Applied Machine Learning & AI — Hands-On Cohort Program
Hands-on mentorship for AI, ML, and data-driven research projects (group cohort)
Overview
This cohort provides a structured, hands-on introduction to Applied Machine Learning and Artificial Intelligence. It is designed for students, researchers, and early professionals who want to understand how AI techniques are developed and used in real-world domains such as health, agriculture, sustainability, finance, and environmental monitoring.
The program blends concept-based teaching with practical implementation. Each session includes short theory modules, step-by-step coding walkthroughs, and mini-projects that help learners build confidence in applying ML algorithms, feature engineering, model evaluation, and deployment. Participants will work on supervised learning, unsupervised learning, time-series forecasting, and introductory deep learning.
By the end of the program, learners will have completed multiple guided projects, gained strong intuition for how AI systems work, and developed a portfolio that they can use for academic or career opportunities. Sessions are interactive, beginner-friendly, and tailored to the pace of the group.
Who should attend
- Student, Company, Researcher
Learning outcomes
-
Understand how AI models are applied in real-world scientific domains
Develop hands-on experience with supervised and unsupervised learning
Gain ability to build and evaluate ML models using Python
Learn research-oriented thinking for solving scientific problems
Complete one mini-project suitable for a student portfolio or research showcase
Curriculum & Schedule
Technical Specifications
| Format | Online + recordings |
| Language | English |
| Prerequisites |
Basic Python programming knowledge |
| Delivery | Goggle Meet / Recorded sessions |
| Technical readiness | Enterprise-ready workflows |
Frequently Asked Questions
What is your current level of experience with Python?
Have you studied AI or machine learning before?
Which domain are you most interested in: agriculture, environment, health, or general AI?
Do you prefer more coding-focused sessions or more theory-focused sessions?
What type of project do you want to work on during the mentoring?
Have you studied AI or machine learning before?
Which domain are you most interested in: agriculture, environment, health, or general AI?
Do you prefer more coding-focused sessions or more theory-focused sessions?
What type of project do you want to work on during the mentoring?
Will materials be provided?
Is there support after the workshop?
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