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⭐ High Demand β€” 2026 πŸ“ Dilsukhnagar, Hyderabad βœ… Certificate on Completion

Machine Learning Course

A rigorous, hands-on Machine Learning course taught by an active Senior Data Scientist from an MNC β€” covering every major ML algorithm, deep learning foundations, real production deployment and career preparation. Build models on real datasets from week one.

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DURATION
10 Weeks
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LEVEL
Beginner to Advanced
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MODE
Online Β· Offline Β· Hybrid
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CERTIFICATE
Industry Certificate

Tools & Technologies You Will Learn

Python Scikit-learn TensorFlow Keras PyTorch NumPy Pandas Matplotlib XGBoost LightGBM MLflow FastAPI Streamlit Docker Jupyter Git
Enroll on WhatsApp β†’ View Curriculum
Machine Learning Course at LearnAI Tech Hub πŸ€–
Free Demo Available
Contact us for current batch fees & EMI options
  • ⏱ Duration: 10 Weeks
  • 🎯 Level: Beginner to Advanced
  • πŸ’» Online Β· Offline Β· Hybrid
  • πŸ† Certificate on completion
  • πŸ’Ό 100% placement assistance
  • πŸ“ Real project + internship
  • πŸ” Lifetime access to recordings
  • πŸ“ž Mentor support throughout

Free career counselling available daily Β· No pressure, just honest advice

Machine Learning is not just a skill β€” it is the engine that powers every AI system

Every Generative AI model, every AI agent, every recommendation engine and every fraud detection system is built on Machine Learning foundations. Understanding ML β€” how algorithms learn, why they fail, how to evaluate and deploy them β€” is what separates AI professionals who build production systems from those who only know how to use existing tools. ML engineers are consistently among the highest-paid technology professionals across every geography.

At LearnAI Tech Hub, this 10-week course covers the complete machine learning landscape β€” from linear regression to deep neural networks β€” with real projects every week. You will implement algorithms from first principles, build production-grade pipelines, deploy models as live APIs and learn how to monitor and maintain ML systems in production. By the end, you have a portfolio of 8 real ML projects across different domains β€” the strongest possible foundation for an AI engineering career.

What makes this course different

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Taught by a Senior Data Scientist with 8+ years at MNC

Every algorithm is explained through the lens of real production problems β€” not academic toy examples. Your trainer has deployed ML models serving millions of users.

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Every algorithm implemented from scratch AND with libraries

You understand what the algorithm is actually doing mathematically, then implement it efficiently using industry tools. This depth is what separates ML engineers from tool users.

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Production-first mindset from week one

Model deployment, MLOps, monitoring and cost management are integrated throughout β€” not added as an afterthought in the final week.

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GenAI integration in every module

How Large Language Models connect to traditional ML, how to use AutoML and AI assistants to accelerate ML workflows β€” all taught as part of the standard curriculum.

8 modules Β· 10 Weeks Β· Real projects every week

Every module is taught by an active MNC professional using real tools, real datasets and real architectures β€” not textbook examples.

01
Python & ML Foundations
10 topics Β· Weeks 1–2
Python for ML: NumPy, Pandas, Matplotlib deep dive
The ML workflow: problem β†’ data β†’ features β†’ model β†’ evaluate β†’ deploy
Types of ML: supervised, unsupervised, reinforcement learning
Train/test split, cross-validation and data leakage prevention
Feature engineering: scaling, encoding, selection
Project: End-to-end ML pipeline on a real business dataset
02
Supervised Learning β€” Regression
10 topics Β· Week 3
Linear Regression: OLS, gradient descent, regularisation (Ridge, Lasso)
Polynomial regression and non-linear relationships
Evaluation metrics: MSE, RMSE, MAE, RΒ² β€” when to use which
Multicollinearity, heteroscedasticity and assumption testing
Feature importance in regression models
Project: House price prediction model with real estate data
03
Supervised Learning β€” Classification
12 topics Β· Week 4
Logistic Regression: sigmoid, decision boundary, multi-class
Decision Trees: entropy, gini, pruning and overfitting
Random Forest: bagging, feature importance, OOB error
Support Vector Machines: kernels, margin and hyperparameters
K-Nearest Neighbours and Naive Bayes
Evaluation: confusion matrix, precision, recall, F1, ROC-AUC, PR curve
Project: Credit card fraud detection system
04
Ensemble Methods & Boosting
10 topics Β· Week 5
Ensemble theory: bagging, boosting, stacking
Gradient Boosting Machines (GBM) from scratch
XGBoost: parameters, tree building and regularisation
LightGBM: leaf-wise growth and speed advantages
CatBoost for categorical features
Hyperparameter tuning: GridSearch, RandomSearch, Optuna
Project: Winning a Kaggle-style competition with XGBoost
05
Unsupervised Learning
8 topics Β· Week 6
K-Means clustering: algorithm, elbow method, silhouette score
DBSCAN for density-based clustering and anomaly detection
Hierarchical clustering and dendrograms
PCA: eigenvalues, explained variance and dimensionality reduction
t-SNE and UMAP for high-dimensional data visualisation
Project: Customer segmentation for e-commerce personalisation
06
Deep Learning Foundations
12 topics Β· Weeks 7–8
Neural networks: perceptrons, activation functions, forward pass
Backpropagation and gradient descent variants (SGD, Adam, RMSProp)
Building neural networks with TensorFlow/Keras and PyTorch
Regularisation: dropout, batch normalisation, early stopping
CNNs for image data: convolutions, pooling, feature maps
RNNs and LSTMs for sequential and time series data
Transfer learning: using pre-trained models (ResNet, EfficientNet, BERT)
Project: Image classification CNN on medical imaging data
07
NLP & Time Series with ML
10 topics Β· Week 9
Text preprocessing, TF-IDF and word embeddings
Sentiment analysis, text classification and named entity recognition
Time series decomposition: trend, seasonality, residuals
ARIMA, SARIMA for time series forecasting
ML models for time series: XGBoost with lag features
Prophet for business time series forecasting
Project: Sales forecasting system for retail company
08
MLOps, Deployment & Career Preparation
10 topics Β· Week 10
MLflow for experiment tracking and model registry
Model deployment with FastAPI β€” building a live ML API
Streamlit for ML model demo interfaces
Docker for containerising ML applications
Model monitoring: data drift, concept drift and retraining triggers
ML interviews: case studies, coding rounds and system design
HR placement referral and portfolio review
Get Full Curriculum on WhatsApp β†’

