Digital Twin Agriculture: Mastering Multi-Source Data Fusion & Machine Learning
Learn How Ai Can Monitor Crops , Predict Yeild & Improve Farming
About This Course
In this workshop, you will learn how AI is used to monitor crop health, predict yield, and improve farming decisions using real-world data
Aim
To equip participants with practical knowledge and hands-on skills in using AI, data analytics, and precision monitoring tools to optimize crop management, improve yield predictions, and support sustainable agricultural practices
Workshop Objectives
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To introduce participants to AI-driven tools and technologies for crop monitoring and management.
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To enable accurate prediction of crop yields using data analytics and modeling techniques.
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To teach methods for assessing and improving crop health through real-time monitoring.
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To demonstrate how precision agriculture techniques can optimize resource use and sustainability.
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To provide hands-on experience with practical datasets, sensors, and analytics platforms for informed decision-making in agriculture.
Workshop Structure
📅 Day 1 — Monitoring Crop Health with AI & Remote Sensing
- Overview of crop intelligence and precision agriculture
- Introduction to remote sensing and IoT sensor data in agriculture
- AI techniques for monitoring crop growth and detecting stress
- Key data sources and standards for crop research (MDPI datasets, open-access repositories)
🛠️ Hands-on:
- Using satellite imagery and NDVI indices to assess crop health with Python (NumPy, Pandas, Rasterio)
📅 Day 2 — Predicting Crop Yields Using Machine Learning
- Data preprocessing and feature engineering for crop datasets
- Supervised learning models for crop yield prediction (Random Forest, XGBoost, LSTM)
- Integration of environmental and climate data into predictive models
- Model evaluation metrics and best practices for agriculture datasets
🛠️ Hands-on:
- Building a crop yield prediction model using historical MDPI crop datasets
📅 Day 3 — Improving Crop Productivity through Data-Driven Insights
- Decision support systems for crop management
- AI-driven irrigation, fertilization, and pest management strategies
- Trend analysis and data visualization for agronomic decisions
- Future of AI in agriculture and emerging trends
🛠️ Hands-on:
- Visualizing crop recommendations and productivity optimization strategies using Python (Matplotlib, Seaborn, Plotly)
Who Should Enrol?
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Agricultural researchers and scientists interested in AI applications in farming.
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Agronomists and crop consultants looking to adopt precision agriculture techniques.
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Data scientists and machine learning practitioners focusing on agriculture datasets.
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Students and Ph.D. scholars in agriculture, biotechnology, environmental science, or data analytics.
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Professionals in agri-tech startups and companies seeking to optimize crop productivity.
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Policy makers and sustainability experts exploring data-driven approaches in agriculture.
Important Dates
Registration Ends
April 13, 2026
IST 4 : 00 PM IST
Workshop Dates
April 13, 2026 – April 15, 2026
IST 05:30PM IST
Workshop Outcomes
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Participants will be able to monitor crop health effectively using AI and sensor-based technologies.
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Participants will gain the ability to predict crop yields accurately through data-driven models.
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Participants will learn strategies to optimize resource usage and improve overall farm productivity.
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Participants will acquire hands-on experience with agricultural datasets and analytics tools.
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Participants will be prepared to implement precision agriculture practices for sustainable crop management.
Fee Structure
Student
₹2499 | $70
Ph.D. Scholar / Researcher
₹3499 | $80
Academician / Faculty
₹4499 | $90
Industry Professional
₹6499 | $110
What You’ll Gain
- Live & recorded sessions
- e-Certificate upon completion
- Post-workshop query support
- Hands-on learning experience
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