logo

AI-Powered Machine Learning – Advanced Course

This 4-month course on AI-Integrated Machine Learning helps students develop practical machine learning skills through real datasets and predictive models. In this course, the trainees will learn algorithms, data analysis, and industry-standard AI tools. This course has been designed to prepare students for entry-level roles in data analysis, machine learning development, and AI-based applications.

content img

Why choose Cronus Consultants to learn AI-ML?

Cronus Consultants is offering AI/ML training focused on Python programming, data preprocessing, machine learning algorithms, and real-world model development. The program emphasizes hands-on projects and practical implementation to build a strong foundation for AI and data science careers.

Curriculum Overview

Download Syllabus

  • Concepts: History of AI, AI vs. ML vs. Deep Learning, supervised vs. unsupervised learning.
  • Tools: Setting up Jupyter Notebooks, Git/GitHub, Introduction to Windows Subsystem for Linux (WSL).
  • Python Essentials: Basic syntax, data types, control structures (loops, if-else), functions.

  • Libraries: NumPy (numerical analysis) and Pandas (data manipulation).
  • Techniques: Data cleaning, handling missing data (NaN), data transformation, grouping, and aggregation.
  • Visualization: Matplotlib/Seaborn for data plotting.

  • Statistics: Central Tendency (Mean, Median, Mode), Standard Deviation, Variance, Probability basics.
  • Linear Algebra: Vectors, Norms, Matrices, Matrix Operations, Eigenvalues/Eigenvectors.

  • Regression: Linear Regression, Logistic Regression, Lasso/Ridge.
  • Classification: K-Nearest Neighbors (KNN), Decision Trees, Support Vector Machines (SVM), Random Forests.
  • Clustering: Unsupervised learning, K-Means Clustering, Dimensionality Reduction (PCA).

  • Neural Networks: Introduction to Perceptron, Multi-Layer Perceptron (MLP).
  • Frameworks: Introduction to TensorFlow/Keras or PyTorch.
  • CNNs: Basics of Convolutional Neural Networks for Image Processing.

  • Generative AI: Introduction to Large Language Models (LLMs), Prompt Engineering, RAG (Retrieval-Augmented Generation).
  • Deployment: Model saving, API creation (FastAPI), basics of Cloud Deployment.

  • Build an end-to-end ML project
  • Model deployment on Cloud
  • Real-time prediction pipelines
  • Secure cloud data storage
Key Features
logo
ML algorithms

Implement supervised and unsupervised learning algorithms.

logo
Data processing

Apply feature scaling, encoding and transformations.

logo
Model evaluation for accuracy check

Use accuracy, precision and recall metrics to evaluate models.

logo
Use cases

Use machine learning models to solve real-world problems.

Who can pursue this course?
BBA B.A. B.Sc (Computer Science) M.Sc (Computer Science) B.TECH M.TECH Commerce MBA

INTERMEDIATE

₹ 13,500 /one-time

Duration: 4 Months
Enroll Now Talk to Advisor
  • ✔ Industry-Focused Training
  • ✔ Career-Oriented Curriculum
  • ✔ Expert Mentor Guidance
  • ✔ Internship Opportunity
  • ✔ Course Completion Certification

Certification & career support

icon

Skill certification

Earn a certificate and validate the practical skills you have learned.

icon

Professional edge

Add your earned certification to your resume and stand out to employers.

icon

Career advancement

Show your certification that highlights your skills, achievements, and job-readiness.

img
img

Talk to Industry Experts

Discuss your goals with industry professionals and get clear career direction.

    Fill all the necessary filed *






    talkto_experts img