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Bioinformatics Training and Research Project Development
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In 2021, our OmicsLogic programs are here to help you build your skillsets in bioinformatics. You will learn about applications of bioinformatics to various next-generation sequencing data types: Genomics, Transcriptomics, Epigenomics, and Metagenomics. We will cover typical approaches for processing, analysis and interpretation, including statistical analysis and machine learning techniques for large-scale experiments (big data).
We will also learn about reproducible research practices and effective management of research data. Participants will have hands-on sessions on various data protocols, analysis pipelines as well as uploading and managing large datasets.
The following are some of our upcoming OmicsLogic programs now open for registration:
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Bioinformatics for Precision Oncology
Precision medicine is changing the way we understand, diagnose and treat cancer. The transformation is driven by high-throughput molecular data from patients, animal models, and large-scale cell line experiments. In this online training program, we will explore how the various -omics data types from these sources can be analyzed to understand the basic biology associated with cancer onset, development, and outcomes. We will also learn from examples that demonstrate how large-scale clinical trials and biomedical studies provide an opportunity to improve diagnosis of patients and precision treatment of cancer.
Bioinformatics for Precision Oncology is a hands-on training program designed for clinicians, biologists and students that are interested in gaining applied experience with data coming from oncology biomedical research. Together, we will learn to find, analyze and interpret large datasets from The Cancer Genome Atlas and the National Center for Biotechnology.

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OmicsLogic Metagenomics
Applying NGS to study the sequences of microbial genomes and analyzing this data to study the microbiota has already led to many breakthroughs in medicine, biotechnology, and agriculture.
Metagenomics is a relatively new field of research based on high-throughput sequencing (or Next Generation Sequencing) and it’s popularity signifies a growing appreciation for the composition of microbial communities (microbiomes) and the genetic information their genomes carry. In this collaborative bioinformatics training program, we will explore how different types of analysis can be used to understand the microbial world. We will cover several bioinformatics approaches to the analysis of the microbiome.
We will learn to compare microbial composition in different conditions, learn about the sequencing of viral samples, and discuss how microbes evade the immune response of the host as well as evade treatment. We will do so in the context of several projects taken from high impact publications.

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Research Internship
Our Online Research Fellowship Program was conceived to help young researchers and life science students take advantage of the bioinformatics resources we offer and become a lifetime member of a growing bioinformatics community.
This program offers an opportunity to join a team working on various research problems, contribute to the development of teaching resources, help curate and analyze data, as well as learn about bioinformatics.
For students interested to learn and develop a research project of their own, we offer paid internships with training, guidance, access to tools, and support. For advanced computer science and molecular biology students and researchers, we offer a research fellowship that is free and will provide guided research opportunities in a variety of ongoing projects our team is involved with.
Review the projects by our Research Fellows here -https://edu.t-bio.info/project-examples/
Each participant will have access to the powerful and user-friendly T-BioInfo platform. This is a cloud-based analytical server platform used by Research labs and independent scientists all around the globe.

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For any questions related to these programs, email us: mark...@pine.bio
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