This program creates a formatted excel file which highlights the undervalued stock according to Graham's number.

Overview

Over-and-Undervalued-Stocks Of Nepse Using Graham's Number

Scrap the latest data using different websites and creates a formatted excel file that highlights the undervalued stock according to Graham's number. The Graham number (or Benjamin Graham's number) measures a stock's fundamental value by taking into account the company's earnings per share (EPS) and book value per share (BVPS). Formula Used:((22.5* EPS* BVPS)1/2

Quickstart

   $ git clone https://github.com/aryalsuman/Over-And-Undervalued-Stocks--NEPSE-.git
   $ cd Over-And-Undervalued-Stocks-Of-Domestic-Market--Nepse-
   $ pip install -r requirement.txt
   $ python3 main.py

View

Open the excel file to view over and undervalued stocks. Each column contains options to filter and sort.

Images

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