Excelerate Energy (EE) Share Performance vs Competitors, Today, this Week, over the Past Month, over the 3 Months Period and Year to date
Share price performance for Excelerate Energy and its Competitors, grouped for easier comparison.
| COMPANY NAME TICKER |
ONE DAY | 5 DAYS | 30 DAYS | 3 MONTHS | YTD |
|---|---|---|---|---|---|
|
Excelerate Energy
EE |
-2.93% | 0.47% | -1.28% | 16.83% | -11.48% |
To view detailed financial information, click any company name in the comparison table.
Methodology & Data Source: All performance metrics are derived from CSIMarket’s proprietary financial dataset, which standardizes and normalizes daily share prices across U.S. and international companies. Calculations are based on daily closing prices from multiple verified market data providers, with period-over-period changes computed for 1 Day, 5 Days, 30 Days, 3 Months, and Year-to-Date (YTD) intervals.
Stock quotes may be delayed up to 15–20 minutes and are adjusted for corporate actions including stock splits, dividends, and reverse splits where applicable.
Company groupings are organized using the Standard Industrial Classification (SIC) system, which categorizes businesses according to their primary line of activity. For a complete reference, see the official SEC SIC Code List on SEC.gov.
The list of competitors includes only publicly traded companies for which reliable and regulatory financial disclosures are available.
All figures are presented in U.S. dollars (USD) unless otherwise noted.
Data integrity and transparency: CSIMarket continuously reviews its data feeds and normalization rules to ensure historical consistency, reliability, and alignment with regulatory reporting standards.
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