The project 'Qurv' appears to correspond to a legitimate deep-tech spin-off (Qurv Technologies) developing advanced graphene-based wide-spectrum image sensors. However, the submission itself is of extremely low quality and contains demonstrably false claims (e.g., 'most people have used my product', audience is 'everyone'). While the underlying technology is innovative and supported by verifiable research grants (e.g., EU Horizon 2020), the submission's lack of professionalism, incorrect revenue metrics (stating 'marketcap' instead of revenue), and exaggeration of traction severely impact the score. The discrepancy between the claimed team size (125) and third-party data (~21) further reduces credibility.
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Score Breakdown
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