# What to Expect This script demonstrates how to use the `Instructor` library for fine-tuning a Python function that performs three-digit multiplication. It uses Pydantic for type validation and logging features to generate a fine-tuning dataset. ## How to Run ### Prerequisites - Python 3.9 - `Instructor` library ### Steps 1. **Install Dependencies** If you haven't already installed the required libraries, you can do so using pip: ``` pip install instructor pydantic ``` 2. **Set Up Logging** The script uses Python's built-in `logging` module to log the fine-tuning process. Ensure you have write permissions in the directory where the log file `math_finetunes.jsonl` will be saved. 3. **Run the Script** Navigate to the directory containing `script.py` and run it: ``` python three_digit_mul.py ``` This will execute the script, running the function ten times with random three-digit numbers for multiplication. The function outputs and logs are saved in `math_finetunes.jsonl`. 4. **Fine-Tuning** Once you have the log file, you can run a fine-tuning job using the following `Instructor` CLI command: ``` instructor jobs create-from-file math_finetunes.jsonl ``` Wait for the fine-tuning job to complete. If you have validation date you can run: ``` instructor jobs create-from-file math_finetunes.jsonl --n-epochs 4 --validation-file math_finetunes_val.jsonl ``` ### Output That's it! You've successfully run the script and can now proceed to fine-tune your model. ### Dispatch Once you have the model you can replace the model in `three_digit_mul_dispatch.py` with the model you just fine-tuned and run the script again. This time, the script will use the fine-tuned model to predict the output of the function.