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Intro
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Speaker
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zilliz
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What is Unstructured Data?
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The Evolution of Data
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Digits
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Approximate Nearest Neighbor Search
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Vector Database Overview
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Why Purpose-built?
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Purpose-built is Complex
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ChatGPT Craziness
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GPTs are Stochastic
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Hallucination Example
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The Solution to Hallucination
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The CVP Framework
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Using Vectors to Represent Data
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Key Takeaways
Description:
Explore the rise of vector databases and their significance in handling unstructured data in this 26-minute conference talk by Frank Liu and Charles Xie from Zilliz. Gain insights into the challenges of storing and analyzing rapidly increasing volumes of unstructured data, including text, images, and IoT streams. Learn about embeddings as a solution for representing semantic content and the need for cloud-native, distributed vector databases. Discover real-world production use cases of Milvus, the popular open-source vector database, and understand the potential pitfalls in integrating it into data/ML stacks. Delve into the concept of approximate nearest neighbor search, the complexities of purpose-built databases, and the role of vector databases in addressing challenges like hallucinations in AI models. Conclude with key takeaways on the future of vector databases and their impact on managing unstructured data in the mobile/IoT era.

The Rise of Vector Databases - Lessons from the Milvus Community

Linux Foundation
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