--- license: apache-2.0 language: - ar pipeline_tag: text-classification tags: - transformers - sentence-transformers - text-embeddings-inference --- # Introducing ARM-V1 | Arabic Reranker Model (Version 1) **For more info please refer to this blog: [ARM | Arabic Reranker Model](www.omarai.me).** ✨ This model is designed specifically for Arabic language reranking tasks, optimized to handle queries and passages with precision. ✨ Unlike embedding models, which generate vector representations, this reranker directly evaluates the similarity between a question and a document, outputting a relevance score. ✨ Trained on a combination of positive and hard negative query-passage pairs, it excels in identifying the most relevant results. ✨ The output score can be transformed into a [0, 1] range using a sigmoid function, providing a clear and interpretable measure of relevance. ## Usage ### Using sentence-transformers ``` pip installsentence-transformers ``` ```python from sentence_transformers import CrossEncoder # Load the cross-encoder model # Define a query and a set of candidates with varying degrees of relevance query = "تطبيقات الذكاء الاصطناعي تُستخدم في مختلف المجالات لتحسين الكفاءة." # Candidates with varying relevance to the query candidates = [ "الذكاء الاصطناعي يساهم في تحسين الإنتاجية في الصناعات المختلفة.", # Highly relevant "نماذج التعلم الآلي يمكنها التعرف على الأنماط في مجموعات البيانات الكبيرة.", # Moderately relevant "الذكاء الاصطناعي يساعد الأطباء في تحليل الصور الطبية بشكل أفضل.", # Somewhat relevant "تستخدم الحيوانات التمويه كوسيلة للهروب من الحيوانات المفترسة.", # Irrelevant ] # Create pairs of (query, candidate) for each candidate query_candidate_pairs = [(query, candidate) for candidate in candidates] # Get relevance scores from the model scores = model.predict(query_candidate_pairs) # Combine candidates with their scores and sort them by score in descending order (higher score = higher relevance) ranked_candidates = sorted(zip(candidates, scores), key=lambda x: x[1], reverse=True) # Output the ranked candidates with their scores print("Ranked candidates based on relevance to the query:") for i, (candidate, score) in enumerate(ranked_candidates, 1): print(f"Rank {i}:") print(f"Candidate: {candidate}") print(f"Score: {score}\n") ``` ## Evaluation ## Acknowledgments The author would like to thank Prince Sultan University for their invaluable support in this project. Their contributions and resources have been instrumental in the development and fine-tuning of these models. ```markdown ## Citation If you use the GATE, please cite it as follows: @misc{nacar2025ARM, title={ARM, Arabic Reranker Model}, author={Omer Nacar}, year={2025}, url={https://huggingface.co/Omartificial-Intelligence-Space/ARA-Reranker-V1}, }