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🏫 Materials Informatics Dojo

Comprehensive Learning Platform for Data-Driven Materials Development

📚 18 Series | 75+ Chapters | 500+ Code Examples | Total Study Time: 25-35 hours

📚 Introductory Series (3 series)
📘
Data-Driven Materials Introduction
Fundamentals of data-driven approaches in materials science
Beginner 60-90 min 4 chapters
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📘
Machine Learning Potentials (MLP) Introduction
Neural network potentials for atomistic simulations
Intermediate 90-120 min 4 chapters
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📗
Bioinformatics Introduction
Protein engineering and biomaterial design with AI
Beginner-Intermediate 100-120 min 5 chapters
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🤖 Machine Learning Methods (5 series)
🎯
Active Learning Introduction
Efficient exploration with active learning strategies
Intermediate 80-100 min 4 chapters
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📊
Bayesian Optimization Introduction
Advanced optimization for materials discovery
Intermediate-Advanced 90-120 min 4 chapters
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🧠
Graph Neural Networks (GNN) Introduction
Graph-based deep learning for molecular and crystal structures
Advanced 120-150 min 5 chapters
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🔬
GNN Features Comparison Introduction
Comparative analysis of graph neural network architectures
Advanced 80-100 min 4 chapters
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🎮
Reinforcement Learning Introduction
RL for materials design and process optimization
Advanced 90-120 min 4 chapters
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🔄
Transformer Introduction
Attention mechanisms for materials science applications
Advanced 80-100 min 4 chapters
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🔧 Materials Features & Descriptors (2 series)
⚛️
Composition Features Introduction
Chemical composition-based descriptors for materials properties
Intermediate 90-120 min 5 chapters
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🧪
Chemoinformatics Introduction
Molecular descriptors and QSAR/QSPR modeling
Intermediate 80-100 min 4 chapters
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💻 Computational Methods (2 series)
Computational Materials Basics Introduction
DFT, molecular dynamics, and quantum chemistry fundamentals
Intermediate 100-120 min 5 chapters
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🚀
High-Throughput Computing Introduction
Large-scale materials screening and workflow automation
Advanced 100-120 min 5 chapters
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🤖
NIMO: Automated Materials Exploration with AI
Closed-loop optimization combining AI and robotic experiments
Beginner 90-120 min 5 chapters
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📊 Data & Experimental (2 series)
🗄️
Materials Databases Introduction
Accessing and utilizing materials data repositories
Beginner 70-90 min 4 chapters
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🔬
Experimental Data Analysis Introduction
Machine learning for experimental characterization data
Intermediate 80-100 min 4 chapters
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🎯 Application Domains (3 series)
🔋
Battery MI Application
Machine learning for battery materials discovery
Intermediate 80-100 min 4 chapters
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⚗️
Catalyst MI Application
AI-driven catalyst design and optimization
Intermediate 80-100 min 4 chapters
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💊
Drug Discovery MI Application
Machine learning in pharmaceutical materials development
Intermediate 80-100 min 4 chapters
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