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The Complete Guide to Machine Learning: Mastering Python for a Career in ML Engineering
Latest   Machine Learning

The Complete Guide to Machine Learning: Mastering Python for a Career in ML Engineering

Last Updated on July 17, 2023 by Editorial Team

Author(s): Simranjeet Singh

Originally published on Towards AI.

Introduction

The field of machine learning is expanding quickly and has the potential to completely change how we approach problem-solving across a variety of industries. However, given the amount of material accessible on the subject, it might be challenging to know where to begin or how to go in order to become knowledgeable in this field. In order to address all of these topics, including exploratory data analysis (EDA), feature engineering, statistical modelling, and machine learning methods, we prepared this comprehensive handbook to machine learning.

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Fig.1 — Full Machine Learning Guide

In this blog, we’ll provide a brief overview of each topic covered in the guide and provide links to individual blog posts for those who want to delve deeper. So, let us begin our journey to becoming machine learning experts!

Exploratory Data Analysis

Machine Learning EDA is a critical step in any data analysis project, including machine learning. It involves techniques for summarising and visualizing data, identifying outliers and missing values, and detecting patterns and trends. EDA assists data scientists in better understanding their data, identifying potential issues, and making informed decisions about which variables to include in their machine-learning models. Everything in the Below Link U+1F447

The Ultimate Guide to Machine Learning: From EDA to Model Deployment U+007C PART — 1

This blog provides a comprehensive guide of exploratory data analysis (EDA), a critical step in data analysis process…

medium.com

Check out this YouTube Video for Kaggle Project Implementation of EDA

EDA Project Youtube Video
Fig.2 — Exploratory Data Analysis Complete Guide

Feature Engineering

The process of selecting, extracting, and transforming features from raw data to improve the performance of machine learning models is known as feature engineering. Identifying relevant variables, transforming variables to improve their relevance, and creating new variables from existing ones are all part of this process. The quality of the features used can have a significant impact on the accuracy of the resulting models, so feature engineering is an important step in machine learning. Everything in the Below Link U+1F447

The Ultimate Guide to Machine Learning: From EDA to Model Deployment U+007C PART — 2

This blog explores the various techniques and methods for selecting, extracting, and transforming features to enhance…

medium.com

Fig.3 — Feature Engineering Complete Guide

Statistical Modeling

Statistical modeling is the process of creating mathematical models to analyze and predict data. Linear regression, logistic regression, and time series models are examples of this. Statistical models can be used to gain insights into variable relationships, predict future outcomes, and identify areas for improvement. Everything in the Below Link U+1F447

The Ultimate Guide to Machine Learning: Statistics and Statistical Modelling— Part -3

This blog provides an introduction to statistical concepts such as probability theory, statistics, GLM and Markov…

medium.com

Fig.4 — Statistics and modelling full guide

Machine Learning Algorithms

Machine learning algorithms are a collection of statistical models and techniques that allow computers to learn and improve at tasks that are not clearly programmed. Image and speech recognition, natural language processing, and recommendation systems are all examples of how these algorithms are used. Machine learning algorithms are classified into three types: supervised learning, unsupervised learning, and reinforcement learning. Everything in the Below Link U+1F447

The Ultimate Guide to Machine Learning: Machine Learning Algorithms — Part-4

The blog discusses different machine learning algorithms and their mathematical equations.

medium.com

Check out this YouTube Video for Linear Regression and Decision Tree Practical Implementation.

YouTube Video on Machine Learning
Fig.5 — Complete Machine Learning Algorithms Guide

By understanding each of these core components of machine learning, data scientists can develop more accurate models, make better decisions, and unlock new insights from their data.

Conclusion

Finally, this ultimate machine learning guide has provided an overview of the key topics and techniques involved in this exciting and rapidly growing field. We’ve covered everything you need to know to get started on your path to becoming a machine learning expert, from exploratory data analysis to feature engineering, statistical modeling, and machine learning algorithms.

  1. By keeping exploring this interesting area and following the linked blog posts, you will be able to build increasingly sophisticated models, gain new insights, and tackle increasingly complex problems.
  2. Whether you’re an experienced data scientist or a newbie, the knowledge and techniques covered in this guide will help you advance your machine-learning skills.

So, what are you waiting for? Begin exploring and discovering the limitless potential of machine learning today!

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