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The GTFS-Madrid-Bench

We present GTFS-Madrid-Bench, a benchmark to evaluate declarative KG construction engines that can be used for the provision of access mechanisms to (virtual) knowledge graphs. Our proposal introduces several scenarios that aim at measuring performance and scalability as well as the query capabilities of all this kind of engines, considering their heterogeneity. The data sources used in our benchmark are derived from the GTFS data files of the subway network of Madrid. They can be transformed into several formats (CSV, JSON, SQL and XML) and scaled up. The query set aims at addressing a representative number of SPARQL 1.1 features while covering usual queries that data consumers may be interested in.

Main Publication:

David Chaves-Fraga, Freddy Priyatna, Andrea Cimmino, Jhon Toledo, Edna Ruckhaus, & Oscar Corcho (2020). GTFS-Madrid-Bench: A benchmark for virtual knowledge graph access in the transport domain. Journal of Web Semantics, 65. Online

Citing GTFS-Madrid-Bench: If you used GTFS-Madrid-Bench in your work, please cite as:

@article{chaves2020gtfs,
  title={GTFS-Madrid-Bench: A benchmark for virtual knowledge graph access in the transport domain},
  author={Chaves-Fraga, David and Priyatna, Freddy and Cimmino, Andrea and Toledo, Jhon and Ruckhaus, Edna and Corcho, Oscar},
  journal={Journal of Web Semantics},
  volume={65},
  pages={100596},
  year={2020},
  doi={https://doi.org/10.1016/j.websem.2020.100596},
  publisher={Elsevier}

}

Results

  • Virtual KGC results can be reproduced through the resources provided in this branch
  • Materialized KGC results can be reproduced through the resources provided in this repo

Requirements for the use:

To have locally installed docker.

Decide the distributions to be used for your testing. They can be:

  • Standard distributions: data sources are represented in one format (e.g., GTFS-CSV, GTFS-JSON or GTFS-SQL).
  • Custom distributions: each data source is represented in the format selected by the user (e.g., SHAPES in JSON, CALENDAR in CSV, etc.)

Using GTFS-Madrid-Bench:

  1. Download and run the docker image (run it always to ensure you are using the last version of the docker image).
  • Docker v20.10 or later: docker run --pull always -itv "$(pwd)":/output oegdataintegration/gtfs-bench
  • Previous versions: docker pull oegdataintegration/gtfs-bench and then docker run -itv "$(pwd)":/output oegdataintegration/gtfs-bench
  1. Choose data scales and formats to obtain the distributions you want to test. You have to provide: first the data scales (in one line, separated by a comma), then, select the standard distributions (from none to all) and if is needed, the configuration for one custom distribution. If you want to generate several custom distributions, you will have to run the generator several times.
  2. Optionally, you can apply a percentage of changes to the original data. A seed value can be provided to generate different changes to simulate multiple changed dumps. The following changes can be generated:
    • Additions: Routes and their associated trips, stops, stoptimes, services are added to the data. Example: 25% additions will provide additional new routes, 25% of the number of routes of the original data.
    • Modifications: Service entries for trips are modified. Example: 50% modifications will modify 50% of the service entries in the calendar.
    • Deletions: Routes and their associated trips and services are removed from the data. Example: 10% deletions will remove 10% of the routes in the original data together with the associated data.

