Senior Engineering Manager / Coach, Data Platforms
Speridian Technologies is recruiting for a Senior Engineering Manager / Coach, Data Platforms, for the State of California Client, the Department of Healthcare Services, Behavioral Health. This person will be part of a long-term, fully budgeted, state-of-the-art, extremely vast technical modernization project working with a variety of cross-functional teams and stakeholders. This is a remote role; however, there will be meetings in the Sacramento area several times a year. Candidates are expected to work business hours, Monday-Friday, Pacific Time Zone.
Join DHCS's Behavioral Health Transformation : Where Purpose Meets Innovation
Location : Remote
Department : Department of Healthcare Services (DHCS), Behavioral Health Transformation (BHT)
Commitment : Full-Time Consultant (W2 employee of Speridian or 1099 / IC for Speridian)
At DHCS we are leading a transformative journey in Behavioral Health, reshaping systems and services to ensure better outcomes for communities across California. Our Behavioral Health transformation initiative is more than a projectits a movement to make California a leader in accessible, high-quality health services. We're setting the stage for a new era of government services built on agile methodologies, cutting-edge technology, continuous improvement, and a relentless commitment to serving the public good. At DHCS, we're looking for innovators who are passionate about purposeful work and excited by the opportunity to drive lasting change through innovative solutions.
Our Core Values : Achieve Together, Be Curious, Elevate Yourself, and Deliver Value
We achieve together by championing a team-oriented workplace built on mutual respect, collaboration, and open communication.
We encourage individuals and teams to constantly be curious and seek a deeper understanding and fresh ideas that drive innovation and meaningful change.
We provide a supportive workplace where you can elevate yourself and achieve personal growth through continuous learning, focused effort, and perseverance.
We deliver value as part of every action we take to serve California's citizens.
As a Senior Engineering Manager / Coach, Data, you'll lead a team of data engineering experts building enterprise-scale data platforms that transform petabytes of healthcare information into actionable insights. This role goes beyond traditional ETL pipelines you'll design real-time streaming architectures, implement advanced analytics capabilities, and create self-service data products that empower teams across the organization. Your data platforms will enable predictive analytics that prevent fraud, optimize care delivery, and literally save lives through better healthcare outcomes.
DHCS offers the rare opportunity to work with healthcare data at a scale that rivals major tech companies, while directly improving public health. You'll have full ownership of the data platform strategy, invest in modern tools like Databricks and Snowflake, and the mandate to build a world-class data engineering organization. Our commitment to data-driven transformation means your work will be highly visible and directly tied to the department's strategic objectives.
We're looking for a data platform visionary who understands that great data engineering enables great decisions someone who can optimize Spark jobs while evangelizing data literacy, who treats data quality as sacred, and who believes government should lead in leveraging data for public good.
Responsibilities & Outcomes
1. Data Platform Leadership & Architecture
Drive data platform strategy and architecture decisions for enterprise data systems
Design and oversee data pipelines, warehouses, and lake architectures
Champion data engineering best practices including data quality, governance, and documentation
Make critical technical trade-off decisions balancing data freshness, accuracy, and infrastructure costs
Outcome : Teams deliver scalable data platforms that enable analytics and data-driven decision making
2. Business Ownership & Financial Accountability
Own business metrics and ROI for data platform investments and initiatives
Develop and track cost-benefit analyses for data infrastructure and tooling decisions
Manage team budget including cloud data costs, tooling, and infrastructure spend
Translate data engineering work into business value and analytical capabilities for stakeholders
Drive efficiency improvements in data processing costs while maintaining data quality
Outcome : Data engineering decisions driven by business value with clear ROI and financial accountability
3. People Management & Development
Manage, mentor, and develop a team of 10-20 data engineers
Conduct regular 1 : 1s focused on career development and performance
Execute performance management including promotions, improvement plans, and difficult conversations
Build diverse, inclusive teams through thoughtful hiring and team composition
Outcome : High-performing teams with strong retention, clear growth paths, and engaged data engineers
4. Data Engineering Excellence & Quality
Establish and maintain standards for data quality, pipeline reliability, and monitoring
Drive continuous improvement in ETL / ELT practices and data tooling
Ensure appropriate data governance, security, and compliance implementation
Implement metrics and monitoring for data pipeline performance and data quality
Outcome : Consistent delivery of reliable, high-quality data products with minimal pipeline failures
5. Cross-functional Partnership
Partner with Analytics, Data Science, and Business Intelligence teams on requirements
Collaborate with Product Management on data product roadmap and prioritization
Work with Software Engineering teams on application data integration
Communicate data architecture concepts and trade-offs to non-technical stakeholders
Outcome : Strong partnerships enabling data democratization and self-service analytics
6. Talent Strategy & Team Building
Lead technical interviews and hiring decisions for data engineering roles
Develop team skills through mentoring, training, and stretch assignments
Identify and cultivate future data platform leaders
Build team culture emphasizing data quality, automation, and continuous learning
Outcome : Strong talent pipeline with data engineers growing into senior and leadership roles
Required Qualifications
Proven track record managing data engineering teams of 20+ members
Experience owning P&L or budget responsibility for data platforms or products
Demonstrated ability to connect data infrastructure to business outcomes and ROI
Experience building and operating production data platforms at scale
Strong background in modern data engineering practices and cloud data technologies
Demonstrated ability to make architectural decisions for data systems and pipelines
Experience with full data lifecycle from ingestion through consumption
Track record of developing data engineers and building strong data engineering cultures
Bachelor's degree in Computer Science, Engineering, or equivalent experience
Technical
Data Platforms : Snowflake, Databricks, BigQuery, Redshift, or similar
Data Processing : Apache Spark, Airflow, dbt, Kafka, streaming architectures
Cloud & Infrastructure : AWS / Azure / GCP data services and infrastructure as code
Data Modeling : Dimensional modeling, data vault, data mesh principles
Languages : SQL, Python, Scala, and data-specific programming paradigms
Business & Financial
Financial Management : Cloud data cost optimization, budget ownership, and ROI analysis
Business Metrics : Defining and tracking data platform KPIs and usage metrics
Value Communication : Articulating data investments in business terms
Resource Planning : Capacity planning for data workloads and storage
Vendor Management : Evaluating and managing data tools and platform services
Leadership
People Management : Performance management, career development, and difficult conversations
Team Building : Hiring, onboarding, and creating inclusive team environments
Communication : Technical and non-technical stakeholder management
Decision Making : Data-driven decisions balancing multiple constraints
Strategic Thinking : Aligning data platform efforts with organizational goals
Change Management : Leading teams through platform migrations and tool adoptions
General
Problem-Solving : Complex data and organizational challenge resolution
Collaboration : Working effectively with Analytics, Data Science, and Engineering functions
Mentorship : Developing junior and senior data engineers
Process Improvement : Identifying and implementing efficiency improvements
Business Acumen : Understanding business context and impact of data platform decisions
What Sets Top Performers Apart
Success in this role goes beyond compensation, work-life balance
Data Engineering • Augusta, GA, US