Company Description

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Job Description

  • Responsible for deploying AI models (such as E2E, VLM, BEV, occupancy, NLP, etc.) converted from training frameworks into AI cockpit or autonomous driving products.
  • Collaborate with algorithm team to support algorithm engineers in optimizing models, including model compression, quantization, pruning, distillation, etc., to reduce model size and compute complexity.
  • Collaborate with basic software team to optimize model design based on chip hardware resources and software architecture to ensure effective integration and performance of the algorithm in overall system.
  • Research and evaluate different hardware platforms and software frameworks to select the best technical solution for different computing scenarios.
  • Deploy model execution environments based on QNX/Linux/Android.
  • Solve technical problems during AI model deployment, including toolchains, compilation, integration, and execution.
  • Actively communicate with chip vendors to solve problems.

Qualifications

  • Bachelor's degree or above in Computer Science, Software Engineering, Artificial Intelligence, or electronic engineering field, with solid knowledge in computer science.
  • 3+ years of experience in AI model deployment in autonomous driving or AI cockpits.
  • Knowledgeable with common deep learning frameworks (such as PyTorch, TensorFlow, etc.), familiar with deep learning knowledge such as CNN and Transformer.
  • Familiar with AI models for autonomous driving, experience in deep learning model deployment and performance optimization is preferred.
  • Familiar with Linux/QNX operating systems, including task scheduling, memory management, etc.
  • Proficient in C++/Python programming languages.
  • Proficient in cross-compilation, integration, development, and debugging of embedded software SDKs.
  • Familiar with heterogeneous computing, with a deep understanding of computing resources such as CPU/DSP/GPU/NPU, development and optimization of efficient communication and synchronization schemes, and identification of chip computing bottlenecks.
  • Experience in deploying models on edge-side AI chips is preferred, such as Qualcomm SA8255/Nvidia Orin/Horizon J6, etc. Familiar with related technology stacks such as QNN/OpenCL/TensorRT/CUDA is preferred.
  • No block on reading English specification and technical documents, good oral English is a plus.
  • Strong ability to learn quickly, strong self-motivation, and enjoy sharing and helping others.

Location

Shanghai, China

Job Overview
Job Posted:
1 month ago
Job Expires:
Job Type
Full Time

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