--- base_model: meta-llama/Meta-Llama-3-8B-Instruct library_name: peft license: mit tags: - llama-factory - lora - generated_from_trainer model-index: - name: sft results: [] pipeline_tag: text-generation --- ## Introduction A predictive weak LLM for translating user chat to a specific transformation task. This model is fine-tuned on a curated training dataset that collects common transformation tasks in the wild. Users can interact with the model via 1) direct chat; 2) providing example pairs; 3) describing patterns or mixed input. This model will predict the most suitable task and return operator & coding instructions accordingly. This model can classify the following data transformation tasks: 1. Format: related to value consistency without arithmetic relation, e.g., to lower case, ABC → abc. 2. UnitConvert: transform regular metrics using a range of measurement unit scales, e.g., Hour → Minute, Kilogram→ Pound. 3. Extract: generally driven by Regex, e.g., ABC → BC. 4. DomainCalculate: convert cross-domain value by calculation, often observed in numerics, e.g., Unix timestamp → Local time with timezone. 5. DomainMap: convert cross-domain value by mapping relation, often observed in categorical case, e.g., Color RGB → Hex. 6. Transform: default, if none of the above all --- ## Examples User chat + example-pair - Unit Conversion ``` ### Instruction ### kgs to pounds, one digit after the decimal, rounding ### Examples ### Input: 2 Output: 4.4 Input: 3 Output: 6.6 ``` unit_convert(): Convert kilograms to pounds, rounding to one decimal place - Month number to name ``` ### Instruction ### convert month number to month name ### Examples ### Input: 7 Output: July Input: 12 Output: December ``` domain_map(): Convert a month number to its corresponding month name.