Agent Interviews

Overview

What is Agent Interviews?

Agent Interviews is an AI interview-as-a-service platform designed to streamline the technical assessment process for companies. It allows users to create tailored AI interviewers for specific roles, conduct consistent and bias-reduced interviews, and collect structured data on candidate performance.

How to use Agent Interviews?

To use Agent Interviews, you need to create an account, obtain an API key, and set up the platform with an MCP-compatible client like Claude or Cursor. Once configured, you can interact with the platform using natural language queries to access interview data and reports.

Key features of Agent Interviews?

  • Customizable AI interviewers for various roles
  • Consistent and bias-reduced technical interviews
  • Structured data collection on candidate performance
  • Secure API access for integration with existing workflows

Use cases of Agent Interviews?

  1. Streamlining the hiring process for technical roles
  2. Reducing bias in candidate assessments
  3. Collecting detailed performance data for better hiring decisions

FAQ from Agent Interviews?

  • Can I customize the AI interviewers?

Yes! You can create AI interviewers tailored to specific roles and skills.

  • Is there an API for integration?

Yes! The platform provides secure API access for integration with your existing hiring workflows.

  • How does Agent Interviews ensure bias reduction?

The platform is designed to conduct consistent interviews, which helps in reducing bias in the assessment process.

Server Config

{
  "mcpServers": {
    "AgentInterviews": {
      "command": "npx",
      "args": [
        "-y",
        "mcp-remote@latest",
        "https://api.agentinterviews.com/mcp/",
        "--header",
        "Authorization:${API_KEY}"
      ],
      "env": {
        "API_KEY": "Api-Key fcNyqP1t.LXn3V0E1D6MzSnUnvexL0u8dBqtnvphp"
      }
    }
  }
}
Project Info
Created At
a year ago
Updated At
a year ago
Author Name
main
Star
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Language
-
License
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