Name | Last Update | Last Commit d0a2c5f6a9d – Upgrade to PyYAML 5.4.1 | history |
---|---|---|---|
CEPTD | |||
MLTD | |||
OD | |||
api | |||
elasticsearch | |||
grafana | |||
webserver | |||
.gitignore | |||
README.md | |||
anchore.groovy | |||
delete.sh | |||
delete_hetzner.sh | |||
deploy.sh | |||
deploy_hetzner.sh | |||
docker-compose-hetzner.yml | |||
docker-compose-jfrog.yml | |||
docker-compose.yml | |||
hetzner_delete.groovy | |||
hetzner_deploy.groovy | |||
kea_testing.groovy | |||
keycloak_test.groovy | |||
show_routes.sh |
simple container just to install laravel dependencies
After cloning the project, execute these commands only one time
cd api
cp .env-example .env
docker run --rm -v $(pwd):/app composer:2.0.7 install
cd ..
./create_volumes.sh
docker-compose up
docker-compose exec api php artisan migrate:fresh --seed
This first docker command just creates an empty container to install the required API dependencies.
The create_volumes script, creates the necessary folder structure and extracts the baseline elasticsearch index.
Finally, the last docker command creates and populates the database.
On Keycloak authentication
Keycloak authentication is enabled by setting the AUTH_ENABLED variable
in the .env file to "true" (no quotes needed). Other than that, you will
need to update the KEYCLOAK_REALM_PUBLIC_KEY value in your .env file
too.
MLTD proof of concept experiment
MLTD comes with a model already trained.
The model is trained on the data which where available in TimescaleDB (tables XLSIEM, ADT).
The training data are provided in the csv files "xlsiem.csv" "adt.csv" for results reproduction (directory MLTD/csv_files).
To train a model execute the following POST request with the provided body:
http://localhost:5000/api/v1.0/mltd/training
{
"description":"CUREX data",
"timedb_host":"<the timescaleDB host>",
"timedb_port":5432,
"timedb_username":"<the timescaleDB username>",
"timedb_password":"<the timescaleDB password>",
"timedb_ssl":"False",
"timedb_dbname":"kea",
"asset_id":"server",
"timedb_adt_table":"adt",
"timedb_xlsiem_table":"xlsiem",
"timedb_od_table":"od",
"timedb_measurement":"artificial_events",
"mp_thres_X":10,
"mp_thres_Y":2,
"mp_thres_Z":10,
"mp_pat_length":6,
"rre":"True",
"rfe":"True",
"kofe":"False",
"mil_over":"True",
"fs":"False",
"rf_s":0.06,
"rf_midpoint":"2H",
"hours_before":"4H",
"time_segments":"20T",
"dates":[]
}
In order to obtain the top-k important features, use the following request:
http://127.0.0.1:5000/api/v1.0/mltd/threat-identification/1/ #where 1 is the trained model id
OD pcap files
Incide the OD directory we provide the pcap files used for load testing.
To upload a pcap file for analysis use the following steps.
First start an OD task with the following POST request and body:
http://localhost:9091/api/v1/od
{
"timeDb_database": "kea",
"timeDb_host": "<the timescaleDB host>",
"timeDb_password": "<the timescaleDB password>",
"timeDb_port": "5432",
"timeDb_ssl": "true",
"timeDb_table": "od",
"timeDb_username": "postgres",
"k": "20",
"measurement": "packets-loss",
"mqtt_host": "localhost",
"mqtt_password": "",
"mqtt_port": "1883",
"mqtt_topic": "auth/od",
"mqtt_usermane": "",
"outlier_life": "0",
"r": "0.1",
"slide": "10",
"w": "60"
}
Get the returned OD task id and execute the following POST request to upload a pcap file:
http://127.0.0.1:9091/api/v1/od/analyse/<OD task id>
Header: Content-Type: application/json
Body: file=big.pcap