Develops AI applications and demos using Quadric's SDK, integrates products into AI/LLM frameworks, optimizes models for edge devices, and provides technical leadership and support to customers and developer community. Requires 5+ years with AI frameworks like PyTorch or TensorFlow, plus Python/C++ proficiency.
Salary not listed
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About the role
Responsibilities
Customize AI/LLM frameworks and integrate Quadric products and SDK into AI/LLM ecosystem
Develop AI applications, demos using Quadric's SDK and AI frameworks to showcase product capabilities and performance to developer community and customers
Design and implement optimization strategies for AI/LLM applications on Quadric's platform
Collaborate across related areas of the AI inference stack to support team and business priorities
Provide technical leadership, training and support to developer community and customers worldwide
Work with Business Development to articulate technical value propositions to potential customers
Collaborate with Product and Engineering teams to influence product roadmap based on application needs
Stay current with industry trends, competitive technologies, and emerging applications
Occasional travel required to customer sites
Requirements
Bachelor’s or Master's in Computer Science and/or Electronics Engineering field
5+ years experience with AI/LLM frameworks in at least one of the following: PyTorch, vLLM, Tensorflow, onnxruntime, llamacpp; deep understanding of the framework's codebase
Demonstrate knowledge of computer vision, perception, or LLM, and experience in related application development
Proficiency in Python and C/C++, experience with CUDA, NEON a plus
Experience with Linux, docker based development environments
Experience with quantization and model accuracy analysis a plus
Ability to methodically debug problems, relay information to the engineering team, and test and deploy system updates and upgrades
Benefits
Competitive salary and meaningful equity
Medical, dental, and vision plan options starting on day one
401(k) retirement plan
Flexible paid time off (unlimited, non-accrual)
Company-provided lunches and stocked kitchen (in-office)
Support for commuting, including monthly parking or Caltrain passes
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