Reduce Data Movement and Decrease Processing Times with a Machine Scale Feature Store(Molecula)
Listen now
Description
In this episode, we speak with H.O. Maycotte. H.O. is the CEO/founder of Molecula, an enterprise feature store that simplifies, accelerates, and controls big data access to power machine-scale analytics and AI. Molecula is powered by Pilosa, an open source project created by H.O. and team. Pilosa eliminates the need to copy data between systems in order to make it accessible for analytical and machine learning purposes at scale. Leading companies like Spotify, Hulu, Uber, Zillow, ESPN are all utilizing Pilosa.  Top 3 Value Bombs:  Large volume or complex workloads on a lake or DW can take hours to process, feature stores can reduce that to seconds in some scenarios. On average, over 80% of an organization's data are copies of the original data. Reduce the movement and duplication of data across your organization. Organizations do not have a data volume problem but rather data readiness problem. Enable the business with “real time” data. 
More Episodes
In this episode we speak with Justin Borgman, Chairman & CEO at Starburst, which is based on open source Trino (formerly PrestoSQL) and was recently valued at $3.35 billion after securing their series D funding.  In this episode we discuss convergence of DW’s / DL's, why data lakes fail and...
Published 03/15/22
In this episode we speak with Paul Singman Developer Advocate at Treeverse / LakeFS. LakeFS is an open source project  that allows you to transform your object storage into a Git-like repository.  Top 3 takeaways LakeFS enables use cases like debugging to quickly view historical versions of your...
Published 03/01/22