I'm building a trading strategy backtesting script and I've got price data from a specific exchange to analyze
(csv files for each day of trading).
The strategy contains buy/sell signals
(e.g. "buy at 6,000", "sell at 7,000") and to see if this strategy would have been more profitable if stop loss (SL) and take profit (TP) parameters would have been applied
(entry at 6,000 and exit if price < 5,900 or if price > 6,500), I want to check price data within the timeframe the trade signal took place.
Now, I know my entry price, my stop price and my take profit price and if neither got hit it would exit at the opposite signal. I also know the timeframe this trade took place.
My approach so far and working (but too slow):
- Take entry and exit date and time and fetch right price data files
- Open each file and check line by line if price data entry within timeframe
- If yes, check if price is > SL price or < TP price
- Go to next signal
For now, every run of ~ 90 trades over the span of 4 months worth of data takes about 10 minutes on my home computer with SSD and 24 GB RAM.
Is there a faster or more efficient approach to this?
The data set contains thousands of entries per data file (one file for each day) and it looks like this:
timestamp,symbol,bidSize,bidPrice,askPrice,askSize 2017-02-17D02:04:43.725488000,COIN_BH17,10,33.52,37,50 2017-02-17D02:53:32.452411000,COIN_BH17,5,33.56,37,50 2017-02-17D04:04:59.101478000,COIN_BH17,5,33.56,37,50 2017-02-17D08:13:06.833252000,COIN_BH17,10,33.77,37,50 2017-02-17D08:36:58.401260000,COIN_BH17,10,33.77,37,45