All-in-One:Machine Learning,DL,NLP,AWS Deply [Hindi][Python]

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All-in-One:Machine Learning,DL,NLP,AWS Deply [Hindi][Python] provided by Udemy is a comprehensive online course, which lasts for 18 hours worth of material. All-in-One:Machine Learning,DL,NLP,AWS Deply [Hindi][Python] is taught by Rishi Bansal. Upon completion of the course, you can receive an e-certificate from Udemy. The course is taught in Englishand is Paid Course. Visit the course page at Udemy for detailed price information.

Overview
  • Complete hands-on Machine Learning Course with Data Science, NLP, Deep Learning and Artificial Intelligence

    What you'll learn:

    • Master in creating Machine Learning Models on Python
    • Visualizing various ML Models wherever possible to develop a better understanding about it.
    • How to Analyse the Data, Clean it and Prepare (Data Preprocessing Techniques) it to feed into Machine Learning Models.
    • Learn the most Basic Mathematics behind Simple Linear Regression and its Best fit line.
    • What is Gradient Descent, how it works Internally with full Mathematical explanation.
    • Make predictions using Simple Linear Regression, Multiple Linear Regression.
    • Deploy your own model on AWS using Flask so that anyone can access it and get the prediction.
    • Make predictions using Logistic Regression, K-Nearest Neighbours and Naive Bayes.
    • Fundamental Concept of Deep Learning and Natural Language Processing. Python Code is include at some place for explanation.
    • Regularisation and idea behind it. See it in action using Lasso and Ridge Regression.

    This course is designed to cover maximum concepts of machine learning a-z. Anyone can opt for this course. No prior understanding of machine learning is required.


    Bonus introductions include natural language processing and deep learning.


    Below Topics are covered

    Chapter - Introduction to Machine Learning

    - Machine Learning?

    - Types of Machine Learning


    Chapter - Setup Environment

    - Installing Anaconda, how to use Spyder and Jupiter Notebook

    - Installing Libraries


    Chapter - Creating Environment on cloud (AWS)

    - Creating EC2, connecting to EC2

    - Installing libraries, transferring files to EC2 instance, executing python scripts


    Chapter - Data Preprocessing

    - Null Values

    - Correlated Feature check

    - Data Molding

    - Imputing

    - Scaling

    - Label Encoder

    - On-Hot Encoder


    Chapter - Supervised Learning: Regression

    - Simple Linear Regression

    - Minimizing Cost Function - Ordinary Least Square(OLS), Gradient Descent

    - Assumptions of Linear Regression, Dummy Variable

    - Multiple Linear Regression

    - Regression Model Performance - R-Square

    - Polynomial Linear Regression


    Chapter - Supervised Learning: Classification

    - Logistic Regression

    - K-Nearest Neighbours

    - Naive Bayes

    - Saving and Loading ML Models

    - Classification Model Performance - Confusion Matrix


    Chapter: UnSupervised Learning: Clustering

    - Partitionaing Algorithm: K-Means Algorithm, Random Initialization Trap, Elbow Method

    - Hierarchical Clustering: Agglomerative, Dendogram

    - Density Based Clustering: DBSCAN

    - Measuring UnSupervised Clusters Performace - Silhouette Index


    Chapter: UnSupervised Learning: Association Rule

    - Apriori Algorthm

    - Association Rule Mining


    Chapter: Deploy Machine Learning Model using Flask

    - Understanding the flow

    - Serverside and Clientside coding, Setup Flask on AWS, sending request and getting response back from flask server


    Chapter: Non-Linear Supervised Algorithm: Decision Tree and Support Vector Machines

    - Decision Tree Regression

    - Decision Tree Classification

    - Support Vector Machines(SVM) - Classification

    - Kernel SVM, Soft Margin, Kernel Trick


    Chapter - Natural Language Processing

    Below Text Preprocessing Techniques with python Code

    - Tokenization, Stop Words Removal, N-Grams, Stemming, Word Sense Disambiguation

    - Count Vectorizer, Tfidf Vectorizer. Hashing Vector

    - Case Study - Spam Filter


    Chapter - Deep Learning

    - Artificial Neural Networks, Hidden Layer, Activation function

    - Forward and Backward Propagation

    - Implementing Gate in python using perceptron


    Chapter: Regularization, Lasso Regression, Ridge Regression

    - Overfitting, Underfitting

    - Bias, Variance

    - Regularization

    - L1 & L2 Loss Function

    - Lasso and Ridge Regression


    Chapter: Dimensionality Reduction

    - Feature Selection - Forward and Backward

    - Feature Extraction - PCA, LDA


    Chapter: Ensemble Methods: Bagging and Boosting

    - Bagging - Random Forest (Regression and Classification)

    - Boosting - Gradient Boosting (Regression and Classification)