1

Computational Biologist Jobs in Quebec (NOW HIRING)

$90 - $130/hr

Collaborate with the broader biology and computational teams to connect screen outputs to target validation and drug discovery decisions * Support hit‑to‑lead characterization efforts as programs ...

Experience in advanced cellular models (including 3D cell cultures and complex MPS), computational biology, and/or innovative technologies. * Experience with predictive immunogenicity assays, such as ...

Computational Biologist information

Will computational biologists be replaced by AI?

Computational biologists use algorithms, data analysis, and modeling to interpret biological data, and AI tools can assist but are unlikely to fully replace their expertise. Human judgment, domain knowledge, and the ability to design experiments remain essential in the field. AI can enhance productivity but does not eliminate the need for skilled professionals in computational biology.

What jobs can I get with computational biology?

Computational biologists can work in roles such as bioinformatics analyst, research scientist, data scientist, or systems biologist, often in healthcare, pharmaceuticals, or research institutions. These positions typically require skills in programming, data analysis, and biological sciences, and may involve using tools like R, Python, or specialized software for genomic or proteomic data analysis.

How much do computational biologists get paid?

Computational biologists typically earn a median annual salary of around $80,000 to $110,000, depending on experience, education, and location. Entry-level positions may start lower, while experienced professionals or those in senior roles can earn over $130,000. Skills in programming, data analysis, and biological research are highly valued in this field.

What are some common interdisciplinary collaborations for a Computational Biologist, and how do these impact daily work?

Computational Biologists frequently collaborate with laboratory scientists, statisticians, and software engineers to analyze complex biological data. These interdisciplinary interactions mean that communication skills are essential, as you’ll often translate computational findings into actionable insights for experimental teams. Daily responsibilities may include attending joint meetings, discussing data analysis strategies, and integrating feedback from collaborators to refine models. This collaborative environment fosters both scientific discovery and personal growth, offering exposure to diverse perspectives and expertise.

What Is a Computational Biologist?

A computational biologist is a skilled scientist who uses complex computer algorithms to research and analyze biological systems. This highly specialized job entails using computers and advanced data analytics software to research biological topics such as genetic sequencing, cellular growth numbers, and protein sampling. As a computational biologist, your duties are to code computer algorithms and perform bioinformatics research in the lab. You may also work with students by using the data from their bioinformatics research.

What is a Computational Biologist?

A computational biologist is a scientist who uses computational and statistical methods to analyze biological data, such as genetic sequences and molecular structures. They often work with tools like bioinformatics software and require skills in programming, data analysis, and biology to interpret complex biological information. This role is common in research institutions, biotech companies, and healthcare settings.

What are the key skills and qualifications needed to thrive as a Computational Biologist, and why are they important?

To thrive as a Computational Biologist, you need a strong background in biology, mathematics, statistics, and computer science, often supported by an advanced degree in a relevant field. Proficiency with programming languages (such as Python or R), bioinformatics tools, and data analysis platforms is essential. Strong problem-solving abilities, attention to detail, and effective communication are standout soft skills for this role. These skills are critical for analyzing complex biological data, interpreting results, and collaborating with multidisciplinary teams to advance scientific research.
What are popular job titles related to Computational Biologist jobs in Quebec? For Computational Biologist jobs in Quebec, the most frequently searched job titles are:
What job categories do people searching Computational Biologist jobs in Quebec look for? The top searched job categories for Computational Biologist jobs in Quebec are:
What are popular job titles related to Computational Biologist jobs in QC? For Computational Biologist jobs in QC, the most frequently searched job titles are:
Infographic showing various Computational Biologist job openings in Quebec as of July 2026, with employment types broken down into 23% Internship, 1% As Needed, 64% Full Time, 8% Part Time, 2% Temporary, and 2% Contract. Highlights an 85% Physical, 3% Hybrid, and 12% Remote job distribution.

