Monday, 23 June 2025

ANU CDE UG/PG Year End Supply / 2nd, 4th Sem Exams July 2025 Time Tables

 ANU CDE UG/PG Year End Supply / Sem Exams July 2025 Time Tables are now available and the exams are commencement from 20.07.2025. Here you can get all latest anu cde materials, assignments, previous year papers, results ext. for all latest updates follow us on Facebook.






Download official Time Tables from below links

 ANU CDE UG/PG Reg-Supply 2nd, 4th Sem Exams July 2025 Time Tables

 ANU CDE UG/PG Year End Supply Exams July 2025 Time Tables

Sunday, 22 June 2025

ANU B.Sc(Honors) Application Development Using Python Material PDF Download

 ANU B.Sc(Honors) Application Development Using Python Material PDF Download all 5 units are now available, the students who are looking for material can download from here.


Why ANU UPDATES MATERIALS so important?

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ANU B.Sc(Honors) Application Development Using Python Material by PY KUMAR 

ANU UPDATES team special thanks to PY KUMAR Garu for preparing this material within short period of time and making this public to all.


Download Material Here

Friday, 20 June 2025

ANU Supervised Machine Learning with Python 5 Units Material Download

Supervised Machine Learning is a cornerstone in modern AI-driven applications. This blog post breaks down the complete unit-wise syllabus for the course "Supervised Machine Learning with Python" — ideal for B.Tech/M.Tech students, aspiring data scientists, and Python enthusiasts.

Whether you're preparing for exams, building your ML portfolio, or starting your journey into artificial intelligence, this post will guide you through each core topic of supervised learning.


UNIT I: Machine Learning Basics

In this introductory unit, you'll learn:

👉 Outcome: Solid foundation in ML theory and data preparation using Python libraries.

UNIT II: Decision Trees – Splitting Datasets

This unit dives into the classic classification algorithm – Decision Trees.

👉 Outcome: Master tree-based logic for classification and visual understanding of decisions.

UNIT III: Naïve Bayes Classifier – Probability-based Learning

Explore probabilistic learning techniques using the Naïve Bayes algorithm.

👉 Outcome: Ability to perform spam filtering, sentiment analysis, and other probabilistic tasks.

UNIT IV: Logistic Regression & Optimization

Understand one of the most widely used classification models in ML:

👉 Outcome: Implement regression models that handle binary outcomes effectively.

UNIT V: Support Vector Machines (SVM)

Finish the course with a powerful classifier: Support Vector Machines.

👉 Outcome: Master a top-tier model used in image classification, face recognition, and more.


Note: Material Updated soon....Stay with us

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