Technical Lead — Artificial Intelligence & Analytics (AIA)
Indexed description
What You'll Do
- Lead, mentor, and coach a cross-functional team of data scientists and data engineers; monitor work assignments, track milestones, and hold staff accountable for the quality and timeliness of deliverables
- Manage stakeholder expectations by proactively communicating progress, risks, and trade-offs to technical and non-technical audiences
- Drive the end-to-end ML lifecycle, including feature engineering, model architecture and design, training, validation, deployment and monitoring
- Provide technical guidance on ML model selection, hyperparameter tuning and evaluation metrics; oversee predictive analytics solutions for project management data
- Architect scalable, resilient data pipelines using Databricks, Apache Airflow, Microsoft Fabric Data Factory and Microsoft Fabric; lead data modeling and warehousing efforts leveraging medallion architecture and Microsoft Fabric Lakehouse
- Establish and enforce engineering standards for ETL/ELT processes, code quality, version control, CI/CD, and security, including row-level and object-level controls
- Participate in and lead agile ceremonies; accurately estimate assignments and maintain technical documentation
- Evaluate emerging AI/ML frameworks and data engineering tools, making recommendations that advance team capabilities
- Assist with interviewing and onboarding new team members to ensure team sustainability
- Data Science & ML Expertise: Deep knowledge of ML model architecture and design, including supervised and unsupervised learning, deep learning, NLP, and time-series forecasting; prior experience leading data science teams and translating business problems into analytical solutions
- Data Engineering Proficiency: Expert-level understanding of ETL/ELT pipelines, data warehousing, medallion architecture and orchestration tools; prior experience leading data engineering teams building enterprise-scale data platforms
- Leadership & Accountability: Proven ability to set clear expectations, monitor deliverables, provide constructive feedback and hold team members accountable; skilled at managing stakeholder expectations across technical and business audiences
- Problem-Solving & Communication: Strong analytical skills, with the ability to break down complex problems and develop effective solutions; effective at articulating ideas and collaborating across cross-functional teams
- Programming: Python (expert), T-SQL (advanced), Spark/ PySpark (advanced)
- ML & Data Science: ML model architecture and design (advanced) ; m odel training, validation and deployment (advanced) ; f eature engineering
- Platforms & Tools: Databricks (advanced), Apache Airflow (advanced), Microsoft Fabric Data Factory (required) ; Microsoft Fabric , incl uding Lakehouse, OneLake and s emantic m odels (advanced)
- Cloud & Security: Azure compute, storage, databases and developer tools (advanced) ; r ow-level and object-level security ; p erformance monitoring and optimization
- DevOps & Process: Azure DevOps Git, CI/CD pipelines, RESTful APIs, a gile/ s crum , Microsoft Power BI
- Cloud cost optimization strategies
- Cross-tenant data sharing and Microsoft Power BI/semantic model sharing in Microsoft Fabric
- Observability tooling and platform monitoring
- Knowledge of project management and financial concepts, including budgets, revenue, profit and earned value
- Certifications in Microsoft Azure, Python, SQL or Databricks
- Bachelor’s degree in c omputer s cience, d ata s cience, s tatistics, m athematics or a related field; m aster’s degree preferred
- Seven or more years of experience in data engineering and/or data science with at least three years in a technical leadership role overseeing cross-functional data teams
Number Supervised
5 – 10 d ata s cientists and d ata e ngineers
Travel
Up to 5%
Classification
Exempt
Work Environment & Physical Demands
This job operates in a professional office environment with standard office equipment. Remote work is supported with core hours of 9:00 a . m . –6:00 p . m . E T. The employee is regularly required to speak and listen and frequently required to stand, walk and use their hands.
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