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I am learning python + pandas for data analysis. I try to program some investment ideas as exercises. pandas has this nice io.data module to pull data from online sources, such as Yahoo and Google. However, they all require a start date, which by default is "2010.01.01", as specified in the following code in data.py

http://github.com/pydata/pandas/blob/master/pandas/io/data.py:

def _sanitize_dates(start, end):
from pandas.core.datetools import to_datetime
start = to_datetime(start)
end = to_datetime(end)
if start is None:
    start = dt.datetime(2010, 1, 1)
if end is None:
    end = dt.datetime.today()
return start, end

Since every stock IPOed at different dates in history, it will be very hard to specify for each ticker. Wouldn't it be nice if there is an option to set pandas to read ALL data? Even for a 50 year old public company, the data is only ~50*200 = 10,000 rows. Python should be OK to handle that, right?

Thank you for your help. And my salute to Wes and other pandas contributors; pandas is great!

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2 Answers 2

up vote 0 down vote accepted

A simple solution would be to assume some common start date (before which information would not exist). 1 January 1970 seems like a fair choice.

In [55]: from pandas.io.data import DataReader
In [56]: from datetime import datetime
In [57]: df_1=DataReader("AAPL",  "yahoo", datetime(1970,1,1), datetime(2013,10,1))
In [58]: df_1
Out[58]: 
<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 7330 entries, 1984-09-07 00:00:00 to 2013-10-01 00:00:00
Data columns (total 6 columns):
Open         7330  non-null values
High         7330  non-null values
Low          7330  non-null values
Close        7330  non-null values
Volume       7330  non-null values
Adj Close    7330  non-null values
dtypes: float64(5), int64(1)

Now, we shall choose the starting date as 1984-09-07 and observe that we pull the same data, thereby, ending with the same DataFrame.

In [59]: df_2 = DataReader("AAPL",  "yahoo", datetime(1984,9,7), datetime(2013,10,1))
In [60]: df_2
Out [60]: 
<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 7330 entries, 1984-09-07 00:00:00 to 2013-10-01 00:00:00
Data columns (total 6 columns):
Open         7330  non-null values
High         7330  non-null values
Low          7330  non-null values
Close        7330  non-null values
Volume       7330  non-null values
Adj Close    7330  non-null values
dtypes: float64(5), int64(1)
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Thanks a lot, Nipun! I figured out this too! I wish they had this in the document! I realized another way to do this is to use reader_csv, which accept URL, don't require a start date, and read entire csv from Yahoo. –  laviex Oct 12 '13 at 16:03

It appears that the Yahoo stock data only goes back to January of 1962. Once the panels and dataframes are created you can slice by date index. Note, you may want to use 'Adj Close' instead of 'Close' since you are going back far in the past.

import numpy as np
import pandas as pd
from pandas.io.data import DataReader

symbols_list = ['GE', 'IBM','MSFT']
d = {}
for ticker in symbols_list:
    d[ticker] = DataReader(ticker, "yahoo", '1950-01-01')
pan = pd.Panel(d)
#also use 'Open','High','Low','Adj Close' and 'Volume'
df_closing_prices = pan.minor_xs('Close')

# print the first 4 rows of the dataframe that has the closing prices
print(df_closing_prices.head(4))

# create a dataframe with that has data on only one stock symbol
df_individual = pan.get('GE')

#print the first 4 rows of a dataframe that has only one stock symbol
print(df_individual.head(4))

#create a dataframe for an individual ticker composed of percent changes
df_percent_chg = df_individual.pct_change()

