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Stock Trading Scripts

Python codes related to stock trading

Project Descriptions

7-day_intraday_alpha_vantage_stock_prices.py

  • Retrieves intraday stock price for past 7 days (regular hours 9AM-4PM) and plots the closing price
  • Note: Possible time intervals: "1min", "5min", "15min", "30min", "60min"
  • Note: Possible outputsizes: "compact", "full" -- compact returns only the latest 100 data points in the intraday time series

SP500_correlation_heatmap.py

  • save_sp500_tickers() - Retrieves list of SP500 companies from wikipedia using BeautifulSoup module and writes to pickle module
  • get_data_from_yahoo(reload_sp500=False) - Retrieves data from pickle and downloads interday data from Yahoo Finance -> saves as CSV in folder named 'stock_dfs'
  • compile_data() - Creates excel sheet with all the tickers adjusted closing prices from dates downloaded
  • visualize_data() - Creates a heat map that correlates all the tickers to one another to see how each company moves in relation to each other

plot-stockdata-from-excel.py

  • Retrieves interday data for specific ticker from Yahoo Finance
  • Creates 100MA based on adjusted close and converts data to Open, high, low, close (OHLC) format
  • Plots data with volume subplot

preprocessing_data_for_ML.py

  • process_data_for_labels(ticker) - Pulls csv created in "SP500_correlation_heatmap.py" and calculates the percent change day to day for each stock
  • buy_sell_hold(*args) - returns a boolean to determine if stock has moved at least 2% within the last day
  • extract_featuresets(ticker) - Returns a normalized feature set of stocks as well as the buy/hold/sell classifications
  • do_ml(ticker) - Uses a voting classifier to vote for best course of action and back tests against 25% of sample data. Here, classifiers used are: Linear support vector classifier, k-nearest neighbours, random forest classifier. Prints accuracy as well as predicted spread.

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Python codes related to my stock trading

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