Overview:
TekWissen is a global workforce management provider headquartered in Ann Arbor Michigan that offers strategic talent solutions to our clients world-wide. Our client is a recognized prominent global enterprise in the automotive sector listed among the top 50 companies in the Global Fortune rankings. As a leading player in the global automotive industry our client manufactures vehicles in 27 countries and effectively markets them across over 170 countries and regions worldwide.
Position: GenAI Research Intern (Mobility / connected vehicles)
Location: Mountain View CA 94043
Duration: 4 Months
Job Type: Temporary Assignment
Work Type: Onsite
Job Description:
- Client is seeking a PhD student in Computer Science Electrical Engineering Mechanical Engineering or a related engineering discipline to work on resource-efficient Gen-AI solutions for connected and intelligent mobility services
What you ll be doing:
- Research and prototype resource-efficient Gen-AI models for mobility applications
- Explore communication-efficient AI techniques for edge cloud and V2X environments
- Develop semantic and context-aware AI services for connected vehicles and infrastructure
Required Qualifications:
- Currently pursuing a Ph.D. in Computer Science Electrical Engineering Mechanical Engineering or a related engineering discipline with a focus on AI / machine learning
- Strong background GenAI concepts and tools
- Prior experience with implementing or experimenting LLM-based solutions
- Proficient programming skills in Python and common libraries (e.g. TensorFlow Pytorch etc.)
- Ability to engage in general research activities such as defining problems and issues to be addressed finding and using research data and being able to make recommendations and findings in writing and presentations
TekWissen Group is an equal opportunity employer supporting workforce diversity.
Overview: TekWissen is a global workforce management provider headquartered in Ann Arbor Michigan that offers strategic talent solutions to our clients world-wide. Our client is a recognized prominent global enterprise in the automotive sector listed among the top 50 companies in the Global For...
Overview:
TekWissen is a global workforce management provider headquartered in Ann Arbor Michigan that offers strategic talent solutions to our clients world-wide. Our client is a recognized prominent global enterprise in the automotive sector listed among the top 50 companies in the Global Fortune rankings. As a leading player in the global automotive industry our client manufactures vehicles in 27 countries and effectively markets them across over 170 countries and regions worldwide.
Position: GenAI Research Intern (Mobility / connected vehicles)
Location: Mountain View CA 94043
Duration: 4 Months
Job Type: Temporary Assignment
Work Type: Onsite
Job Description:
- Client is seeking a PhD student in Computer Science Electrical Engineering Mechanical Engineering or a related engineering discipline to work on resource-efficient Gen-AI solutions for connected and intelligent mobility services
What you ll be doing:
- Research and prototype resource-efficient Gen-AI models for mobility applications
- Explore communication-efficient AI techniques for edge cloud and V2X environments
- Develop semantic and context-aware AI services for connected vehicles and infrastructure
Required Qualifications:
- Currently pursuing a Ph.D. in Computer Science Electrical Engineering Mechanical Engineering or a related engineering discipline with a focus on AI / machine learning
- Strong background GenAI concepts and tools
- Prior experience with implementing or experimenting LLM-based solutions
- Proficient programming skills in Python and common libraries (e.g. TensorFlow Pytorch etc.)
- Ability to engage in general research activities such as defining problems and issues to be addressed finding and using research data and being able to make recommendations and findings in writing and presentations
TekWissen Group is an equal opportunity employer supporting workforce diversity.
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