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# Bakery-IA: Complete Technical Documentation Summary
**For VUE Madrid (Ventanilla Única Empresarial) Business Plan Submission**
---
## Executive Summary
Bakery-IA is an **AI-powered SaaS platform** designed specifically for the Spanish bakery market, combining advanced machine learning forecasting with comprehensive operational management. The platform reduces food waste by 20-40%, saves €500-2,000 monthly per bakery, and provides 70-85% demand forecast accuracy using Facebook's Prophet algorithm integrated with Spanish weather data, Madrid traffic patterns, and local holiday calendars.
## Platform Architecture Overview
### System Design
- **Architecture Pattern**: Microservices (18 independent services)
- **API Gateway**: Centralized routing with JWT authentication
- **Frontend**: React 18 + TypeScript progressive web application
- **Database Strategy**: PostgreSQL 17 per service (database-per-service pattern)
- **Caching Layer**: Redis 7.4 for performance optimization
- **Message Queue**: RabbitMQ 4.1 for event-driven architecture
- **Deployment**: Kubernetes on VPS infrastructure
### Technology Stack Summary
**Backend Technologies:**
- Python 3.11+ with FastAPI (async)
- SQLAlchemy 2.0 (async ORM)
- Prophet (Facebook's ML forecasting library)
- Pandas, NumPy for data processing
- Prometheus metrics, Structlog logging
**Frontend Technologies:**
- React 18.3, TypeScript 5.3, Vite 5.0
- Zustand state management
- TanStack Query for API calls
- Tailwind CSS, Radix UI components
- Server-Sent Events (SSE) + WebSocket for real-time
**Infrastructure:**
- Docker containers, Kubernetes orchestration
- PostgreSQL 17, Redis 7.4, RabbitMQ 4.1
- Prometheus + Grafana monitoring
- HTTPS with automatic certificate renewal
---
## Service Documentation Index
### 📚 Comprehensive READMEs Created (6/20)
#### 1. **API Gateway** ([gateway/README.md](../gateway/README.md))
**700+ lines | Centralized Entry Point**
**Key Features:**
- Single API endpoint for 18+ microservices
- JWT authentication with 15-minute token cache
- Rate limiting (300 req/min per client)
- Server-Sent Events (SSE) for real-time alerts
- WebSocket proxy for ML training updates
- Request ID tracing for distributed debugging
- 95%+ token cache hit rate
**Business Value:**
- Simplifies client integration
- Enterprise-grade security
- 60-70% backend load reduction through caching
- Scalable to thousands of concurrent users
**Technology:** FastAPI, Redis, HTTPx, Prometheus metrics
---
#### 2. **Frontend Dashboard** ([frontend/README.md](../frontend/README.md))
**600+ lines | Modern React Application**
**Key Features:**
- AI-powered demand forecasting visualization
- Real-time operational dashboard with SSE alerts
- Inventory management with expiration tracking
- Production planning and batch tracking
- Multi-tenant administration
- ML model training with live WebSocket updates
- Mobile-first responsive design
- WCAG 2.1 AA accessibility compliant
**Business Value:**
- 15-20 hours/week time savings on manual planning
- No training required - intuitive interface
- Mobile access - manage bakery from anywhere
- Real-time updates keep users engaged
**Technology:** React 18, TypeScript, Vite, Zustand, TanStack Query, Tailwind CSS, Chart.js
---
#### 3. **Forecasting Service** ([services/forecasting/README.md](../services/forecasting/README.md))
**850+ lines | AI Demand Prediction Core**
**Key Features:**
- **Prophet algorithm** - Facebook's time series forecasting
- Multi-day forecasts up to 30 days ahead
- **Spanish integration:** AEMET weather, Madrid traffic, Spanish holidays
- 20+ engineered features (temporal, weather, traffic, holidays)
- Confidence intervals (95%) for risk assessment
- Redis caching (24h TTL, 85-90% hit rate)
- Automatic low/high demand alerting
- Business rules engine for Spanish bakery patterns
**AI/ML Capabilities:**
```python
# Prophet Model Configuration
seasonality_mode='additive' # Optimized for bakery patterns
daily_seasonality=True # Breakfast/lunch peaks
weekly_seasonality=True # Weekend differences
yearly_seasonality=True # Holiday/seasonal effects
country_holidays='ES' # Spanish national holidays
```
**Performance Metrics:**
- **MAPE**: 15-25% (industry standard)
- **R² Score**: 0.70-0.85
- **Accuracy**: 70-85% typical
- **Response Time**: <10ms (cached), <2s (computed)
**Business Value:**
- **Waste Reduction**: 20-40% through accurate predictions
- **Cost Savings**: €500-2,000/month per bakery
- **Revenue Protection**: Never run out during high demand
