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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 Accelerate prototyping and development with Pinecone Local 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
First-of-its-kind Pinecone Knowledge Platform to Power Best-in-class Retrieval for Customers
2024-12-04 · via Pinecone

Industry-leading vector database capabilities combined with proprietary AI models to help developers build up to 48% more accurate AI applications, faster and more easily

Pinecone recognized as AWS GenAI Innovator Partner of the Year

LAS VEGAS, Dec. 3, 2024 /PRNewswire/ -- With its vector database at the core, Pinecone, the leading knowledge platform for building accurate, secure, and scalable artificial intelligence (AI) applications, has announced industry-first integrated inference capabilities. These include fully-managed embedding and reranking models, along with a novel approach to sparse embedding retrieval. By combining these innovations with Pinecone's proven dense retrieval capabilities, the platform delivers an approach to cascading retrieval that defines a new standard for AI-powered solutions.

New proprietary reranking and embedding models, as well as the addition of third-party models like Cohere's Rerank 3.5 model, further provide customers quick, easy access to high-quality retrieval and significantly streamline the development of grounded AI applications.

"Our goal at Pinecone has always been to make it as easy as possible for developers to build production-ready knowledgeable AI applications quickly and at scale," said Edo Liberty, founder and CEO of Pinecone. "By adding built-in and fully-managed inference capabilities directly into our vector database, as well as new retrieval functionality, we're not only simplifying the development process but also dramatically improving the performance and accuracy of AI-powered solutions."

Pinecone's composable platform now includes the following updates:

  • pinecone-rerank-v0 proprietary reranking model
  • pinecone-sparse-english-v0 proprietary sparse embedding model
  • New sparse vector index type
  • Integration of Cohere's Rerank 3.5 model
  • New security features, including role-based access controls (RBAC), audit logs, customer-managed encryption keys (CMEK), and the general availability (GA) of Private Endpoints for AWS PrivateLink

Advancing the state of the art for retrieval

High-quality retrieval is key to delivering the best user experience in AI search and retrieval-augmented generation (RAG) applications. Pinecone's research shows that state-of-the-art performance requires combining three key components:

  • Dense vector retrieval to capture deep semantic similarities
  • Fast and precise sparse retrieval for keyword and entity search using a proprietary sparse indexing algorithm
  • Best-in-class reranking models to combine dense and sparse results and maximize relevance

By combining the sparse retrieval, dense retrieval, and reranking capabilities within Pinecone, developers will be able to create end-to-end retrieval systems that deliver up to 48% and on average 24% better performance than dense or sparse retrieval alone.

"With the advent of GenAI, we knew we could challenge the status quo in talent acquisition by building an experience focused on the job seeker rather than the hiring company," said Alex Bowcut, CTO of Hyperleap. "With Pinecone, we've seen 40% better click-through rates for the job matches we deliver with search results using their semantic retrieval as opposed to traditional full-text search. Now, with the addition of sparse vector retrieval to Pinecone's proven natural language search capabilities, we're excited to explore how we can bring deeper personalization to people looking for work."

Pinecone proprietary models

With the introduction of its first proprietary models, Pinecone is making it easier for developers to build knowledgeable AI.

Natively integrated into Pinecone's platform, these models simplify the development of production-ready AI applications.

AI search simplified with integrated inference

With the release of Pinecone's integrated inference capability, engineers can now develop state-of-the-art applications without the burden of managing model hosting, integration, or infrastructure. By offering these capabilities behind a single API, developers can seamlessly access top embedding and reranking models hosted on Pinecone's infrastructure, eliminating the need to worry about vectors or data being routed through multiple providers. This consolidation not only simplifies development but also enhances security and efficiency.

"Pinecone's new integrated inference capabilities are a game-changer for us," said Isaac Pohl-Zaretsky, CTO & Co-Founder at Pocus. "The ability to have embedding, reranking, and retrieval all within the same environment not only streamlines our workflows but also powers our AI solutions with minimal latency, less technical debt, and improved performance. Pinecone was already helping us deliver tremendous value with precise signals to power our customers' go-to-market efforts, and now with their unique platform we're thrilled to be able to deliver even more."

Greater choice with Cohere Rerank

As part of Pinecone's expanding inference capabilities, we've collaborated with Cohere to host cohere-rerank-v3.5 natively within the Pinecone platform. This allows customers to easily select and use cohere-rerank-v3.5 directly from the Pinecone API to enhance the relevance of their search results. Rerank 3.5 excels at understanding complex business information across languages making it optimal for global organizations in sectors like finance, healthcare, the public sector, and more. By incorporating Cohere's latest industry-leading reranking model, developers can further refine search outputs, ensuring more accurate and contextually relevant responses for their applications.

Enhanced security for mission-critical workloads

Pinecone's database is built for production, which means the security of customer workloads is paramount. The following advancements further strengthen Pinecone's commitment to enterprise-grade security and compliance:

  • More granular role-based access controls (RBAC) let users set API key roles for control and data plane operations
  • Customer-managed encryption keys (CMEK) enable users to control their own data encryption and enhance tenant isolation
  • Audit logs for control plane activities (e.g. index creation or deletion) via Amazon Simple Storage Service (Amazon S3) endpoints
  • Support for AWS PrivateLink is now generally available (GA) for serverless indexes

Unlocking more with AWS

Pinecone is the recipient of the 2024 AWS GenAI Innovator Partner of the Year award. This award recognizes Pinecone for possessing a unique advantage in driving the advancement of services, tools, and infrastructure pivotal for implementing generative AI technologies.

Pinecone's AWS Generative AI Competency acknowledges the company as an expert generative AI solution provider that creates value and drives business growth for customers. Customers can leverage Amazon Bedrock Knowledge Bases with Pinecone to build more effectively with AI and reduce operational complexity and costs. Specifically, Knowledge Bases for Amazon Bedrock provides "one click" integration with Pinecone, fully automating the ingestion, embedding, and querying of customer data as part of the LLM generation process. This seamless flow provides a scalable foundation for AI innovation, enabling faster time-to-value and more grounded, production-grade AI applications. Furthermore, customers using Amazon Bedrock Knowledge Bases with Pinecone can now run RAG evaluations natively in Amazon Bedrock instead of having to connect third-party tools.

Creating new possibilities with knowledgeable AI

As the first AI infrastructure company to provide a single platform for inference, retrieval, and knowledge base management, Pinecone is setting a new standard in the industry. This integrated approach is expected to lead to significant performance improvements and open up new possibilities for AI application development.

Customers can access Pinecone through the AWS Marketplace to fast-track procurement, accelerate deployment, and optimize costs to quickly and easily drive better outcomes with knowledgeable AI. Developers can also get started for free on the Pinecone console.

About Pinecone

Pinecone's mission is to make AI knowledgeable. With its vector database at the core, Pinecone is the leading knowledge platform for building accurate, secure, and scalable AI applications. More than 5000 customers across various industries have shipped AI applications faster and more confidently with Pinecone's developer-friendly technology. Pinecone has raised $138M in funding from leading investors Andreessen Horowitz, ICONIQ Growth, Menlo Ventures, and Wing Venture Capital, and operates in New York, San Francisco, and Tel Aviv.

Media Contact

Mike Sefanov
mike.s@pinecone.io
Director, Communications