About the role
<p>AppOmni prevents SaaS data breaches by delivering end-to-end SaaS security. Our platform gives security teams clear visibility into posture, access, third-party connections, AI-related activity, and with built-in discovery to identify unsanctioned SaaS and Shadow AI tools. Backed by continuous monitoring and real-time threat detection, AppOmni helps enterprises identify and resolve risks early, keeping their SaaS applications secure.</p> <p>Recognized as a <a href="https://drive.google.com/drive/folders/1sYC94rvhwD9ARzvgwwaxcs4upkp6acAZ"><em>Frost Radar™ 2025 Leader</em></a><em> and</em><a href="https://www.greatplacetowork.com/certified-company/7078597"><em> Great Place To Work</em></a><em>®</em>, AppOmni continues to set the standard for innovation and customer value in SaaS security. The largest and fastest-growing global enterprises across industries trust AppOmni to secure their SaaS applications.</p> <p><strong>&nbsp;</strong></p> <h4><strong>About the Role</strong><strong><br><br></strong></h4> <p>The <strong>Senior Data Science Product Engineer</strong> plays a key role in the company’s AI strategy. This role offers the opportunity to make a meaningful impact across the whole platform. The Senior Data Science Product Engineer is a hybrid position covering&nbsp; the fronts of technical implementation, technical leadership and product management. This position focuses on envisioning, leading, managing, designing, deploying, and maintaining Data Science and Machine Learning systems , focusing on product roadmap ownership, high-level architecture and practical development, and hands-on implementation.</p> <p><strong>&nbsp;</strong></p> <h4><strong>What You’ll Do</strong></h4> <ul> <li>Technical Leadership: Leading development efforts, mentoring engineers and product managers, and making key architectural decisions that involve Data Science, Machine Learning and AI.&nbsp;</li> <li>Cross-functional collaboration: Partner with Sales, Marketing, Customer Support and other departments across the organization for a full end to end ownership from the product and technical perspective as well as internal enablement and customer support.</li> <li>Develop greenfield projects and implement proof of concepts, including hands-on coding and connection to the product vision.</li> <li>Architect end-to-end Data Science and Machine Learning systems by choosing the best&nbsp; implementation approach out of the holistic AI available tools (Data Science, Statistics, Machine Learning and Generative AI) for the problem to be solved, considering all relevant trade-offs and risks, while maximizing add-on value and minimizing costs, and work h