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ito-data-atlas-agent
Design background Data Atlas style agents for Itô basket research, market discovery, parameter drafting, and human-in-the-loop editing. Use for architecture and workflow planning, not live order execution.
affaan-m
Jun 22, 2026
affaan-m/everything-claude-code

SKILL.md

skills/ito-data-atlas-agent/SKILL.md

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Frontmatter
name: ito-data-atlas-agent
description: Design background Data Atlas style agents for Itô basket research, market discovery, parameter drafting, and human-in-the-loop editing. Use for architecture and workflow planning, not live order execution.
metadata:
  origin: ECC

Itô Data Atlas Agent

Use this skill to design an agent that watches data sources, builds candidate prediction-market baskets, drafts parameter changes, and hands the result to a human for review.

This skill describes architecture and workflow. It does not run live trading.

Guardrails

  • Keep all execution behind explicit human approval.
  • Require ITO_API_KEY only for read-only Itô data access unless a separate

private implementation explicitly adds execution controls.

  • Do not persist private user data unless the target repo already has a storage

contract and the user asks for it.

  • Do not expose private strategy logic, venue credentials, or local paths in

public docs.

Architecture Pattern

Use four lanes:

  1. Research collector: public web, X, GitHub, venue docs, API metadata, and

Itô read endpoints when gated access exists.

  1. Basket drafter: turns sources into candidate underliers, weights, rules, and

questions.

  1. Risk reviewer: checks data freshness, venue limits, resolution ambiguity,

compliance notes, and prompt-injection exposure.

  1. Human editor: opens a chat or UI state where the user can approve, reject,

adjust, or ask for more research.

Workflow

  1. Define the user objective and excluded actions.
  2. List data sources and access requirements.
  3. Draft a basket spec with provenance for every underlier.
  4. Produce editable parameters rather than executable orders.
  5. Store an audit trail: inputs, model output, sources, and human decision.

Useful Skill Chains

  • deep-research for source collection.
  • x-api for current social/event signal.
  • ito-market-intelligence for venue and underlier context.
  • ito-basket-compare for user knowledge-base matching.
  • prediction-market-risk-review before any execution-capable integration.

Output Contract

Return an implementation-ready workflow spec with:

  • data sources
  • access gates
  • agent roles
  • human approval points
  • storage/audit boundary
  • non-goals