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HomeCompaniesTriML Research Engineer, Interpretable AI for End-to-End Automated Driving

ML Research Engineer, Interpretable AI for End-to-End Automated Driving

Tri · Los Altos, CA · On Site · Active · $176,000–$253,000 / year · Lever

Job facts

FieldValue
CompanyTri
TitleML Research Engineer, Interpretable AI for End-to-End Automated Driving
Normalized title-
Department / teamAutomated Driving Advanced Development / Automated Driving Advanced Development
LocationLos Altos, CA, United States
Work modelOn Site
Employment typeFull Time
Salary$176,000–$253,000 / year
Statusactive
ATS providerLever
Posted / first seen2026-02-23 / 2026-05-29
Changed / last seen2026-05-29 / 2026-06-06

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Provider filtered searchThe same provider as a filtered job collection.Open
City jobsActive postings in Los Altos.Open
Department jobsActive postings in Automated Driving Advanced Development.Open
Work model jobsActive On Site postings.Open
Lifecycle eventsOpen, update, close, and reopen events for this posting.Open
Original postingCanonical source or apply URL captured from the ATS.Open

Linked records

CompanyTri
Sourcea86dbed4-1715-4a6f-9b42-9a7a485b919b
ATS providerLever

Description

At Toyota Research Institute (TRI), we’re on a mission to improve the quality of human life. We’re developing new tools and capabilities to amplify the human experience. To lead this transformative shift in mobility, we’ve built a world-class team advancing the state of the art in AI, robotics, driving, and material sciences. The Team The Automated Driving Advanced Development (AD2) division at TRI will focus on enabling innovation and transformation at Toyota by building a bridge between TRI research and Toyota products, services, and needs. We achieve this through partnership, collaboration, and shared commitment. This new division is leading a new cross-organizational project between TRI and Woven by Toyota to conduct research and develop a fully end-to-end learned driving stack. This cross-org collaborative project is harmonious with TRI’s robotics divisions' efforts in Diffusion Policy and Large Behavior Models. Within AD2, we are pursuing a focused research effort in Interpretable AI (iAI) for end-to-end learned automated driving systems, tightly coupled with AD2’s work on Large Behavior Models (LBM-Drive) and World Foundation Models (WFM), while remaining architecturally and product independent. The Opportunity We are seeking a Machine Learning Researcher to contribute to research on interpretable AI methods for learning-based automated driving systems. This role is ideal for a researcher who enjoys hands-on experimentation, model development, and evaluation, and who wants to work on foundational problems at the intersection of autonomy, interpretability, and safety. You will work closely with senior researchers and engineers to develop methods that make end-to-end neural driving policies more interpretable, diagnosable, and verifiable, while preserving performance and scalability. Your work will contribute to building “glass-box” representations that help engineers and researchers better understand, debug, and validate learned driving behaviors. Please add a link to Google Scholar to include a full list of publications when submitting your CV for this position. The pay range for this position at commencement of employment is expected to be between $176,000 and $253,000/year for California-based roles. Base pay offered will depend on multiple individualized factors, including, but not limited to, a candidate's experience, skills, job-related knowledge, and market location. TRI offers a generous benefits package including medical, dental, and vision insurance, 401(k) eligibility, paid time off benefits (including vacation, sick time, and parental leave), and an annual cash bonus structure. Additional details regarding these benefit plans will be provided if an employee receives an offer of employment. Please reference this Candidate Privacy Notice to inform you of the categories of personal information that we collect from individuals who inquire about and/or apply to work for Toyota Research Institute, Inc. or its subsidiaries, including Toyota A.I. Ventures GP, L.P., and the purposes for which we use such personal information. TRI is fueled by a diverse and inclusive community of people with unique backgrounds, education and life experiences. We are dedicated to fostering an innovative and collaborative environment by living the values that are an essential part of our culture. We believe diversity makes us stronger and are proud to provide Equal Employment Opportunity for all, without regard to an applicant’s race, color, creed, gender, gender identity or expression, sexual orientation, national origin, age, physical or mental disability, medical condition, religion, marital status, genetic information, veteran status, or any other status protected under federal, state or local laws. It is unlawful in Massachusetts to require or administer a lie detector test as a condition of employment or continued employment. An employer who violates this law shall be subject to criminal penalties and civil liability. Pursuant to the San Francisco Fair Chance Ordinance, we will consider qualified applicants with arrest and conviction records for employment. Responsibilities Conduct research on interpretable AI methods for end-to-end learned automated driving policies, under the guidance of senior and staff researchers. Develop and evaluate structured representations of driving behavior, such as interpretable behavioral modes underlying learned neural policies. Implement methods that associate driving behavior with perceptual and contextual cues, including language-based or symbolic explanations where appropriate. Design and run experiments using large-scale learned policies and simulation infrastructure to assess interpretability, diagnostic value, and failure modes. Contribute to evaluations of explainability methods for debugging, validation, and analysis of learned driving systems in simulation and/or controlled datasets. Collaborate with researchers and engineers across AD2, LBM, and WFM teams to integrate xAI ideas into broader research workflows. Document research findings clearly and contribute to internal reports, technical presentations, and peer-reviewed publications. Stay up to date with advances in interpretable AI, representation learning, generative models, and embodied AI research. Qualifications Master's or PhD or equivalent research experience in Machine Learning, Robotics, Computer Vision, or a related quantitative field. A demonstrated ability to conduct independent research and contribute to peer-reviewed publications at leading venues (e.g., NeurIPS, ICML, ICLR, CVPR, CoRL, RSS, ICRA).Strong foundation in modern machine learning, including deep learning, representation learning, and sequence or policy modeling. Experience implementing and evaluating ML models using Python (and familiarity with C++ in research or experimental contexts). Interest in or experience with end-to-end learning approaches for robotics or autonomous systems. Ability to work effectively in collaborative, cross-disciplinary research environments. Strong written and verbal communication skills. Bonus Qualifications Experience with interpretable AI, or model introspection techniques. Familiarity with structured or hybrid models (e.g., latent-variable models, program induction, or discrete representations). Experience evaluating learning-based systems in closed-loop simulation or real-world embodied settings. Background in automated driving, robotics, or safety-critical AI systems.

