Firmamento-Technologies/TurboQuant
TurboQuant: Near-Optimal Vector Quantization for AI — Pure Python/NumPy implementation of Google Research's ICLR 2026 algorithm. 8x compression, 95%+ recall, zero preprocessing.
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Language
Python
License
Apache-2.0
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Last pushed
Mar 28, 2026
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