Graphcore
Graphcore is a British semiconductor company that develops accelerators for AI and machine learning. It aims to make a massively parallel Intelligence Processing Unit (IPU) that holds the complete machine learning model inside the processor.[2]
Type | Private |
---|---|
Industry | Semiconductors |
Founded | 2016 |
Founders |
|
Headquarters | , |
Key people |
|
Products | IPU, Poplar |
Number of employees | 650 (2022)[1] |
Website | www |
History
Graphcore was founded in 2016 by Simon Knowles and Nigel Toon.[3]
In the autumn of 2016, Graphcore secured a first funding round led by Robert Bosch Venture Capital. Other backers include Samsung, Amadeus Capital Partners, C4 Ventures, Draper Esprit, Foundation Capital, and Pitango.[4][5]
In July 2017, Graphcore secured a round B funding led by Atomico,[6] which was followed a few months later by $50 million in funding from Sequoia Capital.[7]
In December 2018, Graphcore closed its series D with $200 million raised at a $1.7 billion valuation, making the company a unicorn. Investors included Microsoft, Samsung and Dell Technologies.[8]
On 13 November 2019, Graphcore announced that their Graphcore C2 IPUs are available for preview on Microsoft Azure.[9]
Meta Platforms acquired the AI networking technology team from Graphcore in early 2023.[10]
Products
In 2016, Graphcore announced the world's first graph tool chain designed for machine intelligence called Poplar Software Stack.[11][12][13]
In July 2017, Graphcore announced their first chip, called the Colossus GC2, a "16 nm massively parallel, mixed-precision floating point processor", first available in 2018.[14][15] Packaged with two chips on a single PCI Express card called the Graphcore C2 IPU (an Intelligence Processing Unit), it is stated to perform the same role as a GPU in conjunction with standard machine learning frameworks such as TensorFlow.[14] The device relies on scratchpad memory for its performance rather than traditional cache hierarchies.[16]
In July 2020, Graphcore presented their second generation processor called GC200 built in TSMC's 7nm FinFET manufacturing process. GC200 is a 59 billion transistor, 823 square-millimeter integrated circuit with 1,472 computational cores and 900 Mbyte of local memories.[17] In 2022, Graphcore and TSMC presented the Bow IPU, a 3D package of a GC200 die bonded face to face to a power-delivery die that allows for higher clock rate at lower core voltage.[18] Graphcore aims at a Good machine, named after I.J. Good, enabling AI models with more parameters than the human brain has synapses.[18]
Release date | Product | Process node | Cores | Threads | Transistors | teraFLOPS (FP16) |
---|---|---|---|---|---|---|
July 2017 | Colossus™ MK1 - GC2 IPU | 16 nm TSMC | 1216 | 7296 | ? | ~100-125[19] |
July 2020 | Colossus™ MK2 - GC200 IPU | 7 nm TSMC | 1472 | 8832 | 59 billion | ~250-280[20] |
Colossus™ MK3 | ~500[21] |
Both the older and newer chips can use 6 threads per tile (for a total of 7,296 and 8,832 threads, respectively) "MIMD (Multiple Instruction, Multiple Data) parallelism and has distributed, local memory as its only form of memory on the device" (except for registers). The older GC2 chip has 256 KiB per tile while the newer GC200 chip has about 630 KiB per tile that are arranged into islands (4 tiles per island),[22] that are arranged into columns, and latency is best within tile. The IPU uses IEEE FP16, with stochastic rounding, and also single-precision FP32, at lower performance.[23] Code and data executed locally must fit in a tile, but with message-passing, all on-chip or off-chip memory can be used, and software for AI makes it transparently possible, e.g. has PyTorch support.
References
- Ray, Tiernan (2022-06-10). "The future of AI is a software story, says Graphcore's CEO". ZDNet.
- Peter Clarke (2016-11-01). "AI Chip Startup Shares Insights: "Very large" FinFET chip in the works at TSMC". eetimes. Retrieved 2017-08-02.
- Jolly, Jasper (2020-12-29). "UK chipmaker Graphcore valued at $2.8bn after it raises $222m". The Guardian.
- Arjun Kharpal (2016-10-31). "AI chipmaker Graphcore raises $30 million to take on Intel". CNBC. Retrieved 2017-07-31.
- Madhumita Murgia (2016-10-31). "UK chip start-up Graphcore raises £30m for take on AI giants". Financial Times. Retrieved 2017-08-02.
- Jeremy Kahn and Ian King (2017-07-20). "U.K. Chip Designer Graphcore Gets $30 Million to Fund Expansion". Bloomberg. Retrieved 2017-07-31.
- Lynley, Matthew (2017-11-12). "Graphcore raises $50M amid a flurry of AI chip activity". TechCrunch. Retrieved 2017-12-07.
- "AI chip startup Graphcore closes $200M Series D, adds BMW and Microsoft as strategic investors". TechCrunch. Retrieved 2018-12-19.
- Toon, Nigel. "Microsoft and Graphcore collaborate to accelerate Artificial Intelligence". www.graphcore.ai. Retrieved 2019-11-16.
- Paul, Katie (5 May 2023). "Meta Platforms scoops up AI networking chip team from Graphcore". Reuters.
- Fyles, Matt. "Inside an AI 'brain' - What does machine learning look like?". www.graphcore.ai. Retrieved 2019-11-16.
- Doherty, Sally. "Introducing Poplar® - our IPU-Processor software at NeurIPS". www.graphcore.ai. Retrieved 2019-11-16.
- Fyles, Matt. "Graph computing for machine intelligence with Poplar™". www.graphcore.ai. Retrieved 2019-11-16.
- Trader, Tiffany (2017-07-20). "Graphcore Readies Launch of 16nm Colossus-IPU Chip". hpcwire.com. HPC Wire. Retrieved 2017-12-11.
- Lucchesi, Ray (2018-11-19). "New GraphCore GC2 chips with 2PFlop performance in a Dell Server". silvertonconsulting.com. Silverton Consulting. Retrieved 2018-12-16.
- Citadel High Performance Computing R&D Team (2019). "Dissecting the Graphcore IPU Architecture via Microbenchmarking" (PDF).
- "Graphcore Introducing 2nd Generation IPU Systems For AI At Scale". Retrieved 2020-08-09.
- Timothy Prickett Morgan: GraphCore Goes Full 3D With AI Chips. The Next Platform, March 3, 2022.
- Kennedy, Patrick (2019-06-07). "Hands-on With a Graphcore C2 IPU PCIe Card at Dell Tech World". ServeTheHome. Retrieved 2023-06-26.
- Ltd, Graphcore. "IPU Processors". www.graphcore.ai. Retrieved 2023-06-26.
- "ScalAH22: 13th Workshop on Latest Advances in Scalable Algorithms for Large-Scale Heterogeneous Systems". www.csm.ornl.gov. Retrieved 2023-06-26.
- Jia, Zhe; Tillman, Blake; Maggioni, Marco; Daniele Paolo Scarpazza (2019). "Dissecting theGraphcore IPUArchitecturevia Microbenchmarking". arXiv:1912.03413 [cs.DC].
- "THE GRAPHCORE SECOND GENERATION IPU" (PDF).