I'm working with intraday time and quote data in pandas, and struggling to find a good way to calulate a weighted mid-price. I currently have the data represented as four dataframes (bid_price, bid_quantity, ask_price, ask_quantity), with the columns of each dataframe being individual instruments, and the index being timestamps. (So a single bid price could be referenced as:
The midpoint formula that I wish to apply is dependent on the bid/ask spread of the instrument. If the current spread is wider than the minimum tick increment, the midpoint will be the simple average of bid and ask prices at that moment. If the spread is equal to the minimum, the midpoint is weighted based on the bid and ask quantity.
Here is the current code:
def get_midprice(bid_price, bid_quantity, ask_price, ask_quantity, tick_increment=0.01): if (ask_price - bid_price) > tick_increment: return (ask_price + bid_price) / 2 else: return ((bid_price * ask_quantity) + (ask_price * bid_quantity)) / (bid_quantity + ask_quantity)
This works on a single datapoint, and on a previous version of pandas, it also worked when passed 4 DataFrames. Now, 4 dataframes raises an exception:
raise ValueError("Cannot call bool() on DataFrame.") ValueError: Cannot call bool() on DataFrame.
Which I believe is due to this change: https://github.com/pydata/pandas/pull/1073
The problem could obviously solved by looping, but on a large dataset, this is very slow. Is there a better way?