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Complete Data Science & Machine Learning Course - 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: Complete Data Science & Machine Learning Course (/Thread-Complete-Data-Science-Machine-Learning-Course) |
Complete Data Science & Machine Learning Course - BaDshaH - 05-13-2024 ![]() Published 5/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 1.23 GB | Duration: 4h 12m Learn Complete Data Science & Machine Learning Course What you'll learn Master the essential concepts, techniques, and tools of data science and machine learning. Acquire hands-on experience with Python programming and its libraries for data manipulation, analysis, and visualization. Build and evaluate predictive models using a variety of machine learning algorithms and techniques. Complete Data Science & Machine Learning Course Requirements python installed Description Course Title: Complete Data Science and Machine Learning CourseCourse Description:Welcome to the "Complete Data Science and Machine Learning Course"! In this comprehensive course, you will embark on a journey to master the fundamentals of data science and machine learning, from data preprocessing and exploratory data analysis to building predictive models and deploying them into production. Whether you're a beginner or an experienced professional, this course will provide you with the knowledge and skills needed to succeed in the dynamic field of data science and machine learning.Class Overview:Introduction to Data Science and Machine Learning:Understand the principles and concepts of data science and machine learning.Explore real-world applications and use cases of data science across various industries.Python Fundamentals for Data Science:Learn the basics of Python programming language and its libraries for data science, including NumPy, Pandas, and Matplotlib.Master data manipulation, analysis, and visualization techniques using Python.Data Preprocessing and Cleaning:Understand the importance of data preprocessing and cleaning in the data science workflow.Learn techniques for handling missing data, outliers, and inconsistencies in datasets.Exploratory Data Analysis (EDA) erform exploratory data analysis to gain insights into the underlying patterns and relationships in the data.Visualize data distributions, correlations, and trends using statistical methods and visualization tools.Feature Engineering and Selection:Engineer new features and transform existing ones to improve model performance.Select relevant features using techniques such as feature importance ranking and dimensionality reduction.Model Building and Evaluation:Build predictive models using machine learning algorithms such as linear regression, logistic regression, decision trees, random forests, and gradient boosting.Evaluate model performance using appropriate metrics and techniques, including cross-validation and hyperparameter tuning.Advanced Machine Learning Techniques ive into advanced machine learning techniques such as support vector machines (SVM), neural networks, and ensemble methods.Model Deployment and Productionization eploy trained machine learning models into production environments using containerization and cloud services.Monitor model performance, scalability, and reliability in production and make necessary adjustments.Enroll now and unlock the full potential of data science and machine learning with the Complete Data Science and Machine Learning Course!Overview Section 1: Introduction To Complete Data Science & Machine Learning Course Lecture 1 Introduction To Course Section 2: Complete Python Programming Course Lecture 2 Python Complete Course Introduction Lecture 3 Python Class 1 : Introduction To Python Lecture 4 Python Class 2 : Setting Python Environment Lecture 5 Python Class 3 : Introduction To Variables Lecture 6 Python Class 4 : Introduction To Keywords Lecture 7 Python Class 5 : Introduction To Datatypes Lecture 8 Python Class 6 : ID Function Lecture 9 Python Class 7 : Arithmetic Operator Lecture 10 Python Class 8 : Logical Operator Lecture 11 Python Class 9 : Comparison Operator Lecture 12 Python Class 10 : Bitwise Operator Lecture 13 Python Class 11 : Membership Operator Lecture 14 Python Class 12 : Identity Operator Lecture 15 Python Class 13 : Conditional Statements Lecture 16 Python Class 14 : For Loop and Range Function Lecture 17 Python Class 15 : While Loops Lecture 18 Python Class 16 : Break and Continue Lecture 19 Python Class 17 : Function Lecture 20 Python Class 18 : Try Except Finally Blocks Lecture 21 Python Class 19 : String and Functions Lecture 22 Python Class 20 : List and Functions Lecture 23 Python Class 21 : Tuple and Functions Lecture 24 Python Class 22 : Dictionary and Functions Lecture 25 Python Class 23 : Class and Object Lecture 26 Python Class 24 : Class Methods Lecture 27 Python Class 25 : Inheritance and its types Lecture 28 Python Class 26 : Polymorphism and its types Lecture 29 Python Class 27 : Encapsulation and Access Modifiers Lecture 30 Python Class 28 : Abstraction Lecture 31 Python Class 29 : Mini Project Section 3: Complete Data Science Course Lecture 32 Complete Data Science Course Lecture 33 Numpy Complete Course Lecture 34 Numpy Class 1 : Import and Install Lecture 35 Numpy Class 2 : Array and its Types Lecture 36 Numpy Class 3 : Datatypes Lecture 37 Numpy Class 4 : NDIM Function Lecture 38 Numpy Class 5 : ARANGE Function Lecture 39 Numpy Class 6 : CONCATENATE Function Lecture 40 Numpy Class 7 : NDMIN Function Lecture 41 Numpy Class 8 : NDITER Function Lecture 42 Numpy Class 9 : All Functions Lecture 43 Pandas Class 1 : Import Dataset Lecture 44 Pandas Class 2 : Head & Tail Function Lecture 45 Pandas Class 3 : Info Function Lecture 46 Pandas Class 4 : Drop na Function Lecture 47 Pandas Class 5 : Fill na Function Lecture 48 Pandas Class 6 : Drop Duplicates Function Lecture 49 Pandas Class 7 : Replace Values Function Lecture 50 Matplotlib Class 1 : Import Dataset Lecture 51 Matplotlib Class 2 : Show Function Lecture 52 Matplotlib Class 3 : Marker Function Lecture 53 Matplotlib Class 4 : Xlabel Ylabel Function Lecture 54 Matplotlib Class 5 : Title Function Lecture 55 Matplotlib Class 6 : Linestyle Linewidth Function Lecture 56 Matplotlib Class 7 : Barplot Section 4: Complete Machine Learning Course Lecture 57 Complete Machine Learning Introduction Lecture 58 Machine Learning Class 1 : Linear Regression Lecture 59 Machine Learning Class 2 : Logistics Regression Lecture 60 Machine Learning Class 3 : Support Vector Machine Lecture 61 Machine Learning Class 4 : KNN Lecture 62 Machine Learning Class 5 : K Means Clustering Lecture 63 Machine Learning Class 6 : Naive Bayes Lecture 64 Machine Learning Class 7 : Decision Tree Classifier Lecture 65 Machine Learning Class 8 : Random Forest Students and professionals interested in pursuing a career in data science, machine learning, or artificial intelligence.,Professionals seeking to enhance their skills and stay competitive in the rapidly evolving field of data science and machine learning. 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