Measured drawings of the Balairung Seri, part of the Royal Museum, for the Methods of Documentation and Measured Drawing Module. Sem2.5/3.5 - Taylor's University
Completed 7 March 2016
Presentation of Oxford Nanopore technology at @IBV_CSIC. Case study on Bothrops asper at the Functional and Structural Venomics unit. Next: Echis ocellatus SVMP gene cluster
Measured drawings of the Balairung Seri, part of the Royal Museum, for the Methods of Documentation and Measured Drawing Module. Sem2.5/3.5 - Taylor's University
Completed 7 March 2016
Presentation of Oxford Nanopore technology at @IBV_CSIC. Case study on Bothrops asper at the Functional and Structural Venomics unit. Next: Echis ocellatus SVMP gene cluster
Adjusting primitives for graph : SHORT REPORT / NOTESSubhajit Sahu
Graph algorithms, like PageRank Compressed Sparse Row (CSR) is an adjacency-list based graph representation that is
Multiply with different modes (map)
1. Performance of sequential execution based vs OpenMP based vector multiply.
2. Comparing various launch configs for CUDA based vector multiply.
Sum with different storage types (reduce)
1. Performance of vector element sum using float vs bfloat16 as the storage type.
Sum with different modes (reduce)
1. Performance of sequential execution based vs OpenMP based vector element sum.
2. Performance of memcpy vs in-place based CUDA based vector element sum.
3. Comparing various launch configs for CUDA based vector element sum (memcpy).
4. Comparing various launch configs for CUDA based vector element sum (in-place).
Sum with in-place strategies of CUDA mode (reduce)
1. Comparing various launch configs for CUDA based vector element sum (in-place).
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Opendatabay - Open Data Marketplace.pptxOpendatabay
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