Optimizing Skill Management at Siemens with Generative AI for Enhanced Workforce Development

Thesis title: Optimizing Skill Management at Siemens with Generative AI for Enhanced Workforce Development
Author: David Thomas, Dijin
Thesis type: Diploma thesis
Supervisor: Sládek, Pavel
Opponents: Maryška, Miloš
Thesis language: English
Abstract:
This thesis examines how generative AI can close the competence-visibility gap in corporate learning ecosystems, where evaluation by self-report and static document retrieval fails to capture authentic employee capability. Siemens MyLearningWorld provides the case-study context. The work asks how an agentic conversational layer added to such a platform can make competency assessment continuous, transparent, and accountable to the learner. The study designs, implements, and evaluates a multi-agent prototype in which specialised agents handle assessment, mentoring, recommendation, and progress tracking through a single chat interface. The agents apply a three-dimension competency rubric, persist results as a longitudinal learner record, and operate within granular consent and explicit data-isolation controls. The prototype was built through an AI-assisted development method that takes domain expertise as the primary input rather than manual coding. A mixed cohort of evaluators drawn from external and host-organisation respondents rated the prototype's perceived usability in the highest band of a standard usability instrument. Independent stakeholder engagements in private-sector and public-sector contexts each pointed to concrete pathways for integration. The work contributes an evaluated agentic-upgrade pattern for enterprise learning platforms, integrating conversational competency assessment, longitudinal record-keeping, and regulation-aware governance. Findings indicate that the integration pathway into the host platform is viable subject to organisational review.
Keywords: Agentic AI; Multi-agent systems; Retrieval-augmented generation; Competency assessment; Action research; EU AI Act; System Usability Scale; Siemens MyLearningWorld
Thesis title: Optimizing Skill Management at Siemens with Generative AI for Enhanced Workforce Development
Author: David Thomas, Dijin
Thesis type: Diplomová práce
Supervisor: Sládek, Pavel
Opponents: Maryška, Miloš
Thesis language: English
Abstract:
This thesis examines how generative AI can close the competence-visibility gap in corporate learning ecosystems, where evaluation by self-report and static document retrieval fails to capture authentic employee capability. Siemens MyLearningWorld provides the case-study context. The work asks how an agentic conversational layer added to such a platform can make competency assessment continuous, transparent, and accountable to the learner. The study designs, implements, and evaluates a multi-agent prototype in which specialised agents handle assessment, mentoring, recommendation, and progress tracking through a single chat interface. The agents apply a three-dimension competency rubric, persist results as a longitudinal learner record, and operate within granular consent and explicit data-isolation controls. The prototype was built through an AI-assisted development method that takes domain expertise as the primary input rather than manual coding. A mixed cohort of evaluators drawn from external and host-organisation respondents rated the prototype's perceived usability in the highest band of a standard usability instrument. Independent stakeholder engagements in private-sector and public-sector contexts each pointed to concrete pathways for integration. The work contributes an evaluated agentic-upgrade pattern for enterprise learning platforms, integrating conversational competency assessment, longitudinal record-keeping, and regulation-aware governance. Findings indicate that the integration pathway into the host platform is viable subject to organisational review.
Keywords: Retrieval-augmented generation; Action research; System Usability Scale; Siemens MyLearningWorld; EU AI Act; Agentic AI; Multi-agent systems; Competency assessment

Information about study

Study programme: Information Systems Management/Management of Business Informatics
Type of study programme: Magisterský studijní program
Assigned degree: Ing.
Institutions assigning academic degree: Vysoká škola ekonomická v Praze
Faculty: Faculty of Informatics and Statistics
Department: Department of Information Technologies

Information on submission and defense

Date of assignment: 21. 10. 2025
Date of submission: 3. 5. 2026
Date of defense: 3. 6. 2026
Identifier in the InSIS system: https://insis.vse.cz/zp/94182/podrobnosti

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