Metadata-Version: 2.1
Name: truedata-ws
Version: 0.3.11
Summary: Truedata's Official Python Package
Home-page: https://github.com/paritoshjchandran/truedata
Author: Paritosh Chandran
Author-email: paritosh.j.chandran@gmail.com
License: UNKNOWN
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: License :: OSI Approved :: GNU General Public License v3 (GPLv3)
Classifier: Operating System :: OS Independent
Requires-Python: >=3.7
Description-Content-Type: text/markdown
Requires-Dist: websocket-client (>=0.57.0)
Requires-Dist: colorama (>=0.4.3)
Requires-Dist: python-dateutil (>=2.8.1)
Requires-Dist: pandas (>=1.0.3)

This is the official python (websocket) repo for TrueData.
-------


**What have we covered so far ?**
* Websocket APIs
  *  Live data
  *  Historical data

**How do you use it ?**

**For beginners**

* Installing from PyPi
```shell script
python3.7 -m pip install truedata_ws
```
* Running tests to ensure everything is in order 
```shell script
python3.7 -m truedata_ws run_all_tests <enter_your_login_id> <enter_your_password>
```

* Connecting 
```python
from truedata_ws.websocket.TD import TD
td_obj = TD('<enter_your_login_id>', '<enter_your_password>')
```
* Connecting using the optional broker_token parameter
<br>Truedata also partners up with brokers to provide our clients with the optimum trading experience.
<br>If you are a client that uses this service, please be sure to provide your broker token as well after logging into their service
```python
td_obj = TD('<enter_your_login_id>', '<enter_your_password>', broker_token='<enter_broker_token>')
```

* Starting live data

For Single Symbols
```python
req_ids = td_obj.start_live_data(['<enter_symbol>'])
# Example:
# req_id = start_live_data(['CRUDEOIL-I'])
# This returns an single element list that can be used later to reference the data
```
For Multiple symbols
<p>

```python
req_ids = td_obj.start_live_data(['<symbol_1>', '<symbol_2>', '<symbol_3>', ...])
# Example:
# req_ids = td_obj.start_live_data(['CRUDEOIL-I', 'BANKNIFTY-I', 'RELIANCE', 'ITC'])
# This returns a list that can be used to reference data later
```

* Accessing touchline data
```python
import time
time.sleep(1)
for req_id in req_ids:
    print(td_obj.touchline_data[req_id])
# You MAY have to wait until for 1 sec for all of the touchline data to populate
```

* Sample code for testing market data
```python
from copy import deepcopy
live_data_objs = {}
for req_id in req_ids:    
    live_data_objs[req_id] = deepcopy(td_obj.live_data[req_id])

while True:
    for req_id in req_ids:
        if live_data_objs[req_id] != td_obj.live_data[req_id]:
            print(td_obj.live_data[req_id])
            live_data_objs[req_id] = deepcopy(td_obj.live_data[req_id])
```

* Stopping live data
```python
td_obj.stop_live_data(['<symbol_1>', '<symbol_2>', '<symbol_3>', ...])
```

<br>
<br>
You can also provide your own list of req_ids (However, they need to have the same length as the number of symbols)...
<br>Or, you can provide a single req_id as an integer and we will return a list by incrementing it for every symbol provided...

<br>
<br>
<br>

* Getting Historical data

Using no parameters
```python
hist_data_1 = td_obj.get_historic_data('BANKNIFTY-I')
# This returns 1 minute bars from the start of the present day until current time
```
Using a given a specific ending time
```python
from datetime import datetime
hist_data_2 = td_obj.get_historic_data('BANKNIFTY-I', end_time=datetime(2020, 5, 5, 12, 30))
# Any time can be given here
```
Using a given duration (For available duration options, please read the limitations section)
```python
hist_data_3 = td_obj.get_historic_data('BANKNIFTY-I', duration='3 D')
```
Using a specified bar_size (For available bar_size options, please read the limitations section)
```python
hist_data_4 = td_obj.get_historic_data('BANKNIFTY-I', bar_size='30 mins')
```
Using start time INSTEAD of duration
```python
from dateutil.relativedelta import relativedelta
hist_data_5 = td_obj.get_historic_data('BANKNIFTY-I', start_time=datetime.now()-relativedelta(days=3))
```
IMPORTANT NOTE:
Now that we have covered the basic parameters, you can mix and match the parameters as you please... If a parameter is not specified, the defaults are as follows
```python
end_time = datetime.now()
duration = "1 D"
bar_size = "1 min"
```

Example of mix and match
```python
hist_data_6 = td_obj.get_historic_data('BANKNIFTY-I', duration='3 D', bar_size='15 mins')
```

