Machine learning model development and optimisation can be a rather cumbersome and resource-intensive process. Custom models are often more difficult to build and deploy, and they require infrastructure and expertise which are often costly to acquire and maintain. Machine learning product development lifecycle must take into account the need to navigate the difficulties of developing and deploying machine learning models. evoML is an AI-powered tool that provides automated functionalities in machine learning model development, optimisation, and model code optimisation. Core functionalities of evoML include data cleaning, exploratory analysis, feature analysis and generation, model optimisation, model evaluation, model code optimisation, and model deployment. Additionally, a key feature of evoML is that it embeds code and model optimisation into the model development process, and includes multi-objective optimisation capabilities.
@article{arxiv.2212.10671,
title = {evoML Yellow Paper: Evolutionary AI and Optimisation Studio},
author = {Lingbo Li and Leslie Kanthan and Michail Basios and Fan Wu and Manal Adham and Vitali Avagyan and Alexis Butler and Paul Brookes and Rafail Giavrimis and Buhong Liu and Chrystalla Pavlou and Matthew Truscott and Vardan Voskanyan},
journal= {arXiv preprint arXiv:2212.10671},
year = {2022}
}