Skip to main content

Download data using pandas with multi-threading and multi-processing.

Project description

Concurrent-Pandas
=================


Concurrent Pandas
-------------

**Concurrent Pandas** is a Python Library that allows you to use Pandas and / or Quandl to concurrently download bulk data using threads or processes. What does concurrency do for you? Download your data simultaneously instead of one key at a time, Concurrent Pandas automatically spawns an optimal number of processes or threads based on the number of processes available on your machine.

Note: Concurrent Pandas is not associated with Quandl or Python Pandas, it just allows you to access them faster.

---
####Features

- **Working in Python 2 and 3**
- **Sequential Downloading of Keys**
- **Concurrent downloading of keys using thread or process pools**
- **All Concurrent Downloading will automatically pick an optimal number of threads or processes to use for your system**
- **Recursive data structure unpacking for key insertion**
- Pass one or many:
- Lists
- Sets
- Deques
- Any other data structures that inherit from abstract base class *Container* provided it is not also inheriting from Python *basestring* and it allows for iteration.
- **Automatic re-attempts if the download fails or times out**
- Retries increase the time to try again with each successive failure
- **Variety of data sources supported**
- Quandl
- Federal Reserve Economic Data
- Google Finance
- Yahoo Finance
- More coming soon!
- **Data is returned in a hashmap for fast lookups** ( *O(1) average case* )
- Hash Map Keys are the strings entered for lookup, buckets contain your Panda data frame


---
####Easy to use
```
# Define your keys
yahoo_keys = ["aapl", "xom", "msft", "goog", "brk-b", "TSLA", "IRBT"]
# Instantiate Concurrent Pandas
fast_panda = concurrentpandas.ConcurrentPandas()
# Set your data source
fast_panda.set_source_yahoo_finance()
# Insert your keys
fast_panda.insert_keys(yahoo_keys)
# Choose either asynchronous threads, processes, or a single sequential download
fast_panda.consume_keys_asynchronous_threads()
# The Concurrent Pandas object contains a dict of your results now
mymap = fast_panda.return_map()
# Easily pull the data out of the map for your research
print(mymap["aapl"].head)
```

---
#####Installation Instructions

Note : only tested on Linux

To install execute:

```
pip install ConcurrentPandas
```


---
#####Updates

New in 0.1.2
Ability to interact with stock options

Now requires BeautifulSoup4, and Pandas 0.16 or newer.

---
#####Misc

Tested on Python 2.7.6 and Python 3.4.0

To see what else I'm building or follow / contact me check out my [github][1], [twitter][3], and my [personal site][2].

[1]: https://github.com/briwilcox
[2]: http://brianmwilcox.com/
[3]: https://twitter.com/brian_m_wilcox


Authors
==============
- Brian Wilcox

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

ConcurrentPandas-0.1.2.tar.gz (10.3 kB view hashes)

Uploaded Source

Built Distribution

ConcurrentPandas-0.1.2-py2.py3-none-any.whl (17.5 kB view hashes)

Uploaded Python 2 Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page