Title
Ease.ml in action: towards multi-tenant declarative learning services
Abstract
AbstractWe demonstrate ease.ml, a multi-tenant machine learning service we host at ETH Zurich for various research groups. Unlike existing machine learning services, ease.ml presents a novel architecture that supports multi-tenant, cost-aware model selection that optimizes for minimizing total regrets of all users. Moreover, it provides a novel user interface that enables declarative machine learning at a higher level: Users only need to specify the input/output schemata of their learning tasks and ease.ml can handle the rest. In this demonstration, we present the design principles of ease.ml, highlight the implementation of its key components, and showcase how ease.ml can help ease machine learning tasks that often perplex even experienced users.
Year
DOI
Venue
2018
10.14778/3229863.3236258
Hosted Content
Field
DocType
Volume
Design elements and principles,Architecture,Computer science,Model selection,Human–computer interaction,Declarative learning,User interface,Schema (psychology),Database
Journal
11
Issue
ISSN
Citations 
12
2150-8097
1
PageRank 
References 
Authors
0.38
0
4
Name
Order
Citations
PageRank
Bojan Karlas195.05
Ji Liu2135277.54
Wentao Wu339430.53
Ce Zhang480383.39