Strava is the app for active people. With over 180 million athletes in more than 185 countries, it’s more than tracking workouts—it’s where people make progress together, from new habits to new personal bests. No matter your sport or how you track it, Strava’s got you covered. Find your crew, crush your goals, and make every effort count. Start your journey with Strava today.
Our mission is simple: to motivate people to live their best active lives. We believe in the power of movement to connect and drive people forward.
We are seeking a strategic and hands-on Senior Manager, Data Engineering to lead a team focused on building and optimizing data pipelines and data models that enable best-in-class data science, analytics, and self-service business intelligence. You will be instrumental in realizing our vision that key decisions and products at Strava are greatly enriched with data to benefit athletes and the business. This role requires a balance of people leadership, technical oversight, and individual contribution to set the strategic direction for our core data assets. You will partner tightly with Analytics, Data Science, and Data Platform teams across the company.
We follow a flexible hybrid model that translates to more than half your time on-site in our San Francisco office — three days per week.
Act as the player-coach for our Data Engineering function, fostering a culture of technical excellence and ownership.
Define the long-term vision and technical roadmap for Strava’s core data platform, including the development of scalable, robust, and efficient ETL/ELT pipelines.
Drive initiatives to significantly improve the quality, integrity, and availability of Strava’s data assets, implementing best-in-class monitoring and alerting systems.
Collaborate with Analytics, Data Science, and Product teams to enable advanced data consumption, experimentation, and self-service business intelligence across the company.
Represent the Data Engineering team in cross-functional strategic planning and collaborate with the broader data community to elevate our technological craftsmanship and data governance standards.
Translating the company's business objectives into a compelling technical strategy for the Data Engineering team, ensuring all data infrastructure supports business relevance.
Prioritizing and driving execution of projects that significantly improve the scalability, efficiency, and extensibility of our data models and systems.
Serving as a key technical and organizational mentor for your team, guiding them on complex architectural decisions and best practices for modern data development.
Proactively anticipating the data needs of a rapidly growing platform, fostering a culture that prioritizes data integrity, security, and privacy.
You have 7+ years of experience in data engineering, data platform, or a related quantitative domain.
You have 3+ years of experience leading and mentoring high-performing data engineering teams.
You are an advanced user of SQL and have developed production-grade data pipelines using languages like Python, Scala, or Java.
You have deep experience implementing and maintaining modern ETL/ELT orchestration systems (e.g., Airflow, dbt) and cloud data infrastructure (e.g., Snowflake, BigQuery, AWS, GCP).
You have a strong track record of driving data quality, governance, and the implementation of tools for data cataloging and monitoring.
You understand underlying infrastructure and engineering best practices (e.g., Kubernetes, CI/CD, software development lifecycle) with the ability to influence architectural decisions.
For more information on benefits, please click here.
Movement brings us together. At Strava, we’re building the world’s largest community of active people, helping them stay motivated and achieve their goals.
Our global team is passionate about making movement fun, meaningful, and accessible to everyone. Whether you’re shaping the technology, growing our community, or driving innovation, your work at Strava makes an impact.
When you join Strava, you’re not just joining a company—you’re joining a movement. If you’re ready to bring your energy, ideas, and drive, let’s build something incredible together.
Strava builds software that makes the best part of our athletes’ days even better. Just as we’re deeply committed to unlocking their potential, we’re dedicated to providing a world-class, inclusive workplace where our employees can grow and thrive, too. We’re backed by Sequoia Capital, TCV, Madrone Partners and Jackson Square Ventures, and we’re expanding in order to exceed the needs of our growing community of global athletes. Our culture reflects our community. We are continuously striving to hire and engage teammates from all backgrounds, experiences and perspectives because we know we are a stronger team together.
Strava is an equal opportunity employer. In keeping with the values of Strava, we make all employment decisions including hiring, evaluation, termination, promotional and training opportunities, without regard to race, religion, color, sex, age, national origin, ancestry, sexual orientation, physical handicap, mental disability, medical condition, disability, gender or identity or expression, pregnancy or pregnancy-related condition, marital status, height and/or weight.
We will ensure that individuals with disabilities are provided reasonable accommodation to participate in the job application or interview process, to perform essential job functions, and to receive other benefits and privileges of employment. Please contact us to request accommodation.
If an employer mentions a salary or salary range on their job, we display it as an "Employer Estimate". If a job has no salary data, Rise displays an estimate if available.
Experienced Data Warehouse Engineer needed to build and maintain AWS data lakes, warehouses, and analytics-ready pipelines to support FinTech analytics and financial models at One Park Financial.
A U.S.-based company seeks an Analytics Engineer to deliver Power BI dashboards, SQL analytics, and gold-layer data models while helping scale the analytics platform.
Experienced Data Engineer wanted to build and operate scalable marketing data pipelines at KAYAK, leveraging Python, SQL, Airflow, and modern data architecture to enable analytics and experimentation.
Kepler AI is hiring a Data Engineer to own and scale the ingestion, transformation, and validation pipelines that power our financial research platform in New York City.
iHerb is seeking an experienced Senior Data Engineer to design and operate cloud-native data platforms and MLOps pipelines that enable production AI/ML at scale.
Kentro is hiring a senior AI Data Integration Specialist to architect and implement AI/ML-ready data pipelines and governance for mission-critical VA operations (remote, US ET hours).
Lead the engineering and scaling of Clay’s Revenue + Cost + Margin Engine, building auditable, AI-native data models and interfaces that power company-wide decisions.
Lead architecture and implementation of enterprise-scale lakehouse and cloud data platforms for a mission-driven consulting firm, delivering secure, compliant solutions across Azure and AWS.
Help shape Notion’s GTM data foundation by designing and shipping scalable datasets and pipelines that power marketing, sales, and revenue analytics.
Senior Data Analytics Engineer needed to architect and deliver Snowflake- and AWS-based analytics solutions while partnering directly with clients in a fully remote role.
Iambic Therapeutics is looking for an experienced Data Engineer to design and optimize multi-terabyte data pipelines and data storage to support AI-driven drug discovery in a remote-friendly role.
Work within Allergan Aesthetics' Customer Operations team to validate, maintain, and improve customer account data supporting direct-to-physician commercial operations.
Strava, meaning “strive” in Swedish, reflects our drive to build the world’s most engaged athlete community, constantly innovating to enhance sporting fun and inclusivity, and inviting millions more to join our revolutionary platform.
4 jobs