Deep Learning with TensorFlow 2.0 Course Syllabus

Full curriculum breakdown — modules, lessons, estimated time, and outcomes.

This course provides a hands-on introduction to deep learning with TensorFlow 2.0, tailored for beginners interested in applying machine learning to business intelligence. Over approximately 6 hours of structured content, you’ll progress through foundational concepts, practical modeling, and a final capstone project. Each module blends theory with real-world applications, ensuring you can derive actionable insights from data using AI tools.

Module 1: Introduction to Machine Learning in Business

Estimated time: 0.5 hours

  • Overview of machine learning applications in business intelligence
  • Role of TensorFlow in data-driven decision-making
  • Introduction to Keras and deep learning for business outcomes

Module 2: Preparing Business Data for ML Models

Estimated time: 0.75 hours

  • Data preprocessing and cleaning techniques
  • Feature engineering for business datasets
  • Exploratory Data Analysis (EDA) using Python tools

Module 3: Regression Analysis for Business Forecasting

Estimated time: 1 hour

  • Linear regression models with Keras
  • Logistic regression for business trend prediction
  • Forecasting sales, revenue, and customer behavior

Module 4: Classification Models for Decision-Making

Estimated time: 1 hour

  • Building classification models in TensorFlow
  • Evaluating model performance
  • Customer segmentation and churn prediction use cases

Module 5: Clustering and Unsupervised Learning

Estimated time: 0.75 hours

  • Introduction to K-Means clustering
  • Hierarchical clustering for business data
  • Identifying hidden patterns in customers and products

Module 6: Final Project

Estimated time: 1.25 hours

  • End-to-end machine learning project in business intelligence
  • Deploying models to solve a real-world business challenge
  • Presenting results and measuring ROI of ML applications

Prerequisites

  • Basic understanding of Python programming
  • Familiarity with fundamental data science concepts
  • No prior deep learning experience required

What You'll Be Able to Do After

  • Understand how machine learning enhances business intelligence
  • Build and train ML models using TensorFlow and Keras
  • Apply regression, classification, and clustering to business problems
  • Analyze business datasets using AI-driven techniques
  • Deploy machine learning solutions to improve KPIs and performance
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