Artificial Intelligence

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

5 sessions • 45 min each

Session 1 — Introduction & Setup

n8n overview, architecture, local setup and sandbox.

Session 2 — Basic Nodes & Flows

Working with nodes, credentials, and simple integrations.

Session 3 — Error Handling & Logging

Retries, webhook management, audit logs and debugging patterns.

Session 4 — Integrations & Best Practices

Connecting to APIs, databases and designing reusable flows.

Session 5 — Productionization

Deployment, monitoring, scaling and governance for enterprise workflows.

Technical Specifications

Format Online + recordings
Language English
Prerequisites

Basic Python programming knowledge
Familiarity with high-school mathematics
Interest in AI, data science, or research applications
Laptop with stable internet connection

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?

Basic programming experience and familiarity with APIs will help participants get the most from the workshop.
Will materials be provided?
Yes — slides, example flows and code snippets are shared after each session.
Is there support after the workshop?
We provide limited post-training support for implementation questions. Enterprise packages include extended support options.

Applied Machine Learning & AI — Hands-On Cohort Program

Group Training/Cohort

Hands-on mentorship for AI, ML, and data-driven research projects (group cohort)


$25 or ₹2500
60 min / sessions
4 sessions
18 clients

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