Skip to content

Details

Welcome to DataGiri's Code-Along Saturdays workshop. This is your opportunity to learn hands-on a wide variety of data science skills at this 8-hour workshop. In addition, to growing your skill set, you also get to network with peers and industry professionals.

The event is FREE. Please note that you are required to bring along your own laptops to participate in the workshop. Your laptop must have Anaconda 3.6 pre-installed before you begin the workshop. Find the software here: www.anaconda.com/download/#macos.

===========================================

*Agenda:

10:00 AM - 12:00 PM : Linear regression with Regularization

12:00 PM - 2:00 PM : Logistic regression

2:00 PM - 4:00 PM : Ensemble Methods

4:00 PM - 6:00 PM : Clustering

===========================================

  • Session #1:

Topic: Linear regression with Regularization

Instructor: Vedant Dwivedi, Data Scientist at Reliance Jio

LinkedIn: https://www.linkedin.com/in/vedant-dwivedi-60286b10a/

Learning Outcomes : Understand intuitively the concept of Linear Regression, how to implement it and how regularization helps in improving our regression model.

Key Takeaways :

  1. Intutition behind Linear Regression
  2. Implementation of Linear Regression using sklearn
  3. Intuition behind Regularization and its implementation

===========================================

*Session #2:

  1. Logistic regression

Learning Outcomes : Understand the concept of logistic regression and how to implement the same

Key Takeaways :

  1. Concept of classification in ML
  2. Difference between Linear and Logistic Regression
  3. What is Logistic Regression
  4. Cost function with gradient descent
  5. Evaluation metrics
  6. Implementation of logistic regression using sklearn

===========================================

*Session #3

Topic : Ensemble Methods

Instructor: Rushikesh Meharwade, Senior Data Scientist at Morningstar

LinkedIn: https://www.linkedin.com/in/rushikesh-meharwade-2807b842/

Learning Outcomes : Understand the benefits of using ensemble methods like random forests, XGBoost and how to improve your predictions with ensemble methods.

Key Takeaways :

  1. What is ensembling and why it is important?
  2. Averaging and voting methods
  3. Bagging
  4. Boosting
  5. Stacking

===========================================

*Session #4

Topic : Clustering

Instructor : Hardik Gupta, Data Science @ BookMyShow

LinkedIn : https://www.linkedin.com/in/hardiklgupta/

Learning Outcome :zUnderstand the concept of unsupervised learning and how to implement it using clustering

Key Takeaway : -

  1. Understanding of unsupervised learning methods
  2. Working of Clustering methods
  3. Implementation of Clustering methods

===========================================

A deep insight into Data Science by some of the top Analytics professionals in the industry followed by an hour-long networking with the leaders in Data Science, Analytics and get an opportunity to interact with leaders and your peers in our mixed format sessions. Network with the start-up Founders to see if your skills match what they are looking out for!

The workshop is FREE of cost to attend
RSVP now to reserve your spot at the event!!

Sponsors

Sponsor logo
Cerebrone AI
Cerebrone AI provides Gen AI consulting solutions

Members are also interested in