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Intuitive Machines, Inc. LUNR Finite-Lived Intangible Assets - Expected Amortization Expense (Year One)

Finite-Lived Intangible Assets - Expected Amortization Expense (Year One) at other companies

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Other financials

Income statement

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Revenue$186.7M+199%
Gross profit-$15.5M-244%
Operating income-$39.2M-289%
Net income-$37.4M-228%
EPS (diluted)-$0.25-127%

Balance sheet

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Cash & equivalents$243.4M-35.2%
Total debt$426.4M+1,041%
Total equity-$334.3M-144%
Total assets$1.7B+244%

Cash flow

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Operating cash flow-$54.8M-382%
CapEx$9.9M+61.3%
Free cash flow-$64.6M-586%

Valuation

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Market cap$3.36B+243%

Profitability

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Gross margin-10.2%-12.5pp
Operating margin-34.8%+7.1pp
Net margin-32.7%-12.8pp
FCF margin-40.1%+286pp

Returns & leverage

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Current ratio1.2×-3.2×

Where this comes from

Reported directly by Intuitive Machines, Inc. in its filing.

Tagged under the XBRL concept us-gaap:FiniteLivedIntangibleAssetsAmortizationExpenseYearFour.

The official record: Intuitive Machines, Inc.’s 10-Q, filed May 15, 2026, on SEC EDGAR. View the filing →

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Questions, answered.

What is Intuitive Machines, Inc.'s finite-lived intangible assets - expected amortization expense (year one)?
Intuitive Machines, Inc. (LUNR) reported finite-lived intangible assets - expected amortization expense (year one) of $18.3M in Q1 2026.
What does finite-lived intangible assets - expected amortization expense (year one) mean?
This metric forecasts the amortization expense expected to be recognized in the upcoming fiscal year for intangible assets with finite useful lives. It provides visibility into the non-cash earnings impact of previously acquired intangible assets. Analysts use this to refine future earnings projections and cash flow models.