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CORRECTING and REPLACING STEP Energy Services Ltd. to Announce First Quarter 2025 Results and Host Conference Call

CORRECTING and REPLACING STEP Energy Services Ltd. to Announce First Quarter 2025 Results and Host Conference Call

Business Wire07-05-2025

CALGARY, Alberta--(BUSINESS WIRE)--Fifth paragraph of release dated April 16, 2025, should read: 'Upcoming Events and Meetings' (instead of 'Reports, Presentations & Key Dates') and sixth paragraph should read: 'STEP Energy Services First Quarter 2025 Earnings Results Conference Call' (instead of 'STEP Energy Services Fourth Quarter and Year End 2024 Earnings Results Conference Call').
The updated release reads:
STEP ENERGY SERVICES LTD. TO ANNOUNCE FIRST QUARTER 2025 RESULTS AND HOST CONFERENCE CALL
STEP Energy Services Ltd. ('STEP') intends to release its first quarter results on Wednesday, May 14, 2025 after markets close.
Financial Statements and Management's Discussion and Analysis will be posted to STEP's website and SEDAR+ after the press release is disseminated.
STEP will host a conference call on Thursday, May 15, 2025 at 9:00 a.m. MT to discuss the results for the first quarter.
To listen to the webcast of the conference call, please click on the following URL: https://onlinexperiences.com/Launch/QReg/ShowUUID=C938A7BD-82B6-41E2-9B86-AF726FC8A71D&LangLocaleID=1033
You can also visit the Investors section of our website at www.stepenergyservices.com and go to 'Upcoming Events and Meetings'.
To participate in the Q&A session, please call the conference call operator at: 1-800-717-1738 (toll free) 15 minutes prior to the call's start time and ask for 'STEP Energy Services First Quarter 2025 Earnings Results Conference Call'.
The conference call will be archived on STEP's website at www.stepenergyservices.com/investors
ABOUT STEP
STEP is an energy services company that provides coiled tubing, fluid and nitrogen pumping and hydraulic fracturing solutions. Our combination of modern equipment along with our commitment to safety and quality execution has differentiated STEP in plays where wells are deeper, have longer laterals and higher pressures. STEP has a high-performance, safety-focused culture and its experienced technical office and field professionals are committed to providing innovative, reliable and cost-effective solutions to its clients.
Founded in 2011 as a specialized deep capacity coiled tubing company, STEP has grown into a North American service provider delivering completion and stimulation services to exploration and production ('E&P') companies in Canada and the U.S. Our Canadian services are focused in the Western Canadian Sedimentary Basin ('WCSB'), while in the U.S., our coiled tubing services are concentrated in the Permian and Eagle Ford in Texas, the Uinta-Piceance, and Niobrara-DJ basins in Colorado and the Bakken in North Dakota.
Our four core values - Safety, Trust, Execution and Possibilities - inspire our team of professionals to provide differentiated levels of service, with a goal of flawless execution and an unwavering focus on safety.

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