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Pinecone

Pinecone Assistant: A Managed Knowledge Layer for Production AI Applications Multi-domain RAG in n8n: why one knowledge base is not enough Allspice Transforms the Culinary Experience with Semantic Search Powered by Pinecone | Pinecone Building RAG workflows in n8n: choosing the right Pinecone node Knowledge needs a meta-knowledge layer Garbage Day: How Pinecone Safely Deletes Billions of Objects at Scale When "Performance" Means Two Different Things Pinecone BYOC: Pinecone in your AWS, GCP, or Azure account, no vendor access True, Relevant, and Wrong: The Applicability Problem in RAG Use the Pinecone Plugin for Claude Code to develop AI Applications Faster Millions at Stake: How Melange's High-Recall Retrieval Prevents Litigation Collapse Powering High-stakes Patent Search at Scale: How Melange Built a Reliable AI System on Pinecone | Pinecone Pinecone Assistant Node in n8n: Turn Any Data Source Into Knowledge RAG with Access Control Pinecone Dedicated Read Nodes are now in Public Preview Inside Pinecone: Slab Architecture New Bulk Data Operations: Update, Delete, and Fetch by Metadata The Hidden Cost of Building: Lessons from Aquant Simplifying Vector Embeddings with Pinecone Integrated Inference Capabilities Pinecone joins Microsoft Marketplace as a Launch Partner GTM Engineering: Clay + Pinecone for AI-powered Sales Outbound Build an AI knowledge assistant with Google Docs and Pinecone Moving Pinecone forward with Ash Ashutosh as CEO and Edo spearheading our growing AI ambitions as Chief Scientist Pinecone Founder Edo Liberty to Spearhead Pinecone’s Growing AI Ambitions; Appoints Ash Ashutosh as CEO to Expand Vector Database Market Leadership Fast, Accurate Retrieval for Creators at Scale: Delphi’s Path Toward a Million Conversational Agents with Pinecone | Pinecone Announcing Pinecone Pioneers: A Program for Builders, Organizers, and Community Leaders What is Context Engineering? Chunking Strategies for LLM Applications Beyond the hype: Why RAG remains essential for modern AI Obviant Makes 30% More Accurate Defense Acquisition Recommendations Combining Sparse and Dense Retrieval with Pinecone | Pinecone Build more knowledgeable AI applications with new LLMs and greater control in Pinecone Assistant #NYTECHWEEK 2025 Retrieval-Augmented Generation (RAG) Accurate and Efficient Metadata Filtering in Pinecone’s Serverless Vector Database | Pinecone Terminal X AI Agents, Powered by Pinecone, Turn Complex Financial Data Into Production-grade Insights at Scale | Pinecone Aquant Delivers Scalable, Expert-level Service Intelligence with Pinecone | Pinecone Cascading retrieval with multi-vector representations: balancing efficiency and effectiveness Vector databases aren't just for large-scale enterprise AI Unveiling DIME: Reproducibility, Scalability, and Formal Analysis of Dimension Importance Estimation for Dense Retrieval | Pinecone Fast and Effective Early Termination for Simple Ranking Functions | Pinecone Domain-specific AI Agents at Scale: CustomGPT.ai Serves 10,000+ Customers with Pinecone | Pinecone Using Pinecone asynchronously with FastAPI A Flexible Resource for Top-Weighted Comparisons Between Sets and Rankings | Pinecone Build secure, scalable agentic AI workflows with Rubrik Annapurna and Pinecone Tool up: Pinecone’s first MCP servers are here Add context to your agent with Pinecone Assistant MCP remote server E2Rank: Efficient and Effective Layer-wise Reranking | Pinecone ColBERT-serve: Efficient Multi-Stage Memory-Mapped Scoring | Pinecone Efficient Constant-Space Multi-Vector Retrieval | Pinecone How Vanguard Worked with Pinecone to Boost Customer Support with Faster Calls and 12% More Accurate Responses | Pinecone Pinecone Named to Fast Company's Annual List of the World's Most Innovative Companies of 2025 Launch Week: Pinecone for agents, search, recommendations, and more Optimizing Pinecone for agents (and more) Retrieval Inference for scale and performance How 1up Turns Sales Reps Into Product Experts with Pinecone | Pinecone Don’t be dense: Launching sparse indexes in Pinecone Unlock High-Precision Keyword Search with pinecone-sparse-english-v0 Evolving Pinecone's architecture to meet the demands of Knowledgeable AI Pinpoint references faster with citation highlights in Pinecone Assistant Bringing the leading vector database to your cloud Getting started with llama-text-embed-v2 Natural Language Counterfactual Explanations for Graphs Using Large Language Models | Pinecone Easily build knowledgeable chat and agent-based applications in minutes with Pinecone Assistant, now generally available How to build an agentic, chat or RAG knowledge system using Pinecone Assistant Real-time RAG with Pinecone and Estuary Flow BigQuery to Pinecone in Real-Time with Estuary Flow Stravito Turns Market and Consumer Data Into Actionable Insights with Pinecone Inference | Pinecone First-of-its-kind Pinecone Knowledge Platform to Power Best-in-class Retrieval for Customers Introducing integrated inference: Embed, rerank, and retrieve your data with a single API Strengthening security and increasing control with CMEK and API key roles Introducing Pinecone Rerank V0 Introducing cascading retrieval: Unifying dense and sparse with reranking From Idea to Action: How Pinecone Assistant Meaningfully Accelerates AI Business Building AI apps on Azure with Pinecone just got a lot easier Building a reliable, curated, and accurate RAG system with Cleanlab and Pinecone Four features of the Assistant API you aren't using - but should Deploying Pinecone with Infrastructure as Code (IaC) Streamlining CI/CD with Pinecone Local September 2024 Product Update Results of the Big ANN: NeurIPS'23 competition | Pinecone Introducing import from object storage for more efficient data transfer to Pinecone serverless Simplify, enhance, and evaluate RAG development with Pinecone Assistant, now in public preview Vectors and Graphs: Better Together August 2024 Product Update Pinecone Helps Deep Talk Deliver World-Class AI Assistants with Lower Engineering Overhead | Pinecone Assembled Delivers Better, Faster AI- Driven Support with Pinecone | Pinecone Llama 3.1 Agent using LangGraph and Ollama Build knowledgeable AI with Pinecone serverless, now generally available on Microsoft Azure Pinecone serverless is now generally available on Google Cloud, adding knowledge to AI assistants and other applications Accelerating Legal Discovery and Analysis with Pinecone and Voyage AI Bridging Dense and Sparse Maximum Inner Product Search | Pinecone Refine Retrieval Quality with Pinecone Rerank Introducing reranking to Pinecone Inference to simplify building accurate AI July 2024 Product Update Connect to Pinecone within your platform to enable a seamless AI development experience Introducing Pinecone API Versioning RAG Brag with Inkeep Co-Founder Nick Gomez LangGraph and Research Agents Introducing Pinecone Inference to streamline your AI workflow Build Privacy-aware AI software using Pinecone
Accelerate prototyping and development with Pinecone Local
Ana Wishnoff · 2024-12-06 · via Pinecone

