Update README.md

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Stephan Porada 2019-03-02 14:54:35 +01:00
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@ -43,7 +43,7 @@ The actual data can be found here: https://gitlab.ub.uni-bielefeld.de/sporada/bu
13. Restart the app with `docker-compose up`
13. First we have to import the speaker data. This will be done by executing following command `docker-compose run web python manage.py import_speakers /usr/src/app/input_data/MdB_data/MdB_Stammdaten.xml` in the second terminal.
14. After that we can import all the protocols and thus all speeches for every person. The command to do that is `docker-compose run web python manage.py import_protocols /usr/src/app/input_data/outputs/markup/full_periods` (Importing all protocols takes up to 2 days. For testing purposes *dev\_data/beautiful\_xml* or *test\_data/beautiful\_xml* can be used.)
15. Now the n-grams can be imported by using `docker-compose run web python manage.py import_ngrams_bulk 1 /usr/src/app/input_data/outputs/nlp/full_periods/n-grams/lm_ns_year/1_grams lm_ns_year`. This command imports the alphabetically splitted n-grams into their according tables. First parameter of this command is *1*. This tells the function to import the n-grams from the input path as 1-grams. Therefore the second parameter is the inputpath */usr/src/app/input_data/outputs/nlp/full_periods/n-grams/lm_ns_year/1_grams* where the 1-grams are located. The last part of the input path clearly identifies the n-grams as 1-grams. Finally the third parameter identifies what kind of n-grams are being imported. In this case the parameter is set to *lm_ns_year* which means the ngrams are based on lemmatized text without stopwords counted by year. An example to import 2-grams would look like this `docker-compose run web python manage.py import_ngrams_bulk 2 /usr/src/app/input_data/outputs/nlp/full_periods/n-grams/lm_ns_year/2_grams lm_ns_year`. To import 3-grams from a different corpus the command for example should look like this: `docker-compose run web python manage.py import_ngrams_bulk 3 /usr/src/app/input_data/outputs/nlp/full_periods/n-grams/tk_ws_speaker_\(1-3\)/3_grams tk_ws_speaker`. Be careful when importing the n-grams. **If the parameters are set wrong, the n-grams will be imorted into the wrong tables and thus leading to incorect findings using the Ngram Viewer.** If you did something wrong you can reset the database with `docker-compose run web python manage.py flush` and start the data import again. It is possible to import different n-gram sets at the same time using multiple commands in multiple terminals. Just keep an eye out on the CPU and RAM usage. There is also an optional fourth parameter to set the batch size of one insert. The default is set to read 1 million rows from the csv and insert them at once into the database. The parameter `-bs 10000000` would set it to 10 million. Increasing that value also increases the RAM usage so be careful with that.
15. Now the n-grams can be imported by using `docker-compose run web python manage.py import_ngrams_bulk 1 /usr/src/app/input_data/outputs/nlp/full_periods/n-grams/lm_ns_year/1_grams lm_ns_year`. This command imports the alphabetically splitted n-grams into their according tables. First parameter of this command is *1*. This tells the function to import the n-grams from the input path as 1-grams. Therefore the second parameter is the inputpath */usr/src/app/input_data/outputs/nlp/full_periods/n-grams/lm_ns_year/1_grams* where the 1-grams are located. The last part of the input path clearly identifies the n-grams as 1-grams. Finally the third parameter identifies what kind of n-grams are being imported. In this case the parameter is set to *lm_ns_year* which means the ngrams are based on lemmatized text without stopwords counted by year. An example to import 2-grams would look like this `docker-compose run web python manage.py import_ngrams_bulk 2 /usr/src/app/input_data/outputs/nlp/full_periods/n-grams/lm_ns_year/2_grams lm_ns_year`. To import 3-grams from a different corpus the command for example should look like this: `docker-compose run web python manage.py import_ngrams_bulk 3 /usr/src/app/input_data/outputs/nlp/full_periods/n-grams/tk_ws_speaker_\(1-3\)/3_grams tk_ws_speaker`. Be careful when importing the n-grams. **If the parameters are set wrong, the n-grams will be imported into the wrong tables and thus leading to incorrect findings using the Ngram Viewer.** If you did something wrong you can reset the database with `docker-compose run web python manage.py flush` and start the data import again. It is possible to import different n-gram sets at the same time using multiple commands in multiple terminals. Just keep an eye out on the CPU and RAM usage. There is also an optional fourth parameter to set the batch size of one insert. The default is set to read 1 million rows from the csv and insert them at once into the database. The parameter `-bs 10000000` would set it to 10 million. Increasing that value also increases the RAM usage so be careful with that.
16. Repeate the step above for every kind of n-gram data you want to import. Importing 1-grams will only take some minutes while importing 5-grams will take several hours. (For testing purposes the n-grams from *dev\_data* can be used.)
17. After importing the n-grams the web app is all set up.
18. The app can be shut down with `docker-compose down`. All imported data is saved persistently in the database volume *postgres_data*.