Orakl Oncology is pioneering a new paradigm in cancer drug development by building the world’s largest cohort of patient-derived organoid (PDO) avatars. Through our unique platform, we generate extensive multi-modal data from these avatars to discover and validate new oncology therapeutics with real-world patient relevance.
We are seeking a Senior AI Scientist in Computational Biology to develop cutting-edge AI and ML solutions that integrate diverse biological datasets and accelerate therapeutic discovery. This is a high-impact role embedded in a vibrant and multidisciplinary team of experimental biologists and engineers.
Design and implement advanced machine learning algorithms for large-scale, multi-modal biological datasets, including genomics, transcriptomics and experimental PDO data.
Develop and train generative AI and predictive models to capture disease heterogeneity, predict therapeutic responses, and identify novel targets and biomarkers.
Contribute to the computational foundation of PDO avatar analytics, working closely with cell biologists, bioinformaticians, and clinical collaborators to extract meaningful biological insights.
Provide assistance in partnership and commercial projects and contribute with scientific and computational insights useful for our partners.
Present and communicate findings clearly to internal teams and external stakeholders; contribute to publications, presentations, and IP development.
A driven computational scientist with deep curiosity for biology and a commitment to translational impact.
A strong team player, eager to work in a fast-paced, cross-functional, and dynamic environment where continuous learning is encouraged.
You’re proactive, rigorous, and comfortable taking ownership of large and complex problems end-to-end.
You have an exceptional track record of delivering complex scientific projects at a sustained pace.
Ph.D. or Master’s degree + 4 years experience in machine learning, artificial intelligence, computational biology, computer science, or a related field.
Extensive experience with Python, and deep learning frameworks such as PyTorch, JAX, or TensorFlow.
Proven expertise in one or more ML domains: generative modeling, graph neural networks, language models, causal inference, multi-task/transfer learning, active learning, or diffusion models.
Priior experience integrating multi-omics data into sophisticated AI models.
Strong knowledge of biological data formats and omics analysis (especially RNA-seq, WGS).
Familiarity with version control, cloud computing, and scalable model training (multi-GPU, distributed computing).
Hands-on experience in oncology.
Exposure to single-cell RNA-seq, spatial transcriptomics, or proteomics datasets.
Prior contributions to open-source software and/or impactful publications in top-tier journals or ML conferences.
Experience with pipeline development and workflow automation (e.g., Nextflow, Snakemake).
Strong understanding of drug discovery workflows, target ID, and translational biology.
Tieto spoločnosti tiež prijímajú pracovníkov na pozíciu "{profesia}".