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dhoeppe-alpha-vantage
Advanced tools
Python module to get stock data/cryptocurrencies from the Alpha Vantage API
Alpha Vantage delivers a free API for real time financial data and most used finance indicators in a simple json or pandas format. This module implements a python interface to the free API provided by Alpha Vantage. It requires a free API key, that can be requested from http://www.alphavantage.co/support/#api-key. You can have a look at all the API calls available in their API documentation.
For code-less access to the APIs, you may also consider the official Google Sheet Add-on or the Microsoft Excel Add-on by Alpha Vantage. Check out this guide for some common tips on working with financial market data.
To install the package use:
pip install dhoeppe_alpha_vantage
Or install with pandas support, simply install pandas too:
pip install dhoeppe_alpha_vantage pandas
If you want to install from source, then use:
git clone https://github.com/dhoeppe/alpha_vantage.git
pip install -e alpha_vantage
To get data from the API, simply import the library and call the object with your API key. Next, get ready for some awesome, free, realtime finance data. Your API key may also be stored in the environment variable ALPHAVANTAGE_API_KEY
.
from alpha_vantage.timeseries import TimeSeries
ts = TimeSeries(key='YOUR_API_KEY')
# Get json object with the intraday data and another with the call's metadata
data, meta_data = ts.get_intraday('GOOGL')
You may also get a key from rapidAPI. Use your rapidAPI key for the key variable, and set rapidapi=True
ts = TimeSeries(key='YOUR_API_KEY',rapidapi=True)
The library supports giving its results as json dictionaries (default), pandas dataframe (if installed) or csv, simply pass the parameter output_format='pandas' to change the format of the output for all the API calls in the given class. Please note that some API calls do not support the csv format (namely ForeignExchange, SectorPerformances and TechIndicators
) because the API endpoint does not support the format on their calls either.
ts = TimeSeries(key='YOUR_API_KEY',output_format='pandas')
The pandas data frame given by the call, can have either a date string indexing or an integer indexing (by default the indexing is 'date'), depending on your needs, you can use both.
# For the default date string index behavior
ts = TimeSeries(key='YOUR_API_KEY',output_format='pandas', indexing_type='date')
# For the default integer index behavior
ts = TimeSeries(key='YOUR_API_KEY',output_format='pandas', indexing_type='integer')
The data frame structure is given by the call on alpha vantage rest API. The column names of the data frames are the ones given by their data structure. For example, the following call:
from alpha_vantage.timeseries import TimeSeries
from pprint import pprint
ts = TimeSeries(key='YOUR_API_KEY', output_format='pandas')
data, meta_data = ts.get_intraday(symbol='MSFT',interval='1min', outputsize='full')
pprint(data.head(2))
Would result on:
The headers from the data are specified from Alpha Vantage (in previous versions, the numbers in the headers were removed, but long term is better to have the data exactly as Alpha Vantage produces it.)
Using pandas support we can plot the intra-minute value for 'MSFT' stock quite easily:
from alpha_vantage.timeseries import TimeSeries
import matplotlib.pyplot as plt
ts = TimeSeries(key='YOUR_API_KEY', output_format='pandas')
data, meta_data = ts.get_intraday(symbol='MSFT',interval='1min', outputsize='full')
data['4. close'].plot()
plt.title('Intraday Times Series for the MSFT stock (1 min)')
plt.show()
Giving us as output:
It is also possible to query fundamental data.
from alpha_vantage.fundamentaldata import FundamentalData
fd = FundamentalData(key='YOUR_API_KEY', output_format='pandas')
data, meta_data = fd.get_listing_status()
print(data)
The same way we can get pandas to plot technical indicators like Bollinger Bands®
from alpha_vantage.techindicators import TechIndicators
import matplotlib.pyplot as plt
ti = TechIndicators(key='YOUR_API_KEY', output_format='pandas')
data, meta_data = ti.get_bbands(symbol='MSFT', interval='60min', time_period=60)
data.plot()
plt.title('BBbands indicator for MSFT stock (60 min)')
plt.show()
Giving us as output:
We can also plot sector performance just as easy:
from alpha_vantage.sectorperformance import SectorPerformances
import matplotlib.pyplot as plt
sp = SectorPerformances(key='YOUR_API_KEY', output_format='pandas')
data, meta_data = sp.get_sector()
data['Rank A: Real-Time Performance'].plot(kind='bar')
plt.title('Real Time Performance (%) per Sector')
plt.tight_layout()
plt.grid()
plt.show()
Giving us as output:
We can also plot crypto currencies prices like BTC:
from alpha_vantage.cryptocurrencies import CryptoCurrencies
import matplotlib.pyplot as plt
cc = CryptoCurrencies(key='YOUR_API_KEY', output_format='pandas')
data, meta_data = cc.get_digital_currency_daily(symbol='BTC', market='CNY')
data['4b. close (USD)'].plot()
plt.tight_layout()
plt.title('Daily close value for bitcoin (BTC)')
plt.grid()
plt.show()
Giving us as output:
The foreign exchange endpoint has no metadata, thus only available as json format and pandas (using the 'csv' format will raise an Error)
from alpha_vantage.foreignexchange import ForeignExchange
from pprint import pprint
cc = ForeignExchange(key='YOUR_API_KEY')
# There is no metadata in this call
data, _ = cc.get_currency_exchange_rate(from_currency='BTC',to_currency='USD')
pprint(data)
Giving us as output:
{
'1. From_Currency Code': 'BTC',
'2. From_Currency Name': 'Bitcoin',
'3. To_Currency Code': 'USD',
'4. To_Currency Name': 'United States Dollar',
'5. Exchange Rate': '5566.80500105',
'6. Last Refreshed': '2017-10-15 15:13:08',
'7. Time Zone': 'UTC'
}
From version 2.2.0 on, asyncio support will now be available. This is only for python versions 3.5+. If you do not have 3.5+, the code will break.
The syntax is simple, just mark your methods with the async
keyword, and use the await
keyword.
Here is an example of a for loop for getting multiple symbols asyncronously. This greatly improving the performance of a program with multiple API calls.
import asyncio
from alpha_vantage.async_support.timeseries import TimeSeries
symbols = ['AAPL', 'GOOG', 'TSLA', 'MSFT']
async def get_data(symbol):
ts = TimeSeries(key='YOUR_KEY_HERE')
data, _ = await ts.get_quote_endpoint(symbol)
await ts.close()
return data
loop = asyncio.get_event_loop()
tasks = [get_data(symbol) for symbol in symbols]
group1 = asyncio.gather(*tasks)
results = loop.run_until_complete(group1)
loop.close()
print(results)
We have written a much more in depth article to explain asyncio for those who have never used it but want to learn about asyncio, concurrency, and multi-threading. Check it out here: Which Should You Use: Asynchronous Programming or Multi-Threading?
In order to run the tests you have to first export your API key so that the test can use it to run, also the tests require pandas, mock and nose.
export API_KEY=YOUR_API_KEY
cd alpha_vantage
nosetests
The code documentation can be found at https://dhoeppealpha-vantage.readthedocs.io/en/latest/
Contributing is always welcome. Just contact us on how best you can contribute, add an issue, or make a PR.
You can reach/follow the Alpha Vantage team on any of the following platforms:
If you like or use this project, consider showing your support by starring it.
FAQs
Python module to get stock data from the Alpha Vantage API
We found that dhoeppe-alpha-vantage demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 1 open source maintainer collaborating on the project.
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