Applied Machine Learning & Data Science Techniques

Course Duration: 24 hrs
Course Level: Beginner

About Course

Language: English

Duration: 24 hours

Course Description:

This course offers a practical, hands-on journey into machine learning and data science, focused on real-world applications. With a curated blend of key topics—including data exploration, clustering, recommendation engines, regression, decision systems, forecasting, and neural networks—learners will build a strong foundation in solving analytical problems using structured and unstructured data. Through Python-based tools and libraries (like Scikit-learn, Pandas, and TensorFlow), the course emphasizes practical implementation over theory, preparing learners for data-driven roles across industries.

Pre Requisites:

  • Basic programming skills (preferably in Python)
  • Fundamental knowledge of statistics (mean, median, correlation, distributions)
  • Understanding of data types, control flow, and functions
  • Introductory exposure to linear algebra and probability concepts

Course Objectives

By the end of the course, learners will be able to:

  • Explore and visualize datasets to identify patterns, trends, and anomalies
  • Apply clustering techniques (e.g., K-Means, Hierarchical) to group similar data
  • Build recommendation systems using collaborative filtering and content-based techniques
  • Perform regression analysis to model relationships and make predictions
  • Design decision systems using decision trees and rule-based approaches
  • Develop forecasting models to predict time-series data using statistical and ML-based methods
  • Implement basic neural network models for classification and prediction tasks
  • Evaluate and optimize models using appropriate metrics and validation techniques

Contents

  •  Data Exploration & Clustering
  •  Recommendation Systems
  •  Regression Analysis
  •  Decision Systems
  •  Forecasting Systems
  •  Neural Networks

Course Benefits

  • Develop end-to-end skills in building intelligent systems, including recommendation engines and forecasting models
  • Gain experience working with varied machine learning tasks, from unsupervised clustering to neural networks
  • Master practical data science techniques that can be immediately applied to business and industry challenges
  • Build a diverse portfolio of machine learning projects, useful for career advancement or academic growth
  • Prepare for roles such as data analyst, machine learning engineer, or AI practitioner, with hands-on expertise in key tools and techniques

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