LLMQ: Efficient lower-precision LLM training for consumer GPUs

Schultheis E, Alistarh D-A. 2026. LLMQ: Efficient lower-precision LLM training for consumer GPUs. 2nd Conference on Parsimony and Learning. CPAL: Conference on Parsimony and Learning, PMLR, vol. 328, 265–284.

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Corresponding author has ISTA affiliation

Department
Series Title
PMLR
Abstract
We present LLMQ, an end-to-end CUDA/C++ implementation for medium-sized language-model training, e.g. 3B to 32B parameters, on affordable, commodity GPUs. These devices are characterized by low memory availability and slow communication compared to datacentre-grade GPUs. Consequently, we showcase a range of optimizations that target these bottlenecks, including activation checkpointing, offloading, and copy-engine based collectives. LLMQ is able to train or fine-tune a 7B model on a single 16GB mid-range gaming card, or a 32B model on a workstation equipped with 4 RTX 4090s. This is achieved while executing a standard 8-bit training pipeline, without additional algorithmic approximations, and maintaining FLOP utilization of around 50%. The efficiency of LLMQ rivals that of production-scale systems on much more expensive cloud-grade GPUs.
Publishing Year
Date Published
2026-04-06
Proceedings Title
2nd Conference on Parsimony and Learning
Publisher
ML Research Press
Acknowledgement
We would like to thank contacts at NVIDIA (Vartika Singh, Nina Carrejo, Kyla Wilkes, and Tijmen Blankevoort), HP (Curtis Burkhalter), and Datacrunch/Verda (Paul Chang and Antonio Dominguez) for hardware support that was essential to this project. ES was supported in part by ERC Proof-of-Concept grant FastML.
Volume
328
Page
265-284
Conference
CPAL: Conference on Parsimony and Learning
Conference Location
Stanford, CA, United States
Conference Date
2025-03-24 – 2025-03-27
eISSN
IST-REx-ID

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Schultheis E, Alistarh D-A. LLMQ: Efficient lower-precision LLM training for consumer GPUs. In: 2nd Conference on Parsimony and Learning. Vol 328. ML Research Press; 2026:265-284.
Schultheis, E., & Alistarh, D.-A. (2026). LLMQ: Efficient lower-precision LLM training for consumer GPUs. In 2nd Conference on Parsimony and Learning (Vol. 328, pp. 265–284). Stanford, CA, United States: ML Research Press.
Schultheis, Erik, and Dan-Adrian Alistarh. “LLMQ: Efficient Lower-Precision LLM Training for Consumer GPUs.” In 2nd Conference on Parsimony and Learning, 328:265–84. ML Research Press, 2026.
E. Schultheis and D.-A. Alistarh, “LLMQ: Efficient lower-precision LLM training for consumer GPUs,” in 2nd Conference on Parsimony and Learning, Stanford, CA, United States, 2026, vol. 328, pp. 265–284.
Schultheis E, Alistarh D-A. 2026. LLMQ: Efficient lower-precision LLM training for consumer GPUs. 2nd Conference on Parsimony and Learning. CPAL: Conference on Parsimony and Learning, PMLR, vol. 328, 265–284.
Schultheis, Erik, and Dan-Adrian Alistarh. “LLMQ: Efficient Lower-Precision LLM Training for Consumer GPUs.” 2nd Conference on Parsimony and Learning, vol. 328, ML Research Press, 2026, pp. 265–84.
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2026-06-03
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