← Serch more jobs

Senior AI Consultant (Enterprise Assessment & Governance)

LinkedIn TURNBRIDGE Technical Solutions Atlanta, GA
Not Applicable Posted March 13, 2026 Job link
Thinking about this job
Not Met Priorities
What still needs stronger evidence
Requirements
  • MLOps & Model Lifecycle Assessment (Macro / Enterprise Level)
  • MLOps tooling and patterns (experiment tracking, registries, CI/CD for ML, feature stores, A/B testing frameworks)
  • Organizational maturity using established frameworks (Google MLOps levels, ML Test Score) and develop a custom enterprise rubric
  • Clear maturity scoring, risk identification, and actionable recommendations.
  • Deep-Dive Model-Level Technical Review (Micro / Model-Specific)
  • Algorithm and architecture choice (classical ML, deep learning, transformers, ensemble methods)
  • Fine-tuning and transfer learning approaches, including LLM/GenAI where applicable
  • Training methodology (data splits, regularization, hyperparameters, compute efficiency)
  • Feature engineering rigor and pipeline integrity
  • Performance metrics tied to real business impact (e.g., precision/recall tradeoffs linked to operational KPIs)
  • This work requires real applied ML experience—not theoretical familiarity.
  • Consultative Facilitation & Governance Support
  • Serve as a technical credibility layer during AI scorecarding and governance discussions.
  • Several years of hands-on applied ML / data science experience
  • Experience evaluating or auditing ML programs (platform teams, consulting, enterprise architecture, or governance roles)
  • Comfort operating in ambiguous, transformation-driven environments
  • Ability to engage senior technical leadership clearly and credibly
  • Experience within large multi‑business‑unit organizations (telecom or similar complexity preferred)
  • Strong executive communication skills and presentation capabilities
Preferred Skills
  • Experience within large multi‑business‑unit organizations (telecom or similar complexity preferred)
  • ❌ Not exclusively GenAI/LLM-focused — classical ML expertise is equally important