Empowering Latin American communities with AI-driven tools to transition from fossil fuels to renewable energy solutions.
Many rural and semi-urban communities in Latin America rely on expensive, polluting diesel/oil generators due to unreliable grid access. Transitioning to renewables faces significant challenges:
- Unclear viability: Lack of technical expertise to assess renewable potential
- High upfront costs: Fear of investing without guaranteed returns
- Skill gaps: No local capacity to install/maintain systems
- Information asymmetry: Difficulty accessing reliable data and expert analysis
SoLatAm is an AI-driven platform that empowers communities to transition to renewables through three integrated components:
- Interactive Mapping: Select locations and analyze solar potential with precision
- Terrain Analysis: Evaluate slope, aspect, and other geographical features
- Cost-Benefit Calculator: Project ROI timelines and compare to fossil fuel costs
- NASA Data Integration: Leveraging NASA POWER API for reliable solar irradiance data
- Image Recognition: Upload images of potential installation sites for expert assessment
- Multilingual Assistant: Get answers to technical questions in Spanish and other languages
- Voice Interaction: Use voice commands for accessibility in low-literacy contexts
- Knowledge Exchange: Forums and resource libraries to share experiences
- Local Workforce Marketplace: Connect with trained technicians in your area
- Progress Tracking: Measure community-wide impact and achievements
SoLatAm combines several components:
-
Data Processing Pipeline:
- NASA POWER API integration for solar irradiance data
- Geographic terrain analysis (slope, aspect calculations)
- Energy production potential modeling
-
AI Services:
- OpenAI-powered multilingual chatbot
- Computer vision for solar installation analysis
- Voice recognition for accessibility
-
Interactive Interfaces:
- Streamlit-based web application
- Interactive maps with Folium
- Data visualizations with Matplotlib
Our platform uses advanced algorithms to analyze terrain characteristics, such as slope and aspect, and solar irradiance data to create detailed solar potential maps:
For optimal solar panel installation, this feature computes the ideal tilt angle and direction based on your location’s latitude:
Users can upload images of their sites or existing installations for AI-powered analysis:
- Python 3.8+
- Pip package manager
- Clone the repository:
git clone https://github.com/marc-herrero/UAB-the-hack25.git
cd UAB-the-hack25


