Operationalise Machine Learning
- Analyst Report
- PDF 503 KB
- 10
Overview
The emerging field of ML Ops aims to deliver agility and speed to the ML lifecycle – similar to what DevOps has done for the software development lifecycle. A recent Forrester study, commissioned by HPE and Intel, highlights how 97% of enterprise organisations investing in ML Ops believe it will give them a competitive edge. Participants of this study expect that ...
Brought to you by HPE and Intel®.
HPE Ezmeral ML Ops
HPE provides an enterprise grade container-based platform – HPE Ezmeral ML Ops. HPE Ezmeral ML Ops supports every stage of ML lifecycle – data preparation, model build, model training, model deployment, collaboration and monitoring. HPE Ezmeral ML Ops is an end-to-end data science solution with the flexibility to run on-premises, in multiple public clouds or in a hybrid model and respond to dynamic business requirements in a variety of use cases.
Intel:
To deliver business insights using real-time analytics, enterprises need an end-to-end strategy that optimises every stage of the data life cycle, from ingestion to archiving, and across the architecture from edge to cloud. Intel’s broad portfolio of technologies, featured in a comprehensive and highly integrated ecosystem of solutions, accelerates data-powered insights. Solutions based on Intel® technology deliver the performance it takes to handle huge data in-memory, plus the flexibility to scale seamlessly up and out on infrastructure you already know and trust.