User Guide - Structured File Lens v1.3
Intro
This is the full User Guide for the Structured File Lens, it contains an in-depth set of instructions to fully set up, configure, and run the Lens so you can start ingesting data as part of an end-to-end system. For a guide to get the Lens up and running in the quickest and simplest possible way, see the Quick Start Guide. Once deployed, you can utilise any of our ready-made sample input, mapping, and expected output files to test your Lens. For a list of what has changed since the last release, visit the User Release Notes.
Table of Contents
- 1 Intro
- 2 Table of Contents
- 3 Creating the Mapping File
- 4 Configuring the Lens
- 5 Running the Lens
- 5.1 Local Docker Image
- 5.2 Docker on AWS
- 6 Ingesting Data
- 6.1 Endpoint
- 6.2 Kafka
- 6.3 S3 Lambda
- 6.4 CSV Splitting
- 6.5 XML Parsing
- 7 Output Data
- 7.1 Endpoint
- 7.2 Kafka
- 7.2.1 Dead Letter Queue
- 7.3 Data type
- 8 Provenance Data
- 9 REST API Endpoints
Creating the Mapping File
The first step in configuring the Structured File Lens is to create a mapping file. The mapping file is what creates the links between your source data and your target model (ontology). This can be created using our online Data Lens Mapping Tool utilising an intuitive web-based UI. Log in here to get started, and select the option for Structured File Lens. The Structured File Lens is capable of ingesting XML, CSV, and JSON files, creation of mapping files differ slightly between file types so ensure to select the correct options for your use case. Alternatively, the Mapping Tool can be deployed to your own infrastructure, this enables additional functionality such as the ability to update mapping files on a running Lens. To do this, follow these instructions.
However, if you wish you create your RML mapping files manually, there is a detailed step by step guide on creating one from scratch.
Configuring the Lens
All Lenses supplied by Data Lens are configurable through the use of Environment Variables. How to declare these environment variables will differ slightly depending on how you choose to run the Lens, so please see Running the Lens for more info. For a breakdown of every configuration option in the Structured File Lens, see the full list here.
Mandatory Configuration
For the Lens to operate the following configuration options are required.
License -
LICENSE
This is the license key required to operate the lens, request your new unique license key here.
Mapping Directory URL -
MAPPINGS_DIR_URL
This is the directory where your mapping file(s) is located. As with all directories, this can be either local or on a remote S3 bucket. Mapping files for the Structured File Lens can be created using our Mapping Config Web App and can be pushed directly to a running Lens.
Output Directory URL -
OUTPUT_DIR_URL
This is the directory where all generated RDF files are saved to. This also supports local and remote URLs.
Provenance Output Directory URL -
PROV_OUTPUT_DIR_URL
Out of the box, the Structured File Lens supports Provenance and it is generated by default. Once generated, the Provenance is saved to separate output files to the transformed source data. This option specifies the directory where provenance RDF files are saved to, which also supports local and remote URLs.
If you do not wish to generate Provenance, you can turn it off by setting the RECORD_PROVO variable to false. In this case, the PROV_OUTPUT_DIR_URL option is no longer required. For more information on Provenance configuration, see below.
AWS Configuration
If you wish to use cloud services such as Amazon Web Services you need to specify an AWS Access Key and Secret Key, and AWS Region, through AWS_ACCESS_KEY
, AWS_SECRET_KEY
, and S3_REGION
respectively. By providing your AWS credentials, this will give you permission for accessing, downloading, and uploading remote files to S3 Buckets. The S3 Region option specifies the region of where in AWS your files and services reside. Please note that all services must be in the same region, including if you choose to run the Lens in an EC2 instance or with the use of Lambdas.
Kafka Configuration
One of the many ways to interface with the Lens is through the use of Apache Kafka. With the Structured File Lens, a Kafka Message Queue can be used for managing both the input and the output of data to and from the Lens. To properly setup your Kafka Cluster, see the instructions here. Once complete, use the following Kafka configuration variables to connect the cluster with your Lens. If you do not wish to use Kafka, please set the variable LENS_RUN_STANDALONE
to true.
