repodIn
HomeFor DevelopersFor EmployersFor EnterpriseFor EducationPricing
Sign InSign Up
Repodin
Back to Home

EU AI Act Transparency Notice

Last updated: June 27, 2026

How RepodIn Uses Artificial Intelligence

EU AI Act Compliance

RepodIn is classified as a Limited Risk AI System under EU AI Act Article 52. This notice explains how we use AI and your rights. We are committed to transparency and compliance with EU AI Act requirements.

1. AI System Overview

RepodIn uses artificial intelligence (AI) to analyze code repositories, assess developer skills, and generate insights. This transparency notice explains how we use AI and your rights under the EU AI Act. **What AI Systems We Use:** - Code analysis AI models (Claude, GPT-4, Gemini, DeepSeek, Mistral) - Natural language processing for report generation - Pattern recognition for code quality assessment - Skills assessment algorithms for developer portfolios and skills reports **Developer B2C use (skills reports, /in/[username] portfolios):** - AI generates informational skills reports and portfolio summaries from code you choose to analyze - Results are shown to you first; sharing a public portfolio link is your choice - We do not make automated hiring or employment decisions on your behalf **Risk Classification:** RepodIn is classified as a **Limited Risk AI System** under EU AI Act Article 52 for developer self-service use. We do not make automated decisions that significantly affect your legal rights or opportunities in the developer segment. Education grading workflows may involve separate risk classification — see institution compliance templates for teacher use.

2. When AI Is Used

AI is used in the following scenarios: **Code Repository Analysis:** - When you request analysis of a GitHub repository - When analyzing code quality, security, and best practices - When generating skills assessment reports **Skills Assessment & Developer Portfolio:** - When evaluating your technical skills based on code you connect - When generating employer-facing skills reports - When building or updating your public portfolio at /in/[username] **Report Generation:** - When creating analysis reports - When generating insights and recommendations - When formatting results for export **You will always be informed** when AI is being used through clear indicators, consent flows, and this transparency notice. Developer analyses show which model was used where applicable.

3. How AI Makes Decisions

**Decision-Making Process:** 1. **Input Processing:** Your code repository is analyzed using AI models 2. **Pattern Recognition:** AI identifies code patterns, quality metrics, and technical skills 3. **Scoring:** AI generates scores for correctness, completeness, style, documentation, maintainability, and security 4. **Insight Generation:** AI creates personalized insights and recommendations 5. **Report Compilation:** Results are compiled into a comprehensive report **AI Models Used:** - **Claude (Anthropic):** High-quality code analysis and reasoning - **GPT-4 (OpenAI):** Code understanding and pattern recognition - **Gemini (Google):** Fast analysis and cost-effective processing - **DeepSeek:** Code-specialized analysis - **Mistral:** EU-compliant AI processing **Model Selection:** We select AI models based on: - Analysis complexity and requirements - Cost optimization - Performance and speed - User preferences - Availability and reliability

4. Data Used by AI

**Data Sources:** **Public GitHub Data:** - Repository code and structure - Commit history and patterns - File organization and architecture - Technology stack information **LinkedIn Profile Data (with consent):** - Professional experience - Skills and endorsements - Education background - Work history **CV/Resume Data (with consent):** - Skills and qualifications - Work experience - Education details **Analysis Metadata:** - Analysis type and purpose - User preferences and settings - Historical analysis data (for improvement) **Data Processing:** - All data is processed securely in the EU - Data is anonymized where possible - Personal data is only used with your explicit consent - Data retention follows GDPR requirements

5. AI Limitations and Accuracy

**Important Limitations:** **Not Professional Advice:** - AI analysis is for informational purposes only - Not a substitute for professional code review - Not legal, financial, or career advice - Results should be interpreted with context **Accuracy Considerations:** - AI models may have biases or limitations - Analysis quality depends on code complexity - Results may vary between different AI models - Some edge cases may not be detected **Accuracy Metrics:** - Code quality scores: ±5-10% variance possible - Skills assessment: Based on code patterns, not comprehensive evaluation - Recommendations: Suggestions based on best practices, not guarantees **Continuous Improvement:** - We regularly update AI models - We monitor and improve accuracy - We incorporate user feedback - We track model performance metrics

6. Your Rights Under EU AI Act

**Right to Information:** - You have the right to know when AI is being used - You can request information about AI decision-making - You can access transparency notices (this page) **Right to Explanation:** - You can request an explanation of how AI made a decision - We will provide clear, understandable explanations - You can access AI decision logs for your analyses **Right to Human Review:** - You can request human review of AI-generated results - We provide manual review options for critical analyses - You can challenge AI decisions and request reconsideration **Right to Opt-Out:** - You can opt-out of AI-powered analysis (with limitations) - Some features require AI and cannot be disabled - You can request deletion of AI-generated data **Right to Data Access:** - You can access all your data, including AI analysis results - You can export your data in standard formats - You can request data deletion at any time

7. Transparency Measures

**What We Do:** **Clear Indicators:** - AI-powered badges and labels on analysis pages - Transparency notices before analysis starts - Model information displayed in results - Clear explanation of AI usage **Documentation:** - Complete AI system documentation - Model specifications and capabilities - Decision-making process documentation - Accuracy and limitation disclosures **Audit Trails:** - All AI usage is logged - Decision explanations are stored - User interactions are tracked - Compliance logs are maintained **User Education:** - AI system user guide available - Help documentation and FAQs - Support for understanding AI results - Regular updates on AI improvements

8. Compliance and Safety

**EU AI Act Compliance:** **Risk Management:** - Regular risk assessments - Compliance monitoring - Safety measures and safeguards - Error handling and fallbacks **Quality Assurance:** - Model performance monitoring - Accuracy tracking and improvement - User feedback integration - Continuous testing and validation **Data Protection:** - GDPR-compliant data processing - Secure data storage and transmission - Access controls and authentication - Regular security audits **Human Oversight:** - Human review available on request - Manual override options - Quality control processes - Escalation procedures for issues

9. Contact and Support

**Questions About AI Usage?** **General Inquiries:** Email: support@repodin.com Response time: 48 hours **AI Decision Explanations:** Use the "Explain AI Decision" button in your analysis results Or contact: ai-support@repodin.com **Human Review Requests:** Use the "Request Human Review" feature in your dashboard Or contact: support@repodin.com **Compliance Questions:** Email: compliance@repodin.com For EU AI Act compliance inquiries **Data Access Requests:** Use the data export feature in Settings Or contact: privacy@repodin.com

Quick Links

AI System User GuidePrivacy PolicyTerms of ServiceGDPR RightsEU AI Act notice (this page)AI analysis consent details

© 2026 RepodIn • Made in Finland • EU AI Act transparency notice