
Senior Manager, Data Engineering
Docker, Inc
full-time
Posted on:
Location Type: Remote
Location: United States
Visit company websiteExplore more
Salary
💰 $226,600 - $318,500 per year
Job Level
About the role
- Build, lead, and scale a high-performing data engineering team of 8-12 engineers across data infrastructure, analytics, and business intelligence
- Establish hiring standards and recruit top-tier data engineering talent in a competitive market
- Foster a culture of technical excellence, innovation, and customer obsession within the data organization
- Mentor senior engineers and develop next-generation technical leadership within the data discipline
- Partner with HR and Engineering leadership on career development, performance management, and team growth
- Ensure team participation in the on-call rotation and step in as needed. Respond to incidents, troubleshoot production issues, and drive continuous improvement in system reliability.
- Define and execute the long-term technical strategy for Docker's data platform, ensuring alignment with business objectives and product roadmap
- Architect and oversee development of scalable, reliable data infrastructure leveraging Snowflake as the core data warehouse and AWS cloud services
- Drive implementation of modern data orchestration using Airflow for workflow management and DBT for data transformation and modeling
- Lead technical decisions around data platform technologies, vendor selection, and build vs. buy strategies
- Establish data governance, security, and compliance frameworks to support enterprise customer requirements
- Oversee modernization of legacy data systems and migration to cloud-native data platforms
- Partner with Product Management teams to enable data-driven product development and feature validation
- Collaborate with Sales and Customer Success teams to deliver customer-facing analytics and reporting capabilities
- Support Marketing and Growth teams with user behavior analytics, funnel optimization, and campaign effectiveness measurement
- Work with Finance team to enable accurate business reporting, forecasting, and operational metrics
- Engage directly with enterprise customers to understand analytics requirements and deliver custom data solutions
- Establish self-service analytics capabilities using Sigma and other BI tools enabling teams across Docker to access and analyze data independently
- Build comprehensive dashboards and reporting systems for product metrics, business KPIs, and operational insights
- Implement advanced analytics capabilities including machine learning, predictive modeling, and anomaly detection
- Drive adoption of data visualization tools and establish best practices for analytics across the organization
- Lead data literacy initiatives and training programs to increase analytical capabilities company-wide
- Own the operational excellence of Docker's data platform including Snowflake performance optimization, Airflow pipeline reliability, and AWS cost management
- Establish comprehensive monitoring, alerting, and incident response procedures for data systems across the modern data stack
- Implement robust data quality frameworks and automated testing for DBT models, data pipelines, and analytics
- Drive cost optimization initiatives for Snowflake compute, AWS infrastructure, and analytics tools
- Ensure compliance with data privacy regulations (GDPR, CCPA) and enterprise security requirements
Requirements
- 8+ years of data engineering experience with 4+ years in technical leadership roles managing teams of 5+ engineers
- Proven track record building and scaling data engineering organizations at high-growth technology companies
- Strong people management skills including hiring, performance management, and career development
- Experience leading cross-functional initiatives involving Product, Engineering, and Business stakeholders
- Excellent communication skills with ability to influence executives and technical teams
- Deep hands-on experience with Snowflake including data warehousing, performance optimization, and cost management
- Proficiency with Apache Airflow for orchestrating complex data workflows and pipeline management
- Strong expertise in DBT (Data Build Tool) for data transformation, modeling, and testing
- Extensive AWS experience including data services (S3, Redshift, EMR, Glue, Lambda) and infrastructure management
- Experience with Sigma or similar modern BI platforms for self-service analytics and data visualization
- Strong background in data pipeline development, ETL/ELT processes, and streaming data architectures
- Proficiency with programming languages commonly used in data engineering (Python, SQL, Scala)
- Knowledge of infrastructure-as-code practices and modern DevOps tools
- Understanding of SaaS business models, product analytics, and customer lifecycle metrics
- Experience with customer-facing analytics and embedded reporting capabilities
- Knowledge of data privacy regulations, security frameworks, and enterprise compliance requirements
- Familiarity with developer tools and infrastructure software business models
- Experience supporting product launches with data infrastructure and analytics capabilities
Benefits
- Freedom & flexibility; fit your work around your life
- Designated quarterly Whaleness Days plus end of year Whaleness break
- Home office setup; we want you comfortable while you work
- 16 weeks of paid Parental leave
- Technology stipend equivalent to $100 net/month
- PTO plan that encourages you to take time to do the things you enjoy
- Training stipend for conferences, courses and classes
- Equity; we are a growing start-up and want all employees to have a share in the success of the company
- Docker Swag
- Medical benefits, retirement and holidays vary by country
- Remote-first culture, with offices in Seattle and Paris
Applicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard Skills & Tools
data engineeringSnowflakeApache AirflowDBTAWSPythonSQLScalaETLdata pipeline development
Soft Skills
people managementcommunicationinfluencementoringteam leadershipcollaborationperformance managementcareer developmentcustomer obsessiontechnical excellence