The Kafka Broker is what tells the Lens where to look for your Kafka Cluster, so set this property as follows: <kafka-ip>:<kafka-port>
. The recommended port is 9092
.
All other Kafka configuration variables can be found here, all of which have default values that can be overridden.
Provenance Configuration
As previously mentioned, Provenance is generated by default, this can be turned off by setting the RECORD_PROVO
variable to false, otherwise PROV_OUTPUT_DIR_URL
is required. If you wish to store this Provenance remotely in an S3 Bucket, then you are required to specify your region, access key, and secret key, through PROV_S3_REGION
, PROV_AWS_ACCESS_KEY
, and PROV_AWS_SECRET_KEY
respectively.
If you wish to manage the Provenance output files through Kafka, then you can choose to use the same brokers and topic names as with the previously specified data files, or an entirely different cluster. All Provenance configuration can be found here.
Logging Configuration
Logging in the Structured File Lens works the same way as with all other Lens, and like with most functionality is configurable through the use of environment variables; this list override-able options and their descriptions can be found here. When running the Lens locally from the command line using the instructions below, the Lens will automatically log to your terminal instance. In addition to this, the archives of logs will be saved within the docker container at /var/log/datalens/archive/current/
and /var/log/datalens/json/archive/
for text and JSON logs respectively, where the current logs can be found at /var/log/datalens/text/current/
and /var/log/datalens/json/current/
. By default, a maximum of 7 log files will be archived for each file type, however this can be overridden. If running a Lens on cloud in an AWS environment, then connect to your instance via SSH or PuTTY, and the previously outlined logging locations apply.
Optional Configuration
There is also a further selection of optional configurations for given situations, see here for the full list.
Directories in Lenses
The Lenses are designed to support files and directories from an array of sources. This includes both local URLs and remote URLs including cloud-based technologies such as AWS S3. The location should be expressed as a URL string (Ref. RFC-3986).
To use a local URL for directories and files, both the format of
file:///var/local/data-lens-output/
and/var/local/data-lens-output/
are supported.To use a remote http(s) URL for files,
https://example.com/input-file.csv
is supported.To use a remote AWS S3 URL for directories and files,
s3://example/folder/
is supported where the format iss3://<bucket-name>/<directory>/<file-name>
. If you are using an S3 bucket for any directory, you must specify an AWS access key and secret key.
Accessing the configuration of a running Lens
Once a Lens has started and is operational, you can request to view the current config by calling one of the Lens' built-in APIs, this is explained in more detail below. Please note, that in order to change any config variable on a running Lens, it must be shut down and restarted.
Running the Lens
All of our Lenses are designed and built to be versatile, allowing them to be set up and ran on a number of environments, including in cloud or on-premise. This is achieved through the use of Docker Containers.
Local Docker Image
To run the Lens locally, first please ensure you have Docker installed. Then simply by running a command with the following structure, docker will start the container and run the Lens from your downloaded image.
For UNIX based machines (macOS and Linux):
docker run \
--env LICENSE=$LICENSE \
--env MAPPINGS_DIR_URL=/var/local/mapping-files/ \
--env OUTPUT_DIR_URL=/var/local/output/ \
--env LENS_RUN_STANDALONE=true \
--env PROV_OUTPUT_DIR_URL=/var/local/prov-output/ \
-p 8080:8080 \
-v /var/local/:/var/local/ \
lens-static:latest
For Windows
docker run ^
--env LICENSE=%LICENSE% ^
--env MAPPINGS_DIR_URL="/data/mapping-files/" ^
--env OUTPUT_DIR_URL="/data/output/" ^
--env LENS_RUN_STANDALONE=true ^
--env PROV_OUTPUT_DIR_URL="/data/prov-output/" ^
-p 8080:8080 ^
-v /data/:/data/ ^
lens-static:latest
The above examples demonstrate how to override configuration options using environment variables in your Lens. Line 2 shows the use of passing in an environment variable saved to the machine, whereas lines 3-6 simply show a string value being passed to it. Given the Lens is ran on port 8080, line 7 exposes and binds that port of the host machine so that the APIs can be triggered. The -v
flag seen on line 8 mounts the working directory into the container; when the host directory of a bind-mounted volume doesn’t exist, Docker will automatically create this directory on the host for you. And finally, line 9 is the name and version of the Docker image you wish to run.
