Review of the state of the art in autonomous artificial intelligence
This work addresses the problem of creating more autonomous and self-improving AI systems, but it appears incremental as it builds on existing literature and conceptual designs without presenting new experimental results.
The article tackles the design of autonomous AI by proposing a system called AutoAI that uses new and emerging data sources and automated tools to enable self-optimization, adaptation, and self-procreation, advancing beyond current state-of-the-art algorithms.
This article presents a new design for autonomous artificial intelligence (AI), based on the state-of-the-art algorithms, and describes a new autonomous AI system called AutoAI. The methodology is used to assemble the design founded on self-improved algorithms that use new and emerging sources of data (NEFD). The objective of the article is to conceptualise the design of a novel AutoAI algorithm. The conceptual approach is used to advance into building new and improved algorithms. The article integrates and consolidates the findings from existing literature and advances the AutoAI design into (1) using new and emerging sources of data for teaching and training AI algorithms and (2) enabling AI algorithms to use automated tools for training new and improved algorithms. This approach is going beyond the state-of-the-art in AI algorithms and suggests a design that enables autonomous algorithms to self-optimise and self-adapt, and on a higher level, be capable to self-procreate.