Results for MLOps
Coming and Current AI Regulation: Four Ways Scalable Model Ops Can Help Readiness
Even as enterprises are expected to invest multiple millions in AI initiatives, many continue to overlook two key aspects – trust and transparency. TIBCO’s Lori Witzel shows why these two elements should be part of every AI initiative in 2022, along with tips on the best way to start and succeed.
Full Story >Blaize Code-Free Tooling To Accelerate the ‘AI Edge’ Application Lifecycle
Blaize is shipping an open and code-free platform to help companies more quickly and easily build and deploy AI Edge apps and workflows. AI Studio sports features to enable even less technical staff to design and deliver AI edge projects in as little as days.
Full Story >DataRobot Expands Enterprise AI Platform; Visual AI Debuts, MLOps Updated
DataRobot’s latest enterprise AI platform aims to make it simpler for firms to build, deploy and manage machine learning models. IDN looks at DataRobot 6’s latest updates.
Full Story >GigaSpaces Latest Upgrade Looks To Fill in Missing Gaps for MLOps Success
The updates in GigaSpaces 15.0 aim to make MLOps easier to achieve with features to help companies run their ML models in production. IDN looks at the latest version with GigaSpaces vice president Yoav Einav.
Full Story >Dotscience Looks To Simplify MLOps and Speed Delivery of AI Projects
Dotscience is making it easier to deploy and monitor machine learning models on Kubernetes clusters. IDN looks at Dotscience Deploy and Monitor, which offers several benefits to promote MLOps, such as helping data science and machine learning teams promote more sharing and easier provisioning.
Full Story >