2022 | English | 9781098133474 | EPUB | 41 pages | 4.38 MB
The past few years have seen significant developments in data science, AI, machine learning, and advanced analytics. But the wider adoption of these technologies has also brought greater cost, risk, regulation, and demands on organizational processes, tasks, and teams. This report explains how ModelOps can provide both technical and operational solutions to these problems.
Thomas Hill, Mark Palmer, and Larry Derany summarize important considerations, caveats, choices, and best practices to help you be successful with operationalizing AI/ML and analytics in general. Whether your organization is already working with teams on AI and ML, or just getting started, this report presents ten important dimensions of analytic practice and ModelOps that are not widely discussed, or perhaps even known.
Download From Rapidgator
https://rapidgator.net/file/d6efe1c13bd325298fded4b3b29cae85
Download From DDownload
https://ddownload.com/0gjqytkv3s2o
Download From Nitroflare
https://nitroflare.com/view/316B2FCD13E6AB9