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Machine Learning Course in Surat – Learn AI & ML with Hands-On Projects

Welcome to the most advanced Machine Learning Course in Surat, designed especially for IT college students who want to step into the world of Artificial Intelligence (AI) and Data Science. At Karon IT Training, we provide practical, industry-ready ML training that goes beyond theory.

You’ll start with supervised & unsupervised learning, data preprocessing, feature engineering, and model evaluation, and move on to deep learning, neural networks, NLP, TensorFlow, and Scikit-learn. With real-world projects and expert mentoring, you’ll gain the confidence to work on AI-powered systems, predictive analytics, and intelligent applications.

Whether you’re a beginner eager to explore AI or an IT student preparing for future job opportunities, this course gives you the hands-on skills, certification, and career support to stand out in Surat’s booming IT market.

Flexible batches for you

Machine Learning Training Schedule

Price ₹50,000

₹45,000

10% OFF , Save ₹5,000

Pay in Easy Installments

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Why Enroll for Machine Learning with Python Course in Surat?

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Build Smart Applications with Python

Machine Learning is transforming industries by enabling computers to learn from data and make intelligent decisions. Our Machine Learning with Python course in Surat teaches you how to develop smart applications, predictive models, and AI solutions using Python – the most popular language for AI development. Gain hands-on experience with real-world datasets and industry-grade projects.

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Hands-On Learning & Practical Projects

Learning Machine Learning is all about practice. In our course, you’ll work on live projects like stock price prediction, recommendation systems, and image recognition. With guided coding sessions, you’ll understand how to preprocess data, train models, and evaluate results – making you job-ready.

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Career Growth in AI & Data Science

Machine Learning experts are in huge demand in IT companies, startups, and research organizations. Completing our Python ML training in Surat will give you a competitive edge, helping you secure internships, higher-paying roles, and exciting opportunities in AI, Data Science, and software development.

Why Choose Karon IT Training for Machine Learning with Python?

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Live Interactive Learning
  • Learn from expert trainers with extensive real-world experience in Python and Machine Learning.
  • Participate in interactive sessions and get your doubts cleared instantly.
  • Enjoy a classroom-like experience with hands-on guidance at every step of your learning journey.

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Lifetime Access
  • Get lifetime access to all course materials – no expiry worries.
  • Receive free updates as the course evolves, keeping your skills aligned with industry trends.
  • Learn at your own pace with unlimited replays of recorded sessions.
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24x7 Support
  • Access personalized assistance whenever you face challenges.
  • Our dedicated support team resolves technical or course-related queries promptly.
  • Clear your doubts in real-time to ensure uninterrupted learning.
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Hands-On Project Based Learning
  • Work on real-world Machine Learning projects like predictive modeling, recommendation systems, and image recognition.
  • Practice with demo datasets and project files provided by our trainers.
  • Reinforce your learning with quizzes and assignments after each module.
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Industry Recognised Certification
  • Earn a professional Machine Learning with Python certification upon course completion.
  • Certification is recognized by IT companies, startups, and research organizations.
  • Showcase your skills and credibility as a Machine Learning developer on your resume.

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Curriculum Designed by Experts

Machine Learning Course Syllabus

What is Python, and why use it?

Installing Python and using an IDE (IDLE / VS Code)

Writing and running the first Python program

Writing and running the first Python program

Variables & data types

Input/Output (input(), print())

Operators (arithmetic, comparison, logical, assignment)

Type conversion & casting

If, else, elif

Nested if

Loops: for, while

Break, continue, pass

Strings & string functions

Lists, Tuples, Sets, Dictionaries

List comprehensions

Defining functions, return values

Arguments (default, keyword, variable-length)

Lambda functions

Importing and creating modules

Using built-in modules (math, random, datetime)

Opening, reading, and writing files

Working with CSV & JSON files

Exception handling (try, except, finally, raise)

Classes and objects

Constructors & destructors

Inheritance, polymorphism, encapsulation

Method overriding

Iterators and Generators

Decorators and context managers

Regular Expressions (Regex)

Virtual environments and pack

What is Machine Learning?

Types of ML: Supervised, Unsupervised, Reinforcement

ML in real life (recommendations, fraud detection, NLP, CV)

Python setup: VS Code

Libraries: NumPy, Pandas, Matplotlib, Scikit-learn

Data collection & cleaning

Handling missing values, duplicates, and outliers

Data scaling (Normalization vs Standardization)

Feature engineering & encoding categorical variables

Train-test split, cross-validation

Regression Models: Linear, Polynomial, Ridge, Lasso

Classification Models: Logistic Regression, KNN, Decision Trees, Random Forest, SVM

Model evaluation: Accuracy, Precision, Recall

Clustering: K-Means, Hierarchical, DBSCAN

Dimensionality reduction: PCA, t-SNE

Anomaly detection

Neural Networks & Deep Learning (Intro)

Activation functions, loss functions, optimizers

Intro to TensorFlow & PyTorch

Building a simple NN for MNIST digit recognition

Ensemble methods: Bagging, Boosting (AdaBoost, XGBoost, LightGBM)

Feature selection & importance

Hyperparameter tuning (GridSearchCV, RandomizedSearchCV, Optuna)

Handling imbalanced datasets (SMOTE, class weights)

Text preprocessing: Tokenization, Stopwords, Stemming, Lemmatization

Bag of Words, TF-IDF, Word Embeddings (Word2Vec, GloVe)

Sentiment analysis using ML/DL

Image preprocessing (OpenCV, PIL)

CNN basics (Convolution, Pooling, Flattening)

Transfer learning (VGG, ResNet, MobileNet)

Saving & loading models (Pickle, Joblib)

Django API for ML models

Streamlit for quick ML apps

ML pipeline automation basics

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