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EP
Workloads Engineer
EER Poland · Gdansk, Poland
About The Role
Workloads Engineer
(AI Systems / HW-SW Optimization)
Role Overview
This is not a traditional software engineering role.
We are looking for a Workloads Engineer responsible for translating AI models into efficient, production-ready execution on a new hardware + software stack. The role sits at the intersection of AI model understanding, systems engineering, and low-level performance optimization .
You will work across the full stack — from AI model structure down to hardware execution, ensuring that workloads are efficient, scalable, accurate, and robust on next-generation compute platforms.
Key Responsibilities
- Analyze AI model architectures (including LLMs) and translate them into optimized execution workloads for custom HW/SW platforms
- Design and implement high-performance software components for AI frameworks and runtime environments
- Optimize AI workloads for:
- performance (latency / throughput)
- memory efficiency
- parallel execution
- numerical accuracy and stability
- Identify and remove performance bottlenecks across the stack (model → runtime → hardware)
- Contribute to design decisions for AI execution stack and system architecture
- Support deployment and scaling of AI workloads in real-world environments
Required Qualifications
- Bachelor’s or Master’s degree in Computer Science, Mathematics, Engineering, or related field
- 5+ years of hands-on software engineering experience (or AI model development experience)
- Strong programming skills in Python and C++
- Strong algorithmic thinking and ability to solve complex computational problems
- Solid understanding of AI model architectures, especially transformers and LLMs
- Experience in performance optimization (compute, memory, and parallelization techniques)
- Strong communication skills and ability to work in cross-functional teams
Nice to Have
- Experience with AI frameworks such as PyTorch, JAX, TensorFlow (training or inference)
- GPU programming experience ( CUDA, OpenCL ) or parallel computing systems
- Experience with AI performance tuning (latency, throughput, memory footprint optimization)
- Familiarity with distributed systems and model deployment pipelines
- Understanding of computer architecture (CPUs, GPUs, accelerators, memory hierarchies)
- Experience working close to hardware / compilers / runtime systems
What We Offer
- Highly competitive salary, employment contract (Umowa o Pracę), and a comprehensive benefits package, including Medicover healthcare coverage.
- Work on the performance-critical compute layer for next-generation AI accelerators
- Direct impact on deep learning model efficiency and latency
- Collaboration with experts in hardware, compilers, and systems
- Challenging low-level performance engineering problems at the hardware–software boundary
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