RRepoGEO

REPOGEO REPORT · LITE

microsoft/BitBLAS

Default branch main · commit 0c51e34a · scanned 6/7/2026, 1:36:35 AM

GitHub: 765 stars · 59 forks

AI VISIBILITY SCORE
35 /100
Critical
Category recall
0 / 2
Not recommended in any query
Rule findings
1 pass · 1 warn · 0 fail
Objective metadata checks
AI knows your name
3 / 3
Direct prompts that named your repo
HOW TO READ THIS REPORT

Action plan is what to do next — copy-pasteable changes prioritized by impact. Category visibility is the real GEO test: when a user asks an AI a brand-free question that should surface microsoft/BitBLAS, does the AI actually recommend you — or your competitors? Objective checks verify the metadata signals AI engines weight first. Self-mention check detects whether AI even knows you exist by name.

Action plan — copy-paste fixes

3 prioritized changes generated by gemini-2.5-flash. Mark items done after you ship the fix.

OVERALL DIRECTION
  • hightopics#1
    Add specific topics to improve categorization

    Why:

    COPY-PASTE FIX
    llm, quantization, mixed-precision, blas, gpu, deep-learning, pytorch, inference-optimization, machine-learning, hardware-acceleration
  • highreadme#2
    Strengthen README's opening to highlight specialization

    Why:

    CURRENT
    # BitBLAS
    
    BitBLAS is a library to support mixed-precision BLAS operations on GPUs, for example, the $W_{wdtype}A_{adtype}$ mixed-precision matrix multiplication where $C_{cdtype}[M, N] = A_{adtype}[M, K] \times W_{wdtype}[N, K]$.
    BitBLAS aims to support efficient mixed-precision DNN model deployment, especially the $W_{wdtype}A_{adtype}$ quantization in large language models (LLMs), for example, the $W_{UINT4}A_{FP16}$ in GPTQ, the $W_{INT2}A_{FP16}$ in BitDistiller, the $W_{INT2}A_{INT8}$ in BitNet-b1.58. BitBLAS is based on techniques from our paper "Ladder: Enabling Efficient Low-Precision Deep Learning Computing through Hardware-aware Tensor Transformation" at OSDI'24.
    COPY-PASTE FIX
    # BitBLAS: High-Performance Mixed-Precision BLAS for Quantized LLM Inference
    
    BitBLAS is a specialized library for **efficient mixed-precision BLAS operations on GPUs**, specifically designed to accelerate the deployment of **quantized Large Language Models (LLMs)**. Unlike general-purpose BLAS libraries or broader ML frameworks, BitBLAS focuses on optimizing critical $W_{wdtype}A_{adtype}$ matrix multiplications (e.g., FP16xINT4, INT8xINT2) essential for low-bit LLM inference. It leverages techniques from our OSDI'24 paper 'Ladder: Enabling Efficient Low-Precision Deep Learning Computing through Hardware-aware Tensor Transformation'.
  • mediumhomepage#3
    Add a homepage URL to the repository

    Why:

    COPY-PASTE FIX
    https://microsoft.github.io/BitBLAS

Category GEO backends resolved for this scan: google/gemini-2.5-flash, deepseek/deepseek-v4-flash

Category visibility — the real GEO test

Brand-free queries asked to google/gemini-2.5-flash. Did AI recommend you, or someone else?

Same questions for every model — switch tabs to compare answers and rankings.

Recall
0 / 2
0% of queries surface microsoft/BitBLAS
Avg rank
Lower is better. #1 = top recommendation.
Share of voice
0%
Of all named tools, what % are you?
Top rival
NVIDIA TensorRT
Recommended in 1 of 2 queries
COMPETITOR LEADERBOARD
  1. NVIDIA TensorRT · recommended 1×
  2. OpenVINO · recommended 1×
  3. ONNX Runtime · recommended 1×
  4. DeepSpeed · recommended 1×
  5. PyTorch · recommended 1×
  • CATEGORY QUERY
    How to efficiently deploy quantized large language models using mixed-precision matrix multiplication?
    you: not recommended
    AI recommended (in order):
    1. NVIDIA TensorRT
    2. OpenVINO
    3. ONNX Runtime
    4. DeepSpeed
    5. PyTorch
    6. TVM

    AI recommended 6 alternatives but never named microsoft/BitBLAS. This is the gap to close.

    Show full AI answer
  • CATEGORY QUERY
    Seeking a high-performance library for mixed-precision BLAS operations on GPUs for deep learning models.
    you: not recommended
    AI recommended (in order):
    1. cuBLAS
    2. cuDNN
    3. rocBLAS (ROCm/rocBLAS)
    4. PyTorch (pytorch/pytorch)
    5. TensorFlow (tensorflow/tensorflow)
    6. JAX (google/jax)

    AI recommended 6 alternatives but never named microsoft/BitBLAS. This is the gap to close.

    Show full AI answer

Objective checks

Rule-based audits of metadata signals AI engines weight most.

  • Metadata completeness
    warn

    Suggestion:

  • README presence
    pass

Self-mention check

Does AI even know your repo exists when asked about it directly?

  • Compared to common alternatives in this category, what is the core differentiator of microsoft/BitBLAS?
    pass
    AI named microsoft/BitBLAS explicitly

    AI answers can be confidently wrong. Read for accuracy: does it match your actual tech stack, audience, and differentiator?

  • If a team adopts microsoft/BitBLAS in production, what risks or prerequisites should they evaluate first?
    pass
    AI named microsoft/BitBLAS explicitly

    AI answers can be confidently wrong. Read for accuracy: does it match your actual tech stack, audience, and differentiator?

  • In one sentence, what problem does the repo microsoft/BitBLAS solve, and who is the primary audience?
    pass
    AI named microsoft/BitBLAS explicitly

    AI answers can be confidently wrong. Read for accuracy: does it match your actual tech stack, audience, and differentiator?

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  • Brand-free category queries5 vs 2 in Lite
  • Prioritized action items8 vs 3 in Lite