Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
- Harvard University
- University of California
- University of California Davis
- University of Colorado
- Brookhaven Lab
- Johns Hopkins University
- Lawrence Berkeley National Laboratory
- NIST
- Northeastern University
- SUNY University at Buffalo
- The University of Arizona
- The University of Chicago
- University of California, San Diego
- University of Texas at Dallas
- University of the Pacific
- Zintellect
- 6 more »
- « less
-
Field
-
with the architecture and performance characteristics of distributed computing and data handling systems. Extensive knowledge in computer science or related field, demonstrated through education or
-
based on MPI. Experience working with the architecture and performance characteristics of distributed computing and data handling systems. Extensive knowledge in computer science or related field
-
working with high performance computers (e.g., parallelizing and distributing code). Experience in distributed data management and workflow systems. Preferred Competencies Ability to work independently and
-
media, news media, digital signage, podcast, signature events, and executive presentations. This candidate must be comfortable managing multiple projects in parallel, many of which require the execution
-
programming distributed systems; Experience with parallel and distributed File Systems (e.g., Lustre, GPFS, Ceph) development. Advanced experience with high-performance computing and/or large-scale data centers
-
referred specimens for diagnostic testing: Perform required training on and demonstrates proficiency with multiple laboratory information systems Perform referred specimen accessioning for the laboratory
-
algorithms and complexity theory, including in both well-established settings (e.g., sequential computation on a single machine and distributed/parallel computation on multiple machines) as well as emerging
-
images. However, the current limitations of desktop computers in terms of memory, disk storage and computational power, and the lack of image processing algorithms for advanced parallel and distributed
-
IT staff and partitions large systems into components that enable parallel solution development by multiple teams. The scope of a technology specialization is described in the supplemental, however
-
the physical effects of the propagation environment; computational/numerical modeling using novel and standard approaches, such as, entropy maximization, immunology, and high performance parallel processing; and