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Numerical Data Compression Postdoctoral Researcher

Job in Livermore, Alameda County, California, 94551, USA
Listing for: Physics World
Full Time position
Listed on 2026-06-19
Job specializations:
  • Research/Development
    Data Scientist
  • IT/Tech
    Data Scientist, Data Science Manager, AI Engineer (Applied/Software)
Salary/Wage Range or Industry Benchmark: 143328 USD Yearly USD 143328.00 YEAR
Job Description & How to Apply Below

Company Description
Lawrence Livermore National Laboratory (LLNL) has turned bold ideas into world-changing impact advancing science and technology to strengthen U.S. security and promote global stability.
Our mission spans four critical national security areas nuclear deterrence, threat preparedness, energy security, and multi-domain defense empowering teams to take on the toughest challenges of today and tomorrow. With a culture built on innovation and operational excellence, LLNL is a place where your expertise can make a real impact.

Job Description

We have an opening for a Postdoctoral Research Staff Member to contribute to fundamental R&D in numerical data compression in support of projects related to AI-based surrogate modeling, scientific computing, and physical and life sciences that generate vast quantities of experimental and observational data. This R&D will primarily focus on basic research to advance state of the art in lossy numerical data compression based on tensor decomposition methods for three- and higher-dimensional data.

Specific goals include the advancement of (1) new coding schemes, number representations, and compact parameterizations of tensorial data; (2) numerical analysis to characterize error distributions and guarantee error bounds; and (3) development of highly scalable and performant compression algorithms that exploit data parallelism on GPUs and multicore architectures. This position will be in the Data Science & Analytics Group in the Center for Applied Scientific Computing (CASC) Division within the LLNL Computing Directorate.

In

this role you will
  • Research, design, implement, and apply advanced numerical data compression and/or tensor decomposition methods (Tucker, TT, CP, etc.).
  • Make independent contributions to one or more project thrusts on novel coding methods, error analysis, and performance optimization. Document results in technical reports and peer-reviewed publications.
  • Work with domain scientists to evaluate the effectiveness of lossy compression methods and their impact on accuracy, storage and performance within scientific workflows (e.g., surrogate modeling, scientific data analysis, numerical simulation, etc.).
  • Contribute to grant proposals and collaborate with others in a multidisciplinary team environment, including academic and industrial partners, to accomplish research goals.
  • Pursue independent (but complementary) research interests and interact with a broad spectrum of scientists internal and external to the Laboratory.
  • Perform other duties as assigned.
Qualifications
  • Ph.D. in Computer Science, Mathematics, or a related field.
  • Expertise in one or more of the following areas: data compression/reduction, information theory, (multi) linear algebra, or numerical analysis.
  • Experience developing, implementing, and applying advanced algorithms to solve large-scale numerical or combinatorial problems.
  • Experience with scientific programming in C/C++, CUDA/HIP/SYCL/OpenMP, Python, or similar, as evidenced through software artifacts.
  • Demonstrated research productivity, as documented by publications, reports, presentations, and/or open-source software in relevant venues (DCC, TIT, TIP, SISC, SC, ISC, IPDPS, TVCG, VIS, etc.).
  • Proficient verbal and written communication skills to collaborate effectively in a team environment and present and explain technical information.
Desired Qualifications
  • Experience with high-performance computing, GPU programming, parallel programming, and/or related methods including running numerical simulations involving complex workflows.
  • Experience with (multi) linear algebra, including matrix and tensor decompositions.
  • Experience working with large data sets and developing scalable solutions based on distributed-memory and/or out-of-core algorithms.
  • Expertise in developing software prototypes using modern languages, libraries, and tools such as C/C++/CUDA/Python, Eigen/cu Solver/Num Py/PyTorch, git/CMake, etc.
  • Familiarity with numerical compression methods.
  • Familiarity with the basic principles behind machine learning.
  • Skill set at the intersection of computer science and applied mathematics.
  • Demonstrated technical leadership in fields related to computer science and applied mathematics, such as mentorship or team management.
  • Experience with or interest in scientific applications such as fusion, earth system science, cosmology, seismology, materials science, medicine, etc.
Pay Range

$143,328 Annually

Position Information

This is a Postdoctoral appointment with the possibility of extension to a maximum of three years, open to those who have been awarded a PhD at time of hire date.

Security Clearance

None required. However, if your assignment is longer than 179 days cumulatively within a calendar year, you must go through the Personal Identity Verification process. This process includes completing an online background investigation form and receiving approval of the background check.

National Defense Authorization Act (NDAA)

The 2025 National Defense Authorization Act…

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