freshcrate
Home > Databases > examples

examples

Jupyter Notebooks to help you get hands-on with Pinecone vector databases

Description

Jupyter Notebooks to help you get hands-on with Pinecone vector databases

README

Long term memory for Artificial Intelligence

Pinecone Examples

This repository is a collection of sample applications and Jupyter Notebooks that you can run, download, study and modify in order to get hands-on with Pinecone vector databases and common AI patterns, tools and algorithms.

Two kinds of examples

This repo contains:

  1. Production ready examples in ./docs that receive regular review and support from the Pinecone engineering team
  2. Examples optimized for learning and exploration of AI techniques in ./learn and patterns for building different kinds of applications, created and maintained by the Pinecone Developer Advocacy team.

We appreciate your feedback and contributions. Please see CONTRIBUTING.md for information on how to contribute to this repo.

Getting started

Please see our Getting started guide in our learn section for detailed instructions and a walkthrough of setting up and running a Jupyter Notebook in Google Colab for experimentation.

We love feedback!

As you work through these examples, if you encounter any problems or things that are confusing or don't work quite right, please open a new issue :octocat:.

Getting support and further reading

Visit our:

Contributing

See CONTRIBUTING.md for guidelines on how to contribute.

Release History

VersionChangesUrgencyDate
main@2026-04-16Latest activity on main branchHigh4/16/2026
release-4/23Latest release: release-4/23High4/8/2026
main@2026-04-08Latest activity on main branchHigh4/8/2026
main@2026-04-08Latest activity on main branchHigh4/8/2026
main@2026-04-08Latest activity on main branchHigh4/8/2026
main@2026-04-08Latest activity on main branchHigh4/8/2026
main@2026-04-08Latest activity on main branchHigh4/8/2026

Dependencies & License Audit

Loading dependencies...

Similar Packages

Awesome-RAG-Production🚀 Build and scale reliable Retrieval-Augmented Generation (RAG) systems with this curated collection of tools, frameworks, and best practices.main@2026-04-21
ai-real-estate-assistantAdvanced AI Real Estate Assistant using RAG, LLMs, and Python. Features market analysis, property valuation, and intelligent search.dev@2026-04-13
uniAISyllabus-aware RAG study assistant for university students. Answers strictly from your own notes & PDFs, unit-scoped retrieval, cross-encoder reranking, and a hallucination gate — built to help studen0.0.0
PageIndex📑 PageIndex: Document Index for Vectorless, Reasoning-based RAGmain@2026-04-10
txtai💡 All-in-one AI framework for semantic search, LLM orchestration and language model workflowsv9.7.0