Adaptive ML Appoints New Chief Marketing and Revenue Officers

April 15, 2026
Adaptive ML has named Marine Boulot as Chief Marketing Officer and Sam Jones as Chief Revenue Officer to strengthen its position in enterprise reinforcement learning operations.

Adaptive ML has appointed Marine Boulot as Chief Marketing Officer and Sam Jones as Chief Revenue Officer, announced in a press release. The company said the appointments mark its next phase of growth as it advances its enterprise reinforcement learning operations platform.

Boulot brings over 20 years of experience in brand and communications strategy, having held leadership roles at Palantir, Improbable, Altran, Veolia, and Technicolor. She has led global marketing functions through periods of rapid expansion, IPO preparation, and mergers and acquisitions.

Jones, who previously led enterprise sales at Postman, has more than 15 years of experience in revenue leadership. His background includes building and scaling commercial operations across North America and Europe, focusing on developer-focused software and enterprise-grade sales models.

Adaptive ML, based in New York with a research team in Paris, provides a Reinforcement Learning Operations (RLOps) platform that enables large organizations to build and manage domain-specific open-source AI models on their own infrastructure. The company’s technology is already in production with enterprises such as AT&T, Manulife, and Deloitte.

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