Chinese EV Maker Seres Raises $1.8 Billion in Hong Kong Listing

Bloomberg TechnologyMonday, November 3, 2025 at 12:37:27 AM
Chinese EV Maker Seres Raises $1.8 Billion in Hong Kong Listing
Seres Group Co., a Chinese electric vehicle manufacturer, has successfully raised HK$14.3 billion (approximately $1.8 billion) through its Hong Kong listing. This achievement, marked by pricing at the upper limit and increasing the deal size, highlights the growing investor confidence in the EV sector and positions Seres for future growth in a competitive market.
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