Supervised Machine Learning In Python by EDUCBA Bridging the Gap - 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: Supervised Machine Learning In Python by EDUCBA Bridging the Gap (/Thread-Supervised-Machine-Learning-In-Python-by-EDUCBA-Bridging-the-Gap) |
Supervised Machine Learning In Python by EDUCBA Bridging the Gap - OneDDL - 01-15-2024 Free Download Supervised Machine Learning In Python by EDUCBA Bridging the Gap Published 1/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 5.78 GB | Duration: 8h 22m A practical course about supervised machine learning using Python programming language What you'll learn Python Basics Machine Learning Algorithms like Regression, Classification, Naive Bayes Classifier, Decision Tree, Support Vector Machine Algorithm etc.. Machine learning Concept and Different types of Machine Learning Data Science libraries like Numpy , Pandas , Matplotlib, Scipy, Scikit Learn, Seaborn , Plotly and many more Requirements Python porgramming language and Data pre-processing techniques Description In this practical course, we are going to focus on supervised machine learning and how to apply it in Python programming language. Supervised machine learning is a branch of artificial intelligence whose goal is to create predictive models starting from a dataset. With the proper optimization of the models, it is possible to create mathematical representations of our data in order to extract the information that is hidden inside our database and use it for making inferences and predictions.A very powerful use of supervised machine learning is the calculation of feature importance, which makes us better understand the information behind data and allows us to reduce the dimensionality of our problem considering only the relevant information, discarding all the useless variables. A common approach for calculating feature importance is the SHAP technique.In the realm of cutting-edge technology, machine learning stands at the forefront, revolutionizing industries and transforming the way we interact with the world. From personalized recommendations to autonomous vehicles, machine learning empowers computers to learn from vast amounts of data and make intelligent decisions. If you've ever been captivated by the idea of building intelligent systems, understanding the prerequisites for machine learning is your essential first step.Embarking on a journey into machine learning requires a solid foundation in several key areas. As with any endeavor, building upon a sturdy groundwork paves the way for success. Let us unveil the prerequisites that will equip you with the skills to unravel the mysteries of machine learning and harness its potential to shape the future.Data Science libraries like Numpy , Pandas , Matplotlib, Scipy, Scikit Learn, Seaborn , Plotly and many moreMachine learning Concept and Different types of Machine LearningMachine Learning Algorithms like Regression, Classification, Naive Bayes Classifier, Decision Tree, Support Vector Machine Algorithm etc..Feature engineeringPython Basics Overview Section 1: Supervised Machine Learning in Python Lecture 1 Introduction to Machine Learning Lecture 2 Advantages and Disadvantages of Machine Learning Lecture 3 NumPy Introduction Lecture 4 Features and Installation Lecture 5 NumPy Array Creation Lecture 6 NumPy Array Attributes Lecture 7 NumPy Array Operations Lecture 8 NumPy Array Operations Continue Lecture 9 NumPy Array Unary Operations Lecture 10 Numpy Array Splicing Lecture 11 NumPy Array Shpe Lecture 12 Stacking Together Different Arrays Lecture 13 Splitting one Array into Several Smaller ones Lecture 14 Copies and Views Lecture 15 NumPy Array Indexing Lecture 16 NumPy Array Indexing Continue Lecture 17 NumPy Array Boolean Lecture 18 Introduction to Matlplotlib Lecture 19 Understanding Various Functions of Pyplot Lecture 20 Multiple Figures and Subplots Lecture 21 Intro to Pandas Lecture 22 Intro to Pandas Continue Lecture 23 Data Structure in Pandas Lecture 24 Data Structure in Pandas Continue Lecture 25 Pandas Column Select Lecture 26 Remove Operations Lecture 27 Pandas Arithmetic Operations Lecture 28 Pandas Arithmetic Operations Continue Lecture 29 Introduction to Scikit Learn Lecture 30 Supervised Lecture 31 Unsupervised Learning Lecture 32 Load Data Set Lecture 33 Scikit Example Digits Lecture 34 Digits Dataset Using Matplotlib Lecture 35 Understading Metrics of Predicted Digits Dataset Lecture 36 Persisting Models Lecture 37 K-NN Algorithm with Example Lecture 38 Cross Validation Lecture 39 Cross Validation Techniques Lecture 40 K-Means Clustering Example Lecture 41 Agglomeration Lecture 42 PCA Pipeline Lecture 43 Face Recognition Lecture 44 Face Recognition Output Lecture 45 Right Estimator Lecture 46 Text Data Example Lecture 47 Extracting Features Lecture 48 Occurrences to Frequencies Lecture 49 Classifier Training Lecture 50 Performance Analysis on the Test Set Lecture 51 Parameter Tuning Lecture 52 Language Identifcation Lecture 53 Movie Review Screen Stream Lecture 54 Movie Review Screen Stream Continue Python developers, Data Scientists, Computer engineers, Researchers Students Homepage Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |