The successful candidate will join the NumPEx Exa-DI project.

If you're ready to take on the challenge, don't hesitate to apply!

Context

Launched in 2023 for a duration of six years, the NumPEx PEPR Research Program contributes to the design and development of numerical methods and software components that will equip future European exascale and post-exascale machines. NumPEx also aims to support the scientific and industrial community in fully leveraging the capabilities and potential of these new architectures. The application domains include, among others: meteorology, climatology, aeronautics, automotive, astrophysics, high-energy physics, materials science, energy production and management, biology, and healthcare.
Within NumPEx, the Exa-DI team works hand-in-hand with the application community to:

  • Identify and formalize key algorithmic and communication patterns encountered in exascale applications
  • Specify mini-applications that capture their core technical challenges
  • Develop and deliver these mini-applications, based on the NumPEx software stack, as reference implementations for research, co-design, and performance evaluation
  • Evaluate the performance and portability of different mini-app implementation on large scale facilities and hardware architectures

To strengthen its benchmark and profiling expertise, Exa-DI is creating a dedicated HPC Benchmarking & Profiling Engineer position—a role designed to drive performance measurement rigor, automation, and reproducibility for the team’s mini-applications.

Mission

As our HPC Benchmarking & Profiling Engineer, you will be responsible for structuring, executing, and scaling the team’s benchmarking efforts. In this role, you will:

  • Build and maintain the benchmarking toolchain, including frameworks and infrastructure for automated, reproducible, and CI-integrated HPC benchmarks
  • Design and implement profiling data collection workflows, ensuring traceability and systematic bottleneck characterization
  • Define and standardize evaluation metrics covering performance, scalability, portability, and efficiency across architectures (CPU, GPU, many-core, distributed clusters…)
  • Develop benchmark scenarios and reference workloads for Exa-DI mini-applications, enabling statistically significant cross-platform comparisons
  • Lead benchmarking campaigns, ensuring result relevance, reproducibility, and architectural comparability
  • Identify performance and portability bottlenecks, and advise on the most effective use on parallel programming models (e.g., MPI, OpenMP, CUDA, HIP, SYCL…), runtimes (e.g., StarPU), and abstraction layers (e.g., Kokkos)
  • Drive knowledge transfer, through mentoring, internal support, and training on benchmarking methodology and profiling tools, for both the development team and the application community
  • Contribute benchmark insights to software co-design, helping guide technical decisions using measurable evidence

You will also participate in the team’s Agile practices, including: process improvements, project planning and tracking, progress reviews and demonstrations, and coordination with other development and research teams.

Required Skills

You hold a master’s degree, an engineering degree, or a PhD in computer science or another field related to scientific computing.

You are proficient in multiple programming languages (Python, C/C++), ideally with in-depth knowledge of parallel programming (GPU, multi-threading, MPI, etc.). You are familiar with standard collaborative development tools: Git, Gitlab/GitHub, CMake/CTest, Docker, Spack, Guix, etc.

You have at least one significant experience in HPC benchmarking & profiling, with demonstrable contributions in both the engineering aspect (tools & infrastructure) and the scientific aspect (defining meaningful metrics).

You are pragmatic and take initiative. Your analytical skills and ability to step back allow you to confidently tackle complex problems with multiple constraints (deadlines, major technical challenges).

You enjoy teamwork and have a strong interest in interdisciplinary collaborations involving multiple stakeholders at the intersection of applied mathematics, computer science, and physics applications. You have excellent written and verbal communication skills, both in French and English.

Banniere logo CEA CNRS INRIA FR 2030

General Information

Privacy Preference Center