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Lead Engineer,Senior-ARM,CPU

Qualcomm · Bengaluru, Karnataka, India

~₹50L (est.)8–16 yrs experiencePosted 5 days ago
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Job description

## **Company:** Qualcomm India Private Limited ## **Job Area:** Engineering Group, Engineering Group > Software Engineering **General Summary:** As a leading technology innovator, Qualcomm pushes the boundaries of what's possible to enable next-generation experiences and drives digital transformation to help create a smarter, connected future for all. As a Qualcomm Software Engineer, you will design, develop, create, modify, and validate embedded and cloud edge software, applications, and/or specialized utility programs that launch cutting-edge, world class products that meet and exceed customer needs. Qualcomm Software Engineers collaborate with systems, hardware, architecture, test engineers, and other teams to design system-level software solutions and obtain information on performance requirements and interfaces. **Minimum Qualifications:** • Bachelor's degree in Engineering, Information Systems, Computer Science, or related field and 3+ years of Software Engineering or related work experience. OR Master's degree in Engineering, Information Systems, Computer Science, or related field and 2+ years of Software Engineering or related work experience. OR PhD in Engineering, Information Systems, Computer Science, or related field and 1+ year of Software Engineering or related work experience. • 2+ years of academic or work experience with Programming Language such as C, C++, Java, Python, etc. **Detailed JD:** **==========** **Job Description: CPU Software & Hardware Co-Design Engineer (ML Systems)** **Location:** Bangalore (or relevant) **Levels:** Engineer / Senior Engineer / Staff / Principal Engineer **Role Overview** We are building a high-impact team at the intersection of **CPU architecture, machine learning workloads, and system-level performance optimization**. This role focuses on **CPU software–hardware co-design for next-generation QMX architectures**, including workload characterization, simulation, kernel optimization, and driving architectural insights for future CPU designs. The ideal candidate will work across the full stack—from ML models to low-level kernels to architectural feedback—enabling **efficient execution of ML workloads on CPU platforms**. **Key Responsibilities** **1. ML Workload Identification & Characterization** - Identify and prioritize **critical ML use cases and models** for CPU-centric execution (LLMs, vision, speech, recommender systems, etc.) - Analyze workload characteristics including: - Compute intensity - Memory bandwidth and cache behavior - Parallelism and dataflow patterns **2. Simulation & Trace Generation** - Generate detailed execution traces for ML workloads using **QEMU or equivalent simulators** - Develop tooling to: - Capture instruction-level execution behavior - Extract performance counters and bottlenecks - Enable accurate modeling of workload behavior for architectural exploration **3. Bottleneck Analysis & Performance Optimization** - Identify system bottlenecks across: - CPU pipelines - Memory hierarchy - Instruction utilization - Optimize critical hotspots through: - Kernel-level tuning - Algorithmic improvements - Data layout and memory optimizations - Drive measurable improvements in workload performance **4. Software–Hardware Co-Design** - Collaborate with CPU architecture and design teams to: - Provide **data-driven insights** from real workloads - Identify inefficiencies and propose architectural enhancements - Influence next-generation CPU features in: - Compute units - Vector/SIMD extensions (e.g., QMX) - Memory subsystems **5. ML Kernel & Library Development (QMX Focus)** - Design and implement **highly optimized ML kernels and libraries** for QMX architecture - Develop kernels for: - GEMM, convolution, attention, activation functions, etc. - Enable integration with: - Open-source ML frameworks (e.g., PyTorch, ONNX, XNNPACK, MLAS) - Apply advanced optimizations: - SIMD/vectorization - Cache-aware execution - Parallel execution strategies **6. Benchmarking & Performance Engineering** - Optimize CPU-centric ML benchmarks such as: - Geekbench AI - Internal benchmarking suites - Establish performance baselines and track improvements across hardware generations - Perform competitive analysis and performance positioning **Required Qualifications** - Strong background in: - Computer Architecture / Systems Programming - Machine Learning fundamentals - Proficiency in: - C/C++ (mandatory) - Experience with: - Performance profiling, benchmarking, and optimization **Preferred Qualifications** - Experience with: - QEMU or equivalent simulators - ML kernel development (GEMM, convolution, attention) - Knowledge of: - CPU architecture (pipelines, caching, SIMD/vector extensions such as NEON, SVE, QMX) - Familiarity with: - ML frameworks and inference stacks - Experience with low-level optimization: - Intrinsics, assembly, memory and cache tuning **Why Join This Team** - Work on **next-generation CPU architectures (QMX)** - Directly influence **hardware design through real workload insights** - Solve **end-to-end ML performance challenges (model → kernel → silicon)** - Collaborate with **top architecture, systems, and AI teams** - High-impact role with visibility across product and research roadmaps **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](mailto:disability-accomodations@qualcomm.com) or call Qualcomm's toll-free number found [here](https://qualcomm.service-now.com/hrpublic?id=hr_public_article_view&sysparm_article=KB0039028). Upon request, Qualcomm will provide reasonable accommodations to support individuals with disabilities to be able participate in the hiring process.