Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
-tuning and/or Retrieval-Augmented Generation (RAG) methods to augment LLMs with dedicated knowledge in transportation and electric grid domains. This involves designing methods to process input data and
-
. templates, etc) to ensure the highest level of quality, consistency and accessibility of ELR's service portfolio. Develop data-driven Employee Relations strategies by using metrics and trend analysis
-
Control Valves, High Pressure Gas Manifolds, Large and Small Pumps, and underground utilities. Respond to mechanical and system emergencies to identify safety hazards, prevent damage to property and assess
-
at NERSC to enable large-scale simulation, data analysis and AI applications to run on NERSC supercomputing and storage systems. Provide budgetary input and oversight for NERSC's storage systems. Lead or
-
, VM infrastructure, networking, performance tuning, or data center planning. Co-leading group projects of small to medium size and complexity, to implement and deploy new computing technologies and
-
the validation of quantum computers operating in the classical-hardness regime. You will design and execute state-of-the-art experiments on superconducting quantum processors, lead large-scale benchmarking across
-
solutions for high-performance computing (HPC) system management and large-scale monitoring, directly enabling the operation of NERSC's flagship systems, including the current Perlmutter supercomputer and the
-
problems. Demonstrated understanding of security principles and best practices, particularly as they apply to research data. Familiarity with generative AI, foundation models, and domain-specific large
-
the development and application of a digital twin approach, aimed at bridging the gap between theoretical predictions, data interpretation, and experimental/spectroscopic observations. What You Will Do: Design
-
team of quantum algorithm developers, physicists, mathematicians and computer scientists that will design and deliver novel algorithms, error mitigation and compiling techniques for DOE relevant science