This module is currently being actively developed. Feedback is welcomed.
The iex-api-python
module is a wrapper for the IEX API, and is designed to closely map to the organization of the original API while adding functionality. A few examples of the additional functionality are:
- Many queries are retadurned as Pandas Dataframes.
- Built-in support for websockets connections.
- Option to format timestamps as datetime objects or ISO format.
Note that you must be using Python >=3.6
pip install iex-api-python
From the API documenation:
The IEX API is a set of services designed for developers and engineers. It can be used to build high-quality apps and services. We’re always working to improve the IEX API. Please check back for enhancements and improvements.
- Read the terms.
- Read the manual and start building.
- Attribute properly.
The API terms apply to the use of this module, as does the requirement to properly attribute the use of IEX data.
The IEX-API-Python
module is designed to map closely to the API from IEX. For many of the API calls, the resulting dataset is better represented in a tabular format. For these calls, data are returned as a pandas.DataFrame.
To illustrate a few things you can do with iex-api-python
, take a look at the examples below.
Fetch all stock symbols
from iex import reference
reference.symbols() # Returns a Pandas Dataframe of all stock symbols, names, and more.
symbol date iexId isEnabled \
0 A 2018-05-16 2 True
1 AA 2018-05-16 12042 True
2 AABA 2018-05-16 7653 True
3 AAC 2018-05-16 9169 True
Get a stock price
from iex import Stock
Stock("F").price()
11.4
Get a stocks price for the last year
from iex import Stock
Stock("F").chart_table(range="1y")
change changeOverTime changePercent close date high \
0 0.000000 0.000000 0.000 10.2760 2017-05-16 10.3982
1 -0.169075 -0.016446 -1.645 10.1070 2017-05-17 10.2854
2 0.028180 -0.013712 0.279 10.1351 2017-05-18 10.1633
3 0.075144 -0.006394 0.741 10.2103 2017-05-19 10.2760
4 0.216042 0.014626 2.116 10.4263 2017-05-22 10.4545
5 -0.046966 0.010062 -0.450 10.3794 2017-05-23 10.4874
6 -0.084539 0.001830 -0.814 10.2948 2017-05-24 10.3888
...