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iLearningEngines (iLearningEngines) EV-to-EBITDA : 92.37 (As of Jun. 01, 2024)


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What is iLearningEngines EV-to-EBITDA?

EV-to-EBITDA is calculated as enterprise value divided by its EBITDA. As of today, iLearningEngines's enterprise value is $797.4 Mil. iLearningEngines's EBITDA for the trailing twelve months (TTM) ended in Jun. 2023 was $8.6 Mil. Therefore, iLearningEngines's EV-to-EBITDA for today is 92.37.

The historical rank and industry rank for iLearningEngines's EV-to-EBITDA or its related term are showing as below:

AILE' s EV-to-EBITDA Range Over the Past 10 Years
Min: 66.76   Med: 76.29   Max: 92.37
Current: 92.37

During the past 3 years, the highest EV-to-EBITDA of iLearningEngines was 92.37. The lowest was 66.76. And the median was 76.29.

AILE's EV-to-EBITDA is ranked worse than
93.06% of 1859 companies
in the Software industry
Industry Median: 14.23 vs AILE: 92.37

EV-to-EBITDA is a valuation multiple used in finance and investment to measure the value of a company. This important multiple is often used in conjunction with, or as an alternative to, the PE Ratio to determine the fair market value of a company.

As of today (2024-06-01), iLearningEngines's stock price is $5.8999. iLearningEngines's Earnings per Share (Diluted) for the trailing twelve months (TTM) ended in Jun. 2023 was $0.059. Therefore, iLearningEngines's PE Ratio for today is 100.00.

The "classic" EV-to-EBITDA is much better in capturing debt and net cash than the PE Ratio.


iLearningEngines EV-to-EBITDA Historical Data

The historical data trend for iLearningEngines's EV-to-EBITDA 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.

* Premium members only.

iLearningEngines EV-to-EBITDA Chart

iLearningEngines Annual Data
Trend Dec20 Dec21 Dec22
EV-to-EBITDA
- - -

iLearningEngines Semi-Annual Data
Dec20 Dec21 Jun22 Dec22 Jun23
EV-to-EBITDA - - - - -

Competitive Comparison of iLearningEngines's EV-to-EBITDA

For the Software - Infrastructure subindustry, iLearningEngines's EV-to-EBITDA, along with its competitors' market caps and EV-to-EBITDA data, can be viewed below:

* Competitive companies are chosen from companies within the same industry, with headquarter located in same country, with closest market capitalization; x-axis shows the market cap, and y-axis shows the term value; the bigger the dot, the larger the market cap. Note that "N/A" values will not show up in the chart.


iLearningEngines's EV-to-EBITDA Distribution in the Software Industry

For the Software industry and Technology sector, iLearningEngines's EV-to-EBITDA distribution charts can be found below:

* The bar in red indicates where iLearningEngines's EV-to-EBITDA falls into.



iLearningEngines EV-to-EBITDA Calculation

iLearningEngines's EV-to-EBITDA for today is calculated as:

EV-to-EBITDA=Enterprise Value (Today)/EBITDA (TTM)
=797.419/8.633
=92.37

iLearningEngines's current Enterprise Value is $797.4 Mil.
For company reported semi-annually, GuruFocus uses latest annual data as the TTM data. iLearningEngines's EBITDA for the trailing twelve months (TTM) ended in Jun. 2023 was $8.6 Mil.

* 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) EV-to-EBITDA Explanation

EV-to-EBITDA is a valuation multiple used in finance and investment to measure the value of a company. This important multiple is often used in conjunction with, or as an alternative to, the PE Ratio to determine the fair market value of a company.

iLearningEngines's PE Ratio for today is calculated as:

PE Ratio=Share Price (Today)/Earnings per Share (Diluted) (TTM)
=5.8999/0.059
=100.00

iLearningEngines's share price for today is $5.8999.
For company reported semi-annually, GuruFocus uses latest annual data as the TTM data. iLearningEngines's Earnings per Share (Diluted) for the trailing twelve months (TTM) ended in Jun. 2023 was $0.059.

* 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.

Study has found that the companies with the lowest EV-to-EBITDA outperforms companies measured as cheap by other ratios such as PE Ratio.

Please read Which price ratio outperforms the enterprise multiple?


iLearningEngines EV-to-EBITDA Related Terms

Thank you for viewing the detailed overview of iLearningEngines's EV-to-EBITDA provided by GuruFocus.com. Please click on the following links to see related term pages.


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.