#complete_sp500 = ['A', 'AA', 'AAPL', 'ABBV', 'ABC', 'ABT', 'ACE', 'ACN', 'ACT', 'ADBE', 'ADI', 'ADM', 'ADP', 'ADS', 'ADSK', 'ADT', 'AEE', 'AEP', 'AES', 'AET', 'AFL', 'AGN', 'AIG', 'AIV', 'AIZ', 'AKAM', 'ALL', 'ALLE', 'ALTR', 'ALXN', 'AMAT', 'AME', 'AMG', 'AMGN', 'AMP', 'AMT', 'AMZN', 'AN', 'ANTM', 'AON', 'APA', 'APC', 'APD', 'APH', 'ARG', 'ATI', 'AVB', 'AVGO', 'AVP', 'AVY', 'AXP', 'AZO', 'BA', 'BAC', 'BAX', 'BBBY', 'BBT', 'BBY', 'BCR', 'BDX', 'BEN', 'BF.B', 'BHI', 'BIIB', 'BK', 'BLK', 'BLL', 'BMY', 'BRCM', 'BRK.B', 'BSX', 'BWA', 'BXP', 'C', 'CA', 'CAG', 'CAH', 'CAM', 'CAT', 'CB', 'CBG', 'CBS', 'CCE', 'CCI', 'CCL', 'CELG', 'CERN', 'CF', 'CFN', 'CHK', 'CHRW', 'CI', 'CINF', 'CL', 'CLX', 'CMA', 'CMCSA', 'CME', 'CMG', 'CMI', 'CMS', 'CNP', 'CNX', 'COF', 'COG', 'COH', 'COL', 'COP', 'COST', 'COV', 'CPB', 'CRM', 'CSC', 'CSCO', 'CSX', 'CTAS', 'CTL', 'CTSH', 'CTXS', 'CVC', 'CVS', 'CVX', 'D', 'DAL', 'DD', 'DE', 'DFS', 'DG', 'DGX', 'DHI', 'DHR', 'DIS', 'DISCA', 'DISCK', 'DLPH', 'DLTR', 'DNB', 'DNR', 'DO', 'DOV', 'DOW', 'DPS', 'DRI', 'DTE', 'DTV', 'DUK', 'DVA', 'DVN', 'EA', 'EBAY', 'ECL', 'ED', 'EFX', 'EIX', 'EL', 'EMC', 'EMN', 'EMR', 'EOG', 'EQR', 'EQT', 'ESRX', 'ESS', 'ESV', 'ETFC', 'ETN', 'ETR', 'EW', 'EXC', 'EXPD', 'EXPE', 'F', 'FAST', 'FB', 'FCX', 'FDO', 'FDX', 'FE', 'FFIV', 'FIS', 'FISV', 'FITB', 'FLIR', 'FLR', 'FLS', 'FMC', 'FOSL', 'FOXA', 'FSLR', 'FTI', 'FTR', 'GAS', 'GCI', 'GD', 'GE', 'GGP', 'GILD', 'GIS', 'GLW', 'GM', 'GMCR', 'GME', 'GNW', 'GOOG', 'GOOGL', 'GPC', 'GPS', 'GRMN', 'GS', 'GT', 'GWW', 'HAL', 'HAR', 'HAS', 'HBAN', 'HCBK', 'HCN', 'HCP', 'HD', 'HES', 'HIG', 'HOG', 'HON', 'HOT', 'HP', 'HPQ', 'HRB', 'HRL', 'HRS', 'HSP', 'HST', 'HSY', 'HUM', 'IBM', 'ICE', 'IFF', 'INTC', 'INTU', 'IP', 'IPG', 'IR', 'IRM', 'ISRG', 'ITW', 'IVZ', 'JCI', 'JEC', 'JNJ', 'JNPR', 'JOY', 'JPM', 'JWN', 'K', 'KEY', 'KIM', 'KLAC', 'KMB', 'KMI', 'KMX', 'KO', 'KORS', 'KR', 'KRFT', 'KSS', 'KSU', 'L', 'LB', 'LEG', 'LEN', 'LH', 'LLL', 'LLTC', 'LLY', 'LM', 'LMT', 'LNC', 'LO', 'LOW', 'LRCX', 'LUK', 'LUV', 'LVLT', 'LYB', 'M', 'MA', 'MAC', 'MAR', 'MAS', 'MAT', 'MCD', 'MCHP', 'MCK', 'MCO', 'MDLZ', 'MDT', 'MET', 'MHFI', 'MHK', 'MJN', 'MKC', 'MLM', 'MMC', 'MMM', 'MNK', 'MNST', 'MO', 'MON', 'MOS', 'MPC', 'MRK', 'MRO', 'MS', 'MSFT', 'MSI', 'MTB', 'MU', 'MUR', 'MWV', 'MYL', 'NAVI', 'NBL', 'NBR', 'NDAQ', 'NE', 'NEE', 'NEM', 'NFLX', 'NFX', 'NI', 'NKE', 'NLSN', 'NOC', 'NOV', 'NRG', 'NSC', 'NTAP', 'NTRS', 'NU', 'NUE', 'NVDA', 'NWL', 'NWSA', 'OI', 'OKE', 'OMC', 'ORCL', 'ORLY', 'OXY', 'PAYX', 'PBCT', 'PBI', 'PCAR', 'PCG', 'PCL', 'PCLN', 'PCP', 'PDCO', 'PEG', 'PEP', 'PETM', 'PFE', 'PFG', 'PG', 'PGR', 'PH', 'PHM', 'PKI', 'PLD', 'PLL', 'PM', 'PNC', 'PNR', 'PNW', 'POM', 'PPG', 'PPL', 'PRGO', 'PRU', 'PSA', 'PSX', 'PVH', 'PWR', 'PX', 'PXD', 'QCOM', 'QEP', 'R', 'RAI', 'RCL', 'REGN', 'RF', 'RHI', 'RHT', 'RIG', 'RL', 'ROK', 'ROP', 'ROST', 'RRC', 'RSG', 'RTN', 'SBUX', 'SCG', 'SCHW', 'SE', 'SEE', 'SHW', 'SIAL', 'SJM', 'SLB', 'SNA', 'SNDK', 'SNI', 'SO', 'SPG', 'SPLS', 'SRCL', 'SRE', 'STI', 'STJ', 'STT', 'STX', 'STZ', 'SWK', 'SWN', 'SWY', 'SYK', 'SYMC', 'SYY', 'T', 'TAP', 'TDC', 'TE', 'TEG', 'TEL', 'TGT', 'THC', 'TIF', 'TJX', 'TMK', 'TMO', 'TRIP', 'TROW', 'TRV', 'TSCO', 'TSN', 'TSO', 'TSS', 'TWC', 'TWX', 'TXN', 'TXT', 'TYC', 'UA', 'UHS', 'UNH', 'UNM', 'UNP', 'UPS', 'URBN', 'URI', 'USB', 'UTX', 'V', 'VAR', 'VFC', 'VIAB', 'VLO', 'VMC', 'VNO', 'VRSN', 'VRTX', 'VTR', 'VZ', 'WAG', 'WAT', 'WDC', 'WEC', 'WFC', 'WFM', 'WHR', 'WIN', 'WM', 'WMB', 'WMT', 'WU', 'WY', 'WYN', 'WYNN', 'XEC', 'XEL', 'XL', 'XLNX', 'XOM', 'XRAY', 'XRX', 'XYL', 'YHOO', 'YUM', 'ZION', 'ZMH', 'ZTS']
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