Full-Time

Senior Machine Learning Engineer

Behavior Planning & Prediction

Posted on 10/31/2025

Woven

Woven

1,001-5,000 employees

Develops global intelligent mobility solutions

Compensation Overview

$140k - $230k/yr

+

Palo Alto, CA, USA

Hybrid

Category
AI & Machine Learning (3)
, ,
Requirements
  • MS or PhD in Machine Learning, Computer Science, Robotics, or related quantitative fields, or equivalent industry experience.
  • 3+ years of experience with Python, major deep learning frameworks, and software engineering best practices.
  • Comfortable writing C++ code for integration with our autonomous vehicle platform.
  • 3+ years of experience with deep learning approaches, such as supervised/unsupervised learning, transfer learning, multi-task learning, and deep reinforcement learning.
  • Extensive experience with learning-based planning approaches, including imitation learning, reinforcement learning, and state-of-the-art techniques for sequential modeling, such as Transformer architectures.
  • 3+ years of experience covering machine learning workflows, data sampling and curation, preprocessing, model training, ablation studies, evaluation, deployment, and inference optimization.
  • Passion for self-driving car technology and its potential to impact humanity.
  • Strong communication skills with the ability to articulate concepts clearly and precisely.
Responsibilities
  • Design and develop advanced machine learning models in the behavior space, specifically tailored for autonomous vehicles, utilizing deep learning and large-scale data analysis.
  • Deploy scalable and efficient ML models on our autonomous vehicle platform.
  • Integrate modern technologies with rigorous safety standards while maintaining cost efficiency.
  • Oversee the development of new ML models end-to-end, from data strategy and initial development to optimization, production platform validation, and fine-tuning based on metrics and on-road performance.
  • Lead large, multi-person projects and significantly influence the overall motion planning architecture and technical direction.
  • Enable and support other engineers by coaching, leading by example, and providing high-quality code and design document reviews, as well as delivering rigorous reports from ML experiments.
  • Contribute significantly to the development of essential components for end-to-end ML training and deployment, from data strategy to optimization and validation.
  • Be a champion of the scientific method and critical thinking to invent state-of-the-art deep learning solutions.
  • Work in a high-velocity environment and employ agile development practices.
  • Collaborate closely with teams such as Perception, Simulation, Infrastructure, and Tooling to drive unified solutions.
Desired Qualifications
  • Published research at top-tier conferences (NeurIPS, RSS, IROS, ICRA, etc.).
  • Proven track record of deploying ML models at scale in self-driving or related fields.
  • Familiarity with production-level coding in time-limited task schedules.
  • Experience with robot motion planning (e.g., trajectory optimization, sampling-based planning, model predictive control).
  • Experience working with temporal data and sequential modeling.
  • Expertise in self-driving challenges (Perception, Prediction, Planning, Simulation).

Woven by Toyota develops and delivers advanced mobility technologies and services to Toyota customers worldwide, focusing on safer and more intelligent transportation. Its products and solutions are implemented in vehicles and related mobility services, combining software and hardware innovations with seamless user experiences to expand global access to mobility and enhance driver capabilities. What sets Woven apart is its blend of Silicon Valley innovation with traditional Japanese craftsmanship, enabling globally scalable mobility solutions that prioritize safety and reliability. The company’s goal is to create more personal, seamless, and capable mobility experiences for customers, while evolving with social, technological, and customer needs and advancing the future of intelligent transportation.

Company Size

1,001-5,000

Company Stage

N/A

Total Funding

$583.6M

Headquarters

Tokyo, Japan

Founded

2023

Simplify Jobs

Simplify's Take

What believers are saying

  • Arene software platform accelerates deployment of software-defined vehicles across Toyota's global fleet.
  • Woven Capital's $800M fund captures early-stage returns in smart cities and autonomous mobility.
  • MaaS platform development positions Woven to capture recurring revenue from ride-sharing services.

What critics are saying

  • Arene platform integration delays from acquisitions erode competitive advantage against Waymo's operational robotaxi service.
  • Talent exodus to Cruise following GM's October 2025 funding slows autonomous driving advancement.
  • Toyota's January 2026 earnings call prioritizes hybrid sales, starving Woven's R&D budget and mission.

What makes Woven unique

  • Combines Silicon Valley autonomous driving expertise with Japanese manufacturing quality and safety standards.
  • Operates Woven City smart city test course for real-world validation of AD/ADAS technologies.
  • Integrated Lyft Level 5 and Renovo Auto acquisitions to build end-to-end mobility stack.

Help us improve and share your feedback! Did you find this helpful?

Benefits

Health Insurance

Dental Insurance

Vision Insurance

401(k) Retirement Plan

Unlimited Paid Time Off

Family Planning Benefits

Company News

The Future Party
Aug 17th, 2022
Woven Planet Group is developing portable hydrogen cartridge

The Japanese automaker partnered with Woven Planet Holdings to develop a portable hydrogen cartridge.

GitHub
Jun 20th, 2022
GitHub launched CodeQL queries on Jun 20th 22'.

GitHub is excited to announce the release of CodeQL queries that implement the standards CERT C++ and AUTOSAR C++.

Latest Nigerian News
Jun 3rd, 2022
Woven Planet Group launches portable cartridge prototype for hydrogen

Toyota and its subsidiary Woven Planet have unveiled a new portable cartridge prototype for hydrogen.

INACTIVE