Towards Tool-Support for Interactive-Machine Learning Applications in
the Android Ecosystem
- URL: http://arxiv.org/abs/2103.14852v1
- Date: Sat, 27 Mar 2021 09:28:40 GMT
- Title: Towards Tool-Support for Interactive-Machine Learning Applications in
the Android Ecosystem
- Authors: Muhammad Mehran Sunny, Moritz Berghofer, Ilhan Aslan
- Abstract summary: We believe there is a need for tool-support for AI engineers to address the challenges of implementing, testing, and deploying machine learning models.
This paper presents preliminary results of a series of inquiries, including interviews with AI engineers and experiments for an interactive machine learning use case with a Smartwatch and Smartphone.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Consumer applications are becoming increasingly smarter and most of them have
to run on device ecosystems. Potential benefits are for example enabling
cross-device interaction and seamless user experiences. Essential for today's
smart solutions with high performance are machine learning models. However,
these models are often developed separately by AI engineers for one specific
device and do not consider the challenges and potentials associated with a
device ecosystem in which their models have to run. We believe that there is a
need for tool-support for AI engineers to address the challenges of
implementing, testing, and deploying machine learning models for a next
generation of smart interactive consumer applications. This paper presents
preliminary results of a series of inquiries, including interviews with AI
engineers and experiments for an interactive machine learning use case with a
Smartwatch and Smartphone. We identified the themes through interviews and
hands-on experience working on our use case and proposed features, such as data
collection from sensors and easy testing of the resources consumption of
running pre-processing code on the target device, which will serve as
tool-support for AI engineers.
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