Numerox is a Numerai tournament toolbox written in Python
Project description
Numerox is a Numerai tournament toolbox written in Python.
All you have to do is create a model. Take a look at model.py for examples.
Once you have a model numerox will do the rest. First download the Numerai dataset and then load it:
>>> import numerox as nx >>> nx.download('numerai_dataset.zip') >>> data = nx.load_zip('numerai_dataset.zip') >>> data rows 637184 era 133, [era1, eraX] x 50, min 0.0000, mean 0.5025, max 1.0000 y mean 0.499924, fraction missing 0.3095
Let’s use the logistic regression model in numerox to run 5-fold cross validation on the training data:
>>> model = nx.logistic() >>> prediction = nx.backtest(model, data, verbosity=1) logistic(inverse_l2=0.0001) logloss auc acc ystd stats mean 0.692885 0.5165 0.5116 0.0056 region train std 0.000536 0.0281 0.0215 0.0003 eras 120 min 0.691360 0.4478 0.4540 0.0050 sharpe 0.488866 max 0.694202 0.5944 0.5636 0.0061 consis 0.691667
OK, results are good enough for a demo so let’s make a submission file for the tournament. We will fit the model on the train data and make our predictions for the tournament data:
>>> prediction = nx.production(model, data, verbosity=1) logistic(inverse_l2=0.0001) logloss auc acc ystd stats mean 0.692808 0.5194 0.5142 0.0063 region validation std 0.000375 0.0168 0.0137 0.0001 eras 12 min 0.691961 0.4903 0.4925 0.0062 sharpe 0.903277 max 0.693460 0.5553 0.5342 0.0064 consis 0.916667
Let’s upload our predictions to enter the tournament:
>>> prediction.to_csv('logistic.csv') # 6 decimal places by default >>> upload_id, status = nx.upload('logistic.csv', public_id, secret_key) metric value minutes concordance True 0.0898 consistency 91.6667 0.0898 originality False 0.1783 validation_logloss 0.6928 0.1783 controlling capital False 0.1783
Examples
Have a look at the examples.
Install
Install with pip:
$ pip install numerox
After you have installed numerox, run the unit tests (please report any failures):
>>> import numerox as nx >>> nx.test()
Requirements: python, setuptools, numpy, pandas, pytables, sklearn, numerapi, requests, nose.
Resources
Let’s chat
See examples
Check what’s new
Report bugs
Sponsor
Thank you Numerai for funding the development of Numerox.
License
Numerox is distributed under the the GPL v3+. See LICENSE file for details. Where indicated by code comments parts of NumPy and SciPy are included in numerox. Their licenses appear in the licenses directory.
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
File details
Details for the file numerox-0.7.0.tar.gz
.
File metadata
- Download URL: numerox-0.7.0.tar.gz
- Upload date:
- Size: 3.0 MB
- Tags: Source
- Uploaded using Trusted Publishing? No
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 19b44116c859a096503e72ad23da97a420dbeffe86915b2eef61c913ac11b040 |
|
MD5 | 89554c8afffa2e80723dd1be5c53d2ee |
|
BLAKE2b-256 | 7ce322e8533dda3690a975d9ef3bf29128e1db93d22e61cc2799111a141644d4 |