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kaggle-sql-xp-phi-3-mini-4k-instruct

Model Details

Model Description

This model card describes Phi-3 Mini, a smaller variant of the Phi-3 series, designed to handle instructions with a 4k token context length. It is specifically fine-tuned to follow instructional prompts effectively, making it suitable for applications requiring interactive and responsive dialogue systems.

  • Developed by: spectrewolf8
  • Model type: Transformer-based Language Model
  • Language(s) (NLP): English (and SQL)
  • License: MIT
  • Finetuned from model: Phi-3-mini-4k-instruct base model

Uses

Direct Use

Phi-3 Mini can be used to translate natural language instructions into SQL queries, making it a powerful tool for database querying and management. Users can input descriptive text, and the model will generate the corresponding SQL commands.

Downstream Use

This model can be integrated into applications such as chatbots or virtual assistants that interact with databases. It can also be used in tools designed for automatic query generation based on user-friendly descriptions.

Out-of-Scope Use

Phi-3 Mini is not suitable for tasks requiring non-SQL-related language understanding or generation. It should not be used for generating queries in languages other than SQL or for other domains outside database querying.

Bias, Risks, and Limitations

Phi-3 Mini, like other language models, may have limitations in understanding complex or ambiguous instructions. The SQL queries generated might need manual review to ensure accuracy and appropriateness.

Recommendations

Users should verify the generated SQL queries for correctness and security, especially when using them in production environments. Implementing additional layers of validation and testing can help mitigate risks associated with incorrect SQL generation.

How to Get Started with the Model

To get started with Phi-3 Mini for SQL generation, follow the code snippet below:

# Import necessary libraries
import torch
from transformers import AutoTokenizer, AutoModelForCausalLM, set_seed

# Set the seed for the random number generator to ensure reproducibility
set_seed(1234)

# Define the repository name for the Hugging Face model
# 'hf_model_repo' is a variable that holds the repository name for the Hugging Face model
# 'username/modelname' is the repository name, where 'username' is the username of the repository owner
# and 'modelname' is the name of the model
hf_model_repo = "spectrewolf8/sql-xp-phi-3-mini-4k"

# Retrieve the device mapping and computation data type
# 'device_map' is a variable that holds the mapping of the devices that are used for computation
# 'compute_dtype' is a variable that holds the data type that is used for computation

# device_map = {"": 0}
# compute_dtype = torch.bfloat16 or torch.float16
device_map, compute_dtype

# Load a pre-trained tokenizer from the Hugging Face Model Hub
# 'tokenizer' is the variable that holds the tokenizer
# 'trust_remote_code=True' allows the execution of code from the model file
tokenizer = AutoTokenizer.from_pretrained(hf_model_repo, trust_remote_code=True)

# Load a pre-trained model for causal language modeling from the Hugging Face Model Hub
# 'model' is the variable that holds the model
# 'trust_remote_code=True' allows the execution of code from the model file
# 'torch_dtype=compute_dtype' sets the data type for the PyTorch tensors
# 'device_map=device_map' sets the device mapping
model = AutoModelForCausalLM.from_pretrained(hf_model_repo, trust_remote_code=True, torch_dtype=compute_dtype, device_map=device_map)

pipe = pipeline("text-generation", model=model, tokenizer=tokenizer)

# Define the input phrase which represents the user's request or query.
input_phrase = """
insert 5 values
"""

# Define the context phrase which provides the SQL table schema relevant to the input phrase.
context_phrase = """
CREATE TABLE tasks (
    id INT AUTO_INCREMENT PRIMARY KEY,
    name VARCHAR(100) NOT NULL,
    task_name VARCHAR(100) NOT NULL,
    userid INT NOT NULL,
    date DATE NOT NULL,
    FOREIGN KEY (userid) REFERENCES users(id)
);
"""

