What will you in Machine Learning for Absolute Beginners – Level 1 Course
- Introduction to Machine Learning: Understand the basics of machine learning and its applications.
 - Data Preprocessing: Learn how to clean and prepare data for machine learning models.
 - Supervised Learning: Explore algorithms like Linear Regression and K-Nearest Neighbors.
 
- Model Evaluation: Understand how to assess the performance of machine learning models.
 - Practical Applications: Apply learned concepts to real-world datasets and problems.
 
Program Overview
Module 1: Introduction to Machine Learning
⏳ 1 hour
Overview of machine learning and its significance in data science.
Understanding the difference between supervised and unsupervised learning.
Module 2: Data Preprocessing
⏳ 2 hours
Techniques for handling missing data.
Normalization and standardization of data.
Splitting data into training and testing sets.
Module 3: Supervised Learning Algorithms
⏳ 3 hours
Implementing Linear Regression for continuous data prediction.
Applying K-Nearest Neighbors for classification tasks.
Understanding the working principles of these algorithms.
Module 4: Model Evaluation
⏳ 2 hours
Using metrics like Mean Squared Error (MSE) and R-squared for regression models.
Evaluating classification models with accuracy, precision, recall, and F1-score.
Module 5: Practical Applications
⏳ 2 hours
Applying machine learning models to real-world datasets.
Building simple projects to reinforce learning.
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Job Outlook
High Demand for Machine Learning Skills: Machine learning expertise is sought after in various industries, including finance, healthcare, and technology.
Career Opportunities: Roles such as Data Scientist, Machine Learning Engineer, and AI Specialist are in high demand.
Industry Adoption: Companies are increasingly adopting machine learning to enhance decision-making and automate processes.
Specification: Machine Learning for Absolute Beginners – Level 1
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FAQs
- Beginner-friendly, no prerequisites needed.
 - Introduces basic machine learning concepts step by step.
 - Covers supervised learning algorithms like Linear Regression and K-Nearest Neighbors.
 - Provides practical examples for hands-on learning.
 - Suitable for learners from any background.
 
- Data cleaning and preprocessing techniques.
 - Building supervised learning models (Linear Regression, KNN).
 - Evaluating model performance with metrics like MSE and accuracy.
 - Applying models to real-world datasets.
 - Understanding the basics of machine learning workflows.
 
- Prepares learners for entry-level ML roles.
 - Builds portfolio-ready projects.
 - Demonstrates foundational knowledge in AI and ML.
 - Supports further learning in advanced ML topics.
 - Enhances employability in tech, finance, and healthcare industries.
 
- Modules: Introduction, Data Preprocessing, Supervised Learning, Model Evaluation, Practical Applications.
 - Self-paced online learning.
 - Includes hands-on projects and exercises.
 - Clear, beginner-friendly explanations of complex topics.
 - Focuses on practical application rather than theory alone.
 
- Self-paced learning with lifetime access.
 - Average completion: 10–12 hours depending on practice.
 - Certificate awarded upon completion.
 - Certificate can be added to resumes and LinkedIn.
 - Suitable for showcasing beginner-level ML skills professionally.
 