On a side note: You can convert historical data to Pandas DataFrames with a single line
```python
import pandas as pd
df = pd.DataFrame(hist_data_1)
```

* Disconnect from the service
```python
td_obj.disconnect()
```
<br>
<br>

* Limitations and caveats for historical data
<ol>
<li>If you provide both duration and start time, duration will be used and start time will be ignored...</li>
<li>If you provide neither duration nor start time, duration = "1 D" will be used</li>
<li>
    ONLY the following BAR_SIZES are available
    <ul>
    <li>tick</li>
    <li>1 min</li>
    <li>5 mins</li>
    <li>15 mins</li>
    <li>30 mins</li>
    <li>EOD</li>
    </ul>
</li>
<li>
    Following annotation can be used for DURATION
    <ul>
    <li>D = Days</li>
    <li>W = Weeks</li>
    <li>M = Months</li>
    <li>Y = Years</li>
    </ul>
</li>
</ol>
<br>
<br>
<br>

**Sample Code**
```python
from truedata_ws.websocket.TD import TD
from copy import deepcopy
from time import sleep

import pandas as pd
from datetime import datetime
from dateutil.relativedelta import relativedelta

from colorama import Style, Fore

username = '<enter_your_username>'
password = '<enter_your_password>'
broker_token = '<enter_your_broker>'
symbols = ['<symbol_1>', '<symbol_2>', '<symbol_3>', ...]

# ------- In this sample, we use the first of the above given symbols for historical data
symbol = symbols[0]
test_time = datetime.today()

td_obj = TD(username, password, broker_token=broker_token)

# ------- Beginning historical data test...
hist_data_1 = td_obj.get_historic_data(f'{symbol}')
hist_data_2 = td_obj.get_historic_data(f'{symbol}', duration='3 D')
hist_data_3 = td_obj.get_historic_data(f'{symbol}', duration='3 D', bar_size='15 mins')
hist_data_4 = td_obj.get_historic_data(f'{symbol}', bar_size='30 mins')
hist_data_5 = td_obj.get_historic_data(f'{symbol}', bar_size='30 mins', start_time=test_time - relativedelta(days=3))
hist_data_6 = td_obj.get_historic_data(f'{symbol}', bar_size='EOD', duration='1 M')
# Testing tick historical data
tick_hist_data_1 = td_obj.get_historic_data(f'{symbol}', bar_size='tick')
tick_hist_data_2 = td_obj.get_historic_data(f'{symbol}', bar_size='tick', duration='3 D')
tick_hist_data_3 = td_obj.get_historic_data(f'{symbol}', bar_size='tick', start_time=test_time - relativedelta(days=3))

# Printing out the results
print(f'{Style.BRIGHT}{Fore.BLUE}------------- HIST BAR DATA TEST RESULTS -------------{Style.RESET_ALL}')
print()
print(f"{Style.BRIGHT}{Fore.BLUE}HISTDATA 1...\n"
      f"\tCommand used -> hist_data_1 = td_app.get_historic_data('{symbol}')\n"
      f"\tLENGTH OF RESULT = {len(hist_data_1)}{Style.RESET_ALL}")
for hist_point in hist_data_1[-20:]:
    print(hist_point)
print()
print(f"{Style.BRIGHT}{Fore.BLUE}HISTDATA 2...\n"
      f"\tCommand used -> hist_data_2 = td_app.get_historic_data('{symbol}', duration='3 D')\n"
      f"\tLENGTH OF RESULT = {len(hist_data_2)}{Style.RESET_ALL}")
for hist_point in hist_data_2[-20:]:
    print(hist_point)
print()
print(f"{Style.BRIGHT}{Fore.BLUE}HISTDATA 3...\n"
      f"\tCommand used -> hist_data_3 = td_app.get_historic_data('{symbol}', duration='3 D', bar_size='15 mins')\n"
      f"\tLENGTH OF RESULT = {len(hist_data_3)}{Style.RESET_ALL}")
for hist_point in hist_data_3[-20:]:
    print(hist_point)
print()
print(f"{Style.BRIGHT}{Fore.BLUE}HISTDATA 4...\n"
      f"\tCommand used -> hist_data_4 = td_app.get_historic_data('{symbol}', bar_size='30 mins')\n"
      f"\tLENGTH OF RESULT = {len(hist_data_4)}{Style.RESET_ALL}")
for hist_point in hist_data_4[-20:]:
    print(hist_point)
print()
print(f"{Style.BRIGHT}{Fore.BLUE}HISTDATA 5...\n"
