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import { parseGGUFQuantLabel } from "./gguf.js";
import type { ModelData } from "./model-data.js";
import type { PipelineType } from "./pipelines.js";
import { stringifyMessages } from "./snippets/common.js";
import { getModelInputSnippet } from "./snippets/inputs.js";
import type { ChatCompletionInputMessage } from "./tasks/index.js";
export interface LocalAppSnippet {
/**
* Title of the snippet
*/
title: string;
/**
* Optional setup guide
*/
setup?: string;
/**
* Content (or command) to be run
*/
content: string | string[];
}
/**
* Elements configurable by a local app.
*/
export type LocalApp = {
/**
* Name that appears in buttons
*/
prettyLabel: string;
/**
* Link to get more info about a local app (website etc)
*/
docsUrl: string;
/**
* main category of app
*/
mainTask: PipelineType;
/**
* Whether to display a pill "macOS-only"
*/
macOSOnly?: boolean;
comingSoon?: boolean;
/**
* IMPORTANT: function to figure out whether to display the button on a model page's main "Use this model" dropdown.
*/
displayOnModelPage: (model: ModelData) => boolean;
} & (
| {
/**
* If the app supports deeplink, URL to open.
*/
deeplink: (model: ModelData, filepath?: string) => URL;
}
| {
/**
* And if not (mostly llama.cpp), snippet to copy/paste in your terminal
* Support the placeholder {{GGUF_FILE}} that will be replaced by the gguf file path or the list of available files.
* Support the placeholder {{QUANT_TAG}} that will be replaced by the list of available quant tags or will be removed if there are no multiple quant files in a same repo.
*/
snippet: (model: ModelData, filepath?: string) => string | string[] | LocalAppSnippet | LocalAppSnippet[];
}
);
function isAwqModel(model: ModelData): boolean {
return model.config?.quantization_config?.quant_method === "awq";
}
function isGptqModel(model: ModelData): boolean {
return model.config?.quantization_config?.quant_method === "gptq";
}
function isAqlmModel(model: ModelData): boolean {
return model.config?.quantization_config?.quant_method === "aqlm";
}
function isMarlinModel(model: ModelData): boolean {
return model.config?.quantization_config?.quant_method === "marlin";
}
function isTransformersModel(model: ModelData): boolean {
return model.tags.includes("transformers");
}
function isTgiModel(model: ModelData): boolean {
return model.tags.includes("text-generation-inference");
}
function isLlamaCppGgufModel(model: ModelData) {
return !!model.gguf?.context_length;
}
function isAmdRyzenModel(model: ModelData) {
return model.tags.includes("ryzenai-hybrid") || model.tags.includes("ryzenai-npu");
}
function isMlxModel(model: ModelData) {
return model.tags.includes("mlx");
}
function getQuantTag(filepath?: string): string {
const defaultTag = ":{{QUANT_TAG}}";
if (!filepath) {
return defaultTag;
}
const quantLabel = parseGGUFQuantLabel(filepath);
return quantLabel ? `:${quantLabel}` : defaultTag;
}
const snippetLlamacpp = (model: ModelData, filepath?: string): LocalAppSnippet[] => {
const serverCommand = (binary: string) => {
const snippet = [
"# Start a local OpenAI-compatible server with a web UI:",
`${binary} -hf ${model.id}${getQuantTag(filepath)}`,
];
return snippet.join("\n");
};
const cliCommand = (binary: string) => {
const snippet = ["# Run inference directly in the terminal:", `${binary} -hf ${model.id}${getQuantTag(filepath)}`];
return snippet.join("\n");
};
return [
{
title: "Install from brew",
setup: "brew install llama.cpp",
content: [serverCommand("llama-server"), cliCommand("llama-cli")],
},
{
title: "Install from WinGet (Windows)",
setup: "winget install llama.cpp",
