Lenders use a comprehensive evaluation framework to determine eligibility for commercial and industrial (C&I) loans, primarily focusing on two qualification models: asset-based lending and cash flow financing.
To gauge a borrower’s ability to service debt, institutional lenders look for the following key metrics and documentation:
- Debt-Service Coverage Ratio (DSCR): A typical baseline is a ratio of 1.25x or higher, meaning operating cash flow should cover all scheduled debt payments with a comfortable margin.
- Liquidity Ratios: Lenders expect a current ratio generally above 1.0x to ensure the business can meet its short-term obligations.
- Financial Documentation: Applicants must provide a robust documentation package, including audited financial statements covering the last three fiscal years, multi-year cash flow projections, and a detailed business plan.
- Collateral Valuation: For asset-based loans, lenders evaluate the quality and liquidity of assets. Common collateral includes accounts receivable (typically receiving 70%–90% advance rates), inventory (30%–60%), and equipment (50%–80%). Professional third-party appraisals are often required to establish fair market value.
- Operational Metrics: Lenders also analyze EBITDA trends, accounts receivable aging reports, and inventory turnover rates to ensure the business remains stable throughout its operational cycles.
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