-2

I have two problems.

  1. All my columns begin with the letter 'b'. I want to get rid of this character and convert all the values to float. (I've attached an image of the entire data frame).

enter image description here

  1. For the Price column, there is this additional encoding "\xc2\xa". I want to remove that and keep the decimal value. (I've attached a picture of this column).

enter image description here

I was able to remove the 'b' character for this column by converting the column to string and then using this code:

price.replace('b','')

But when I tried this code with "\xc2\xa", it didn't work. I also think converting all the columns to string is a little inefficient so what's a better alternative?

This is my entire code if it helps:

import requests
import pandas as pd
from bs4 import BeautifulSoup

Base_url = ("https://www.nseindia.com/live_market/dynaContent/live_watch/fxTracker/optChainDataByExpDates.jsp")

page = requests.get(Base_url)

soup = BeautifulSoup(page.content, 'html.parser')
table_it = soup.find_all(class_="opttbldata")

spot = soup.select_one("div:contains('REFERENCE RATE') > strong").text
ATM = (round(float(spot)*4))/4
OTMCE = ATM + 0.50
OTMPE = ATM - 0.50

table_cls_1 = soup.find_all(id = "octable")
col_list = []

for mytable in table_cls_1:
    table_head = mytable.find('thead')

    try:
        rows = table_head.find_all('tr')
        for tr in rows:
            cols = tr.find_all('th')
            for th in cols:
                er = th.text
                ee = er.encode('utf-8')
                col_list.append(ee)
    except:
        print('no thread')

col_list_fnl = [e for e in col_list if e not in ('CALLS', 'PUTS', 'Chart', '\xc2\xa0')]

table_cls_2 = soup.find(id = "octable")
all_trs = table_cls_2.find_all('tr')
req_row = table_cls_2.find_all('tr')

df = pd.DataFrame(index=range(0,len(req_row)-3),columns = col_list_fnl)

row_marker = 0

for row_number, tr_nos in enumerate(req_row):
    if row_number <= 1 or row_number == len(req_row)-1:
        continue # To insure we only choose non empty rows

    td_columns = tr_nos.find_all('td')

    # Removing the graph column
    select_cols = td_columns[1:22]
    cols_horizontal = range(0,len(select_cols))

    for nu, column in enumerate(select_cols):

        utf_string = column.get_text()
        utf_string = utf_string.strip('\n\r\t": ')
        tr = utf_string.encode('utf-8')

        df.iloc[row_marker,[nu]] = tr

    row_marker += 1

print(df)
  • Replace soup = BeautifulSoup(page.content, 'html.parser') with soup = BeautifulSoup(page.text, 'html.parser'). If you don't want bytes, don't ask for it. – cs95 Jun 13 at 4:23
  • @cs95 I'm still getting the 'b' character before every value. I also want the values as decimals and not string. Sorry I'm new to web scraping/data cleansing! – Devanshi Ruparel Jun 13 at 4:26
  • 1
    It's probably because of this unnecessary line as well: ee = er.encode('utf-8') – cs95 Jun 13 at 4:27
  • 1
    And also tr = utf_string.encode('utf-8'). Why do you keep encoding things? That converts strings to bytes -- not what you want, or am I mistaken? – cs95 Jun 13 at 4:28
  • @cs95 If I remove the code: tr = utf_string.encode('utf-8'), I get this error: cannot copy sequence with size 53 to array axis with dimension 1. – Devanshi Ruparel Jun 13 at 4:33
1

I changed your code according to the comments from @cs95 and @eyllanesc. I can execute the code without errors and it yields a dataframe without byte encoding.

import requests
import pandas as pd
from bs4 import BeautifulSoup

Base_url = ("https://www.nseindia.com/live_market/dynaContent/live_watch/fxTracker/optChainDataByExpDates.jsp")

page = requests.get(Base_url)

soup = BeautifulSoup(page.text, 'html.parser')
table_it = soup.find_all(class_="opttbldata")

spot = soup.select_one("div:contains('REFERENCE RATE') > strong").text
ATM = (round(float(spot)*4))/4
OTMCE = ATM + 0.50
OTMPE = ATM - 0.50

table_cls_1 = soup.find_all(id = "octable")
col_list = []

for mytable in table_cls_1:
    table_head = mytable.find('thead')

    try:
        rows = table_head.find_all('tr')
        for tr in rows:
            cols = tr.find_all('th')
            for th in cols:
                er = th.text
                col_list.append(er)
    except:
        print('no thread')

col_list_fnl = [e for e in col_list if e not in ('CALLS', 'PUTS', 'Chart', '\xc2\xa0')]

table_cls_2 = soup.find(id = "octable")
all_trs = table_cls_2.find_all('tr')
req_row = table_cls_2.find_all('tr')

df = pd.DataFrame(index=range(0,len(req_row)-3),columns = col_list_fnl)

row_marker = 0

for row_number, tr_nos in enumerate(req_row):
    if row_number <= 1 or row_number == len(req_row)-1:
        continue # To insure we only choose non empty rows

    td_columns = tr_nos.find_all('td')

    # Removing the graph column
    select_cols = td_columns[1:22]
    cols_horizontal = range(0,len(select_cols))

    for nu, column in enumerate(select_cols):

        utf_string = column.get_text()
        utf_string = utf_string.strip('\n\r\t": ')
        tr = utf_string

        df.iloc[row_marker,[nu]] = tr

    row_marker += 1

display(df)

This prints:

enter image description here

Addition

To properly convert columns to unique names and the values to float values do this:

cols = ['_first_col', 'Chart ', 'OI', 'Change in OI', 'Volume', 'IV', 'LTP', 'BidQty',
       'BidPrice', 'AskPrice_01', 'AskQty', 'Strike Price', 'BidQty', 'BidPrice',
       'AskPrice_02', 'AskQty', 'LTP', 'IV', 'Volume', 'Change in OI', 'OI',
       'Chart']
df.columns = cols

df.AskPrice_01 = df.AskPrice_01.apply(lambda x: float(x) if x != "-" else None)

df.AskPrice_02 = df.AskPrice_02.apply(lambda x: float(x) if x != "-" else None)

To filter a specific column you can use this:

df[df.AskPrice_01 > 65.25].AskPrice_01

I hope this helps. Good luck with your project!

  • You´re welcome. :0) – petezurich Jun 13 at 5:17
  • is there a way I can check if the 'AskPrice' column starts with 65.25 and then show only that row? It seems like the values in that column are in this format: \xa065.2500\xa0\n1 – Devanshi Ruparel Jun 13 at 6:31
  • To filter on a specific column you can use df[df.AskPrice > 65.25]. I see that you have two columns names AskPrice. You need to fix that to unique names. – petezurich Jun 13 at 6:51
  • 1
    See my addition to the answer. Your values still were strings or contain strings that you need to convert to float or int values. – petezurich Jun 13 at 7:07
  • 1
    Great. I´m glad that you could solve your problem! – petezurich Jun 13 at 8:57

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