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General Summary:
We are seeking a Senior AI Compute Engineer to develop, optimize, and scale compute infrastructure for training and deploying ML and GenAI workloads. This role focuses on GPU acceleration, distributed training frameworks, and high‑performance compute systems
Minimum Qualifications:
Key Responsibilities
Design and optimize GPU‑accelerated training pipelines for ML and LLM workloads.
Implement distributed training strategies using frameworks like PyTorch Distributed or DeepSpeed.
Work with HPC clusters, multi‑GPU systems, and parallel computing architectures.
Profile, optimize, and troubleshoot compute performance bottlenecks.
Collaborate with ML and platform teams to integrate scalable compute solutions.
Develop tools for monitoring, scheduling, and managing large‑scale training jobs.
Optimize CUDA kernels, memory usage, and compute flows where needed.
Minimum Qualifications:
Bachelor’s or Master’s in Computer Science, Computational Engineering, or similar.
Strong expertise in GPU computing, CUDA, or parallel processing.
3–8 years of experience working with ML model training environments.
Hands‑on experience with distributed training frameworks.
Solid understanding of computer architecture and performance optimization.
Strong analytical and problem-solving skills.
Hands-on experience with supervised and unsupervised learning techniques (e.g., classification, clustering, dimensionality reduction).
Experience with ML frameworks such as scikit-learn, TensorFlow, or PyTorch
Preferred Qualifications:
Experience with multi‑node training, HPC clusters, or cloud GPU environments.
Experience in large Model Development & Training from the Scratch.
Familiarity with model parallelism, pipeline parallelism, or large‑scale DL training.
Experience with deep neural network architectures including RNNs, and Transformers.
GenAI, LLMs, RAG Optimization. LLM Finetuning, Distillation Experience.
Applicants: Qualcomm is an equal opportunity employer. If you are an individual with a disability and need an accommodation during the application/hiring process, rest assured that Qualcomm is committed to providing an accessible process. You may e-mail disability-accomodations@qualcomm.com or call Qualcomm's toll-free number found here. Upon request, Qualcomm will provide reasonable accommodations to support individuals with disabilities to be able participate in the hiring process. Qualcomm is also committed to making our workplace accessible for individuals with disabilities. (Keep in mind that this email address is used to provide reasonable accommodations for individuals with disabilities. We will not respond here to requests for updates on applications or resume inquiries).
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