Skip to content

qnhn22/loka

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

36 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Project: Loka.ai

Members: Quan Nguyen, Duc Nguyen, Long Bui

I. Motivations

An innovative platform to identify ideal locations for food & beverage enterprises, focusing on customer demographics, potential markets, costs, and competition. This approach addresses the needs of the F&B industry, where 97% are firms facing operational and economic challenges. With the U.S. packaged food market projected to reach $1.6 trillion by 2030, optimizing location decisions is crucial for success

II. Milestones & Challenges

System Diagram

  • Aggregate data by leveraging APIs from multiple sources" (GoogleMapAPI, Census Bureau, NY Open Data)
  • Integrate and clean pulled data into MongoDB
  • Develop a responsive web interface using React
  • Enhance server-side performance by implementing Flask
  • Develop a machine learning model that captures essential parameters using Cerebas API to rank most optimized locations
  • Leverage PropelAuthority to authorize user management
  • Design, reorganize, and visualize metrics into meaningful and understandable insights

III. Takeaways

Pros

  • Operational and Functional: The app is fully operational, allowing users to access its features seamlessly, enabling immediate utilization for business enhancement.

  • Showcases Essential Capabilities: It effectively demonstrates the necessary skills and functionalities, providing valuable insights for optimizing processes and decision-making.

  • Room for Improvements: The project shows solid foundation that could potentially develop new features and continous improvability in the future.

Cons

  • Potential Model Biases: Some biases have been identified in the model, which may affect accuracy. Further testing and fine-tuning are needed to improve reliability.

  • Capacity Limitations: The app currently has restrictions on handling larger datasets and accommodating more users, necessitating enhancements for scalability.

  • Data Dependencies: Fetching data from different sources and does not have inernal data may lead to disrupt the system if sources collasped.

IV. Future Enhancements

Model Improvements:

  1. Market Equilibrium Adjustment: Implement dynamic Supply & Demand balancing algorithms to reflect real-time market conditions.
  2. Logistics Analysis Implementation: Incorporate advanced logistics modeling to optimize supply chain operations and reduce costs.
  3. Data Backup Sources: Utilize redundant cloud storage, regular snapshots, and blockchain technology for secure and reliable data backups.
  4. Features Added: Introduce machine learning price predictions, real-time sentiment analysis, customizable alerts, and interactive visualizations.

Platform Integrations:

  1. Market Data Providers: Establish connections with providers like Bloomberg for comprehensive market data feeds.
  2. Integration with CRM Systems: Connect with platforms like Microsoft Business Central (launched in 2021 to serve small business's data solutions) to retreive more accurate financial data.

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 3

  •  
  •  
  •