XPENG
XPENG
Posted 20 days ago
Internship
Santa Clara, California
In Person
Smart Summary
Responsibilities
Support the optimization and deployment of large-scale multimodal and VLA models onto vehicle-grade compute platforms. Contribute to deployment tools, test pipelines, and performance tuning to ensure real-time production readiness.
Qualifications
You have strong programming skills in C++ and/or Python and familiarity with deep learning frameworks like PyTorch. You also possess a basic understanding of model inference, deployment, or optimization workflows and an interest in computer architecture and edge systems.
Must Have Skills for ATS
C++
Python
PyTorch
ONNX
TensorRT
INT8
FP16
CUDA
Job Description
XPENG
XPENG is a leading Chinese Smart EV company that designs, develops, manufactures, and markets Smart EVs that appeal to the large and growing base of technology-savvy middle-class consumers. Its mission is to drive Smart EV transformation with technology and data, shaping the mobility experience of the future. In order to optimize its customers’ mobility experience, XPeng develops in-house its full-stack advanced driver-assistance system technology and in-car intelligent operating system, as well as core vehicle systems including powertrain and the electrical/electronic architecture. XPeng is headquartered in Guangzhou, China. In 2021, the Company established its European headquarters in Amsterdam, along with other dedicated offices in Copenhagen, Munich, Oslo, and Stockholm.The Company’s Smart EVs are mainly manufactured at its plant in Zhaoqing and Guangzhou,Guangdong province. For more information, please visit https://www.xpeng.com/
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