Machine Learning Engineer (Training Optimization)

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📍 Beijing📍 Beijing, Beijing, China📍 cnFull time

About this role

Company Description

该岗位现面向所有经验阶段的候选人开放,包括社会招聘、应届毕业生,同时开放实习生岗位。工作地点为北京。欢迎申请,期待你的加入!

Notice: This position is open to candidates at all experience levels, including experienced candidates, graduates, as well as internship opportunities. The role is based in Beijing. We welcome your application and look forward to having you on board!

Job Description

At Canva, we're building a future powered by AI that's as magical as it is impactful. As a Research Scientist at Canva, you'll be responsible for advancing the future of AI by experimenting with cutting-edge techniques, as well as improving models for real-world quality and performance.

 

About the Group/Team

We're the CORE team within the Generative AI supergroup. Our mission is to invent foundational technologies that will power the future of AI-assisted design. From large-scale models to groundbreaking research, our team builds the technical core of Canva’s creative intelligence engine. We collaborate globally to ship research that makes a real impact—from smart editing to AI video tools—at massive scale.

 

About the Role/Specialty

As a Machine Learning Engineer, you’ll lead efforts to scale and optimize the training system for our large-scale multimodal and foundation models. You’ll design distributed training systems using Megatron-LM, NVIDIA NeMo, FSDP, and Triton—pushing the limits of performance across compute, memory, and communication layers. You'll sit at the intersection of systems and AI research, directly shaping how we train the models that will power Canva’s next generation of products.

 

What you’ll do (responsibilities)

  • You’ll design, implement, and optimize large-scale machine learning systems for training
  • You’ll improve all aspects of performance, including GPU utilization, communication overhead, and memory efficiency.
  • You’ll partner with research and modeling teams to align systems with algorithmic needs.
  • You’ll evaluate and apply best practices for distributed training using industry-leading frameworks.
  • You’ll dive deep into low-level optimization, including custom CUDA or Triton kernels.

• • You’ll debug, profile, and fine-tune training workflows to unlock new levels of scalability.

Qualifications

What we're looking for

We’re looking for a systems-first engineer who thrives in fast-paced, high-impact environments. You’re deeply familiar with distributed model training at scale and understand the nuances of optimizing compute at every level of the stack. You're excited by challenges that stretch current boundaries, and you’re a strong collaborator who communicates clearly across domains.

  • Strong background in LLMs, multimodal AI, or diffusion models.
  • Proficiency in Python. Familiarity with a system programming language (e.g. C++ or Rust) is a plus.
  • Deep knowledge of PyTorch or JAX as well as libraries such as Megatron-LM, NeMo, or DeepSpeed.
  • Familiarity with common optimization techniques such as FSDP/ZeRO, gradient checkpointing, or low-precision data types.
  • Hands-on experience writing custom GPU kernels in CUDA or Triton.
  • Excellent communication and problem-solving skills, incl. full proficiency in English.

Additional Information

大模型训练优化工程师(多模态/图像生成),技术要求:算子优化/分布式训练/GPU集群/训练框架。该岗位面向所有经验阶段的候选人开放,包括社会招聘、2026年及2027年应届毕业生,同时开放实习生岗位。

Frequently Asked Questions

Is the salary disclosed for the Machine Learning Engineer (Training Optimization) position at canva?
The salary for this Machine Learning Engineer (Training Optimization) role at canva is not publicly listed. Click "Apply Now" to learn more about the compensation package on their official careers page.
Where is the Machine Learning Engineer (Training Optimization) position at canva located?
This Machine Learning Engineer (Training Optimization) role at canva is based in Beijing, Beijing, Beijing, China, cn. The position is listed as on-site or hybrid. Check the full job description or apply directly to confirm the work arrangement.
Is the Machine Learning Engineer (Training Optimization) role at canva full-time or part-time?
This is listed as a Full time position. It is posted as a Machine Learning Engineer (Training Optimization) role at canva.
How do I apply for the Machine Learning Engineer (Training Optimization) position at canva?
Click the "Apply Now" button on this page. You will be redirected to canva's official application portal hosted on smartrecruiters where you can submit your application directly.
When was the Machine Learning Engineer (Training Optimization) job at canva posted?
This Machine Learning Engineer (Training Optimization) position at canva was posted on Jun 11, 2026. Apply as soon as possible — early applications are often reviewed first.
Machine Learning Engineer (Training Optimization)
canva
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