Proof of Usefulness Report

Acryl Data

Analysis completed on 2/7/2026

+758
Proof of Usefulness Score
Unicorn Utility

Acryl Data (DataHub) is a high-value, Series B funded enterprise project ($65M verified funding) with significant real-world adoption (13k+ community, 3M+ monthly downloads). Originating from LinkedIn, the technology is industry-standard for data discovery and AI governance. However, the submission itself contained inaccuracies: the claimed team size (350) contradicts public data (~70), the audience definition was lazy ('everyone'), and the financial metric was ambiguous ('marketcap: 17000000' vs actual $65M funding). The score reflects the massive utility and verifiable success of the project, heavily penalized for the low-quality and exaggerated data entry.

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+28.5
Audience Reach Impact+11.9
Technical Innovation+14.85
Evidence Of Traction+19.0
Market Timing Relevance+9.5
Functional Completeness+0.5
Subtotal+84.25
Usefulness Multiplierx0.90
Final Score+758

Project Details

Project URL
Description
Founded by data industry veterans and backed by LinkedIn, DataHub enables organizations to deploy AI in production through an enterprise-grade metadata platform handling 3M+ PyPI downloads monthly. Leveraging our extensible metadata graph architecture with lineage-driven compliance and API-first design, we've built a unified system for technical teams requiring production-grade discovery, observability, and governance. Our dual solutions—open-source DataHub Core and fully-managed DataHub Cloud—provide what enterprises need for continuous AI & data asset management at scale. DataHub is a unique solution in this space with the following key differentiators: * Scalability: DataHub offers best-in-class enterprise-grade scalability in connecting to over 80 data sources, offering an embeddable connector framework, and ingesting large volumes and high velocity of metadata. * Extensibility: DataHub’s highly extensible metadata model offers easy flexibility in adapting to an organization’s unique data landscape, entities, relationships, ownership, and custom metadata descriptors. * Completeness: DataHub Cloud’s unified platform adds AI-based enhancements and automations for discovery & understanding, quality management, and collaborative governance, allowing users to confidently use and manage data and AI assets. * Ease of Adoption: Customers of DataHub benefit from the joint innovation, peer support, and growing skill base of an energized community of over 13,000 DataHub practitioners. Its user-friendly interface has a powerful and intuitive design, making it easier for users to navigate and utilize its features without extensive training. The managed service of DataHub Cloud offers dedicated support, improved performance and availability, and secure deployment options to ease adoption across an enterprise. For engineering teams deploying AI in production, DataHub delivers unified metadata infrastructure across all AI & data assets with enterprise-grade performance.

Algorithm Insights

Market Position
Strong market validation with clear user adoption patterns
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