--- name: llmfit-hardware-model-matcher description: Terminal tool that detects your hardware and recommends which LLM models will actually run well on your system triggers: - "find LLM models that fit my hardware" - "which AI models can I run locally" - "recommend models for my GPU RAM" - "check if a model will run on my machine" - "llmfit model recommendations" - "local LLM hardware compatibility" - "what LLM fits my system specs" - "score models for my computer" --- # llmfit Hardware Model Matcher > Skill by [ara.so](https://ara.so) — Daily 2026 Skills collection. llmfit detects your system's RAM, CPU, and GPU then scores hundreds of LLM models across quality, speed, fit, and context dimensions — telling you exactly which models will run well on your hardware. It ships with an interactive TUI and a CLI, supports multi-GPU, MoE architectures, dynamic quantization, and local runtime providers (Ollama, llama.cpp, MLX, Docker Model Runner). --- ## Installation ### macOS / Linux (Homebrew) ```sh brew install llmfit ``` ### Quick install script ```sh curl -fsSL https://llmfit.axjns.dev/install.sh | sh # Without sudo, installs to ~/.local/bin curl -fsSL https://llmfit.axjns.dev/install.sh | sh -s -- --local ``` ### Windows (Scoop) ```sh scoop install llmfit ``` ### Docker / Podman ```sh docker run ghcr.io/alexsjones/llmfit # With jq for scripting podman run ghcr.io/alexsjones/llmfit recommend --use-case coding | jq '.models[].name' ``` ### From source (Rust) ```sh git clone https://github.com/AlexsJones/llmfit.git cd llmfit cargo build --release # binary at target/release/llmfit ``` --- ## Core Concepts - **Fit tiers**: `perfect` (runs great), `good` (runs well), `marginal` (runs but tight), `too_tight` (won't run) - **Scoring dimensions**: quality, speed (tok/s estimate), fit (memory headroom), context capacity - **Run modes**: GPU, CPU+GPU offload, CPU-only, MoE - **Quantization**: automatically selects best quant (e.g. Q4_K_M, Q5_K_S, mlx-4bit) for your hardware - **Providers**: Ollama, llama.cpp, MLX, Docker Model Runner --- ## Key Commands ### Launch Interactive TUI ```sh llmfit ``` ### CLI Table Output ```sh llmfit --cli ``` ### Show System Hardware Detection ```sh llmfit system llmfit --json system # JSON output ``` ### List All Models ```sh llmfit list ``` ### Search Models ```sh llmfit search "llama 8b" llmfit search "mistral" llmfit search "qwen coding" ``` ### Fit Analysis ```sh # All runnable models ranked by fit llmfit fit # Only perfect fits, top 5 llmfit fit --perfect -n 5 # JSON output llmfit --json fit -n 10 ``` ### Model Detail ```sh llmfit info "Mistral-7B" llmfit info "Llama-3.1-70B" ``` ### Recommendations ```sh # Top 5 recommendations (JSON default) llmfit recommend --json --limit 5 # Filter by use case: general, coding, reasoning, chat, multimodal, embedding llmfit recommend --json --use-case coding --limit 3 llmfit recommend --json --use-case reasoning --limit 5 ``` ### Hardware Planning (invert: what hardware do I need?) ```sh llmfit plan "Qwen/Qwen3-4B-MLX-4bit" --context 8192 llmfit plan "Qwen/Qwen3-4B-MLX-4bit" --context 8192 --quant mlx-4bit llmfit plan "Qwen/Qwen3-4B-MLX-4bit" --context 8192 --target-tps 25 --json llmfit plan "Qwen/Qwen2.5-Coder-0.5B-Instruct" --context 8192 --json ``` ### REST API Server (for cluster scheduling) ```sh llmfit serve llmfit serve --host 0.0.0.0 --port 8787 ``` --- ## Hardware Overrides When autodetection fails (VMs, broken nvidia-smi, passthrough setups): ```sh # Override GPU VRAM llmfit --memory=32G llmfit --memory=24G --cli llmfit --memory=24G fit --perfect -n 5 llmfit --memory=24G recommend --json # Megabytes llmfit --memory=32000M # Works with any subcommand llmfit --memory=16G info "Llama-3.1-70B" ``` Accepted suffixes: `G`/`GB`/`GiB`, `M`/`MB`/`MiB`, `T`/`TB`/`TiB` (case-insensitive). ### Context Length Cap ```sh # Estimate memory fit at 4K context llmfit --max-context 4096 --cli # With subcommands llmfit --max-context 8192 fit --perfect -n 5 llmfit --max-context 16384 recommend --json --limit 5 # Environment variable alternative export