Full job record

Job ID0448ecbda4eb47d12f6ad25fe88c87ce42dc34cf
Org ID98ed24bc-1213-4fd4-8b99-e5bf3b99939c
Source IDa86dbed4-1715-4a6f-9b42-9a7a485b919b
Board IDa86dbed4-1715-4a6f-9b42-9a7a485b919b
Providerlever
Provider Job Key84dfcb59-8368-481c-acdb-50df883eadd4
TitleML Research Engineer, Interpretable AI for End-to-End Automated Driving
Normalized Title
Statusactive
Activeyes
Location TextLos Altos, CA
DepartmentAutomated Driving Advanced Development
TeamAutomated Driving Advanced Development
Employment TypeFull-time
Workplace Typeon_site
Remote Policy
CountryUnited States
RegionCA
CityLos Altos
Salary Rawpay range for this position at commencement of employment is expected to be between $176,000 and $253,000/year for California-based roles
Salary Min176,000
Salary Max253,000
Salary CurrencyUSD
Salary Periodyear
Source URLhttps://jobs.lever.co/tri/84dfcb59-8368-481c-acdb-50df883eadd4
Apply URLhttps://jobs.lever.co/tri/84dfcb59-8368-481c-acdb-50df883eadd4/apply
First Seen At2026-05-29 07:01:10Z
Last Seen At2026-06-06 07:56:13Z
Last Checked At2026-06-06 07:56:13Z
Last Changed At2026-05-29 07:01:10Z
Inactive At
Source Posted At2026-02-23 22:04:49Z
Source Updated At
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