Computer History Museum interview on the occasion of NorthPole’s induction into the Museum. Other interviewees include: John Backus (Fortran), Brian Kernighan (UNIX), Robert Metcalfe (Ethernet, 3Com), Gordon Moore (Moore’s Law), Robert Kahn (TCP/IP), Douglas Engelbart (hypertext), Ronald Rivest (RSA), John McCarthy (LISP), Donald Knuth (analysis of algorithms), James Gosling (JAVA), John Hennessy (RISC), Ken Thompson (UNIX, B), Rodney Brooks (robotics).
EE Times Interview by Sunny Bains
Sunny Bains interviewed me for Brains and Machines. It captures our journey through DARPA SyNAPSE, TrueNorth, and NorthPole. Listen here.
SiLQ: Simple Large Language Model Quantization-Aware Training
Thrilled to share the latest work from the IBM Research NorthPole Team pushing the cutting edge of quantized large language model performance. In a recent paper, we introduce a new quantization recipe and apply it to 8 billion parameter Granite and Llama models. We demonstrate these models with 8-bit activations and cache and 4-bit weights showing minimal accuracy degradation on 3 leader boards spanning 20 distinct tasks.
Our method is high accuracy, outperforming all prior published quantization methods on the models and precisions examined, is simple, able to reuse existing training code after adding appropriate quantization and knowledge distillation, and is relatively low-cost, able to reuse existing training data or publicly available datasets, and requiring an increase in total training budget of less than 0.1%. We believe that this will be a powerful enabling tool for deploying models on ultra-low-latency inference accelerators like NorthPole, greatly enhancing the performance of latency critical applications such as interactive dialog and agentic workflows.
The paper, written with co-authors Jeffrey McKinstry, Deepika Bablani, Rathinakumar Appuswamy, and Dharmendra Modha, can be found here.
Breakthrough low-latency, high-energy-efficiency LLM inference performance using NorthPole
New: As presented at the IEEE HPEC Conference (High Performance Extereme Computing) today, exciting new results from IBM Research demonstrate that for a 3-billion parameter LLM, a compact 2U research prototype system using the IBM AIU NorthPole inference chip delivers an astounding 28,356 tokens/sec of system throughput and sub-1ms/token (per-user) latency. NorthPole is optimized for the two conflicting objectives of energy-efficiency and low latency. In the regime of low-latency, NorthPole (in 12nm) provides 72.7x better energy efficiency (tokens/second/W) versus a state-of-the-art 4nm GPU. In the regime of high-energy efficiency, NorthPole (in 12nm) provides 46.9x better latency (ms/token) versus a 5nm GPU.
NorthPole is a brain-inspired, silicon-optimized chip architecture suitable for neural inference that was published in October 2023 in Science Magazine. Result of nearly two decades of work at IBM Research and a 14+ year partnership with United States Department of Defense (Defense Advanced Research Projects Agency, Office of the Under Secretary of Defense for Research and Engineering, and Air Force Research Laboratory).
NorthPole balances two conflicting objectives of energy efficiency and low latency.
First, because LLMs demand substantial energy resources for both training and inference, a sustainable future computational infrastructure is needed to enable their efficient and widespread deployment. Energy efficiency of data centers is becoming critical as their carbon footprints expand, and as they become increasingly energy-constrained. According to the World Economic Forum, “At present, the environmental footprint is split, with training responsible for about 20% and inference taking up the lion’s share at 80%. As AI models gain traction across diverse sectors, the need for inference and its environmental footprint will escalate.”
Second, many applications such as interactive dialog and agentic workflows require very low latencies. Decreasing latency, within a given computer architecture, can be achieved by decreasing throughput, however, that leads to decreasing energy efficiency. To paraphrase a classic systems maxim, “Throughput problems can be cured with money. Latency problems are harder because the speed of light is fixed.”



PDF of the Accepted Version.
Future: Next research and development steps are further optimizations of energy-efficiency; mapping larger LLMs (8B, 13B, 20B, 34B, 70B) on correspondingly larger NorthPole appliances; new LLM models co-optimized with NorthPole architecture; and future system and chip architectures.

Design Credit: Ryan Mellody, Susana Rodriguez de Tembleque, William Risk, Map Project Office

Breakthrough edge AI inference performance using NorthPole in 3U VPX form factor
New: As presented at the IEEE HPEC Conference (High Performance Extreme Computing) today, the IBM AIU NorthPole Chip has been incorporated into a compact, rugged 3U VPX form factor module (NP-VPX), delivering high-performance and energy-efficiency for edge AI inference. NP-VPX processes 965 frames per second (fps) with a Yolo-v4 network with 640×640 pixel images at 73.5 W at full-precision accuracy, achieving 13.2 frames/J (fps/W). NP-VPX processes over 40,300 fps with a ResNet-50 network with 224×224 pixel images at 65.9 W at full-precision accuracy, achieving 611 frames/J.
NorthPole is a brain-inspired, silicon-optimized chip architecture suitable for neural inference that was published in October 2023 in Science Magazine. Result of nearly two decades of work by scientists at IBM Research and a 14+ year partnership with United States Department of Defense (Defense Advanced Research Projects Agency, Office of the Under Secretary of Defense for Research and Engineering, and Air Force Research Laboratory).
Today, high-performance AI runs primarily in the data center and—while training may remain there—great opportunity exists to migrate inference out to the edge, reducing transmission energy as well as bandwidth, mitigating concerns regarding privacy as well as security, and enabling previously impossible applications. To enable inference outside the data center, users need AI accelerators with both high performance and high energy efficiency, embodied in a form factor optimized for deployment at the edge.




PDF of the Accepted Version.
