JOURNAL ARTICLE

Deep Bi-Directional LSTM Networks for Device Workload Forecasting

Dymitr RutaLing CenQuang Hieu Vu

Year: 2020 Journal:   Annals of Computer Science and Information Systems Vol: 21 Pages: 115-118   Publisher: Polskie Towarzystwo Informatyczne

Abstract

Deep convolutional neural networks revolutionized the area of automated objects detection from images.Can the same be achieved in the domain of time series forecasting?Can one build a universal deep network that once trained on the past would be able to deliver accurate predictions reaching deep into the future for any even most diverse time series?This work is a first step in an attempt to address such a challenge in the context of a FEDCSIS'2020 Competition dedicated to network device workload prediction based on their historical time series data.We have developed and pre-trained a universal 3-layer bi-directional Long-Short-Term-Memory (LSTM) regression network that reported the most accurate hourly predictions of the weekly workload time series from the thousands of different network devices with diverse shape and seasonality profiles.We will also show how intuitive human-led post-processing of the raw LSTM predictions could easily destroy the generalization abilities of such prediction model.

Keywords:
Computer science Workload Context (archaeology) Artificial intelligence Deep learning Generalization Time series Artificial neural network Convolutional neural network Domain (mathematical analysis) Recurrent neural network Machine learning Series (stratigraphy) Data mining

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17
Cited By
4.57
FWCI (Field Weighted Citation Impact)
12
Refs
0.98
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Topics

Traffic Prediction and Management Techniques
Physical Sciences →  Engineering →  Building and Construction
Time Series Analysis and Forecasting
Physical Sciences →  Computer Science →  Signal Processing
Anomaly Detection Techniques and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence
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