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Chemtrade Logistics Income Fund Declares April 2025 Distribution

Chemtrade Logistics Income Fund Declares April 2025 Distribution

TORONTO--(BUSINESS WIRE)--Apr 21, 2025--
Chemtrade Logistics Income Fund (TSX: CHE.UN) today announced that it has declared a cash distribution of $0.0575 per unit for the month of April 2025 payable on May 30, 2025 to unitholders of record at the close of business on April 30, 2025.
Holders of units who are non-residents of Canada will be required to pay all withholding taxes payable in respect of any distributions of income by the Fund.
View source version on businesswire.com:https://www.businesswire.com/news/home/20250421104469/en/
CONTACT: For further information:
Rohit Bhardwaj
Chief Financial Officer
Tel: (416) 496-4177
Ryan Paull
Senior Manager, Corporate Development
Tel: (973) 515-1831
KEYWORD: NORTH AMERICA CANADA
INDUSTRY KEYWORD: CHEMICALS/PLASTICS TRANSPORT LOGISTICS/SUPPLY CHAIN MANAGEMENT MANUFACTURING
SOURCE: Chemtrade Logistics Income Fund
Copyright Business Wire 2025.
PUB: 04/21/2025 09:30 AM/DISC: 04/21/2025 09:32 AM
http://www.businesswire.com/news/home/20250421104469/en

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