Machine Learning Program
- Description
- Curriculum
- Reviews
This professionally designed thumbnail announces the launch of VeduTech INUskill’s Machine Learning Program for Beginners. The design features a modern blue and purple gradient background that creates a strong technology-focused appearance.
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Note: Each phase is available individually for ₹199. You can also enroll in the complete 4-phase program for a discounted price of ₹900
At the top, the VeduTech INUskill logo builds brand recognition. A bold yellow label stating “Just Launched!” immediately captures attention. The main headline, “Machine Learning Program,” is displayed in large, high-contrast typography, with “Machine Learning” highlighted in bright yellow to make it stand out. A circular badge clearly mentions “For Beginners,” ensuring the course is positioned for entry-level learners.
The thumbnail also highlights key benefits of the program, including:
- Beginner Friendly
- Hands-on Projects
- Practical Knowledge
- Completion Certificate
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“Book Your FREE Demo Class Now!”
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1Introduction to Machine Learning (Types, Applications)
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2Python for ML (NumPy, Pandas)
Day 2 focuses on using NumPy and Pandas for machine learning, covering array operations, data manipulation, cleaning, filtering, and preparing structured datasets for ML models.
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3Data Preprocessing (Cleaning, Encoding)
Day 3 covers essential data preprocessing techniques including data cleaning, handling missing values, outlier treatment, and encoding categorical variables to prepare datasets for machine learning models.
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4Exploratory Data Analysis (Visualization)
Day 4 focuses on Exploratory Data Analysis (EDA), using statistical summaries and data visualization techniques to understand patterns, relationships, trends, and anomalies in datasets.
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5Statistics Basics
Day 5 covers fundamental statistical concepts including mean, median, variance, probability, distributions, and hypothesis testing essential for understanding and building machine learning models.
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6Linear Algebra Basics
Day 6 introduces essential linear algebra concepts including vectors, matrices, matrix operations, dot product, eigenvalues, and eigenvectors, which form the mathematical foundation of machine learning algorithms and model optimization techniques.
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7Mini Project (Data Cleaning & Visualization)
Day 7 focuses on a hands-on mini project where learners apply data cleaning and visualization techniques to a real dataset. It involves handling missing values, removing duplicates, encoding variables, performing exploratory data analysis (EDA), and creating meaningful visualizations to extract insights.
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8Linear Regression
Day 8 introduces Linear Regression; a supervised learning algorithm used to model relationships between variables and predict continuous outcomes using a best-fit line.
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9Multiple Linear Regression
Day 9 covers Multiple Linear Regression, a supervised learning algorithm that predicts a continuous outcome using two or more independent variables, explaining how multiple features collectively influence a dependent variable.
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10Logistic Regression
Day 10 introduces Logistic Regression, a supervised classification algorithm used to predict categorical outcomes. It explains the sigmoid function, probability estimation, decision boundaries, and how logistic regression differs from linear regression in handling binary and multiclass classification problems.
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11KNN Algorithm
Day 11 introduces the K-Nearest Neighbors (KNN) algorithm, a supervised learning method used for classification and regression. It explains distance metrics, the role of K, decision boundaries, and how KNN makes predictions based on similarity between data points.
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12Decision Trees
Day 12 introduces Decision Trees, a supervised learning algorithm used for classification and regression. It explains tree structure, splitting criteria, entropy, information gain, Gini index, overfitting, pruning techniques, and how decision trees make rule-based predictions.
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13Model Evaluation Metrics
Day 13 explains Model Evaluation Metrics used to measure machine learning performance. It covers regression metrics like MAE, MSE, RMSE, and R², and classification metrics including accuracy, precision, recall, F1-score, and confusion matrix to assess model effectiveness.
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14Mini Project (Prediction Model)
Day 14 focuses on a hands-on mini project where learners build a complete prediction model. It covers data preprocessing, feature selection, model training, evaluation, and performance improvement to solve a real-world regression or classification problem using machine learning algorithms.
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15Clustering Basics
Day 15 introduces Clustering Basics, an unsupervised learning technique used to group similar data points without labelled outcomes. It covers key concepts such as similarity measures, distance metrics, cluster formation, and popular algorithms like K-Means and Hierarchical Clustering.
