• IT Skills
  • Register
  • FAQs
  • Contact
  • Time Zone

AI & Machine Learning with Python

Batch Price From £299 (approx. $375.35 USD) View Dates & Prices Short course on Data Science with Python
Total Duration: 12 Hours
Course level: Beginner to Intermediate
Delivery Method: Instructor Led Online Training
Certification: Certificate of Completion will be provided after completing the course

Course Overview

This course is designed to provide students with the knowledge and skills needed to perform Artificial Intelligence (AI) and Machine Learning using Python programming language. Students will learn to apply machine learning and deep learning algorithms using the libraries such as scikit-learn, Kears, and Tensorflow.

Learning Objectives:

  • Understand the fundamental concepts of Artificial Intelligence (AI) and machine learning
  • Build predictive models using machine learning algorithms such as linear regression, logistic regression, decision trees, and random forests
  • Understand the basics of deep learning and its applications in Python

Requirements

Basic programming knowledge in Python, familiarity with libraries like Numpy, Pandas, and Matplotlib. Our Python Programming for Beginners and Data Analysis with Python Training Courses cover all of the prerequisites.

Course Dates, Prices & Enrolment

All Training Physical Classes Virtual Classes
Time Zone:
Training MethodDates and TimesPrice 
Online Training using Zoom 22 Jan 2024 - 02 Feb 2024
Mon, Wed & Fri (2 wks)
10:00 AM - 12:00 PM ET
£299 £360
(approx. $375.35 USD)
Enrol Now
Online Training using Zoom 26 Feb 2024 - 08 Mar 2024
Mon, Wed & Fri (2 wks)
10:00 AM - 12:00 PM ET
£360
(approx. $451.93 USD)
Enrol Now

Course Content

  1. Introduction to Machine Learning in Python
    • Overview of machine learning
    • Introduction to Python for machine learning
    • Introduction to Google Colab Notebook
  2. Machine Learning Basics
    • Introduction of Overfitting and Underfitting
    • Class Imbalance and its solution
    • Download the dataset from Kaggle
    • Data splitting and data preparation for the Mchine learning model
    • Machine learning Basics and Types
    • Supervised, Unsupervised, Reinforcement learning with example
  3. Supervised Learning Algorithms
    • Linear regression
    • Logistic regression
    • Decision trees and random forests
    • Project: Wine Quality Predictions
  4. Unsupervised Learning Algorithms
    • K-means clustering
    • Hierarchical clustering
    • Dimensionality reduction
    • Project: Iris Classification
  5. Model Evaluation and Selection
    • Model evaluation metrics
    • Cross-validation
    • Model selection techniques
    • Ensemble Model
    • Model save and load
  6. Deep Learning with Keras and TensorFlow
    • Introduction to deep learning
    • Neural networks
    • Keras and TensorFlow
  7. Convolutional Neural Networks (CNN)
    • CNN basics
    • CNN implementation using Keras
    • Project: Cats and Dogs Classification
  8. Recurrent Neural Networks (RNN)
    • RNN basics
    • RNN implementation using Keras
    • Project: Sentiment analysis using text data
  9. Real-world Examples
    • Some real-life business applications of Machine learning
    • Q&A and course feedback

Share This Course

Save Money with Packages

SAVE up to 20% by booking this course with other related courses as shown below:

Python Data Analytics, AI & ML Immersive

£1,312 (save £328)

This package combines
Find out more & book now

Newsletter Sign-up

Have a Question?