blob: 5aa173339676a36acfe134d9093c130a4ded1bdb (
plain)
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
|
# Introduction
The A&AI Model Loader Service is an application that facilitates the distribution and ingestion of
new service and resource models and VNF catalogs from the SDC to the A&AI.
## Features
The Model Loader:
* registers with the SDC to receive notification events
* polls the UEB/DMaap cluster for notification events
* downloads artifacts from SDC upon receipt of a distribution event
* pushes distribution components to A&AI
### VNF Catalog loading
The Model Loader supports two methods for supplying VNF Catalog data for loading into A&AI:
* Embedded TOSCA image and vendor data<br/>VNF Catalog data can be embedded within the TOSCA yaml files contained in the CSAR.
* VNF Catalog XML files<br/>VNF Catalog data in the form of XML files can be supplied in the CSAR under the path `Artifacts/Deployment/VNF_CATALOG`
**Note: Each CSAR should provide VNF Catalog information using only one of the above methods. If a CSAR contains both TOSCA and XML VNF Catalog information, a deploy failure will be logged and published to SDC, and no VNF Catalog data will be loaded into A&AI**
## Compiling Model Loader
Model Loader can be compiled by running `mvn clean install`
A Model Loader docker image can be created by running `docker build -t onap/model-loader target`
## Running Model Loader
Push the Docker image to your Docker repository. Pull this down to the host machine.
**Create the following directories on the host machine:**
./logs
./opt/app/model-loader/appconfig
./opt/app/model-loader/appconfig/auth
You will be mounting these as data volumes when you start the Docker container. For examples of the files required in these directories, see the aai/test/config repository (https://gerrit.onap.org/r/#/admin/projects/aai/test-config)
**Populate these directories as follows:**
#### Contents of /opt/app/model-loader/appconfig
The following file must be present in this directory on the host machine:
_model-loader.properties_
# Always false. TLS Auth currently not supported
ml.distribution.ACTIVE_SERVER_TLS_AUTH=false
# Address/port of the SDC
ml.distribution.ASDC_ADDRESS=<SDC-Hostname>:8443
# Kafka consumer group.
ml.distribution.CONSUMER_GROUP=aai-ml-group
# Kafka consumer ID
ml.distribution.CONSUMER_ID=aai-ml
# SDC Environment Name. This must match the environment name configured on the SDC
ml.distribution.ENVIRONMENT_NAME=<Environment Name>
# Currently not used
ml.distribution.KEYSTORE_PASSWORD=
# Currently not used
ml.distribution.KEYSTORE_FILE=
# Obfuscated password to connect to the SDC. To obtain this value, use the following Jetty library to
# obfuscate the cleartext password: http://www.eclipse.org/jetty/documentation/9.4.x/configuring-security-secure-passwords.html
ml.distribution.PASSWORD=OBF:<password>
# How often (in seconds) to poll the Kafka topic for new model events
ml.distribution.POLLING_INTERVAL=<integer>
# Timeout value (in seconds) when polling the Kafka topic for new model events
ml.distribution.POLLING_TIMEOUT=<integer>
# Username to use when connecting to the SDC
ml.distribution.USER=<username>
# Artifact type we want to download from the SDC (the values below will typically suffice)
ml.distribution.ARTIFACT_TYPES=MODEL_QUERY_SPEC,TOSCA_CSAR
# URL of the A&AI
ml.aai.BASE_URL=https://<AAI-Hostname>:8443
# A&AI endpoint to post models
ml.aai.MODEL_URL=/aai/v*/service-design-and-creation/models/model/
# A&AI endpoint to post named queries
ml.aai.NAMED_QUERY_URL=/aai/v*/service-design-and-creation/named-queries/named-query/
# A&AI endpoint to post vnf images
ml.aai.VNF_IMAGE_URL=/aai/v*/service-design-and-creation/vnf-images
# Name of certificate to use in connecting to the A&AI
ml.aai.KEYSTORE_FILE=aai-os-cert.p12
# Obfuscated keystore password to connect to the A&AI. This is only required if using 2-way SSL (not basic auth).
# To obtain this value, use the following Jetty library to obfuscate the cleartext password:
# http://www.eclipse.org/jetty/documentation/9.4.x/configuring-security-secure-passwords.html
ml.aai.KEYSTORE_PASSWORD=OBF:<password>
# Name of user to use when connecting to the A&AI. This is only required if using basic auth (not 2-way SSL).
ml.aai.AUTH_USER=<username>
# Obfuscated password to connect to the A&AI. This is only required if using basic auth (not 2-way SSL).
# To obtain this value, use the following Jetty library to obfuscate the cleartext password:
# http://www.eclipse.org/jetty/documentation/9.4.x/configuring-security-secure-passwords.html
ml.aai.AUTH_PASSWORD=OBF:<password>
##### Contents of the /opt/app/model-loader/app-config/auth Directory
The following files must be present in this directory on the host machine:
_aai-os-cert.p12_
The certificate used to connected to the A&AI
**Start the service:**
You can now start the Docker container for the _Model Loader Service_, e.g:
docker run -d \
-e CONFIG_HOME=/opt/app/model-loader/config/ \
-v /logs:/logs \
-v /opt/app/model-loader/appconfig:/opt/app/model-loader/config \
--name model-loader \
{{your docker repo}}/model-loader
where
{{your docker repo}}
is the Docker repository you have published your image to.
|