Addressing the Sustainability Measures of MLOps - EnterpriseTalk
The effectiveness of AI efforts can be quantifiably increased using tried-and-true MLops methodologies in terms of time to market, results, and long-term sustainability. The long-term success of AI projects depends on effectively closing that operational capability gap because building models that make accurate predictions are only a small portion of the entire task. There is more to creating ML systems that add value to a company. An efficient technique calls for regular iteration cycles with ongoing monitoring, care, and improvement, as opposed to the ship-and-forget pattern typical of traditional software. Enter MLops (machine learning operations), which enables teams from the IT operations, engineering, and data science departments to collaborate to deploy ML models into production, manage them at scale, and continuously track their performance. MLops typically aims to address six critical challenges around taking AI applications into production.
Jul-15-2022, 03:40:33 GMT
- Technology: