top of page
Dr. Prashant Singh Rana
Associate Professor,
Computer Science & Engg Dept,
Thapar Institute of Engg & Tech,
Patiala, Punjab - 147004, India.
Director & Co-Founder,
MLTool Technologies Pvt Ltd | MLTool.co.in
UCS654: Predictive Analytics using Statistics (Jan to June 24 - Even 2324)
Table of Content
Join WhatsApp Group | Click Here
Marking Scheme
-
MST = 35 Marks
-
EST = 35 Marks
-
Sessionals = 30 marks
01 - Lecture Resources
01 - Lecture Resources
-
Topic01 - Topsis - Multiple Criteria Decision Making | Link
-
Topic02 - Sampaling | Link
-
Topic03 - Distribution | Link
-
Topic04 - Machine Learning using Pycaret | Link
-
Topic05 - Data Generation using Modelling and Simulation for Machine Learning | Link
-
Topic06 - Association Mining - Apriori | Link
-
Topic07 - Association Mining - ECLAT | Link
-
Topic08 - Multi-Threading using Python | Link
-
Topic09 - Hypothesis Testing and Parameter Estimation | Link
-
Topic10 - Parameter Optimization | Link
-
Topic11 - Nonliner Modelling | Link
-
Topic12 - Measuring Data Similarity and Dissimilarity | Link
-
Topic13 - Ensemble Technique | Link
02 - Labs Experiments
02 - Labs Experiments - Guided Project & Kaggle
General Instructions
1. Guided Project (GP)
-
Step 1: Create a login with Thapar email id on Coursera (coursera.org).
-
Step 2: Complete the given below "Guided Project" and submit the "Compeletion Certificate" link.
-
Step 3: Explore Sample Certificate | Click Here
-
Step 4: Explore all "Guided Projects" on Coursera | Click Here
2. Solve Kaggle Problems | Kaggle Resources
-
Getting started with Kaggle by Mr. Raghav Garg, Mr. Aadil Garg, Mr. Pratham Garg | Click Here
-
Kaggle Resources by Mr. Eishkaran Singh | Click Here
-
Kaggle Grand Master Talks
T-1 | T-2 | T-3 | T-4 | T-5 | T-6 | T-7 | T-8 | T-9 | T-10
-
Kaggle notebooks
-
Latest Playground Series Basic's Notebook for Beginners | Click Here
-
Latest Playground Series Advanced Approach | Click Here
-
XGB HyperParameter Tuning Notebook | Click Here
-
-
Lab01 | Due Date: 17-01-2024 23:59:59
-
Basics of R - Part 1
-
Install R and R Studio and Practice "Basics of R" | Link
-
-
Guided Project-01 | Submission Link
-
Solve n Kaggle Problems [n=2,3,4....] | Submission Link
-
-
Lab02 | Due Date: 21-01-2024 23:59:59
-
Basics of R - Part 2
-
Practice Chapter 5 and Chapter 6 from "05 - R for Everyone - Advanced Analytics and Graphics" book | Link
-
-
Guided Project-02 | Submission Link
-
Solve n Kaggle Problems [n=2,3,4....] | Submission Link
-
-
Lab03 | Due Date: 28-01-2024 23:59:59
-
Basics of R - Part 3
-
Explore and Practice Chapter 6, 7, 8, 9, and 10 from "05 - R for Everyone" book | Link
-
-
Guided Project-03 | Submission Link
-
Solve n Kaggle Problems [n=2,3,4....] | Submission Link
-
-
Lab04 | Due Date: 04-02-2024 23:59:59
-
Basics of R - Part 4
-
Practice Chapter 11, 12, and 13 from "05 - R for Everyone" book | Link
-
-
Guided Project-04 | Submission Link
-
Solve n Kaggle Problems [n=2,3,4....] | Submission Link
-
-
Lab05 | Due Date: 11-02-2024 23:59:59
-
Advance of R - Part 1
-
Practice Chapter 14, 15, and 16 from "05 - R for Everyone" book | Link
-
-
Guided Project-05 | Submission Link
-
Solve n Kaggle Problems [n=2,3,4....] | Submission Link
-
-
Lab06 | Due Date: 18-02-2024 23:59:59
-
Advance of R - Part 2
-
Practice Chapter 17, and 18 from "05 - R for Everyone" book | Link
-
-
Guided Project-06 | Submission Link
-
Solve n Kaggle Problems [n=2,3,4....] | Submission Link
-
-
Lab07 | Due Date: 25-02-2024 23:59:59
-
Advance of R - Part 3
-
Practice Chapter 19, 20, 21, 22, and 23 from "05 - R for Everyone" book | Link
-
-
Guided Project-07 | Submission Link
-
