Product Manager

Complexio
gb
1 month ago
Applications closed

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Complexio's Foundational AI works to automate business activities by ingesting whole company data – both structured and unstructured – and making sense of it. Using proprietary models and algorithms Complexio forms a deep understanding of how humans are interacting and using it. Automation can then replicate and improve these actions independently.

Complexio is a joint venture between Hafnia and Símbolo, in partnership with Marfin Management, C Transport Maritime, Trans Sea Transport and BW Epic Kosan.

We are looking for a Product Manager to drive the development of our AI-powered automation solutions. This is a high-impact role at the intersection of AI, data, and business transformation. You will work closely with software engineers, data scientists, and business leaders to shape the product vision, roadmap, and execution strategy.

Requirements

● 3–5 years of experience in B2B DaaS or SaaS companies.

● Proven experience collaborating closely with multiple software engineering teams.

● Strong track record of growing products from zero to one.

● A data-driven and analytical mindset, using insights to guide product decisions.

● Experience as a Product Manager in scale-ups or large companies with scale-up-like departments is preferred.

● Hands-on experience launching successful AI-powered products.

Whats expected:

●Planning and overseeing multiple work streams to ensure alignment and execution.

● Creating and evolving the strategic product roadmap in collaboration with the Head of Product, Engineering Leads, Lead Data Scientist, and CEO.

● Scoping functional and non-functional requirements in partnership with Business Analysts and Customer Success teams.

● Implementing user-centered and data-driven decision-making processes to optimize product impact.

● Fostering a product mindset across the company, ensuring teams are aligned with product goals.

● Shaping the product development process, working closely with engineering teams and senior stakeholders to drive innovation and efficiency.

Benefits

● Join a pioneering joint venture at the intersection of AI and industry transformation.

● Work with a diverse and collaborative team of experts across disciplines.

● Opportunity for professional growth and continuous learning in a dynamic, high-impact role.

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