An Analytical Model-based Capacity Planning Approach for Building CSD-based Storage Systems

Author:

Byun Hongsu1,Jamil Safdar1,Han Jungwook1,Park Sungyong1,Lee Myungcheol2,Kim Changsoo2,Choi Beongjun2,Kim Youngjae1

Affiliation:

1. Dept. of Computer Science and Engineering, Sogang University, Seoul, South Korea

2. Electronics and Telecommunications Research Institute, Daejeon, South Korea

Abstract

The data movement in large-scale computing facilities (from compute nodes to data nodes) is categorized as one of the major contributors to high cost and energy utilization. To tackle it, in-storage processing (ISP) within storage devices, such as Solid-State Drives (SSDs), has been explored actively. The introduction of computational storage drives (CSDs) enabled ISP within the same form factor as regular SSDs and made it easy to replace SSDs within traditional compute nodes. With CSDs, host systems can offload various operations such as search, filter, and count. However, commercialized CSDs have different hardware resources and performance characteristics. Thus, it requires careful consideration of hardware, performance, and workload characteristics for building a CSD-based storage system within a compute node. Therefore, storage architects are hesitant to build a storage system based on CSDs as there are no tools to determine the benefits of CSD-based compute nodes to meet the performance requirements compared to traditional nodes based on SSDs. In this work, we proposed an analytical model-based storage capacity planner called CsdPlan for system architects to build performance-effective CSD-based compute nodes. Our model takes into account the performance characteristics of the host system, targeted workloads, and hardware and performance characteristics of CSDs to be deployed and provides optimal configuration based on the number of CSDs for a compute node. Furthermore, CsdPlan estimates and reduces the total cost of ownership (TCO) for building a CSD-based compute node. To evaluate the efficacy of CsdPlan , we selected two commercially available CSDs and 4 representative big data analysis workloads.

Publisher

Association for Computing Machinery (ACM)

Subject

Hardware and Architecture,Software

Reference48 articles.

1. 2022. Frontier - Exascale Supercomputer. https://www.olcf.ornl.gov/frontier/ Last Accessed : December 1, 2022 . 2022. Frontier - Exascale Supercomputer. https://www.olcf.ornl.gov/frontier/ Last Accessed: December 1, 2022.

2. 2022. Los Alamos National Laboratory and SK hynix to demonstrate first-of-a-kind ordered Key-value Store Computational Storage Device. https://discover.lanl.gov/news/0728-storage-device Last Accessed : November 28, 2022 . 2022. Los Alamos National Laboratory and SK hynix to demonstrate first-of-a-kind ordered Key-value Store Computational Storage Device. https://discover.lanl.gov/news/0728-storage-device Last Accessed: November 28, 2022.

3. 2022. PassMark - CPU Mark. Retrieved Nov 10, 2022 from https://web.archive.org/web/20221024093010/https://www.cpubenchmark.net/high_end_cpus.html 2022. PassMark - CPU Mark. Retrieved Nov 10, 2022 from https://web.archive.org/web/20221024093010/https://www.cpubenchmark.net/high_end_cpus.html

4. 2022. Top500 Supercomputer site. https://www.top500.org/lists/top500/list/2022/11/. Last Accessed : November 28, 2022 . 2022. Top500 Supercomputer site. https://www.top500.org/lists/top500/list/2022/11/. Last Accessed: November 28, 2022.

5. ARM Xilinx . 2018 . BRAM and Other Memories . Retrieved Nov 10, 2022 from https://www.xilinx.com/htmldocs/xilinx2017_4/sdaccel_doc/jbt1504034294480.html ARM Xilinx. 2018. BRAM and Other Memories. Retrieved Nov 10, 2022 from https://www.xilinx.com/htmldocs/xilinx2017_4/sdaccel_doc/jbt1504034294480.html

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