Agent Skills: Nanomaterial LIMS Manager

Laboratory Information Management System skill for nanomaterial sample tracking and data management

infrastructure-qualityID: a5c-ai/babysitter/nanomaterial-lims-manager

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plugins/babysitter/skills/babysit/process/specializations/domains/science/nanotechnology/skills/nanomaterial-lims-manager/SKILL.md

Skill Metadata

Name
nanomaterial-lims-manager
Description
Laboratory Information Management System skill for nanomaterial sample tracking and data management

Nanomaterial LIMS Manager

Purpose

The Nanomaterial LIMS Manager skill provides comprehensive laboratory information management for nanomaterial research, enabling systematic sample tracking, data linking, and quality assurance throughout the development lifecycle.

Capabilities

  • Sample tracking and chain of custody
  • Synthesis parameter logging
  • Characterization data linking
  • Batch genealogy tracking
  • Quality control checkpoints
  • Regulatory documentation

Usage Guidelines

LIMS Operations

  1. Sample Management

    • Register new samples
    • Track sample locations
    • Maintain chain of custody
  2. Data Integration

    • Link synthesis records
    • Associate characterization data
    • Build batch genealogy
  3. Quality Management

    • Define QC checkpoints
    • Track specifications
    • Generate certificates

Process Integration

  • All synthesis and characterization processes
  • Nanomaterial Scale-Up and Process Transfer

Input Schema

{
  "operation": "register|track|query|report",
  "sample_id": "string",
  "sample_type": "nanoparticle|thin_film|device",
  "metadata": {
    "project": "string",
    "synthesized_by": "string",
    "synthesis_date": "string"
  }
}

Output Schema

{
  "sample_record": {
    "sample_id": "string",
    "status": "active|consumed|archived",
    "location": "string",
    "linked_data": [{
      "data_type": "string",
      "record_id": "string"
    }]
  },
  "genealogy": {
    "parent_batch": "string",
    "derived_samples": ["string"]
  },
  "qc_status": {
    "checkpoints_passed": "number",
    "checkpoints_total": "number",
    "status": "pass|fail|pending"
  }
}