Job Title: Staff AI/ML Engineer & Data Scientist
Schedule: 9 AM - 6 PM Central Time, M-F
Location: Remote, with approximately one 3-day trip per month to Normal, IL (expenses paid) for the first 3 months.
Role Summary
We are seeking a Staff AI/ML Engineer with deep expertise in traditional machine learning and strong MLOps skills to lead the design and deployment of production-grade ML systems. The primary focus is on building scalable, explainable models using traditional and time-series techniques, with a strong emphasis on end-to-end pipeline architecture in Databricks and AWS.
Core Responsibilities & Skills
- End-to-End ML Ownership: Lead the full model lifecycle—from data preprocessing and feature engineering to training, deployment, and monitoring—ensuring models are production-ready.
- Traditional ML Mastery: Apply and tune algorithms like regression, tree-based models, SVMs, and clustering to solve problems, primarily with unlabeled data (e.g., anomaly prediction).
- MLOps & DevOps Engineering: Architect and manage robust CI/CD pipelines for ML. Must have hands-on experience with Databricks, MLflow, AWS, database setup, and model operationalization.
- Statistical Rigor: Apply hypothesis testing, Bayesian methods, and interpretability techniques to validate models and ensure reliable insights.
- Domain Application: Analyze manufacturing, sensor, and PLC data to derive high-impact business solutions.
Must-Have Qualifications
- Master's or PhD is mandatory.
- 8+ years in applied ML/Data Science, including 3+ years in a senior/staff-level role.
- Expert proficiency in Python (Pandas, NumPy, Scikit-learn, XGBoost) and proven experience deploying traditional ML models to production.
- Hands-on MLOps experience with MLflow and Databricks (highly preferred), including model monitoring, drift detection, and automated retraining.
- Strong DevOps experience, including CI/CD and database skills (SQL/NoSQL).
Preferred Qualifications
- Exposure to RAG pipelines and vector databases.
- Experience with time-series analysis, anomaly detection, and cloud platforms (AWS, Azure, GCP).
- Familiarity with distributed computing (Spark, Ray).
Soft Skills
- Strategic problem-solver who can align technical solutions with business goals.
- Excellent communicator, able to engage effectively with both technical and non-technical stakeholders.