Proof of Usefulness Report

Stars From All Nations

Analysis completed on 1/30/2026

+247
Proof of Usefulness Score
Gaining Momentum

Stars From All Nations (SFAN) is a verified Ghana-based education company (est. 2013) addressing youth unemployment. While the submission contained hyperbolic and false claims (e.g., 'most people have used my product', 'audience: everyone'), external verification confirms the project has genuine utility, having raised ~$250k in pre-seed funding and established partnerships with the British Council. The 'ReadyforWork' accelerator is a real operational product with AI-driven resume tools, though the 'AI' component appears to be a standard integration rather than novel deep tech. The score reflects high real-world utility and verified regional traction, heavily penalized by the low quality and inaccuracy of the user's submission inputs.

Ready to Compete for $150k+ in Prizes?

Move this data into a HackerNoon blog draft to become eligible for your share of $150k+ in cash and software prizes

View All Reports

Score Breakdown

Real World Utility+150.0
Audience Reach Impact+15.0
Technical Innovation+37.5
Evidence Of Traction+37.5
Market Timing Relevance+70.0
Functional Completeness+2.5
Subtotal+312.5
Usefulness Multiplierx0.79
Final Score+247

Project Details

Project URL
Description
Stars From All Nations (SFAN) is a Ghana-based EdTech on a bold mission to unlock the potential of Africa’s young geniuses by helping them turn their passions into businesses and fulfilling careers. SFAN believes that young people are smart and if given the skills and opportunities to engage the real world, magic will happen! The team’s work stems from a desire to raise the next generation of leaders that will contribute to creating the most incredible economic phenomenon the world has ever seen on the continent. The company’s signature initiative called ReadyforWork is a digital career accelerator that uses AI and Machine Learning to equip entry-level job seekers with skills and help recruiters make data-driven hiring decisions. For more information, visit www.sfanonline.org.

Algorithm Insights

Market Position
Growing utility with room for optimization
User Engagement
Documented reach suggests active user community
Technical Stack
Modern tech stack aligned with sponsor technologies

Recommendations to Increase Usefulness Score

Document User Growth

Provide specific metrics on user acquisition and retention rates

Showcase Revenue Model

Detail sustainable monetization strategy and current revenue streams

Expand Evidence Base

Include testimonials, case studies, and third-party validation

Technical Roadmap

Share development milestones and feature completion timeline