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  3. Zeng, Xianzhi, et al. "CANDY: A Benchmark for Continuous Approximate Nearest Neighbor Search with Dynamic Data Ingestion."

Zeng, Xianzhi, et al. "CANDY: A Benchmark for Continuous Approximate Nearest Neighbor Search with Dynamic Data Ingestion."

A 2024 paper introducing CANDY, a benchmark for continuous ANN search with a focus on dynamic data ingestion, crucial for next-generation vector databases.

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Zeng, Xianzhi, et al. "CANDY: A Benchmark for Continuous Approximate Nearest Neighbor Search with Dynamic Data Ingestion."

  • Category: Benchmarks & Evaluation
  • Tags: benchmark, ann, dynamic-data, vector-search
  • Source: arXiv:2406.19651

Description

CANDY is a benchmark introduced in 2024 for evaluating continuous approximate nearest neighbor (ANN) search systems, with a special focus on dynamic data ingestion. This is particularly relevant for assessing next-generation vector databases that must support both efficient similarity search and frequent data updates.

Features

  • Provides a standardized benchmark for continuous ANN search.
  • Focuses on scenarios with dynamic (frequently updated) data.
  • Useful for evaluating vector database systems' performance under realistic, evolving workloads.
  • Supports research and development of efficient ANN algorithms adaptable to dynamic environments.

Pricing

Not applicable; this is an academic benchmark paper.

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Information

Websitearxiv.org
PublishedMay 13, 2025

Categories

1 Item
Benchmarks & Evaluation

Tags

4 Items
#benchmark
#ANN
#dynamic data
#vector search

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