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⇱ Introduction to Data Analytics | Coursera


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Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

6 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace
Build toward a degree

Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

6 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace
Build toward a degree

What you'll learn

  • Apply data preprocessing techniques using Python libraries like Pandas and NumPy to clean, transform, and prepare datasets for analysis.

  • Use EDA and ML algorithms to identify patterns, trends & solve real-world data problems through regression, classification and clustering techniques.

  • Evaluate model performance using appropriate metrics and visualise insights through data visualisation tools to effectively communicate findings.

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Recently updated!

May 2026

Assessments

150 assignments

Taught in English

There are 10 modules in this course

Welcome to Introduction to Data Analytics! This course will guide you through the essential techniques for working with data, equipping you with skills used by data experts across industries. You’ll explore how to clean and preprocess data using Python libraries like Pandas and NumPy, laying the groundwork for effective data analysis.

We’ll dive into exploratory data analysis (EDA), where you’ll uncover hidden patterns and insights. You’ll also be introduced to key machine learning algorithms for predicting outcomes and solving real-world problems. Along the way, we’ll cover best practices for evaluating your models and ensuring their reliability. The course also includes hands-on projects to solidify your learning and practical exercises to apply your skills. By the end, you’ll have a robust toolkit for approaching data-driven challenges confidently, whether you're advancing your career or tackling new opportunities in the data field. Join us on this learning journey!

This module provides a comprehensive introduction to data analytics, covering its definition, importance, key components, and industry applications. Students will learn to apply the four types of data analytics (descriptive, diagnostic, predictive, and prescriptive) to solve business problems and make data-driven decisions. They will also analyse real-world use cases, challenges, and future trends in data analytics across various domains. Additionally, the students will gain an understanding of structured, unstructured, semi-structured, quantitative, and qualitative data from primary, secondary, internal, and external sources, and learn how to apply this knowledge to data analytics projects.

What's included

19 videos5 readings16 assignments

19 videosTotal 108 minutes
  • Meet Your Instructor - Prof. Seetha Parameswaran2 minutes
  • Meet Your Instructor - Prof. Aneesh Chivukula1 minute
  • Course Introductory Video3 minutes
  • Definition of Data Analytics7 minutes
  • The Importance of Data Analytics6 minutes
  • Key Components 6 minutes
  • Descriptive Analytics6 minutes
  • Diagnostic Analytics6 minutes
  • Predictive Analytics6 minutes
  • Prescriptive Analytics6 minutes
  • Industry Applications 7 minutes
  • Challenges in Data Analytics6 minutes
  • Structured Data6 minutes
  • Unstructured Data6 minutes
  • Semi-Structured Data7 minutes
  • Quantitative Data7 minutes
  • Qualitative Data7 minutes
  • Primary and Secondary Data Sources6 minutes
  • Internal and External Data Sources6 minutes
5 readingsTotal 70 minutes
  • Course Overview10 minutes
  • Essential Reading: Data Analytics Process15 minutes
  • Essential Reading: Skills Required and Tools and Technologies Used in Data Analytics15 minutes
  • Essential Reading: Use Cases and Applications of Data Analytics15 minutes
  • Essential Reading: Examples of Data and Data Sources15 minutes
16 assignmentsTotal 51 minutes
  • Definition of Data Analytics6 minutes
  • The Importance of Data Analytics3 minutes
  • Key Components 3 minutes
  • Descriptive Analytics3 minutes
  • Diagnostic Analytics3 minutes
  • Predictive Analytics3 minutes
  • Prescriptive Analytics3 minutes
  • Industry Applications 3 minutes
  • Challenges in Data Analytics3 minutes
  • Structured Data3 minutes
  • Unstructured Data3 minutes
  • Semi-Structured Data3 minutes
  • Quantitative Data3 minutes
  • Qualitative Data3 minutes
  • Primary and Secondary Data Sources3 minutes
  • Internal and External Data Sources3 minutes

This module focuses on essential Python concepts and techniques for data analytics. The module introduces basic Python concepts, such as the Python interpreter, Jupyter Notebook, input/output, and indentation, enabling students to start developing Python programs for data analytics. Students will learn to apply Python scalar types, objects, attributes, methods, and operators to create and manipulate data structures. They will also apply control statements and iterations, such as conditional statements and loops, to control the flow of execution and process data efficiently. The module covers the use of regular and lambda functions to create reusable and modular code. Additionally, students will learn to apply file-handling techniques to read from and write to files, facilitating data persistence and external data processing. By the end of this module, students will have the necessary Python skills to perform data manipulation, analysis, and processing tasks.

