Detail publikačního výsledku

ApproxGNN: A Pretrained GNN for Parameter Prediction in Design Space Exploration for Approximate Computing

VLČEK, O.; MRÁZEK, V.

Originální název

ApproxGNN: A Pretrained GNN for Parameter Prediction in Design Space Exploration for Approximate Computing

Anglický název

ApproxGNN: A Pretrained GNN for Parameter Prediction in Design Space Exploration for Approximate Computing

Druh

Stať ve sborníku v databázi WoS či Scopus

Originální abstrakt

Approximate computing offers promising energy efficiency benefits for error-tolerant applications, but discovering optimal approximations requires extensive design space exploration (DSE). Predicting the accuracy of circuits composed of approximate components without performing complete synthesis remains a challenging problem. Current machine learning approaches used to automate this task require retraining for each new circuit configuration, making them computationally expensive and time-consuming. This paper presents ApproxGNN, a construction methodology for a pre-trained graph neural network model predicting QoR and HW cost of approximate accelerators employing approximate adders from a library. This approach is applicable in DSE for assignment of approximate components to operations in accelerator. Our approach introduces novel component feature extraction based on learned embeddings rather than traditional error metrics, enabling improved transferability to unseen circuits. ApproxGNN models can be trained with a small number of approximate components, supports transfer to multiple prediction tasks, utilizes precomputed embeddings for efficiency, and significantly improves accuracy of the prediction of approximation error. On a set of image convolutional filters, our experimental results demonstrate that the proposed embeddings improve prediction accuracy (mean square error) by 50% compared to conventional methods. Furthermore, the overall prediction accuracy is 30% better than statistical machine learning approaches without fine-tuning and 54% better with fast finetuning.

Anglický abstrakt

Approximate computing offers promising energy efficiency benefits for error-tolerant applications, but discovering optimal approximations requires extensive design space exploration (DSE). Predicting the accuracy of circuits composed of approximate components without performing complete synthesis remains a challenging problem. Current machine learning approaches used to automate this task require retraining for each new circuit configuration, making them computationally expensive and time-consuming. This paper presents ApproxGNN, a construction methodology for a pre-trained graph neural network model predicting QoR and HW cost of approximate accelerators employing approximate adders from a library. This approach is applicable in DSE for assignment of approximate components to operations in accelerator. Our approach introduces novel component feature extraction based on learned embeddings rather than traditional error metrics, enabling improved transferability to unseen circuits. ApproxGNN models can be trained with a small number of approximate components, supports transfer to multiple prediction tasks, utilizes precomputed embeddings for efficiency, and significantly improves accuracy of the prediction of approximation error. On a set of image convolutional filters, our experimental results demonstrate that the proposed embeddings improve prediction accuracy (mean square error) by 50% compared to conventional methods. Furthermore, the overall prediction accuracy is 30% better than statistical machine learning approaches without fine-tuning and 54% better with fast finetuning.

Klíčová slova

Approximate Computing, Graph Neural Networks, Parameter Prediction, Transfer Learning

Klíčová slova v angličtině

Approximate Computing, Graph Neural Networks, Parameter Prediction, Transfer Learning

Autoři

VLČEK, O.; MRÁZEK, V.

Rok RIV

2026

Vydáno

20.10.2025

Nakladatel

IEEE

Místo

Munich, Germany

ISBN

979-8-3315-1560-7

Kniha

2025 IEEE/ACM International Conference On Computer Aided Design (ICCAD)

Strany od

1

Strany do

8

Strany počet

8

BibTex

@inproceedings{BUT197688,
  author="Ondřej {Vlček} and Vojtěch {Mrázek}",
  title="ApproxGNN: A Pretrained GNN for Parameter Prediction in Design Space Exploration for Approximate Computing",
  booktitle="2025 IEEE/ACM International Conference On Computer Aided Design (ICCAD)",
  year="2025",
  pages="1--8",
  publisher="IEEE",
  address="Munich, Germany",
  doi="10.1109/ICCAD66269.2025.11240776",
  isbn="979-8-3315-1560-7"
}