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Machine Learning EngineerData
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Quick Summary
Key Responsibilities
review architectures (CNNs, transformers, LLMs, diffusion, and multimodal networks), identify unsupported operators or structures, and adapt models for efficient execution on Qualcomm hardware.
Technical Tools
Machine Learning EngineerData
##
Company:
Qualcomm China
## Job Area:
Engineering Group, Engineering Group > Software Engineering
General Summary:
Job Overview
Artificial Intelligence is changing the world for the benefit of human beings and societies. QUALCOMM, as the world’s leading mobile computing platform provider, is committed to enable the wide deployment of intelligent solutions on all possible devices – like smart phones, laptops, autonomous vehicles, robotics and IoT devices. Qualcomm is creating building blocks for the intelligent edge.
We are seeking a passionate and hands-on Machine Learning Engineer to join our AI Software team in China. You will support Model Onboarding requests for Qualcomm’s China customers, helping take customer and third-party models from initial request to production-ready deployment on Qualcomm Snapdragon platforms. Workloads span the full model spectrum – from large language models (LLMs) and generative AI models to latency-critical vision, audio, and multimodal networks.
The role is grounded in Qualcomm’s AI technology stack: Snapdragon SoCs, the Hexagon NPU (HTP), Adreno GPU, and Qualcomm’s AI software and SDKs including QAIRT (Qualcomm AI Runtime SDK). You will use these tools to analyze, quantize, convert, and deploy models, and to debug and fine-tune their accuracy and performance on simulation and on real hardware.
Roles & Responsibilities
• Support Model Onboarding requests from Qualcomm customers in China, helping drive each request from intake through production deployment across LLMs, generative AI, vision, audio, and multimodal models.
• Analyze and adapt customer models: review architectures (CNNs, transformers, LLMs, diffusion, and multimodal networks), identify unsupported operators or structures, and adapt models for efficient execution on Qualcomm hardware.
• Quantize, convert, and compile models from common frameworks (PyTorch, TensorFlow, ONNX) into Qualcomm runtime formats using QAIRT and related Qualcomm AI tools, applying PTQ/QAT and LLM/GenAI techniques (weight-only, activation, and KV-cache quantization, mixed-precision; Lora, Batch, etc) to meet targets.
• Validate model inference via simulation (x86 reference) and on device, checking numerical correctness and functional behavior on the Hexagon NPU (HTP).
• Debug and fine-tune accuracy and performance: analyze quantization error and layer-wise mismatches, profile latency, memory, and power (including LLM token rates and KV-cache footprint), and apply hardware-aware tuning to meet customer KPIs.
• Collaborate with Qualcomm model, tool, framework, and SDK teams to align onboarding solutions with SoC and HTP capabilities, and to escalate gaps in operator or feature support.
• Participate in the Software Development Life Cycle: requirement analysis, design reviews, development, testing, integration, debugging, and performance tuning.
Required Qualifications
• 3+ years of hands-on experience in machine learning model deployment, optimization, or embedded AI development on IoT, mobile, or real-time embedded platforms.
• Strong proficiency in Python and C/C++, including performance-critical, system-level programming and ML tooling workflows.
• Solid understanding of deep learning model architectures – CNNs, transformers, LLMs, diffusion, and multimodal models – and common frameworks such as PyTorch, TensorFlow, and ONNX.
• Knowledge of model optimization techniques – quantization (PTQ/QAT), pruning, graph optimization, and hardware-aware model design – with strong analytical and debugging skills for accuracy and performance issues on real hardware.
Preferred Qualifications
• Hands-on experience with Qualcomm AI SDKs – QAIRT (Qualcomm AI Runtime SDK) or Hexagon SDK – and with deploying models on Snapdragon using the Hexagon NPU (HTP) or Adreno GPU.
• Experience optimizing or deploying LLMs and generative AI models (e.g. LLaMA, Qwen, Mistral, Stable Diffusion, or similar VLM/LMM families), including weight-only and KV-cache quantization for on-device inference.
• Familiarity with on-device and GenAI inference runtimes such as Llama.cpp and LiteRT, and with tensor layouts, transformations, and tensor-processing mathematics.
• Experience using AI coding agents and assistants (e.g. GitHub Copilot, Claude Code, Cursor) to accelerate development, debugging, and tooling workflows.
Education Requirements
Required: Bachelor’s degree in Computer Engineering, Computer Science, or Electrical Engineering.
Preferred: Master’s or PhD in Computer Engineering, Computer Science, or Electrical Engineering.
Minimum Qualifications:
• Bachelor's degree in Engineering, Information Systems, Computer Science, or related field and 2+ years of Software Engineering or related work experience.
OR
Master's degree in Engineering, Information Systems, Computer Science, or related field and 1+ year of Software Engineering or related work experience.
OR
PhD in Engineering, Information Systems, Computer Science, or related field.
• 2+ years of academic or work experience with Programming Language such as C, C++, Java, Python, etc.
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).
Qualcomm expects its employees to abide by all applicable policies and procedures, including but not limited to security and other requirements regarding protection of Company confidential information and other confidential and/or proprietary information, to the extent those requirements are permissible under applicable law.
To all Staffing and Recruiting Agencies: Our Careers Site is only for individuals seeking a job at Qualcomm. Staffing and recruiting agencies and individuals being represented by an agency are not authorized to use this site or to submit profiles, applications or resumes, and any such submissions will be considered unsolicited. Qualcomm does not accept unsolicited resumes or applications from agencies. Please do not forward resumes to our jobs alias, Qualcomm employees or any other company location. Qualcomm is not responsible for any fees related to unsolicited resumes/applications.
If you would like more information about this role, please contact Qualcomm Careers.
Location & Eligibility
Where is the job
—
Location terms not specified
Listing Details
- Posted
- July 6, 2026
- First seen
- July 6, 2026
- Last seen
- July 6, 2026
Posting Health
- Days active
- 0
- Repost count
- 1
- Trust Level
- 44%
- Scored at
- July 6, 2026
Signal breakdown
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External application · ~5 min on qualcomm's site
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