content: [serverCommand("llama-server"), cliCommand("llama-cli")],
},
{
title: "Use pre-built binary",
setup: [
// prettier-ignore
"# Download pre-built binary from:",
"# https://github.com/ggerganov/llama.cpp/releases",
].join("\n"),
content: [serverCommand("./llama-server"), cliCommand("./llama-cli")],
},
{
title: "Build from source code",
setup: [
"git clone https://github.com/ggerganov/llama.cpp.git",
"cd llama.cpp",
"cmake -B build",
"cmake --build build -j --target llama-server llama-cli",
].join("\n"),
content: [serverCommand("./build/bin/llama-server"), cliCommand("./build/bin/llama-cli")],
},
];
};
const snippetNodeLlamaCppCli = (model: ModelData, filepath?: string): LocalAppSnippet[] => {
const tagName = getQuantTag(filepath);
return [
{
title: "Chat with the model",
content: `npx -y node-llama-cpp chat hf:${model.id}${tagName}`,
},
{
title: "Estimate the model compatibility with your hardware",
content: `npx -y node-llama-cpp inspect estimate hf:${model.id}${tagName}`,
},
];
};
const snippetOllama = (model: ModelData, filepath?: string): string => {
return `ollama run hf.co/${model.id}${getQuantTag(filepath)}`;
};
const snippetLocalAI = (model: ModelData, filepath?: string): LocalAppSnippet[] => {
const command = (binary: string) =>
["# Load and run the model:", `${binary} huggingface://${model.id}/${filepath ?? "{{GGUF_FILE}}"}`].join("\n");
return [
{
title: "Install from binary",
setup: "curl https://localai.io/install.sh | sh",
content: command("local-ai run"),
},
{
title: "Use Docker images",
setup: [
// prettier-ignore
"# Pull the image:",
"docker pull localai/localai:latest-cpu",
].join("\n"),
content: command(
"docker run -p 8080:8080 --name localai -v $PWD/models:/build/models localai/localai:latest-cpu",
),
},
];
};
const snippetVllm = (model: ModelData): LocalAppSnippet[] => {
const messages = getModelInputSnippet(model) as ChatCompletionInputMessage[];
const isMistral = model.tags.includes("mistral-common");
const mistralFlags = isMistral
? " --tokenizer_mode mistral --config_format mistral --load_format mistral --tool-call-parser mistral --enable-auto-tool-choice"
: "";
const setup = isMistral
? [
"# Install vLLM from pip:",
"pip install vllm",
"# Install mistral-common:",
"pip install --upgrade mistral-common",
].join("\n")
: ["# Install vLLM from pip:", "pip install vllm"].join("\n");
const serverCommand = `# Start the vLLM server:
vllm serve "${model.id}"${mistralFlags}`;
const dockerCommand = `docker run --gpus all \\
-v ~/.cache/huggingface:/root/.cache/huggingface \\
--env "HF_TOKEN=<secret>" \\
-p 8000:8000 \\
--ipc=host \\
vllm/vllm-openai:latest \\
--model "${model.id}"${mistralFlags}`;
const runCommandInstruct = `# Call the server using curl (OpenAI-compatible API):
curl -X POST "http://localhost:8000/v1/chat/completions" \\
-H "Content-Type: application/json" \\
--data '{
"model": "${model.id}",
"messages": ${stringifyMessages(messages, {
indent: "\t\t",
attributeKeyQuotes: true,
customContentEscaper: (str) => str.replace(/'/g, "'\\''"),
})}
}'`;
const runCommandNonInstruct = `# Call the server using curl (OpenAI-compatible API):
curl -X POST "http://localhost:8000/v1/completions" \\
-H "Content-Type: application/json" \\
--data '{
"model": "${model.id}",
"prompt": "Once upon a time,",
"max_tokens": 512,
"temperature": 0.5
}'`;
const runCommand = model.tags.includes("conversational") ? runCommandInstruct : runCommandNonInstruct;
return [
{
title: "Install from pip and serve model",
setup: setup,
content: [serverCommand, runCommand],
},
{
title: "Use Docker images",
setup: dockerCommand,
content: [runCommand],
},
];
};
const snippetSglang = (model: ModelData): LocalAppSnippet[] => {
