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Lead Database Developer - AI​/ML Focus

Job in Lakewood, Jefferson County, Colorado, USA
Listing for: Michael Baker Intl.
Full Time position
Listed on 2025-12-17
Job specializations:
  • IT/Tech
    Data Engineer, AI Engineer, Data Science Manager, Cloud Computing
Salary/Wage Range or Industry Benchmark: 130000 - 170000 USD Yearly USD 130000.00 170000.00 YEAR
Job Description & How to Apply Below

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DESCRIPTION< /h3 > < p >

Michael Baker International is seeking a highly skilled Lead Date Engineer with deep AI/ML expertise to architect, build, and scale intelligent, data-driven applications across our enterprise ecosystem. As the Lead Data Engineer, you will architect, build, and optimize enterprise-grade data platforms that power AI/ML products, analytics, and automation initiatives. You will lead data engineers, partner with data scientists, and own the roadmap for scalable data systems that enable real-time insights and model-driven decision-making.<

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RESPONSIBILITIES< /h3 > < h3 >

Data Architecture & Leadership< /h3 > < ul >

  • Lead design of scalable data pipelines, ingestion frameworks, and distributed processing systems.
  • Architect enterprise data lake/lakehouse/warehouse solutions (Databricks, Snowflake, Big Query, Redshift).
  • Guide data engineers on best practices, code quality, and scalable data engineering patterns.
  • Own end-to-end execution of data engineering initiatives, including estimation, delivery, and performance optimization.
  • < h3 >

    AI/ML Engineering Enablement< /h3 > < ul >
  • Build ML-ready data environments, feature stores, and training pipelines.
  • Partner with data scientists to product ionize ML models with CI/CD/CT.
  • Implement model monitoring, data quality, feature versioning, and automated retraining.
  • Support real-time and batch feature engineering and inference pipelines.
  • < h3 >

    Data Engineering Excellence< /h3 > < ul >
  • Develop scalable ELT/ETL pipelines using Spark, PySpark, SQL, Airflow, DBT, Kafka, Kinesis.
  • Build high-quality data models (dimensional, data vault, lakehouse).
  • Implement observability, lineage, and data quality frameworks across all pipelines.
  • < h3 >

    MLOps & Cloud Engineering< /h3 > < ul >
  • Architect MLOps pipelines using Docker, Kubernetes, Terraform, MLflow, Sage Maker, or Vertex AI.
  • Optimize cloud cost, performance, and reliability for large-scale AI/ML workloads.
  • Drive standards for cloud data infrastructure and reusable data engineering components.
  • < h3 >

    Governance, Security & Compliance< /h3 > < ul >
  • Ensure compliance with SOC2, GDPR, PII standards based on company needs.
  • Implement secure data-sharing, encryption, IAM, tokenization, and access patterns.
  • Maintain metadata, cataloging, governance processes (Collibra, Alation, Unity Catalog).
  • < h3 >

    Innovation & GenAI Readiness< /h3 > < ul >
  • Champion emerging technologies including GenAI, vector databases, and LLM-based pipelines.
  • Drive innovation in AI/ML data engineering and real-time analytics.
  • < h3 >

    Team Development and Stakeholder Engagement< /h3 > < ul >
  • Lead and mentor data engineering teams.
  • Collaborate with data scientists, ML engineers, and business stakeholders to deliver impactful solutions.
  • Translate business requirements into scalable data strategies.
  • < h3 >

    PROFESSIONAL REQUIREMENTS< /h3 > < ul >
  • Bachelor’s degree in Computer Science or related field, or similar, or equivalent experience.
  • Any Data or AI/ML related certifications.
  • 6–12+ years of data engineering experience with 2–5+ years in a lead role.
  • Strong programming in Python, SQL; deep expertise in Spark/Databricks.
  • Experience building ML-ready architectures, feature stores, and MLOps pipelines.
  • Expertise with cloud platforms (AWS, Azure, or GCP).
  • Proven ability to lead engineering teams, mentor junior engineers, and drive architectural decisions.
  • < h3 >

    PREFERRED QUALIFICATIONS< /h3 > < ul >
  • Experience implementing vector databases (Pinecone, FAISS, Milvus) and LLM-based pipelines including RAG.
  • Background in real-time analytics and low-latency ML inference.
  • Experience in highly regulated industries (healthcare, fintech, retail, AEC, manufacturing).
  • Ensure quality, compliance, and security across all data platforms while implementing observability, lineage, and governance frameworks.
  • Define and execute enterprise data strategies aligned with AI/ML initiatives while championing best practices in data engineering, MLOps, and cloud optimization.
  • < h3 >

    COMPENSATION< /h3 > < p >

    The approximate compensation range for this position is $130,000 to $170,000. This compensation range is a good‑faith estimate for the position at the time of posting. Actual compensation is dependent upon factors such as education, qualifications, experience, skillset, and physical work location.< /p > < h3 >

    BENEFITS< /h3 > < p >

    We offer a comprehensive benefits package including: < /p > < ul >
  • Medical, dental, vision insurance
  • 401 (k) Retirement Plan
  • Health Savings Account (HSA)
  • Flexible Spending Account (FSA)
  • Life, AD&D, short-term, and long-term disability
  • Professional and personal development
  • Generous paid time off
  • Commuter and wellness benefits
  • < p >#LI-KR2 #LI-HYBRID< /p > #J-18808-Ljbffr
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