Towards Automating the AI Operations Lifecycle

03/28/2020
by   Matthew Arnold, et al.
0

Today's AI deployments often require significant human involvement and skill in the operational stages of the model lifecycle, including pre-release testing, monitoring, problem diagnosis and model improvements. We present a set of enabling technologies that can be used to increase the level of automation in AI operations, thus lowering the human effort required. Since a common source of human involvement is the need to assess the performance of deployed models, we focus on technologies for performance prediction and KPI analysis and show how they can be used to improve automation in the key stages of a typical AI operations pipeline.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/28/2019

The Algorithmic Automation Problem: Prediction, Triage, and Human Effort

In a wide array of areas, algorithms are matching and surpassing the per...
research
04/09/2021

Comprehensive systematic review into combinations of artificial intelligence, human factors, and automation

Artificial intelligence (AI)-based models used to improve different fiel...
research
05/14/2023

Hyper-automation-The next peripheral for automation in IT industries

The extension of legacy business process automation beyond the bounds of...
research
10/07/2019

Artificial Intelligence: Powering Human Exploration of the Moon and Mars

Over the past decade, the NASA Autonomous Systems and Operations (ASO) p...
research
06/20/2022

How to Assess Trustworthy AI in Practice

This report is a methodological reflection on Z-Inspection^. Z-Inspectio...
research
06/30/2020

Mining Documentation to Extract Hyperparameter Schemas

AI automation tools need machine-readable hyperparameter schemas to defi...
research
08/29/2023

Intersectional Inquiry, on the Ground and in the Algorithm

This article makes two key contributions to methodological debates in au...

Please sign up or login with your details

Forgot password? Click here to reset