stores
it in a Neo4j database, and visualizes the result in a comprehensible way: the
Intelligent Network Analyzer. We show how Neo4j can be employed to efficiently
store and analyze a country-wide telecom network. Exemplary use cases are
tracking the evolution of the network over time while providing impact analysis
and fine-grained network exploration. Furthermore, we demonstrate how to perform
a traffic simulation using Neo4j. Based on Neo4j and networkx, an algorithm
optimizes the traffic routing in the network to minimize overloads and latency.
The presentation includes a live demo.

Maximizing Your Product Portfolio Exploration With Graph Data Science

Speaker:

 * • Henrik Johansson, CTO, Stratazon AB

Session type: Full Length Session

Abstract: In a world of global expansion and digitalization, businesses have
never been more keen to understand their customers. The most trustworthy,
untouched, and up-to-date data pipeline to capture that understanding is a
currency of the future – customer reviews. By tapping into the stream,
businesses can gain access to an ever-growing flood of consumer feedback. But
without context, ratings and reviews are merely digits and characters. With
graph technology, you can integrate product and brand reviews with transactional
data in a tactical context to create tangible and actionable insights. This
ultimately facilitates rapid decision-making to create real-time business value.

Graph Based Analytics in Telcos - A Crucial Component for 5G Enablement

Speaker: Jayshree Kottapalli, Industry Advisor, TCS

Session type: Full Length Session

Abstract: With the Telecoms set to roll out 5G offerings, and world on the brink
of adopting 5G network, it becomes imperative for the Telecoms to gear up their
supporting system to process, analyze and action the voluminous and fast data
that the new age promises to bring - be it to provide proactive and predictive
Network service assurance, IT supervision, Network security against
cybersecurity threats, software driven Network & Data center management, IoT
functions etc. It is with graph analytics anchored on graph databases that
enables this to be implemented effectively. Graph data platforms provide Telcos
with the massive flexibility of connecting data from multiple siloed systems to
bring together a hyperpersonal service to its customers. We will take a quick
view of how graph systems and analytics are ideal to accompany Telcos and anchor
them in this journey into the world.

Enabling Patient-Driven Medicine Using a Graph Database

Speaker:

 * • Kasthuri Kannan, Associate Professor, University of Texas MD Anderson
   Cancer Center

Session type: Full Length Session

Abstract: For decades, relational databases and static networks have been the
mainstream for data-driven biology and medicine. Despite the simplicity of these
approaches, these static architectures do not enable unbiased hypothesis
generation and systems biology-based discovery. Systems biology attempts to
capture the dynamic and integrative nature of biology. Graph databases as
mutable and dynamic querying structures coalesce data through interactions,
enabling the study of biological systems as complex adaptive systems and
providing a platform for hypothesis generation. This article introduces a
generalized patient-centric graph schema that integrates molecular and clinical
datasets, providing an unbiased hypothesis-generation paradigm for cancer
research. It also highlights an example of a database analysis using a
commercial graph solution (Neo4j) that reveals the integrated landscape for a
molecular subtype of brain tumors.

Building a Graph-Based Full-Stack Solution for Repository-Scale Searching of
Biosynthetic Gene Clusters

Speaker:

 * • Chase Clark, Postdoctoral Research Associate, University of
   Wisconsin-Madison

Session type: Full Length Session

Abstract: Genomics-based bacterial drug discovery is heavily focused on
searching for groups of genes that encode for the production of
medicinally-useful chemical compounds (e.g. antibiotics, anti-cancer drugs,
etc). Finding genes/groups of genes related to those that encode for known
chemicals allows us to find genes that encode the production of similar
compounds that may have better activity or even completely different clinical
uses. However, current tools are limited in their ability to scale past dozens
of genomes and/or rely on precalculating predicted groups of genes. In this
session, you will learn how I created Socialgene using a unified collection of
tools (Neo4j graph database, Python package, Django app, Nextflow pipeline) to
enable rapid, flexible searching through large numbers of genes and genomes.
While still in the early stages of development, Socialgene has been able to
discover related genes and groups of genes in hundreds to thousands of genomes
in near real time. My current work is focused on developing a reproducible and
robust data-generation, database-creation pipeline, and future plans include
creating a repository-scale database through use of the University of
Wisconsin-Madison’s Center for High Throughput Computing.

Empowering Employees With Graph Technology

Speaker:

 * • Leen Schafer, Chief of Staff, Viasat

Session type: Full Length Session

Abstract: Viasat's mission is to connect the world. Our rapid growth in response
to the needs of a global market presents new challenges around nurturing
intracompany connection, collaboration, and communication. To mitigate these
challenges, our intranet, Compass, leverages graph, a robust search engine and
machine learning tool to create a best-in-class employee experience. As an
enabling team at Viasat, we seek out new and innovative ways we can use our data
to help us become a more connected company.

Uncharted Waters: Fraud, the Fortune 500, and Latin America

Speakers:

 * • Luis Eduardo Almazán, Data Science Consultant, VinkOS
 * • Chris Upkes, Principal Professional Services Consultant, Neo4j

Session type: Full Length Session

Abstract: Neo4j is greatly settled with a good presence in some countries, but
it can be an uphill journey in some other ones. In this session you'll learn
about the graph journey to implement a solution in a market that doesn’t know
much about graph databases.The immersion into graph technology and methodology
doesn't always translate immediately to value for clients – there's exploration
to be made, discoveries to be found, skills to be developed, and a learning
curve for everyone involved. We'll go over challenges and struggles, how to
overcome them, and how to achieve a successful journey with graphs. We are going
to tackle similar problems with similar customers, except in this case, our
environment will be completely unfamiliar. Over 40 minutes, we are going to walk
along with VinkOS on their journey to solve some of the biggest fraud analytics
problems with their Fortune 500 customer, as they work alongside Neo4j to
identify essential requirements, design and test an initial solution, and work
with the customer to evaluate the solution and determine a working relationship.
Unlike other use-case specific demonstrations, in this presentation, you will
get an intimate understanding of what it takes for Neo4j’s first Latin American
partner to identify, design, and solve a fraud detection use case for a Fortune
500 customer.

Graphs for Genealogists

Speakers:

 * • David A Stumpf, Principle, Who Am I, LLC
 * • Weidong Yang, Founder & President, Kineviz

Session type: Full Length Session

Abstract: Graphs for Genealogists (GFG) is an open-source software package with
an application front-end, visualization in GraphXR, a graph database, and a
plugin designed for genealogy data management and analytics. The ETL loads
family tree data in GECOM format, consumer DNA test results, and
genealogist-curated files that create links between graphs. The analytics
provide new insights and actionable recommendations for further genealogy
research. GFG traversals collect concatenated strings to create Ahnentafel
numbers and enable filtering on X-linked inheritance and other patterns.
Traversals from the family tree through DNA matches to chromosome segment data
find triangulation groups and monophyletic segments aligned with specific family
tree branches. Graph algorithms from Neo4j Graph Data Science reveal communities
aligned with family tree branches. Hierarchical trees include patrilineal trees,
DNA haplotrees, ORDPATH-enhanced renderings, and hybrids linking these together.
Chromosome painting and 3D renderings help users interpret the results.
Recommendations include manageable sets of persons from a pool of over 250,000
DNA matches. There are many opportunities for further development of graph
analytics in this billion-dollar industry.

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