The Fast-Emerging World of Vector DatabasesAWS, Google Cloud, Microsoft, MongoDB, and others are racing to deliver vector capabilities for AI development and applications.
Welcome to the Cloud Database Report. I’m John Foley, a long-time tech journalist who went on to work in strategic communications at Oracle, IBM, MongoDB, and now Method Communications. If you received this newsletter, you’re a subscriber (thank you!) or someone forwarded it to you. Subscriptions are free. Another day, another vector database. The tech industry is being taken over by vector databases—an arcane technology even in the complex world of database software. But vector databases and vector search are very quickly becoming mainstream, driven by—you guessed it—the rush to build AI applications, including but not limited to generative AI. Vector databases store, search, and retrieve vectors, which are long strings of numbers representing documents, images, and other data types. Use cases include recommendations, personalization, similarity search (text, image, audio), and “long-term memory” for Large Language Models. Vector technologies have been around for years as a special-purpose technology. Facebook engineers released Facebook AI Similarity Search (FAISS) back in 2017. Now vector capabilities are popping up everywhere as database vendors rush to become part of the AI tech stacks that IT and dev teams use to move from AI pilot projects to enterprise deployment. In some cases, these are full-fledged vector database management systems. In others, they’re vector capabilities added to widely used DBMSes such as PostgreSQL. I’ve been writing about vector databases in the Cloud Database Report for more than two years. In fact, my first podcast was with Edo Liberty, CEO of Pinecone Systems, an early leader in vectors. There’s a link to that podcast at the bottom of this blog post. Now, everyone is jumping on the bandwagon. AWS, Google Cloud, Microsoft, and MongoDB are all getting in on the action.
Following is my recap, in chronological order, of 12 noteworthy developments over the past 15 weeks. Timeline of vector announcements (2023)
Further infoAs you can see, there’s a tremendous amount of activity around vector capabilities, and no doubt there will be more. And the above list is not exhaustive; other database vendors support vector search and embeddings, too. I will continue to report on this fast-changing area of the market. Finally, here are a few additional resources:
John Foley is VP of Content and Thought Leadership with Method Communications. The Cloud Database Report is independently published and unaffiliated with Method, and the views here are my own. Connect with me on LinkedIn.
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The Fast-Emerging World of Vector Databases
The Fast-Emerging World of Vector Databases
AWS, Google Cloud, Microsoft, MongoDB, and others are racing to deliver vector capabilities for AI development and applications.