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AI / MLBest Practices

AI / ML Best Practices

Patterns and conventions for building reproducible, reliable, and responsible AI/ML systems at Stratpoint.

Reproducibility

[To be filled by Capability Lead]

Placeholder sections:

  • Seed management
  • Environment pinning
  • Data versioning

Data Management

[To be filled by Capability Lead]

Model Evaluation

[To be filled by Capability Lead]

Responsible AI

[To be filled by Capability Lead]

Placeholder sections:

  • Bias and fairness evaluation
  • Model explainability
  • Privacy-preserving ML

LLM-Specific Practices

[To be filled by Capability Lead]

Placeholder sections:

  • Prompt versioning and testing
  • Hallucination mitigation
  • Token cost governance

ML System Reliability

[To be filled by Capability Lead]

Security

[To be filled by Capability Lead]

Placeholder sections:

  • Model theft and adversarial inputs
  • Data poisoning prevention
  • API key and credential hygiene
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