What's included

21 videos5 readings17 assignments

21 videosTotal 126 minutes
  • Python Interpreter7 minutes
  • Jupyter Python6 minutes
  • Input and Print6 minutes
  • Indentations6 minutes
  • Lesson 1 Demo4 minutes
  • Python Scalar Types 6 minutes
  • Objects 5 minutes
  • Attributes6 minutes
  • Methods5 minutes
  • Operators6 minutes
  • Lesson 2 Demo12 minutes
  • Conditional Statement6 minutes
  • Nested Conditional Statement5 minutes
  • For and While Loops6 minutes
  • Lesson 3 Demo9 minutes
  • Regular Functions7 minutes
  • Lambda Functions7 minutes
  • Lesson 4 Demo4 minutes
  • Reading Files6 minutes
  • Writing Files6 minutes
  • Lesson 5 Demo3 minutes
5 readingsTotal 55 minutes
  • Essential Reading: Indentations in Python15 minutes
  • Essential Reading: Operator Precedence and Indentation in Python10 minutes
  • Essential Reading: Control Statements and Iterations in Python10 minutes
  • Essential Reading: Handling Functions10 minutes
  • Essential Reading: Handling Files10 minutes
17 assignmentsTotal 108 minutes
  • Graded Quiz for Week 1 and 260 minutes
  • Python Interpreter3 minutes
  • Jupyter Python3 minutes
  • Input and Print3 minutes
  • Indentations3 minutes
  • Python Scalar Types 3 minutes
  • Objects 3 minutes
  • Attributes3 minutes
  • Methods3 minutes
  • Operators3 minutes
  • Conditional Statement3 minutes
  • Nested Conditional Statement3 minutes
  • For and While Loops3 minutes
  • Regular Functions3 minutes
  • Lambda Functions3 minutes
  • Reading Files3 minutes
  • Writing Files3 minutes

This module explores essential data structures in Python, covering both immutable and mutable types and the powerful NumPy library. Students will learn to apply tuples and strings, along with their methods, to store and manipulate fixed data. They will also apply lists, dictionaries, and sets, as well as their respective methods and operations, to handle changeable data effectively. The module introduces NumPy, enabling students to create, manipulate, and perform arithmetic operations on NumPy arrays using built-in functions. By the end of this module, students will have a solid understanding of Python data structures and NumPy, equipping them with the necessary tools for efficient data manipulation and numerical computations in data analytics tasks.

What's included

18 videos3 readings15 assignments

18 videosTotal 123 minutes
  • Tuple7 minutes
  • Tuple Methods 5 minutes
  • Strings6 minutes
  • Accessing Strings6 minutes
  • Lesson 1 Demo6 minutes
  • Lists 5 minutes
  • Slicing List6 minutes
  • List Methods7 minutes
  • Dictionary7 minutes
  • Set6 minutes
  • Set Operations6 minutes
  • Lesson 2 Demo11 minutes
  • NumPy Arrays7 minutes
  • NumPy Data Types8 minutes
  • Arithmetic with NumPy6 minutes
  • Indexing and Slicing Arrays6 minutes
  • NumPy Functions7 minutes
  • Lesson 3 Demo12 minutes
3 readingsTotal 45 minutes
  • Essential Reading: Immutable Data Structures15 minutes
  • Essential Reading: Mutable Data Structures15 minutes
  • Essential Reading: NumPy Library15 minutes
15 assignmentsTotal 45 minutes
  • Tuple3 minutes
  • Tuple Methods3 minutes
  • Strings3 minutes
  • Accessing Strings3 minutes
  • Lists 3 minutes
  • Slicing List3 minutes
  • List Methods3 minutes
  • Dictionary3 minutes
  • Set - Practice Quiz3 minutes
  • Set Operations3 minutes
  • NumPy Arrays3 minutes
  • NumPy Data Types3 minutes
  • Arithmetic with NumPy3 minutes
  • Indexing and Slicing Arrays3 minutes
  • NumPy Functions3 minutes

This module focuses on exploratory data analysis (EDA) and visualisation using the Pandas library and Matplotlib in Python. Students will learn to apply Pandas to create, manipulate, and perform operations on Series and DataFrame objects, enabling efficient data analysis and preprocessing. They will conduct EDA to identify patterns, trends, and relationships in the data. Additionally, students will apply Matplotlib to create informative and visually appealing plots to effectively communicate insights derived from EDA. By the end of this module, students will have the skills to perform comprehensive exploratory data analysis and create meaningful visualisations using Python.

