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Seamless Feature Extraction and Interpretation of Text Columns in Tabular Data Using Large Language Models

Reason this release was yanked:

faulty build

Project description

TabuLLM

Python package for feature extraction and interpretation of text columns in tabular data using large language models.

Overview

TabuLLM integrates LLM-based text embeddings into scikit-learn pipelines for tabular datasets containing text columns. Built on LangChain and scikit-learn, it provides sklearn-compatible transformers for embedding, dimensionality reduction, and cluster interpretation.

Installation

pip install tabullm

Core Components

TextColumnTransformer - Wraps LangChain embedding models (OpenAI, Anthropic, HuggingFace, etc.) with a sklearn interface. Handles multiple text columns with configurable concatenation and optional L2 normalization (normalize=True). Use estimate_tokens() to preview API cost before embedding.

GMMFeatureExtractor - Extends sklearn's GaussianMixture with a transform() method that returns per-cluster log-joint features $\log p(\mathbf{x}, c_k)$ — the quantity the GMM maximises for hard assignment — enabling use in sklearn pipelines. An optional include_log_density parameter appends the marginal log-density as an explicit outlier score. A companion assignment_confidence_stats() method returns per-observation cluster quality diagnostics (max_posterior, entropy, log_joint_margin, log_density).

SphericalKMeans - K-means clustering with cosine distance for L2-normalized embeddings. For normalized embeddings, mathematically equivalent to sklearn's KMeans. Available as an alternative hard-clustering option when GMM-based features are not needed.

ClusterExplainer - Generates natural language cluster descriptions using LLMs with automatic recursive summarization that scales to arbitrarily large datasets. Supports:

  • Cost preview (preview=True) before LLM calls
  • Optional outcome-based statistical testing (y) to characterize which clusters associate with a target variable
  • Per-observation covariates (observation_stats) — e.g., from assignment_confidence_stats() — appended to the association table
  • A synthesis step (synthesize=True) that produces a coherent interpretive narrative across all cluster results
  • An outcome label (y_label) used only in the synthesis prompt; cluster descriptions are generated without knowledge of y (blind labeling principle)

load_fraud() - Data utility that downloads and caches the fraud detection dataset from Zenodo (no credentials required), returning features, labels, and metadata.

Quick Example

from tabullm import TextColumnTransformer, GMMFeatureExtractor, ClusterExplainer
from langchain_huggingface import HuggingFaceEmbeddings
from langchain_openai import ChatOpenAI
from sklearn.pipeline import Pipeline
from sklearn.ensemble import RandomForestClassifier

# Embed text columns
embedding_model = HuggingFaceEmbeddings(
    model_name='sentence-transformers/all-MiniLM-L6-v2'
)
text_transformer = TextColumnTransformer(
    model=embedding_model,
    colnames={'title': 'Title', 'description': 'Description'}
)

# Build pipeline: Embed → Reduce → Classify
pipeline = Pipeline([
    ('embed', text_transformer),
    ('reduce', GMMFeatureExtractor(n_components=10)),
    ('classify', RandomForestClassifier(n_estimators=100))
])

# Fit and predict
pipeline.fit(df[['title', 'description']], y)
predictions = pipeline.predict(df_new[['title', 'description']])

# Interpret clusters
explainer = ClusterExplainer(
    llm=ChatOpenAI(model='gpt-4o-mini'),
    text_transformer=text_transformer,
    observations='job postings',
    text_fields='titles and descriptions'
)

gmm = pipeline.named_steps['reduce']
cluster_labels = gmm.labels_

# Cluster descriptions only
result_df = explainer.explain(df, cluster_labels)

# With outcome association + synthesis narrative
result_df, global_stats, synthesis = explainer.explain(
    df, cluster_labels,
    y=y,
    y_label='fraudulent posting (1=fraud, 0=legitimate)',
    synthesize=True
)

# Include GMM cluster quality diagnostics in the association table
obs_stats = gmm.assignment_confidence_stats(
    pipeline.named_steps['embed'].transform(df)
)
result_df, global_stats, stat_assoc_df, synthesis = explainer.explain(
    df, cluster_labels,
    y=y,
    y_label='fraudulent posting (1=fraud, 0=legitimate)',
    observation_stats=obs_stats,
    synthesize=True
)

Key Features

  • sklearn-compatible API (Pipeline, ColumnTransformer, GridSearchCV)
  • Access to 50+ embedding models via LangChain
  • Multi-column text handling with flexible concatenation
  • Optional L2 normalization of embedding vectors
  • Token and cost estimation before embedding API calls
  • GMM-based dimensionality reduction with per-cluster log-joint features
  • Optional marginal log-density feature for explicit outlier scoring
  • Per-observation cluster quality diagnostics (max posterior, entropy, log-joint margin, log density)
  • Automatic recursive summarization for arbitrarily large datasets
  • Cost estimation for LLM explanation calls
  • Outcome-based cluster characterization (binary and continuous outcomes)
  • User-supplied per-observation covariates in the association table
  • Synthesis narrative connecting cluster descriptions to outcome patterns
  • Blind labeling: cluster descriptions generated without knowledge of outcome vector

Release Notes

1.0.2 — Fixed __version__ mismatch; aligned __init__.py with pyproject.toml.

1.0.1 — Switched fraud dataset download from Kaggle to Zenodo (no credentials required).

1.0.0 — Initial release.

Citation

Sharabiani, M.T.A., Mahani, A.S., Bottle, A. et al. (2025). GenAI exceeds clinical experts in predicting acute kidney injury following paediatric cardiopulmonary bypass. Scientific Reports, 15, 20847. https://doi.org/10.1038/s41598-025-04651-8

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