Keysight Technologies, Inc. has entered the artificial intelligence (AI) and machine learning (ML) infrastructure ecosystem with the introduction of the Keysight AI Data Center Test Platform, designed to accelerate innovation in AI / ML network validation and optimisation. The solution significantly improves benchmarking of new AI infrastructures with unprecedented scale and efficiency.
The deployment and use of AI is growing rapidly across all industrial segments, and the race to train and deliver new AI models quickly and efficiently is a top priority for corporations. AI / ML workloads process vast amounts of data which requires high networking bandwidth and computing performance to reduce training time. However, the cost to design and validate large-scale “what-if” scenario assessments is prohibitive even for the largest AI operators.
To overcome this challenge and accelerate the design and testing of AI / ML infrastructure, the Keysight AI Data Center Test Platform delivers highly tunable AI workload emulation, pre-packaged benchmarking apps, and dataset analysis tools to significantly improve performance of the AI / ML cluster network fabric.
To accelerate AI / ML network design, the Keysight AI Data Center Test Platform can do following:
- Emulates high-scale AI workloads with measurable fidelity. Offers deep insights into collective communication performance
- Simplifies the benchmarking process. Provides validation of AI network fabric with
pre-packaged benchmark applications, built through partnerships with the largest AI operators and AI infrastructure vendors - Executes defined AI / ML behavioural models. Enables sharing between users and customers to help reproduce experiments
- Offers a choice of test engines. Choose between AI workload emulation on Keysight hardware load appliances and software endpoints or real AI accelerators to compare benchmarking results
Keysight AI Data Center Test Platform Enables Cost-Effective Validation
The Keysight AI Data Center Test Platform enables large-scale validation and experimentation with fabric design in a realistic and cost-effective way. This solution complements testing AI / ML workloads using GPUs, providing AI operators with a more scalable, robust, and integrated AI test platform.
Alan Weckel, Founder of and Technology Analyst at 650 Group, said: “800GE is a critical driver for AI / ML growth with the technology poised to have the fastest ramp of any data center port speed in history. AI / ML bandwidth growth will grow at over 100% per year through the end of the decade, and 800GE will play a key role in that growth. The Keysight solution is at the forefront of testing AI / ML infrastructure with many deployments set to reach production in the next 18 months.”
Martin Hull, Vice President, Cloud and Platforms, at Arista Networks, added: “It’s been proven that a high-speed Ethernet network delivers the economical scale and performance needed to reduce job completion time for processing AI / ML workloads while adhering to open standards. Keysight’s AI Test Platform is a valuable tool to validate Arista’s technological leadership in AI network design.”
Ram Periakaruppan, Vice President and General Manager, Network Test & Security Solutions, atKeysight, concluded: “As a leader in testing ultra-high-speed 800G Ethernet networks, Keysight continues to lead the way in innovation, having formed close partnerships with hyperscalers to co-design this groundbreaking new AI test platform that realistically benchmarks and emulates high-scale AI workloads unlike other test tools available today.”
Archive
- October 2024(44)
- September 2024(94)
- August 2024(100)
- July 2024(99)
- June 2024(126)
- May 2024(155)
- April 2024(123)
- March 2024(112)
- February 2024(109)
- January 2024(95)
- December 2023(56)
- November 2023(86)
- October 2023(97)
- September 2023(89)
- August 2023(101)
- July 2023(104)
- June 2023(113)
- May 2023(103)
- April 2023(93)
- March 2023(129)
- February 2023(77)
- January 2023(91)
- December 2022(90)
- November 2022(125)
- October 2022(117)
- September 2022(137)
- August 2022(119)
- July 2022(99)
- June 2022(128)
- May 2022(112)
- April 2022(108)
- March 2022(121)
- February 2022(93)
- January 2022(110)
- December 2021(92)
- November 2021(107)
- October 2021(101)
- September 2021(81)
- August 2021(74)
- July 2021(78)
- June 2021(92)
- May 2021(67)
- April 2021(79)
- March 2021(79)
- February 2021(58)
- January 2021(55)
- December 2020(56)
- November 2020(59)
- October 2020(78)
- September 2020(72)
- August 2020(64)
- July 2020(71)
- June 2020(74)
- May 2020(50)
- April 2020(71)
- March 2020(71)
- February 2020(58)
- January 2020(62)
- December 2019(57)
- November 2019(64)
- October 2019(25)
- September 2019(24)
- August 2019(14)
- July 2019(23)
- June 2019(54)
- May 2019(82)
- April 2019(76)
- March 2019(71)
- February 2019(67)
- January 2019(75)
- December 2018(44)
- November 2018(47)
- October 2018(74)
- September 2018(54)
- August 2018(61)
- July 2018(72)
- June 2018(62)
- May 2018(62)
- April 2018(73)
- March 2018(76)
- February 2018(8)
- January 2018(7)
- December 2017(6)
- November 2017(8)
- October 2017(3)
- September 2017(4)
- August 2017(4)
- July 2017(2)
- June 2017(5)
- May 2017(6)
- April 2017(11)
- March 2017(8)
- February 2017(16)
- January 2017(10)
- December 2016(12)
- November 2016(20)
- October 2016(7)
- September 2016(102)
- August 2016(168)
- July 2016(141)
- June 2016(149)
- May 2016(117)
- April 2016(59)
- March 2016(85)
- February 2016(153)
- December 2015(150)