documentation

pull/1/head
Steve Nyemba 3 years ago
parent b239a5149f
commit 69e0b4d946

@ -1,14 +1,31 @@
# Introduction
This project implements an abstraction of objects that can have access to a variety of data stores, implementing read/write with a simple interface against specific various data-sources. The supported data sources implement functionalities against :
This project implements an abstraction of objects that can have access to a variety of data stores, implementing read/write with a simple and expressive interface. This abstraction works with **NoSQL** and **SQL** data stores and leverages **pandas**
- Rabbitmq-server
- Couchdb-server
- Mongodb-server
- Http Session : {csv,tab,pipe,sql}
- Disk{Reader|Writer} : csv, tab, pipe, sql on disk
The supported data store providers :
| Provider | Underlying Drivers | Description |
| ---- | ---| ---- |
| sqlite| Native SQLite|SQLite3|
| postgresql| psycopg2 | PostgreSQL
| redshift| psycopg2 | Amazon Redshift
| netezza| nzpsql | IBM Neteeza
| Files: CSV, TSV| pandas| pandas data-frame
| Couchdb| cloudant | Couchbase/Couchdb
| mongodb| pymongo | Mongodb
| mysql| mysql| Mysql
| bigquery| google-bigquery| Google BigQuery
| mariadb| mysql| Mariadb
| rabbitmq|pika| RabbitMQ Publish/Subscribe
# Why Use Data-Transport ?
Mostly data scientists that don't really care about the underlying database and would like to manipulate data transparently.
1. Familiarity with **pandas data-frames**
2. Connectivity **drivers** are included
3. Useful for ETL
Such an interface is used to facilitate data transport in and out of a store for whatever an application may need (log, session management, ...)
### Installation
@ -21,23 +38,26 @@ Binaries and eggs will be provided later on
### Usage
The basic usage revolves around a factory class (to be a singleton)
In your code, perform the
import transport
from transport import factory
#
# importing a mongo reader
args = {"host":"<host>:<port>","dbname":"<database>","doc":"<doc_id>",["username":"<username>","password":"<password>"]}
mreader = factory.instance(type='mongo.MonoReader',args=args)
reader = factory.instance(provider='mongodb',doc=<mydoc>,db=<db-name>)
#
# reading a document and executing a view
# reading a document i.e just applying a find (no filters)
#
document = mreader.read()
result = mreader.view(name)
df = mreader.read() #-- pandas data frame
df.head()
#
# importing a couchdb reader
args = {"url":"<http://host>:<port>","dbname":"<database>","doc":"<doc_id>","username":"<username>","password":"<password>"}
creader = factory.instance(type='couch.CouchReader',args=args)
# reading from postgresql
pgreader = factory.instance(type='postgresql',database=<database>,table=<table_name>)
pg.read() #-- will read the table by executing a SELECT
pg.read(sql=<sql query>)
#
# Reading a document and executing a view

Loading…
Cancel
Save