You will graduate using industry tools β€” not toy projects

Every tool in this course is currently used by professionals in live production environments across companies worldwide.

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Python
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Scikit-learn
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TensorFlow
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PyTorch
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XGBoost
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LightGBM
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MLflow
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FastAPI
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Streamlit
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Docker
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Jupyter
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Git

Roles you will qualify for after this course

Our placement team directly places students from this course into these roles across our 1,000+ client company network β€” startups to Fortune MNCs.

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Machine Learning Engineer
β‚Ή7L – β‚Ή20L / year
AI product companies, tech startups, e-commerce, FinTech, healthcare AI companies
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Data Scientist
β‚Ή6L – β‚Ή18L / year
Every industry β€” BFSI, healthcare, logistics, IT services, consulting firms globally
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AI Research Scientist
β‚Ή10L – β‚Ή28L / year
AI labs, R&D departments, universities, Fortune companies with AI research teams
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ML Platform Engineer
β‚Ή9L – β‚Ή24L / year
Cloud companies, AI infrastructure teams, ML platform companies
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Predictive Analytics Engineer
β‚Ή7L – β‚Ή18L / year
BFSI, e-commerce, manufacturing, supply chain, operations analytics teams
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Healthcare ML Specialist
β‚Ή8L – β‚Ή22L / year
Healthcare tech companies, hospitals, pharma companies, health insurance firms
Average Starting Salary β€” Freshers (Hyderabad)
Based on our placed students Β· 2024–2025 batch data
β‚Ή5L – β‚Ή20L per year

This course is designed for you if…

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Engineering and science graduates

ML is the fastest path from an engineering or science degree to a high-paying AI career. Your mathematical foundation makes you a natural fit for the algorithmic depth this course covers.

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Data analysts wanting to move into ML engineering

If you analyse data but cannot yet build models, this course closes that gap β€” and with it, typically a 60–100% salary increase when you move from analyst to ML engineer.

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Software developers transitioning to AI/ML

You already know how to code. This course gives you the ML knowledge to shift from building software systems to building intelligent systems β€” one of the most significant career moves in tech today.

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Final year B.Tech, M.Tech and MCA students

An ML portfolio project built on real data is the single most effective way to stand out at campus placements or off-campus applications in 2026.

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Domain professionals in healthcare, finance, manufacturing

Domain knowledge + ML skills = domain-specialised ML engineer, which commands a higher salary than a generic ML engineer and is easier to place because of the domain fit.

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GenAI learners wanting engineering depth

If you use ChatGPT and want to understand and build the underlying systems β€” ML is the foundation. This course takes you from tool user to system builder.

Prerequisites

Basic Python programming (variables, loops, functions) Intermediate school-level mathematics (basic algebra and statistics) No prior ML experience needed Curiosity and commitment to work through challenging concepts

Questions about Machine Learning Course?

Not finding your answer? WhatsApp us directly β€” we respond within 30 minutes.

Ask on WhatsApp β†’
Machine Learning is a subset of AI. AI is the broad goal of creating intelligent systems. ML is one specific approach β€” teaching machines to learn from data by finding patterns and making predictions. Deep Learning is a further subset of ML using neural networks. When people say "AI engineer" today, they usually mean someone who works with ML and deep learning systems.
Based on our placed students, freshers typically receive job offers within 2–4 months of completing the course, going through our HR team's placement process. Working professionals transitioning careers typically take 3–6 months. Results depend on how actively you pursue opportunities with our HR team's support.
You need basic algebra and statistics β€” which is covered in the first week. You do not need advanced calculus or linear algebra to start. We build the mathematical intuition gradually as part of the curriculum. Our trainer explains the maths behind algorithms in plain language before showing the implementation.
Three key differences. First, this is live instruction from an active MNC professional β€” not recorded content. Second, you get project feedback, doubt-clearing sessions and mentor support. Third, after the course our 50+ HR team actively works on your placement β€” Coursera cannot do that.
Data Science is broader β€” it covers the full data pipeline from data cleaning and EDA through to ML and deployment, plus BI tools like Power BI and SQL. The ML course goes deeper into algorithms, model mathematics and MLOps. Many students do Data Science first, then ML as a specialisation. Both courses include placement support.
Yes. All online sessions are live and instructor-led. We have students from across India, UAE, USA, UK, Australia, Canada and Singapore currently enrolled. Recordings are available for sessions you miss. Placement support is available for students regardless of location.

Enroll in Machine Learning Course today

Book your free demo class β€” meet your trainer, see the teaching style, ask everything you want. No commitment, no fees.

πŸ“ Dilsukhnagar, Hyderabad Β· Online across India & Internationally Β· Mon–Sat 9AM–8PM