Staff Machine Learning Engineer
Company: Strava
Location: San Francisco
Posted on: April 6, 2025
Job Description:
Strava is the app for active people. With over 150 million
athletes in more than 185 countries, it's more than tracking
workouts-it's where connection, motivation, and personal bests
thrive. No matter your activity, gear, or goals, Strava's got you
covered. Find your crew, crush your milestones, and keep moving
forward. Start your journey with Strava today.We are looking for a
Staff Machine Learning Engineer to join the growing AI and Machine
Learning team at Strava. This team is responsible for sophisticated
machine learning models and systems that power key Strava
experiences which provide value to our athletes including
personalization, recommendation, search, and trust and safety.This
is a leadership role in the ML team and across Product teams
designing, roadmapping and implementing innovative machine learning
algorithms. We value full stack ML engineers who are able to work
on all parts of an ML pipeline from model building, evaluation,
optimizing performance, and ensuring the scalability and
reliability of these production models.We follow a flexible hybrid
model that generally translates to around half your time on-site in
our San Francisco Office-roughly three days per week.You're excited
about this opportunity because you will:
- Build for a Well Loved Consumer Product: Work at the
intersection of AI and fitness to launch and optimize product
experiences that will be used by tens of millions of active people
worldwide.
- Own End to End AI Systems: Lead key projects powered by ML on
the Strava platform end-to-end, from initial model prototyping to
shipping production code to scaling and optimizing inference and
deployment.
- Shape AI at Strava: Be a leadership voice and mentor on a
highly collaborative team with a range of experience levels. Lead
across teams to deploy ML solutions in multiple surfaces.
- Innovate in AI for Fitness: Design and develop novel models and
methodologies to take on novel problems that improve athlete
experience, including recommendation systems, activity prediction,
and personalized insights.
- Build from a rich dataset: Explore and use Strava's extensive
unique fitness and geo datasets from millions of users to extract
actionable insights, inform product decisions, and optimize
existing features.You will be successful here by:
- Setting AI technical vision: Build, foster and expand the
influence of AI here at Strava through understanding and
collaboration with partners across teams set technical strategies
for delivering impact through AI.
- Driving innovation with Product in mind: Stay up-to-date with
the latest research in machine learning, AI, and related fields.
Experiment, advocate and get support for innovative techniques to
improve existing products or explore new features that result in
step function changes to how we build AI.
- Raising the ML standard: Mentor engineers to shape how we do ML
at Strava. Drive best practices for model development, deployment,
and maintenance and be a go-to source of knowledge of the
field.
- Collaborating in and across teams: Build relationships,
advocate and connect with cross-org partners and product verticals
understand needs, and build systems to bring your technical vision
to life.
- Leading as an Owner: Owning your work end-to-end and being
accountable for the outcomes in the projects you lead, influencing
the ML team, partner teams and landing impact for the business.
Ensure the end to end system delivers as expected.
- Analyzing the Data: Work closely with product managers, data
scientists, and engineers to find opportunities for applying
machine learning to drive impact and enhance Strava's features and
measure impact.
- Being passionate about the work you are doing and contributing
positively to Strava's inclusive and collaborative team culture and
values.We're excited about you because:
- Have worked on complex, ambiguous machine learning problems and
broken them down into manageable tasks with both strategies and
tactical execution.
- Demonstrated technical leadership in leading large projects and
the ability to mentor and grow team members of all levels.
- Have demonstrated strong interpersonal and communication
skills, and collaborative approach to drive strategies and drive
business impact across teams.
- Have experience building, shipping, and supporting ML models in
production at scale.
- Have experience with exploratory data analysis and model
prototyping, using languages such as Python or R and tools like
Scikit learn, Pandas, Numpy, Pytorch, Sagemaker.
- Have built and worked on data pipelines using large scale data
technologies (like Spark, Hadoop, EMR, SQL, Snowflake).
- Are experienced and interested in production ML model
operational excellence and best practices, like automated model
retraining, performance monitoring, feature logging, A/B
testing.
- Have built backend production services on cloud environments
like AWS, using languages like (but not limited to) Ruby, Java,
Scala, Python, Go.Compensation Overview:At Strava, we know our
employees are the most important ingredient to our success, and our
compensation and total rewards programs reflect that. We take a
market-based approach to pay, and pay may vary depending on the
department and your location. Salary ranges are categorized into
one of three tiers based on a cost of labor index for that
geographic area. We will determine the candidate's starting pay
based on job-related skills, experience, qualifications, work
location, and market conditions. We may modify these ranges in the
future. For more information, please contact your talent
partner.Compensation: $230,000 - $260,000. The base salary posted
is within the compensation range for this role. This range reflects
base pay only and does not include equity, or benefits. Your
recruiter can share more about the specific salary range for your
location during the hiring process.About StravaStrava is Swedish
for "strive," which epitomizes who we are and what we do. We're a
passionate and committed team, unified by our mission to connect
athletes to what motivates them and help them find their personal
best. With billions of activity uploads from all over the world, we
have a humbling and adventurous vision: to be the record of the
world's athletic activities and the technology that makes every
effort count.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. Our culture reflects our community. We are
continuously striving to hire and engage diverse 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.
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Keywords: Strava, San Francisco , Staff Machine Learning Engineer, Engineering , San Francisco, California
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