PolyThrottle: Energy-efficient Neural Network Inference on Edge Devices: Motivation

United Kingdom News News

PolyThrottle: Energy-efficient Neural Network Inference on Edge Devices: Motivation
United Kingdom Latest News,United Kingdom Headlines
  • 📰 hackernoon
  • ⏱ Reading Time:
  • 19 sec. here
  • 2 min. at publisher
  • 📊 Quality Score:
  • News: 11%
  • Publisher: 51%

This paper investigates how the configuration of on-device hardware affects energy consumption for neural network inference with regular fine-tuning.

This paper is available on arxiv under CC BY-NC-ND 4.0 DEED license. Authors: Minghao Yan, University of Wisconsin-Madison; Hongyi Wang, Carnegie Mellon University; Shivaram Venkataraman, [email protected]. Table of Links Abstract & Introduction Motivation Opportunities Architecture Overview Proble Formulation: Two-Phase Tuning Modeling Workload Interference Experiments Conclusion & References A. Hardware Details B. Experimental Results C. Arithmetic Intensity D.

From our conversations, Company A works with Customer B to deploy neural networks on edge devices to optimize inventory management. To comply with regulations and protect privacy, data from each inventory site are required to be stored locally. The vast difference in the layout of the inventories makes it impossible to pre-train the model on data from every warehouse.

We have summarized this news so that you can read it quickly. If you are interested in the news, you can read the full text here. Read more:

hackernoon /  🏆 532. in US

United Kingdom Latest News, United Kingdom Headlines

Similar News:You can also read news stories similar to this one that we have collected from other news sources.

PolyThrottle: Energy-efficient Neural Network Inference on Edge Devices: Experimental ResultsPolyThrottle: Energy-efficient Neural Network Inference on Edge Devices: Experimental ResultsThis paper investigates how the configuration of on-device hardware affects energy consumption for neural network inference with regular fine-tuning.
Read more »

PolyThrottle: Energy-efficient Neural Network Inference on Edge Devices: OpportunitiesPolyThrottle: Energy-efficient Neural Network Inference on Edge Devices: OpportunitiesThis paper investigates how the configuration of on-device hardware affects energy consumption for neural network inference with regular fine-tuning.
Read more »

ANYmal robot excels in parkour feats thanks to neural network trainingANYmal robot excels in parkour feats thanks to neural network trainingDog-like robot ANYmal's agility is boosted by a new framework, allowing it to tackle a basic parkour course at up to 6 feet per second.
Read more »

Using Machine Learning & Neural Networks to Maximize Solar Energy GloballyUsing Machine Learning & Neural Networks to Maximize Solar Energy GloballyOther ways to generate solar energy that just trying to make solar cells efficient potential of luminescent solar concentration
Read more »

CPS Energy progressing towards cleaner energy goals; set to shut down older plantsCPS Energy progressing towards cleaner energy goals; set to shut down older plantsSAN ANTONIO- Cleaner energy: that's the goal cps energy is working toward -- by closing down coal and older natural gas plants. CPS energy announced they will b
Read more »

Yellen: Pushing Green Energy to Lower Energy Costs ‘Over Time’ Is Key Part of Fighting InflationYellen: Pushing Green Energy to Lower Energy Costs ‘Over Time’ Is Key Part of Fighting InflationSource of breaking news and analysis, insightful commentary and original reporting, curated and written specifically for the new generation of independent and conservative thinkers.
Read more »



Render Time: 2025-04-04 16:32:18