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Architecture
4CAT consists of a number of separate components that together make it work. In the interest of maintainability, this document describes the high- to mid-level components of the 4CAT software.
This is the 'heart' of 4CAT, which collects data, processes it, and saves it for later retrieval.
The manager (dispatcher, scheduler) maintains an overview of worker types
that are available, as well as a queue that it takes jobs from to hand
over to the workers for execution. This is the 'main loop' of the backend;
until a SIGTERM
is received by the manager, it will infinitely loop, checking
the queue for jobs to hand to workers.
The queue is, practically speaking, a database table in which jobs are stored. It also keeps track of the status of jobs; whether they have been claimed for execution, how often execution has been attempted, and the time at which they have been interacted with.
A job is a set of data that describes a 'unit of work'; some sort of task that 4CAT should execute, such as scraping a site, running an analysis, or starting an API server. Jobs can be claimed by a worker, which marks them as such in the queue. Jobs can only be claimed by one worker at a time. The data of a job in practice corresponds to the parameters a worker of the same type as the job is run with.
After a job has been claimed, it can be released, which basically resets it, making it available for claiming again, and increasing the attempt counter of the job by one. It can also be finished, which removes it from the job queue altogether, leaving no trace.
There is one exception to this. Jobs can have an 'interval' set; if this is the case, they are not removed from the queue when finished, but the time at which they were last claimed is marked, and they will only be considered eligible for claiming again when the interval runs out, i.e. when the current time is greater than the time it was last claimed, plus the interval.
The worker takes a job's data and runs some kind of code based on those parameters. What it does with it is undefined; it also has a connection to the database, so it may query the database and output data, or transform an existing data file into another, or loop infinitely and listen for incoming connections on a given port. The manager retains an overview of all running workers and will tell them to stop executing when it itself is told to shut down.
Workers have a type, an identifier that corresponds to a job's type. This
determines which jobs a given worker will be assigned. Each worker type has
an upper limit to the amount of instances of it that may run simultaneously.
Workers extend a base class, configure themselves via class attributes, and
contain at least one method work()
that is called when 4CAT is read to
execute a job.
A data set is a set of metadata for a data set that has been built or generated by 4CAT. Data sets have a unique identifier based on their parameters, and correspond to a given file on the disk that contains the data. When a data set is first instantiated, that file does not exist yet. A worker, through a job, will take the metadata to construct the file with, and then save it to disk.
Data sets differ from jobs in that they are persistent: while a job's data is deleted when finished, a data set remains on file, with all its metadata, so that next to the raw data set there is a record of the parameters through which it was constructed.
Data sets are constructed when someone uses the 4CAT web interface to queue a search. In most cases, simultaneously a job will be queued to run the query, containing the unique query key as metadata through which to fetch the query parameters. In this way, one of their purposes is a 'bridge' between the 4CAT back-end and front-end. Data sets are also created when a processor is run.
A data source is a set of parameters and scrapers to collect and query data with. Usually, a data source will correspond to a given forum or site, e.g. 4chan or 8chan. It will contain a number of scrapers - which are workers - that collect data from the source, and store it in the database.
The data source also contains a database definition which should be run prior to activating the data source, so its data can be stored properly, as well as a configuration file for the Sphinx search daemon that is used by 4CAT to run data sets.
Finally, the data source contains a file defining methods through which the data may be searched for a given search query. It also defines a web form that will be used in the front-end to show users how the data source may be subsetted. Optionally, an accompanying JavaScript file is provided for more advanced configuration of queries.
Processors are a special type of worker that take an existing data set and process it to produce a new one. As such, they always require a data set to do their work. That data set then contains a reference to an earlier data set, (the 'parent') which will be used as input.
Processors are classes extending a base class that set a number of class
attributes for configuration, and contain at least one method process()
that
is called when 4CAT is ready to run the processor. Usually, the method will
read the result file of an earlier data set, then process that data somehow,
writing the result to the result file of its own data set. Like other
workers, they have a type and can set how many instances may be run
simultaneously.
4CAT serves a web interface via the Python-based Flask framework that can be used to view, manipulate and download the data it scrapes and processes.
4CAT contains an API, which configures a number of endpoints that can be called
with various parameters to - in a nutshell - make the backend do things and
retrieve the results of those things. 4CAT automatically generates an OpenAPI-
compatible specification of its API, which may be called from the endpoint
/api/openapi.json
.
4CAT also serves a web tool, containing a query window, a result overview and an interface to download results through and run further analyses with. This requires little further configuration, and is mostly straightforward in usage. It is a Flask app, so ideally one would run it via a WSGI-compatible server such as Apache.
Parts of 4CAT are by default not accessible without logging in. You can set it to allow access from particular hostnames (e.g. your university's VPN) without login; people accessing 4CAT from this hostname are identified as a general 'autologin' user.
Some API endpoints require authentication with an access token. Tokens may be generated by any user and by default are valid for one year after generation. The precise method of authentication is described in the OpenAPI specification.
Furthermore, many API endpoints are rate-limited. This rate limit may be ignored by people accessing the API from a whitelisted hostname; like the 'autologin', this can be used to lift restrictions from anyone using your university's VPN, for example.
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