const messages = getModelInputSnippet(model) as ChatCompletionInputMessage[];
const setup = ["# Install SGLang from pip:", "pip install sglang"].join("\n");
const serverCommand = `# Start the SGLang server:
python3 -m sglang.launch_server \\
--model-path "${model.id}" \\
--host 0.0.0.0 \\
--port 30000`;
const dockerCommand = `docker run --gpus all \\
--shm-size 32g \\
-p 30000:30000 \\
-v ~/.cache/huggingface:/root/.cache/huggingface \\
--env "HF_TOKEN=<secret>" \\
--ipc=host \\
lmsysorg/sglang:latest \\
python3 -m sglang.launch_server \\
--model-path "${model.id}" \\
--host 0.0.0.0 \\
--port 30000`;
const runCommandInstruct = `# Call the server using curl (OpenAI-compatible API):
curl -X POST "http://localhost:30000/v1/chat/completions" \\
-H "Content-Type: application/json" \\
--data '{
"model": "${model.id}",
"messages": ${stringifyMessages(messages, {
indent: "\t\t",
attributeKeyQuotes: true,
customContentEscaper: (str) => str.replace(/'/g, "'\\''"),
})}
}'`;
const runCommandNonInstruct = `# Call the server using curl (OpenAI-compatible API):
curl -X POST "http://localhost:30000/v1/completions" \\
-H "Content-Type: application/json" \\
--data '{
"model": "${model.id}",
"prompt": "Once upon a time,",
"max_tokens": 512,
"temperature": 0.5
}'`;
const runCommand = model.tags.includes("conversational") ? runCommandInstruct : runCommandNonInstruct;
return [
{
title: "Install from pip and serve model",
setup: setup,
content: [serverCommand, runCommand],
},
{
title: "Use Docker images",
setup: dockerCommand,
content: [runCommand],
},
];
};
const snippetTgi = (model: ModelData): LocalAppSnippet[] => {
const runCommand = [
"# Call the server using curl:",
`curl -X POST "http://localhost:8000/v1/chat/completions" \\`,
` -H "Content-Type: application/json" \\`,
` --data '{`,
` "model": "${model.id}",`,
` "messages": [`,
` {"role": "user", "content": "What is the capital of France?"}`,
` ]`,
` }'`,
];
return [
{
title: "Use Docker images",
setup: [
"# Deploy with docker on Linux:",
`docker run --gpus all \\`,
` -v ~/.cache/huggingface:/root/.cache/huggingface \\`,
` -e HF_TOKEN="<secret>" \\`,
` -p 8000:80 \\`,
` ghcr.io/huggingface/text-generation-inference:latest \\`,
` --model-id ${model.id}`,
].join("\n"),
content: [runCommand.join("\n")],
},
];
};
const snippetMlxLm = (model: ModelData): LocalAppSnippet[] => {
const openaiCurl = [
"# Calling the OpenAI-compatible server with curl",
`curl -X POST "http://localhost:8000/v1/chat/completions" \\`,
` -H "Content-Type: application/json" \\`,
` --data '{`,
` "model": "${model.id}",`,
` "messages": [`,
` {"role": "user", "content": "Hello"}`,
` ]`,
` }'`,
];
return [
{
title: "Generate or start a chat session",
setup: ["# Install MLX LM", "uv tool install mlx-lm"].join("\n"),
content: [
...(model.tags.includes("conversational")
? ["# Interactive chat REPL", `mlx_lm.chat --model "${model.id}"`]
: ["# Generate some text", `mlx_lm.generate --model "${model.id}" --prompt "Once upon a time"`]),
].join("\n"),
},
...(model.tags.includes("conversational")
? [
{
title: "Run an OpenAI-compatible server",
setup: ["# Install MLX LM", "uv tool install mlx-lm"].join("\n"),
content: ["# Start the server", `mlx_lm.server --model "${model.id}"`, ...openaiCurl].join("\n"),
},
]
: []),
];
};
const snippetDockerModelRunner = (model: ModelData, filepath?: string): string => {
return `docker model run hf.co/${model.id}${getQuantTag(filepath)}`;
};
const snippetLlamaFarm = (model: ModelData, filepath?: string): LocalAppSnippet[] => {
const modelId = model.id;
const isGguf = isLlamaCppGgufModel(model);
const tagName = isGguf ? getQuantTag(filepath) : "";
