Introduction

Purpose

This application was designed to help manufacturers “tag” their maintenance work-order data according to the methods being researched by the Knowledge Extraction and Applications project at the NIST Engineering Laboratory. The goal of this application is to give understanding to data sets that previously were too unstructured or filled with jargon to analyze. The current build is in very early alpha, so please be patient in using this application. If you have any questions, please do not hesitate to contact us (see Who are we?. )

Why?

There is often a large amount of maintenance data already available for use in Smart Manufacturing systems, but in a currently-unusable form: service tickets and maintenance work orders (MWOs). Nestor is a toolkit for using Natural Language Processing (NLP) with efficient user-interaction to perform structured data extraction with minimal annotation time-cost.

Features

  • Ranks concepts to be annotated by importance, to save you time

  • Suggests term unification by similarity, for you to quickly review

  • Basic concept relationships builder, to assist assembling problem code and taxonomy definitions

  • Strucutred data output as tags, whether in readable (comma-sep) or computation-friendly (sparse-mat) form.

What’s Inside?

Documentation is contained in the /docs subdirectory, and are hosted as webpages and PDF available at readthedocs.io .

Current:

  • Tagging Tool: Human-in-the-loop Annotation Interface (pyqt)

  • Unstructured data processing toolkit (sklearn-style)

  • Vizualization tools for tagged MWOs-style data (under development)

Planned/underway:

  • KPI creation and visualization suite

  • Machine-assisted functional taxonomy generation

  • Quantitative skill assement and training suggestion engine

  • Graph Database creation assistance and query tool

Pre-requisites

This package was built as compatible with Anaconda python distribution. See our default requirements file for a complete list of major dependencies, along with the requirements to run our experimental dashboard or to compile our documentation locally

Who are we?

This toolkit is a part of the Knowledge Extraction and Application for Smart Manufacturing (KEA) project, within the Systems Integration Division at NIST.

Points of Contact

Contributors:

Name

GitHub Handle

Thurston Sexton

@tbsexton

Sascha Moccozet

@saschaMoccozet

Michael Brundage

@MichaelPBrundage

Madhusudanan N.

@msngit

Emily Hastings

@emhastings

Lela Bones

@lelatbones

Why KEA?

The KEA project seeks to better frame data collection and transformation systems within smart manufacturing as collaborations between human experts and the machines they partner with, to more efficiently utilize the digital and human resources available to manufacturers. Kea (nestor notabilis) on the other hand, are the world’s only alpine parrots, finding their home on the southern Island of NZ. Known for their intelligence and ability to solve puzzles through the use of tools, they will often work together to reach their goals, which is especially important in their harsh, mountainous habitat.

Further reading: [SBHM17][SSB17]

SBHM17

Thurston Sexton, Michael P Brundage, Michael Hoffman, and Katherine C Morris. Hybrid datafication of maintenance logs from ai-assisted human tags. In Big Data (Big Data), 2017 IEEE International Conference on, 1769–1777. IEEE, 2017.

SSB17

Michael Sharp, Thurston Sexton, and Michael P Brundage. Toward semi-autonomous information. In IFIP International Conference on Advances in Production Management Systems, 425–432. Springer, 2017.