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Data Science And Machine Learning Fundamentals [2024] - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Data Science And Machine Learning Fundamentals [2024] (/Thread-Data-Science-And-Machine-Learning-Fundamentals-2024--514471) |
Data Science And Machine Learning Fundamentals [2024] - AD-TEAM - 08-20-2024 ![]() Data Science And Machine Learning Fundamentals [2024] Last updated 7/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 24.31 GB | Duration: 49h 14m Learn to master Data Science and Machine Learning Fundamentals with Python and Pandas
[b]What you'll learn[/b] Knowledge about Data Science and Machine Learning theory, algorithms, methods, best practices, and tasks Deep hands-on knowledge about Data Science and Machine Learning, and know how to do common Data Science and Machine Learning tasks The ability to handle common Data Science and Machine Learning tasks with confidence Master Python for Data Handling Master Pandas for Data Handling Knowledge and practical hands-on knowledge of Scikit-learn, Stats models, Matplotlib, Seaborn, and many other Python libraries Detailed and deep, Master knowledge of Regression Prediction, Classification, and Cluster analysis Advanced knowledge of A.I. prediction models and automatic model creation Advanced Knowledge of Text Mining, Text Mining Tasks, and Emotion Mining [b]Requirements[/b] The four ways of counting (+-*/) Everyday experience with Windows, Linux, or Mac-OS [b]Description[/b] This course is an exciting hands-on view of the fundamentals of Data Science and Machine LearningData Science and Machine Learning are developing on a massive scale. Everywhere you look in society, the world wide web, or in technology, you will find Data Science and Machine Learning algorithms working behind the scenes to analyze and optimize all aspects of our lives, businesses, and our society. Data Science and Machine Learning with Artificial Intelligence are some of the hottest and fastest-developing areas right now. This course will teach you the fundamentals of Data Science and Machine Learning. This course has exclusive content that will teach you many new things regardless of if you are a beginner or an experienced Data Scientist, and aspires to be one of the best Udemy courses in terms of education and value. You will learn aboutRegression and Prediction with Machine Learning models using supervised learning. This course has the most complete and fundamental master-level regression content packages on Udemy, with hands-on, useful practical theory, and automatic Machine Learning algorithms for model building, feature selection, and artificial intelligence. You will learn about models ranging from linear regression models to advanced multivariate polynomial regression models.Classification with Machine Learning models using supervised learning. You will learn about the classification process, classification theory, and visualizations as well as some useful classifier models, including the very powerful Random Forest Classifier Ensembles and Voting Classifier Ensembles.Cluster Analysis with Machine Learning models using unsupervised learning. In this part of the course, you will learn about unsupervised learning, cluster theory, artificial intelligence, explorative data analysis, and seven useful Machine Learning clustering algorithms ranging from hierarchical cluster models to density-based cluster models.The fundamentals of Data Science and Machine Learning. This course gives a very solid foundation and knowledge base for Data Science and Machine Learning jobs or studies.Advanced A.I. prediction models and automatic model creation. This video course includes videos where the use of very powerful algorithms for automatic model creation is taught.Advanced Text Mining and Automation. You will learn to mine text data and the fundamentals of Text and Emotion Mining such as Tokenization, text data preparation, spell checking, lemmatization, stemming, and classification of text data. Mastering Python for data handling.Mastering Pandas for data handling.This course includesa comprehensive and easy-to-follow teaching package for Mastering Python and Pandas for data handling, which makes anyone able to learn the course contents regardless of beforehand knowledge of programming, tabulation software, Python, Pandas, Data Science, or Machine Learning.an optional possibility to use the Anaconda Cloud Notebook for cloud computing.an easy-to-follow guide for downloading, installing, and setting up the Anaconda Distribution, which makes anyone able to install the Python Data Science and Machine Learning environment for this course.content that will teach you many new things, regardless of if you are a beginner or an experienced Data Scientist.a large collection of unique content, and will teach you many new things that only can be learned from this course on Udemy.A complete masterclass package for Data Science and Machine Learning.A course structure built on a proven and professional framework for learning.A compact course structure and no killing time.Is this course for you?This course is for you, regardless if you are a beginner or an experienced Data Scientist. This course is for you, regardless if you have no education or are experienced with a Ph.D.Course requirementsThe four ways of counting (+-*/)Basic everyday experience with either Windows, Linux, Mac OS, or similar operating systemsAfter completing this course, you will haveKnowledge about Data Science and Machine Learning theory, algorithms, methods, best practices, and tasks.Deep hands-on knowledge of Data Science and Machine Learning, and know how to do common Data Science and Machine Learning tasks.The ability to handle common Data Science and Machine Learning tasks with confidence.Knowledge to Master Python for Data Handling.Knowledge to Master Pandas for Data Handling.Knowledge and practical hands-on knowledge of Scikit-learn, Stats models, Matplotlib, Seaborn, and many other Python libraries.Detailed and deep Master knowledge of Regression