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A package to export data to databases resiliently.

Project description

Resilient Exporters

PyPI GitHub Build Status License Python Version

Resilient-exporters abstracts away common tasks when sending or saving data from an application. It has been designed to send data to different targets and manage common issues for applications running on edge devices such as a Raspberry Pi or Nvidia Jetson Nano:

  • Internet connection interruptions;
  • Highly variable frequency of data transfers;

If a connection is lost, it automatically saves the data and retries later when the connection is recovered and when a new request to send data is made. To avoid consuming too much memory or disk space, it has a specific configurable flush.

If an application wants to send more data than is momentally manageable, it multiplies the transmission jobs (using multithreading, if available) and saves the data (queuing), to avoid back-pressure and reducing the application's speed.

Of course, it can break if:

  • the data to transmit is almost always more important than the available bandwidth;
  • the interruptions are too long compared to the available memory or disk space;

We have designed it particularly for a Raspberry Pi 3B+ device running a Linux distribution.

Installation

To use the package:

pip install resilient-exporters

With all the additional packages needed for the different exporters:

pip install resilient-exporters[all]

Dev installation

If you'd like to have a editable, up-to-date version of the files, do:

git clone https://github.com/arbfay/resilient-exporters.git && \
pip install -e resilient-exporters/ && \
pip install -r resilient-exporters/dev_requirements.txt

Usage

Currently supported:

  • Text file
  • MongoDB
  • ElasticSearch
  • PostgreSQL

Some features for some exporters might be missing. Raise an issue on Github to ask for an implementation and help improve the package.

Store in a file

from resilient_exporters import FileExporter

exporter = FileExporter(target_file="mydata.txt",
                        max_lines=100)

mydata = "line of text"
exporter.send(mydata)

To MongoDB

from resilient_exporters import MongoDBExporter

exporter = MongoDBExporter(target_ip="127.0.0.1",
                           target_port=27017,
                           username="username",
                           password="password",
                           default_db="my_db",
                           default_collection="my_collection")

mydata = {"field1": "value1"}
exporter.send(mydata)

To ElasticSearch

from resilient_exporters import ElasticSearchExporter

exporter = ElasticSearchExporter(target_ip="127.0.0.1",
                                 default_index="my_index",
                                 use_ssl=True,
                                 ssl_certfile="/path/to/file",
                                 sniff_on_start=True)

mydata = {"field1": "value1"}
exporter.send(mydata)

To PostgreSQL

from resilient_exporters.exporters import PostgreSQLExporter

exporter = PostgreSQLExporter(target_host="myserver.domain.net",
                              username="username",
                              password="my-password",
                              database="profiles",
                              default_table="scientists")

data = {"name": "Richard Feynman",
        "age": 69}
exporter.send(data)

Multiple distant targets - Pools

Edge devices are more and more powerful, and are capable of managing multiple distant targets without much overhead thanks to resilient-exporters. If you're taking advantage of this, you might need sometimes to replicate data across different databases of the same type (e.g. NoSQL, document-based databases). However, if you use multiple exporters, all the features will be duplicated and can generate inefficiencies (multiple temporary files, multiple queues, etc.).

Instead, use resilient_exporters.ExporterPool which pools exporters and other pools to expose only one send method for all the exporters and to ensure a more efficient management of the resources. To use it:

from resilient_exporters import ExporterPool
from resilient_exporters import MongoDBExporter, ElasticSearchExporter

exporters = [
  MongoDBExporter(target_ip="127.0.1.10",
                  target_port=1234,
                  default_db="my_db",
                  default_collection="my_collection"),
  ElasticSearchExporter(cloud_id="cloud id",
                        api_key="api key",
                        default_index="my_index")]

pool = ExporterPool(exporters, use_memory=False)

mydata = {"metric": 2}
pool.send(mydata)

Transform data before sending

To transform data before it gets sent by an exporter or a pool, one can add a function that takes the input data and returns the transformed data:

from resilient_exporters import MongoDBExporter

def transform(data):
  data["metric"] = (data["metric"] / 2) * .5
  return data

exporter = MongoDBExporter(target_ip="127.0.1.10",
                           target_port=1234,
                           default_db="my_db",
                           default_collection="my_collection",
                           transform=transform)

mydata = {"metric": 2}
exporter.send(mydata)

NOTE: it can also be passed to a pool with the same key argument tranform at initialisation. When doing so, transform functions of individual exporters will be superseded by the pool's transform function.

Additional information

The resilient_exporters.Exporter is at the core of the package. All the other exporters inherits from it.

Exporter manages the export of data to a target, however each target need specific logic to send data. All these subclasses, such as FileExporter or MongoDBExporter, implements the Exporter.send method and manages the needed options. Some exporters might need additional packages to be usable:

  • pymongo for MongoDBExporter
  • elasticsearch for ElasticSearchExporter
  • psycopg2 for PostgreSQLExporter

Documentation

More documentation available here.

Suggestions and contribution

Please open a GitHub issue for bugs or feature requests. Contact the contributors for participating.

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