Nearly all our safety data collection and reporting systems are
backwardlooking: incident reports; dashboards; compliance monitoring
systems; and so on. This book shows how we can use safety data in a
forward-looking, predictive sense. Predictive Safety Analytics:
Reducing Risk through Modeling and Machine Learning contains real use
cases where organizations have reduced incidents by employing
predictive analytics to foresee and mitigate future risks. It
discusses how Predictive Safety Analytics is an opportunity to break
through the plateau problem where safety rate improvements have
stagnated in many organizations. The book presents how the use of
data, coupled with advanced analytical techniques, including machine
learning, has become a proven and successful innovation. Emphasis is
placed on how the book can “meet you where you are” by
illuminating a path to get there, starting with simple data the
organization likely already has. Highlights of the book are the real
examples and case studies that will assist in generating thoughts and
ideas for what might work for individual readers and how they can
adapt the information to their particular situations. This book is
written for professionals and researchers in system reliability, risk
and safety assessment, quality control, operational managers in
selected industries, data scientists, and ML engineers. Students
taking courses in these areas will also find this book of interest to
them.
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Reducing Risk through Modeling and Machine Learning
Produktdetaljer
ISBN
9781003806271
Publisert
2023
Utgave
1. utgave
Utgiver
Taylor & Francis
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter