> ## Documentation Index
> Fetch the complete documentation index at: https://docs.shareofmodel.ai/llms.txt
> Use this file to discover all available pages before exploring further.

# Available AI Models List

> Lists all AI models (ChatGPT, Gemini, Claude, etc.) that were queried in this an
                   alysis, showing which LLM sources have data.

This endpoint returns the distinct AI sources that contributed data to the analysis.
Essential for understanding data coverage, identifying which models were tested, and filtering subsequent queries by available sources. Typically includes sources like "chatgpt-4", "gemini-pro", "claude-3", "perplexity", etc.

**When to use:** User wants to see which AI models were tested, needs to know available sources for filtering, checks data coverage, or selects sources for comparison.

**Common user queries:**
- "Which AI models were tested?"
- "Show me available sources"
- "List all LLMs in this analysis"
- "What sources have data?"
- "Get available AI platforms"
- "Which models were queried?"

**Returns:** Array of distinct AI source identifiers.
Example: [{"source": "chatgpt-4"}, {"source": "gemini-pro"}, {"source": "claude-3"}]

Required permission: `read:analysis`.



## OpenAPI

````yaml https://openapi.shareofmodel.ai/swagger.json get /v1/organizations/{organization_id}/workspaces/{workspace_id}/analyses/{analysis_id}/metrics/raw_prompt_responses/sources
openapi: 3.0.3
info:
  title: Share Of Model API
  version: v1
  description: >-
    ## Model Context Protocol (MCP)


    In addition to this REST API, Share of Model exposes a **Model Context
    Protocol** server that lets AI assistants (Claude Desktop, Claude Code, MCP
    Inspector, custom agents…) call our endpoints directly as tools. Any
    MCP-compatible client can interact with Share of Model without writing
    custom integration code — connect once with your usual login and start
    asking the assistant to query the data for you.


    ### Connecting from Claude Desktop


    Open **Settings → Connectors**, scroll to the bottom and click **Add custom
    connector**, then paste `https://mcp.shareofmodel.ai/mcp/`. A browser window
    opens for you to log in with your Share of Model account (same login as the
    web app), and the assistant gains access to the tools.


    ### Connecting from Claude Code


    ```bash

    claude mcp add --transport http share-of-model
    https://mcp.shareofmodel.ai/mcp/

    ```


    The first time you call a tool, Claude Code opens your browser to complete
    the login.


    ### Connecting from MCP Inspector


    ```bash

    npx @modelcontextprotocol/inspector

    ```


    In the Inspector UI, pick **Streamable HTTP** as transport, paste
    `https://mcp.shareofmodel.ai/mcp/`, and click **Connect**. The first
    connection prompts you to log in.


    ### Available tools


    Only endpoints tagged `mcp` in this OpenAPI spec are exposed as MCP tools,
    and only read-only (`GET`) routes are exposed. Everything tagged `mcp` below
    is callable from any compliant MCP client.


    ### Example prompts


    Once connected, try asking your assistant things like:


    - _"List the workspaces I have access to."_

    - _"Show me the latest searches in workspace X."_

    - _"Compare the share of model between brand A and brand B over the last 30
    days."_


    For more details on the protocol itself, see the [Model Context Protocol
    specification](https://modelcontextprotocol.io/).
servers:
  - description: Production API
    url: https://api.shareofmodel.ai/
  - description: Development API
    url: https://api.dev.shareofmodel.ai/
security: []
tags:
  - name: Auth
    description: Endpoints needed for API authentication.
  - name: Organizations
    description: Endpoints related to organizations, to list all available organizations.
  - name: Workspaces
    description: Endpoints related to workspaces, to list all available workspaces.
  - name: Analyses
    description: Endpoints related to analyses and analyses management.
  - name: Asset Evaluations
    description: Endpoints related to assets and asset evaluations.
  - name: Brand Catalog
    description: Endpoints related to general brand information.
  - name: Content Briefs
    description: Endpoints related to content briefs generation and optimisation.
  - name: Metrics
    description: >+
      Endpoints related to brand metrics.


      **LEXICON**



      **Brand Awareness**: What opinion the LLMs have concerning specific
      brands, related to certain categories.



      **Brand Perception**: The general sentiment of the LLMs towards a brand,

      based on the pros and cons they mention.

paths:
  /v1/organizations/{organization_id}/workspaces/{workspace_id}/analyses/{analysis_id}/metrics/raw_prompt_responses/sources:
    get:
      tags:
        - Metrics
      summary: Available AI Models List
      description: >-
        Lists all AI models (ChatGPT, Gemini, Claude, etc.) that were queried in
        this an
                           alysis, showing which LLM sources have data.

        This endpoint returns the distinct AI sources that contributed data to
        the analysis.

        Essential for understanding data coverage, identifying which models were
        tested, and filtering subsequent queries by available sources. Typically
        includes sources like "chatgpt-4", "gemini-pro", "claude-3",
        "perplexity", etc.


        **When to use:** User wants to see which AI models were tested, needs to
        know available sources for filtering, checks data coverage, or selects
        sources for comparison.


        **Common user queries:**

        - "Which AI models were tested?"

        - "Show me available sources"

        - "List all LLMs in this analysis"

        - "What sources have data?"

        - "Get available AI platforms"

        - "Which models were queried?"


        **Returns:** Array of distinct AI source identifiers.

        Example: [{"source": "chatgpt-4"}, {"source": "gemini-pro"}, {"source":
        "claude-3"}]


        Required permission: `read:analysis`.
      operationId: raw_response_sources
      parameters:
        - in: path
          name: analysis_id
          schema:
            type: string
            format: uuid
          description: A UUID string identifying the analysis.
          required: true
        - in: query
          name: collection_date
          schema:
            type: string
            format: date
          description: >-
            Filter by a collection date being equal to the specified date.
            YYYY-MM-DD format
        - in: query
          name: collection_date__gt
          schema:
            type: string
            format: date
          description: >-
            Filter by a collection date being greater than the specified date.
            YYYY-MM-DD format
        - in: query
          name: collection_date__gte
          schema:
            type: string
            format: date
          description: >-
            Filter by a collection date being greater than or equal the
            specified date. YYYY-MM-DD format
        - in: query
          name: collection_date__lt
          schema:
            type: string
            format: date
          description: >-
            Filter by a collection date being less than the specified date.
            YYYY-MM-DD format
        - in: query
          name: collection_date__lte
          schema:
            type: string
            format: date
          description: >-
            Filter by a collection date being less than or equal the specified
            date. YYYY-MM-DD format
        - in: path
          name: organization_id
          schema:
            type: string
            format: uuid
          description: A UUID string identifying the organization.
          required: true
        - in: path
          name: workspace_id
          schema:
            type: string
            format: uuid
          description: A UUID string identifying the workspace.
          required: true
      responses:
        '200':
          content:
            application/json:
              schema:
                type: array
                items:
                  $ref: '#/components/schemas/RawPromptResponseSources'
          description: ''
      security:
        - Bearer: []
components:
  schemas:
    RawPromptResponseSources:
      type: object
      description: Base class with necessary methods overridden
      properties:
        source:
          type: string
      required:
        - source
  securitySchemes:
    Bearer:
      type: apiKey
      in: header
      name: Authorization

````