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Enabling Ethical AI: A case study in using Ontological Context for Justified Agentic AI Decisions

McGee, Liam, Harvey, James, Cull, Lucy, Vermeulen, Andreas, Visscher, Bart-Floris, Sharan, Malvika

arXiv.org Artificial Intelligence

Agentic AI systems, software agents with autonomy, decision-making ability, and adaptability, are increasingly used to execute complex tasks on behalf of organisations. Most such systems rely on Large Language Models (LLMs), whose broad semantic capabilities enable powerful language processing but lack explicit, institution-specific grounding. In enterprises, data rarely comes with an inspectable semantic layer, and constructing one typically requires labour-intensive "data archaeology": cleaning, modelling, and curating knowledge into ontologies, taxonomies, and other formal structures. At the same time, explainability methods such as saliency maps expose an "interpretability gap": they highlight what the model attends to but not why, leaving decision processes opaque. In this preprint, we present a case study, developed by Kaiasm and Avantra AI through their work with The Turing Way Practitioners Hub, a forum developed under the InnovateUK BridgeAI program. This study presents a collaborative human-AI approach to building an inspectable semantic layer for Agentic AI. AI agents first propose candidate knowledge structures from diverse data sources; domain experts then validate, correct, and extend these structures, with their feedback used to improve subsequent models. Authors show how this process captures tacit institutional knowledge, improves response quality and efficiency, and mitigates institutional amnesia. We argue for a shift from post-hoc explanation to justifiable Agentic AI, where decisions are grounded in explicit, inspectable evidence and reasoning accessible to both experts and non-specialists.


Step-by-step Approach to Build Your Machine Learning API Using Fast API

#artificialintelligence

No matter how efficient your Machine Learning model is, it will only be useful when it creates value for the Business. This can not happen when it's stored in a folder on your computer. In this fast-growing environment, speed and good deployment strategies are required to get your AI solution to the market! This article explains how Fast APIcan help on that matter. We will start by having a global overview of Fast API and its illustration by creating an API.


Step-by-step Approach to Build Your Machine Learning API Using Fast API

#artificialintelligence

No matter how efficient your Machine Learning model is, it will only be useful when it creates value for the Business. This can not happen when it's stored in a folder on your computer. In this fast-growing environment, speed and good deployment strategies are required to get your AI solution to the market! This article explains how Fast APIcan help on that matter. We will start by having a global overview of Fast API and its illustration by creating an API.


Machine Learning : Linear Regression using TensorFlow Python - CouponED

#artificialintelligence

Design, Develop and Train the model In this course, we provide the step-by-step approach for building a Linear Regression model using TensorFlow with Python. In this course, we provide the step-by-step approach for building a Linear Regression model using TensorFlow with Python. In the beginning, we give a high-level introduction to Artificial Intelligence and Machine Learning. We develop the entire system in Google Colaboratory using TensorFlow. So, we have a lecture each on Introduction to Google Colaboratory and Introduction to TensorFlow.


Bayesian Statistics for Beginners: a step-by-step approach: Donovan, Therese M., Mickey, Ruth M.: 9780198841302: Amazon.com: Books

#artificialintelligence

"While reading this book, I joined the authors on a learning endeavor thanks to their honesty and intellectual vulnerability. Their lack of experience with Bayesian statistics helps them to be effective communicators . . . If you are interested in starting your Bayesian journey, then Bayesian Statistics for Beginners is an excellent place to begin." Therese Donovan, Wildlife Biologist, U.S. Geological Survey, Vermont Cooperative Fish and Wildlife Research Unit, University of Vermont, USA,Ruth M. Mickey, Professor Emerita, Department of Mathematics and Statistics, University of Vermont, USA Therese Donovan is a wildlife biologist with the U.S. Geological Survey, Vermont Cooperative Fish and Wildlife Research Unit. Based in the Rubenstein School of Environment and Natural Resources at the University of Vermont, Therese teaches graduate courses on ecological modeling and conservation biology.


Artificial Intelligent Solutions

#artificialintelligence

Artificial Intelligence is machine intelligence or ability to think and process information like natural human intelligence in order to create expert systems with human intelligence (reasoning, learning, and problem solving) with help from science and technology disciplines such as Mathematics, Engineering, Biology, Computer Science, Linguistics and Psychology. The term intelligence, literally, means the ability to acquire and apply knowledge and skills. The term Artificial Intelligence ( Artificial Intelligence) is pretty self-explanatory. It is the ability to acquire and apply knowledge and skills artificially. In 1956, a group of researchers from different disciplines of technology gathered for the summit called Dartmouth Summer Research Project.


Starting a Knowledge Engineering Project: A Step-by-Step Approach

AI Magazine

Artificial Intelligence Department, Computer Resenrch Laboratory, Tektronix, 1, Post Office Box 500, Beaverton, Oregon 97077 Getting started on a new knowledge engineering project is a difficult and challenging task, even for those who have done it before. For those who haven't, the task can often prove impossible. One reason is that the requirementsoriented methods and intuitions learned in the development of other types of software do not carry over well to the knowledge engineering task. Another reason is that methodologies for developing expert systems by extracting, representing, and manipulating an expert's knowledge have been slow in coming. At Tektronix, we have been using a step-by-step approach to prototyping expert systems for over two years now.


Starting a Knowledge Engineering Project: A Step-By-Step Approach

Freiling, Michael, Alexande, Jim, Messick, Steve, Rehfuss, Stefe, Shulman, Sherri

AI Magazine

One reason is that the requirements-oriented methods and intuitions learned in the development of other types of software do not carry over well to the knowledge engineering task. Another reason is that methodologies for developing expert systems by extracting, representing, and manipulating an expert's knowledge have been slow in coming. At Tektronix, we have been using step-by-step approach to prototyping expert systems for over two years now. This methodology has helped us collect the knowledge necessary to implement several prototype knowledge-based systems, including a troubleshooting assistant for the Tektronix FG-502 function generator and an operator's assistant for a wave solder machine.