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innovativeprojects-healthiness-of-data

Table of contents

  1. Project overview
  2. Functionality
  3. Technologies
  4. Installation
  5. Contributing

1. Project overview

The goal of this project is to process and visualize existing operator data provided by Nokia. This consists of multiple steps: cleaning up raw data, organizing kpi information, creating an API to provide data to front-end and finally creating a web application for users to view it. This project should ease future decisions and planning regarding analysed operator's services.

Project can be seen over at http://healthiness-of-data.ovh

API can be accessed by everyone over at http://healthiness-of-data.ovh/api

And finally API documentation over at http://healthiness-of-data.ovh/apidocs

2. Functionality

When you enter the site you can access the functionality in Components dropdown menu.

Currently we have finished and visualized these data endpoints:

  • Aggregates and histogram - Calculates aggregates - minimum value, maximum value, mean, standard deviation, coverage and distribution of data. Distribution is displayed by a bar graph - similiar to a histogram, except it's not fully discrete. The amount of bars are calculated by providing an additional argument - histogram bins. This signalizes, that the data should be split into x bins of equal ranges between minimum and maximum value. This data can be displayed for all or a single cluster depending on whether or not it's provided.

  • Coverage - Creates a table for all specified acronyms and their KPIs. On intersections you can read the coverage of data provided by an acronym and it's KPI.

  • Decomposition - Decomposes data and creates seasonal and trend chart. This works only on cluster level (acronym has to be provided along with it's corresponding cord id). Additionally, you can choose the frequency at which the data should be decomposed.

  • Outliers - Detects outliers in the queried data set and creates a chart visualizing them. This works only on cluster level (acronym has to be provided along with it's corresponding cord id). Additionally, you can choose the threshold to specify the cutoff for outliers. The lower it is, the more outliers will be detected.

  • 2D map - This component generates a map which indicates the relational performance of operators. It allows to clearly see which operators behave similarly - provide similiar quality of services. It can also generate a heatmap that shows how the similiarities change over time.

3. Technologies

4. Installation guide

The project is available to everyone at http://healthiness-of-data.ovh/homepage

If you want to set it up locally: Before setting up the project edit the config.yml file in main directory and input local database and API addresses and ports. Install Cassandra, enter CQL Shell and setup a keyspace:

CREATE KEYSPACE IF NOT EXISTS pb2  
  WITH REPLICATION = {'class':'SimpleStrategy', 'replication_factor':5};  

Then run the toolbox/create_cassandra_tables.py script to create all necessary database tables.

Import the data into corresponding tables which are: plmn_raw, plmn_raw_cord.

Then you either need to process the data by running the script at proccssing/process_data.py (This process takes a long time) or load it from dumped files into plmn_processed and plmn_processed_cord

Lastly you need to run toolbox/kpi_process_functions.py and toolbox/insert_cluster_list.py

IMPORTANT!!

Increase batch limit size to 50000 kb in cassandra.yaml config file.

After setting up Cassandra, you can start the API by running start_backend.py script. To run the front-end first you need to have NodeJS installed. Then enter the /frontend/ directory in command prompt and install Angular globally by:

npm install -g @angular/cli

Then you need to install all node modules required by the app by running:

npm i

And finally if everything went right you can run the front-end by:

ng serve

You can access it by default at localhost:4200

5. Contributing

Students

  • Wojciech Adamek
  • Jacek Zalewski
  • Jakub Walecki
  • Dominika Maślanka

Nokia Supervisors

  • Mateusz Sikora
  • Ewa Kaczmarek
  • Marcin Koralewski

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