// Determine model type hint for better UX
const getModelTypeHint = (): string => {
if (model.pipeline_tag === "automatic-speech-recognition") {
return "# Transcribe audio:";
}
if (model.pipeline_tag === "feature-extraction" || model.pipeline_tag === "sentence-similarity") {
return "# Generate embeddings:";
}
return "# Chat with this model:";
};
return [
{
title: "Install LlamaFarm CLI (config-based ML workflows)",
setup: [
"# macOS / Linux:",
"curl -fsSL https://raw.githubusercontent.com/llama-farm/llamafarm/main/install.sh | bash",
"",
"# Windows (PowerShell):",
"# irm https://raw.githubusercontent.com/llama-farm/llamafarm/main/install.ps1 | iex",
].join("\n"),
content: [
"# Initialize a project:",
"lf init my-project",
"lf start",
"",
getModelTypeHint(),
`lf chat --model ${modelId}${tagName} "Hello!"`,
"",
"# Or open the visual designer:",
"# http://localhost:14345",
].join("\n"),
},
{
title: "Or download the Desktop App (no CLI required)",
setup: "# Download from GitHub releases:",
content: [
"# macOS (Universal):",
"# https://github.com/llama-farm/llamafarm/releases/latest/download/LlamaFarm-desktop-app-mac-universal.dmg",
"#",
"# Windows:",
"# https://github.com/llama-farm/llamafarm/releases/latest/download/LlamaFarm-desktop-app-windows.exe",
"#",
"# Linux (x86_64):",
"# https://github.com/llama-farm/llamafarm/releases/latest/download/LlamaFarm-desktop-app-linux-x86_64.AppImage",
"#",
"# Linux (ARM64):",
"# https://github.com/llama-farm/llamafarm/releases/latest/download/LlamaFarm-desktop-app-linux-arm64.AppImage",
].join("\n"),
},
{
title: "Built-in ML capabilities (beyond model inference)",
content: [
"# In addition to inference, LlamaFarm includes specialized ML features:",
"#",
"# • Text Classification — Train classifiers with 8-16 examples (SetFit)",
"# • Anomaly Detection — Isofor tlation Forest, One-Class SVM, LOF, Autoencoders",
"# • Named Entity Recognition — Extract people, orgs, locations",
"# • OCR & Document Extraction — Surya, EasyOCR, PaddleOCR",
"# • Reranking — Cross-encoders for better RAG retrieval",
"# • Full RAG Pipeline — Ingest PDFs/docs, chunk, embed, query",
"#",
"# See: https://docs.llamafarm.dev/docs/models",
].join("\n"),
},
];
};
const snippetLemonade = (model: ModelData, filepath?: string): LocalAppSnippet[] => {
const tagName = getQuantTag(filepath);
const modelName = model.id.includes("/") ? model.id.split("/")[1] : model.id;
// Get recipe according to model type
let simplifiedModelName: string;
let recipe: string;
let checkpoint: string;
let requirements: string;
if (model.tags.some((tag) => ["ryzenai-npu", "ryzenai-hybrid"].includes(tag))) {
recipe = model.tags.includes("ryzenai-npu") ? "oga-npu" : "oga-hybrid";
checkpoint = model.id;
requirements = " (requires RyzenAI 300 series)";
simplifiedModelName = modelName.split("-awq-")[0];
simplifiedModelName += recipe === "oga-npu" ? "-NPU" : "-Hybrid";
} else {
recipe = "llamacpp";
checkpoint = `${model.id}${tagName}`;
requirements = "";
simplifiedModelName = modelName;
}
return [
{
title: "Pull the model",
setup: "# Download Lemonade from https://lemonade-server.ai/",
content: [
`lemonade-server pull user.${simplifiedModelName} --checkpoint ${checkpoint} --recipe ${recipe}`,
"# Note: If you installed from source, use the lemonade-server-dev command instead.",
].join("\n"),
},
{
title: `Run and chat with the model${requirements}`,
content: `lemonade-server run user.${simplifiedModelName}`,
},
{
title: "List all available models",
content: "lemonade-server list",
},
];
};
/**
* Add your new local app here.
*
* This is open to new suggestions and awesome upcoming apps.
