Huawei Canada has an immediate 6-12 months internship opening for an Intern Researcher.
About the team:
The Computing Data Application Acceleration Lab aims to create a leading global data analytics platform organized into three specialized teams using innovative programming technologies. This team focuses on full-stack innovations, including software-hardware co-design and optimizing data efficiency at both the storage and runtime layers. This team also develops next-generation GPU architecture for gaming, cloud rendering, VR/AR, and Metaverse applications. One of the goals of this lab are to enhance algorithm performance and training efficiency across industries, fostering long-term competitiveness.
About the job:
Develop and optimize RL post-training pipelines for LLMs (e.g., GRPO, reward modeling).
Conduct experiments to improve model performance, reasoning, and alignment.
Build scalable training, evaluation, and data generation systems.
Collaborate with researchers and engineers on cutting-edge LLM projects
Stay current with advancements in RL, LLMs, and post-training research.
The total target annual compensation (based on 2,080 hours per year) ranges from $58,000 to $104,000 depending on education, experience, and demonstrated expertise.
About the ideal candidate:
Enrolled as Master or Ph.D. student in Computer Science, AI, or related field.
Strong background in machine learning, reinforcement learning, and deep learning. Familiarity with Large Language Models, transformer architectures, and post-training methods.
Proficiency in Python, PyTorch, and LLM frameworks.
Hands-on experience with LLMs and RL training algorithms (e.g., GRPO) is an asset.
Familiarity with RL frameworks, such as VeRL.
Experience with open-source LLM frameworks such as Hugging Face, DeepSpeed, vLLM, or SGLang is an asset.
Knowledge of domain-specific languages used with AI accelerators.
Experience with distributed training frameworks, large-scale experimentation, or LLM infrastructure is an asset.
Strong problem-solving and communication skills
Additional Information:
Huawei Canada is committed to a fair, inclusive, and accessible recruitment process. If you require accommodation during any stage of the hiring process, please let us know and we will work with you to meet your needs.
All applications for this position are reviewed directly by our hiring team, we do not use artificial intelligence tools to screen or select candidates.
Skills Required
- Enrolled as Master or Ph.D. student in Computer Science, AI, or related field
- Strong background in machine learning, reinforcement learning, and deep learning; familiarity with Large Language Models, transformer architectures, and post-training methods
- Proficiency in Python, PyTorch, and LLM frameworks
- Hands-on experience with LLMs and RL training algorithms (e.g., GRPO)
- Familiarity with RL frameworks such as VeRL
- Experience with open-source LLM frameworks such as Hugging Face, DeepSpeed, vLLM, or SGLang
- Knowledge of domain-specific languages used with AI accelerators
- Experience with distributed training frameworks, large-scale experimentation, or LLM infrastructure
- Strong problem-solving and communication skills
What We Do
Founded in 1987, Huawei is a leading global provider of information and communications technology (ICT) infrastructure and smart devices. We are committed to bringing digital to every person, home and organization for a fully connected, intelligent world. We have approximately 197,000 employees and we operate in over 170 countries and regions, serving more than three billion people around the world. In Canada, Huawei conducts innovative and leading edge research in 5G technologies, along with advanced development of emerging cloud, device and network technologies & services. While our renowned Canada Research Centre in the thriving technology landscape of Ottawa, Ontario continues to grow rapidly in size and strategic product initiatives, additional presence has also been established across Canada with R&D facilities in Vancouver, Edmonton, Waterloo, Markham, Montreal, and a R&D office in Quebec City.
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