For more information of running Docker Images, see the official Docs.
Docker on AWS
The deployment approach we recommend at Data Lens is to use Amazon Web Services, this is to both store source and RDF data, as well as to host and run your Lenses and Writer.
The aim is to deploy the Lens and other services using AWS by setting up the following architecture:
An Amazon Web Services Elastic Container Service (ECS) cluster, hosting a single EC2 instance. Running the following containers:
Apache Kafka
Data Lens: Structured File Lens
An S3 bucket
For more information on the Architecture and Deployment of an Enterprise System, see our guide.
Ingesting Data
The Structured File Lens supports a number of ways to ingest your data files. While all three supported file types, CSV, XML, and JSON, are ingested in the same way, there may be some additional parameters you wish to set for CSV and XML each as detailed below.
Endpoint
First, the easiest way to ingest a file into the Structured File Lens is to use the built-in APIs. Using the process
GET endpoint, you can specify the URL of a file to ingest in the same way as previously outlined, and in return, you will be provided with the URL of the generated RDF data file.
The structure and parameters for the GET request is as follows: http://<lens-ip>:<lens-port>/process?inputFileURL=<input-file-url>
, for example, http://127.0.0.1:8080/process?inputFileURL=file:///var/local/input-data.csv
, where the response is in the form of a JSON.
Kafka
The second, and the more versatile and scalable ingestion method, is to use a message queue such as Apache Kafka. To set up a Kafka Cluster, follow the instructions here, but in short, to ingest files into the Structured File Lens you require a Producer. The topic name for which this Producer subscribes to must be the same name that you specified in the KAFKA_TOPIC_NAME_SOURCE
config option (defaults to “source_urls”). Once set up, each message sent from the Producer must consist solely of URL of the file, for example, > s3://examplebucket/folder/input-data.csv
.
S3 Lambda
If you wish to use Kafka, and you are also using S3 to store your source data, we have developed an AWS Lambda to aid with the ingestion of data into your Structured File Lens. The Lambda is designed to monitor a specific Bucket in S3, and when a file arrives or is modified in a specific directory, a message is written to a specified Kafka Topic containing the URL of the new/modified file. Subsequently, this will then be ingested by the Lens. For instructions on how to set up the Lambda within your AWS environment, click here.
CSV Splitting
While ingesting CSV files are the same as with XML and JSON, there are a couple of points to note. A very large CSV file with a large number of rows will be split into chunks and processed separately, by default every 100,000 lines. This allows for better performance and continuous output of RDF files. When processed using Kafka, messages are continuously pushed to the Success Queue, however when using the Process endpoint, the response will only be returned once the entire file transformation has been completed. This file chunking size can be overridden with the configuration option MAX_CSV_ROWS
, or conversely turned off by setting this to 0 (not recommended).
In addition, CSV files are validated by default before being processed, and any erroneous lines will be removed and not transformed. This has a negligible effect on the performance, however can be turn off by setting VALIDATE_CSV
to false.
XML Parsing
Ingesting XML files are also the same process as with CSV and JSON files, however there are currently two different parsing methodologies in which this can be done. This will automatically be determined for you based on your mappings created in the Mapping Config Web App, whereby a decision between speed and the use of complex XPath queries is made.
Output Data
The data files created and output from the Lens are the same regardless on how it was triggered or ingested, however the way in which this information is communicated back to you is slightly different for each method.
Endpoint
Once an input file has successfully been processed after being ingested via the Process endpoint, the response returned from the Lens is in the form of a JSON. Within the JSON response is the outputFileLocations
element; this element contains a list of all the URLs of generated RDF files. Usually this would be a single file, however multiple files will be generated and listed when ingesting large CSV files.
Sample output:
{
"input": "file:///var/local/input/input-data.csv",
"failedIterations": 0,
"successfulIterations": 1,
"outputFileLocations": [
"/var/local/output/Structured-File-Lens-44682bd6-3fbc-429b-988d-40dda8892328.nq"
]
}
Kafka
If you have a Kafka Cluster set up and running, then the successfully generated RDF file URL will be pushed to you Kafka Queue. It will be pushed to the Topic specified in the KAFKA_TOPIC_NAME_SUCCESS
config option, which defaults to “success_queue”. One of the many advantages of using this approach is that now this transformed data can be ingested using our Lens Writer which will publish the RDF to a Semantic Knowledge Graph (or selection of Property Graphs) of your choice!
