BLACK SESAME TECHNOLOGIES (SINGAPORE) PTE. LTD.
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Position Overview:
Black Sesame Technologies is seeking a talented and innovative Architect, AI Computing with expertise in software/hardware co-design to drive advancements in autonomous driving technologies. This role offers a unique opportunity to bridge the gap between machine learning algorithms and hardware design, contributing to high-performance, efficient, and scalable solutions for AI-driven systems.
Responsibilities:
· Conduct in-depth research and analysis of cutting-edge machine learning algorithms, with a primary focus on applications in autonomous driving.
· Monitor and forecast industry trends in AI technologies to identify opportunities for innovation and improvement.
· Evaluate the computational and memory requirements of various AI models and operators, identifying optimization opportunities.
· Collaborate closely with chip architects and engineers to design and implement software/hardware co-designed solutions that enhance chip performance, efficiency, and scalability.
· Develop comprehensive technical documentation and presentations to effectively communicate complex concepts to both technical and non-technical audiences.
· Stay connected with academic and industry research communities to remain at the forefront of AI and machine learning advancements.
Qualification/ Requirements:
· Education: PhD in Computer Science, Electrical Engineering, or a related technical field with a strong focus on machine learning.
· Experience: Proven experience in developing and analyzing machine learning algorithms.
· Programming Skills: Proficiency in programming languages such as Python and C++.
· ML Frameworks:Hands-on experience with machine learning frameworks like TensorFlow and PyTorch, and deploying them on hardware accelerators.
· Collaboration: Demonstrated ability to work effectively in a team-oriented, cross-disciplinary environment.
· Co-Design Expertise: Strong understanding of software/hardware co-design principles and their impact on system performance is highly preferred.