What are the responsibilities and job description for the AI Intern – VLA Deployment position at XPENG?
XPENG is a leading smart technology company at the forefront of innovation, integrating advanced AI and autonomous driving technologies into its vehicles, including electric vehicles (EVs), electric vertical take-off and landing (eVTOL) aircraft, and robotics. With a strong focus on intelligent mobility, XPENG is dedicated to reshaping the future of transportation through cutting-edge R&D in AI, machine learning, and smart connectivity.
The Mission: Vision-Language-Action (VLA) models and foundation models are becoming increasingly important in autonomous driving, but turning research models into real-time, production-ready systems on vehicle hardware remains a major challenge. We are looking for an entry-level engineer or intern to support the optimization and deployment of multimodal models onto vehicle-grade compute platforms. This role is a strong fit for candidates who are excited about deep learning systems, model deployment, and edge inference for real-world autonomous driving applications.
Key Responsibilities
The Mission: Vision-Language-Action (VLA) models and foundation models are becoming increasingly important in autonomous driving, but turning research models into real-time, production-ready systems on vehicle hardware remains a major challenge. We are looking for an entry-level engineer or intern to support the optimization and deployment of multimodal models onto vehicle-grade compute platforms. This role is a strong fit for candidates who are excited about deep learning systems, model deployment, and edge inference for real-world autonomous driving applications.
Key Responsibilities
- Support model quantization and deployment efforts for large-scale multimodal models, including Transformers and vision-language models.
- Assist with applying model optimization techniques such as post-training quantization, quantization-aware training, pruning, and related compression methods under guidance from senior engineers.
- Work with research and platform teams to help improve model deployability and understand hardware and runtime constraints.
- Contribute to deployment tools, test pipelines, and runtime modules in C and Python for autonomous driving systems.
- Help analyze model performance, memory usage, latency, and numerical accuracy across different deployment targets.
- Participate in debugging and performance tuning across the model, runtime, and system stack.
- Support validation and testing workflows to ensure stable and reliable deployment in vehicle and simulation environments.
- BS, MS, or PhD in Computer Science, Electrical Engineering, Robotics, or a related field.
- Strong programming skills in C and/or Python.
- Familiarity with deep learning frameworks such as PyTorch.
- Basic understanding of model inference, deployment, or optimization workflows using tools such as ONNX, TensorRT, or similar frameworks.
- Exposure to model compression or quantization concepts such as INT8, FP16, or related approaches.
- Interest in computer architecture, performance optimization, and edge or embedded systems.
- Strong problem-solving skills and the ability to learn quickly in a fast-paced engineering environment.
- Good communication skills and the ability to collaborate with cross-functional teams.
- Internship, research, or project experience in deep learning model deployment, inference acceleration, or embedded AI.
- Familiarity with Transformers, multimodal models, or foundation models.
- Experience with CUDA or GPU programming.
- Exposure to autonomous driving, robotics, or real-time systems.
- Contributions to research projects, open-source repositories, or relevant course projects.
- A fun, supportive and engaging environment.
- Infrastructures and computational resources to support your work.
- Opportunity to work on cutting edge technologies with the top talents in the field.
- Opportunity to make significant impact on the transportation revolution by the means of advancing autonomous driving.
- Competitive compensation package.
- Snacks, lunches, dinners, and fun activities.