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Models.dev is a comprehensive open-source database of AI model specifications, pricing, and capabilities.
There's no single database with information about all the available AI models. We started Models.dev as a community-contributed project to address this. We also use it internally in opencode.
You can access this data through an API.
curl https://models.dev/api.json
Use the Model ID field to do a lookup on any model; it's the identifier used by AI SDK.
Provider-agnostic model metadata is available separately:
curl https://models.dev/models.json
Use this for facts about the model itself, independent of where it is served. If you need both provider endpoints and model-only metadata in one response:
curl https://models.dev/catalog.json
Provider logos are available as SVG files:
curl https://models.dev/logos/{provider}.svg
Replace {provider} with the Provider ID (e.g., anthropic, openai, google). If we don't have a provider's logo, a default logo is served instead.
The data is stored in the repo as TOML files; organized by provider and model. The logo is stored as an SVG. This is used to generate this page and power the API.
We need your help keeping the data up to date.
Model-only facts live in models/, using the same path-style IDs as provider models. For example, models/openai/gpt-5.toml defines metadata for the underlying GPT-5 model, while providers/openai/models/gpt-5.toml defines OpenAI-specific serving details such as pricing.
Use model metadata for provider-agnostic facts:
name, family, release_date, last_updated, knowledgeattachment, reasoning, tool_call, structured_output, temperature[limit] defaults like context, input, and output token limits[modalities] defaultsopen_weights, license, links, weights, and benchmarksExample:
name = "GPT-5"
family = "gpt"
release_date = "2025-08-07"
last_updated = "2025-08-07"
attachment = true
reasoning = true
temperature = false
tool_call = true
structured_output = true
open_weights = false
[limit]
context = 400_000
input = 272_000
output = 128_000
[modalities]
input = ["text", "image"]
output = ["text"]
[[benchmarks]]
name = "Benchmark Name"
score = 72.5
metric = "accuracy"
source = "https://example.com/results"
[[weights]]
label = "Model weights"
url = "https://huggingface.co/example/model"
format = "safetensors"
Provider TOMLs can inherit these facts with base_model and then keep only provider-specific fields or overrides:
base_model = "openai/gpt-5"
[cost]
input = 1.25
output = 10.00
cache_read = 0.125
[limit]
context = 200_000 # optional provider override
output = 32_000
Provider fields win over model metadata during generation. Use this when the underlying model is the same but a provider serves it with different context limits, modalities, features, or pricing.
To add a new model, start by checking if the provider already exists in the providers/ directory. If not, then:
If the provider isn't already in providers/:
providers/ with the provider's ID. For example, providers/newprovider/.provider.toml with the provider details:toml
name = "Provider Name"
npm = "@ai-sdk/provider" # AI SDK Package name
env = ["PROVIDER_API_KEY"] # Environment Variable keys used for auth
doc = "https://example.com/docs/models" # Link to provider's documentation
If the provider doesn’t publish an npm package but exposes an OpenAI-compatible endpoint, set the npm field accordingly and include the base URL:
toml
npm = "@ai-sdk/openai-compatible" # Use OpenAI-compatible SDK
api = "https://api.example.com/v1" # Required with openai-compatible
To add a logo for the provider:
logo.svg file to the provider's directory (e.g., providers/newprovider/logo.svg)currentColor for fills/strokesExample SVG structure:
<svg xmlns="http://www.w3.org/2000/svg" viewBox="0 0 24 24" fill="currentColor">
</svg>
Create a new TOML file in the provider's models/ directory where the filename is the model ID.
If the model ID contains /, use subfolders. For example, for the model ID openai/gpt-5, create a folder openai/ and place a file named gpt-5.toml inside it.
name = "Model Display Name"
attachment = true # or false - supports file attachments
reasoning = false # or true - supports reasoning / chain-of-thought
tool_call = true # or false - supports tool calling
structured_output = true # or false - supports a dedicated structured output feature
temperature = true # or false - supports temperature control
knowledge = "2024-04" # Knowledge-cutoff date
release_date = "2025-02-19" # First public release date
last_updated = "2025-02-19" # Most recent update date
open_weights = true # or false - model’s trained weights are publicly available
[cost]
input = 3.00 # Cost per million input tokens (USD)
output = 15.00 # Cost per million output tokens (USD)
reasoning = 15.00 # Cost per million reasoning tokens (USD)
cache_read = 0.30 # Cost per million cached read tokens (USD)
cache_write = 3.75 # Cost per million cached write tokens (USD)
input_audio = 1.00 # Cost per million audio input tokens (USD)
output_audio = 10.00 # Cost per million audio output tokens (USD)
[limit]
context = 400_000 # Maximum context window (tokens)
input = 272_000 # Maximum input tokens
output = 8_192 # Maximum output tokens
[modalities]
input = ["text", "image"] # Supported input modalities
output = ["text"] # Supported output modalities
[interleaved]
field = "reasoning_content" # Name of the interleaved field "reasoning_content" or "reasoning_details"
base_modelFor wrapper providers that mirror an existing model, prefer referencing the model-only metadata instead of duplicating provider-agnostic fields.
