Machine Learning Engineer, ML Runtime & Optimization

AI overview

Develop technologies to accelerate training and inference of AI models for autonomous driving, optimizing performance on next-generation compute architectures.

Founded in 2016 in Silicon Valley, Pony.ai has quickly become a global leader in autonomous mobility and is a pioneer in extending autonomous mobility technologies and services at a rapidly expanding footprint of sites around the world. Operating Robotaxi, Robotruck and Personally Owned Vehicles (POV) business units, Pony.ai is an industry leader in the commercialization of autonomous driving and is committed to developing the safest autonomous driving capabilities on a global scale. Pony.ai’s leading position has been recognized, with CNBC ranking Pony.ai #10 on its CNBC Disruptor list of the 50 most innovative and disruptive tech companies of 2022. In June 2023, Pony.ai was recognized on the XPRIZE and Bessemer Venture Partners inaugural “XB100” 2023 list of the world’s top 100 private deep tech companies, ranking #12 globally. As of August 2023, Pony.ai has accumulated nearly 21 million miles of autonomous driving globally. Pony.ai went public at NASDAQ in Nov. 2024.

Responsibility

The ML Infrastructure team at Pony.ai provides a set of tools to support and automate the lifecycle of the AI workflow, including model development, evaluation, optimization, deployment, and monitoring.

As a Machine Learning Engineer in ML Runtime & Optimization, you will be developing technologies to accelerate the training and inferences of the AI models in autonomous driving systems.

This includes:

  • Identifying key applications for current and future autonomous driving problems and performing in-depth analysis and optimization to ensure the best possible performance on current and next-generation compute architectures.
  • Collaborating closely with diverse groups in Pony.ai including both hardware and software to optimize and craft core parallel algorithms as well as to influence the next-generation compute platform architecture design and software infrastructure.
  • Apply model optimization and efficient deep learning techniques to models and optimized ML operator libraries.
  • Work across the entire ML framework/compiler stack (e.g.Torch, CUDA and TensorRT), and system-efficient deep learning models.

Requirements

  • BS/MS or Ph.D in computer science, electrical engineering or a related discipline.
  • Strong programming skills in C/C++ or Python.
  • Experience on model optimization, quantization or other efficient deep learning techniques
  • Good understanding of hardware performance, regarding CPU or GPU execution model, threads, registers, cache, cost/performance trade-off, etc.
  • Experience with profiling, benchmarking and validating performance for complex computing architectures.
  • Experience in optimizing the utilization of compute resources, identifying and resolving compute and data flow bottlenecks.
  • Strong communication skills and ability to work cross-functionally between software and hardware teams

Preferred Qualifications:

One or more of the following fields are preferred

  • Experience with parallel programming, ideally CUDA, OpenCL or OpenACC.
  • Experience in computer vision, machine learning and deep learning.
  • Strong knowledge of software design, programming techniques and algorithms.
  • Good knowledge of common deep learning frameworks and libraries.
  • Deep knowledge on system performance, GPU optimization or ML compiler.

Compensation and Benefits

Base Salary Range: $140,000 - $250,000 Annually

Compensation may vary outside of this range depending on many factors, including the candidate’s qualifications, skills, competencies, experience, and location. Base pay is one part of the Total Compensation and this role may be eligible for bonuses/incentives and restricted stock units.

Also, we provide the following benefits to the eligible employees:

  • Health Care Plan (Medical, Dental & Vision)
  • Retirement Plan (Traditional and Roth 401k)
  • Life Insurance (Basic, Voluntary & AD&D)
  • Paid Time Off (Vacation & Public Holidays)
  • Family Leave (Maternity, Paternity)
  • Short Term & Long Term Disability
  • Free Food & Snacks

Perks & Benefits Extracted with AI

  • Health Insurance: Health Care Plan (Medical, Dental & Vision)
  • Free food and snacks: Free Food & Snacks
  • Paid Parental Leave: Family Leave (Maternity, Paternity)
  • Paid Time Off: Paid Time Off (Vacation & Public Holidays)

PONY.AIOur mission is to revolutionize the future of transportation by building the safest and most reliable technology for autonomous vehicles. Armed with the latest breakthroughs in artificial intelligence, we aim to deliver our technology at a global scale. We believe our work has the potential to transform lives and industries for the better.CULTUREWhen it comes to our technology, quality and reliability are hallmark attributes; we don’t believe in taking shortcuts. Our emphasis on craftsmanship enables us to deliver an autonomous driving solution that is highly sophisticated and best-in-class.When it comes to our people, teamwork, robust mentorship, and collaboration are several key pillars of our culture. We ensure every member of our team receives the support they need while tackling some of the biggest tech challenges that exist today. Here, our employees grow with the company. We truly believe that growing a successful company means growing a successful team.A GLOBAL PERSPECTIVEWe are deeply passionate about reaching a global audience, starting with our two home countries: China and the United States. With offices and development teams in Silicon Valley, Beijing, and Guangzhou, we are well on our way towards achieving that goal.

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Salary
$140,000 – $250,000 per year
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