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PostgresML search Product Open-source * Korvus * PGML * PgCat Deployment options * filter_drama PostgresML Cloud * vpn_key VPC * Product Solutions ml & ai tasks * manage_search RAG * description NLP * model_training Supervised Learning * subtitles Embeddings * open_with Vector Database use cases * feature_search Search * smart_toy Chatbots * Solutions * Pricing * Docs * Blog Company * smart_toy About * work Careers * alternate_email Contact * Company * search * 5.7K GitHub Sign In Start Your Project arrow_back Back * About * Careers * Contact arrow_back Back * RAG * NLP * Supervised Learning * Embeddings * Vector Database arrow_back Back * Search * Chatbots arrow_back Back * Tasks * Use Cases arrow_back Back * Korvus * PGML * PgCat arrow_back Back * PostgresML Cloud * VPC arrow_back Back * Open-Source * Deployment Options search Sign up and get $100 in free usage credits arrow_forward close INFRA FOR RAG APPS THAT WORK IN PROD Index, filter & rank vectors Create embeddings Generate real-time, fact-based outputs Try it Now Docsarrow_forward Task: text-generation expand_more * text-generation * embeddings * summarization * translation Model: meta-llama/Meta-Llama-3-8B-Instruct expand_more * meta-llama/Meta-Llama-3-8B-Instruct * meta-llama/Meta-Llama-3-70B-Instruct * mistralai/Mixtral-8x7B-Instruct-v0.1 * mistralai/Mistral-7B-Instruct-v0.2 * intfloat/e5-small-v2 * Alibaba-NLP/gte-large-en-v1.5 * mixedbread-ai/mxbai-embed-large-v1 * google-t5/t5-base * google/pegasus-xsum 99 1 2 3 4 5 6 7 8 9 10 › ⌄ SELECT pgml.transform_stream( task => '{ "task": "text-generation", "model": "meta-llama/Meta-Llama-3-8B-Instruct" }'::JSONB, input => 'AI is going to', args => '{ "max_new_tokens": 100 }'::JSONB ); Run Loading non-cached models may take a few moments [{“translation_text”:”Bienvenue à l'avenir!”}] AI is going to change the world! TRUSTED BY ENGINEERS AT "BLEEDING EDGE STUFF IN A MATTER OF MINUTES." STUCK WITH AN AI STACK SO COMPLICATED YOUR APP BARELY RUNS IN PROD?🤔 handyman MICROSERVICE MAYHEM You're managing a multitude of microservices - a vector database, embedding model, LLMs, and frameworks to glue them all together. cognition INCREASING INEFFICIENCY Production outages that won't stop, high-latency UX, ever-increasing dev time, and data-hungry compute with costly vendors. mystery EXCESSIVE EXPOSURE Your data is sent through multiple systems. You can't be sure if it's secure, stable, compliant or private. ARCHITECTURE MAKES OR BREAKS YOUR APP. POSTGRESML RADICALLY SIMPLIFIES IT "Over the past year, the data infrastructure stack has seen substantial stability in core systems and rapid proliferation of supporting tools and applications" - a16z 4X FASTER than HuggingFace + Pinecone for a RAG chatbot 10X FASTER than OpenAI for embedding generation SAVE 42% On vector database cost compared to Pinecone DON'T TAKE OUR WORD FOR IT. Explore the SDK and test open source models in our hosted database. PYTHON JAVASCRIPT SQL Task: text-generation expand_more * text-generation * embeddings * summarization * translation Model: meta-llama/Meta-Llama-3-8B-Instruct expand_more * meta-llama/Meta-Llama-3-8B-Instruct * meta-llama/Meta-Llama-3-70B-Instruct * mistralai/Mixtral-8x7B-Instruct-v0.1 * mistralai/Mistral-7B-Instruct-v0.2 * intfloat/e5-small-v2 * Alibaba-NLP/gte-large-en-v1.5 * mixedbread-ai/mxbai-embed-large-v1 * google-t5/t5-base * google/pegasus-xsum content_copy 9 1 2 › pip install pgml python3 -m asyncio content_copy 9 1 2 3 4 › ⌄ from pgml import TransformerPipeline pipe = TransformerPipeline("text-generation", "meta-llama/Meta-Llama-3-8B-Instruct", {}, "postgres://pg:ml@sql.cloud.postgresml.org:6432/pgml") async for t in await pipe.transform_stream("AI is going to", {"max_new_tokens": 100}): print(t) WHAT MAKES POSTGRESML SO POWERFUL INDEX, FILTER AND RE-RANK VECTOR EMBEDDINGS 10x faster vector operations Perform fast KNN and ANN search Index embeddings with HNSW or IVFFlat Learn More arrow_forward GENERATE EMBEDDINGS Choose from state-of-the-art models Built-in data preprocessors for splitting and chunking Convert text to vector embeddings Learn More arrow_forward COLOCATE DATA AND COMPUTE Embed, serve and store all in one process Terabytes of data on a single machine Built-in data privacy & security TRAIN, TUNE AND DEPLOY Regression, classification and clustering Fine-tune LLMs on your own data Monitor model deployments over time Learn More arrow_forward GET THE MOST OF LLMS Use open-source models (Mistral, LLama, etc.) Perform a range of NLP tasks Serve with the same infrastructure Learn More arrow_forward COMPREHENSIVE PLATFORM Multiple deployment options Perform several AI & machine learning tasks Use SQL or SDKs in JS and Python INDEX, FILTER AND RE-RANK VECTOR EMBEDDINGS 10x faster vector operations Perform fast KNN and ANN search Index embeddings with HNSW or IVFFlat