Skip to content

Commit

Permalink
Merge pull request #600 from autonomio/further_improve_readme
Browse files Browse the repository at this point in the history
few small changes to README.md
  • Loading branch information
mikkokotila committed Apr 22, 2024
2 parents 2477bc2 + 715d2b6 commit 9cbbc42
Show file tree
Hide file tree
Showing 2 changed files with 4 additions and 18 deletions.
20 changes: 3 additions & 17 deletions README.md
Expand Up @@ -4,19 +4,7 @@
<br>
</h1>

<h3 align="center">Hyperparameter Optimization for TensorFlow and Keras</h3>

<p align="center">

<a href="https://travis-ci.org/autonomio/talos">
<img src="https://img.shields.io/travis/autonomio/talos/master.svg?style=for-the-badge&logo=appveyor" alt="Talos Travis">
</a>

<a href="https://coveralls.io/github/autonomio/talos">
<img src="https://img.shields.io/coveralls/github/autonomio/talos.svg?style=for-the-badge&logo=appveyor" alt="Talos Coveralls">
</a>

</p>
<h3 align="center">Bullet-Proof Hyperparameter Experiments with TensorFlow and Keras</h3>

<p align="center">
<a href="#talos">Talos</a> •
Expand Down Expand Up @@ -51,13 +39,11 @@ TL;DR Thousands of researchers have found Talos to importantly improve ordinary

Talos is made for researchers, data scientists, and data engineers that want to remain in **complete control of their TensorFlow (tf.keras) and Keras models**, but are tired of mindless parameter hopping and confusing optimization solutions that add complexity instead of reducing it.

**Within minutes, without learning any new syntax,** Talos allows you to configure, perform, and evaluate hyperparameter experiments that yield state-of-the-art results across a wide range of prediction tasks. Talos provides the **simplest and yet most powerful** available method for hyperparameter optimization with TensorFlow (tf.keras) and Keras.

<hr>

### :wrench: Key Features

Based on what no doubt constitutes a "biased" review (being our own) of more than ~30 hyperparameter tuning and optimization solutions, Talos comes on top in terms of intuitive, easy-to-learn, highly permissive access to critical hyperparameter experimentation capabilities. Key features include:
**Within minutes, without learning any new syntax,** Talos allows you to configure, perform, and evaluate hyperparameter experiments that yield state-of-the-art results across a wide range of prediction tasks. Talos provides the **simplest and yet most powerful** available method for hyperparameter optimization with TensorFlow (tf.keras) and Keras. Key features include:

- Single-line optimize-to-predict pipeline `talos.Scan(x, y, model, params).predict(x_test, y_test)`
- Automated hyperparameter optimization
Expand All @@ -83,7 +69,7 @@ Get the below code [here](https://gist.github.com/mikkokotila/4c0d6298ff0a22dc56

<img src=https://i.ibb.co/VWd8Bhm/Screen-Shot-2019-01-06-at-11-26-32-PM.png>

The *Simple* example below is more than enough for starting to use Talos with any Keras model. *Field Report* has +2,600 claps on Medium because it's more entertaining.
The *Simple* example below is more than enough for starting to use Talos with any Keras model. *Field Report* has +4,400 claps on Medium because it's more entertaining.

[Simple](https://nbviewer.jupyter.org/github/autonomio/talos/blob/master/examples/A%20Very%20Short%20Introduction%20to%20Hyperparameter%20Optimization%20of%20Keras%20Models%20with%20Talos.ipynb) [1-2 mins]

Expand Down
2 changes: 1 addition & 1 deletion tests/commands/test_templates.py
Expand Up @@ -40,7 +40,7 @@ def test_templates():
x, y = talos.templates.datasets.cervical_cancer()
x, y = talos.templates.datasets.titanic()

talos.templates.pipelines.breast_cancer(random_method='quantum')
talos.templates.pipelines.breast_cancer(random_method='uniform_mersenne')
talos.templates.pipelines.cervical_cancer(random_method='sobol')
talos.templates.pipelines.iris(random_method='uniform_crypto')
talos.templates.pipelines.titanic(random_method='korobov_matrix')
Expand Down

0 comments on commit 9cbbc42

Please sign in to comment.