Use base_model when the provider serves the same underlying model and only provider-specific fields differ.
base_model = "anthropic/claude-opus-4-6"
[cost]
input = 5.00
output = 25.00
Rules:
base_model must point to a TOML file in models/ using <provider>/<model-id>.[cost], [limit], or [modalities], include the full values needed for that table.base_model_omit is optional and removes inherited model metadata fields after local overrides are merged. Use dot-path strings, for example base_model_omit = ["limit.input"].id still comes from the filename; do not add it to the TOML.Use base_model when the wrapper model is materially the same as the source model and only differs by provider-specific pricing, limits, modalities, provider request shape, or lifecycle flags.
Sync and generator scripts should preserve existing base_model / base_model_omit fields when updating provider TOMLs. Do not use legacy [extends] tables.
There's a GitHub Action that will automatically validate your submission against our schema to ensure:
When moving existing provider fields into model metadata, compare generated output before and after the change:
bun run compare:migrations
This prints a diff for each changed model TOML so you can confirm the generated JSON only changed where you intended.
Models must conform to the following schema, as defined in packages/core/src/schema.ts.
Provider Schema:
name: String - Display name of the providernpm: String - AI SDK Package nameenv: String[] - Environment variable keys used for authdoc: String - Link to the provider's documentationapi (optional): String - OpenAI-compatible API endpoint. Required only when using @ai-sdk/openai-compatible as the npm packageModel Schema:
name: String — Display name of the modelattachment: Boolean — Supports file attachmentsreasoning: Boolean — Supports reasoning / chain-of-thoughttool_call: Boolean - Supports tool callingstructured_output (optional): Boolean — Supports structured output featuretemperature (optional): Boolean — Supports temperature controlknowledge (optional): String — Knowledge-cutoff date in YYYY-MM or YYYY-MM-DD formatrelease_date: String — First public release date in YYYY-MM or YYYY-MM-DDlast_updated: String — Most recent update date in YYYY-MM or YYYY-MM-DDopen_weights: Boolean - Indicate the model's trained weights are publicly availableinterleaved (optional): Boolean or Object — Supports interleaved reasoning. Use true for general support or an object with field to specify the formatinterleaved.field: String — Name of the interleaved field ("reasoning_content" or "reasoning_details")cost.input: Number — Cost per million input tokens (USD)cost.output: Number — Cost per million output tokens (USD)cost.reasoning (optional): Number — Cost per million reasoning tokens (USD)cost.cache_read (optional): Number — Cost per million cached read tokens (USD)cost.cache_write (optional): Number — Cost per million cached write tokens (USD)cost.input_audio (optional): Number — Cost per million audio input tokens, if billed separately (USD)cost.output_audio (optional): Number — Cost per million audio output tokens, if billed separately (USD)limit.context: Number — Maximum context window (tokens)limit.input: Number — Maximum input tokenslimit.output: Number — Maximum output tokensmodalities.input: Array of strings — Supported input modalities (e.g., ["text", "image", "audio", "video", "pdf"])modalities.output: Array of strings — Supported output modalities (e.g., ["text"])status (optional): String — Supported status:alpha - Indicate the model is in alpha testingbeta - Indicate the model is in beta testingdeprecated - Indicate the model is no longer served by the provider's public APISee existing providers in the providers/ directory for reference:
providers/anthropic/ - Anthropic Claude modelsproviders/openai/ - OpenAI GPT modelsproviders/google/ - Google Gemini modelsMake sure you have Bun installed.
$ bun install
$ cd packages/web
$ bun run dev
And it'll open the frontend at http://localhost:3000
You can manually check provider changes with opencode by:
$ bun install
$ cd packages/web
$ bun run build
$ OPENCODE_MODELS_PATH="dist/_api.json" opencode
Open an issue if you need help or have questions about contributing.
Models.dev is created by the maintainers of SST.
$ claude mcp add models.dev \
-- python -m otcore.mcp_server <graph>