WA 24/22

 Looking for new challenges in supercomputing? Join our interdisciplinary team at ZIB!

28.06.2022 

The Zuse Institute Berlin (ZIB) is an interdisciplinary research institute for applied mathematics and data-intensive high-performance computing. Its research focuses on modeling, simulation, and optimization with scientific cooperation partners from academia and industry. Since January 2021, the ZIB has been extending its scientific services by offering HPC consulting for scientists in Germany and international projects as part of the nationwide HPC initiative “Nationales Hochleistungsrechnen” (NHR). We operate compute and storage resources at a top level. Currently, our HPC system “Lise”, with its 8 PFLOP/s peak performance, provides a platform to realize demanding computational tasks and data analysis workflows to solve complex scientific questions. The “Lise” system comprises 120,000 compute cores, 500 TB distributed memory, and 8 PB persistent online storage. 

For the NHRZIB center, we are looking for a 

High-Performance Computing “Data Scientist” (m/f/d)
Reference code: WA 24/22 
100% - TV-L Berlin, up to E14. 

With an opportunity to start at the earliest possible date, this vacancy offered is a fixed-term contract until December 31, 2025. Subsequently, there is the possibility of a permanent contract. 

The applicant will help users across multiple scientific domains to implement data-intensive workflows efficiently on NHR HPC systems. The position requires collaborative interaction with users who develop and apply software frameworks for machine learning, AI, and related parts in data-driven science projects as well as focusing on performance aspects on the current and next-generation technology platforms. The applicant is encouraged to conduct his/her own research program in a data science related field. 

We are looking for a candidate with a strong background in method development and software frameworks for data analytics who is highly motivated to work in the converging area of high-performance computing and data analytics. 

Your Responsibilities: 

  • Guiding the nationwide NHR user community to implement efficiently data-intensive and machine learning, AI, and other data-driven workloads, 
  • Developing best-practice solutions for efficient multi-tiered data management, 
  • Evaluating, adapting and contributing to optimized versions of machine learning/AI software, working jointly with other HPC experts to migrate code to next-generation supercomputer architectures, 
  • Installing machine learning/AI software frameworks and developing best-practice solutions and documentation, 
  • Contributing to nationwide NHR training activities for users of data analytics frameworks, 
  • Conducting your own research in the respective field, including the acquisition of third-party funded projects, 
  • Publishing scientific results at international conferences and in journals (travelling will be supported by the ZIB). 

Candidates need to provide: 

  • A University degree with proven expertise in a data-science related field, preferably on the interfaces between machine learning and simulation or optimization, in bioinformatics or similar areas, 
  • a doctoral degree / PhD would be favorable,

  • longtime Professional experience in this field of activity, such as
    • good technical background on state-of-the-art technologies for machine learning / AI (Alspecific hardware and Software), and parallel Computer architectures (processors, highperformance interconnects, memory hierarchies, and storage Systems),
    • experience in using frameworks for data processing / machine learning / AI Software frameworks on parallel Computer Systems,
    • background in parallel programming (multi-threading, message passing) using C/C++ and Python; experience with accelerators (GPU, FPGA) would be desired,
  • good understanding of data management technologies including parallel file systems, memory and multi-tier storage hierarchies, 
  • strong focus on self-reliance, pro-activity, creativity and the ability to work in a team. 

We offer a family-friendly working environment through flexible working and meeting times, excellent equipment and a challenging Professional environment.

Additionally, we offer 

  • Access to next-generation HPC infrastructure, 
  • a future-proof workplace with a diverse area of responsibility, 
  • training and courses to develop and improve personal skills, 
  • discounted use of the cafeterias and the sports activities offered by the Freie Universität Berlin (FUB), 
  • social benefits of the public services and annual special payments, 
  • discounted BVG (public transport) ticket as part of the capital city allowance. 

Your Application: 

Please send your complete application with a tabular CV and the usual documents electronically by 25.07.2022 (date of receipt), quoting reference code WA 24/22 to: jobszib.de. Please send your documents as one PDF only

The application of women is expressly desired because women are underrepresented in information technology and the ZIB endeavors to increase the proportion of women in this area. 

Applicants with disabilities will be preferred as long as equally qualified. 

You can find our data protection information on the application process at www.zib.de/impressum

 

For further information on the area of responsibility, please contact Dr. Thomas Steinke (steinkezib.de). 

 

Attachments: 
Angestellten (w/m/d) als Linux und Netzwerk Systemadministrator
Studentische Hilfskraft (w/m/d) in der Zentraleinheit „Digitale Daten und Informationen für Gesellschaft, Wissenschaft und Kultur"
Angestellten (w/m/d) für das das Forschungs- und Kompetenzzentrum Digitalisierung Berlin
Angestellten (w/m/d) für den Personalbereich
Administrator / Spezialist im Bereich High Performance Computing (m/w/d)
Studentische Hilfskraft (w/m/d) für die Arbeitsgruppe Mathematical Optimization Methods
Scientific Employees (f/m/d) either as research or software engineer
Scientific Employee (f/m/d) for the Bioinformatics in Medicine research group
Scientific Employee (f/m/d) for the Computational Humanities research group
Systembibliothekar (w/m/d) mit Schwerpunkt Open-Access-Aktivitäten
Research Position (m/f/d) for the Visual Data Analysis research group
Studentische Hilfskräfte (w/m/d)