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16K-Means Clustering
Day 16 focuses on K-Means Clustering, an unsupervised learning algorithm that groups similar data points into K clusters based on distance from centroids, using iterative updates to minimize within-cluster variance and improve grouping accuracy.
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17Hierarchical Clustering
Day 17 introduces Hierarchical Clustering, an unsupervised learning algorithm that builds nested clusters using a tree-like structure called a dendrogram, explaining agglomerative and divisive approaches, linkage criteria, and cluster interpretation without predefining the number of clusters.
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18PCA
Day 18 introduces Principal Component Analysis (PCA), a dimensionality reduction technique used to transform high-dimensional data into fewer meaningful components while retaining maximum variance. It explains variance, covariance matrix, eigenvalues, eigenvectors, feature transformation, and how PCA improves visualization, reduces overfitting, and enhances computational efficiency in machine learning models.
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19Association Rule Learning
Day 19 introduces Association Rule Learning, an unsupervised learning technique used to discover interesting relationships and patterns between variables in large datasets. It explains support, confidence, lift, and algorithms like Apriori and FP-Growth used for market basket analysis and recommendation systems.
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20Mini Project (Customer Segmentation)
Day 20 focuses on a hands-on mini project where learners perform customer segmentation using clustering techniques. The session includes data preprocessing, exploratory data analysis, feature scaling, applying clustering algorithms like K-Means, and interpreting customer groups to generate actionable business insights.
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21Random Forest
Day 21 introduces Random Forest, an ensemble learning algorithm that combines multiple decision trees to improve prediction accuracy and reduce overfitting. It explains bagging, feature randomness, majority voting, regression averaging, and how Random Forest enhances model stability and performance.
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22Boosting Techniques
Day 22 introduces Boosting Techniques, an ensemble learning approach that improves model accuracy by sequentially training weak learners and correcting previous errors. It covers concepts like AdaBoost, Gradient Boosting, and XGBoost, explaining how boosting reduces bias, improves predictive performance, and handles complex datasets effectively.
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23Support Vector Machines
Day 23 introduces Support Vector Machines (SVM), a supervised learning algorithm used for classification and regression. It explains hyperplanes, margin maximization, support vectors, kernel functions, and how SVM handles both linear and non-linear data by transforming feature space for optimal decision boundaries.
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24Cross Validation
Day 24 introduces Cross Validation, a model evaluation technique used to assess machine learning performance by splitting data into multiple training and testing sets. It explains k-fold cross validation, stratified sampling, bias-variance tradeoff, and how cross validation ensures reliable and generalized model performance.
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25Hyperparameter Tuning
Day 25 introduces Hyperparameter Tuning, a process used to optimize machine learning models by selecting the best configuration of external parameters. It covers Grid Search, Random Search, cross-validation integration, overfitting control, and how tuning improves model accuracy, stability, and generalization performance.
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26Feature Selection
Day 26 introduces Feature Selection, a technique used to identify and retain the most relevant input variables for machine learning models. It explains filter, wrapper, and embedded methods, reducing dimensionality, improving model performance, minimizing overfitting, and enhancing computational efficiency.
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27ML Pipeline
Day 27 introduces the Machine Learning (ML) Pipeline, a structured workflow that automates data preprocessing, feature engineering, model training, evaluation, and deployment. It explains pipeline components, reproducibility, scalability, and how pipelines improve efficiency, reduce errors, and ensure consistent model performance in production environments.
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28Model Deployment (Flask/Fast API
Day 28 introduces Model Deployment using Flask and FastAPI, explaining how to convert trained machine learning models into web APIs. It covers REST APIs, request-response handling, model serialization, JSON input processing, and deploying models for real-time predictions in production environments.
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29Case Studies
Day 29 focuses on real-world machine learning case studies, demonstrating how ML concepts are applied to solve practical business problems. It covers end-to-end workflows including data preprocessing, model selection, evaluation, optimization, and deployment across domains like healthcare, finance, retail, and marketing.
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30Final Project
Day 30 focuses on the Final Project, where learners apply the complete machine learning workflow to solve a real-world problem. It includes data preprocessing, exploratory analysis, feature engineering, model building, evaluation, tuning, and deployment, demonstrating end-to-end understanding and practical implementation skills.



