Large science projects rely on complex workflows to analyze terabytes or petabytes of data. These jobs are often running over thousands of CPU cores and simultaneously performing data accesses, data movements, and computation. It is difficult to identify bottlenecks or to debug the performance issues in these large workflows. To address these challenges, we have developed Performance Analysis Tool for HPC Applications (PATHA) using the state-of-art open source big data processing tools. Our framework can ingest system logs to extract key performance measures, and apply the most sophisticated statistical tools and data mining methods on the performance data. It utilizes an efficient data processing engine to allow users to interactively anal...
Performance Analysis is essential to fully exploit the potential of high-performance computers. With...
A considerably fraction of science discovery is nowadays relying on computer simulations. High Per...
Analyzing performance within asynchronous many-task-based runtime systems is challenging because mil...
Large science projects rely on complex workflows to analyze terabytes or petabytes of data. These jo...
Big data is prevalent in HPC computing. Many HPC projects rely on complex workflows to analyze terab...
Scientific data generated at experimental and observational facilities are increasingly being proces...
HPC systems and parallel applications are increasing their complexity. Therefore the possibility of ...
Performance analysis tools allow application developers to identify and characterize the inefficienc...
Current large-scale HPC systems consist of complex configurations with a huge number of potentially ...
Optimizing scientific application performance in HPC environments is a complicated task which has mo...
Performance modeling, the science of understanding and predicting application performance, is import...
Many existing applications suffer from inherent scalability limitations that will prevent them from ...
High performance computing (HPC) and Big Data are technologies vital for advancement in science, bus...
Modern parallel systems and applications are constantly increasing in scale and complexity, and cons...
Given the complexity of modern HPC systems, achieving theoretical peak performance depends on a myri...
Performance Analysis is essential to fully exploit the potential of high-performance computers. With...
A considerably fraction of science discovery is nowadays relying on computer simulations. High Per...
Analyzing performance within asynchronous many-task-based runtime systems is challenging because mil...
Large science projects rely on complex workflows to analyze terabytes or petabytes of data. These jo...
Big data is prevalent in HPC computing. Many HPC projects rely on complex workflows to analyze terab...
Scientific data generated at experimental and observational facilities are increasingly being proces...
HPC systems and parallel applications are increasing their complexity. Therefore the possibility of ...
Performance analysis tools allow application developers to identify and characterize the inefficienc...
Current large-scale HPC systems consist of complex configurations with a huge number of potentially ...
Optimizing scientific application performance in HPC environments is a complicated task which has mo...
Performance modeling, the science of understanding and predicting application performance, is import...
Many existing applications suffer from inherent scalability limitations that will prevent them from ...
High performance computing (HPC) and Big Data are technologies vital for advancement in science, bus...
Modern parallel systems and applications are constantly increasing in scale and complexity, and cons...
Given the complexity of modern HPC systems, achieving theoretical peak performance depends on a myri...
Performance Analysis is essential to fully exploit the potential of high-performance computers. With...
A considerably fraction of science discovery is nowadays relying on computer simulations. High Per...
Analyzing performance within asynchronous many-task-based runtime systems is challenging because mil...