Solve n Kaggle Problems [n=2,3,4....] | Submission Link
-
-
Lab08 | Due Date: 03-03-2024 23:59:59
-
Advance of R - Part 4
-
Practice Chapter 24, 25, and 26 from "05 - R for Everyone" book | Link
-
-
Guided Project-08 | Submission Link
-
Solve n Kaggle Problems [n=2,3,4....] | Submission Link
-
-
Lab09 | Due Date: 07-04-2024 23:59:59
-
Advance of R - Part 5
-
Practice Chapter 30 from "05 - R for Everyone" book | Link
-
-
Guided Project-09 | Submission Link
-
Solve n Kaggle Problems [n=2,3,4....] | Submission Link
-
-
Lab10 | Due Date: 14-04-2024 23:59:59
-
Advance of R - Part 6
-
Practice "Descriptive statistics in R" | Link
-
-
Guided Project-10 | Submission Link
-
Solve n Kaggle Problems [n=2,3,4....] | Submission Link
-
-
Lab11
-
Complete Task-3 and show it to the lab Instructor | Click Here
-
Solve n Kaggle Problems [n=2,3,4....] | Submission Link
-
03 - Assignments
03 - Assignments
-
Assignment01 - Topsis
-
Due Date: For COE 1-21: 22 Jan 2024 | 07:59:59
-
Due Date: For COE 22-30 and CSE 1-12: 29 Jan 2024 | 07:59:59
-
Assignment Link | Submission Link
-
-
Assignment02 - Sampling
-
Due Date: For COE 1-21: 04 Feb 2024 | 07:59:59
-
Due Date: For COE 22-30 and CSE 1-12: 29 Jan 2024 | 07:59:59
-
Assignment Link | Submission Link
-
-
Assignment03 - Topsis for Pretrained Models
-
Due Date: For COE 1-21: 29 Jan 2024 | 07:59:59
-
Due Date: For COE 22-30 and CSE 1-12: 04 Feb 2024 | 07:59:59
-
Assignment Link | Submission Link
-
-
Assignment04 - Clustering
-
Due Date: For COE 1-21: 12 Feb 2024 | 07:59:59
-
Due Date: For COE 22-30 and CSE 1-12: 19 Feb 2024 | 07:59:59
-
Assignment Link | Submission Link
-
-
Assignment05 - Mashup
-
Due Date: For COE 1-21: 4 March 2024 | 07:59:59
-
Due Date: For COE 22-30 and CSE 1-12: 4 March 2024 | 07:59:59
-
Assignment Link | Submission Link
-
-
Assignment06 - Parameter Estimation
-
Due Date: For COE 1-21: 14 April 2024 | 07:59:59
-
Due Date: For COE 22-30 and CSE 1-12: 21 April 2024 | 07:59:59
-
Assignment Link | Submission Link
-
-
Assignment07 - Multi Threading
-
Due Date: For COE 1-21: 21 April 2024 | 07:59:59
-
Due Date: For COE 22-30 and CSE 1-12: 14 April 2024 | 07:59:59
-
Assignment Link | Submission Link
-
-
Assignment08 - Parameter Optimization of SVM
-
Due Date: For COE 1-21: 25 April 2024 | 07:59:59
-
Due Date: For COE 22-30 and CSE 1-12: 21 April 2024 | 07:59:59
-
Assignment Link | Submission Link
-
Assignment01 - Marks Analysis | 05 Marks | Due Date: 30 Jan 2022 | 23:59:59 | Assignment Link | Submission Link
Assignent02 - Feature Extraction | 05 Marks | Due Date: 06 Feb 2022 | 23:59:59 | Assignment Link | Submission Link
Assignment03 - Classification | 05 Marks | Due Date: 20 Feb 2022 | 23:59:59 | Assignment Link | Submission Link
Assignment05 - Google Data Studio | 05 Marks | Due Date: 10 March 2022 | 23:59:59 | Assignment Link | Submission Link
04-KaggleHack
04 - Kaggle Hack
-
Kaggle Hack 01 - Google – AI Assistants for Data Tasks with Gemma | Click Here to participate
-
Due Date: 14 April 2024
-
Maximum Team Size: 5
-
Register Your Team - Click Here
-
Important | Team Naming Convention on Kaggle:
-
Team Name Format: <Thapar>_<TeamLeaderName><TeamLeaderRollNo>
-
Example: Thapar_PSRana_14567890
-
-
Marking Scheme: Based on the final ranking on the leaderboard
-
Rank in Top 50 = A grade in the subject (All team members will get A grade)
-
Rank between 51 - 100 = 5 marks
-
Rank between 101 - 150 = 4 marks
-
Rank between 151 - 200 = 3 marks
-
Rank between 201 - 400 = 2 marks
-
Rank above 400 / No submission = 0 Marks
-
-
Rule: No Rule
-
(Jo
-
Kaggle Hack 02 - Due Date: 30 Jan 2024 | 07:59:59 | Click Here to participatekar
na hai kar lo)
bottom of page