MLOps: Industrializing Data Science Use Case Life Cycle to Deliver ROI

Logo
Presented by

Hervé Mignot (Equancy), Raphaël Hamez (Equancy)

About this talk

Companies have invested a lot of effort and money in data-driven strategies. However, many also testify to the difficulty of deriving the full ROI from these initiatives. Data Science Use Cases should not be any more pilots, they need to be though as industrialized products from the beginning. As such, they must be managed as business and technical assets that need to be developed, deployed, monitored and improved over time. As software artefacts, they can largely benefit from software industry practices such as DevOps. MLOps has adapted DevOps practices to the development and operation of data science use cases, more specifically use cases embedding machine learning models.These machine learning models, as part of the use case deployed, need to be monitored, evaluated, retrained and certainly improved over time. It becomes critical to consider the whole life cycle of data science use cases with a robust methodology and set of practices. These will ensure an efficient design, delivery and continuous improvement of machine learning based use cases, to get most of the ROI. In this webinar, we introduce: -Key notions of MLOps practices -Highlight classical difficulties & roadblocks of data science use case life cycle. We present MLOps practices, illustrate these elements through actual use cases, and how Dataiku DSS can support such MLOps practices. Speakers: -Hervé Mignot, Data Science, Technologies and R&D Partner @ Equancy -Raphaël Hamez, Lead Data Scientist @ Equancy Please be aware that by registering for this webinar, you agree to have your personal information shared with both partners Dataiku and Equancy. They may contact you with information that could be of interest to you.
Related topics:

More from this channel

Upcoming talks (2)
On-demand talks (267)
Subscribers (56014)
Dataiku is the platform for Everyday AI, enabling data experts and domain experts to work together to build data into their daily operations, from advanced analytics to Generative AI. Together, they design, develop and deploy new AI capabilities, at all scales and in all industries. Organizations that use Dataiku enable their people to be extraordinary, creating the AI that will power their company into the future. More than 600 companies worldwide use Dataiku, driving diverse use cases from predictive maintenance and supply chain optimization, to quality control in precision engineering, to marketing optimization, Generative AI use cases, and everything in between.