Hire ML engineers who build end-to-end machine learning systems — feature engineering, model training, MLflow experiment tracking, model serving, and monitoring. ML engineers who ship models to production, not just train them in notebooks. Connected to our MLOps consulting.
Hire ML engineers who understand that model training is 20% of the work — the other 80% is feature engineering, data validation, serving infrastructure, monitoring, and retraining pipelines. Production ML engineers build the system, not just the model.
Production ML requires: feature stores (Databricks Feature Store, Azure ML feature store), training automation, model registry (MLflow), serving endpoints, drift detection, and CI/CD for models.
ML engineers build: feature pipelines, model training automation, experiment tracking (MLflow), model serving (Azure ML endpoints, Databricks Model Serving), and monitoring dashboards for prediction accuracy and drift.
Also: A/B testing frameworks for model comparison, automated retraining triggered by drift detection. Connected to ML consulting.
Seniority: Mid-Senior to Lead (4-12 yrs)
Avg time to profile: 4.3 days
Engagement: 3-18+ months
Request Profiles →Your ML needs: use case, platform (Azure ML, Databricks), model complexity, serving requirements.
ML engineers from our AI network with production deployment experience.
Scenario: design the ML pipeline from feature engineering through production monitoring.
Curated profiles in 4.3 days. You interview. Zero commitment until convinced.
ML, AI, and advanced analytics.
Pipelines, warehouses, lakehouses.
Cloud infrastructure and DevOps.
4.3-day average to first curated profile from 200+ pre-qualified delivery partners.
Mid through lead level. Most developer placements are senior (5-10 years). Specialists who ship production code from week one.
4-stage consulting-led matching: skill assessment, scenario-based evaluation (real coding/architecture problems), reference verification, and domain review. 92% first-match acceptance.
Staff augmentation, project delivery, or managed capacity. 3-18+ months. Flexible scaling.
Hire ML engineers who ship models to production — feature engineering, MLOps, and model serving specialists.