# GPTC General-purpose text classifier in Python GPTC provides both a CLI tool and a Python library. ## CLI Tool ### Classifying text python -m gptc classify This will prompt for a string and classify it, then print (in JSON) a dict of the format `{category: probability, category:probability, ...}` to stdout. Alternatively, if you only need the most likely category, you can use this: python -m gptc classify [-c|--category] This will prompt for a string and classify it, outputting the category on stdout (or "None" if it cannot determine anything). ### Compiling models python -m gptc compile This will print the compiled model in JSON to stdout. ## Library ### `gptc.Classifier(model)` Create a `Classifier` object using the given *compiled* model (as a dict, not JSON). #### `Classifier.confidence(text)` Classify `text`. Returns a dict of the format `{category: probability, category:probability, ...}` #### `Classifier.classify(text)` Classify `text`. Returns the category into which the text is placed (as a string), or `None` when it cannot classify the text. ### `gptc.compile(raw_model)` Compile a raw model (as a list, not JSON) and return the compiled model (as a dict). ## Model format This section explains the raw model format, which is how you should create and edit models. Raw models are formatted as a list of dicts. See below for the format: [ { "text": "", "category": "" } ] GPTC handles models as Python `list`s of `dict`s of `str`s (for raw models) or `dict`s of `str`s and `float`s (for compiled models), and they can be stored in any way these Python objects can be. However, it is recommended to store them in JSON format for compatibility with the command-line tool. ## Example model An example model, which is designed to distinguish between texts written by Mark Twain and those written by William Shakespeare, is available in `models`. The raw model is in `models/raw.json`; the compiled model is in `models/compiled.json`.