GPU-Acceleration of In-Memory Data Analytics
نویسنده
چکیده
GPU-Acceleration of In-Memory Data Analytics
منابع مشابه
HippogriffDB: Balancing I/O and GPU Bandwidth in Big Data Analytics
As data sets grow and conventional processor performance scaling slows, data analytics move towards heterogeneous architectures that incorporate hardware accelerators (notably GPUs) to continue scaling performance. However, existing GPU-based databases fail to deal with big data applications efficiently: their execution model suffers from scalability limitations on GPUs whose memory capacity is...
متن کاملIn-Memory Data Analytics on Coupled CPU-GPU Architectures
In the big data era, in-memory data analytics is an effective means of achieving high performance data processing and realizing the value of data in a timely manner. Efforts in this direction have been spent on various aspects, including in-memory algorithmic designs and system optimizations. In this paper, we propose to develop the next-generation in-memory relational database processing techn...
متن کاملP-V-L Deep: A Big Data Analytics Solution for Now-casting in Monetary Policy
The development of new technologies has confronted the entire domain of science and industry with issues of big data's scalability as well as its integration with the purpose of forecasting analytics in its life cycle. In predictive analytics, the forecast of near-future and recent past - or in other words, the now-casting - is the continuous study of real-time events and constantly updated whe...
متن کاملGPU-Accelerated Large Scale Analytics
In this paper, we report our research on using GPUs as accelerators for Business Intelligence(BI) analytics. We are particularly interested in analytics on very large data sets, which are common in today's real world BI applications. While many published works have shown that GPUs can be used to accelerate various general purpose applications with respectable performance gains, few attempts hav...
متن کاملGPU Acceleration of the Generalized Interpolation Material Point Method
This paper describes our experience rewriting a sequential particle-in-cell code so that its key computations are executed on a GPU. This code is well-suited to GPU acceleration, as it performs data-parallel operations on a regular grid. Key performance challenges are the need for global synchronization in mapping particles to grid nodes, and managing memory bandwidth to global memory. Performa...
متن کامل