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Toronto, Ontario
Posted on: 30 October 2023
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About Us:
Deep Genomics is a startup company that aims to revolutionize drug development by leveraging expertise in artificial intelligence (AI) and genome biology to decode RNA biology. Our proprietary platform, the AI Workbench, enables us to decode the enormous complexity of RNA biology to find novel targets, mechanisms, and molecules that are not accessible through traditional methods. We use this advanced technology to discover genetic targets for human diseases, and develop steric-blocking oligonucleotides (SBOs) that achieve expression increase for the treatment of genetic disease. Founded in 2015, our multidisciplinary team includes expertise in a diverse range of disciplines including those found in a traditional drug company, as well as genetics, machine learning, laboratory automation, and software engineering. Deep Genomics is based in Toronto, Ontario with an additional location in Cambridge, Massachusetts.
What You will Be Doing:
As a (Senior) Research Scientist of Statistical Genetics, you will be responsible for analyzing large-scale human genetic data-sets (e.g., whole genome sequencing, whole exome sequencing, array genotyping) to identify potential genetic targets for oligonucleotide therapeutics. You will lead these efforts by utilizing variant effect predictors on the genomic data, and refining or developing statistical techniques to nominate candidate genes. You will collaborate with machine learning scientists for the development and improvement of variant effect prediction models. You will work closely with the statistical genetics and bioinformatics teams, and interface regularly with the target biology team.
\nDeep Genomics thanks all applicants, however only those selected for an interview will be contacted.
Deep Genomics welcomes and encourages applications from people with disabilities. Accommodations are available on request for candidates taking part in all aspects of the selection process.
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