公司简介

"科技成就生活之美"
"科技成就生活之美"
We are seeking an experienced Research Scientist to lead the optimization, deployment, and enhancement of a fleet of robotic systems in production environments .
The ideal candidate will have strong expertise in combinatorial optimization, such as scheduling and task allocation, robotic path planning (MAPF) and related learning-based methods.
Therefore, we are seeking a candidate who is passionate about job scheduling, multi-agent task allocation, and path planning, with a proven track record of designing and implementing innovative products and features.
This is a hands-on role requiring deep and broad knowledge of software development tools and advanced algorithm development.
Key Responsibilities:
• Design and implement highly reliable, embedded multi-agent task allocation and scheduling algorithms, and validate designs through both simulation and real-world testing.
• Contribute to system architecture decisions that shape the future of Bosch’s multi-agent dynamic orchestration system.
• Collaborate with cross-functional teams—including perception, hardware, and software experts—to deliver intelligent, integrated systems and solutions.
• Travel as required to support on-site system testing.
Basic Qualifications:
• PhD, or Master’s degree with 4+ years of experience in Computer Science, Computer Engineering, Electrical and Computer Engineering, Robotics, Mathematics, or a related field.
• Proficiency in Python/C++ or a related programming language.
• Demonstrated record of patents or publications in top-tier, peer-reviewed conferences or journals.
• Experience in developing multi-agent task allocation and path planning algorithms for business applications.
• Proven ability to apply theoretical models in practical, real-world environments.
• Proficiency in English for technical writing, team and client communication.
Preferred Qualifications:
• PhD in Robotics, Computer Science, Mathematics, or a related field.
• Experience developing and implementing data-driven approaches for multi-agent systems.
• Expertise in combinatorial optimization with applications in production line environments.
• Experience in production / manufacturing domain and related processes
• Experience in test-driven development and end-to-end testing of algorithms