Dokumentdetails
ID

oai:arXiv.org:2408.04692

Thema
Computer Science - Machine Learnin... Computer Science - Artificial Inte...
Autor
Santamaria-Valenzuela, Inmaculada Rodriguez-Fernandez, Victor Camacho, David
Kategorie

Computer Science

Jahr

2024

Auflistungsdatum

14.08.2024

Schlüsselwörter
series visual scalability deep learning embeddings time module
Metrisch

Zusammenfassung

Visual analytics is essential for studying large time series due to its ability to reveal trends, anomalies, and insights.

DeepVATS is a tool that merges Deep Learning (Deep) with Visual Analytics (VA) for the analysis of large time series data (TS).

It has three interconnected modules.

The Deep Learning module, developed in R, manages the load of datasets and Deep Learning models from and to the Storage module.

This module also supports models training and the acquisition of the embeddings from the latent space of the trained model.

The Storage module operates using the Weights and Biases system.

Subsequently, these embeddings can be analyzed in the Visual Analytics module.

This module, based on an R Shiny application, allows the adjustment of the parameters related to the projection and clustering of the embeddings space.

Once these parameters are set, interactive plots representing both the embeddings, and the time series are shown.

This paper introduces the tool and examines its scalability through log analytics.

The execution time evolution is examined while the length of the time series is varied.

This is achieved by resampling a large data series into smaller subsets and logging the main execution and rendering times for later analysis of scalability.

;Comment: Admitted pending publication in Lecture Notes in Network and Systems (LNNS) series (Springer).

Code available at https://github.com/vrodriguezf/deepvats

Santamaria-Valenzuela, Inmaculada,Rodriguez-Fernandez, Victor,Camacho, David, 2024, Exploring Scalability in Large-Scale Time Series in DeepVATS framework

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