AI and Machine Learning in Crop Genomics
Growing the Future: AI-driven Innovations in Crop Genomics
Early access to e-LMS included
About This Course
Explore how AI and machine learning are revolutionizing agricultural genomics through this next-generation DeepScience program. Tailored for scientists, researchers, and technologists in agriculture, genetics, and data science, this program unveils the power of predictive analytics, AI-driven genomic modeling, and genome-wide data processing to accelerate crop improvement and resilience.
Participants will engage in the structured learning of genomic architectures, AI modeling techniques, and bio-computational tools to interpret crop trait variability, disease resistance, and performance optimization. By aligning biological data with algorithmic precision, the course equips learners to design future-ready solutions in precision agriculture and food sustainability.
Aim
To cultivate AI-centric expertise for solving agricultural challenges through the integration of machine learning techniques and crop genomic insights, fostering innovation in genetic trait prediction, resilient crop breeding, and data-guided agricultural decision systems.
Program Objectives
-
Apply AI/ML to analyze genomic data for crop yield, resistance, and optimization
-
Construct predictive models to guide genomic selection strategies
-
Leverage large-scale genetic datasets to inform breeding programs
-
Advance sustainable agriculture using AI-powered genome interpretation
-
Understand the ethical and ecological implications of DeepTech in agri-genomics
Program Structure
Week 1: Introduction to Crop Genomics and AI
-
Role of genomics in agricultural transformation
-
Genomic data types: sequence, SNPs, gene expression
-
AI fundamentals: learning types and model structures
-
Use cases of AI in crop yield forecasting and trait optimization
Week 2: Genomic Data Sources and Preparation
-
Genomic data acquisition: platforms and repositories
-
Data integrity: preprocessing, normalization, and feature extraction
-
Structuring datasets for AI modeling
-
Privacy, ethics, and responsible data stewardship
Week 3: Machine Learning Algorithms for Crop Genomics
-
Trait prediction using supervised learning models
-
Algorithm overview: decision trees, SVM, random forests
-
Accuracy metrics: confusion matrix, precision, recall
-
Unsupervised learning: clustering, dimensionality reduction, GWAS insights
Week 4: AI in Genomic Forecasting and Future Trends
-
Deep learning in agri-genomics: CNNs, RNNs
-
AI-assisted genomic sequence interpretation
-
Trends in responsible AI and bio-automation
-
Final project briefing and applications in industrial and research settings
Who Should Enrol?
-
Graduates and professionals in agriculture, biotechnology, bioinformatics, or computer science
-
R&D specialists in genomic selection, crop breeding, or precision farming
-
Data science enthusiasts seeking to innovate within the agricultural genomics domain
Program Outcomes
-
Expertise in applying machine learning to crop genomics data
-
Ability to create AI models for agronomic trait prediction
-
Capacity to evaluate model performance using scientific benchmarks
-
Readiness to contribute to DeepTech-enabled agriculture research and innovation
Fee Structure
Standard: ₹8,998 | $198
Discounted: ₹4499 | $99
We accept 20+ global currencies. View list →
What You’ll Gain
- Full access to e-LMS
- Real-world dry lab projects
- 1:1 project guidance
- Publication opportunity
- Self-assessment & final exam
- e-Certificate & e-Marksheet
Join Our Hall of Fame!
Take your research to the next level with NanoSchool.
Publication Opportunity
Get published in a prestigious open-access journal.
Centre of Excellence
Become part of an elite research community.
Networking & Learning
Connect with global researchers and mentors.
Global Recognition
Worth ₹20,000 / $1,000 in academic value.
View All Feedbacks →
