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iLearningEngines (iLearningEngines) COGS-to-Revenue : 0.32 (As of Jun. 2023)


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What is iLearningEngines COGS-to-Revenue?

iLearningEngines's Cost of Goods Sold for the six months ended in Jun. 2023 was $61.6 Mil. Its Revenue for the six months ended in Jun. 2023 was $195.2 Mil.

iLearningEngines's COGS to Revenue for the six months ended in Jun. 2023 was 0.32.

Cost of Goods Sold is directly linked to profitability of the company through Gross Margin. iLearningEngines's Gross Margin % for the six months ended in Jun. 2023 was 68.42%.


iLearningEngines COGS-to-Revenue Historical Data

The historical data trend for iLearningEngines's COGS-to-Revenue 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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iLearningEngines COGS-to-Revenue Chart

iLearningEngines Annual Data
Trend Dec20 Dec21 Dec22
COGS-to-Revenue
0.29 0.30 0.30

iLearningEngines Semi-Annual Data
Dec20 Dec21 Jun22 Dec22 Jun23
COGS-to-Revenue - - 0.30 0.31 0.32

iLearningEngines COGS-to-Revenue Calculation

iLearningEngines's COGS to Revenue for the fiscal year that ended in Dec. 2022 is calculated as

COGS to Revenue=Cost of Goods Sold / Revenue
=93.89 / 309.17
=0.30

iLearningEngines's COGS to Revenue for the quarter that ended in Jun. 2023 is calculated as

COGS to Revenue=Cost of Goods Sold / Revenue
=61.645 / 195.225
=0.32

* 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.


iLearningEngines  (NAS:AILE) COGS-to-Revenue Explanation

Cost of Goods Sold is directly linked to profitability of the company through Gross Margin.

iLearningEngines's Gross Margin % for the six months ended in Jun. 2023 is calculated as:

Gross Margin %=1 - COGS to Revenue
=1 - Cost of Goods Sold / Revenue
=1 - 61.645 / 195.225
=68.42 %

* 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.

A company that has a moat can usually maintain or even expand their Gross Margin. A company can increase its Gross Margin in two ways. It can increase the prices of the goods it sells and keeps its Cost of Goods Sold unchanged. Or it can keep the sales price unchanged and squeeze its suppliers to reduce the Cost of Goods Sold. Warren Buffett believes businesses with the power to raise prices have moats.


iLearningEngines COGS-to-Revenue Related Terms

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iLearningEngines (iLearningEngines) Business Description

Comparable Companies
Traded in Other Exchanges
N/A
Address
6701 Democracy Boulevard, Suite 300, Bethesda, MD, USA, 20817
iLearningEngines Inc is an AI and automation platform that empowers its customers to productize their institutional knowledge by transforming it into actionable intellectual property that enhances outcomes for employees, customers and other stakeholders. Its platform enables enterprises to build intelligent Knowledge Clouds that incorporate large volumes of structured and unstructured information across disparate internal and external systems and to automate organizational processes that leverage these Knowledge Clouds to improve performance. The company combines its offerings with vertically focused capabilities and data models to operationalize AI and automation to effectively and efficiently address critical challenges facing its customers.