Staff Machine Learning Engineer – Modeling
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What You Will Contribute To Altos
As a Machine Learning Engineer, you will play a prominent role in developing generative AI/ML models for multi-modal, multiscale biology. We are looking for a hands-on, senior level creative and collaborative person to join our multidisciplinary team of scientists and engineers focused on transforming how we treat aging and disease. The successful candidate will thrive in a fast-paced environment that emphasises teamwork, transparency, scientific excellence, originality, rigor, and integrity.
Responsibilities
- Partner with world-class scientists across Altos to help generate biological insights with the goal of developing novel therapies;
- Design and implement large-scale machine learning algorithms and systems applied to biological datasets;
- Train, evaluate, and optimize machine learning models at scale;
- Communicate effectively with internal and external collaborators to meet ambitious research and development goals.
Who You Are
- Proven track record leveraging machine learning to solve real-world problems;
- Expertise in one or more of the following: generative models, language models, computer vision, bayesian inference, causal reasoning & inference, transfer & multi-task learning, diffusion models, graph neural networks, active learning;
- Experience writing production-quality code with modern machine learning frameworks such as PyTorch, TensorFlow, JAX, or similar;
- Experience with multi-GPU and distributed training at scale;
- A team player who thrives in collaborative environments and is committed to enabling colleagues to reach their full potential;
- Growth mindset – the desire to constantly expand your skillset and knowledge.
- Keen to learn more about biology, computational science, and medicine;
Excitement about the Altos mission of restoring cell health and resilience to reverse disease, injury, and age-related disabilities.
Minimum Qualifications
- Masters or Ph.D. degree in a quantitative/computational field such as computer science, artificial intelligence, mathematics, statistics, physics, or computational biology, or equivalent experience;
- Experience in developing machine learning models;
- Very strong programming skills, including experience with Python and deep learning libraries such as PyTorch or JAX;
- Experience in large-scale distributed optimization of machine learning models across multiple GPUs and nodes.
Preferred Qualifications
- Familiarity with biological data formats, concepts, and computational models;
- Experience in cell health and rejuvenation-related research area;
- Experience with identification and assessment of drug targets and/or therapeutic compounds;
- Experience in the application of machine learning methods to biological data, including genomics, transcriptomics, epigenetics, proteomics, and imaging;
- Track record in open-source software development, e.g., demonstrated by high-impact GitHub repository;
- Track record of high-caliber scientific work, e.g., demonstrated through publications in peer-reviewed scientific journals or major ML conferences;
- Experience with one lower level language (not limited to, but such as C++, Rust);
- Experience with large scale data processing and database tools such as MapReduce, Dask, SQL, Hugging Face Datasets, TileDB, Ray.
The salary range for Cambridge, UK:
Senior Machine Learning Engineer: £90,950 – £123,050
Staff Machine Learning Engineer: £113,900 – £154,100
Exact compensation may vary based on skills, experience, and location.
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