Skip to content

kgabbott/keepaAPI

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

18 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

keepaAPI

Python module to interface to https://keepa.com/ to query for Amazon product information and history.

Requirements

Module is compatible with Python 2 and 3. keepaAPI requires: + numpy + requests

Product history can be plotted from the raw data when matplotlib is installed.

Interfacing with the keepaAPI requires an accesskey and a monthly subscription from https://keepa.com/#!api

Installation

Module can be installed from PyPi using pip install keepaAPI

Source code can also be downloaded from this github repository and installed using python setup.py install or pip install .

Brief Example

import keepaAPI
accesskey = 'XXXXXXXXXXXXXXXX' # enter real access key here
api = keepaAPI.API(accesskey)

# Single ASIN query
products = api.ProductQuery('059035342X') # returns list of product data

# Plot result (requires matplotlib)
keepaAPI.PlotProduct(products[0])

Detailed Example

Import interface and establish connection to server

import keepaAPI
accesskey = 'XXXXXXXXXXXXXXXX' # enter real access key here
api = keepaAPI.API(accesskey)

Single ASIN query

products = api.ProductQuery('059035342X')

# See help(api.ProductQuery) for available options when querying the API

Multiple ASIN query from List

asins = ['0022841350', '0022841369', '0022841369', '0022841369']
products = api.ProductQuery(asins)

Multiple ASIN query from numpy array

asins = np.asarray(['0022841350', '0022841369', '0022841369', '0022841369'])
products = api.ProductQuery(asins)

Products is a list of product data with one entry per successful result from the keepa server. Each entry is a dictionary containing the same product data available from http://www.amazon.com.

# Available keys
print(products[0].keys())

# Print ASIN and title
print('ASIN is ' + products[0]['asin'])
print('Title is ' + products[0]['title'])

The raw data is contained within each product result. Raw data is stored as a dictonary with each key paired with its associated time history.

# Access new price history and associated time data
newprice = products[0]['data']['MarketplaceNew']
newpricetime = products[0]['data']['MarketplaceNew_time']

# Can be plotted with matplotlib using:
import matplotlib.pyplot as plt
plt.step(newpricetime, newprice, where='pre')

# Keys can be listed by
print(products[0]['data'].keys())

The product history can also be plotted from the module if matplotlib is installed

Credits

This python code, written by Alex Kaszynski, is based on Java code writen by Marius Johann, CEO keepa. Java source is can be found at https://github.com/keepacom/api_backend/

License

See license file. Work is credited to both Alex Kaszynski and Marius Johann.

Packages

No packages published

Languages

  • Python 100.0%