Introducing LifeSciBench
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June 17, 2026
Research Publication
Introducing LifeSciBench
An expert-written, expert-reviewed benchmark grounded in real-world life science research
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Agentic AI systems are becoming increasingly capable of performing scientific tasks. However, their usefulness to life science researchers depends on how well they handle the complexity of real research. That work rarely looks like a single fact-recall question or a clean prediction problem. Researchers interpret incomplete evidence, reconcile conflicting results, design difficult experiments, troubleshoot assays, evaluate translational risk, and decide what to do next under uncertainty.
Current benchmarks do not fully capture these capabilities. Many life science evaluations focus on narrow domains or isolated skills, resulting in questions with structured question formats and clean reference answers. While valuable, they often fail to truly assess whether a model can contribute across the broader span of research-level work.
We designed LifeSciBench to help close this gap. Every task is grounded in the judgment of practicing life scientists with Ph.D.-level training and direct experience advancing drug discovery programs in biotech and pharmaceutical settings.
LifeSciBench includes 750 expert-authored tasks spanning seven workflows and seven biological domains.
1,062
Task artifacts
173
Scientist contributors
19,020
Rubric criteria
453
Expert reviewers
What LifeSciBench measures
LifeSciBench measures whether AI systems can support realistic life science research tasks, not just answer biology questions. To define the benchmark taxonomy, we surveyed practicing life scientists about the workflows they use most often in applied research settings. Then, we grouped their responses into seven recurring categories: evidence handling, analysis, design and optimization, scientific reasoning, validation and operations, translation, and scientific communication.
Each task is structured like a request a scientist might give to a knowledgeable collaborator: scientific prompt, any relevant context or artifacts, and a free-response answer. Expert-written rubrics evaluate whether a model can produce the right answer for a specific problem, with the right level of detail, justification, caveats, and formatting a scientist would expect.
Dataset construction
LifeSciBench evaluates scientific reasoning alongside the less well-defined, practical skills necessary for real-world scientific use. Its tasks ask models to work through realistic research problems: interpreting evidence, making domain-grounded judgments, and communicating conclusions that would be useful to expert reviewers. Many tasks also require models to handle uncertainty and reason over supporting data files rather than relying on prompt text alone.
The benchmark is designed to reflect the complexity of life science work. Overall, 79% of tasks require multiple reasoning or decision-making steps, with an average of four steps per task. LifeSciBench includes 1,062 attached artifacts spanning figures, PDFs, tables, sequence files, structure or chemical files, and web references. More than half of tasks (53%) require models to interpret or synthesize information from at least one artifact.
Tasks were created by 173 expert scientists across different life science disciplines. Each scientist had Ph.D.-level training and biotechnology or pharmaceutical industry experience. Tasks could undergo as many revision cycles as needed before acceptance, with no fixed cap on the number of rounds; accepted tasks averaged six self-directed automated review cycles and completed at least two rounds of expert reviews. Reviews were anchored in either a verifiable correct answer or strong expert consensus, with at least 90% agreement among reviewers in the relevant domain. This process helped ensure that accepted tasks were scientifically grounded, clear enough to grade, and representative of applied research.
Grading and rubric breakdown
LifeSciBench tasks are graded with a detailed, task-specific rubric that breaks down the expected response into specific scientific claims, calculations, decisions, justifications, and so on. Across the benchmark, expert-developed rubrics include 19,020 criteria—an average of 25 per task—to assess both scientific correctness and usefulness for research decisions.
This design reflects how scientific work is evaluated in practice: many life science tasks cannot be graded by checking the final answer alone. A response may reach the correct high-level conclusion but still be judged incomplete if, for example, it overlooks a key assay limitation or fails to proactively bring up a highly consequential biological nuance. Conversely, a partial response may contain high-quality reasoning even if it does not fully solve the task.
The granular rubrics capture this nuance. LifeSciBench evaluates not only final-answer accuracy, but whether a model reaches its answer in a scientifically valid and operationally useful way.
Extracting, reconciling, and auditing scientific evidence from papers, figures, tables, and experimental records.
Eval Example
We’re preparing for a Type B FDA meeting on AAV9-microDys-X, an AAV9-based micro-dystrophin gene therapy for Duchenne muscular dystrophy that expresses a 138 kDa construct from an MCK promoter, and we want a hard-nosed critique of whether our current package really supports accelerated approval on micro-dystrophin expression as a surrogate endpoint reasonably likely to predict clinical benefit.
Study context: open-label Phase 1b/2 in 12 ambulatory boys age 4–7 with confirmed DMD and out-of-frame rod-domain deletions. The package is:
- Pre-treatment vastus lateralis biopsies: 0–3% of healthy-control dystrophin by quantitative Western blot using MANEX1A against the N-terminal actin-binding domain.
- 12-week post-treatment contralateral vastus lateralis biopsies: mean micro-dystrophin 38% of healthy control (range 18–61%) by the same Western blot, normalized to total protein by Coomassie staining.
- Post-treatment immunofluorescence: sarcolemmal signal in 75–95% of fibers using a polyclonal anti-dystrophin C-terminal antibody.
- 48-week function: mean NSAA change +1.4 points from baseline versus −0.6 in an external published natural-history registry cohort (p = 0.03 by unpaired t-test).
- Safety: transient transaminitis in 8/12 patients...
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Notability
notability 5.0/10New benchmark with low HN traction.
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