Tiingo is a financial data platform making high quality financial tools available to all. Tiingo has a REST and Real-Time Data API, which this library helps you access. The API includes support for these endpoints:
If you'd like to try this library before installing, click below to open a folder of online runnable examples.
First, install the library from PyPi:
If you prefer to receive your results in pandas DataFrame
or Series
format, and you do not already have pandas installed, install it as an optional dependency:
pip install tiingo[pandas]
Next, initialize your client. It is recommended to use an environment variable to initialize your client for convenience.
from tiingo import TiingoClient # Set TIINGO_API_KEY in your environment variables in your .bash_profile, OR # pass a dictionary with 'api_key' as a key into the TiingoClient. client = TiingoClient()
Alternately, you may use a dictionary to customize/authorize your client.
config = {} # To reuse the same HTTP Session across API calls (and have better performance), include a session key. config['session'] = True # If you don't have your API key as an environment variable, # pass it in via a configuration dictionary. config['api_key'] = "MY_SECRET_API_KEY" # Initialize client = TiingoClient(config)
Now you can use TiingoClient
to make your API calls. (Other parameters are available for each endpoint beyond what is used in the below examples, inspect the docstring for each function for details.).
# Get Ticker ticker_metadata = client.get_ticker_metadata("GOOGL") # Get latest prices, based on 3+ sources as JSON, sampled weekly ticker_price = client.get_ticker_price("GOOGL", frequency="weekly") # Get 1 min prices, including the "open", "close" and "volume" columns ticker_price = client.get_ticker_price("GOOGL", frequency="1min", columns="open,close,volume") # Get historical GOOGL prices from August 2017 as JSON, sampled daily historical_prices = client.get_ticker_price("GOOGL", fmt='json', startDate='2017-08-01', endDate='2017-08-31', frequency='daily') # Check what tickers are available, as well as metadata about each ticker # including supported currency, exchange, and available start/end dates. tickers = client.list_stock_tickers() # Get news articles about given tickers or search terms from given domains articles = client.get_news(tickers=['GOOGL', 'AAPL'], tags=['Laptops'], sources=['washingtonpost.com'], startDate='2017-01-01', endDate='2017-08-31') # Get definitions for fields available in the fundamentals-api, ticker is # optional definitions = client.get_fundamentals_definitions('GOOGL') # Get fundamentals which require daily-updated (like marketCap). A start- # and end-date can be passed. If omited, will get all available data. fundamentals_daily = client.get_fundamentals_daily('GOOGL', startDate='2020-01-01', endDate='2020-12-31') # Get fundamentals based on quarterly statements. Accepts time-range like # daily-fundamentals. asReported can be set to get the data exactly like # it was reported to SEC. Set to False if you want to get data containing # corrections fundamentals_stmnts = client.get_fundamentals_statements('GOOGL', startDate='2020-01-01', endDate='2020-12-31', asReported=True)
To receive results in pandas
format, use the get_dataframe()
method:
#Get a pd.DataFrame of the price history of a single symbol (default is daily): ticker_history = client.get_dataframe("GOOGL") #The method returns all of the available information on a symbol, such as open, high, low, close, #adjusted close, etc. This page in the tiingo api documentation lists the available information on each #symbol: https://api.tiingo.com/docs/tiingo/daily#priceData. #Frequencies and start and end dates can be specified similarly to the json method above. #Get a pd.Series of only one column of the available response data by specifying one of the valid the #'metric_name' parameters: ticker_history = client.get_dataframe("GOOGL", metric_name='adjClose') #Get a pd.DataFrame for a list of symbols for a specified metric_name (default is adjClose if no #metric_name is specified): ticker_history = client.get_dataframe(['GOOGL', 'AAPL'], frequency='weekly', metric_name='volume', startDate='2017-01-01', endDate='2018-05-31') #Get a pd.DataFrame for a list of symbols for "close" and "volume" columns: ticker_history = client.get_dataframe(['GOOGL', 'AAPL'], frequency='weekly', columns="close,volume" startDate='2017-01-01', endDate='2018-05-31')
You can specify any of the end of day frequencies (daily, weekly, monthly, and annually) or any intraday frequency for both the get_ticker_price
and get_dataframe
methods. Weekly frequencies resample to the end of day on Friday, monthly frequencies resample to the last day of the month, and annually frequencies resample to the end of day on 12-31 of each year. The intraday frequencies are specified using an integer followed by "Min" or "Hour", for example "30Min" or "1Hour".
It's also possible to specify which columns you're interested in, for example: "open", "close", "low", "high" and "volume" (see End of Day response docs for future columns).
# You can obtain cryptocurrency metadata using the following method. # NOTE: Crypto symbol MUST be encapsulated in brackets as a Python list! client.get_crypto_metadata(['BTCUSD'], fmt='json') #You can obtain top-of-book cryptocurrency quotes from the ``get_crypto_top_of_book()`` method. # NOTE: Crypto symbol MUST be encapsulated in brackets as a Python list! crypto_price = client.get_crypto_top_of_book(['BTCUSD'])`` # You can obtain historical Cryptocurrency price quotes from the get_crypto_price_history() method. # NOTE: Crypto symbol MUST be encapsulated in brackets as a Python list! client.get_crypto_price_history(tickers = ['BTCUSD'], startDate='2020-12-2', endDate='2020-12-3', resampleFreq='1Hour')
from tiingo import TiingoWebsocketClient def cb_fn(msg): # Example response # msg = { # "service":"iex" # An identifier telling you this is IEX data. # The value returned by this will correspond to the endpoint argument. # # # Will always return "A" meaning new price quotes. There are also H type Heartbeat msgs used to keep the connection alive # "messageType":"A" # A value telling you what kind of data packet this is from our IEX feed. # # # see https://api.tiingo.com/documentation/websockets/iex > Response for more info # "data":[] # an array containing trade information and a timestamp # # } print(msg) subscribe = { 'eventName':'subscribe', 'authorization':'API_KEY_GOES_HERE', #see https://api.tiingo.com/documentation/websockets/iex > Request for more info 'eventData': { 'thresholdLevel':5 } } # any logic should be implemented in the callback function (cb_fn) TiingoWebsocketClient(subscribe,endpoint="iex",on_msg_cb=cb_fn)
Feel free to file a PR that implements any of the above items.
This package was created with Cookiecutter and the audreyr/cookiecutter-pypackage project template.
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