Demo usage: Demo GIF

  1. Result will be available as result.zip in the current working directory. The folders structure are: one folder for datasets and other for the queries (for virtual KG). Inside the datasets folder will be one folder for each distribution (e.g., csv, sql, custom), and in each distribution folder we provide the required sizes (each size in one folder), the corresponding mapping associated to the distribution, and the SQL schemes if they are needed. Consider that for not repeating resources at scale level, the mappings and SQL paths to the data are define at distribution level (e.g, "data/AGENCY.csv") and their management for performing a correct evaluation has to be done by the user (with an script, for example). You can visit the utils folder where we provide some ideas on how to manage it. See the following example:
.
├── datasets
│   ├── csv
│   │   ├── 1
│   │   │   ├── AGENCY.csv
│   │   │   ├── CALENDAR.csv
│   │   │   ├── CALENDAR_DATES.csv
│   │   │   ├── FEED_INFO.csv
│   │   │   ├── FREQUENCIES.csv
│   │   │   ├── ROUTES.csv
│   │   │   ├── SHAPES.csv
│   │   │   ├── STOPS.csv
│   │   │   ├── STOP_TIMES.csv
│   │   │   └── TRIPS.csv
│   │   ├── 2
│   │   │   ├── AGENCY.csv
│   │   │   ├── CALENDAR.csv
│   │   │   ├── CALENDAR_DATES.csv
│   │   │   ├── FEED_INFO.csv
│   │   │   ├── FREQUENCIES.csv
│   │   │   ├── ROUTES.csv
│   │   │   ├── SHAPES.csv
│   │   │   ├── STOPS.csv
│   │   │   ├── STOP_TIMES.csv
│   │   │   └── TRIPS.csv
│   │   ├── 3
│   │   │   ├── AGENCY.csv
│   │   │   ├── CALENDAR.csv
│   │   │   ├── CALENDAR_DATES.csv
│   │   │   ├── FEED_INFO.csv
│   │   │   ├── FREQUENCIES.csv
│   │   │   ├── ROUTES.csv
│   │   │   ├── SHAPES.csv
│   │   │   ├── STOPS.csv
│   │   │   ├── STOP_TIMES.csv
│   │   │   └── TRIPS.csv
│   │   └── mapping.csv.nt
│   ├── json
│   │   ├── 1
│   │   │   ├── AGENCY.json
│   │   │   ├── CALENDAR_DATES.json
│   │   │   ├── CALENDAR.json
│   │   │   ├── FEED_INFO.json
│   │   │   ├── FREQUENCIES.json
│   │   │   ├── ROUTES.json
│   │   │   ├── SHAPES.json
│   │   │   ├── STOPS.json
│   │   │   ├── STOP_TIMES.json
│   │   │   └── TRIPS.json
│   │   ├── 2
│   │   │   ├── AGENCY.json
│   │   │   ├── CALENDAR_DATES.json
│   │   │   ├── CALENDAR.json
│   │   │   ├── FEED_INFO.json
│   │   │   ├── FREQUENCIES.json
│   │   │   ├── ROUTES.json
│   │   │   ├── SHAPES.json
│   │   │   ├── STOPS.json
│   │   │   ├── STOP_TIMES.json
│   │   │   └── TRIPS.json
│   │   ├── 3
│   │   │   ├── AGENCY.json
│   │   │   ├── CALENDAR_DATES.json
│   │   │   ├── CALENDAR.json
│   │   │   ├── FEED_INFO.json
│   │   │   ├── FREQUENCIES.json
│   │   │   ├── ROUTES.json
│   │   │   ├── SHAPES.json
│   │   │   ├── STOPS.json
│   │   │   ├── STOP_TIMES.json
│   │   │   └── TRIPS.json
│   │   └── mapping.json.nt
│   └── sql
│       ├── 1
│       │   ├── AGENCY.csv
│       │   ├── CALENDAR.csv
│       │   ├── CALENDAR_DATES.csv
│       │   ├── FEED_INFO.csv
│       │   ├── FREQUENCIES.csv
│       │   ├── ROUTES.csv
│       │   ├── SHAPES.csv
│       │   ├── STOPS.csv
│       │   ├── STOP_TIMES.csv
│       │   └── TRIPS.csv
│       ├── 2
│       │   ├── AGENCY.csv
│       │   ├── CALENDAR.csv
│       │   ├── CALENDAR_DATES.csv
│       │   ├── FEED_INFO.csv
│       │   ├── FREQUENCIES.csv
│       │   ├── ROUTES.csv
│       │   ├── SHAPES.csv
│       │   ├── STOPS.csv
│       │   ├── STOP_TIMES.csv
│       │   └── TRIPS.csv
│       ├── 3
│       │   ├── AGENCY.csv
│       │   ├── CALENDAR.csv
│       │   ├── CALENDAR_DATES.csv
│       │   ├── FEED_INFO.csv
│       │   ├── FREQUENCIES.csv
│       │   ├── ROUTES.csv
│       │   ├── SHAPES.csv
│       │   ├── STOPS.csv
│       │   ├── STOP_TIMES.csv
│       │   └── TRIPS.csv
│       └── mapping.sql.nt
│       └── schema.sql
└── queries
    ├── q10.rq
    ├── q11.rq
    ├── q12.rq
    ├── q13.rq
    ├── q14.rq
    ├── q15.rq
    ├── q16.rq
    ├── q17.rq
    ├── q18.rq
    ├── q1.rq
    ├── q2.rq
    ├── q3.rq
    ├── q4.rq
    ├── q5.rq
    ├── q6.rq
    ├── q7.rq
    ├── q8.rq
    └── q9.rq