Learn More arrow_forward GENERATE EMBEDDINGS Choose from state-of-the-art models Built-in data preprocessors for splitting and chunking Convert text to vector embeddings Learn More arrow_forward COLOCATE DATA AND COMPUTE Embed, serve and store all in one process Terabytes of data on a single machine Built-in data privacy & security TRAIN, TUNE AND DEPLOY Regression, classification and clustering Fine-tune LLMs on your own data Monitor model deployments over time Learn More arrow_forward GET THE MOST OF LLMS Use open-source models (Mistral, LLama, etc.) Perform a range of NLP tasks Serve with the same infrastructure Learn More arrow_forward COMPREHENSIVE PLATFORM Multiple deployment options Perform several AI & machine learning tasks Use SQL or SDKs in JS and Python BETTER PRICE FOR PERFORMANCE Our pricing is based on the models you use. It’s designed to minimize costs and operations. You’ll also save because you can replace many existing tools. View pricing arrow_forward INTEGRATED LIBRARIES add remove PyTourch TensorFlow Flax SciKit-Learn Hugging Face Llama Mistral XGBoost LightGBM CatBoost MODELS add remove Llama Falcon OpenAI Mixtral Mistral dbrx-instruct LANGUAGES add remove C++ C# Elixir Go Haskell Java & Scala Julia Lua Node Perl PHP Python R Ruby Rust Swift OSS ECOSYSTEM add remove Apache Airflow DBT DBeaver Dagster Kafka AWS Azure Google Cloud WORK WITH WHAT YOU WANT HEAR FROM OUR COMMUNITY This is why I’m bullish on @postgresml - devs will always prefer to do things in data stores they already use in production James yu @jamesyu Great article by PostgresML, running @huggingface models INSIDE @PostgreSQL nice tidbit on scalability: "Our example data is based on 5 million DVD reviews from Amazon ... that's more data than fits in a Pinecone Pod at the time of writing" Paul Copplestone @kiwicopple Love the fact that @postgresml can run various algorithms to find the optimum one for model creation RebataurAI @rebataur You can look at PostgresML. Its based on Postgres, not specifically a vector database but they've got a pleasantly full featured eco-system for the whole training process, fetching datasets, huggingface integration, training etc. of course they also have vector related functions Dushyant (e/acc) @DevDminGod If you want to seamlessly integrate machine learning models into your #PostgreSQL database, use PostgresML. Khuyen Tran @KhuyenTran16 💯 there's also PostgresML if you wanna get a little more full featured - supports embedding in-database as well as CUBE / pgvector Martin McFly @martinmark Tons of capability in that Postgres extension. It's an important part of the ML Stack at cloud.tembo.io as well. Adam Hendel @adamhendel A game-changer indeed! By integrating ML and AI directly at the database level with @postgresml, we're not just streamlining processes but revolutionizing data handling and insights generation in one fell swoop. Pranay Suyash @pranaysuyash This is why I’m bullish on @postgresml - devs will always prefer to do things in data stores they already use in production James yu @jamesyu Great article by PostgresML, running @huggingface models INSIDE @PostgreSQL nice tidbit on scalability: "Our example data is based on 5 million DVD reviews from Amazon ... that's more data than fits in a Pinecone Pod at the time of writing" Paul Copplestone @kiwicopple Love the fact that @postgresml can run various algorithms to find the optimum one for model creation RebataurAI @rebataur You can look at PostgresML. Its based on Postgres, not specifically a vector database but they've got a pleasantly full featured eco-system for the whole training process, fetching datasets, huggingface integration, training etc. of course they also have vector related functions Dushyant (e/acc) @DevDminGod If you want to seamlessly integrate machine learning models into your #PostgreSQL database, use PostgresML. Khuyen Tran @KhuyenTran16 💯 there's also PostgresML if you wanna get a little more full featured - supports embedding in-database as well as CUBE / pgvector Martin McFly @martinmark Tons of capability in that Postgres extension. It's an important part of the ML Stack at cloud.tembo.io as well. Adam Hendel @adamhendel A game-changer indeed! By integrating ML and AI directly at the database level with @postgresml, we're not just streamlining processes but revolutionizing data handling and insights generation in one fell swoop. Pranay Suyash @pranaysuyash GET STARTED WITH $100 IN FREE CREDITS Sign up and and complete your profile to get $100 in free usage credits towards your first AI engine. Get Started DOCS DOCS Get started with our dev-friendly documentation. BLOG BLOG Get the latest product updates and guides to help build your leading AI application. COMMUNITY COMMUNITY We’re active on our Discord. Connect with the team and fellow PostgresML builders. 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