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Anaerobic Microbial Genomics, Microbiome Profiling, and AI Applications

Original price was: USD $120.00.Current price is: USD $59.00.

Anaerobic microbes do a remarkable amount of invisible work. They drive biogas production, shape wastewater performance, influence soil and sediment chemistry, and sit at the center of many environmental and industrial m

Anaerobic microbes shape methane production, carbon cycling, fermentation systems, sludge treatment, and bioremediation workflows. In environmental and industrial settings, these organisms keep processes stable and efficient.
The data interpretation burden is high because anaerobic systems are frequently studied through mixed microbial communities and marker-gene surveys. The challenge is not just sequencing; it is making sense of what the sequences actually imply about biological function. This course builds a coherent path from raw files to meaningful community interpretation.

What Participants Will Learn
• Retrieve datasets from public repositories (NCBI/MG-RAST)
• Inspect raw files and identify quality issues with FastQC
• Annotate functional genes using RAST
• Map anaerobic metabolic pathways using KEGG Mapper
• Connect results to biochemical functions via UniProt
• Perform 16S rRNA analysis and taxonomic profiling
• Use QIIME2 for community analysis workflows
• Utilize SILVA DB for microbial classification support
• Understand deep learning for gene classification
• Link findings to industrial digestion and fermentation systems

Course Structure / Table of Contents

Module 1 — Anaerobic Microbial Genomics and Environmental Context
  • Roles in carbon cycling, methanogenesis, and biodegradation
  • Genomic versus metagenomic approaches in anaerobic systems
  • Analytical challenges in mixed-community datasets

Module 2 — Dataset Retrieval and Data Handling
  • Retrieving datasets from NCBI and MG-RAST
  • Understanding file formats, metadata, and repository structure
  • Organizing downloaded sequence data for analysis readiness

Module 3 — Quality Control with FastQC
  • Reading outputs for per-base quality and GC distribution
  • Interpreting when quality warnings affect downstream trust
  • Preparing screened datasets for subsequent analysis stages

Module 4 — Genome Annotation and Functional Interpretation
  • Functional gene annotation using RAST
  • Using UniProt as supporting reference context
  • Recognizing annotation limits in under-characterized organisms

Module 5 — Anaerobic Pathway Mapping
  • Mapping relevant pathways using KEGG Mapper
  • Respiration, fermentation, and carbon metabolism logic
  • Interpreting pathway completeness in draft genomes

Module 6 — Microbiome Profiling Concepts
  • 16S rRNA workflows: OTU clustering and taxonomy assignment
  • Connecting taxonomic profiles to ecological process questions
  • Common sources of ambiguity in microbiome datasets

Module 7 — Community Profiling with QIIME2
  • Role of the SILVA database in taxonomic assignment
  • Reading diversity and composition outputs at a practical level
  • Interpreting community profiles in environmental contexts

Module 8 — Introductory AI Application for Gene Classification
  • Gene classification use case with Python and TensorFlow/Keras
  • Understanding model input-output logic without coding from scratch
  • Interpretive caution around model confidence and biological meaning

Tools, Techniques, or Platforms Covered
NCBI & MG-RAST
FastQC
RAST & UniProt
KEGG Mapper
QIIME2 & SILVA
TensorFlow/Keras
Python

Real-World Applications
Environmental Research: Supports metagenomics studies in Sediments, sludge systems, and carbon/nutrient cycling projects.
Industrial Biotechnology: Supports monitoring of anaerobic digestion and biogas systems, bioprocessing optimization, and biodegradation studies.

Who Should Attend
  • PhD scholars working on anaerobic microbes or environmental metagenomics
  • Postgraduate students in microbiology or industrial biotechnology
  • Technical professionals in wastewater and bioprocessing
  • Researchers handling genomic datasets from engineered anaerobic systems
  • Domain specialists seeking exposure to modern data workflows

Prerequisites or Recommended Background
Basic microbiology or molecular biology knowledge. No advanced coding background is required. The AI portion uses a pretrained model demonstration rather than model building from scratch.

Why This Course Stands Out
This course is organized around anaerobic microbial systems, providing a clear scientific spine rather than a generic genomics overview. It emphasizes functional interpretation and workflow continuity—from database literacy and quality control to pathway mapping and community profiling.

Frequently Asked Questions
What is this course about?
It is a 3-day course on anaerobic microbial genomics, genome annotation, pathway mapping, microbiome profiling, and introductory AI applications.
Do I need prior coding experience?
No advanced coding experience is required. The AI component is demonstrated using a pretrained model rather than built from scratch.
Will the course include hands-on work?
Yes. The course includes live demonstrations in data retrieval, quality control, annotation, and community profiling workflows.
What tools or platforms will be used?
Participants will encounter NCBI, MG-RAST, FastQC, RAST, KEGG Mapper, UniProt, QIIME2, and SILVA DB.
Is the course focused more on genomes or microbiomes?
Both are covered. The first part emphasizes genomic handling and annotation, while the later modules introduce community analysis concepts.
How is this useful in industry?
It supports biogas research, wastewater analysis, fermentation optimization, and biotechnology data interpretation.
Is this suitable for beginners?
It is suitable for learners with some scientific background in microbiology. Absolute beginners to biology may find the pace demanding.
Level

Professional

Duration

Self-Paced

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What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

All Live Workshops

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NanoBioTech Workshop: Integrating Biosensors and Nanotechnology for Advanced Diagnostics

Excellent course, enjoyed the sections, thank you for sharing your experience and knowledge.


BALTER TRUJILLO : 02/17/2024 at 12:23 pm

In Silico Molecular Modeling and Docking in Drug Development

Our mentor is good, he explained everything , as I diont have any idea about the topic before, i More struggled a little bit to follow his lessons
jamsheena V : 02/14/2024 at 4:08 pm

Scientific Paper Writing: Tools and AI for Efficient and Effective Research Communication

Mam explained very well but since for me its the first time to know about these softwares and More journal papers littile bit difficult I found at first. Then after familiarising with Journal papers and writing it .Mentors guidance found most useful.
DEEPIKA R : 06/10/2024 at 10:48 am

Bacterial Comparative Genomics

ALL THE INFORMATION WERE VERY USEFULL THANK YOU


IONELA AVRAM : 04/12/2024 at 9:54 pm

The mentor was clear and informative, and was also open to providing further help or clarification More after the session.
Savina Mariettou : 05/04/2025 at 1:53 pm

Bacterial Comparative Genomics

Was really excellent the way you teach so clearly.


PremKumar D : 04/07/2024 at 8:40 pm

In Silico Molecular Modeling and Docking in Drug Development

very interesting.


Roberta Listro : 02/16/2024 at 5:30 pm

OK


Carlos Saldaña : 02/13/2025 at 4:12 am