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Main Authors: Mock, Michael, Schmidt, Sebastian, Müller, Felix, Görge, Rebekka, Schmitz, Anna, Haedecke, Elena, Voss, Angelika, Hecker, Dirk, Poretschkin, Maximillian
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.04937
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author Mock, Michael
Schmidt, Sebastian
Müller, Felix
Görge, Rebekka
Schmitz, Anna
Haedecke, Elena
Voss, Angelika
Hecker, Dirk
Poretschkin, Maximillian
author_facet Mock, Michael
Schmidt, Sebastian
Müller, Felix
Görge, Rebekka
Schmitz, Anna
Haedecke, Elena
Voss, Angelika
Hecker, Dirk
Poretschkin, Maximillian
contents The trustworthiness of AI applications has been the subject of recent research and is also addressed in the EU's recently adopted AI Regulation. The currently emerging foundation models in the field of text, speech and image processing offer completely new possibilities for developing AI applications. This whitepaper shows how the trustworthiness of an AI application developed with foundation models can be evaluated and ensured. For this purpose, the application-specific, risk-based approach for testing and ensuring the trustworthiness of AI applications, as developed in the 'AI Assessment Catalog - Guideline for Trustworthy Artificial Intelligence' by Fraunhofer IAIS, is transferred to the context of foundation models. Special consideration is given to the fact that specific risks of foundation models can have an impact on the AI application and must also be taken into account when checking trustworthiness. Chapter 1 of the white paper explains the fundamental relationship between foundation models and AI applications based on them in terms of trustworthiness. Chapter 2 provides an introduction to the technical construction of foundation models and Chapter 3 shows how AI applications can be developed based on them. Chapter 4 provides an overview of the resulting risks regarding trustworthiness. Chapter 5 shows which requirements for AI applications and foundation models are to be expected according to the draft of the European Union's AI Regulation and Chapter 6 finally shows the system and procedure for meeting trustworthiness requirements.
format Preprint
id arxiv_https___arxiv_org_abs_2405_04937
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Developing trustworthy AI applications with foundation models
Mock, Michael
Schmidt, Sebastian
Müller, Felix
Görge, Rebekka
Schmitz, Anna
Haedecke, Elena
Voss, Angelika
Hecker, Dirk
Poretschkin, Maximillian
Artificial Intelligence
I.2.0
The trustworthiness of AI applications has been the subject of recent research and is also addressed in the EU's recently adopted AI Regulation. The currently emerging foundation models in the field of text, speech and image processing offer completely new possibilities for developing AI applications. This whitepaper shows how the trustworthiness of an AI application developed with foundation models can be evaluated and ensured. For this purpose, the application-specific, risk-based approach for testing and ensuring the trustworthiness of AI applications, as developed in the 'AI Assessment Catalog - Guideline for Trustworthy Artificial Intelligence' by Fraunhofer IAIS, is transferred to the context of foundation models. Special consideration is given to the fact that specific risks of foundation models can have an impact on the AI application and must also be taken into account when checking trustworthiness. Chapter 1 of the white paper explains the fundamental relationship between foundation models and AI applications based on them in terms of trustworthiness. Chapter 2 provides an introduction to the technical construction of foundation models and Chapter 3 shows how AI applications can be developed based on them. Chapter 4 provides an overview of the resulting risks regarding trustworthiness. Chapter 5 shows which requirements for AI applications and foundation models are to be expected according to the draft of the European Union's AI Regulation and Chapter 6 finally shows the system and procedure for meeting trustworthiness requirements.
title Developing trustworthy AI applications with foundation models
topic Artificial Intelligence
I.2.0
url https://arxiv.org/abs/2405.04937