Senior AI / Machine Learning Engineer
Quick Summary
About Absentia Labs Absentia Labs is building intelligent systems that sit at the intersection of AI, biology, chemistry, and large-scale engineering. Our goal is to translate complex scientific data into machine intelligence capable of reasoning, generalizing, and driving discovery.
As a Senior AI/ML Engineer, you will lead the design, training, and deployment of large-scale machine learning models that form the core of Absentia Labs’ AI capabilities.
You are a senior ML engineer who thinks holistically about models as systems. You are comfortable operating under uncertainty, making trade-offs between compute, data, and performance, and owning outcomes from research through production.
Absentia Labs is building intelligent systems that sit at the intersection of AI, biology, chemistry, and large-scale engineering. Our goal is to translate complex scientific data into machine intelligence capable of reasoning, generalizing, and driving discovery.
Biomedical data is fragmented, noisy, and deeply interconnected. Turning it into a useful signal requires not only strong data foundations but also carefully designed learning systems that can scale across modalities, tasks, and uncertainty regimes. This role focuses on building and training those systems.
As a Senior AI/ML Engineer, you will lead the design, training, and deployment of large-scale machine learning models that form the core of Absentia Labs’ AI capabilities. You will work at the boundary between model architecture, training systems, and production infrastructure, with significant ownership over technical direction.
This role is intended for engineers who have trained large models in real production environments, understand the realities of scale, and can reason about both learning dynamics and systems constraints.
Responsibilities
~1 min read- →
Design, train, and evaluate large-scale models, including Large Language Models (LLMs), diffusion models, and Graph Neural Networks (GNNs).
- →
Own end-to-end training pipelines, from dataset interfaces and batching strategies to distributed training and checkpointing.
- →
Make principled decisions about model architecture, objective functions, optimization strategies, and scaling laws.
- →
Build and optimize distributed training systems (data parallelism, model parallelism, sharding, mixed precision).
- →
Collaborate closely with data engineers to define ML-ready datasets and streaming interfaces.
- →
Translate ambiguous scientific or product requirements into robust ML solutions.
- →
Drive model evaluation, ablation, and iteration with a focus on generalization, stability, and reproducibility.
- →
Contribute to architectural decisions around model serving, inference efficiency, and lifecycle management.
- →
Provide technical leadership through design reviews, mentorship, and cross-team collaboration.
You are a senior ML engineer who thinks holistically about models as systems. You are comfortable operating under uncertainty, making trade-offs between compute, data, and performance, and owning outcomes from research through production.
You care deeply about training dynamics, failure modes, and scaling behavior, and you have the scars to prove it.
5+ years of industry experience in machine learning or applied AI roles.
Demonstrated experience training large-scale models in production settings, not just prototypes.
Hands-on expertise with LLMs, diffusion models, and/or GNNs.
Strong proficiency in PyTorch (or equivalent deep learning frameworks).
Deep understanding of distributed training, including parallelism strategies and performance optimization.
Experience working with large datasets and high-throughput data pipelines.
Strong software engineering fundamentals: clean code, testing, reproducibility, and debugging at scale.
Ability to clearly communicate technical trade-offs to both technical and non-technical stakeholders.
Nice to Have
~1 min readExperience with reinforcement learning, fine-tuning, or preference-based optimization (e.g., RLHF).
Familiarity with model compression, distillation, or inference optimization.
Experience deploying models in production inference systems.
Exposure to multimodal learning or foundation models.
Prior work in startups or fast-moving R&D environments.
Contributions to open-source ML frameworks or research codebases.
Note: Prior experience with molecular or biomedical models is not required. We value strong ML systems experience and the ability to transfer learning across domains.
What We Offer
~1 min readPlease submit your resume and a brief note describing your experience training large-scale models. Links to GitHub repositories, papers, or technical write-ups are encouraged.
Absentia Labs is an equal opportunity employer. We believe diverse teams build better systems and stronger science, and we encourage applicants from all backgrounds to apply.
Location & Eligibility
Listing Details
- Posted
- March 19, 2026
- First seen
- May 6, 2026
- Last seen
- May 8, 2026
Posting Health
- Days active
- 0
- Repost count
- 0
- Trust Level
- 52%
- Scored at
- May 6, 2026
Signal breakdown
Please let absentia-labs know you found this job on Jobera.
1 other job at absentia-labs
View all →Explore open roles at absentia-labs.
Similar Machine Learning Engineer jobs
View all →Stay ahead of the market
Get the latest job openings, salary trends, and hiring insights delivered to your inbox every week.
No spam. Unsubscribe at any time.