Pinecone Local, a self-hosted, in-memory emulator of the vector database, is now available in public preview for all users. This means you can prototype, test, and develop AI applications locally while seamlessly integrating workflow testing into CI/CD pipelines.

Test, prototype, and develop on your local machine

To build robust, production-grade AI applications, you must properly test your vector database across various edge cases in different environments and ensure it fits seamlessly into the rest of your application architecture. However, constantly scaling a suite of infrastructure up and down to run integration tests is not sustainable, as it can incur extra usage and cost and drain resources. Pinecone Local allows you to run all your integration or unit tests — including the ones within your CI pipeline — on your local machine, avoiding resource-intensive serverless operations.

With Pinecone Local, you can:

  • Spin up and tear down Pinecone indexes in-memory, perfect for quickly testing and prototyping
  • Use any of our supported SDKs to make requests to the Pinecone API across the control plane and data plane endpoints, with no API key needed
  • Run large-scale tests on your own data without incurring any usage cost, enabling you to accurately and reliably experience how your production vector database will function
  • Develop your Pinecone app locally with no internet connection, providing more flexibility for you and your team

Set up the vector database emulator

Pinecone Local is available via Docker through an image called pinecone-local. This image provides the full vector database emulator, which enables you to add/delete indexes using our API to build out your environment and run your full suite of tests.

If you’d rather just spin up a single local Pinecone index without starting the full emulator, see our documentation on the pinecone-index Docker image.

Installation is easy. You pull down the image and configure your index through Docker Compose or the Docker CLI.

Configure the Docker image

To start, you will pull the pinecone-local image from Docker:

docker pull ghcr.io/pinecone-io/pinecone-local:latest

and then start Pinecone Local:

docker run -d \
--name pinecone-local \
-e PORT=5081 \
-e PINECONE_HOST=localhost
-p 5081-6000:5081-6000 \
--platform linux/amd64 \
ghcr.io/pinecone-io/pinecone-local:latest

Initialize your client and locally develop your app

Once you’ve started the Pinecone Local image, you can begin developing your app. First, initialize your Pinecone client, targeting the port specified in your Docker compose file. The below example uses the Python client.

pc = PineconeGRPC(api_key="pclocal", host="http://localhost:5081")

Once the client has been initialized, you can create new indexes using the API the same way you’d normally do it in Pinecone:

if not pc.has_index(index_name):  
    pc.create_index(
        name="index1",
        dimension=2,
        metric="cosine",
        spec=ServerlessSpec(
            cloud="aws",
            region="us-east-1",
        )
    )

Now, you can develop your application as normal, including upserting and querying data. Note that an API key is not needed to use Pinecone Local, so when initializing your Pinecone client, you can pass any string to the API key parameter.

Start building today

Pinecone Local is not suitable for use in production applications, due to its nature as an in-memory emulator. It serves as a tool for testing and prototyping, so does not provide the scalability or durability needed for robust production applications.

With that said, Pinecone Local represents an exciting step forward for the Pinecone developer experience — we encourage you to try it out. Visit our documentation for detailed instructions, and make sure to leave us your feedback, ask questions, and share your experience on our Community Forum.