Research Scientist, Virtual Cell Modelling & Perturbative Biology Foundation Models

Valence Labs

Montreal, QC • On-site, Remote

Other

Re-posted 3 days ago


Job description

About Valence Labs

Valence Labs is Recursion's frontier AI research engine. We lead high-impact research programs designed to materially expand Recursion's ability to discover and develop medicines for complex diseases.

Our team balances near-term pragmatism with a long-term view of where the field is heading in the next 3-5 years, incubating, designing, and productizing the approaches we believe will define the future of drug discovery. Our work is driven by optimism, purpose, and a shared vision for a healthier tomorrow. We publish in top journals and conferences, contribute to open science, and engage with some of the world's most active ML-for-drug-discovery research communities. Our teams are based in London and Montreal, with deep ties to Mila, the world's largest deep-learning research institute.

About The Role

You will be joining a research program building multimodal foundation models to predict cellular responses to chemical and genetic perturbations across petabyte-scale omics and imaging data. The work spans generative and distributional modeling, representation learning for molecules and genes/proteins, and the design of biologically grounded evaluation frameworks. The goal is to close critical gaps in the pre-clinical pipeline, replacing or augmenting wet-lab perturbation screens with in silico predictions that are reliable enough to drive drug discovery decisions. We are seeking a Research Scientist with strong ML research and engineering skills, and genuine curiosity for biology, to join a multidisciplinary team of ML researchers, engineers, and computational biologists working toward a shared goal: building virtual cells that transform how medicines are discovered.

Key Responsibilities
  • Generative Modeling: Research and develop generative and distributional models (e.g., flow matching, diffusion models) to predict high-dimensional cellular responses.
  • Scalable ML Engineering: Build and maintain ML systems capable of processing massive multiomics datasets on high-performance compute clusters.
  • Biological Grounding: Work closely with colleagues to ensure model predictions are interpretable, trustworthy,  actionable, and grounded in real experimental outcomes.
  • Evaluation Frameworks: Help design and implement rigorous evaluation metrics that test generalization across for cellular context, unseen perturbations and covariates, going beyond IID performance to reflect real deployment conditions.
  • Open Science & Collaboration: Publish findings in top-tier venues (e.g., NeurIPS, ICML, Nature, Science, Cell) and contribute to the broader scientific community.
What We're Looking For

We prioritize scientific depth in both ML and biology, but will consider exceptional ML candidates willing to develop biological expertise on the job. A successful candidate will have most of the following:

  • PhD (or equivalent) with significant academic or industry research experience in machine learning applied to drug discovery, life sciences or other real-world scientific or engineering problems.
  • Strong background in generative modeling and representation learning, with experience applying these to high-dimensional scientific data (e.g., images, count matrices, graphs); experience with biological data is a plus.
  • Scientific knowledge of biology or chemistry, with familiarity with perturbational / interventional experimental paradigms (e.g., chemical or genetic screens, transcriptomics, high-content imaging).
  • Impactful research track record, including developing ML models for complex real-world data, proposing new training or evaluation approaches, or applying generative methods to scientific problems, particularly in biology or life sciences.
  • Strong technical and engineering skills, including the ability to rapidly prototype and scale ML models, manage large codebases, and maintain reproducible research pipelines; Python proficiency required, experience with compiled languages a plus.
  • Cross-functional comfort, with the ability to work effectively across disciplines (e.g with dry and wet-lab scientists) to ensure models address real scientific questions.
  • Leadership and communication skills: including an authorship record in peer-reviewed conferences (e.g., NeurIPS, ICML, ICLR) or journals (e.g., Nature, Science, Cell).

Working Location & Compensation:

This is an office-based, hybrid position at either of our offices located in Montreal, Quebec, Canada. Employees are expected to work in the office at least 50% of the time.

Compensation packages are competitive and commensurate with the skills and level of experience required for this role. In addition to base salary you will also be eligible for an annual bonus and equity compensation, as well as a comprehensive benefits package. 

#LI-EP1