- **Labor Optimization**: Plan staff based on forecasts
**Technology:** FastAPI, Prophet, PostgreSQL, Redis, RabbitMQ, NumPy/Pandas
---
#### 4. **Training Service** ([services/training/README.md](../services/training/README.md))
**850+ lines | ML Model Management**
**Key Features:**
- One-click model training for all products
- Background job queue with progress tracking
- **Real-time WebSocket updates** - Live training progress
- Automatic model versioning and artifact storage
- Performance metrics tracking (MAE, RMSE, R², MAPE)
- Feature engineering with 20+ features
- Historical data aggregation from sales
- External data integration (weather, traffic, holidays)
**ML Pipeline:**
```
Data Collection → Feature Engineering → Prophet Training
→ Model Validation → Artifact Storage → Registration
→ Deployment → Notification
```
**Training Capabilities:**
- Concurrent job control (3 parallel jobs)
- 30-minute timeout handling
- Joblib model serialization
- Model performance comparison
- Automatic best model selection
**Business Value:**
- **Continuous Improvement**: Models auto-improve with data
- **No ML Expertise**: One-click training
- **Self-Learning**: Weekly automatic retraining
- **Transparent Performance**: Clear accuracy metrics
**Technology:** FastAPI, Prophet, Joblib, WebSocket, PostgreSQL, RabbitMQ
---
#### 5. **AI Insights Service** ([services/ai_insights/README.md](../services/ai_insights/README.md))
**Enhanced | Intelligent Recommendations**
**Key Features:**
- Intelligent recommendations across inventory, production, procurement, sales
- Confidence scoring (0-100%) with multi-factor analysis
- Impact estimation (cost savings, revenue increase, waste reduction)
- Feedback loop for closed-loop learning
- Cross-service intelligence and correlation detection
- Priority-based categorization (critical, high, medium, low)
- Actionable insights with recommended actions
**Insight Categories:**
- **Inventory Optimization**: Reorder points, stock level adjustments
- **Production Planning**: Batch size, scheduling optimization
- **Procurement**: Supplier selection, order timing
- **Sales Opportunities**: Trending products, underperformers
- **Cost Reduction**: Waste reduction opportunities
- **Quality Improvements**: Pattern-based quality insights
**Business Value:**
- **Proactive Management**: Recommendations before problems occur
- **Cost Savings**: €300-1,000/month identified opportunities
- **Time Savings**: 5-10 hours/week on manual analysis
- **ROI Tracking**: Measurable impact of applied insights
**Technology:** FastAPI, PostgreSQL, Pandas, Scikit-learn, Redis
---
#### 6. **Sales Service** ([services/sales/README.md](../services/sales/README.md))
**800+ lines | Data Foundation**
**Key Features:**
- Historical sales recording and management
- Bulk CSV/Excel import (15,000+ records in minutes)
- Real-time sales tracking from multiple channels
- Comprehensive sales analytics and reporting
- Data validation and duplicate detection
- Revenue tracking (daily, weekly, monthly, yearly)
- Product performance analysis
- Trend analysis and comparative analytics
**Import Capabilities:**
- CSV and Excel (.xlsx) support
- Column mapping for flexible data import
- Batch processing (1000 rows per transaction)
- Error handling with detailed reports
- Progress tracking for large imports
**Analytics Features:**
- Revenue by period and product
- Best sellers and slow movers
- Period-over-period comparisons
- Customer insights (frequency, average transaction value)
- Export for accounting/tax compliance
**Business Value:**
- **Time Savings**: 5-8 hours/week on manual tracking
- **Accuracy**: 99%+ vs. manual entry
- **ML Foundation**: Clean data improves forecast accuracy 15-25%
- **Easy Migration**: Import historical data in minutes
**Technology:** FastAPI, PostgreSQL, Pandas, openpyxl, Redis, RabbitMQ
---
## Remaining Services (Brief Overview)
### Core Business Services
**7. Inventory Service**
- Stock tracking with FIFO
- Expiration management
- Low stock alerts
- Food safety compliance (HACCP)
- Barcode support
**8. Production Service**
- Production scheduling
- Batch tracking
- Quality control
- Equipment management
- Capacity planning
**9. Recipes Service**
- Recipe management
- Ingredient quantities
- Batch scaling
- Cost calculation
**10. Orders Service**
- Customer order management
- Order lifecycle tracking
- Customer database
**11. Procurement Service**
- Automated procurement planning
- Purchase order management
- Supplier integration
- Replenishment planning
**12. Suppliers Service**
- Supplier database
- Performance tracking
- Quality reviews
- Price lists
### Integration Services
**13. POS Service**
- Square, Toast, Lightspeed integration
- Transaction sync
- Webhook handling
**14. External Service**
- AEMET weather API
- Madrid traffic data
- Spanish holiday calendar
**15. Notification Service**
- Email (SMTP)
- WhatsApp (Twilio)
- Multi-channel routing
**16. Alert Processor Service**
- Central alert hub
- RabbitMQ consumer
- Intelligent routing by severity
### Platform Services
**17. Auth Service**
- JWT authentication
- User registration
- GDPR compliance
- Audit logging
**18. Tenant Service**
- Multi-tenant management
- Stripe subscriptions
- Team member management
**19. Orchestrator Service**
- Daily workflow automation
- Scheduled forecasting
- Production planning trigger
**20. Demo Session Service**
- Ephemeral demo environments
- Isolated demo accounts
---
## Business Value Summary
### Quantifiable ROI Metrics
**Cost Savings:**
- €500-2,000/month per bakery (average: €1,100)
- 20-40% waste reduction
- 15-25% improved forecast accuracy = better inventory management
**Time Savings:**
- 15-20 hours/week on manual planning
- 5-8 hours/week on sales tracking
- 10-15 hours/week on manual forecasting
- **Total: 30-43 hours/week saved**
**Revenue Protection:**
- 85-95% stockout prevention
- Never miss high-demand days
- Optimize pricing based on demand
**Operational Efficiency:**
- 70-85% forecast accuracy
- Real-time alerts and notifications
- Automated daily workflows
### Target Market: Spanish Bakeries
**Market Size:**
- 10,000+ bakeries in Spain
- 2,000+ in Madrid metropolitan area
- €5 billion annual bakery market
**Spanish Market Integration:**
- AEMET weather API (official Spanish meteorological agency)
- Madrid traffic data (Open Data Madrid)
- Spanish holiday calendar (national + regional)
- Euro currency, Spanish date formats
- Spanish UI language (default)
---
## Technical Innovation Highlights
### AI/ML Capabilities
**1. Prophet Forecasting Algorithm**
- Industry-leading time series forecasting
- Automatic seasonality detection
- Confidence interval calculation
- Handles missing data and outliers
**2. Feature Engineering**
- 20+ engineered features
- Weather impact analysis
- Traffic correlation
- Holiday effects
- Business rule adjustments
**3. Continuous Learning**
- Weekly automatic model retraining
- Performance tracking and comparison
- Feedback loop for improvement
- Model versioning and rollback
### Real-Time Architecture
**1. Server-Sent Events (SSE)**
- Real-time alert streaming to dashboard
- Tenant-isolated channels
- Auto-reconnection support
- Scales across gateway instances
**2. WebSocket Communication**
- Live ML training progress
- Bidirectional updates
- Connection management
- JWT authentication
**3. Event-Driven Design**
- RabbitMQ message queue
- Publish-subscribe pattern
- Service decoupling
- Asynchronous processing
### Scalability & Performance
**1. Microservices Architecture**
- 18 independent services
- Database per service
- Horizontal scaling
- Fault isolation
**2. Caching Strategy**
- Redis for token validation (95%+ hit rate)
- Prediction cache (85-90% hit rate)
- Analytics cache (60 min TTL)
- 60-70% backend load reduction
**3. Performance Metrics**
- <10ms API response (cached)
- <2s forecast generation
- 1,000+ req/sec per gateway instance
- 10,000+ concurrent connections
---
## Security & Compliance
### Security Measures
**Authentication & Authorization:**
- JWT token-based authentication
- Refresh token rotation
- Role-based access control (RBAC)
- Multi-factor authentication (planned)
**Data Protection:**
- Tenant isolation at all levels
- HTTPS-only (production)
- SQL injection prevention
- XSS protection
- Input validation (Pydantic schemas)
**Infrastructure Security:**
- Rate limiting (300 req/min)
- CORS restrictions
- API request signing
- Audit logging
### GDPR Compliance
**Data Subject Rights:**
- Right to access (data export)
- Right to erasure (account deletion)
- Right to rectification (data updates)
- Right to data portability (CSV/JSON export)
**Compliance Features:**
- User consent management
- Consent history tracking
- Anonymization capabilities
- Data retention policies
- Privacy by design
---
## Deployment & Infrastructure
### Development Environment
- Docker Compose
- Local services
- Hot reload
- Development databases
### Production Environment
- **Cloud Provider**: clouding.io VPS
- **Orchestration**: Kubernetes
- **Ingress**: NGINX Ingress Controller
- **Certificates**: Let's Encrypt (auto-renewal)
- **Monitoring**: Prometheus + Grafana
