mcp-usercall

mcp-usercall

Run real user interviews from AI agents and retrieve structured insights with themes and verbatim quotes.

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Usercall MCP - AI agents that run real user interviews

npm License

AI can build products. But it still doesn't talk to users.

Usercall MCP lets AI agents run user interviews via voice calls and return structured insights with themes and verbatim quotes.

Works with Claude Desktop, Cursor, and any MCP-compatible client.

<video src="https://github.com/user-attachments/assets/8af1ccaf-25e6-4b73-b7aa-16c2753ad648" autoplay loop muted playsinline></video>

Why this exists

AI agents can now build and ship products extremely quickly.

But most agents still rely on synthetic feedback or assumptions about users.

Usercall MCP lets agents gather real qualitative feedback directly from users.


Example workflow

Agent: "Why are users confused about onboarding?"

→ create_study
→ share interview_link with users
→ get_study_results

The returned interview_link can be shared with participants through email, Slack, Discord, or in-product prompts.

Example result:

{
  "themes": [
    {
      "name": "Onboarding confusion",
      "summary": "Users struggled to understand the second step.",
      "quotes": [
        "I wasn't sure what the app was asking me to do.",
        "I didn't know I had to verify my email before continuing."
      ]
    },
    {
      "name": "Pricing confusion",
      "summary": "Free plan limits were not clearly communicated.",
      "quotes": ["I wasn't sure if the free plan included analytics."]
    }
  ]
}

How it works

AI Agent

Usercall MCP

Usercall Agent API

Real user interviews

Themes and verbatim quotes returned to the agent


Try it in 60 seconds

1. Get an API key

Sign in at app.usercall.coHome → Developer → Create API key

2. Add to your MCP client

Claude Desktop (~/Library/Application Support/Claude/claude_desktop_config.json):

{
  "mcpServers": {
    "usercall": {
      "command": "npx",
      "args": ["-y", "@usercall/mcp"],
      "env": {
        "USERCALL_API_KEY": "your_key_here"
      }
    }
  }
}

Cursor (.cursor/mcp.json):

{
  "mcpServers": {
    "usercall": {
      "command": "npx",
      "args": ["-y", "@usercall/mcp"],
      "env": {
        "USERCALL_API_KEY": "your_key_here"
      }
    }
  }
}

Restart your MCP client.

3. Ask your agent

Run user interviews to understand why users drop off during onboarding.

Context:
- B2B SaaS product
- 3-step signup flow

Goal:
Identify confusion points and friction.

Target interviews: 5

Show participants this prototype during the interview:
https://www.figma.com/proto/abcd1234/onboarding-flow

The agent will:

  1. create a study
  2. return an interview link
  3. collect responses
  4. return themes and verbatim quotes

Structured tool example

Equivalent create_study tool call:

create_study
key_research_goal: "Understand why users drop off during onboarding"
business_context: "B2B SaaS signup flow"
target_interviews: 5
language: "en"

study_media:
  type: "prototype"
  url: "https://www.figma.com/proto/abcd1234/onboarding-flow"
  description: "New onboarding flow concept"

Tools

create_study

Creates an interview study and returns an interview_link to share with participants.

Field Type Required
key_research_goal string yes
business_context string yes
additional_context_prompt string no
target_interviews number no
language auto | en | ko no
duration_minutes number no
metadata object no
study_media object no

study_media (optional) — visual stimulus shown during all interview questions:

Field Type Required
type image | prototype yes
url string (URL) yes
description string (max 500 chars) no
  • image: Direct image URL (.png, .jpg, .gif, .webp)
  • prototype: Figma prototype URL (converted to interactive embed)
  • Media is only visible to web participants; phone callers won't see it

update_study

Updates an existing study. Use this to increase interview slots, add/update media, or disable the link.

Field Type Required
study_id uuid string yes
target_interviews number no
is_link_disabled boolean no
study_media object no

The study_media object follows the same schema as in create_study.

get_study_status

Returns the current lifecycle status of a study.

Field Type
study_id uuid string

Status values: running · analyzing · complete

Response includes interview progress fields, including completed_interviews and target_interviews.

get_study_results

Returns analysis output once the study is complete.

Field Type Required
study_id uuid string yes
format summary | full no

Summary/full responses include study progress fields and analysis output.

delete_study

Permanently deletes a study and all associated data (recordings, transcripts). Releases unused reserved credits.

Field Type Required
study_id uuid string yes

Example workflow

1. create_study
   key_research_goal: "Why do users drop off during onboarding?"
   business_context: "B2B SaaS, 3-step signup flow"

   → returns { study_id, interview_link }

2. Share interview_link with participants
   (email, Slack, in-product prompt, etc.)

3. get_study_status
   → "analyzing"

4. get_study_results
   → themes + verbatim quotes returned to the agent

With visual stimulus

1. create_study
   key_research_goal: "Get feedback on new dashboard design"
   business_context: "Redesigning analytics dashboard for power users"
   study_media:
     type: "image"
     url: "https://example.com/dashboard-mockup.png"
     description: "New dashboard design concept"

   → returns { study_id, interview_link }

2. Share interview_link — participants see the mockup during interview

For Figma prototypes, use type: "prototype" with a Figma proto URL.


Requirements

  • Node.js 18+
  • A valid Usercall API key

Self-hosting / development

pnpm install
pnpm build
USERCALL_API_KEY="your_key_here" pnpm start

Smoke test:

USERCALL_API_KEY="your_key_here" pnpm smoke

Troubleshooting

Error Fix
Missing USERCALL_API_KEY Set the env var before starting
401 Unauthorized Invalid or revoked API key
402 Insufficient credits Add credits at app.usercall.co
500 on create Verify your key has access to Agent API v1

License

MIT

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