Upgrade to Pro — share decks privately, control downloads, hide ads and more …

Fontys

Avatar for Marketing OGZ Marketing OGZ
September 22, 2022
100

 Fontys

Avatar for Marketing OGZ

Marketing OGZ

September 22, 2022
Tweet

More Decks by Marketing OGZ

Transcript

  1. Petra Heck – Fontys Hogeschool ICT • M.Sc. Computer Science,

    Software engineer & quality consultant • Lecturer Software Engineering since 2012 • PhD Computer Science (Quality of agile software requirements) • Lectoraat AI & Big Data since 2016 – postdoc AI engineering • Kenniscentrum AI for Society since 2022 – senior researcher – Quality model for trustworthy AI systems – Tools, techniques and frameworks for building trustworthy AI systems – AI for health projects https://fontysblogt.nl/author/petraheck/
  2. Definitions AI autonomous machine intelligence Machine Learning algorithms to build

    AI Deep Learning machine learning with neural networks https://livebook.manning.com/book/deep-learning-with-javascript/chapter-1/v-3/
  3. From DevOps to MLOps MLOps = ModelOps = AIOps =

    AI Engineering = ML engineering = … https://fontysblogt.nl/ai-engineering-and-mlops/
  4. MLOps: building production-ready ML systems Production-ready ML systems should: •

    be developed with a collaborative team across the full machine learning lifecycle; • deliver reproducible and traceable results; • be continuously monitored and improved. (mlops.community/manifesto/)
  5. [CH1] Elicitation of Data and Model Requirements [CH2] Modularizing the

    Application [CH3] Design through Experimentation [CH4] Data and Model Management [CH5] Testing Heck, Petra, Gerard Schouten, and Luís Cruz. "A Software Engineering Perspective on Building Production-Ready Machine Learning Systems." Handbook of Research on Applied Data Science and Artificial Intelligence in Business and Industry. IGI Global, 2021. 23-54. Building Production-Ready ML Systems https://fontysblogt.nl/a-toolbox-for-the-applied-ai-engineer/
  6. MLOps Open Source Tools Explaining predictions & models Privacy preserving

    ML Model & data versioning Model training orchestration Model serving and monitoring Neural architecture search Reproducible notebooks Visualization frameworks Industry-strength NLP Data pipelines & ETL Data labelling Data storage Functions as a service Computation distribution Model serialization Optimized calculation frameworks Data stream processing Outlier and anomaly detection Feature engineering Feature stores Adversarial robustness Categories of open-source tool support for production ML, adapted from (EthicalML, 2020)
  7. AI Engineering Education @ Fontys • Each semester project from

    external organization • Hands-on applied machine learning, “no math” • Covers full machine learning life cycle • Combines software engineering and machine learning • Includes data engineering and data visualization Turning Software Engineers into AI Engineers
  8. AI engineering @ Fontys - Future • Update toolbox for

    trustworthy AI systems • Student projects at/with ICT organizations/departments • Partners for long-term innovation or research project [email protected] https://www.linkedin.com/company/fontys-kenniscentrum-applied-ai-for-society