380 engineering-computation-"https:" "https:" "https:" "https:" "https:" "https:" "https:" "UCL" uni jobs at Carnegie Mellon University
Sort by
Refine Your Search
-
Listed
-
Field
-
. The Department seeks strong candidates in all areas of statistics and data science, as well as related interdisciplinary fields. Potential areas of interest include but are not limited to computational finance
-
of experience, an MS with 8 years of experience, or a PhD with 5 years of experience in Computer Science, Electrical Engineering, or a related field. You’ve worked in a collaborative team environment as a
-
About the role The SEI helps advance software engineering principles and practices and serves as a national resource in software engineering, computer security, and process improvement. The SEI
-
About the role The SEI helps advance software engineering principles and practices and serves as a national resource in software engineering, computer security, and process improvement. The SEI
-
national resource in software engineering and computer security. SEI works closely with academia, defense and government organizations, and industry to continually improve software-intensive systems. Our
-
Who we are SEI helps advance software engineering principles and practices and serves as a national resource in software engineering, computer security, and process improvement. The SEI works
-
following technology areas: hardware/software co-design, performance optimization with heterogeneous and alternative computing systems (CPU/GPU/NPU/etc.), FPGA design, high-performance computing (HPC
-
Carnegie Mellon University’s University Store is searching for a Technology Sales Consultant to join their team. This is an exciting opportunity for someone who thrives in an interesting and
-
challenges the curious to deliver work that matters, your journey starts here! The Computing Services central IT division provides services that have a strategic impact on university goals. We make service
-
models such as GPT and LLaMA, designing and deploying agentic workflows, as well as apply and advance traditional ML research and engineering across domains such as natural language processing, computer