Instructions to use datasysdev/ann-sparseattention with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Transformers
How to use datasysdev/ann-sparseattention with Transformers:
# Load model directly from transformers import AutoModel model = AutoModel.from_pretrained("datasysdev/ann-sparseattention", dtype="auto") - llama-cpp-python
How to use datasysdev/ann-sparseattention with llama-cpp-python:
# !pip install llama-cpp-python from llama_cpp import Llama llm = Llama.from_pretrained( repo_id="datasysdev/ann-sparseattention", filename="gguf/Qwen3-4B-Instruct-2507-F16-ann-6layer-k128-v2.gguf", )
llm.create_chat_completion( messages = "No input example has been defined for this model task." )
- Notebooks
- Google Colab
- Kaggle
- Local Apps Settings
- llama.cpp
How to use datasysdev/ann-sparseattention with llama.cpp:
Install (macOS, Linux)
curl -LsSf https://llama.app/install.sh | sh # Start a local OpenAI-compatible server with a web UI: llama serve -hf datasysdev/ann-sparseattention:F16 # Run inference directly in the terminal: llama cli -hf datasysdev/ann-sparseattention:F16
Install from WinGet (Windows)
winget install llama.cpp # Start a local OpenAI-compatible server with a web UI: llama serve -hf datasysdev/ann-sparseattention:F16 # Run inference directly in the terminal: llama cli -hf datasysdev/ann-sparseattention:F16
Use pre-built binary
# Download pre-built binary from: # https://github.com/ggerganov/llama.cpp/releases # Start a local OpenAI-compatible server with a web UI: ./llama-server -hf datasysdev/ann-sparseattention:F16 # Run inference directly in the terminal: ./llama-cli -hf datasysdev/ann-sparseattention:F16
Build from source code
git clone https://github.com/ggerganov/llama.cpp.git cd llama.cpp cmake -B build cmake --build build -j --target llama-server llama-cli # Start a local OpenAI-compatible server with a web UI: ./build/bin/llama-server -hf datasysdev/ann-sparseattention:F16 # Run inference directly in the terminal: ./build/bin/llama-cli -hf datasysdev/ann-sparseattention:F16
Use Docker
docker model run hf.co/datasysdev/ann-sparseattention:F16
- LM Studio
- Jan
- Ollama
How to use datasysdev/ann-sparseattention with Ollama:
ollama run hf.co/datasysdev/ann-sparseattention:F16
- Unsloth Studio
How to use datasysdev/ann-sparseattention with Unsloth Studio:
Install Unsloth Studio (macOS, Linux, WSL)
curl -fsSL https://unsloth.ai/install.sh | sh # Run unsloth studio unsloth studio -H 0.0.0.0 -p 8888 # Then open http://localhost:8888 in your browser # Search for datasysdev/ann-sparseattention to start chatting
Install Unsloth Studio (Windows)
irm https://unsloth.ai/install.ps1 | iex # Run unsloth studio unsloth studio -H 0.0.0.0 -p 8888 # Then open http://localhost:8888 in your browser # Search for datasysdev/ann-sparseattention to start chatting
Using HuggingFace Spaces for Unsloth
# No setup required # Open https://huggingface.co/spaces/unsloth/studio in your browser # Search for datasysdev/ann-sparseattention to start chatting
- Pi
How to use datasysdev/ann-sparseattention with Pi:
Start the llama.cpp server
# Install llama.cpp: brew install llama.cpp # Start a local OpenAI-compatible server: llama serve -hf datasysdev/ann-sparseattention:F16
Configure the model in Pi
# Install Pi: npm install -g @mariozechner/pi-coding-agent # Add to ~/.pi/agent/models.json: { "providers": { "llama-cpp": { "baseUrl": "http://localhost:8080/v1", "api": "openai-completions", "apiKey": "none", "models": [ { "id": "datasysdev/ann-sparseattention:F16" } ] } } }Run Pi
# Start Pi in your project directory: pi
- Hermes Agent new
How to use datasysdev/ann-sparseattention with Hermes Agent:
Start the llama.cpp server
# Install llama.cpp: brew install llama.cpp # Start a local OpenAI-compatible server: llama serve -hf datasysdev/ann-sparseattention:F16
Configure Hermes
# Install Hermes: curl -fsSL https://hermes-agent.nousresearch.com/install.sh | bash hermes setup # Point Hermes at the local server: hermes config set model.provider custom hermes config set model.base_url http://127.0.0.1:8080/v1 hermes config set model.default datasysdev/ann-sparseattention:F16
Run Hermes
hermes
- Atomic Chat new
- Docker Model Runner
How to use datasysdev/ann-sparseattention with Docker Model Runner:
docker model run hf.co/datasysdev/ann-sparseattention:F16
- Lemonade
How to use datasysdev/ann-sparseattention with Lemonade:
Pull the model
# Download Lemonade from https://lemonade-server.ai/ lemonade pull datasysdev/ann-sparseattention:F16
Run and chat with the model
lemonade run user.ann-sparseattention-F16
List all available models
lemonade list
Candidate-Scoring Operation Count
This is an analytic operation-count proxy, not a wall-clock benchmark. It counts the per-query work to identify candidate keys before running the sparse attention softmax and value multiply over the selected keys.
Assumptions
- Native head dimension:
d_head = 128. - Learned search dimension:
d_search = 128. - Quest page size:
page_size = 16. - HNSW parameters:
M = 32,ef_search = 64.
Per-query scoring formulas:
- Full attention:
N * d_head = N * 128. - Quest:
(N / page_size) * 2 * d_head = N * 16. - Learned HNSW:
M * ef_search * log2(N) * d_search = 262,144 * log2(N).
Under these constants, the Quest/HNSW operation-count crossover is approximately 297,937 tokens.
Smaller HNSW settings move the crossover earlier; higher-recall settings move it later.
Table
| Context | Full ops/query | Quest ops/query | Learned HNSW ops/query | Quest / learned |
|---|---|---|---|---|
| 4K | 512,000 | 64,000 | 3,136,759 | 0.02x |
| 8K | 1,024,000 | 128,000 | 3,398,903 | 0.04x |
| 16K | 2,048,000 | 256,000 | 3,661,047 | 0.07x |
| 32K | 4,096,000 | 512,000 | 3,923,191 | 0.13x |
| 64K | 8,192,000 | 1,024,000 | 4,185,335 | 0.24x |
| 128K | 16,384,000 | 2,048,000 | 4,447,479 | 0.46x |
| 256K | 32,768,000 | 4,096,000 | 4,709,623 | 0.87x |
| 512K | 65,536,000 | 8,192,000 | 4,971,767 | 1.65x |
| 1M | 128,000,000 | 16,000,000 | 5,224,942 | 3.06x |
| 2M | 256,000,000 | 32,000,000 | 5,487,086 | 5.83x |
| 4M | 512,000,000 | 64,000,000 | 5,749,230 | 11.13x |
Interpretation
Quest is cheaper than this high-recall HNSW proxy below the few-hundred-thousand-token regime. At 1M context, Quest costs about 16M scalar ops/query while learned HNSW costs about 5.2M, a roughly 3x operation-count advantage for learned projections.
This does not establish production wall-clock speedup. That still requires GPU-resident ANN retrieval and decode/KV-cache integration. Memory bandwidth may further favor learned ANN at very long context, but that is not included in this FLOP-only proxy.