Edit model card

Generate training data

# Function to convert dataframe to list of InputExample
def df_to_input_examples(df):
    return [
        InputExample(texts=[row['query'],
                            row['document']],
                            label=float(row['relevance_score']))
        for _, row in df.iterrows()
    ]

train_samples = df_to_input_examples(train_df)
val_samples = df_to_input_examples(val_df)

# Create a DataLoader for training
train_dataloader = DataLoader(train_samples, shuffle=True, batch_size=16)

Create Evaluator class

# Custom evaluator for CrossEncoder
class CrossEncoderEvaluator:
    def __init__(self, eval_samples):
        self.eval_samples = eval_samples

    def __call__(self, model, **kwargs):  # Add **kwargs to catch extra arguments
        predictions = model.predict([[sample.texts[0], sample.texts[1]] for sample in self.eval_samples])
        labels = [sample.label for sample in self.eval_samples]

        pearson_corr, _ = pearsonr(predictions, labels)
        spearman_corr, _ = spearmanr(predictions, labels)

        return (pearson_corr + spearman_corr) / 2  # Average of Pearson and Spearman correlations

# Prepare the evaluator
evaluator = CrossEncoderEvaluator(val_samples)

Train the model

# Initialize the cross-encoder model
model = CrossEncoder('cross-encoder/ms-marco-MiniLM-L-6-v2', num_labels=1)

# Train the model
model.fit(
    train_dataloader=train_dataloader,
    evaluator=evaluator,
    epochs=100,
    warmup_steps=100,
    evaluation_steps=500,
    output_path='fine_tuned_reranker'
)

Usage

# Load the fine-tuned reranker
reranker_model = CrossEncoder('fine_tuned_reranker')

def search_and_rerank(query, documents, top_k=10):
    # Prepare pairs for reranking
    pairs = [(query, doc) for doc in documents]

    # Rerank using fine-tuned cross-encoder
    rerank_scores = reranker_model.predict(pairs)

    # Sort results by reranker scores
    reranked_results = sorted(
        zip(documents, rerank_scores.tolist()),
        key=lambda x: x[1], reverse=True
    )

    return reranked_results

query = "OPPO 8GB 128G"
documents = [
"OPPO Reno11F 5G 8GB-256GB",
"OPPO Reno11F 5G 8GB-32GB",
"OPPO Reno11F 5G 16GB-128GB",
"Samsung galaxy 128GB",
"Samsung S24 128GB",
# ...
]

start_time = time.time()
results = search_and_rerank(query, documents, len(documents)-1)
end_time = time.time()

execution_time = (end_time - start_time)*1000
print(f"Execution time: {execution_time:.4f} mili seconds")

print(f"Query: \t\t\t\t{query}")
for res in results:
    print(f"Score: {res[-1]:.4f} | Document: {res[0]}")

Credit goes to: giangvo.gt@gmail.com

Downloads last month
5
Safetensors
Model size
22.7M params
Tensor type
F32
·
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.