*
* /!\ IMPORTANT
*
* If possible, you need to support deeplinks and be as cross-platform as possible.
*
* Ping the HF team if we can help with anything!
*/
export const LOCAL_APPS = {
"llama.cpp": {
prettyLabel: "llama.cpp",
docsUrl: "https://github.com/ggerganov/llama.cpp",
mainTask: "text-generation",
displayOnModelPage: isLlamaCppGgufModel,
snippet: snippetLlamacpp,
},
"node-llama-cpp": {
prettyLabel: "node-llama-cpp",
docsUrl: "https://node-llama-cpp.withcat.ai",
mainTask: "text-generation",
displayOnModelPage: isLlamaCppGgufModel,
snippet: snippetNodeLlamaCppCli,
},
vllm: {
prettyLabel: "vLLM",
docsUrl: "https://docs.vllm.ai",
mainTask: "text-generation",
displayOnModelPage: (model: ModelData) =>
(isAwqModel(model) ||
isGptqModel(model) ||
isAqlmModel(model) ||
isMarlinModel(model) ||
isLlamaCppGgufModel(model) ||
isTransformersModel(model)) &&
(model.pipeline_tag === "text-generation" || model.pipeline_tag === "image-text-to-text"),
snippet: snippetVllm,
},
sglang: {
prettyLabel: "SGLang",
docsUrl: "https://docs.sglang.io",
mainTask: "text-generation",
displayOnModelPage: (model: ModelData) =>
(isAwqModel(model) ||
isGptqModel(model) ||
isAqlmModel(model) ||
isMarlinModel(model) ||
isTransformersModel(model)) &&
(model.pipeline_tag === "text-generation" || model.pipeline_tag === "image-text-to-text"),
snippet: snippetSglang,
},
"mlx-lm": {
prettyLabel: "MLX LM",
docsUrl: "https://github.com/ml-explore/mlx-lm",
mainTask: "text-generation",
displayOnModelPage: (model) => model.pipeline_tag === "text-generation" && isMlxModel(model),
snippet: snippetMlxLm,
},
tgi: {
prettyLabel: "TGI",
docsUrl: "https://huggingface.co/docs/text-generation-inference/",
mainTask: "text-generation",
displayOnModelPage: isTgiModel,
snippet: snippetTgi,
},
lmstudio: {
prettyLabel: "LM Studio",
docsUrl: "https://lmstudio.ai",
mainTask: "text-generation",
displayOnModelPage: (model) => isLlamaCppGgufModel(model) || isMlxModel(model),
deeplink: (model, filepath) =>
new URL(`lmstudio://open_from_hf?model=${model.id}${filepath ? `&file=${filepath}` : ""}`),
},
localai: {
prettyLabel: "LocalAI",
docsUrl: "https://github.com/mudler/LocalAI",
mainTask: "text-generation",
displayOnModelPage: isLlamaCppGgufModel,
snippet: snippetLocalAI,
},
jan: {
prettyLabel: "Jan",
docsUrl: "https://jan.ai",
mainTask: "text-generation",
displayOnModelPage: isLlamaCppGgufModel,
deeplink: (model) => new URL(`jan://models/huggingface/${model.id}`),
},
backyard: {
prettyLabel: "Backyard AI",
docsUrl: "https://backyard.ai",
mainTask: "text-generation",
displayOnModelPage: isLlamaCppGgufModel,
deeplink: (model) => new URL(`https://backyard.ai/hf/model/${model.id}`),
},
sanctum: {
prettyLabel: "Sanctum",
docsUrl: "https://sanctum.ai",
mainTask: "text-generation",
displayOnModelPage: isLlamaCppGgufModel,
deeplink: (model) => new URL(`sanctum://open_from_hf?model=${model.id}`),
},
jellybox: {
prettyLabel: "Jellybox",
docsUrl: "https://jellybox.com",
mainTask: "text-generation",
displayOnModelPage: (model) =>
isLlamaCppGgufModel(model) ||
(model.library_name === "diffusers" &&
model.tags.includes("safetensors") &&
(model.pipeline_tag === "text-to-image" || model.tags.includes("lora"))),
deeplink: (model) => {
if (isLlamaCppGgufModel(model)) {
return new URL(`jellybox://llm/models/huggingface/LLM/${model.id}`);
