Metaview MCP

Live

OAUTH 2.0

AI

AI

Metaview is an agentic recruiting platform that automates end-to-end hiring workflows — from candidate sourcing and outreach to interview note-taking and...

  • Acts as the user: Every tool call runs as the authorizing user. Access and audit trail stay intact.
  • Credentials stay vaulted: AES-256 encrypted, resolved at request time, never stored in LLM context.
  • Scoped before every call: Per-user permissions enforced automatically. 90-day audit trail included.
Metaview MCP
agent · Acme Q3
Run
Create Ai Field in Metaview MCP
S
metaviewmcp_create_ai_field
85ms
Metaview MCP agent
Create a new ai field or update an existing one. ai fields are the primary tool for analyzing conversations at scale — e.
Sources: Metaview MCP
metaviewmcpmcp
1 tool call
18:29
Message Claude...

Tools your agent reaches for on Metaview, scoped per user.

CALL ANY TOOL
Candidate sourcing, interview notes, sequences, and reports: recruiting workflows scoped per user.
metaviewmcp_create_ai_field
Create a new ai field or update an existing one. ai fields a
Create a new ai field or update an existing one. ai fields are the primary tool for analyzing conversations at scale — each field defines a question answered independently for every conversation. when no field_id is provided, creates a new field (checking for duplicates first). when field_id is provided, updates an existing field. value types: single_line_text, long_text, list, number, currency, date, boolean.
Parameters
Name
Type
Required
Description
name
string
Required
No description.
prompt
string
Required
No description.
rationale
string
Required
Always provide a brief explanation of why you are calling this tool
value_type
string
Required
No description.
field_id
string
Optional
No description.
skip_improvement
boolean
Optional
No description.
metaviewmcp_create_report
Create a new report or update an existing one in the metavie
metaviewmcp_fetch_candidates
Always use this tool to look up one or more people or candid
metaviewmcp_find_candidate_in_sequences
Check if a candidate is enrolled in any sequences. look up a
metaviewmcp_generate_notes
Generate (or regenerate) ai notes for a conversation, option
metaviewmcp_get_chart_data
Get chart data for aggregate time-series or scatter plots. e
metaviewmcp_get_enrichment_status
Get the workspace's enrichment credit status, usage breakdow
metaviewmcp_get_note_template
Fetch a single ai notes custom template with its full sectio
metaviewmcp_get_sourcing_analytics
Get aggregate sourcing metrics for your workspace with flexi
metaviewmcp_get_sourcing_messages
Retrieve the conversation history for a sourcing search. ret
metaviewmcp_get_user_context
Important: call this tool first, before any other tool. retu
metaviewmcp_give_sourcing_feedback
Submit feedback on one or more candidates in a sourcing sear
Build your Agent
Same auth pattern across LangChain, OpenAI, Anthropic, and Google ADK.
Python · LlamaIndex
from langchain_mcp_adapters.client import MultiServerMCPClient
from scalekit import ScalekitClient

client = ScalekitClient(env_url=ENV_URL, client_id=CLIENT_ID, client_secret=SECRET)
token = client.agent.get_token(user_id="user_id", connector="metaviewmcp")

mcp = MultiServerMCPClient({
"metaviewmcp": {
"url": "https://mcp.scalekit.com/metaviewmcp",
"headers": {"Authorization": "Bearer " + token}
}
})
tools = await mcp.get_tools()
import OpenAI from "openai";
import { ScalekitClient } from "@scalekit-sdk/node";

const client = new ScalekitClient({ envUrl, clientId, clientSecret });
const token = await client.agent.getToken({ userId: "user_id", connector: "metaviewmcp" });

const openai = new OpenAI();
// Connect to MCP at https://mcp.scalekit.com/metaviewmcp
// Pass: Authorization: Bearer + token
import Anthropic from "@anthropic-ai/sdk";
import { ScalekitClient } from "@scalekit-sdk/node";

const client = new ScalekitClient({ envUrl, clientId, clientSecret });
const token = await client.agent.getToken({ userId: "user_id", connector: "metaviewmcp" });

const anthropic = new Anthropic();
// Connect to MCP at https://mcp.scalekit.com/metaviewmcp
// Pass: Authorization: Bearer + token
from google.adk.agents import LlmAgent
from scalekit import ScalekitClient

