--- title: FelaTab playground colorFrom: indigo colorTo: green sdk: gradio sdk_version: 4.44.0 app_file: app.py pinned: false license: other --- # FelaTab playground Paste a small labelled table and a row to predict. FelaTab learns the pattern from your example rows in a single forward pass, with no training or setup, and fills the answer with a confidence range. Runs on CPU. ## How to use Put your data as comma or space separated rows, one row per line, with a header line. The last column is the label. Use `?` in the label column for the rows you want predicted. - If the label column holds categories (e.g. Apple / Lemon / Grape), it predicts a class with probabilities (classification). - If the label column holds numbers, it predicts a value with an error bar (regression). ## Which model The Space loads the small tier by default (dim512, about 51.6M parameters, int8, roughly 52 MB). Set the environment variable `FELATAB_TIER=big` to load the flagship (about 411.9M parameters). ## Honest scope This is a research preview. FelaTab matches or slightly trails a tuned gradient boosted tree on zero shot classification and is behind trees on regression accuracy (it ships calibrated error bars for regression rather than headline accuracy). See the model card for the measured numbers.