71 Computer Science positions at Lawrence Berkeley National Laboratory in United-states
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an opening for a Computational Biology Postdoctoral Fellow in Health Sciences. In this exciting role, you will work on computational analysis, data integration and machine learning among other methods directed
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Berkeley Lab’s (LBNL ) Biological Systems and Engineering (BSE ) Division has an opening for a Computational Biology Postdoctoral Fellow in Health Sciences. In this exciting role, you will work
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opportunity announcements. What is Required: Normally less than 5 years of relevant experience beyond Ph.D degree in physics, Electronic Engineering, and Computer Engineering, with expertise and a record of
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Electrical and Computer Engineering, Electronics Engineering, Automation Engineering or related field and 4 years of experience in the job offered or in an electrical engineering-related occupation. Position
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and testing quantum computer control systems. Assist in developing and testing PCB boards. What is Required: Ph.D. degree in physics, applied physics, electrical engineering, or a related field within
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biosciences, physical sciences, and computational sciences. Your role involves contributing to ACSD’s efforts in understanding biochemical processes for carbon capture by developing AI and inverse design
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Technology (FS/IBT) Program. The FS/IBT Program develops particle beam and plasma technologies. It applies them to various fields, such as fusion energy sciences, climate science, and quantum
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infrastructure, digital integrity, security, privacy, sustainable software engineering, and user experience (UX). The Usable Data Systems (UDS) group within this division seeks a Computer Systems Engineer (CSE
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, and computational sciences. Your role involves contributing to ACSD’s efforts in understanding biochemical processes for carbon capture by developing AI and inverse design technologies for accelerated
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multidisciplinary team of mathematicians, computer scientists, and domain scientists on fast simulation tools and machine learning techniques for DOE science problems. This is an exciting opportunity to pursue