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AI/ML Engineer (IAM Solutions) Jobs (Remote work)

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Senior AI Engineer
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Poland , Warszawa
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Not provided
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Algoteque
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Until further notice
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Senior Technical Delivery Manager
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Spain , Madrid
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Not provided
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Maisa
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Explore cutting-edge AI/ML Engineer (IAM Solutions) jobs, a specialized niche where artificial intelligence meets critical cybersecurity. Professionals in this role are at the forefront of securing digital identities and access by building intelligent, data-driven security systems. They apply machine learning and advanced analytics to the Identity and Access Management (IAM) domain, transforming how organizations protect their assets, manage user privileges, and detect threats. This career path is ideal for engineers passionate about creating impactful security solutions that learn and adapt. Typically, an AI/ML Engineer in IAM focuses on developing models that enhance security postures and automate complex governance tasks. Common responsibilities include analyzing vast streams of authentication and authorization data to identify patterns indicative of anomalies or threats. They design, train, and deploy ML models for use cases such as behavioral biometrics for continuous authentication, predictive risk scoring for access requests, and automated anomaly detection for privileged account activities. A significant part of the role involves integrating these intelligent features into existing IAM platforms and microservices architectures, ensuring they are scalable, robust, and maintainable for enterprise environments. To succeed in these jobs, a specific blend of technical and domain expertise is required. Core skills include strong proficiency in Python and deep experience with ML frameworks like PyTorch and TensorFlow. A solid foundation in both supervised and unsupervised learning, feature engineering, and model evaluation is essential. Beyond pure ML, understanding IAM concepts—such as lifecycle management, single sign-on (SSO), and privilege access management (PAM)—is crucial for developing relevant solutions. These professionals must possess strong analytical problem-solving skills to translate complex security challenges into viable AI projects. Excellent communication skills are also vital for collaborating with cybersecurity architects, software engineers, and stakeholders to align technical decisions with business security objectives. As the field evolves, a proactive, ownership-driven mindset is key to innovating in this dynamic intersection of AI and security, making these roles both challenging and highly rewarding for the right candidate.

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