HAI Group’s CORE.3 brings Probability of Loss risk metric to Web3
CORE.3 turns on-chain data into a forward-looking Probability of Loss score for Web3 projects, standardizing operational and security risk assessment while staying outside investment ratings.
- CORE.3 debuts with quantified PoL scores for 50 projects and plans to scale to 1,000+ within three months, using metrics that go beyond TVL or sentiment.
- The framework ingests 100+ data points across security, financial integrity, operations, reputation, and compliance, layered into Conditions, Metrics, and Categories to weight critical risks.
- A separate “Proof-of-Opinion” layer captures subjective inputs like ecosystem relevance but is excluded from PoL to preserve quantitative objectivity, while projects can verify data via app.CORE3.io.
HAI Group announced the launch of its CORE.3 risk intelligence platform, introducing what the company describes as the Web3 sector’s first open, data-driven Probability of Loss (PoL) framework, according to a company statement.
The platform translates on-chain activity into standardized, quantitative risk metrics designed to evaluate operational and security risks associated with digital asset projects, the company said. The initial rollout includes risk assessments for 50 digital asset projects, with plans to expand coverage to over 1,000 projects within three months.
Core framework evolves
The PoL metric provides a forward-looking numerical score estimating the probability of financial loss when engaging with a particular crypto project. The metric offers an alternative to traditional indicators such as Total Value Locked (TVL) or market sentiment, according to the company.
The PoL framework incorporates over 100 data points across key risk dimensions, including security, financial integrity, operational robustness, reputation, and regulatory compliance. The methodology follows a three-tier structure: Conditions, which are factual data points such as audit remediation status or admin key management; Metrics, which are grouped assessments in areas such as smart contract risk and reserve transparency; and Categories, which prioritize risk across domains and assign greater weight to critical factors like security.
The final PoL score represents a quantifiable risk assessment, where higher scores correspond to a higher probability of loss, according to the platform’s methodology.
A supplementary component termed “ Proof-of-Opinion ” evaluates subjective indicators such as market relevance or ecosystem adoption. This layer is not factored into the PoL score, the company stated.
The CORE.3 platform operates as an open-access framework. Projects can passively observe their scores, which are derived from publicly available data, or actively participate by verifying inputs and addressing identified risks. Risk profiles and submission tools are available at app.CORE3.io.
HAI Group is a global Web3 holding company and the parent entity of the Hacken ecosystem. The company manages a portfolio of products and services focused on cybersecurity, risk analysis, and blockchain infrastructure , including Hacken, HackenProof, and CER.live.
CORE.3 is an independent analytics platform offering a data-driven Probability of Loss framework to quantify risk in Web3 projects. The platform is not a ratings agency, and its metrics do not constitute investment advice, according to the company.
Disclaimer: The content of this article solely reflects the author's opinion and does not represent the platform in any capacity. This article is not intended to serve as a reference for making investment decisions.
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