Deep Learning Scientist - OMICs & AMR

Spore Bio
Paris, France
11 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Junior

Job location

Remote
Paris, France

Tech stack

Artificial Intelligence
Artificial Neural Networks
Computer Vision
Computational Biology
Python
Data Processing
PyTorch
Deep Learning
Feature Extraction
Software Version Control

Job description

As a Deep Learning Scientist specializing in OMICs, you will design computational frameworks to analyze and integrate proteomic, transcriptomic, and genomic data with optical and biological measurements., * Develop and implement deep learning models (transformers, graph neural networks, autoencoders) for multi-OMICs integration, with primary focus on proteomics.

  • Design pipelines for mass spectrometry-based proteomics data processing: feature extraction, normalization, quantification, and denoising.
  • Integrate transcriptomic and genomic datasets to support predictive modeling and mechanistic interpretation.
  • Combine molecular OMICs profiles with optical and microbiological data to model resistance mechanisms and predict phenotypic outcomes.
  • Adapt and implement state-of-the-art deep learning approaches from computational biology for translational diagnostic applications.
  • Collaborate closely with microbiologists, computer vision experts, and optical physicists to ensure biological interpretability of AI models.
  • Contribute to scientific publications, conferences, and intellectual property (patents) highlighting novel insights from integrated OMICs and optical data., We believe that flexibility and trust are important parts of a company. Our work environment reflects this thanks to:
  • Flexible remote: If you live in Paris, you can work from our office or from your place with no constraints.

On top of that, we offer many perks such as:

  • a budget for remote work equipment
  • a Gymlib subscription for you to stay in shape wherever you are
  • premium health insurance (Alan in France)
  • a Swile card for your meals, if you are based in France
  • frequent team events and in-person gatherings every quarter!, * A 1 hour technical case study followed by a debrief with team members
  • 1 hour Founders interview
  • Reference calls

You might also be invited to meet other team members at the office for a lab visit and a coffee !

This is a unique opportunity for someone who thrives on curiosity and has a genuine passion for technology. If you enjoy taking on challenges and solving complex problems, this role will provide the perfect environment for growth and impact. The ideal candidate is someone who is self-driven, eager to learn, and excited to contribute to shaping the future of microbiology monitoring. Join our innovative and dynamic team, and let's make a difference together! We look forward to meeting you!

Requirements

Do you have experience in Python?, We value curiosity, initiative, and a growth mindset: not every box needs to be ticked to apply. * Strong deep learning expertise, including transformers, GNNs, autoencoders, or self-supervised models.

  • Proven experience with proteomics data (mass spectrometry, feature extraction, normalization, integration).
  • Experience with transcriptomic and genomic datasets (secondary focus) and multi-OMICs integration.
  • Familiarity with Python, PyTorch, and data preprocessing/analysis pipelines.
  • Knowledge of reproducible coding practices and version control.

About the company

At Spore.Bio, we're reinventing how microbiology is done in industrial and clinical settings. After months spent inside factories and labs, we saw firsthand how slow and constrained traditional microbiological workflows still are. So we built a new paradigm using advanced optics and deep learning to deliver results in seconds instead of days. Today, we're taking this mission a step further. We created Spore.Labs, our fundamental research division dedicated to one of the biggest global health challenges starting with antimicrobial resistance (AMR). With the support of the Google.org AI for Science Initiative, Spore.Labs is launching an open-source program to reduce AMR diagnostic time from days to minutes enabling rapid identification of resistance genes and promoting targeted, responsible antibiotic use.

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