HPCA 2026
Sat 31 January - Wed 4 February 2026 Sydney, Australia
co-located with HPCA/CGO/PPoPP/CC 2026
Mon 2 Feb 2026 16:10 - 16:30 at Coogee - Efficient LLM Inference Techniques Chair(s): Jovan Stojkovic

Processing-in-Memory (PIM) architectures offer a promising solution to the memory bottlenecks in data-intensive machine learning, yet often overlook the growing challenge of activation memory footprint. Conventional PIM approaches struggle with massive KV cache sizes generated in long-context scenarios by Transformer-based models, frequently exceeding PIM’s limited memory capacity, while techniques like sparse attention can conflict with PIM’s need for data locality. Existing PIM approaches and quantization methods are often insufficient or poorly suited for leveraging the unique characteristics of activations. This work identifies an opportunity for PIM-specialized activation quantization to enhance bandwidth and compute efficiency.

We explore clustering-based vector quantization approaches, which align well with activation characteristics and PIM’s internal bandwidth capabilities. Building on this, we introduce AQPIM, a novel PIM-aware activation quantization framework based on Product Quantization (PQ), optimizing it for modern Large Language Models (LLMs). By performing quantization directly within memory, AQPIM leverages PIM’s high internal bandwidth and enables direct computation on compressed data, significantly reducing both memory footprint and computational overhead for attention computation. AQPIM addresses PQ’s accuracy challenges by introducing several algorithmic optimizations. Evaluations demonstrate that AQPIM achieves significant performance improvements, offering up to a 93$\times$ faster decoding execution time compared to a SOTA PIM accelerator.

Mon 2 Feb

Displayed time zone: Hobart change

15:50 - 17:10
Efficient LLM Inference TechniquesMain Conference at Coogee
Chair(s): Jovan Stojkovic University of Illinois at Urbana-Champaign
15:50
20m
Talk
PADE: A Predictor-Free Sparse Attention Accelerator via Unified Execution and Stage Fusion
Main Conference
Huizheng Wang Tsinghua University, Hongbin Wang Tsinghua University, Zichuan Wang Tsinghua University, Zhiheng Yue Tsinghua University, Yang Wang Tsinghua University, Chao Li Shanghai Jiao Tong University, Yang Hu Tsinghua University, Shouyi Yin Tsinghua University
16:10
20m
Talk
AQPIM: Breaking the PIM Capacity Wall for LLMs with In-Memory Activation Quantization
Main Conference
Kosuke Matsushima Institute of Science Tokyo, Yasuyuki Okoshi Institute of Science Tokyo, Masato Motomura Institute of Science Tokyo, Daichi Fujiki Institute of Science Tokyo
16:30
20m
Talk
BitDecoding: Unlocking Tensor Cores for Long-Context LLMs with Low-Bit KV Cache
Main Conference
Dayou Du University of Edinburgh, Shijie Cao Microsoft Research, Jianyi Cheng University of Edinburgh, UK, Luo Mai University of Edinburgh, Ting Cao Institute for AI Industry Research (AIR), Tsinghua University, Mao Yang Microsoft Research
16:50
20m
Talk
GyRot: Leveraging Hidden Synergy between Rotation and Fine-grained Group Quantization for Low-bit LLM Inference
Main Conference