EndToEndML: An Open-Source End-to-End Pipeline for Machine Learning Applications

Artificial intelligence (AI) techniques are widely applied in the life sciences. However, applying innovative AI techniques to understand and deconvolute biological complexity is hindered by the learning curve for life science scientists to understand and use computing languages. An open-source, use...

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Veröffentlicht in:arXiv.org 2024-03
Hauptverfasser: Pillai, Nisha, Athish Ram Das, Ayoola, Moses, Gireesan, Ganga, Nanduri, Bindu, Mahalingam Ramkumar
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Athish Ram Das
Ayoola, Moses
Gireesan, Ganga
Nanduri, Bindu
Mahalingam Ramkumar
description Artificial intelligence (AI) techniques are widely applied in the life sciences. However, applying innovative AI techniques to understand and deconvolute biological complexity is hindered by the learning curve for life science scientists to understand and use computing languages. An open-source, user-friendly interface for AI models, that does not require programming skills to analyze complex biological data will be extremely valuable to the bioinformatics community. With easy access to different sequencing technologies and increased interest in different 'omics' studies, the number of biological datasets being generated has increased and analyzing these high-throughput datasets is computationally demanding. The majority of AI libraries today require advanced programming skills as well as machine learning, data preprocessing, and visualization skills. In this research, we propose a web-based end-to-end pipeline that is capable of preprocessing, training, evaluating, and visualizing machine learning (ML) models without manual intervention or coding expertise. By integrating traditional machine learning and deep neural network models with visualizations, our library assists in recognizing, classifying, clustering, and predicting a wide range of multi-modal, multi-sensor datasets, including images, languages, and one-dimensional numerical data, for drug discovery, pathogen classification, and medical diagnostics.
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subjects Artificial intelligence
Artificial neural networks
Bioinformatics
Classification
Clustering
Complexity
Datasets
Languages
Learning curves
Machine learning
Open source software
Pipelining (computers)
Preprocessing
Sequences
Skills
title EndToEndML: An Open-Source End-to-End Pipeline for Machine Learning Applications
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