Machine learning & predictive modelling for recommendations & insight : Mallzee.
Cally Russell, CEO, and Martina Pugliese, data scientist, at Mallzee, a multi-retail shopping app, discuss how the Mallzee app fulfills a one-stop-shop consumer need in the age of mobile-device shopping. Developed using machine-learning algorithms, the app can be personalized to the user while provi...
| Format: | Video |
|---|---|
| Language: | English |
| Language Notes: | Closed-captions in English. |
| Published: |
London :
SAGE Publications Ltd,
2019.
|
| Subjects: | |
| Online Access: | Connect to this streaming video |
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