Commentators agree that we are on the cusp of an era of ubiquitous Machine Learning – yet many organisations still struggle to get analytics out of the lab and into production. In this presentation, we will discuss: vertical and horizontal scaling of Machine Learning; key considerations in the effective operationalisation of Machine Learning; and we will take the long view of digitisation to try and understand what will have to happen for ubiquitous Machine Learning to realise its full potential.
You may also like
Recap: Day 1 at Data Innovation Summit 2024
What a fantastic start! The first day of the Data Innovation Summit is officially over, and Kistamässan was overflowing with energy! At every turn, attendees seized the opportunity to exchange knowledge and foster...
Decoding Data Modeling: A Pillar of Modern Data Stacks and AI Cost Efficiency – Interview with Serge Gershkovich, SqlDBM
In this Hyperight Data Talks interview, we had the chance to speak with Serge Gershkovich, Product Success Lead at SqlDBM! During our conversation, we talk about data modeling in relational databases within the modern...
Next-Generation AI: Deeper Experiments – Interview with Sina Nek Akhtar, Tech Lead, Data Analytics and ML at Google Cloud
In this Hyperight Data Talks interview, we had the opportunity to speak with Sina Nek Akhtar, Tech Lead, Data Analytics and ML at Google Cloud!
Add comment