Dead Letter Queue
If something goes wrong during the operation of the Lens, the system will publish a message to the Dead Letter Queue Kafka topic (defaults to “dead_letter_queue”) explaining what went wrong along with meta-data about that ingestion, allowing for the problem to be diagnosed and later re-ingested. If enabled, the provenance generated for the current ingestion will also be included as JSON-LD. This message will be in the form of a JSON with the following structure:
Data type
The Structured File Lens supports data transformation into two different types: NQuads and JSON-LD. By default, the resulting RDF is represented in the form of NQuads, however by overriding the configuration option OUTPUT_FILE_FORMAT
you can change it simply by setting this as json-ld
.
Provenance Data
Within the Structured File Lens, time-series data is supported as standard, every time a Lens ingests some data we add provenance information. This means that you have a full record of data over time, allowing you to see what the state if the data was at any moment. The model we use to record Provenance information is the w3c standard PROV-O model.
Provenance files are uploaded to the location specified in the PROV_OUTPUT_DIR_URL
, then this file location is pushed to the Kafka Topic declared in PROV_KAFKA_TOPIC_NAME_SUCCESS
. The provenance activities in the Structured File Lens are main-execution
, kafkaActivity
, and lens-iteration
.
For more information on how the provenance is laid out, as well as how to query it from your Triple Store, see the Provenance Guide.
REST API Endpoints
In addition to the Process Endpoint designed for ingesting data into the Lens, there is a selection of built-in exposed endpoints for you to call.
API | HTTP Request | URL Template | Description |
---|---|---|---|
Process | GET |
| Tells the Lens to ingest the file located at the specified URL location |
Config | GET |
| Displays all Lens configuration as JSON |
GET |
| Displays all Lens configuration specified in the comma-separated list | |
License | GET |
| Displays license information |
RML | GET |
| Displays the current RML mapping file, this is displayed as Turtle RDF serialisation |
PUT |
| Deploys a new mapping file into Lens specified in the request body |
Config
The config endpoint is a GET request that allows you to view the configuration settings of a running lens. By sending GET http://<lens-ip>:<lens-port>/config
(for example http://127.0.0.1:8080/config
), you will receive the entire configuration represented as a JSON, as seen in this small snippet below. All confidential values (such as AWS credentials) are replaced with the fixed string “REDACTED“.
Alternatively, you can specify exactly what config options you wish to return by providing a comma-separated list of variables under the paths
parameter. For example, the request of GET http://<lens-ip>:<lens-port>/config?paths=lens.config.outputDirUrl,logging.loggers
would return the following.
License
The license endpoint is a GET request that allows you to view information about your license key that is in use on a running lens. By sending GET http://<lens-ip>:<lens-port>/license
(for example: http://127.0.0.1:8080/license
), you will receive a JSON response containing the following values.
Process
As previously outlined in the Ingesting Data via Endpoint section, using the process endpoint is one way of triggering the Lens to ingest your source data. When an execution of the Lens fails after being triggered in this way, the response will be a status 400 Bad Request
as follows.
RML
The RML endpoint is all about the mapping file that you created using the Mapping Config Web App. It consists of a GET and a PUT endpoint, allowing you to get the current master mapping file currently in use on the Lens, and well as replacing the master mapping file with a new one.
By sending GET http://<lens-ip>:<lens-port>/rml
you will receive a response containing the contents of the mapping file written in RDF/Turtle. And by sending PUT http://<lens-ip>:<lens-port>/rml
with a turtle mapping file in the body of the request, it will upload it to the file location specified in the MAPPINGS_DIR_URL
and MASTER_MAPPING_FILE
options in the configuration and replace the existing file. The mapping file should be in RDF/Turtle format and the declared HTTP Content-Type
should be text/turtle
. The successful upload is then indicated by an empty response with HTTP status OK
(Ref. RFC-7231) and will be functional immediately.