OLLAMA_CONTEXT_LENGTH=8192 llmfit recommend --json ``` --- ## REST API Reference Start the server: ```sh llmfit serve --host 0.0.0.0 --port 8787 ``` ### Endpoints ```sh # Health check curl http://localhost:8787/health # Node hardware info curl http://localhost:8787/api/v1/system # Full model list with filters curl "http://localhost:8787/api/v1/models?min_fit=marginal&runtime=llamacpp&sort=score&limit=20" # Top runnable models for this node (key scheduling endpoint) curl "http://localhost:8787/api/v1/models/top?limit=5&min_fit=good&use_case=coding" # Search by model name/provider curl "http://localhost:8787/api/v1/models/Mistral?runtime=any" ``` ### Query Parameters for `/models` and `/models/top` | Param | Values | Description | |---|---|---| | `limit` / `n` | integer | Max rows returned | | `min_fit` | `perfect\|good\|marginal\|too_tight` | Minimum fit tier | | `perfect` | `true\|false` | Force perfect-only | | `runtime` | `any\|mlx\|llamacpp` | Filter by runtime | | `use_case` | `general\|coding\|reasoning\|chat\|multimodal\|embedding` | Use case filter | | `provider` | string | Substring match on provider | | `search` | string | Free-text across name/provider/size/use-case | | `sort` | `score\|tps\|params\|mem\|ctx\|date\|use_case` | Sort column | | `include_too_tight` | `true\|false` | Include non-runnable models | | `max_context` | integer | Per-request context cap | --- ## Scripting & Automation Examples ### Bash: Get top coding models as JSON ```bash #!/bin/bash # Get top 3 coding models that fit perfectly llmfit recommend --json --use-case coding --limit 3 | \ jq -r '.models[] | "\(.name) (\(.score)) - \(.quantization)"' ``` ### Bash: Check if a specific model fits ```bash #!/bin/bash MODEL="Mistral-7B" RESULT=$(llmfit info "$MODEL" --json 2>/dev/null) FIT=$(echo "$RESULT" | jq -r '.fit') if [[ "$FIT" == "perfect" || "$FIT" == "good" ]]; then echo "$MODEL will run well (fit: $FIT)" else echo "$MODEL may not run well (fit: $FIT)" fi ``` ### Bash: Auto-pull top Ollama model ```bash #!/bin/bash # Get the top fitting model name and pull it with Ollama TOP_MODEL=$(llmfit recommend --json --limit 1 | jq -r '.models[0].name') echo "Pulling: $TOP_MODEL" ollama pull "$TOP_MODEL" ``` ### Python: Query the REST API ```python import requests BASE_URL = "http://localhost:8787" def get_system_info(): resp = requests.get(f"{BASE_URL}/api/v1/system") return resp.json() def get_top_models(use_case="coding", limit=5, min_fit="good"): params = { "use_case": use_case, "limit": limit, "min_fit": min_fit, "sort": "score" } resp = requests.get(f"{BASE_URL}/api/v1/models/top", params=params) return resp.json() def search_models(query, runtime="any"): resp = requests.get( f"{BASE_URL}/api/v1/models/{query}", params={"runtime": runtime} ) return resp.json() # Example usage system = get_system_info() print(f"GPU: {system.get('gpu_name')} | VRAM: {system.get('vram_gb')}GB") models = get_top_models(use_case="reasoning", limit=3) for m in models.get("models", []): print(f"{m['name']}: score={m['score']}, fit={m['fit']}, quant={m['quantization']}") ``` ### Python: Hardware-aware model selector for agents ```python import subprocess import json def get_best_model_for_task(use_case: str, min_fit: str = "good") -> dict: """Use llmfit to select the best model for a given task.""" result = subprocess.run( ["llmfit", "recommend", "--json", "--use-case", use_case, "--limit", "1"], capture_output=True, text=True ) data = json.loads(result.stdout) models = data.get("models", []) return models[0] if models else None def plan_hardware_requirements(model_name: str, context: int = 4096) -> dict: """Get hardware requirements for running a specific model.""" result = subprocess.run( ["llmfit", "plan", model_name, "--context", str(context), "--json"], capture_output=True, text=True ) return json.loads(result.stdout) # Select best coding model best = get_best_model_for_task("coding") if best: print(f"Best coding model: {best['name']}") print(f" Quantization: {best['quantization']}") print(f" Estimated tok/s: {best['tps']}") print(f" Memory usage: {best['mem_pct']}%") # Plan hardware for a specific model plan = plan_hardware_requirements("Qwen/Qwen3-4B-MLX-4bit", context=8192) print(f"Min VRAM needed: {plan['hardware']['min_vram_gb']}GB") print(f"Recommended VRAM: {plan['hardware']['recommended_vram_gb']}GB") ``` ### Docker Compose: Node scheduler pattern ```yaml version: "3.8" services: llmfit-api: image: ghcr.io/alexsjones/llmfit command: serve --host 0.0.0.0 --port 8787 ports: - "8787:8787" environment: - OLLAMA_CONTEXT_LENGTH=8192 devices: - /dev/nvidia0:/dev/nvidia0 # pass GPU through ``` --- ## TUI Key Reference | Key | Action | |---|---| | `↑`/`↓` or `j`/`k` | Navigate models | | `/` | Search (name, provider, params, use case) | | `Esc`/`Enter` | Exit search | | `Ctrl-U` | Clear search | | `f` | Cycle fit filter: All → Runnable → Perfect → Good → Marginal | | `a` | Cycle availability: All → GGUF Avail → Installed | | `s` | Cycle sort: Score → Params → Mem% → Ctx → Date → Use Case | | `t` | Cycle color theme (auto-saved) | | `v` | Visual mode (multi-select for comparison) | | `V` | Select mode (column-based filtering) | | `p` | Plan mode (what hardware needed for this model?) | | `P` | Provider filter popup | | `U` | Use-case filter popup | | `C` | Capability filter popup | | `m` | Mark model for comparison | | `c` | Compare view (marked vs selected) | | `d` | Download model (via detected runtime) | | `r` | Refresh installed models from runtimes | | `Enter` | Toggle detail view | | `g`/`G` | Jump to top/bottom | | `q` | Quit | ### Themes `t` cycles: Default → Dracula → Solarized → Nord → Monokai → Gruvbox Theme saved to `~/.config/llmfit/theme` --- ## GPU Detection Details | GPU Vendor | Detection Method | |---|---| | NVIDIA | `nvidia-smi` (multi-GPU, aggregates VRAM) | | AMD | `rocm-smi` | | Intel Arc | sysfs (discrete) / `lspci` (integrated) | | Apple Silicon | `system_profiler` (unified memory = VRAM) | | Ascend | `npu-smi` | --- ## Common Patterns ### "What can I run on my 16GB M2 Mac?" ```sh llmfit fit --perfect -n 10 # or interactively llmfit # press 'f' to filter to Perfect fit ``` ### "I have a 3090 (24GB VRAM), what coding models fit?" ```sh llmfit recommend --json --use-case coding | jq '.models[]' # or with manual override if detection fails llmfit --memory=24G recommend --json --use-case coding ``` ### "Can Llama 70B run on my machine?" ```sh llmfit info "Llama-3.1-70B" # Plan what hardware you'd need llmfit plan "Llama-3.1-70B" --context 4096 --json ``` ### "Show me only models already installed in Ollama" ```sh llmfit # press 'a' to cycle to Installed filter # or llmfit fit -n 20 # run, press 'i' in TUI for installed-first ``` ### "Script: find best model and start Ollama" ```bash MODEL=$(llmfit recommend --json --limit 1 | jq -r '.models[0].name') ollama serve & ollama run "$MODEL" ``` ### "API: poll node capabilities for cluster scheduler" ```bash # Check node, get top 3 good+ models for reasoning curl -s "http://node1:8787/api/v1/models/top?limit=3&min_fit=good&use_case=reasoning" | \ jq '.models[].name' ``` --- ## Troubleshooting **GPU not detected / wrong VRAM reported** ```sh # Verify detection llmfit system # Manual override llmfit --memory=24G --cli ``` **`nvidia-smi` not found but you have an NVIDIA GPU** ```sh # Install CUDA toolkit or nvidia-utils, then retry # Or override manually: llmfit --memory=8G fit --perfect ``` **Models show as too_tight but you have enough RAM** ```sh # llmfit may be using context-inflated estimates; cap context llmfit --max-context 2048 fit --perfect -n 10 ``` **REST API: test endpoints** ```sh # Spawn server and run validation suite python3 scripts/test_api.py --spawn # Test already-running server python3 scripts/test_api.py --base-url http://127.0.0.1:8787 ``` **Apple Silicon: VRAM shows as system RAM (expected)** ```sh # This is correct — Apple Silicon uses unified memory # llmfit accounts for this automatically llmfit system # should show backend: Metal ``` **Context length environment variable** ```sh export OLLAMA_CONTEXT_LENGTH=4096 llmfit recommend --json # uses 4096 as context cap ```