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Data Science for AI and Machine Learning Using Python

  • Development
  • Apr 26, 2025
SynopsisData Science for AI and Machine Learning Using Python, availa...
Data Science for AI and Machine Learning Using Python  No.1

Data Science for AI and Machine Learning Using Python, available at $19.99, has an average rating of 4.2, with 64 lectures, based on 31 reviews, and has 211 subscribers.

You will learn about 1. The content (80% hands on and 20% theory) will prepare you to work independently on Data Science (AI and Machine learning) project 2. Foundation of Machine learning 3. Supervised Machine learning – Regression 4. Supervised Machine learning – Classifications 5. Unsupervised Machine learning (Clustering, KNN, PCA) 6. Text Analytics 7. Time Series This course is ideal for individuals who are 1. Want to work in AI/ML. 2. Already working in AI/ML. 3. Like to bring Insight from Data It is particularly useful for 1. Want to work in AI/ML. 2. Already working in AI/ML. 3. Like to bring Insight from Data.

Enroll now: Data Science for AI and Machine Learning Using Python

Summary

Title: Data Science for AI and Machine Learning Using Python

Price: $19.99

Average Rating: 4.2

Number of Lectures: 64

Number of Published Lectures: 64

Number of Curriculum Items: 64

Number of Published Curriculum Objects: 64

Original Price: $22.99

Quality Status: approved

Status: Live

What You Will Learn

  • 1. The content (80% hands on and 20% theory) will prepare you to work independently on Data Science (AI and Machine learning) project
  • 2. Foundation of Machine learning
  • 3. Supervised Machine learning – Regression
  • 4. Supervised Machine learning – Classifications
  • 5. Unsupervised Machine learning (Clustering, KNN, PCA)
  • 6. Text Analytics
  • 7. Time Series
  • Who Should Attend

  • 1. Want to work in AI/ML. 2. Already working in AI/ML. 3. Like to bring Insight from Data
  • Target Audiences

  • 1. Want to work in AI/ML. 2. Already working in AI/ML. 3. Like to bring Insight from Data
  • Becoming Data Science professional (Data Scientist) is a long journey and need guidance from?seasoned Data Science professional (Chief Data Scientist). We are trying to manage the journey such a way that you learn right skills and in the?right way. The whole concepts of the course are?to make you ready for Data Science projects, mainly in Machine learning and AI projects. You will learn

    1. Foundation of Machine learning

    2. Supervised Machine learning – Regression

    3. Supervised Machine learning – Classifications

    4. Unsupervised Machine learning (Clustering, KNN, PCA)

    5. Text Analytics

    6. Time Series

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Introduction

    Chapter 2: Data Science – Brief Introduction

    Lecture 1: Data Science – Brief Introduction

    Chapter 3: Foundation – Panda

    Lecture 1: Header

    Lecture 2: Panda read csv

    Lecture 3: datatype and statistics

    Lecture 4: Panda column operations

    Lecture 5: Panda operations

    Lecture 6: Merge and concat

    Lecture 7: Tables

    Lecture 8: Graphs

    Chapter 4: Foundation – Numpy

    Lecture 1: One Dimension

    Lecture 2: Two Dimension

    Lecture 3: Two Dimension stacking

    Chapter 5: Foundation – Descriptive Analysis

    Lecture 1: Data Dictionary

    Lecture 2: Single numeric descriptive analysis

    Lecture 3: Double numeric descriptive analysis

    Lecture 4: Categorical and all Numeric Descriptive Analysis

    Chapter 6: Regression

    Lecture 1: Introduction and Preprocessing

    Lecture 2: Feature Selection Regularisation

    Lecture 3: Residual Analysis

    Lecture 4: Data Read

    Lecture 5: Normality test and BoxCox transformation

    Lecture 6: Linear Regression structure

    Lecture 7: Linear Regression for Numeric features

    Lecture 8: HotEncoding and Scaling

    Lecture 9: Linear Regression with HotEncoding and Scaling Data

    Lecture 10: Generic Treeflow in Prediction

    Lecture 11: CatBoost

    Lecture 12: CatBoost Hyperparameter Tuning

    Lecture 13: XGBoost

    Lecture 14: XGBoost setup DMatrix

    Lecture 15: XGBoost Modelling

    Chapter 7: Classification

    Lecture 1: Classification Introduction

    Lecture 2: Classification: Code and data load

    Lecture 3: Classification: Random Forest

    Lecture 4: Classification: Random Forest code

    Lecture 5: Classification: CatBoost code

    Lecture 6: Classification: One class SVM code

    Lecture 7: Classification:Logistic Regression

    Lecture 8: Classification: Logistic Regression code

    Chapter 8: How to know models are good enough using Bias vs Variance

    Lecture 1: How to know models are good enough Bias vs Variance

    Chapter 9: Clustering

    Lecture 1: Clustering: Introduction

    Lecture 2: Clustering: KMeans

    Lecture 3: Clustering: Agglomerative

    Lecture 4: Clustering: KNN

    Lecture 5: Clustering:KNN using Iris

    Chapter 10: Application of Unsupervised and Supervised Analytics

    Lecture 1: Application of Unsupervised and Supervised Analytics

    Chapter 11: Text Analytics

    Lecture 1: Text Analytics: Introduction

    Lecture 2: Text Analytics: NLTK Installation

    Lecture 3: Text Analytics: Tokenization TextBlob

    Lecture 4: Named-entity recognition (NER)-Stemming-Lemmatization

    Lecture 5: Word Cloud

    Chapter 12: Time Series

    Lecture 1: Time Series: Introduction

    Lecture 2: Time Series: Basic Statistics

    Lecture 3: Time Series: Dickey-Fuller and Decomposition

    Lecture 4: Time Series: Missing value imputation

    Lecture 5: Time Series: Anomaly detection

    Lecture 6: Time Series: Anomaly detection code

    Lecture 7: Time Series: ARIMA_Forecasting

    Lecture 8: Time Series: ARIMA Forecasting code

    Lecture 9: Time Series: SARIMAX Forecasting Tunning

    Lecture 10: Time Series: SARIMAX Forecasting code

    Lecture 11: Time Series: Prophet

    Lecture 12: Time Series: Prophet code

    Instructors

  • Data Science for AI and Machine Learning Using Python  No.2
    Shiv Onkar Deepak Kumar
    AI Researcher and Consultant, Chief Data Scientist
  • Rating Distribution

  • 1 stars: 1 votes
  • 2 stars: 1 votes
  • 3 stars: 9 votes
  • 4 stars: 6 votes
  • 5 stars: 14 votes
  • Frequently Asked Questions

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