--- license: mit tags: - code - link - urlshortener --- # Model Card for AI-URL-Shortener Model Name: AI-URL-Shortener ## Model Details ### Model Description AI-URL-Shortener is a machine learning model designed to automate the process of creating meaningful, human-readable URL shorteners. This model analyzes the original link provided by the user, generates a preview of the content, and suggests multiple unique and relevant suffix options for the shortened URL. The model is built to integrate seamlessly with URL shortener platforms, like [LinksGPT](https://www.linksgpt.com/), and aims to enhance user experience by providing smart suffix recommendations that align with the content of the original link. Features: - Original URL Analysis: Extract metadata such as title, description, and keywords. - Dynamic Recommendations: Create suffixes based on the extracted metadata, user input, or custom branding. - Intelligent Validation: Ensure generated suffixes are unique and valid. Metadata: - **Developed by:** LinksGPT Team - **Model type:** LLM - **License:** MIT ### Model Sources - **Repository:** [More Information Needed] - **Paper [optional]:** [More Information Needed] - **Demo [optional]:** [More Information Needed] ## Uses Intended Users: - URL shortening platforms. - Marketers looking for brand-aligned short links. - Developers integrating custom URL shorteners into applications. ### Direct Use URL Shortening: Automatically generate short and descriptive URLs for social sharing or branding. Preview Links: Offer a content preview to help users select relevant suffixes for better engagement. Custom URL Recommendations: Provide personalized suggestions based on the content and user preferences. ## Bias, Risks, and Limitations Limitations: - Content Preview Accuracy: The preview is dependent on the metadata availability of the original link. - Suffix Creativity: The model generates suffixes within the constraints of URL standards, which may limit overly creative outputs. - Real-Time Validation: Requires integration with a live URL shortener backend for uniqueness checks. ### Recommendations Users (both direct and downstream) should be made aware of the risks, biases and limitations of the model. More information needed for further recommendations. ## How to Get Started with the Model Use the code below to get started with the model. How to Use: - Input the original URL into the model. - Receive a content preview and a list of recommended short-link suffixes. - Select or customize a suffix based on the recommendations. - Use the selected suffix to generate the final shortened URL via the backend system. Example code snippet: ```python from transformers import pipeline # Load model model = pipeline("text-generation", model="huggingface/ai-url-shortener") # Input original URL original_url = "https://example.com/interesting-article" # Generate suffix recommendations results = model(f"Generate suffixes for: {original_url}") print(results) ``` ## Training Details ### Training Data The model was trained on a large dataset of URLs, metadata, and user-selected short link patterns. The dataset includes a mix of general, e-commerce, social media, and enterprise links, ensuring versatility across industries. ## Evaluation ### Testing Data, Factors & Metrics #### Testing Data [More Information Needed] #### Factors [More Information Needed] #### Metrics The model is evaluated on: - Suffix Relevance: How well the generated suffixes align with the link content. - Uniqueness: Ensuring no duplicate or conflicting suffixes are generated. - User Engagement: Improvement in click-through rates (CTR) for suggested short links. ### Results [More Information Needed] #### Summary ## Technical Specifications ### Model Architecture and Objective The model leverages a combination of: - Natural Language Processing (NLP): To understand and extract relevant metadata from the original link. - Transformer Models: For generating meaningful and creative suffix recommendations. - Regex and Validation Layers: To ensure all generated suffixes conform to URL standards and avoid duplication. ### Compute Infrastructure #### Software [More Information Needed] ## More About LinksGPT LinksGPT is a professional link management platform for custom short urls, brand building and conversion optimization. It offers intelligent URL shortening and expansion, custom domains, team roles, customizable QR codes, tracking and AI-based in-depth analytics, deep linking, openAPI and enhanced link security. Powered by AI, it provides intelligent insights and recommendations based on user behavior and click patterns, support data-driven brand strategies and marketing decisions. ## Model Card Authors LinksGPT ## Model Card Contact service@linksgpt.com