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Machine Learning For Concrete Compressive Strength Analysis And Prediction With Python Vivian Siahaan

  • SKU: BELL-50820272
Machine Learning For Concrete Compressive Strength Analysis And Prediction With Python Vivian Siahaan
$ 31.00 $ 45.00 (-31%)

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Machine Learning For Concrete Compressive Strength Analysis And Prediction With Python Vivian Siahaan instant download after payment.

Publisher: BALIGE PUBLISHING
File Extension: EPUB
File size: 19.7 MB
Pages: 245
Author: Vivian Siahaan, Rismon Hasiholan Sianipar
ISBN: B0B1CP5QJ6
Language: English
Year: 2023

Product desciption

Machine Learning For Concrete Compressive Strength Analysis And Prediction With Python Vivian Siahaan by Vivian Siahaan, Rismon Hasiholan Sianipar B0B1CP5QJ6 instant download after payment.

 to "Machine Learning for Concrete Compressive Strength Analysis and Prediction with Python." In this book, we will explore the fascinating field of applying machine learning techniques to analyze and predict the compressive strength of concrete.

First, we will dive into the dataset, which includes various features related to concrete mix proportions, age, and other influential factors. We will explore the dataset's structure, dimensions, and feature types, ensuring that we have a solid understanding of the data we are working with. Then, we will focus on data exploration and visualization. We will utilize histograms, box plots, and scatter plots to gain insights into the distribution of features and their relationships with the target variable, enabling us to uncover valuable patterns and trends within the dataset. Before delving into machine learning algorithms, we must preprocess the data. We will handle missing values, encode categorical variables, and scale numerical features to ensure that our data is in the optimal format for training and testing our models.

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