
Intern - Next-generation Computer Architecture for Racks and SuperPods
Required skills
Job description
Huawei posted this role. Below, we break down what it means for a working student in Munich: your weekly hours, take-home pay and visa limits. You can also open ChatGPT or Claude with a ready-made prompt to tailor your CV, check your fit, draft a cover letter or prep for the interview.
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Description provided by Huawei
Through its Carrier, Enterprise, and Consumer business groups, Huawei delivers resilient digital infrastructure, advanced cloud and AI platforms, and transformative devices that enable progress at every level. Supporting 45 of the world’s top 50 telecom operators and serving one-third of the global population across more than 170 countries, Huawei is shaping a future where connectivity becomes a powerful catalyst for opportunity and sustainable growth.
Huawei Heisenberg Research Center (Munich) is responsible for advanced technology research, architectural development, design and strategic engineering of our products.
The Applied Network Technology Lab (ANTL) plays a leading role in researching new networking technologies and delivering novel next generation networking solutions. Our research areas include but not limited to Internet and networking protocols, Deterministic Networking, Time-Sensitive Networking, and Industrial Ethernet.
Join us as a
Intern - Next-generation Computer Architecture for Racks and SuperPods (m/f/d)
Your mission
- Designing next-generation rack and SuperPod architectures that combine elasticity through resource pooling with optimal performance enabled by holistic co-design across applications, parallel programming models, interconnect fabrics, and compute, memory, and switch chip architectures. On the communication side, the work architects scalable, high-bandwidth, and low-latency scale-up fabrics across multiple chips at rack and SuperPod scale. On the memory side, it explores richer protocol semantics beyond traditional load/store operations to reduce unnecessary data movement and rethinks memory hierarchies to expose large-scale capacity with near-local latency. On the compute side, it analyzes the requirements of General Compute and Generative AI workloads and their parallel programming models to fully leverage large-scale system resources.
- Investigate and prototype new architectural features, including but not limited to:
- Prefetching/Speculation: Evaluate and design existing and next-generation hardware prefetching and speculation mechanisms to effectively hide local and remote memory latencies at rack and SuperPod scale.
- Near-Memory/Network Processing: Develop support for key primitives executed at the memory and network layers to minimize unnecessary data movement across sparse, dense, and pointer-based data structures.
- Workload-Centric Co-Design: Study optimal parallelization strategies at rack and SuperPod scale for both General Compute and Generative AI workloads, and design dedicated hardware support for widely used parallel programming primitives such as RPCs and collective communication.
- Write reports and papers on the research results and present them.
- Enrolled MSc student in Computer Science, Electrical Engineering, or related field
- Background in Computer Architecture and Computer Fabrics is a must
- Creativity and the ability to think outside the box to develop innovative technologies
- Research experience in at least one of the following areas:
- Scale-up Fabrics: NVLink, UALink, CXL, UPI, IF, or PCIe
- Parallel programming models: Collective libraires (NCCL or RCCL) and RPCs (gRPC or Thift)
- Workload optimization: General Compute and Generative AI workload composition (internals) and parallelization expertise at the scale of the rack or SuperPoD in both cloud and HPC environments
- Excellent analytical, problem-solving, and system-level thinking skills
- Strong interpersonal skills, with a collaborative spirit and the ability to work independently
- Fluency in written and spoken English language
Your rewards of working here
- Our culture is characterized by innovative power and team spirit as well as the intensive exchange of knowledge and experience within our global network.
- We offer healthy meals ranging from traditional Chinese to western delicacies in our famous company canteen.
- To keep your development ongoing, you will find a broad range of training opportunities. Many online and face-to-face training programs incl. language courses in German and Mandarin.
- Our diverse and welcoming environment is shaped by different backgrounds and around 40 individual nationalities.
- Self-responsible work in a competent, motivated and constantly growing team.
Working student essentials
What this Engineering internship in Munich means for you: the pay rules, the social contributions, and what international students should check before applying.
Weekly hours
Internships have no 20-hour cap, but a voluntary internship longer than three months generally has to pay at least the German minimum wage. Mandatory internships in your study programme are exempt.
Working student rulesSocial contributions
Mandatory internships are largely exempt from social contributions. Voluntary internships are treated like regular employment once they run long enough, so contributions usually apply.
Check your insuranceInternational students
Non-EU students can work 140 full or 280 half days per year (raised from 120/240 in March 2024). A working student contract usually fits within this — confirm the exact limits printed on your residence permit.
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