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AI ML w Python-2022-Practical Hands On with Minimum Maths

  • Development
  • Apr 19, 2025
SynopsisAI & ML w/ Python-2022-Practical Hands On with Minimum Ma...
AI ML w Python-2022-Practical Hands On with Minimum Maths  No.1

AI & ML w/ Python-2022-Practical Hands On with Minimum Maths, available at $59.99, has an average rating of 4.45, with 55 lectures, based on 55 reviews, and has 260 subscribers.

You will learn about Develop an ML Model using Python, Perform Error Analysis and Make Predictions. Develop your first ML Model – Hello World for AI and ML. Develop your first complete ML project. Understand basics of Machine Learning. Classifiers and Models in ML. Learn Supervised, Unsupervised, Regression, Classification, Clustering in ML. Learn RMSE method, Confusion matrix, Classification report in ML. Top Python libraries for Machine Learning. SK-learn library for ML with Python. Project 1: Complete ML project of IRIS flower dataset. Project 2: Complete ML project of Digit recognition system. This course is ideal for individuals who are Beginners with no or less experience with programming and curious for Data science. or Beginners curious for AI (Artificial Intelligence) and ML (Machine Learning). or Corporate professionals who wants to understand basic development in AI and ML. or Trainers and teachers who wants a start in Artificial Intelligene. or Engineering students who wants to learn AI and ML. It is particularly useful for Beginners with no or less experience with programming and curious for Data science. or Beginners curious for AI (Artificial Intelligence) and ML (Machine Learning). or Corporate professionals who wants to understand basic development in AI and ML. or Trainers and teachers who wants a start in Artificial Intelligene. or Engineering students who wants to learn AI and ML.

Enroll now: AI & ML w/ Python-2022-Practical Hands On with Minimum Maths

Summary

Title: AI & ML w/ Python-2022-Practical Hands On with Minimum Maths

Price: $59.99

Average Rating: 4.45

Number of Lectures: 55

Number of Published Lectures: 53

Number of Curriculum Items: 55

Number of Published Curriculum Objects: 53

Original Price: $29.99

Quality Status: approved

Status: Live

What You Will Learn

  • Develop an ML Model using Python, Perform Error Analysis and Make Predictions.
  • Develop your first ML Model – Hello World for AI and ML.
  • Develop your first complete ML project. Understand basics of Machine Learning.
  • Classifiers and Models in ML.
  • Learn Supervised, Unsupervised, Regression, Classification, Clustering in ML.
  • Learn RMSE method, Confusion matrix, Classification report in ML.
  • Top Python libraries for Machine Learning.
  • SK-learn library for ML with Python.
  • Project 1: Complete ML project of IRIS flower dataset.
  • Project 2: Complete ML project of Digit recognition system.
  • Who Should Attend

  • Beginners with no or less experience with programming and curious for Data science.
  • Beginners curious for AI (Artificial Intelligence) and ML (Machine Learning).
  • Corporate professionals who wants to understand basic development in AI and ML.
  • Trainers and teachers who wants a start in Artificial Intelligene.
  • Engineering students who wants to learn AI and ML.
  • Target Audiences

  • Beginners with no or less experience with programming and curious for Data science.
  • Beginners curious for AI (Artificial Intelligence) and ML (Machine Learning).
  • Corporate professionals who wants to understand basic development in AI and ML.
  • Trainers and teachers who wants a start in Artificial Intelligene.
  • Engineering students who wants to learn AI and ML.
  • [ 90% of the Course has been updated and rest will be updated soon. Enroll Now!!! ]

    Artificial Intelligence and Machine Learning doesn’t have to be hard and complex if we approach it in right way. Sometimes, we need to have a complete working model to understand the basic concept. And this course is going to deliver you the same.

    Course objective:

    The sole objective of this course is to get you introduced with AI (Artificial Intelligence) and ML (Machine Learning). All the programs and projects that we are going to develop, are using Python programming language. So, You need Python knowledge.

    If you are not familiar with Python programming language, You can take our FREE course on Python. [This free course of Python is also getting updated.]