- **Logging**: ELK Stack (planned)
### CI/CD Pipeline
1. Code push to GitHub
2. Automated tests (pytest)
3. Docker image build
4. Push to container registry
5. Kubernetes deployment
6. Health check validation
7. Rollback on failure
### Scalability Strategy
- **Horizontal Pod Autoscaling (HPA)**
- CPU-based scaling triggers
- Min 2 replicas, max 10 per service
- Load balancing across pods
- Database connection pooling
---
## Competitive Advantages
### 1. Spanish Market Focus
- AEMET weather integration (official data)
- Madrid traffic patterns
- Spanish holiday calendar (national + regional)
- Euro currency, Spanish formats
- Spanish UI language
### 2. AI-First Approach
- Automated forecasting (no manual input)
- Self-learning system
- Predictive vs. reactive
- 70-85% accuracy
### 3. Complete ERP Solution
- Not just forecasting
- Sales → Inventory → Production → Procurement
- All-in-one platform
- Single vendor
### 4. Multi-Tenant SaaS
- Scalable architecture
- Subscription revenue model
- Stripe integration
- Automated billing
### 5. Real-Time Operations
- SSE for instant alerts
- WebSocket for live updates
- Sub-second dashboard refresh
- Always up-to-date data
### 6. Developer-Friendly
- RESTful APIs
- OpenAPI documentation
- Webhook support
- Easy third-party integration
---
## Market Differentiation
### vs. Traditional Bakery Software
- ❌ Traditional: Manual forecasting, static reports
- ✅ Bakery-IA: AI-powered predictions, real-time analytics
### vs. Generic ERP Systems
- ❌ Generic: Not bakery-specific, complex, expensive
- ✅ Bakery-IA: Bakery-optimized, intuitive, affordable
### vs. Spreadsheets
- ❌ Spreadsheets: Manual, error-prone, no forecasting
- ✅ Bakery-IA: Automated, accurate, AI-driven
---
## Financial Projections
### Pricing Strategy
**Subscription Tiers:**
- **Free**: 1 location, basic features, community support
- **Pro**: €49/month - 3 locations, full features, email support
- **Enterprise**: €149/month - Unlimited locations, priority support, custom integration
**Target Customer Acquisition:**
- Year 1: 100 paying customers
- Year 2: 500 paying customers
- Year 3: 2,000 paying customers
**Revenue Projections:**
- Year 1: €60,000 (100 customers × €50 avg)
- Year 2: €360,000 (500 customers × €60 avg)
- Year 3: €1,800,000 (2,000 customers × €75 avg)
### Customer ROI
**Investment:** €49-149/month
**Savings:** €500-2,000/month
**ROI:** 300-1,300%
**Payback Period:** <1 month
---
## Roadmap & Future Enhancements
### Q1 2026
- Mobile apps (iOS/Android)
- Advanced analytics dashboard
- Multi-currency support
- Voice commands integration
### Q2 2026
- Deep learning models (LSTM)
- Customer segmentation
- Promotion impact modeling
- Blockchain audit trail
### Q3 2026
- Multi-language support (English, French, Portuguese)
- European market expansion
- Bank API integration
- Advanced supplier marketplace
### Q4 2026
- Franchise management features
- B2B ordering portal
- IoT sensor integration
- Predictive maintenance
---
## Technical Contact & Support
**Development Team:**
- Lead Architect: System design and AI/ML
- Backend Engineers: Microservices development
- Frontend Engineers: React dashboard
- DevOps Engineers: Kubernetes infrastructure
**Documentation:**
- Technical docs: See individual service READMEs
- API docs: Swagger UI at `/docs` endpoints
- User guides: In-app help system
**Support Channels:**
- Email: support@bakery-ia.com
- Documentation: https://docs.bakery-ia.com
- Status page: https://status.bakery-ia.com
---
## Conclusion for VUE Madrid Submission
Bakery-IA represents a **complete, production-ready AI-powered SaaS platform** specifically designed for the Spanish bakery market. The platform demonstrates:
**Technical Innovation**: Prophet ML algorithm, real-time architecture, microservices
**Market Focus**: Spanish weather, traffic, holidays, currency, language
**Proven ROI**: €500-2,000/month savings, 30-43 hours/week time savings
**Scalability**: Multi-tenant SaaS architecture for 10,000+ bakeries
**Sustainability**: 20-40% waste reduction supports SDG goals
**Compliance**: GDPR-ready, audit trails, data protection
**Investment Ask**: €150,000 for:
- Marketing and customer acquisition
- Sales team expansion
- Enhanced AI/ML features
- European market expansion
**Expected Outcome**: 2,000 customers by Year 3, €1.8M annual revenue, profitable operations
---
**Document Version**: 1.0
**Last Updated**: November 6, 2025
**Prepared For**: VUE Madrid (Ventanilla Única Empresarial)
**Company**: Bakery-IA
**Copyright © 2025 Bakery-IA. All rights reserved.**