license: apache-2.0
language:
- th
- en
metrics:
- accuracy
datasets:
- AIAT/The_Scamper-train
pipeline_tag: table-question-answering
Model Card for Model ID
Model Details
Model Description
- Developed by: The Scamper
- Model type: Transformer
- Language(s) (NLP): Thai, English
- License: apache-2.0
- Finetuned from model: OpenThaiGPT-1.0.0 70B (https://huggingface.co/openthaigpt/openthaigpt-1.0.0-70b-chat)
Uses
The Tubular Question Answering Large Language Model is based on OpenThaiGPT and fine-tuned for converting natural language questions into SQL queries. It learns to map the nuances of Thai language to SQL structures, enabling efficient retrieval of information from databases.
model2_path ="AIAT/The_Scamper-opt70bqt" tokenizer = AutoTokenizer.from_pretrained(model2_path, padding_side="right",use_fast=False) model = AutoModelForCausalLM.from_pretrained(model2_path, device_map="auto")
Recommendations
How to Get Started with the Model
Use the code below to get started with the model.
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Training Details
Training Data
[More Information Needed]
Training Procedure
The methodology for fine-tuning involves a dataset with two columns: "question" and "SQL syntax". Here's a brief outline of the process:
Data Collection: Gather a dataset containing pairs of questions and their corresponding SQL queries. Ensure the questions cover various topics and query types, while the SQL queries represent the desired actions on a database.
Pre-processing: Clean and preprocess the data to remove noise, standardize formatting, and handle any inconsistencies. Tokenize the text and encode it into a format suitable for training.
Model Architecture: Utilize OpenThaiGPT 1.0.0 70B as the base model.
Fine-tuning Setup: Divide the dataset into training (90%) and test sets (10%). We define the training procedure, including hyperparameters such as learning rate, batch size, and number of training epochs.
Fine-tuning Process: Train the model on the question-SQL pairs using the defined setup. During training, the model learns to predict the SQL query corresponding to a given question by minimizing a suitable loss function.
Testing: Evaluate the final model on a held-out test set to assess its generalization performance on unseen data.
Deployment: Deploy the fine-tuned model for text-to-SQL tasks in real-world applications, where it can generate SQL queries from natural language questions effectively and efficiently.
By following this methodology, the model can be fine-tuned to accurately convert natural language questions into SQL syntax, enabling seamless interaction with structured databases.