
Foundations of AI Implementation
Discover the essential building blocks of AI projects, from defining objectives and preparing data to selecting and training models in guided, interactive sessions.

Discover the essential building blocks of AI projects, from defining objectives and preparing data to selecting and training models in guided, interactive sessions.

Learn best practices for deploying, monitoring and maintaining AI applications at scale, using automated workflows and containerization techniques.

Examine detailed case studies showcasing AI deployments in healthcare diagnostics and smart manufacturing processes, highlighting ethical design and operational excellence.
Our instructors blend academic research and practical experience, delivering insights from successful AI deployments across multiple sectors.
Simon Keller brings over a decade of experience in machine learning and AI integration. He has led cross-functional teams to deploy intelligent automation solutions across manufacturing and service sectors, ensuring seamless alignment between business goals and technology roadmaps.
Laura designs end-to-end AI frameworks that scale from pilot to full production. With a background in cloud computing and data science, she mentors teams on best practices for model deployment, monitoring, and continuous improvement.
Dr. Vogel specializes in building robust data pipelines that feed high-performing AI systems. He focuses on data quality, governance, and real-time processing, empowering organizations to derive actionable insights from diverse datasets.
Our program covers critical AI implementation topics such as data preprocessing, model selection, deployment pipelines, and performance monitoring. Each section is designed to address common challenges faced during the adoption of AI in an enterprise environment.
Participants learn to integrate AI services with existing IT infrastructure, apply continuous integration and delivery practices, and ensure compliance with data protection regulations specific to Switzerland.
Did You Know? AI projects can spend up to 60% of their time on data preparation tasks. By mastering best practices in data engineering, participants significantly reduce development cycles and improve model accuracy.

Each module includes interactive workshops where participants apply concepts to real datasets and deployment environments.

Enrollees gain access to a dedicated Slack channel, regular Q&A sessions, and an alumni network. This ecosystem fosters collaboration, enabling learners to troubleshoot challenges and share best practices.
Choose from specialized tracks focused on data strategy, model deployment, MLOps, or custom enterprise solutions to tailor your learning journey.

Learn how AI-driven inspection and predictive maintenance improve operational efficiency and reduce unplanned downtime.
View Case Studies
Discover strategies for building conversational agents that enhance client engagement and automate support workflows.
Learn More
Implement demand forecasting models and dynamic pricing strategies to optimize inventory management and customer experience.
View Case StudiesYour submission has been received. AIgnitionLane will contact you soon with the next steps for your AI implementation training.