- All Categories
- Featured Events
- Alumni
- Application Deadline
- Arts
- Campus Discourse
- Careers
- BU Central
- Center for the Humanities
- Charity & Volunteering
- Kilachand Center
- Commencement
- Conferences & Workshops
- Diversity & Inclusion
- Examinations
- Food & Beverage
- Global
- Health & Wellbeing
- Keyword Initiative
- Lectures
- LAW Community
- LGBTQIA+
- Meetings
- Orientation
- Other Events
- Religious Services & Activities
- Special Interest to Women
- Sports & Recreation
- Social Events
- Study Abroad
- Weeks of Welcome
- ENG Coffee Chat: Consulting Careers with Simon Kucher11:00 am
- IS&T RCS Tutorial - Machine Learning with Python scikit-learn, Part One (Hands-on)1:00 pm
- Yale School of the Environment Master Degrees - Admissions Meet & Greet10:00 am
- ENG Now Hiring: Graduate Fellowships in Nuclear Security with NNSA4:00 pm
- ENG Ace Your Interviews5:30 pm
IS&T RCS Tutorial - Machine Learning with Python scikit-learn, Part One (Hands-on)
This is the first part of a two-part tutorial series. Be sure to also register for Part Two on Thursday, Feb 6 from 1:00pm to 3:00pm to continue building your knowledge. What to Expect: This session introduces Scikit-Learn, a powerful Python library for machine learning. Scikit-Learn supports supervised and unsupervised learning and offers tools for: Data preprocessing Model fitting Model selection Evaluation And much more Through hands-on exercises with real datasets, you'll learn to develop models using modern algorithms, including: Linear regression Decision trees and random forests K-means clustering Dimensionality reduction We'll also provide an overview of the general machine learning workflow and wrap up with guidance on further ML resources. Preparation: If Python is not installed on your machine, follow these instructions. A conda environment file with all necessary packages will be shared before the session, along with activation instructions. Prerequisites: Experience with Python programming using Jupyter Notebook and familiarity with libraries like NumPy, Pandas, and Matplotlib. Get ready to explore the capabilities of Scikit-Learn and start building practical machine learning solutions!
| When | 1:00 pm - 3:00 pm on 16 September 2025 |
|---|---|
| Building | Online over Zoom After you register, you will be sent a calendar invite that includes the Zoom link. |