At Docker, we make app development easier so developers can focus on what matters. Our remote-first team spans the globe, united by a passion for innovation and great developer experiences. With over 20 million monthly users and 20 billion image pulls, Docker is the #1 tool for building, sharing, and running apps—trusted by startups and Fortune 100s alike. We’re growing fast and just getting started. Come join us for a whale of a ride!
Docker is seeking a Senior Manager to lead our Data Engineering team and drive the strategic evolution of data analytics across the company. As Docker continues to expand our product portfolio and serve millions of developers and thousands of enterprise customers globally, we need a visionary technical leader who can build world-class data infrastructure and establish analytics capabilities that power product innovation, business intelligence, and customer insights.
This role combines technical leadership with people management to build a high-performing data engineering organization. You'll be responsible for shaping Docker's data strategy, establishing scalable data pipelines and platforms, and enabling data-driven decision making across Product, Engineering, Sales, Marketing, and Executive teams. You'll work closely with internal stakeholders and customers to understand data requirements and deliver analytics solutions that drive business outcomes.
Success in this role requires deep technical expertise in modern data platforms, strong leadership skills, and the ability to translate business needs into robust data solutions that scale with Docker's growth.
Key ResponsibilitiesTeam Leadership & Development
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
Data Platform Strategy & Architecture
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
Cross-Functional Partnership & Customer Success
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
Business Intelligence & Analytics Enablement
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
Data Infrastructure & Operations
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
Leadership & Management
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
Technical Expertise
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
Business & Domain Knowledge
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
Experience at developer tools, infrastructure software, or container technology companies
Background in platform engineering or developer experience roles
Experience with machine learning platforms and MLOps practices using AWS SageMaker or similar
Knowledge of container technologies, Kubernetes, or cloud-native development
Advanced degree in Computer Science, Data Science, or related technical field
Experience with real-time analytics and event-driven architectures
Familiarity with modern data catalog tools and metadata management
Experience with additional cloud data warehouses (BigQuery, Databricks) for multi-cloud strategies
Team performance and retention rates with strong employee satisfaction scores
Successful delivery of data platform capabilities enabling new product features and business initiatives
Improved data accessibility and self-service adoption across Docker teams using Sigma and other BI tools
Customer satisfaction scores for data and analytics solutions
Cost optimization and operational efficiency improvements for Snowflake, AWS, and data infrastructure
Data quality and reliability metrics meeting enterprise SLA requirements
Successful implementation and adoption of modern data stack (Snowflake + Airflow + DBT + Sigma)
We use Covey as part of our hiring and / or promotional process for jobs in NYC and certain features may qualify it as an AEDT. As part of the evaluation process we provide Covey with job requirements and candidate submitted applications. We began using Covey Scout for Inbound on April 13, 2024.
Please see the independent bias audit report covering our use of Covey here.
Perks
Freedom & flexibility; fit your work around your life
Designated quarterly Whaleness Days
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
Quarterly, company-wide hackathons
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
Docker embraces diversity and equal opportunity. We are committed to building a team that represents a variety of backgrounds, perspectives, and skills. The more inclusive we are, the better our company will be.
Due to the remote nature of this role, we are unable to provide visa sponsorship.
#LI-REMOTE

