Sublime Security, which uses AI agents to protect against phishing and other email threats, raised a $150M Series C, bringing its total funding to $240M+ (Eduard Kovacs/SecurityWeek)

TechmemeWednesday, October 29, 2025 at 4:01:13 AM
Sublime Security, which uses AI agents to protect against phishing and other email threats, raised a $150M Series C, bringing its total funding to $240M+ (Eduard Kovacs/SecurityWeek)
Sublime Security has successfully raised $150 million in a Series C funding round, boosting its total funding to over $240 million. This significant investment highlights the growing importance of AI-driven solutions in combating phishing and other email threats. As cyber threats continue to evolve, Sublime's innovative approach to email security positions it as a key player in protecting businesses and individuals alike, making this funding a crucial step in enhancing digital safety.
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Sublime Security, which uses AI agents to protect against phishing and other email threats, raised a $150M Series C, bringing its total funding to $240M+ (Eduard Kovacs/SecurityWeek)
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