--- license: apache-2.0 language: - en base_model: - OpenGenerativeAI/Bifrost pipeline_tag: text-generation library_name: transformers tags: - Bifröst - Bifrost - code inference: parameters: temperature: 0 widget: - messages: - role: user content: >- Generate secure production code for [task] in python with proper input validation, current cryptographic standards, least privilege principles, comprehensive error handling, secure logging, and defense-in-depth. Include security-focused comments and explain critical security decisions. Follow OWASP/NIST standards. --- ## Bifröst-14B ![image/png](https://cdn-uploads.huggingface.co/production/uploads/64a834a8895fd6416e29576f/sAXfe0cQdULI_GEVxBstw.png) Bifröst is an advanced AI model built upon Phi-4 integrated into the Llama architecture, specifically fine-tuned for secure and efficient enterprise-grade code generation. Designed to meet rigorous standards of safety, accuracy, and reliability, Bifröst empowers organizations to streamline software development workflows while prioritizing security and compliance. ### Model Details - **Model Name:** Bifröst-14B - **Base Architecture:** Phi-4 adapted to Llama - **Application:** Enterprise Secure Code Generation - **Release Date:** 07-March-2025 ### Intended Use Bifröst is designed explicitly for: - Generating secure, efficient, and high-quality code. - Supporting development tasks within regulated enterprise environments. - Enhancing productivity by automating routine coding tasks without compromising security. ### Features - **Security-Focused Training:** Specialized training regimen emphasizing secure coding practices, vulnerability reduction, and adherence to security standards. - **Enterprise-Optimized Performance:** Tailored to support various programming languages and enterprise frameworks with robust, context-aware suggestions. - **Compliance-Driven Design:** Incorporates features to aid in maintaining compliance with industry-specific standards (e.g., GDPR, HIPAA, SOC 2). ### Limitations - Bifröst should be used under human supervision to ensure code correctness and security compliance. - Model-generated code should undergo appropriate security and quality assurance checks before deployment. ### Ethical Considerations - Users are encouraged to perform regular audits and compliance checks on generated outputs. - Enterprises should implement responsible AI practices to mitigate biases or unintended consequences.