Seq2Seq and Joint Learning Based Unix Command Line Prediction System
- URL: http://arxiv.org/abs/2006.11558v1
- Date: Sat, 20 Jun 2020 11:57:01 GMT
- Title: Seq2Seq and Joint Learning Based Unix Command Line Prediction System
- Authors: Thoudam Doren Singh, Abdullah Faiz Ur Rahman Khilji, Divyansha,
Apoorva Vikram Singh, Surmila Thokchom and Sivaji Bandyopadhyay
- Abstract summary: UNIX based platforms have not been able to garner an overwhelming reception from amateur end users.
One of the rationales for under popularity of UNIX based systems is the steep learning curve corresponding to them.
This work describes an assistive, adaptive and dynamic way of enhancing UNIX command line prediction systems.
- Score: 13.416277446363775
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Despite being an open-source operating system pioneered in the early 90s,
UNIX based platforms have not been able to garner an overwhelming reception
from amateur end users. One of the rationales for under popularity of UNIX
based systems is the steep learning curve corresponding to them due to
extensive use of command line interface instead of usual interactive graphical
user interface. In past years, the majority of insights used to explore the
concern are eminently centered around the notion of utilizing chronic log
history of the user to make the prediction of successive command. The
approaches directed at anatomization of this notion are predominantly in
accordance with Probabilistic inference models. The techniques employed in
past, however, have not been competent enough to address the predicament as
legitimately as anticipated. Instead of deploying usual mechanism of
recommendation systems, we have employed a simple yet novel approach of Seq2seq
model by leveraging continuous representations of self-curated exhaustive
Knowledge Base (KB) to enhance the embedding employed in the model. This work
describes an assistive, adaptive and dynamic way of enhancing UNIX command line
prediction systems. Experimental methods state that our model has achieved
accuracy surpassing mixture of other techniques and adaptive command line
interface mechanism as acclaimed in the past.
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