返回查询:System Architect / 上海

该职位来源于猎聘 Responsibilities As a key technology leader within the team, you will:

  • Define the overarching data and AI technology blueprint to support humanoid robot perception, decision-making, and control.
  • Design and implement scalable, high-availability data architectures for AI model training in robotics, materials, and component development.
  • Build and maintain robust data pipelines for the collection, storage, processing, and provisioning of large-scale, complex datasets.
  • Ensure data quality, governance, and compliance throughout the entire data lifecycle.
  • Provide expert guidance on AI model development and deployment across project teams.
  • Serve as a subject matter expert in data-driven methodologies and AI architecture.
  • Collaborate with motion control and application specialists to integrate sensory and control data for AI training and deployment.
  • Develop and maintain infrastructure for foundation models (e.g., LLMs, VLMs, VLAs) to enable robotic perception, reasoning, and action planning.
  • Build scalable pipelines for training and fine-tuning large models using both real-world and simulated data.
  • Integrate multimodal models (vision-language-action) into robotic systems to enable adaptive task execution.
  • Contribute to the development of simulation-to-real pipelines for humanoid robotics. Qualifications
  • Master's degree or higher in Computer Science, Data Engineering, Data Science, or a related field, 10+ years of experience in industry or academia.
  • Proven expertise in designing data architecture and developing data pipelines (batch and streaming).
  • Proficiency with cloud or on-premises data platforms (e.g., AWS, Azure, Hadoop, Spark).
  • Strong programming skills in Python and hands-on experience with machine learning frameworks.
  • Practical experience with foundation models (e.g., LLMs, VLMs, VLAs) or large-scale AI systems.
  • Solid understanding of data management best practices.
  • Excellent communication skills in English. Nice-to-Haves:
  • Experience with AI/ML techniques such as Reinforcement Learning and Deep Learning.
  • Familiarity with robotics data (e.g., sensor data, simulation, telemetry).
  • Experience in motion data processing and control signal modeling.
  • Background in training, fine-tuning, or integrating foundation models for robotic applications.
  • Knowledge of data governance and security standards.
  • Understanding of digital twin workflows and control-policy optimization.