fix: V-norm in memory_stats, SeedSequence PRNG, streaming API, serialization#61
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brosequist wants to merge 1 commit intoTheTom:mainfrom
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fix: V-norm in memory_stats, SeedSequence PRNG, streaming API, serialization#61brosequist wants to merge 1 commit intoTheTom:mainfrom
brosequist wants to merge 1 commit intoTheTom:mainfrom
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…essed_size_bits KVCacheCompressor.memory_stats() omitted the float32 norm stored per V vector, inflating the reported compression ratio. Add v_bits_total += n_vectors * 32 to account for it. Also adds compressed_size_bits() to TurboQuantMSE (was missing; TurboQuant already had it), fixing the asymmetry between the two classes. Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
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hey there. thank you for the contribution. i'll be getting to them. I apologize for the delay. |
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Summary
KVCacheCompressor.memory_stats()omitted the 32-bit float norm stored per V vector, inflating the reported compression ratio. Addsv_bits_total += n_vectors * 32.compressed_size_bits()toTurboQuantMSE(was missing;TurboQuantalready had it).seed + 1000offset withnp.random.SeedSequence(seed).spawn(2)for true PRNG independence between the PolarQuant and QJL stages.compress_token()/get_compressed_cache()streaming API toKVCacheCompressorfor auto-regressive token-by-token inference.CompressedVector.to_bytes()/from_bytes()for disk/network serialization.Test plan
pytest tests/test_kv_cache.pycovers all new paths including memory_stats accuracy, streaming API, and serialization round-trip.🤖 Generated with Claude Code