Senior Deep Learning Software Engineer

San Francisco, California
US$190000 - US$235000 per annum

SENIOR DEEP LEARNING SOFTWARE ENGINEER
TECHNOLOGY
BAY AREA, CA
$195,000 - $235,000 + BONUS + BENEFITS

Are you an experienced Deep Learning Software Engineer that is interested in joining a globally known tech company to help develop one of their newest products? Keep reading!

THE COMPANY

This well established and well known tech company is building out a brand new team to help with the development of one of their newest products. The company itself has thousands of employees, however this team has a small start-up feel that will allow you to gain exposure to several exciting projects.

THE ROLE - SENIOR DEEP LEARNING SOFTWARE ENGINEER

As a Senior Deep Learning Software Engineer, you will be reporting into one of the AI Directors and will be joining a small but growing team

  • You will play a large role in the development of one of the company's "first of their kind" products and will be interacting directly with their customers
  • You will be working on performance tuning and optimization of existing machine learning and deep learning models
  • You will be working on developing optimization techniques and will deploying the models onto the architecture
  • You will be working with deep learning frameworks such as TensorFlow, Pytorch and Keras

YOUR SKILLS AND EXPERIENCE

  • BSc, MSc, or PhD in a STEM or related degree
  • At least 5 or more years of relevant industry experience
  • Proven experience working with Python, TensorFlow, PyTorch and Keras
  • Skilled in developing production ready code in C++
  • Proven experience with performance tuning and optimization for machine learning and deep learning models
  • HUGE bonus would be experience with GPU programming

BENEFITS

You can expect to earn up to $235,000 (depending on experience) as a Senior Deep Learning Software Engineer.

HOW TO APPLY

Please register your interest by sending your resume to Annie Nasharr via the apply link on this page.

KEYWORDS

Computer vision, deep learning, computer science, artificial intelligence, C++, Python, Keras, TensorFlow, PyTorch, software development, optimization, tuning, performance, machine learning, GPU, CUDA, compiler

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