# Create a prompt by applying a chat template to the input and context phrases using the tokenizer.
# The 'apply_chat_template' method formats the input as a chat message, making it suitable for text generation.
# 'tokenize=False' indicates that the input should not be tokenized yet.
# 'add_generation_prompt=True' adds a prompt for text generation.
prompt = pipe.tokenizer.apply_chat_template(
    [{"role": "user", "content": f"\n #prompt: {input_phrase}\n #context: {context_phrase}"}],
    tokenize=False,
    add_generation_prompt=True
)

# Create a text generation pipeline using the specified model and tokenizer.
# The 'pipeline' function sets up a ready-to-use text generation pipeline, combining the model and tokenizer.
pipe = pipeline("text-generation", model=model, tokenizer=tokenizer)

# Generate text using the pipeline with the specified parameters.
# 'max_new_tokens=256' sets the maximum number of new tokens to generate.
# 'do_sample=True' enables sampling for text generation.
# 'num_beams=1' specifies the number of beams for beam search (1 means no beam search).
# 'temperature=0.3' controls the randomness of predictions by scaling the logits before applying softmax.
# 'top_k=50' considers only the top 50 token predictions for sampling.
# 'top_p=0.95' enables nucleus sampling, considering tokens that have a cumulative probability of 0.95.
# 'max_time=180' sets the maximum generation time to 180 seconds.
outputs = pipe(
    prompt,
    max_new_tokens=256,
    do_sample=True,
    num_beams=1,
    temperature=0.3,
    top_k=50,
    top_p=0.95,
    max_time=180
)

# Print the generated text by stripping out the prompt portion and displaying only the new generated content.
print(outputs[0]['generated_text'][len(prompt):].strip())

Fine Tuning Details

The fine-tuning process in this project involved adapting the pre-trained language model microsoft/Phi-3-mini-4k-instruct for generating SQL commands from natural language prompts. The methodology employed included the following key steps:

Data Preparation

A synthetic dataset, "gretelai/synthetic_text_to_sql," was utilized, containing examples of natural language instructions paired with SQL queries. The dataset was processed to extract essential fields, specifically the instruction("sql_prompt"), input("sql_context"), and output("sql"). Each data point was structured to simulate a conversation where the user's message encompassed the prompt and context, and the assistant's message contained the corresponding SQL output.

Quantization and Model Preparation

The project implemented 4-bit quantization through the BitsAndBytes library. This technique reduced the model's memory requirements while retaining performance accuracy. Additionally, QLoRA (Quantized Low-Rank Adaptation) was used to fine-tune the model. This involved introducing low-rank matrices into selected layers, such as attention and projection layers, to optimize the model's parameters without requiring full retraining.

Model and Tokenizer Setup

The tokenizer was customized to accommodate special tokens and proper padding management, particularly adjusting for left-side padding. These settings ensured accurate tokenization for the structured input required by the model.

Training Configuration

Fine-tuning was executed using the SFTTrainer from the Hugging Face Transformers library. The configuration included settings for a small batch size, gradient accumulation, and a learning rate tuned for the specific SQL generation task. The training setup incorporated various optimizations, including the use of mixed-precision training where beneficial.

Training Execution

The model underwent multiple epochs of training on the processed dataset. The process focused on optimizing the model's capability to understand and generate SQL queries based on diverse natural language instructions. Weights & Biases (wandb) was employed for detailed logging and monitoring of training metrics, allowing for robust tracking of the model's performance improvements.

Model Saving and Deployment

After fine-tuning, the updated model and tokenizer were saved locally and then uploaded to the Hugging Face Hub. This deployment step made the refined model accessible for future use, ensuring it could efficiently generate SQL commands in response to new prompts. The model's final configuration enabled effective inference, leveraging the improvements gained from the fine-tuning process.

Training Details

Training Data

Training Procedure

Preprocessing

Ignore columns other than "sql_prompt", "sql_context", "sql" from the dataset.

Training Hyperparameters

  • Training regime: Mixed precision (fp16) for efficiency.

Training aftermath

The model was trained on the RTX 3060 OC 12 GB variant. It took 5 hours to train the model with 10,000 values for training and 3,300 values for testing with 2 Epochs.

Demo

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