Research talk: Approximate nearest neighbor search systems at scale
Speaker: Harsha Simhadri, Principal Researcher, Microsoft Research India Building deep learning-based search and recommendation systems at internet scale requires a complete redesign of the search index. Key to this redesign is a fast, accurate, and cost-efficient indexing system for approximate nearest neighbor search. In this talk, we’ll present our recent advances in this space, including the DiskANN and FreshDiskANN systems and the underlying algorithms. These algorithms present an order-of-magnitude improvement in scale and cost-of-operation over the state of the art and are a first of their kind at effectively using solid-state drives (SSDs) to serve at interactive (milliseconds) latencies. In addition, they provide faster in-memory search than other graph indices, like HNSW, and support real-time concurrent insertions and deletions to SSD-resident indices without losing recall. We’ll provide an overview their applicability to various product scenarios and highlight directions for further research. Learn more about the 2021 Microsoft Research Summit: https://Aka.ms/researchsummit

Research talk: SPTAG++: Fast hundreds of billions-scale vector search with millisecond response time

An Introduction to Graph Neural Networks: Models and Applications

Approximate nearest neighbor search in high dimensions – Piotr Indyk – ICM2018
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[CVPR20 Tutorial] Billion-scale Approximate Nearest Neighbor Search

Vector Search & Approximate Nearest Neighbors (ANN) | FAISS (HNSW & IVF)

Approximate Nearest Neighbors : Data Science Concepts

System Design Explained: APIs, Databases, Caching, CDNs, Load Balancing & Production Infra

K-d Trees - Computerphile

Semantic Search: A Deep Dive Into Vector Databases (with Zain Hasan)