      f"\tCommand used -> hist_data_5 = td_app.get_historic_data('{symbol}', bar_size='30 mins', start_time=datetime({(test_time - relativedelta(days=3)).strftime('%Y, %m, %d, %H, %M, %S').replace(' 0', ' ')}))\n"
      f"\tLENGTH OF RESULT = {len(hist_data_5)}{Style.RESET_ALL}")
for hist_point in hist_data_5[-20:]:
    print(hist_point)
print()
print(f"{Style.BRIGHT}{Fore.BLUE}HISTDATA 6...\n"
      f"\tCommand used -> hist_data_6 = td_obj.get_historic_data(f'{symbol}', bar_size='EOD', duration='1 M'))\n"
      f"\tLENGTH OF RESULT = {len(hist_data_6)}{Style.RESET_ALL}")
for hist_point in hist_data_6[-20:]:
    print(hist_point)
print()
print()
print(f'{Style.BRIGHT}{Fore.BLUE}------------- HIST TICK DATA TEST RESULTS -------------{Style.RESET_ALL}')
print()
print(f"{Style.BRIGHT}{Fore.BLUE}TICKDATA 1...\n"
      f"\tCommand used -> tick_data_1 = td_app.get_historic_data('{symbol}', bar_size='tick')\n"
      f"\tLENGTH OF RESULT = {len(tick_hist_data_1)}{Style.RESET_ALL}")
for hist_point in tick_hist_data_1[-20:]:
    print(hist_point)
print()
print(f"{Style.BRIGHT}{Fore.BLUE}TICKDATA 2...\n"
      f"\tCommand used -> tick_data_2 = td_app.get_historic_data('{symbol}', bar_size='tick', duration='3 D')\n"
      f"\tLENGTH OF RESULT = {len(tick_hist_data_2)}{Style.RESET_ALL}")
for hist_point in tick_hist_data_2[-20:]:
    print(hist_point)
print()
print(f"{Style.BRIGHT}{Fore.BLUE}TICKDATA 3...\n"
      f"\tCommand used -> tick_data_3 = td_app.get_historic_data('{symbol}', bar_size='tick', start_time=datetime({(test_time - relativedelta(days=3)).strftime('%Y, %m, %d, %H, %M, %S').replace(' 0', ' ')}))\n"
      f"\tLENGTH OF RESULT = {len(tick_hist_data_3)}{Style.RESET_ALL}")
for hist_point in tick_hist_data_3[-20:]:
    print(hist_point)

# Testing conversion to pandas dataframe
print(f'{Style.BRIGHT}{Fore.BLUE}Converting HISTDATA 1 to a Pandas DataFrame{Style.RESET_ALL}')
print(f'Command used -> df = pd.DataFrame(hist_data_1)')
df = pd.DataFrame(hist_data_1)
print(df)
print(f'{Style.BRIGHT}{Fore.BLUE}Converting TICKDATA 1 to a Pandas DataFrame{Style.RESET_ALL}')
print(f'Command used -> df = pd.DataFrame(tick_hist_data_1)')
df = pd.DataFrame(tick_hist_data_1)
print(df)

# ------- Beginning live data test...
req_ids = td_obj.start_live_data(symbols)
sleep(3)  # This is here just to give the touchline data some time to populate... (Generally takes less than 1 sec)
print(f"{Style.BRIGHT}{Fore.BLUE}Here's the touchline data...{Style.RESET_ALL}")
for req_id in req_ids:
    print(td_obj.touchline_data[req_id])
print()
print(f"{Style.BRIGHT}{Fore.BLUE}Here's the LIVE stream... Use Ctrl+C to stop and exit...{Style.RESET_ALL}")
sleep(2)  # This is here just to give the user time to read the instructions...
live_data_objs = {}
for req_id in req_ids:    
    live_data_objs[req_id] = deepcopy(td_obj.live_data[req_id])
while True:
    try:
        for req_id in req_ids:
            if live_data_objs[req_id] != td_obj.live_data[req_id]:
                print(td_obj.live_data[req_id])
                live_data_objs[req_id] = deepcopy(td_obj.live_data[req_id])
    except KeyboardInterrupt:
        td_obj.stop_live_data(symbols)
        td_obj.disconnect()
        exit()
```

# Release Notes
####v0.3.11
* Refactored ```query_time``` to ```end_time``` in ```td_obj.get_historic_data()``` function.
* Refactored ```truedata_id``` to ```symbol_id``` in ```td_obj.touchline_data``` objects.
* Added ```td_obj.get_touchline()``` as an experimental feature function.
* Filled missing values in ```td_obj.live_data``` objects upon initialization.
* Added better debugging information for error reporting.
* Cleaned up the code base.
<br>
<br>
Yes, we realize the README.md is getting long and, we are actively working on cleaning up the source code and releasing it on github along with a wiki page.<br>
<br>
:D