What's included

18 videos3 readings16 assignments

18 videosTotal 138 minutes
  • Series 8 minutes
  • DataFrame6 minutes
  • Indexing a DataFrame4 minutes
  • Selection in a DataFrame5 minutes
  • Filtering a DataFrame5 minutes
  • Operations on a DataFrame4 minutes
  • Lesson 1 Demo16 minutes
  • Descriptive Statistics for Numerical Data8 minutes
  • Descriptive Statistics for Categorical Data8 minutes
  • Data Relationship: Correlation and Covariance6 minutes
  • Univariate Analysis4 minutes
  • Bivariate Analysis4 minutes
  • Lesson 2 Demo12 minutes
  • Scatter Plots8 minutes
  • Line Plots8 minutes
  • Bar Plots9 minutes
  • Histograms7 minutes
  • Lesson 3 Demo15 minutes
3 readingsTotal 45 minutes
  • Essential Reading: Pandas Library15 minutes
  • Essential Reading: EDA15 minutes
  • Essential Reading: EDA Visualisation Using Matplotlib15 minutes
16 assignmentsTotal 105 minutes
  • Graded Quiz for Week 3 and 460 minutes
  • Series 3 minutes
  • DataFrame3 minutes
  • Indexing a DataFrame3 minutes
  • Selection in a DataFrame3 minutes
  • Filtering a DataFrame3 minutes
  • Operations on a DataFrame3 minutes
  • Descriptive Statistics for Numerical Data3 minutes
  • Descriptive Statistics for Categorical Data3 minutes
  • Data Relationship: Correlation and Covariance3 minutes
  • Univariate Analysis3 minutes
  • Bivariate Analysis3 minutes
  • Scatter Plots3 minutes
  • Line Plots3 minutes
  • Bar Plots3 minutes
  • Histograms3 minutes

This module focuses on data preprocessing techniques essential for preparing data for analysis. Students will learn to apply methods for reading and writing data in text format while identifying and addressing data quality issues. They will handle missing data by filtering out or filling in missing values and applying various data transformation techniques such as removing duplicates, mapping, replacing values, discretisation, outlier detection and filtering, and encoding categorical variables. Additionally, students will apply data aggregation techniques, including grouping, aggregation and combining functions, to summarise and analyse data. By the end of this module, students will have the skills to preprocess and clean datasets effectively, ensuring data quality and readiness for further analysis.

What's included

20 videos4 readings16 assignments

20 videosTotal 122 minutes
  • Reading Data from Text Format6 minutes
  • Writing Data to Text Format7 minutes
  • Data Quality Issues7 minutes
  • Lesson 1 Demo8 minutes
  • Filtering out Missing Data7 minutes
  • Filling in Missing Data7 minutes
  • Lesson 2 Demo5 minutes
  • Removing Duplicates5 minutes
  • Transforming Data Using Mapping6 minutes
  • Replacing Values5 minutes
  • Discretisation and Binning5 minutes
  • Encoding Categorical Data5 minutes
  • Detecting Outliers6 minutes
  • Filtering Outliers5 minutes
  • Lesson 3 Demo16 minutes
  • Split - Apply - Combine5 minutes
  • Split Step4 minutes
  • Apply Step5 minutes
  • Combine Step4 minutes
  • Lesson 4 Demo6 minutes
4 readingsTotal 60 minutes
  • Essential Reading: Data Quality 15 minutes
  • Essential Reading: Handling Missing Data15 minutes
  • Essential Reading: Data Transformations15 minutes
  • Essential Reading: Data Aggregation15 minutes
16 assignmentsTotal 48 minutes
  • Reading Data from Text Format3 minutes
  • Writing Data to Text Format3 minutes
  • Data Quality Issues3 minutes
  • Filtering out Missing Data3 minutes
  • Filling in Missing Data3 minutes
  • Removing Duplicates3 minutes
  • Transforming Data Using Mapping3 minutes
  • Replacing Value3 minutes
  • Discretisation and Binning3 minutes
  • Encoding Categorical Data3 minutes
  • Detecting Outliers3 minutes
  • Filtering Outliers3 minutes
  • Split - Apply - Combine3 minutes
  • Split Step3 minutes
  • Apply Step3 minutes
  • Combine Step3 minutes

