arXiv Open Access 2022

Approximate Computing and the Efficient Machine Learning Expedition

Jörg Henkel Hai Li Anand Raghunathan Mehdi B. Tahoori Swagath Venkataramani +2 lainnya
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Abstrak

Approximate computing (AxC) has been long accepted as a design alternative for efficient system implementation at the cost of relaxed accuracy requirements. Despite the AxC research activities in various application domains, AxC thrived the past decade when it was applied in Machine Learning (ML). The by definition approximate notion of ML models but also the increased computational overheads associated with ML applications-that were effectively mitigated by corresponding approximations-led to a perfect matching and a fruitful synergy. AxC for AI/ML has transcended beyond academic prototypes. In this work, we enlighten the synergistic nature of AxC and ML and elucidate the impact of AxC in designing efficient ML systems. To that end, we present an overview and taxonomy of AxC for ML and use two descriptive application scenarios to demonstrate how AxC boosts the efficiency of ML systems.

Topik & Kata Kunci

Penulis (7)

J

Jörg Henkel

H

Hai Li

A

Anand Raghunathan

M

Mehdi B. Tahoori

S

Swagath Venkataramani

X

Xiaoxuan Yang

G

Georgios Zervakis

Format Sitasi

Henkel, J., Li, H., Raghunathan, A., Tahoori, M.B., Venkataramani, S., Yang, X. et al. (2022). Approximate Computing and the Efficient Machine Learning Expedition. https://arxiv.org/abs/2210.00497

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Tahun Terbit
2022
Bahasa
en
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arXiv
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Open Access ✓