Sort by
Refine Your Search
-
, activities, and services that integrate quality assurance, environmental, and safety management principles throughout the Laboratory. The Standards-Based Management System (SBMS) Office, within the QMO
-
applies platforms for state-of-the-art techniques for Accelerated Nanomaterial Discovery, integrating synthesis, advanced characterization, physical modeling, and computer science to iteratively explore a
-
Develop a prototype neural network model for modeling strongly correlated materials. Implement and experiment with models using PyTorch and TensorFlow frameworks. Collaborate with team members to evaluate
-
on the challenges presented by analyzing, interpreting, and using data at extreme scales and in real-time. The data science program is accompanied by significant computational modeling research efforts supporting
-
, proton, and heavy ion accelerators used to carry out a program of accelerator-based experiments at Brookhaven National Laboratory (BNL). To support this program, the C-AD must design, fabricate, assemble
-
. Experience creating and checking detailed mechanical drawings and 3D models of pipe systems and components andmanaging the work of mechanical designers. Experience with creating and reviewing detailed piping
-
scientific and security problems of interest to BNL and the Department of Energy (DOE). Topics of particular interest include: (i) Large scale foundation model for science and engineering; (ii) Causal
-
scientific and security problems of interest to BNL and the Department of Energy (DOE). Topics of particular interest include: (i) Large Language Model (LLM) and Reasoning Language Model (RLM) for science and
-
of the student will be the performance of power grid modeling and simulation, statistical analysis and machine learning applications in power system control or cybersecurity, and the implementation in Python and
-
Nanomaterial Discovery, integrating synthesis, advanced characterization, physical modeling, and computer science to iteratively explore a wide range of material parameters. The CFN develops and utilizes