| Week | Topics | Study Materials | Materials |
| 1 |
Dynamic programming, Needleman-Wunsch algorithm for pairwise sequence alignment
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| 2 |
Smith-Waterman algorithm for pairwise sequence alignment
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| 3 |
Graph algorithms:
- de Bruijn graphs, Overlap Graphs for Sequence Assembly for Genome and Transcriptome Assembly
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| 4 |
Community Detection Algorithms, Graph Centrality metrics to identify protein complexes, functional modules, hub proteins in Protein-Protein Interaction (PPI) Networks
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| 5 |
- Shortest Path, Network Propagation Algorithms to find disease-associated genes close to known genes in a PPI network.
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| 6 |
Bipartite Graphs for metagenomic data analysis
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| 7 |
Graph Neural Networks to predict new drug-target interactions for drug repurposing studies
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| 8 |
Machine Learning Algorithms used in Bioinformatics
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| 9 |
Deep Learning Algorithms used in Bioinformatics
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| 10 |
Multi-Omics Data Integration Algorithms for Genomics, Transcriptomics, Proteomics, and Metabolomics data analysis
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| 11 |
Large language models for modelling DNA and proteins
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| 12 |
Large language models for metagenomics, for identifying diet-microbiome-disease relationships
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| 13 |
Artificial Intelligence Algorithms for Antimicrobial, Anticancer, Antiinflammatory Peptide Prediction
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| 14 |
Blockchain technologies for genomics, electronic health records (EHRs)
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