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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? 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Pinecone launches world's most advanced hybrid search functionality
2022-11-01 · via Pinecone

New keyword-aware semantic search will offer tech giant-caliber technology to businesses of all sizes for the first time

SAN FRANCISCO, Oct. 31, 2022 /PRNewswire/ -- Pinecone Systems Inc., a machine learning (ML) search infrastructure company, today announced the release of an innovative keyword-aware semantic search solution that enables the world's most accessible and advanced combination of semantic and keyword search results.

"Vector search" allows companies to provide relevant results based on semantic, or similar meanings, as opposed to simple keyword-based searches. At the same time, keywords still matter in searches involving uncommon words like names or industry-specific terms. With few exceptions, companies have to choose between semantic search and keyword search, or running both systems in parallel.

Neither of these options is ideal. When companies choose one or the other, the results are not as complete as they could be, and when they run both systems in parallel and try to combine the results, cost and complexity goes up significantly.

"Our research shows that keyword-aware semantic search is superior to either semantic search or keyword search separately. This release finally allows businesses to provide their users with the most relevant possible results no matter how specific the query or how unique the topic," said Edo Liberty, Founder and CEO of Pinecone.

Pinecone developed a first-of-its-kind hybrid search technology that makes keyword-aware semantic search possible. This technology can search across two data types — "dense vectors" generated by ML models to represent meaning, and "sparse vectors" generated by traditional keyword-ranking models such as BM25 — before automatically fusing everything into one ranked list of the most relevant results.

The new keyword-aware semantic search solution from Pinecone means that companies of all sizes and types will now be able to provide the same caliber of highly relevant search results that only tech giants capable of investing heavily in data science and engineering work could offer previously. Their applications will now be able to understand both what users say and what they mean.

"Most companies do not have the resources to provide their users with the types of advanced search solutions that tech giants do, and this release from Pinecone changes all of that," concluded Liberty, who headed Amazon AI Labs and Yahoo's Research Lab in New York prior to founding Pinecone.

The Pinecone hybrid search feature is available in beta. Request access at https://www.pinecone.io/hybrid-search-early-access.

About Pinecone

Pinecone has built the first vector database to make it easy for developers to add vector search into production applications. It combines state-of-the-art vector search libraries, advanced features such as filtering, and distributed infrastructure to provide high performance and reliability at any scale. Pinecone is backed by Menlo Ventures and Wing Venture Capital and operates in San Francisco, New York and Tel Aviv. For more information, see http://www.pinecone.io.

Pinecone media contact:
Mike Sefanov
mike.s@pinecone.io
Sr. Director, Communications