Finding the best job has never been easier
Share
What you'll be doing:
Researching methods (adjusting model architectures, training procedures, etc.) to enable sparsity in neural networks while maintaining the quality of the results.
Proposing hardware features to enable sparsity, studying their impact on DL acceleration and efficiency.
What we need to see:
MS or PhD degree in computer science, computer engineering, electrical engineering or related field or equivalent experience.
At least 3+ years of relevant work experience
Experience with neural network pruning and sparsity, training networks for various tasks, exploring model architectures.
Experience with modern DL training frameworks and/or inference engines.
Background in computer architecture, performance analysis and optimization.
Fluency in Python, C++, or ideally both.
Experience with GPU computing, CUDA is not required but a big plus.
Intelligent machines powered by AI computers that can learn, reason and interact with people are no longer science fiction. Today, a self-driving car powered by AI can meander through a country road at night and find its way. An AI-powered robot can learn motor skills through trial and error. This is truly an extraordinary time. The era of AI has begun.
You will also be eligible for equity and .
These jobs might be a good fit