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High performance compute workloads

Redis Workload Brief

Open-source, in-memory, key-value data store typically used as a database or a cache.

AMPERE—EMPOWERING WHAT’S NEXT

The Ampere® Altra® and Ampere® Altra® Max processors are complete system-on-chip (SOC) solutions built for cloud native applications. Ampere Altra Max supports up to 128 cores. In addition to incorporating a large number of high-performance cores, the innovative architecture delivers predictable high performance, linear scaling and high energy efficiency.

Redis is an open source, in-memory, key-value data store typically used as a database or a cache. It uses an in-memory dataset but data can be persisted through periodic writes or appends to disk. Being in-memory, Redis is very fast, and can deliver high throughput at sub-millisecond latencies. It continues to rank highly in popularity among key value stores in the cloud, according to DB-engines.

In this workload brief, we compare Ampere Altra Max M128-30 to Intel® Xeon® Platinum 8380 and AMD EPYC™ 7763 processors running Redis while measuring the throughput and latencies on each of these processors.

Redis on Ampere Altra Max

Ampere Altra Max processors are designed to deliver exceptional performance for cloud native applications like Redis. They do so by using an innovative architectural design, operating at consistent frequencies, and using single-threaded cores that make applications more resistant to noisy neighbor issues. This allows workloads to run in a predictable manner with minimal variance under increasing loads.

The processors are also designed to deliver exceptional energy efficiency. This translates to industry leading performance/watt capabilities and a lower carbon footprint.

Benefits of Running Redis on Ampere Altra Max
  • Cloud Native: Designed from the ground up for "born in the cloud" workloads like Redis, Ampere Altra Max can deliver up to 1.9x higher performance than the best x86 servers.

  • Energy Efficiency: With up to 128 energy-efficient Arm cores, Ampere Altra Max can consume up to 32% lower power while maintaining competitive levels of performance.

  • Lower Carbon Footprint: Industry leading performance and high energy efficiency result in Ampere Altra Max demonstrating up to 2.8x higher performance/watt, leading to lower TCO and a smaller carbon footprint.

  • Consistency & Predictability: Singlethreaded cores running at fixed maximum frequencies ensure linear scaling under stringent SLAs and at high loads while running multiple Redis instances.

Ampere Altra Max
  • 128 64-bit cores at 3.0GHz
  • 64KB i-Cache, 64KB d-Cache per core
  • 1MB L2 Cache per core
  • 16MB System Level Cache
  • Coherent mesh-based interconnect

Memory

  • 8x72 bit DDR4-3200 channels
  • ECC and DDR4 RAS
  • Up to 16 DIMMs (2 DPC) and 4TB addressable memory

Connectivity

  • 128 lanes of PCIe Gen4
  • Coherent multi-socket support
  • 4x16 CCIX lanes

System

  • Armv8.2+, SBSA Level 4
  • Advanced Power Management

Performance

  • SPECrate®2017 Integer Estimated: 350
Figure 1: Using Redis as an in-memory cache for traditional databases

RedisCache

Benchmarking Configuration

We have used memtier_benchmark (developed by Redis Labs) as a load generator for benchmarking Redis. Each test was configured to run with multiple threads, multiple clients per thread, and with pipelining enabled.

We recommend compiling Redis server with GCC (GNU Compiler Collection) 10.2 or newer as newer compilers have made significant progress towards generating optimized code that can improve performance for Aarch64 applications.

We used CentOS 8.3 (kernel 4.18) with Redis server 5.0.12 compiled with GCC 10.2 for our tests. For each of the tests, we used similar clients to generate requests to Redis server.

Since it is realistic to measure throughput under a specified Service Level Agreement (SLA), we have used a 99th percentile latency (p.99) of 1 millisecond. This ensures that 99 percent of the requests have a response time of 1 ms in the worst case.

The test ran for 3 minutes with a 1:10 get:set ratio, which is common for in-memory caches. We initially used an appropriate number of clients and threads/client to load one instance of Redis, while ensuring the p.99 latency was at most 1 ms. Pipelining is a feature whereby Redis can process new requests even if the client has not already read older responses. This feature can dramatically reduce response times and we used 45 concurrent pipelined requests.

Next, we successively increased the number of Redis instances until one or more instances violated the p.99 latency SLA. The aggregate throughput of all instances was used as the primary performance metric. We ran the test three times and saw minimal run-to-run variations.

Figure 2(A-B): Ampere Altra Max M128-30 Industry-leading Performance and Energy Efficiency with Redis

Benchmarking Results and Conclusions

As can be seen in Figure 2A, we observed up to 92% higher throughput on Ampere Altra Max compared to Intel Xeon 8380 and 27% higher throughput compared to AMD EPYC 7763.

For large-scale cloud deployments, performance/watt (i.e. energy efficiency) is an important metric in addition to raw performance. Ampere Altra Max processors demonstrated 2.8x better performance/watt under a specified SLA compared to the Intel Xeon 8380 and 1.85x higher than the AMD EPYC 7763 (refer to Figure 2B).

Fast in-memory caches are used in many cloud workflows today. Redis is a popular high throughput in-memory key-value store that is used in low latency applications in scale out configurations. Ampere Altra Max processors are designed to deliver exceptional performance and energy efficiency for cloud native applications like Redis. In Ampere’s testing, these processors demonstrated compelling performance and outstanding energy efficiency compared to x86 processors.

Footnotes

All data and information contained herein is for informational purposes only and Ampere reserves the right to change it without notice. This document may contain technical inaccuracies, omissions and typographical errors, and Ampere is under no obligation to update or correct this information. Ampere makes no representations or warranties of any kind, including but not limited to express or implied guarantees of noninfringement, merchantability, or fitness for a particular purpose, and assumes no liability of any kind. All information is provided “AS IS.” This document is not an offer or a binding commitment by Ampere. Use of the products contemplated herein requires the subsequent negotiation and execution of a definitive agreement or is subject to Ampere’s Terms and Conditions for the Sale of Goods.

System configurations, components, software versions, and testing environments that differ from those used in Ampere’s tests may result in different measurements than those obtained by Ampere.

©2022 Ampere Computing. All Rights Reserved. Ampere, Ampere Computing, Altra and the ‘A’ logo are all registered trademarks or trademarks of Ampere Computing. Arm is a registered trademark of Arm Limited (or its subsidiaries). All other product names used in this publication are for identification purposes only and may be trademarks of their respective companies.

Ampere Computing® / 4655 Great America Parkway, Suite 601 / Santa Clara, CA 95054 / amperecomputing.com

Created At : May 23rd 2022, 10:13:13 am
Last Updated At : April 18th 2023, 8:23:07 pm
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