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Scope AI (XCNQ:SCPE) Notes Receivable : C$0.00 Mil (As of Mar. 2024)


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What is Scope AI Notes Receivable?

Scope AI's Notes Receivable for the quarter that ended in Mar. 2024 was C$0.00 Mil.


Scope AI Notes Receivable Historical Data

The historical data trend for Scope AI's Notes Receivable can be seen below:

* For Operating Data section: All numbers are indicated by the unit behind each term and all currency related amount are in USD.
* For other sections: All numbers are in millions except for per share data, ratio, and percentage. All currency related amount are indicated in the company's associated stock exchange currency.

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Scope AI Notes Receivable Chart

Scope AI Annual Data
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Notes Receivable
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Scope AI Quarterly Data
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Scope AI Notes Receivable Calculation

Notes Receivable is an unconditional promise to receive a definite sum of money at a future date(s) within one year of the balance sheet date or the normal operating cycle, whichever is longer.


Scope AI Notes Receivable Related Terms

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Scope AI (XCNQ:SCPE) Business Description

Traded in Other Exchanges
Address
1800 - 510 West Georgia Street, Vancouver, BC, CAN, V6B 0M3
Scope Carbon Corp is a Canadian technology company. It develops Artificial Intelligence (AI) analytical software and intellectual property for use in analyzing data related to nature-based objects (e.g. forests, wetlands, and other areas) as it relates to carbon credit certification. The company's current business plan is to enable large volumes of object based data to be converted into digestible data that carbon credit experts and others are able to use to verify the characteristics of trees, wetlands, and other areas.