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  1. Home
  2. /Repositories
  3. /Picovoice/picollm
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repoGitHubTrust 82 · PrimaryPublished 23h agoLive · 23h ago

Picovoice/picollm

On-device LLM Inference Powered by X-Bit Quantization

Lineage graph

Paper → model → repo connections mined from source citations (Tier-1 exact match).

Covers

newsOpenAI and Broadcom announce chip designed for LLM inference at scalenewsOpenAI and Broadcom unveil LLM-optimized inference chip

Implements

paperQuantization at 1.58 bitspaperW4A4 Quantization for Inference on Wan2.2-I2V-A14Bpaper$\text{Log}_\text{b}$Quant: Quantizing Language Models in Logarithmic Space

Related across the graph

newsOpenAI and Broadcom announce chip designed for LLM inference at scalenewsOpenAI and Broadcom unveil LLM-optimized inference chippaperQuantization at 1.58 bitspaperW4A4 Quantization for Inference on Wan2.2-I2V-A14Bpaper$\text{Log}_\text{b}$Quant: Quantizing Language Models in Logarithmic Space
Knowledge path·NOpenAI and Broadcom announce chip designed for LLM inference at scale→NOpenAI and Broadcom unveil LLM-optimized inference chip→PQuantization at 1.58 bits→RPicovoice/picollm

Topics

compressionefficient-inferencegemmagenerative-ailanguage-modellanguage-modelslarge-language-modelllamallama2llama3

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Graph trust82Primary
Graph score313