client = ScalekitClient(env_url=ENV_URL, client_id=CLIENT_ID, client_secret=SECRET)
token = client.agent.get_token(user_id="user_id", connector="metaviewmcp")
# Connect to MCP at https://mcp.scalekit.com/metaviewmcp
# Pass: Authorization: Bearer + token
Try these prompts
Copy any prompt into your agent. Each maps directly to a Metaview tool. Click to copy, paste into your agent, done.
Get started
Copy the prompt
Copied
Send a message to a sourcing or research search agent?
Copy the prompt
Copied
List saved reports the user has access to, or fetch full details for specific reports?
Advanced
Copy the prompt
Copied
Create, update, duplicate, or delete a sequence?
Copy the prompt
Copied
List, add, or remove sources on an existing AI Notes version?
SEE HOW AUTH WORKS
Your users connect once. Their Metaview credentials stay vaulted, every call is scope-checked, and every action is logged.
1
Authorize
Your user connects
Metaview MCP
once. We tie it to their identity and the meetings they approved — no shared bot account, no org-wide access
Who:
user ‘A’
when:
Once per user
access:
Limited to user
2
Store
Their
Metaview MCP
token lives in a vault scoped to them. User A's meetings are never reachable by an agent acting for user B, even on the same connection
vault:
encrypted
scope:
per-user
tokens:
auto-refreshed
3
Resolve
When your agent calls a
Metaview MCP
tool, we fetch the right token server-side. It never touches your agent, never appears in the LLM context, never shows up in your logs
speed:
~40ms
check:
before every call
seen by:
nobody
4
Audit
Every
Metaview MCP
tool call is logged — who triggered it, which meeting was fetched, what came back. 90 days of history, tied to the user who authorized it
history:
90 days
export:
SIEM-ready
logged:
every call
Test other agents
See the same per-user auth pattern across other connectors.
No items found.
Why Scalekit
Secure your agent's access. Connectors ship in minutes
Other connector libraries treat auth as a demo afterthought. Scalekit starts with identity, scope enforcement, and audit. Connectors follow.
01.
Shared tokens break per-user analytics
A shared token looks fine in a demo. In production every call looks like a service account. Scalekit resolves the real user credential.
// shared token
audit → bot_service_account

// scalekit
audit → user_abc ✓
02.
Authentication is not authorization
03.
Multi-tenancy is architectural
04.
One connector today. Ten tomorrow.
“Our agents act across Salesforce, Gong, Google Drive, and more, on behalf of every customer. Scalekit behind the scenes meant we can keep adding tools without ever rebuilding how credentials or tool calling work.”
Venu Madhav Kattagoni
Head of Engineering / Von
FAQs
Frequently Asked Questions

Does the agent access Metaview as the user or as a shared key?
As the user. Each workspace member authorizes once and Scalekit resolves their credential at request time. Audit logs attribute every action to that user, not a shared service account.

Where is the Metaview OAuth token stored?
In Scalekit's managed AES-256 token vault, namespaced per tenant. Refresh is automatic. Revocation is a single dashboard action. Tokens never appear in prompts, logs, or LLM context.

Can I limit what the agent is allowed to do in Metaview?
Yes. Pass a tool name filter to listScopedTools so the AI agent only sees the subset you authorize. Pre-API-call scope checks block out-of-policy actions before the request reaches Metaview.

What happens when a user revokes Metaview access?
The connection is invalidated on the next tool call. Subsequent requests for that user fail closed with a clear error. Other users in the tenant remain unaffected. The event is logged for audit.

Which candidates and interview notes can the agent read?
Only those visible to the authorizing user in Metaview. Candidate fetches, generated notes, and reports follow recruiting team permissions, keeping interview data need-to-know.

Start in your coding agent
Up and running in one command
Install the Scalekit skill in your editor of choice. Connector, auth, tools, prompt, all wired up
Claude Code REPL
/plugin marketplace add scalekit-inc/claude-code-authstack
/plugin install agentkit@scalekit-auth-stack
Cursor Code REPL
# ~/.cursor/mcp.json
{
""mcpServers"": {
""metaviewmcp"": {
""url"": ""https://mcp.scalekit.com/metaviewmcp"",
""headers"": { ""Authorization"": ""Bearer $SCALEKIT_TOKEN"" }
}
}
}
Codex Code REPL
# ~/.codex/config.toml
[mcp_servers.metaviewmcp]
url = ""https://mcp.scalekit.com/metaviewmcp""
auth_env = ""SCALEKIT_TOKEN""
Copilot Code REPL
# .vscode/mcp.json
{
""servers"": {
""metaviewmcp"": {
""url"": ""https://mcp.scalekit.com/metaviewmcp"",
""type"": ""http""
}
}
}