This module focuses on advanced data preprocessing techniques for handling large and complex datasets. Students will learn to apply data reduction techniques, including dimensionality reduction, numerosity reduction, and sampling methods, to reduce the size and complexity of datasets while preserving important information. They will also apply feature selection techniques, such as filter methods, wrapper methods, and embedded methods, to identify and select the most relevant features for data analysis. Additionally, students will explore feature extraction techniques, including Principal Component Analysis (PCA) and Covariance Analysis, to transform and extract new, informative features from the original dataset. By the end of this module, students will have the skills to effectively preprocess and optimise datasets for improved performance and insights in data analysis tasks.

What's included

13 videos3 readings14 assignments1 ungraded lab

13 videosTotal 99 minutes
  • Dimensionality Reduction8 minutes
  • Numerosity Reduction9 minutes
  • Sampling Methods5 minutes
  • Filter Methods6 minutes
  • Correlation Based Filters15 minutes
  • Entropy-Based Filters5 minutes
  • Wrapper Methods7 minutes
  • Forward Selection7 minutes
  • Backward Elimination7 minutes
  • Embedded Methods6 minutes
  • Mutual Information10 minutes
  • Covariance Analysis6 minutes
  • Principal Component Analysis7 minutes
3 readingsTotal 170 minutes
  • Essential Reading: Data Reduction50 minutes
  • Essential Reading: Feature Selection60 minutes
  • Essential Reading: Feature Extraction60 minutes
14 assignmentsTotal 138 minutes
  • Graded Quiz for Week 5 and 660 minutes
  • Dimensionality Reduction6 minutes
  • Numerosity Reduction6 minutes
  • Sampling Methods6 minutes
  • Filter Methods6 minutes
  • Correlation Based Filters6 minutes
  • Entropy-Based Filters6 minutes
  • Wrapper Methods6 minutes
  • Forward Selection6 minutes
  • Backward Elimination6 minutes
  • Embedded Methods6 minutes
  • Mutual Information6 minutes
  • Covariance Analysis6 minutes
  • Principal Component Analysis6 minutes
1 ungraded labTotal 60 minutes
  • Practice Lab: ML Engineering60 minutes

This module focuses on regression analysis, a fundamental technique in predictive modeling and data analysis. Students will learn to apply linear regression techniques, including univariate and multivariate linear models, to analyse and model the relationship between dependent and independent variables in real-world applications. They will also apply model fitting techniques, such as gradient descent, and evaluate regression models using appropriate metrics to select the best-performing model for a given dataset. Additionally, students will explore nonlinear regression techniques, including smoothing methods, regularised models, robust regression, and nonlinear models, to capture and model complex, nonlinear relationships between variables. By the end of this module, students will have the skills to effectively apply regression techniques to solve real-world problems and make data-driven predictions.

What's included

10 videos3 readings10 assignments1 ungraded lab

10 videosTotal 53 minutes
  • Applications6 minutes
  • Simple Linear Regression3 minutes
  • Ordinary Least Squares Regression3 minutes
  • Linear Models5 minutes
  • Gradient Descent8 minutes
  • Evaluation Metrics6 minutes
  • Model Selection in Regression6 minutes
  • Smoothing Methods5 minutes
  • Regularised Models7 minutes
  • Nonlinear Models5 minutes
3 readingsTotal 180 minutes
  • Essential Reading: Linear Regression60 minutes
  • Essential Reading: Regression Fit60 minutes
  • Essential Reading: Nonlinear Regression60 minutes
10 assignmentsTotal 57 minutes
  • Applications6 minutes
  • Simple Linear Regression6 minutes
  • Ordinary Least Squares Regression6 minutes
  • Linear Models6 minutes
  • Gradient Descent6 minutes
  • Evaluation Metrics6 minutes
  • Model Selection in Regression6 minutes
  • Smoothing Methods6 minutes
  • Regularised Models3 minutes
  • Nonlinear Models6 minutes
1 ungraded labTotal 60 minutes
  • Practice Lab: Time Series60 minutes