} else if (model.tags.includes("lora")) {
return new URL(`jellybox://image/models/huggingface/ImageLora/${model.id}`);
} else {
return new URL(`jellybox://image/models/huggingface/Image/${model.id}`);
}
},
},
msty: {
prettyLabel: "Msty",
docsUrl: "https://msty.app",
mainTask: "text-generation",
displayOnModelPage: isLlamaCppGgufModel,
deeplink: (model) => new URL(`msty://models/search/hf/${model.id}`),
},
recursechat: {
prettyLabel: "RecurseChat",
docsUrl: "https://recurse.chat",
mainTask: "text-generation",
macOSOnly: true,
displayOnModelPage: isLlamaCppGgufModel,
deeplink: (model) => new URL(`recursechat://new-hf-gguf-model?hf-model-id=${model.id}`),
},
drawthings: {
prettyLabel: "Draw Things",
docsUrl: "https://drawthings.ai",
mainTask: "text-to-image",
macOSOnly: true,
displayOnModelPage: (model) =>
model.library_name === "diffusers" && (model.pipeline_tag === "text-to-image" || model.tags.includes("lora")),
deeplink: (model) => {
if (model.tags.includes("lora")) {
return new URL(`https://drawthings.ai/import/diffusers/pipeline.load_lora_weights?repo_id=${model.id}`);
} else {
return new URL(`https://drawthings.ai/import/diffusers/pipeline.from_pretrained?repo_id=${model.id}`);
}
},
},
diffusionbee: {
prettyLabel: "DiffusionBee",
docsUrl: "https://diffusionbee.com",
mainTask: "text-to-image",
macOSOnly: true,
displayOnModelPage: (model) => model.library_name === "diffusers" && model.pipeline_tag === "text-to-image",
deeplink: (model) => new URL(`https://diffusionbee.com/huggingface_import?model_id=${model.id}`),
},
joyfusion: {
prettyLabel: "JoyFusion",
docsUrl: "https://joyfusion.app",
mainTask: "text-to-image",
macOSOnly: true,
displayOnModelPage: (model) =>
model.tags.includes("coreml") && model.tags.includes("joyfusion") && model.pipeline_tag === "text-to-image",
deeplink: (model) => new URL(`https://joyfusion.app/import_from_hf?repo_id=${model.id}`),
},
ollama: {
prettyLabel: "Ollama",
docsUrl: "https://ollama.com",
mainTask: "text-generation",
displayOnModelPage: isLlamaCppGgufModel,
snippet: snippetOllama,
},
"docker-model-runner": {
prettyLabel: "Docker Model Runner",
docsUrl: "https://docs.docker.com/ai/model-runner/",
mainTask: "text-generation",
displayOnModelPage: isLlamaCppGgufModel,
snippet: snippetDockerModelRunner,
},
lemonade: {
prettyLabel: "Lemonade",
docsUrl: "https://lemonade-server.ai",
mainTask: "text-generation",
displayOnModelPage: (model) => isLlamaCppGgufModel(model) || isAmdRyzenModel(model),
snippet: snippetLemonade,
},
llamafarm: {
prettyLabel: "LlamaFarm",
docsUrl: "https://llamafarm.dev",
mainTask: "text-generation",
displayOnModelPage: (model) =>
// Text generation (GGUF, Transformers, TGI)
isLlamaCppGgufModel(model) ||
isTransformersModel(model) ||
model.pipeline_tag === "text-generation" ||
// Embeddings
model.pipeline_tag === "feature-extraction" ||
model.pipeline_tag === "sentence-similarity" ||
// Audio models
model.pipeline_tag === "automatic-speech-recognition" ||
model.pipeline_tag === "audio-classification" ||
// NLP tasks (NER, classification)
model.pipeline_tag === "token-classification" ||
model.pipeline_tag === "text-classification" ||
// Document understanding
model.pipeline_tag === "document-question-answering",
snippet: snippetLlamaFarm,
},
} satisfies Record<string, LocalApp>;
export type LocalAppKey = keyof typeof LOCAL_APPS;