Mathematical Modelling and Machine Learning Methods for Bioinformatics and Data Science Applications / / Monica Bianchini, Maria Lucia Sampoli, editor.

Mathematical modeling is routinely used in physical and engineering sciences to help understand complex systems and optimize industrial processes. Mathematical modeling differs from Artificial Intelligence because it does not exclusively use the collected data to describe an industrial phenomenon or...

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Place / Publishing House:[Place of publication not identified] : : MDPI - Multidisciplinary Digital Publishing Institute,, 2022.
Year of Publication:2022
Language:English
Physical Description:1 online resource (102 pages)
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spelling Mathematical Modelling and Machine Learning Methods for Bioinformatics and Data Science Applications / Monica Bianchini, Maria Lucia Sampoli, editor.
[Place of publication not identified] : MDPI - Multidisciplinary Digital Publishing Institute, 2022.
1 online resource (102 pages)
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Description based on publisher supplied metadata and other sources.
Mathematical modeling is routinely used in physical and engineering sciences to help understand complex systems and optimize industrial processes. Mathematical modeling differs from Artificial Intelligence because it does not exclusively use the collected data to describe an industrial phenomenon or process, but it is based on fundamental laws of physics or engineering that lead to systems of equations able to represent all the variables that characterize the process. Conversely, Machine Learning methods require a large amount of data to find solutions, remaining detached from the problem that generated them and trying to infer the behavior of the object, material or process to be examined from observed samples. Mathematics allows us to formulate complex models with effectiveness and creativity, describing nature and physics. Together with the potential of Artificial Intelligence and data collection techniques, a new way of dealing with practical problems is possible. The insertion of the equations deriving from the physical world in the data-driven models can in fact greatly enrich the information content of the sampled data, allowing to simulate very complex phenomena, with drastically reduced calculation times. Combined approaches will constitute a breakthrough in cutting-edge applications, providing precise and reliable tools for the prediction of phenomena in biological macro/microsystems, for biotechnological applications and for medical diagnostics, particularly in the field of precision medicine.
Mathematical models.
3-0365-2840-7
Sampoli, Maria Lucia, editor.
Bianchini, Monica, editor.
language English
format eBook
author2 Sampoli, Maria Lucia,
Bianchini, Monica,
author_facet Sampoli, Maria Lucia,
Bianchini, Monica,
author2_variant m l s ml mls
m b mb
author2_role TeilnehmendeR
TeilnehmendeR
title Mathematical Modelling and Machine Learning Methods for Bioinformatics and Data Science Applications /
spellingShingle Mathematical Modelling and Machine Learning Methods for Bioinformatics and Data Science Applications /
title_full Mathematical Modelling and Machine Learning Methods for Bioinformatics and Data Science Applications / Monica Bianchini, Maria Lucia Sampoli, editor.
title_fullStr Mathematical Modelling and Machine Learning Methods for Bioinformatics and Data Science Applications / Monica Bianchini, Maria Lucia Sampoli, editor.
title_full_unstemmed Mathematical Modelling and Machine Learning Methods for Bioinformatics and Data Science Applications / Monica Bianchini, Maria Lucia Sampoli, editor.
title_auth Mathematical Modelling and Machine Learning Methods for Bioinformatics and Data Science Applications /
title_new Mathematical Modelling and Machine Learning Methods for Bioinformatics and Data Science Applications /
title_sort mathematical modelling and machine learning methods for bioinformatics and data science applications /
publisher MDPI - Multidisciplinary Digital Publishing Institute,
publishDate 2022
physical 1 online resource (102 pages)
isbn 3-0365-2840-7
callnumber-first Q - Science
callnumber-subject QA - Mathematics
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callnumber-sort QA 3401 M384 42022
illustrated Not Illustrated
dewey-hundreds 500 - Science
dewey-tens 510 - Mathematics
dewey-ones 511 - General principles of mathematics
dewey-full 511.8
dewey-sort 3511.8
dewey-raw 511.8
dewey-search 511.8
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