A comprehensive machine learning library providing supervised and unsupervised learning algorithms with consistent APIs and extensive tools for data preprocessing, model evaluation, and deployment.
87
Pending
Does it follow best practices?
Impact
87%
0.98xAverage score across 10 eval scenarios
Pending
The risk profile of this skill
{
"context": "Evaluates whether the solution uses scikit-learn estimators with their unified fit/predict/transform contract to deliver the behaviors defined in the spec, including prediction, scaling-style transformation, combined invocation, and fit-state handling.",
"type": "weighted_checklist",
"checklist": [
{
"name": "Predictor fit/predict",
"description": "Uses a scikit-learn predictive estimator such as LogisticRegression, DecisionTreeClassifier, or a comparable classifier; calls its fit on the training features and labels and predict on the evaluation features to produce the specified labels in order.",
"max_score": 30
},
{
"name": "Transformer fit/transform",
"description": "Uses a scikit-learn transformer (e.g., StandardScaler or another transformer exposing fit/transform) to achieve column-wise zero mean and unit variance on the provided data, relying on fit then transform rather than manual normalization.",
"max_score": 25
},
{
"name": "Combined reuse",
"description": "Implements the combined workflow by reusing the same fitted scikit-learn estimator instances (or a Pipeline) so that a single fit supports both predict and transform outputs without re-fitting or diverging parameters.",
"max_score": 20
},
{
"name": "Fit precondition",
"description": "Detects unfitted estimators using scikit-learn conventions (e.g., sklearn.utils.validation.check_is_fitted or checking fitted attributes) and raises a clear error before predict/transform when fit has not been called.",
"max_score": 15
},
{
"name": "Argument consistency",
"description": "Maintains the shared train/eval argument order across fit_predict, fit_transform, and fit_predict_transform entrypoints and forwards data directly into the scikit-learn methods without altering the expected shapes or ordering.",
"max_score": 10
}
]
}docs
evals
scenario-1
scenario-2
scenario-3
scenario-4
scenario-5
scenario-6
scenario-7
scenario-8
scenario-9
scenario-10