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⇱ Applied Data Science - Live


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Applied Data Science - Live

Live Course
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71k+ interested Geeks

Become job-ready with our end-to-end ML program covering: data preparation, supervised and unsupervised modeling, NLP, evaluation, tuning and much more with deployment built through projects.

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Beginner to Advanced
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3 Seats Left
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Analyze, visualize & realize — your Data Science career
Starts here!!

For further queries reach out via Call/WhatsApp:
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Course Overview

KeyHighlights

  • Comprehensive Program: Covers all key aspects of Data Science.
  • Youll have one year of access to premium pre-recorded lectures, companion articles, and practice problems so you can learn at your own pace.
  • Skill Assessments: Participate in 2+ contests.
  • Knowledge Tests: Complete 15+ MCQ tests.

Prerequisites

  • Basic Python Programming: Familiarity with data types, loops, functions, and libraries.
  • Foundational Mathematics: A grasp of basic concepts in Linear Algebra, Probability, and Statistics.
  • Data Analytics: Knowledge of data cleaning, visualization and basic transformation.

Course Content

01Week 1: Python Basics

Class 1: Getting Started with Python

  • Install Python; set up Jupyter, Colab, and Kaggle

  • Learn basic syntax: Variables, data types, loops, conditionals, and error handling

  • Introduction to GitHub and version control

Class 2: Python Data Structures

  • Work with lists, tuples, dictionaries, and sets

  • Write functions (including lambda expressions) and perform file I/O (CSV, text)

  • Practice exercises on manipulating lists and dictionaries

02Week 2: Data Handling & Visualization

Class 1: NumPy & Pandas

  • Create and manipulate NumPy arrays: Slicing, vectorization, and broadcasting

  • Use Pandas for merging, cleaning, handling missing data, and performing descriptive statistics

  • Reference: The NumPy Array: A Structure for Efficient Numerical Computation (van der Walt et al., 2011)

Class 2: Data Plotting & Simple Transformations

  • Plot data using Matplotlib and Seaborn (line, bar, scatter, and histogram plots)

  • Apply basic feature transformations: Scaling (Standard/MinMax) and encoding (one-hot, label)

  • Project: DataViz Explorer - Clean and visualize a dataset

03Week 3: Feature Engineering & ML Basics

Class 1: Feature Engineering

  • Understand why transforming raw data is important

  • Apply key techniques: Log transform, binning, and polynomial features (with simple math)

  • Encode categorical data using one-hot, label, and target encoding

  • Project: Feature Mastery - Implement and compare feature transformation techniques

Class 2: Building an ML Pipeline

  • Overview of supervised vs. unsupervised learning

  • Learn the steps in the ML workflow: Preprocessing, training, validation, and testing

  • Understand data splitting methods and the rationale behind cross-validation

  • Performance Metrics:

    • Classification: Accuracy, Precision, Recall, F1 Score, ROC AUC, Confusion Matrix

    • Regression: MSE, RMSE, MAE, R Square, adjusted R Square

  • Project: ML Basics Pipeline - Build a simple pipeline on a toy dataset and evaluate its performance

04Week 4: Regression Models

Class 1: Linear Regression

  • Derive the least squares solution and MSE cost function

  • Explain gradient descent: Derivatives, update rules, and learning rate

  • Project: Linear Predictor - Code linear regression from scratch and compare results with scikit-learn; evaluate using MSE, RMSE, and R Square

  • Reference: Learning Representations by Back-Propagating Errors (Rumelhart et al., 1986)

Class 2: Logistic Regression

  • Understand the sigmoid function and binary cross-entropy loss (with mathematical explanation)

  • Project: Binary Classifier - Implement logistic regression (from scratch and via scikit-learn); evaluate using confusion matrix, accuracy, precision, and recall

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Testimonials

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I found the course to be very informative and well-structured. The materials and resources provided were helpful and gave me a solid understanding of ...
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👁 Prateek Singh
Prateek Singh
Placed in Ericsson Global India Limited
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This course helped me enhance my data analytics skills, enabling me to analyze large datasets effectively, derive meaningful insights, and make inform...
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👁 Sagar Patle
Sagar Patle
Got Placed at Quantity kiosk Technology
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Before joining the Geeks for Geeks "Data Science live" course, I had only a basic knowledge of python. But after joining the live classes I acquired a...
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👁 ABDULLAH FAZILI
ABDULLAH FAZILI
Placed at GeeksforGeeks
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Learning will never become old, you must update yourself over time, and it will improve every aspect of life. Great thanks to GeeksforGeeks for qualit...
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👁 Ram Sharma
Ram Sharma
Placed at The Bharat Groups
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As a newbie in the field of Data Science, Python, and Machine Learning, this course was extremely helpful to me in a variety of ways. First, it was so...
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👁 Eshant Das
Eshant Das
Placed at GeeksforGeeks
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The "Complete Machine Learning and Data Science Program" offered a robust and thorough foundation in both the theoretical and practical aspects of mac...
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👁 Satti Satya Reddy
Satti Satya Reddy
Placed at SHIPGLOBAL

Frequently Asked Questions

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