Maskininlärning och AI för tillverkningsanalys 2.5 hp

**Transform manufacturing performance with the power of AI and machine learning.**
*Machine Learning and AI in Manufacturing Analytics* equips professionals with the tools and knowledge to harness predictive modeling, anomaly detection, and explainable AI to improve quality, reduce waste, and optimize industrial processes. Through hands-on experience with real manufacturing data, participants gain practical expertise in modern machine learning techniques, robust validation methods, and responsible AI practices including transparency, fairness, and risk management. This course emphasizes the deployment of interpretable, sustainable, and trustworthy AI solutions that enhance decision-making and support the transition toward more efficient, resilient, and data-driven manufacturing system.

Kursinnehåll

This course introduces machine learning and artificial intelligence methods for manufacturing analytics, focusing on how data-driven models can support process optimization, quality monitoring, defect detection, and operational decision-making. Emphasis is placed on practical industrial applications, responsible AI, and sustainability-oriented manufacturing improvements. The course addresses how AI can contribute to energy efficiency, reduced material waste, and more robust production systems through early detection of process deviations and interpretable predictive models. Participants gain hands-on experience with industrial datasets and learn how to evaluate, deploy, and critically assess AI solutions in manufacturing environments. The course includes the following elements: - Overview of machine learning and AI for manufacturing applications - Industrial data pipelines: data collection, preprocessing, management, and governance - Supervised and unsupervised learning for process modeling and quality analytics - Introduction to deep learning for manufacturing data - Model validation, performance metrics, and uncertainty assessment - Explainable AI methods in industrial contexts (e.g., SHAP, LIME), and Responsible AI (ethics, transparency, bias, and risk management) - Use of modern large language models for manufacturing analytics support - Sustainability aspects: energy efficiency, material savings, and data-driven decision support

Förkunskapskrav

Academic degree of at least 180 ECTS credits within Engineering and/or Technology or passed courses of at least 40 credits in the main field of study within Engineering and/or Technology and at least 1 year of work experience in the manufacturing industry or at least 4 years of work experience in the manufacturing industry. Proof of English proficiency is required.

Urval

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Utbildningsnivå: Avancerad nivå

Kurskod/Ladokkod: T2MOAF

Kursen ges vid: Tekniska högskolan

Label Value
Studieform Distans
Antal träffar 1
Termin Hösten 2026
Studieperiod vecka 46 - vecka 51
Studietakt 25%
Undervisningsspråk Engelska
Ort Jönköping
Kurstid Blandad undervisningstid
Studieavgift Gäller enbart studenter utanför EU/EES/Schweiz: 7125 SEK
Anmälningskod HJ-13187