Prediction, Classification, and Cluster Analysis.Advanced knowledge of A.I. prediction models and automatic model creation.Advanced Knowledge of Text Mining, Text Mining Tasks, and Emotion Mining. Overview Section 1: Introduction Lecture 1 Course introduction Lecture 2 Workplace Setup with options Lecture 3 Setup of the Anaconda Jupyter Cloud Notebook Lecture 4 Download and installation of the Anaconda Distribution plus Visual Studio Code Lecture 5 Setup of Anaconda Distribution with libraries in a pre-designed environment Lecture 6 Setup of Anaconda Distribution with libraries in the base/root environment Lecture 7 Setup of Anaconda Distribution with libraries in a working environment Section 2: Master Python for data handling Lecture 8 Overview of the first part of this section Lecture 9 Python Integers Lecture 10 Python Floats Lecture 11 Python Strings I Lecture 12 Python Strings II: Intermediate String Methods Lecture 13 Python Strings III: DateTime Objects and Strings Lecture 14 Python Native Data Storage Overview Lecture 15 Python Set Lecture 16 Python Tuple Lecture 17 Python Dictionary Lecture 18 Python List Lecture 19 Data Transformers and Functions Lecture 20 The While Loop Lecture 21 The For Loop Lecture 22 Python Logic Operators Lecture 23 Python Functions I Lecture 24 Python Functions II Lecture 25 Python Object Oriented Programming I : Theory Lecture 26 Python Object Oriented Programming II: OOP Lecture 27 Python Object Oriented Programming III: Files and Tables Lecture 28 Python Object Oriented Programming IV: Recap and More Section 3: Master Pandas for Data Handling Lecture 29 Master Pandas for Data Handling: Overview Lecture 30 Pandas theory and terminology Lecture 31 Creating a DataFrame from scratch Lecture 32 Pandas File Handling: Overview Lecture 33 Pandas File Handling: The .csv file format Lecture 34 Pandas File Handling: The .xlsx file format Lecture 35 Pandas File Handling: SQL-database files Lecture 36 Pandas Operations & Techniques: Overview Lecture 37 Pandas Operations & Techniques: Object Inspection Lecture 38 Pandas Operations & Techniques: DataFrame Inspection Lecture 39 Pandas Operations & Techniques: Column Selections Lecture 40 Pandas Operations & Techniques: Row Selections Lecture 41 Pandas Operations & Techniques: Conditional Selections Lecture 42 Pandas Operations & Techniques: Scalers and Standardization. Lecture 43 Pandas Operations & Techniques: Concatenate DataFrames Lecture 44 Pandas Operations & Techniques: Joining DataFrames Lecture 45 Pandas Operations & Techniques: Merging DataFrames Lecture 46 Pandas Operations & Techniques: Transpose & Pivot Functions Lecture 47 Pandas Data Preparation I: Overview & workflow Lecture 48 Pandas Data Preparation II: Edit DataFrame labels Lecture 49 Pandas Data Preparation III: Duplicates Lecture 50 Pandas Data Preparation IV: Missing Data & Imputation Lecture 51 Pandas Data Preparation V: Data Binnings [Extra Video] Lecture 52 Pandas Data Preparation VI: Indicator Features [Extra Video] Lecture 53 Pandas Data Description I: Overview Lecture 54 Pandas Data Description II: Sorting and Ranking Lecture 55 Pandas Data Description III: Descriptive Statistics Lecture 56 Pandas Data Description IV: Crosstabulations & Groupings Lecture 57 Pandas Data Visualization I: Overview Lecture 58 Pandas Data Visualization II: Histograms Lecture 59 Pandas Data Visualization III: Boxplots Lecture 60 Pandas Data Visualization IV: Scatterplots Lecture 61 Pandas Data Visualization V: Pie Charts Lecture 62 Pandas Data Visualization VI: Line plots Section 4: Regression and Prediction with Machine Learning models Lecture 63 Regression, Prediction, and Supervised Learning. Section Overview (I) Lecture 64 The Traditional Simple Regression Model (II) Lecture 65 The Traditional Simple Regression Model (III) Lecture 66 Some practical and useful modelling concepts (IV) Lecture 67 Some practical and useful modelling concepts (V) Lecture 68 Linear Multiple Regression model (VI) Lecture 69 Linear Multiple Regression model (VII) Lecture 70 Multivariate Polynomial Multiple Regression models (VIII) Lecture 71 Multivariate Polynomial Multiple Regression models (VIIII) Lecture 72 Regression Regularization, Lasso and Ridge models (X) Lecture 73 Decision Tree Regression models (XI) Lecture 74 Random Forest Regression (XII) Lecture 75 Voting Regression (XIII) Section 5: Classification with Machine Learning models Lecture 76 Classification and Supervised Learning, overview Lecture 77 Logistic Regression Classifier Lecture 78 The Naive Bayes Classifier Lecture 79 The Decision Tree Classifier Lecture 80 The Random Forest Classifier Lecture 81 Linear Discriminant Analysis (LDA) [Extra Video] Lecture 82 The Voting Classifier Section 6: Cluster Analysis and Unsupervised Learning Lecture 83 Cluster Analysis, an overview Lecture 84 K-Means Cluster Analysis, and an introduction to auto-updated K-means algorithms Lecture 85 Density-Based Spatial Clustering of Applications with Noise (DBSCAN) Lecture 86 Four Hierarchical Clustering algorithms Section 7: Advanced Machine Learning models and tasks Lecture 87 Overview Lecture 88 Artificial Neural Networks, Feedforward Networks, and the Multi-Layer Perceptron Lecture 89 Feedforward Multi-Layer Perceptrons for Classification tasks Lecture 90 Feedforward Multi-Layer Perceptrons for Prediction tasks Section 8: Text Mining and NLP Lecture 91 Text Mining and NLP introduction Lecture 92 Text Mining Tasks Lecture 93 Text Mining Process Lecture 94 Text Indexing Process Lecture 95 The Tokenization Process Lecture 96 Spelling correction and stop words Lecture 97 Lemmatization and Stemming Lecture 98 The Bag of Words Data Structure and some models Lecture 99 The TF-IDF Data Structure and some models Lecture 100 The N-grams Data Structure Lecture 101 Attention-based models and Generative Pre-trained Transformer models Lecture 102 Emotion Mining and Sentiment Analysis This course is for you, regardless if you are a beginner or experienced Data Scientist, regardless if you have a Ph.D., or no education or experience at all. ![]() |