> ## 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.

# Audience Age Demographics

> Shows the age distribution of a brand's target audience, revealing which age gro
                   ups dominate the customer base.

This endpoint returns the percentage breakdown of audience segments by age range (e.g.,
18-24, 25-34, 35-44). Essential for understanding demographic composition, identifying underserved age groups, and tailoring messaging to the dominant cohorts. A brand might learn 60% of their audience is 25-34, indicating where to focus marketing spend.

**When to use:** User wants to understand audience age composition, identify dominant age groups, find demographic gaps, analyze age-based targeting opportunities, or compare age profiles across brands.

**Common user queries:**
- "What age groups buy Nike products?"
- "Show me age distribution for the audience"
- "Which age range dominates our customer base?"
- "Get demographic breakdown by age"
- "Compare age profiles across brands"
- "What's the primary age segment?"

**Returns:** Array of age ranges with percentage distribution.
Example: [{"age_range": "25-34", "percentage": 45.5}, {"age_range": "35-44", "percentage": 30.2}]

Required permission: `read:analysis`.



## OpenAPI

````yaml https://openapi.shareofmodel.ai/swagger.json get /v1/organizations/{organization_id}/workspaces/{workspace_id}/analyses/{analysis_id}/metrics/target_audience/age_range_distribution
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/target_audience/age_range_distribution:
    get:
      tags:
        - Metrics
      summary: Audience Age Demographics
      description: >-
        Shows the age distribution of a brand's target audience, revealing which
        age gro
                           ups dominate the customer base.

        This endpoint returns the percentage breakdown of audience segments by
        age range (e.g.,

        18-24, 25-34, 35-44). Essential for understanding demographic
        composition, identifying underserved age groups, and tailoring messaging
        to the dominant cohorts. A brand might learn 60% of their audience is
        25-34, indicating where to focus marketing spend.


        **When to use:** User wants to understand audience age composition,
        identify dominant age groups, find demographic gaps, analyze age-based
        targeting opportunities, or compare age profiles across brands.


        **Common user queries:**

        - "What age groups buy Nike products?"

        - "Show me age distribution for the audience"

        - "Which age range dominates our customer base?"

        - "Get demographic breakdown by age"

        - "Compare age profiles across brands"

        - "What's the primary age segment?"


        **Returns:** Array of age ranges with percentage distribution.

        Example: [{"age_range": "25-34", "percentage": 45.5}, {"age_range":
        "35-44", "percentage": 30.2}]


        Required permission: `read:analysis`.
      operationId: target_audience_age_range_distribution
      parameters:
        - in: path
          name: analysis_id
          schema:
            type: string
            format: uuid
          description: A UUID string identifying the analysis.
          required: true
        - in: query
          name: brand
          schema:
            type: string
          description: Filter by one specific brand.
          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: query
          name: format
          schema:
            type: string
            enum:
              - csv
              - json
        - in: path
          name: organization_id
          schema:
            type: string
            format: uuid
          description: A UUID string identifying the organization.
          required: true
        - in: query
          name: source
          schema:
            type: string
            enum:
              - claude-3-5-sonnet
              - claude-4-5-sonnet
              - claude-4-6-sonnet
              - claude-4-sonnet
              - deepseek-chat
              - deepseek-reasoner
              - deepseek-v3.2-maas
              - gemini-1.5-pro
              - gemini-2.0-flash
              - gemini-2.5-flash
              - gemini-2.5-flash-grounded
              - gemini-2.5-flash-lite
              - gemini-3-flash-preview
              - google-ai-mode
              - gpt-3.5-turbo
              - gpt-4-turbo
              - gpt-4o
              - gpt-4o-mini-search
              - gpt-5
              - gpt-5.2
              - gpt-5.4-mini
              - meta-llama-3.1-70B-instruct-turbo
              - meta-llama-3.2-70B-instruct-turbo
              - meta-llama-3.3-70B-instruct-turbo
              - meta-llama-4-maverick
              - mistral-7B-instruct
              - perplexity-sonar
              - rufus
          description: Filter by one specific source.
        - in: query
          name: source__in
          schema:
            type: string
            enum:
              - claude-3-5-sonnet
              - claude-4-5-sonnet
              - claude-4-6-sonnet
              - claude-4-sonnet
              - deepseek-chat
              - deepseek-reasoner
              - deepseek-v3.2-maas
              - gemini-1.5-pro
              - gemini-2.0-flash
              - gemini-2.5-flash
              - gemini-2.5-flash-grounded
              - gemini-2.5-flash-lite
              - gemini-3-flash-preview
              - google-ai-mode
              - gpt-3.5-turbo
              - gpt-4-turbo
              - gpt-4o
              - gpt-4o-mini-search
              - gpt-5
              - gpt-5.2
              - gpt-5.4-mini
              - meta-llama-3.1-70B-instruct-turbo
              - meta-llama-3.2-70B-instruct-turbo
              - meta-llama-3.3-70B-instruct-turbo
              - meta-llama-4-maverick
              - mistral-7B-instruct
              - perplexity-sonar
              - rufus
          description: >-
            Filter by a list of sources. Values should be comma separated,
            without brackets or spaces
        - 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/TargetAudienceAgeRangeDistribution'
            text/csv:
              schema:
                type: array
                items:
                  $ref: '#/components/schemas/TargetAudienceAgeRangeDistribution'
          description: ''
      security:
        - Bearer: []
components:
  schemas:
    TargetAudienceAgeRangeDistribution:
      type: object
      description: Base class with necessary methods overridden
      properties:
        age_range:
          type: string
        percentage:
          type: string
          format: decimal
          pattern: ^-?\d{0,3}(?:\.\d{0,2})?$
      required:
        - age_range
        - percentage
  securitySchemes:
    Bearer:
      type: apiKey
      in: header
      name: Authorization

````