$129,189 - 247,038 yearly
Number of Applicants
:000+
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About The Company
About The Role
The VLA Team focuses on building large-scale foundation models for multi-agent behavior prediction and autonomous vehicle planning. By leveraging DiDi Voyager’s unparalleled driving data, we train highly robust and generalizable deep learning systems that enable safe and intelligent autonomous driving at scale.
Our models serve as the core intelligence of the autonomous driving stack, enabling vehicles to understand complex traffic scenarios, anticipate agent behavior, and make safe and efficient driving decisions.
We operate at the intersection of large-scale machine learning, autonomous driving, and foundation model research, pushing the frontier of multi-agent prediction and planning.
Responsibilities
As a member of the VLA Team, you will:
Design and train large-scale deep learning models for:
Multi-agent trajectory prediction
Behavior and intent prediction
Planning and decision-making
Build foundation model architectures (Transformers, Diffusion, Flow-based models, Decision models, VLM/VLA)
Develop scalable training pipelines across hundreds to thousands of GPUs
Work with massive real-world datasets and build high-quality data pipelines
Optimize models for latency, reliability, and on-vehicle deployment
Collaborate closely with perception, mapping, simulation, and systems teams
Drive research ideas into production systems used by real autonomous vehicles
Qualifications
Strong background in machine learning, deep learning, or robotics
Experience with PyTorch / JAX / TensorFlow
Solid understanding of modern neural architectures (transformers, diffusion, auto-regressive)
Strong coding skills in Python and C++
Passion for building real-world, safety-critical AI systems
Preferred Qualifications
BS, MS or PhD in Computer Science, Machine Learning, Robotics, or a related field
Experience in autonomous driving, robotics, or embodied AI
Experience training large models on distributed GPU clusters
Experience with trajectory prediction, planning, or decision-making systems
Publications in top ML / robotics conferences (NeurIPS, ICML, ICLR, CVPR, RSS, CoRL, etc.)
I acknowledge that prior to submitting this application, I have read and accepted the Privacy Notice for California Residents which is available on https://v.didi.cn/AQnxlBa
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