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URL: http://github.com/dopevog/stox

GitHub - dopevog/stox: A Python Module That Uses ANN To Predict A Stocks Price And Also Provides Accurate Technical Analysis With Many High Potential Implementations! · GitHub
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Stox

⚡ A Python Module For The Stock Market ⚡

A Module to predict the "close price" for the next day and give "technical analysis". It uses a Neural Network and the LSTM algorithm to predict the price. It uses a technical indicator algorithm developed by the Stox team for technical analysis.

Installation

Get it from PyPi:

pip3 install stox

Clone it from github:

git clone https://github.com/dopevog/stox.git
cd stox
python3 setup.py install

Usage

Arguments:

    stock (str): stock ticker symbol
    output (str): 'list' or 'message' (Format Of Output)
    years (int or float): years of data to be considered
    chart (bool): generate performance plot

Returns:

List:

[company name, current price, predicted price, technical analysis, date (For)]

Message:

company name
current price
predicted price
technical analysis
data (for)

Examples:

Basic

import stox

script = input("Stock Ticker Symbol: ")
data = stox.stox.exec(script,'list')

print(data)
$ stox> python3 main.py
$ Stock Ticker Symbol: AAPL
$ ['Apple Inc.', 125.43000030517578, 124.91, 'Bearish (Already)', '2021-05-24']

Intermediate

import stox
import pandas as pd

stock_list = pd.read_csv("SPX500.csv") 
df = stock_list 
number_of_stocks = 505 
x = 0
while x < number_of_stocks:
    ticker = stock_list.iloc[x]["Symbols"]
    data = stox.stox.exec(ticker,'list')
    df['Price'] = data[1] 
    df['Prediction'] = data[2]
    df['Analysis'] = data[3]
    df['DateFor'] = data[4]
    if data[2] - data[1]  >= data[1]  * 0.02:
        if data[3] == "Bullish (Starting)":
            df['Signal'] = "Buy"
        elif data[3] == "Bullish (Already)":
            df['Signal'] = "Up"
    elif data[2] - data[1]  <= data[1]  * -0.02:
        if data[3] == "Bearish (Starting)":
            df['Signal'] = "Sell"
        elif data[3] == "Bearish (Already)":
            df['Signal'] = "Down"
    else:
        df['Signal'] = "None"
    x = x+1
df.to_csv("output.csv") 
print("Done") 
$ stox> python3 main.py
$ Done

More Examples Including These Ones Can Be Found Here

Possible Implentations

  • Algorithmic Trading
  • Single Stock Analysis
  • Multistock Analysis
  • And Much More!

Credits

License

This Project Has Been MIT Licensed

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A Python Module That Uses ANN To Predict A Stocks Price And Also Provides Accurate Technical Analysis With Many High Potential Implementations!

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