Machine Learning Lab

Paper Code: 
24DBCA502C
Credits: 
06
Periods/week: 
12
Max. Marks: 
100.00
Objective: 

     This Course enables the students to:

  1. Learn different python libraries and their functionalities.
  2. Design machine learning models in python.

 

 

Course Outcomes: 

Course

Learning Outcome

 (at course level)

Learning and teaching strategies

Assessment Strategies

Course

 Code

Course

Title

24DBCA

502C

Machine Learning Lab

(Practical)

 

 

CO319. Analyse python libraries and their utility in different problems.

CO320.Build data frame, import data set and perform pre-processing, descriptive and predictive analysis on datasets.

CO321. Communicate results by designing charts and plots like bar chart, line charts and ROC curve using python libraries.

CO322. Design model based on machine learning algorithms using python libraries.

CO323. Performance evaluation of machine learning models.

CO324 Contribute effectively in course-specific interaction.

Approach in teaching:

 

Interactive Lectures,

Discussion,

Demonstration,

 

Learning activities for the students:

 

Self-learning assignments, Practical questions

Class test, Semester end examinations, Quiz, Presentation,

Individual and group

Assignments, viva-voce

 

 

Contents:

Exercises based on the following topics:

Importing pandas library, Using series and Data Frames, indexing, Grouping, aggregating, Merging data Frames, dealing with missing values using dropna method, filtering or filling in missing data, creating data frames from dictionaries or nested dictionaries, accessing and changing values of data frame using locate replace methods, reading and writing csv excel file

Importing Visualization libraries: Matplotlib: format parameter of pylpot plot, subplots method, checking and defining ranges of axes, using linspace and linstyle, specifying legend, title Style, creating Scatter plots, Bar charts, histogram, Stack charts, Saving plots. Importing seaborn library:Style functions, color palettes, Distribution plots ,categorical plots

Implementing Machine Learning with scikit-learn: loading and Visualizing datasets (sample sklearn datasets), splitting train and test data.

 

REFERENCES: 

e RESOURCES:

  1. https://www.jigsawacademy.com/blogs/business-analytics/
  1. NOC: Python for Data Science, IIT Madras ,https://nptel.ac.in/courses/106106212
  2. Python, w3scool, https://www.w3schools.com/
  3. Jupiter :www.jupiter.com
  4. Googlecolab: www.googlecolab.com

JOURNALS:

  1. Journal of Machine Learning Research (JMLR),ACM, https://dl.acm.org/journal/jmlr
  2. International Journal of Machine Learning and Cybernetics, springer : https://www.springer.com/journal/13042

 

Academic Year: