PINTEC to Report Half Year 2020 Financial Results on September 21, 2020
BEIJING, Sept. 16, 2020 (GLOBE NEWSWIRE) -- Pintec Technology Holdings Limited (Nasdaq: PT) (“PINTEC” or the “Company”), a leading independent technology platform enabling financial services in China, today announced that it will report its financial results for the first half of 2020 before the U.S. market opens on Monday, September 21, 2020. The earnings release will be available on the Company's investor relations website at http://ir.pintec.com/.
The Company’s management team will hold a Direct Event conference call on September 21, 2020, at 8:00 A.M. Eastern Time (or 8:00 P.M. Beijing Time on the same day) to discuss the financial results. Details for the conference call are as follows:
The replay will be accessible through September 29, 2020, by dialing the following numbers:
A live and archived webcast of the conference call will also be available at the Company's investor relations website at http://ir.pintec.com/.
Pintec is a leading independent technology platform enabling financial services in China. By connecting business and financial partners on its open platform, Pintec enables them to provide financial services to end users efficiently and effectively. The Company offers its partners a full suite of customized solutions, ranging from digital retail lending, digital business lending, RPA, to wealth management and insurance products. Leveraging its scalable and reliable technology infrastructure, Pintec serves a wide range of industry verticals covering online travel, e-commerce, telecommunications, online education, SaaS platforms, financial technology, internet search, and online classifieds and listings, as well as various types of financial partners including banks, brokers, insurance companies, investment funds and trusts, consumer finance companies and other similar institutions. For more information, please visit ir.pintec.com.
For further information, please contact:
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