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INDUSTRY READY TRAINING

Build a Successful AI & Machine Learning Career in Just 6 Months

Master Python, Data Science, Machine Learning & Deep Learning with hands-on projects and real-world deployment.

Begin Your AI & ML Career Journey with Bexo.ed

01
Foundation (Month 0 - 1)

Learn Python basics, data structures, and data handling using NumPy & Pandas. Work on your first mini project with real datasets like IPL or COVID data.

02
Math & Visualization (Month 1 - 3)

Build strong foundations in Statistics, Linear Algebra & Calculus for ML. Create data visualizations using Matplotlib & Seaborn and develop an EDA dashboard.

03
Machine Learning Core (Month 3 - 6)

Understand regression, classification models, and ML workflows. Build projects like Housing Price Prediction and Customer Churn Analysis.

Professional AI & Machine Learning Training in Bexo.ed

The AI & Machine Learning Program at Bexo.ed is a career-focused training experience designed to build strong foundations in Python, data analysis, and machine learning. The program emphasizes hands-on learning with real-world projects and industry-relevant tools, helping students understand how intelligent systems are developed and deployed. By the end of the course, learners gain practical skills, project experience, and a professional portfolio that prepares them for real industry roles.

AI & ML Library

Explore the essential tools and AI platforms that power modern machine learning workflows.

What you Learn in 12 Weeks?

In just 6 months, this intensive AI & ML program transforms you from a beginner into an industry-ready professional capable of building, training, and deploying intelligent systems.

  1. Python Basics: Variables, Data Types, Control Flow, Functions
  2. Core Programming Skills: Loops, File Handling, Error Handling
  3. Data Structures: Lists, Dictionaries, Sets, Tuple
  4. Working with Data: NumPy for arrays, Pandas for tabular data
  5. Mini Project: Data Cleaning & Analysis on a real dataset (e.g., IPL or COVID)
  6. Data Cleaning & Analysis: Handling missing values, grouping, sorting.
  1. Visualization Tools: Matplotlib, Seaborn (Bar, Line, Heatmaps, Pairplots)
  2. Statistics & Probability: Mean, Median, Mode, Variance, Distribution
  3. Linear Algebra: Vectors, Matrices, Matrix Multiplication
  4. Calculus for ML: Derivatives, Gradients, Chain Rule
  5. Mini Project: Exploratory Data Analysis (EDA) Dashboard
  1. ML Workflow: Problem framing, Preprocessing, Splits, Pipelines
  2. Regression Models: Linear Regression, Polynomial Regression
  3. Classification Models: Logistic Regression, K-Nearest Neighbors
  4. Model Evaluation: Accuracy, Confusion Matrix, Precision, Recall, ROC-AUC
  5. Mini Project: Housing Price Predictor / Customer Churn Classifier
  1. Tree-Based Models: Decision Trees, Random Forests, XGBoost
  2. Clustering Techniques: K-Means, DBSCAN, Hierarchical Clustering
  3. Dimensionality Reduction: PCA, t-SNE (Intro)
  4. Model Tuning: GridSearchCV, Cross-Validation
  5. Deployment Tools: Streamlit App, Pickle/Joblib, Render/ Vercel Hosting
  6. Mini Project: Streamlit-based ML App with Hosted Deployment
  1. Intro to DL: Perceptrons, Neurons, Activation Functions
  2. TensorFlow & Keras Basics: Layers, Optimizers, Loss Functions
  3. CNNs: Image Processing, Filters, Pooling, Augmentation
  4. RNNs (Intro): Sequences, Time Series, Simple LSTM
  5. Mini Project: Image Classifier (e.g., CIFAR10 / MNIST)
  1. NLP Basics: Text Cleaning, Tokenization, Lemmatization
  2. Text Vectorization: Bag of Words, TF-IDF, Word2Vec
  3. NLP Applications: Sentiment Analysis, Chatbot (basic)
  4. Capstone Planning: Team/solo project scoping
  5. Final Project Week: Build, test, and deploy a complete AI/ ML system
  6. Demo & Portfolio: GitHub upload, Streamlit live link, Resume Tips

From Learning to Industry-Ready Leadership

We prepare future-ready, AI-powered professionals with globally relevant skills to excel in the evolving digital economy.
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