Resources

Additionally to the generator engine, that provides the data at desirable scales and distributions, together with corresponding mappings and queries, there are also common resources openly available to be modified or used by any practicioner or developer:

  • Folder mappings contains RML mappings for CSV, XML, JSON and RDB distributions of the input GTFS dataset, R2RML mapping for RDB and xR2RML mapping for MongoDB. It also includes CSVW annotations for the CSV distributions.
  • Folder queries includes 18 queries with different levels of complexity including a representative set of SPARQL 1.1. operators. Additionally, the folder contains 11 simple queries that will help to test the basic capabilities of virtual KG construction engines (i.e., to understand if the engine is able to translate correctly the SPARQL operators over different GTFS distributions before starting to test performance and scalability).

Utils

Our experiences testing (virtual) knowledge graph engines have revealed the difficulties for setting up an infrastructure where many variables and resources are involved: databases, raw data, mappings, queries, data paths, mapping paths, databases connections, etc. For that reason, and in order to facilitate the use of the benchmark to any developer or practitioner, we provide a set of utils such as docker-compose templates or evaluation bash scripts that, in our opinion, can reduce the time for preparing the testing set up.

Moreover, the utils folder contains a series of scripts for evaluating Façade-based data access engines (e.g. SPARQL Anything) more details.

Desirable Metrics:

We highly recommend that (virutalizers or materializers) KG construction engines tested with this benchmark provide (at least) the following metris:

  • Total execution time
  • Number of answers
  • Memory consumption
  • Initial delay
  • Dief@k (only for continuous/streaming behavior)*
  • Dief@t (only for continuous/streaming behavior)*

For virtual knowledge graphs systems, we also encourage developers and tester to provide:

  • Loading time
  • Mapping translation time (if applies)
  • Number of requests
  • Source selection time
  • Query generation (or disitribution) time
  • Query rewritting time
  • Query translation time
  • Query exececution time
  • Results aggregation time

*R Package available at: https://github.com/dachafra/dief (extension from https://github.com/maribelacosta/dief) and Python PyPi module available at https://pypi.org/project/diefpy/ (provided by SDM-TIB)

Data License

All the datasets generated by this benchmark have to follow the license of the Consorcio Regional de Transporte de Madrid: https://www.crtm.es/licencia-de-uso?lang=en

Contribute

We know that there are variables and dimensions that we did not take into account in the current version of the benchmark (e.g., transformation function defined in the mapping rules). If you are interested in collaborate with us in a new version of the benchmark, send us an email or open a new discussion!

Authors

  • David Chaves-Fraga - dchaves@fi.upm.es
  • Freddy Priyatna
  • Jhon Toledo
  • Daniel Doña
  • Edna Ruckhaus
  • Andrea Cimmino
  • Oscar Corcho

Ontology Engineering Group, October 2019 - Present