This module focuses on classification techniques, specifically rule-based and parameter-based models. Students will learn to apply decision trees to solve binary and multilabel classification problems and evaluate the performance of these models. They will explore decision tree induction algorithms, considering design issues and measures of impurity, and random forests, to build effective and interpretable models. Students will also apply model selection techniques, such as cross-validation, and address overfitting issues to optimise decision tree models and visualise decision boundaries. Additionally, they will learn to apply logistic regression and discriminant analysis, parameter-based models, to solve classification problems and evaluate its performance. By the end of this module, students will have the skills to effectively apply classification techniques to real-world problems and make data-driven predictions.

What's included

16 videos4 readings17 assignments1 ungraded lab

16 videosTotal 82 minutes
  • Applications5 minutes
  • Binary Classification 5 minutes
  • Multiclass Classification5 minutes
  • Building Decision Trees - Part 15 minutes
  • Building Decision Trees - Part 22 minutes
  • Design Issues5 minutes
  • Measures of Impurity - Part 14 minutes
  • Measures of Impurity - Part 24 minutes
  • Cross-Validation6 minutes
  • Overfitting5 minutes
  • Random Forests5 minutes
  • Decision Boundaries9 minutes
  • Logistic Regression4 minutes
  • Discriminant Analysis4 minutes
  • Classifier’s Performance Evaluation - Part 18 minutes
  • Classifier’s Performance Evaluation - Part 25 minutes
4 readingsTotal 240 minutes
  • Essential Reading: Rule Based Models60 minutes
  • Essential Reading: Decision Tree Induction Algorithms60 minutes
  • Essential Reading: Model Selection in Decision Trees60 minutes
  • Essential Reading: Parameter Based Models60 minutes
17 assignmentsTotal 156 minutes
  • Graded Quiz for Week 7 and 860 minutes
  • Applications6 minutes
  • Binary Classification 6 minutes
  • Multiclass Classification6 minutes
  • Building Decision Trees - Part 16 minutes
  • Building Decision Trees - Part 26 minutes
  • Design Issues6 minutes
  • Measures of Impurity - Part 16 minutes
  • Measures of Impurity - Part 26 minutes
  • Cross-Validation6 minutes
  • Overfitting6 minutes
  • Random Forests6 minutes
  • Decision Boundaries6 minutes
  • Logistic Regression6 minutes
  • Discriminant Analysis6 minutes
  • Classifier’s Performance Evaluation - Part 16 minutes
  • Classifier’s Performance Evaluation - Part 26 minutes
1 ungraded labTotal 60 minutes
  • Practice Lab: Model Optimization60 minutes

This module focuses on unsupervised learning techniques for clustering, which aim to discover natural groupings and patterns in data without prior knowledge of class labels. Students will learn to apply partitional clustering techniques, specifically the k-Means algorithm, considering similarity measures, distance matrices, and cluster goodness evaluation. They will also explore hierarchical clustering methods, both bottom-up agglomerative and top-down divisive, to create nested clusters and analyse data at different levels of granularity. Additionally, students will apply cluster validation techniques, including external and internal indices, to assess the quality of clustering results and determine the optimal number of clusters for a given dataset. By the end of this module, students will have the skills to effectively apply clustering techniques to real-world problems and gain insights from unlabeled data.

