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An observation-grounded benchmark framework for scientific modeling and design.

Project description

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SciModelingBench

Observation-grounded benchmarks for scientific modeling and design agents.

PyPI version Python versions Development status License

Documentation · Architecture · API · TFBind8 · TFBind10 Pho4 · Superconductor · CellDAG-NAS · Dataset Hub

SciModelingBench separates versioned scientific observations, Agent-visible inputs, trusted target functions, and benchmark evaluation into explicit, reusable interfaces. The source tree includes end-to-end TFBind8, TFBind10 Pho4, Superconductor, and CellDAG-NAS Tasks.

Installation

SciModelingBench requires Python 3.10 or later.

Stable Release

Install the latest published version from PyPI:

python -m pip install "sci-modeling-bench==0.3.0"

The same release can be installed from its Git tag:

python -m pip install \
  "git+https://github.com/xukp20/sci-modeling-bench.git@v0.3.0"

Development Version

The documentation below follows the current source tree:

python -m pip install \
  "git+https://github.com/xukp20/sci-modeling-bench.git@main"

What It Provides

SciModelingBench provides:

  • revision-pinned loading of scientific datasets hosted on Hugging Face;
  • semantic manifests, schemas, provenance metadata, and structured validation;
  • trusted Objectives for persisted-target lookup or derived evaluation;
  • Protocols that construct the information exposed to an optimization agent;
  • Tasks that bind Agent input to typed submission and metric semantics;
  • optional, lazily loaded domain-knowledge resources.

The package does not define a universal submission format, query budgets, agent workflows, process isolation, or an evaluation harness.

Quick Start: TFBind8

The package provides an end-to-end Task for the canonical TFBind8 SIX6_REF_R1 landscape. It combines the Design-Bench bottom-50% offline-data Protocol, exact Objective, ordered submission contract, and common candidate metrics:

from sci_modeling_bench.suites.design_bench import (
    TFBind8BlackBoxOptimizationTask,
)

task = TFBind8BlackBoxOptimizationTask.from_hub(
    revision="b9ec928a5b54e105926e86a2d89be80a07aa0763"
)
offline_data = task.build_input()

submission = [
    {"sequence": sequence}
    for sequence in offline_data["sequence"][:128]
]
evaluation = task.evaluate(submission)

print(evaluation.score)
print(evaluation.metrics)
print(evaluation.valid_candidates, evaluation.invalid_candidates)

The TFBind8 observations are downloaded from the public SciModelingBench Hugging Face organization and are not bundled in the Python wheel.

Core Concepts

  • Dataset binds immutable observations to metadata, semantic fields, validation rules, splits, and optional knowledge.
  • Objective validates candidates and returns declared persisted or derived outputs while preserving batch order and repeated candidates.
  • Protocol derives the data or context visible to an agent without modifying the underlying Dataset.
  • Task defines one complete submission contract and its evaluation metrics; only Objective-backed Task subclasses require an Objective.
  • Knowledge provides read-only explanatory resources pinned to the same dataset revision.

Dataset Artifacts

Dataset artifacts are hosted separately from this package. Neither the PyPI distribution nor the GitHub source repository bundles observation tables. Loaders resolve dedicated Hugging Face Dataset repositories at pinned commits; the package contains the framework, integrations, validators, and reproducible builders.

Documentation

Development Status

The public interfaces remain experimental. Pin package versions and Hugging Face revisions in reproducible runs. New releases are published only after the complete Dataset, Protocol, Objective, Task, documentation, and tests are validated together.

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