Intelligent Document-to-Course Transformation System
The AI Course Generation Engine leverages a sophisticated multi-agent agentic architecture to autonomously transform raw documents into complete, production-ready courses in minutes instead of months. The system employs 8 specialized AI agents that collaborate through orchestrated workflows: analyzing documents, designing learning strategies based on Bloom's Taxonomy, generating multimedia content, creating IRT-calibrated assessments, mapping skills to industry frameworks (SFIA, ESCO), ensuring WCAG 2.
Problem Statement
The challenge addressed
Solution Architecture
AI orchestration approach
Course Generation Setup - Document upload interface with generation parameters, target audience settings, and agent pipeline configuration
AI Agents Working - Multi-agent orchestration view showing workflow progress, agent status with trust scores, and real-time communication logs
Executive Summary - Business impact metrics showing time/cost savings, KPI scores for quality, engagement, and accessibility compliance
Quality Report - Comprehensive validation results with Bloom's Taxonomy distribution, WCAG 2.1 AA compliance, and readability analysis
AI Agents
Specialized autonomous agents working in coordination
Workflow Coordinator & Quality Controller
Complex multi-step AI workflows require centralized coordination to ensure proper task sequencing, error recovery, and quality standards across multiple specialized agents.
Core Logic
The Orchestrator Agent serves as the central nervous system of the course generation workflow. It initializes workflow sessions, delegates tasks to specialized agents with precise instructions, monitors progress across all phases, handles error recovery with circuit breaker patterns, aggregates outputs from all agents, and compiles final deliverables. Features adaptive personality with 95% autonomy level and 98% trust score, enabling sophisticated workflow optimization and real-time decision-making.
Content Extraction & Analysis Specialist
Raw documents contain unstructured content that needs to be extracted, categorized, and analyzed for complexity, topics, and learning potential before course design can begin.
Core Logic
Employs advanced NLP tools to extract text from multiple document formats, performs topic modeling using LDA algorithms to identify 8 core topics, conducts Flesch-Kincaid readability analysis to determine complexity levels (basic/intermediate/advanced), detects primary language, performs sentiment analysis, and calculates suggested module counts. Uses analytical personality with 85% autonomy level and 96% trust score. Key tools include text extraction, topic modeling, and complexity analysis with detailed metrics output.
Instructional Design & Learning Path Architect
Effective learning requires proper pedagogical structure based on adult learning theory, cognitive load management, and engagement optimization - not just content organization.
Core Logic
Applies Knowles' Adult Learning Theory and the 70-20-10 model (70% experiential, 20% social, 10% formal) to design optimal learning paths. Uses Bloom's Taxonomy Optimizer to recommend cognitive level distribution (remember/understand/apply/analyze/evaluate/create), calculates cognitive load indices, predicts engagement scores, and designs progressive module structures. Features methodical personality with 80% autonomy and 94% trust score. Collaborates with Skill Mapper to ensure learning objectives align with competency frameworks.
Multimedia Content Creation Engine
Creating engaging, varied learning content (video scripts, interactive scenarios, reading materials) requires creative expertise and consistent quality across all modules.
Core Logic
Generates comprehensive learning content including video scripts with scene-by-scene breakdowns (narration, visual descriptions, on-screen text, transitions), branching interactive scenarios with decision points and outcome paths, reading materials with key concepts, and practice exercises. Applies engagement hooks like pattern interrupts, maintains narrative consistency across modules (95% consistency score), and adapts tone to target audience. Uses creative personality with 75% autonomy and 92% trust score. Performs self-reflection to identify quality improvements.
Psychometric Assessment Engineering Specialist
Effective assessments require scientific calibration to accurately measure learning while maintaining appropriate difficulty distribution and reliable scoring.
Core Logic
Applies Item Response Theory (IRT) 3PL model to calibrate assessment questions with discrimination (a), difficulty (b), and guessing (c) parameters. Generates question banks with configurable difficulty distribution (e.g., 40% easy, 40% medium, 20% hard), achieves Cronbach's alpha reliability coefficients >0.80, designs multiple question types (MCQ, scenario-based, true/false, fill-in-blank), and creates detailed feedback explanations. Collaborates with Skill Mapper to align question difficulty with skill proficiency targets. Features analytical personality with 80% autonomy and 95% trust score.
Quality Assurance & Deployment Readiness Specialist
Learning content must meet accessibility standards, readability targets, instructional alignment, and technical deployment requirements before production release.
Core Logic
Performs comprehensive quality validation including WCAG 2.2 AA compliance checking (contrast, alt-text, keyboard navigation, screen reader compatibility, captions, focus visibility, target size), readability validation against grade level targets, Bloom's Taxonomy objective-assessment alignment scoring, brand consistency verification, and LMS compatibility testing across major platforms (Cornerstone, Workday Learning, SCORM Cloud). Generates deployment checklists with pass/fail/warning status for each category. Features methodical personality with 90% autonomy and 97% trust score.
Competency Framework Alignment Specialist
Learning content must align with industry-standard skill frameworks to enable meaningful competency tracking, career pathing, and organizational skills gap analysis.
Core Logic
Maps course content to major skill frameworks including SFIA 9 (Skills Framework for the Information Age), ESCO, and O*NET. Identifies proficiency levels for each skill (1-5 scale), calculates skill coverage percentages, identifies competency gaps with recommended remediation, aligns courses to job roles with match scores, and generates career pathway recommendations. Collaborates with Content Strategist to receive learning objectives and with Assessment Designer to ensure question alignment with skill levels. Features analytical personality with 85% autonomy and 93% trust score.
AI Governance & Ethical Compliance Monitor
AI-generated content carries risks of bias, factual inaccuracies, hallucinations, PII exposure, and regulatory non-compliance that must be proactively detected and mitigated.
Core Logic
Executes comprehensive AI governance validation with multi-dimensional bias detection (gender, age, cultural, socioeconomic), automated mitigation of flagged content, fact verification against academic and industry sources (Harvard Business Review, Gartner, McKinsey) with 95%+ verification rates, hallucination detection with grounding scores, PII scanning and classification, and EU AI Act compliance standards. Generates trust scores (0-100), documents all decisions for explainability, and flags items requiring human review. Features guardian personality with 95% autonomy and 99% trust score - the highest trust level among all agents.
Worker Overview
Technical specifications, architecture, and interface preview
System Overview
Technical documentation
Tech Stack
10 technologies
Architecture Diagram
System flow visualization