채용

Senior Project Manager, Machine Learning Operations
Mountain View, California (HQ)
·
On-site
·
Full-time
·
1w ago
Who We Are
Nuro is a self-driving technology company on a mission to make autonomy accessible to all. Founded in 2016, Nuro is building the world’s most scalable driver, combining cutting-edge AI with automotive-grade hardware. Nuro licenses its core technology, the Nuro Driver™, to support a wide range of applications, from robotaxis and commercial fleets to personally owned vehicles. With technology proven over years of self-driving deployments, Nuro gives the automakers and mobility platforms a clear path to AVs at commercial scale, empowering a safer, richer, and more connected future.
About the Role
Nuro takes an ML-first approach to autonomous driving. The quality of our Nuro Driver™ is a direct function of the data that trains it, and this role owns that standard.
As a Senior Project Manager, ML Operations, you are not an execution manager. The team already has operators focused on keeping pipelines running. What we need is someone who steps back, looks across all of them, and asks: where is quality breaking down, why, and what do we do about it? You will co-own more than 10 active data labeling pipelines alongside senior leadership, with a singular focus on data quality and gap closure. You will be the person who identifies the signal in the noise, connects dots across pipelines that execution-focused OPMs cannot see from their vantage point, and drives the systemic improvements that raise the accuracy of our training data. Data labeling at this scale is unforgiving. A single systematic flaw in how objects are annotated or how edge cases are classified can propagate silently through training and surface as a safety regression on the road. This role demands someone wired for that level of precision, someone for whom "close enough" is never acceptable and who can see the difference between a labeling error and a labeling system error.
About the Work
- Own the data quality standard across 10+ labeling pipelines. Establish what "good" looks like for each data type, instrument the pipelines to measure against it, and track gaps with rigor.
- Identify and close quality gaps. Audit live workflows, query databases, trace accuracy failures to their structural root cause, and return with a specific, evidence-based improvement plan.
- Operate above the execution layer. Partner with operations project managers who own throughput and delivery, and provide the quality diagnostic lens they are not positioned to hold.
- Design and implement scalable processes to improve labeling accuracy, reduce systematic errors, and support evolving ML training requirements.
- Serve as the strategic interface between Autonomy Engineering and ML Operations, connecting labeling quality metrics directly to model performance and safety outcomes.
- Build executive-ready reporting that frames quality gaps and improvement progress as model performance and safety signals, not just operational metrics.
- Drive cross-functional alignment across engineering, product, and global ops teams by bringing clear analysis and well-reasoned recommendations to every conversation
About You
- 5+ years of project or program management experience embedded with ML, data operations, or software engineering teams. You have been close to the work, not managing from a distance.
- Quality-obsessed, not just execution-obsessed. You are energized by finding what is broken, not just by shipping on time. You ask why accuracy is degrading before asking when the pipeline will recover.
- Visionary and hands-on in equal measure. You can design the system-level quality framework and personally dig into a database to trace where a labeling fault originated. You do both without being asked.
- Hands-on data fluency: you can navigate a database schema, write SQL to investigate a labeling anomaly, and form a diagnosis without waiting for a data engineer to pull the report for you.
- Direct experience with or deep understanding of ML data pipelines and data labeling ecosystems, including annotation workflows, quality sampling methodologies, labeling taxonomy design, inter-annotator agreement, and the levers that drive or degrade training data accuracy.
- Proven ability to identify systemic workflow problems across multiple concurrent pipelines, propose targeted improvements, and drive adoption across teams.
- Approaches problems with intellectual curiosity and analytical rigor, taking the time to form a well-supported point of view and communicate it with confidence.
- Exceptional communication: you translate a nuanced data quality finding into a precise business or safety risk that a senior executive can act on.
- Bachelor's degree in a technical or business discipline, or equivalent practical experience.
Preferred Qualifications
- Prior experience in autonomous vehicles, robotics, computer vision, or ML model training pipelines.
- Background in ML engineering, data engineering, or technical consulting.
- Experience managing large-scale offshore or globally distributed annotation teams.
- Demonstrated track record of improving training data quality or labeling accuracy at scale, with metrics to show for it.
At Nuro, your base pay is one part of your total compensation package. For this position, the reasonably expected base pay range is between $120,270 and $180,410 for the level at which this job has been scoped. Your base pay will depend on several factors, including your experience, qualifications, education, location, and skills. In the event that you are considered for a different level, a higher or lower pay range would apply. This position is also eligible for an annual performance bonus, equity, and a competitive benefits package.
*At Nuro, we celebrate differences and are committed to a diverse workplace that fosters inclusion and psychological safety for all employees. Nuro is proud to be an equal opportunity employer and expressly prohibits any form of workplace discrimination based on race, color, religion, gender, sexual orientation, gender identity or expression, national origin, age, genetic information, disability, veteran status, or any other legally protected characteristics. *
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Nuro 소개

Nuro
Series BFocused on licensing its proprietary Level 4 driving system, Nuro Driver, to automakers and mobility providers.
51-200
직원 수
Mountain View
본사 위치
$8.6B
기업 가치
리뷰
3.8
10개 리뷰
워라밸
3.2
보상
4.0
문화
4.1
커리어
3.5
경영진
3.4
65%
친구에게 추천
장점
Good team environment and colleagues
Flexible work arrangements
Competitive compensation and benefits
단점
Work-life balance challenges and long hours
Management and communication issues
Limited career advancement opportunities
연봉 정보
68개 데이터
Mid/L4
Senior/L5
Mid/L4 · DATA SCIENTIST
1개 리포트
$234,000
총 연봉
기본급
$180,880
주식
-
보너스
-
$234,000
$234,000
면접 경험
4개 면접
난이도
3.3
/ 5
소요 기간
14-28주
면접 과정
1
Application Review
2
Recruiter Screen
3
Technical Phone Screen
4
Onsite/Virtual Interviews
5
Team Matching
6
Offer
자주 나오는 질문
Coding/Algorithm
System Design
Behavioral/STAR
Technical Knowledge
Past Experience
뉴스 & 버즈
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