    Learning outcomes:

    After completing this course and assignments given to you, you will have:

    1. Multiple programs developed for Machine Learning

    2. Multiple complete projects developed for Machine Learning

    3. A complete ML model developed

    For concept seeker in you, you shall be able to answer these questions comfortably:

    1. What is AI and What is ML?

    2. How AI and ML are different but related?

    3. What are DL, NLP, ANN, DNN etc.?

    4. What is Anaconda, Spyder, Jupyter etc. and how and why do we use them for Machine Learning?

    5. What are classifiers and models in ML?

    6. How to develop programs and projects of Machine Learning?

    For the developer in you, you shall be comfortable with:

    1. Machine learning development environment with Python.

    Course Curriculum

    Chapter 1: Basics of Artificial Intelligence

    Lecture 1: About the course

    Lecture 2: Artificial Intelligence in general

    Lecture 3: Types of Intelligences

    Lecture 4: Definitions of AI

    Lecture 5: AI is more ART than Science

    Lecture 6: Dartmouth conference

    Chapter 2: Basics of Machine Learning

    Lecture 1: Machine Learning and AI

    Lecture 2: Natural Language Processing and AI

    Lecture 3: Deep Learning and ML

    Lecture 4: Artificial Neural Network, Deep NN and DL

    Chapter 3: AI applications – A look

    Lecture 1: A live AI – Teachable machine

    Lecture 2: Do-It-Yourself

    Chapter 4: Basics of Python3 (Bonus section)

    Lecture 1: Enroll in our FREE course on Python

    Chapter 5: Python libraries for ML

    Lecture 1: Modules, Packages and Libraries

    Lecture 2: Python Libraries for ML

    Chapter 6: Anaconda development environment

    Lecture 1: Anaconda distribution package

    Lecture 2: Anaconda package installation

    Lecture 3: Anaconda, Jupyter and Spider

    Chapter 7: Your first ML Model

    Lecture 1: Classifiers and Models

    Lecture 2: Elements of an ML program

    Lecture 3: Your first ML program

    Lecture 4: Detailed discussion on ML program

    Lecture 5: Do-It-Yourself

    Lecture 6: A quick recap

    Chapter 8: Core ML concepts

    Lecture 1: Types of datasets in ML

    Lecture 2: Supervised and Unsupervised learnings

    Lecture 3: Regression, Classification and Clustering Models

    Lecture 4: Mathematical representation of ML models

    Chapter 9: Model Evaluation Techniques

    Lecture 1: Model evaluation methods in general

    Lecture 2: RMSE method for Regression

    Lecture 3: Confusion matrix for Classification

    Chapter 10: Your first complete ML project

    Lecture 1: Developing complete ML project – understanding data set

    Lecture 2: Developing complete ML project – understanding flow of project

    Lecture 3: Developing complete ML project – visualizing data set through Python

    Lecture 4: Developing complete ML project – development

    Lecture 5: Developing complete ML project – concepts explanations

    Lecture 6: Do-It-Yourself

    Lecture 7: Whats next?

    Lecture 8: Congratulations !!!

    Lecture 9: Feedback.

    Chapter 11: Knowledge Bytes

    Lecture 1: Knowledge Byte 1 – Where comes the AI exactly?

    Lecture 2: Knowledge Byte 2 – What is a proper definition for AI?

    Lecture 3: Knowledge Byte 3 – What do we mean by flower of AI?

    Lecture 4: Knowledge Byte 4 – Why AI finds its applications everywhere?

    Lecture 5: Knowledge Byte 5 – What is ML and Non-ML approach?

    Lecture 6: Knowledge Byte 6 – Whats the exact diff bw AI and ML?

    Lecture 7: Knowledge Byte 7 – Whats the difference between ML and DL?

    Lecture 8: Knowledge Byte 8 – What exactly is DL?

    Lecture 9: Knowledge Byte 9 – AI, ML and DL. Whats the difference?

    Lecture 10: Knowledge Byte 10 – ANN, DNN, DL, ML & AI – What connects?

    Lecture 11: Knowledge Byte 11 – What happens (exactly) in an ML progam?

    Lecture 12: Knowledge Byte 12 – Module, Package & Library – A look?

    Lecture 13: Knowledge Byte 13 – A kind of complete Python Library for ML?

    Instructors

  • AI ML w Python-2022-Practical Hands On with Minimum Maths  No.2
    Aalekh Rai
    Founder @ KARD | Sr. Technical Trainer
  • Rating Distribution

  • 1 stars: 2 votes
  • 2 stars: 3 votes
  • 3 stars: 16 votes
  • 4 stars: 13 votes
  • 5 stars: 21 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!