What's included

13 videos3 readings13 assignments

13 videosTotal 52 minutes
  • Applications3 minutes
  • Types of Clusters3 minutes
  • Types of Clustering Algorithms3 minutes
  • Similarity Measures6 minutes
  • Distance Matrix4 minutes
  • k-Means Algorithm5 minutes
  • Fuzzy C-Means Algorithm6 minutes
  • Bottom-Up Agglomerative Methods4 minutes
  • Top-Down Divisive Methods4 minutes
  • Distance Measures in Hierarchical Methods2 minutes
  • Aspects of Cluster Validation3 minutes
  • External Indices5 minutes
  • Internal Indices3 minutes
3 readingsTotal 150 minutes
  • Essential Reading: Partitional Clustering60 minutes
  • Essential Reading: Hierarchical Clustering60 minutes
  • Essential Reading: Cluster Validation30 minutes
13 assignmentsTotal 78 minutes
  • Applications6 minutes
  • Types of Clusters6 minutes
  • Types of Clustering Algorithms6 minutes
  • Similarity Measures6 minutes
  • Distance Matrix6 minutes
  • k-Means Algorithm6 minutes
  • Fuzzy C-Means Algorithm6 minutes
  • Bottom-Up Agglomerative Methods6 minutes
  • Top-Down Divisive Methods6 minutes
  • Distance Measures in Hierarchical Methods6 minutes
  • Aspects of Cluster Validation6 minutes
  • External Indices6 minutes
  • Internal Indices 6 minutes

This module focuses on privacy, fairness, and security of data analytics. Students will learn about the risk assessment and threat modeling in the practical use of data analytics. Privacy-preserving data mechanism for model privacy will be surveyed. The attack strategies and defense mechanisms of model security will be emphasized. Notions of AI fairness and algorithmic bias will be covered at the stages of pre-processing, in-processing, post-processing stages of data analytics. Cost-sensitive classification and machine learning will be discussed to assess model fairness. Model security will be formalized under frameworks of adversarial data mining for game theory based AI with applications in the cyber kill chain for cybersecurity. Adversarial example games will be summarized for specific targets in adversarial capability, ability and goals. An adversarial risk analysis of the game theories and association optimization trade-offs will be presented in the setup of binary classification, multiclass classification, and multilabel classification. Relation between adversarial and robust data mining for classifier design will be motivated with respect to the robustness properties of analytics models satisfied in defense mechanisms such as semi-supervised machine learning, adversarial training and learning, empirical risk minimization, and mistake-bounds frameworks for adversarial classification. By the end of this module, students will have the skills to effectively apply data analytics techniques to real-world problems and gain insights in a safe, secure, and transparent manner.

What's included

15 videos4 readings16 assignments1 ungraded lab

15 videosTotal 112 minutes
  • Data Privacy8 minutes
  • Model Privacy9 minutes
  • Privacy Enhancing Strategies7 minutes
  • Data Fairness4 minutes
  • Model Fairness6 minutes
  • Algorithmic Fairness7 minutes
  • Model Security - Part 17 minutes
  • Model Security - Part 26 minutes
  • Cost-Sensitive Classification6 minutes
  • Cost-Sensitive Learning9 minutes
  • Adversarial Data Mining - Part 1 9 minutes
  • Adversarial Data Mining - Part 213 minutes
  • Robust Data Mining - Part 1 8 minutes
  • Robust Data Mining - Part 26 minutes
  • Adversarial and Robust Data Mining8 minutes
4 readingsTotal 105 minutes
  • Essential Reading: Analytics Privacy30 minutes
  • Essential Reading: Analytics Fairness45 minutes
  • Essential Reading: Analytics Security20 minutes
  • Course Summary10 minutes
16 assignmentsTotal 150 minutes
  • Graded Quiz for Week 9 and 1060 minutes
  • Data Privacy6 minutes
  • Model Privacy6 minutes
  • Privacy Enhancing Strategies6 minutes
  • Data Fairness6 minutes
  • Model Fairness6 minutes
  • Algorithmic Fairness6 minutes
  • Model Security - Part 16 minutes
  • Model Security - Part 26 minutes
  • Cost-Sensitive Classification6 minutes
  • Cost-Sensitive Learning6 minutes
  • Adversarial Data Mining - Part 1 6 minutes
  • Adversarial Data Mining - Part 26 minutes
  • Robust Data Mining - Part 1 6 minutes
  • Robust Data Mining - Part 26 minutes
  • Adversarial and Robust Data Mining6 minutes
1 ungraded labTotal 60 minutes
  • Practice Lab: Neural Networks60 minutes

Build toward a degree

This course is part of the following degree program(s) offered by Birla Institute of Technology & Science, Pilani. If you are admitted and enroll, your completed coursework may count toward your degree learning and your progress can transfer with you.¹

Instructor

Birla Institute of Technology & Science, Pilani
43 Courses77,388 learners

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