AI in Residence

Xaira Therapeutics
South San Francisco, California, United States$10k – $15kPosted 25 March 2026

Job Description

About Xaira Therapeutics Xaira is an innovative biotech startup focused on leveraging AI to transform drug discovery and development. The company is leading the development of generative AI models to design protein and antibody therapeutics, enabling the creation of medicines against historically hard-to-drug molecular targets. It is also developing foundation models for biology and disease to enable better target elucidation and patient stratification. Collectively, these technologies aim to continually enable the identification of novel therapies and to improve success in drug development. Xaira is headquartered in the San Francisco Bay Area, Seattle, and London. AI in Residence AI in Residence is a highly selective role at the intersection of frontier machine learning and drug discovery. Designed as an industry alternative to a traditional postdoctoral position, the program is for exceptional researchers and engineers who want to apply advanced AI to real biomedical problems end to end, from data to deployed systems. Residents join a small cohort working on high-impact AI efforts across Xaira. You’ll collaborate closely with AI scientists, research engineers, and drug discovery teams to design, build, and ship machine learning capabilities that directly influence therapeutic programs. This is hands-on, system-level work with real scientific consequence. We’re looking for candidates with technical depth, intellectual independence, strong research judgment, and evidence of delivering high-quality work—whether through publications, open-source, or production systems. What You’ll Do Develop and advance ML models for biological, preclinical, and translational datasets (e.g., multimodal omics, imaging, text, assay data) Design and implement scalable pipelines for data curation, training, evaluation, and inference integrated into discovery workflows Own projects end-to-end: problem framing → prototyping → validation → deployment Evaluate robustness and reliability (generalization, uncertainty, failure modes), plus interpretability where it supports scientific decision-making Contribute technical leadership by proposing new directions, shaping platform capabilities, and raising engineering/research standards through collaboration You Might Work On Examples include (not limited to): Foundation / representation models over multimodal biological and translational data Methods for small, biased, noisy datasets; distribution shift; and uncertainty estimation ML systems for experimental prioritization, assay interpretation, or translational signal discovery Evaluation frameworks and benchmarks tailored to discovery decision-making Tooling that makes models usable by scientists (interfaces, automation, monitoring) What Success Looks Like You ship one or more models or pipelines that are used in real discovery workflows Your work improves decision quality (e.g., better prioritization, faster iteration, clearer uncertainty) You raise the bar on evaluation rigor and reproducibility (strong baselines, error analysis, reliable metrics) You leave behind maintainable systems (tests, documentation, monitoring) that others can build on We Value Strong research judgment: choosing the right problems and knowing what “good evidence” looks like Rigor: careful experimental design, ablations, error analysis, and honest reporting Systems thinking: reliability, scalability, and maintainability—not just prototypes Clear communication: writing, documentation, and sharing decisions/assumptions Collaborative execution with scientific and engineering partners Program Structure Duration 6–12 months, with the possibility of extension or conversion to full-time Start Dates First hires beginning March 2026 , with rolling applications and additional intakes in Summer and Fall 2026 Cohort Size Small, highly selective cohort to enable meaningful ownership and close collaboration Mentorship Support Dedicated technical mentor, plu ... (truncated, view full listing at source)
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