Huge News!Announcing our $40M Series B led by Abstract Ventures.Learn More
Socket
Sign inDemoInstall
Socket

lrcurve

Package Overview
Dependencies
Maintainers
1
Alerts
File Explorer

Advanced tools

Socket logo

Install Socket

Detect and block malicious and high-risk dependencies

Install

lrcurve

Real-time learning curve for Jupiter notebooks

  • 2.2.1
  • PyPI
  • Socket score

Maintainers
1

lrcurve

Creates a learning-curve plot for Jupyter/Colab notebooks that is updated in real-time.

There is a framework agnostic interface lrcurve.PlotLearningCurve that works well with PyTorch and Tensorflow and a keras wrapper lrcurve.KerasLearningCurve that uses the keras callback interface.

lrcurve works with python 3.6 or newer and is distributed under the MIT license.

Gif of learning-curve

Install

pip install -U lrcurve

API

  • lrcurve.PlotLearningCurve
  • lrcurve.KerasLearningCurve

Examples

Keras example

Open In Colab

from lrcurve import KerasLearningCurve

model.compile(optimizer=keras.optimizers.Adam(),
              loss=keras.losses.SparseCategoricalCrossentropy(from_logits=True),
              metrics=[keras.metrics.SparseCategoricalAccuracy()])

model.fit(train.x, train.y,
          epochs=100,
          verbose=0,
          validation_data=(validation.x, validation.y),
          callbacks=[KerasLearningCurve()])

Gif of learning-curve for keras example

Framework agnostic example

Open In Colab

with PlotLearningCurve() as plot:
    for i in range(100):
        plot.append(i, {
            'loss': math.exp(-(i+1)/10),
            'val_loss': math.exp(-i/10)
        })
        plot.draw()
        time.sleep(0.1)

Gif of learning-curve for simple example

PyTorch example

Open In Colab

from lrcurve import PlotLearningCurve

plot = PlotLearningCurve(
    mappings = {
        'loss': { 'line': 'train', 'facet': 'loss' },
        'val_loss': { 'line': 'validation', 'facet': 'loss' },
        'acc': { 'line': 'train', 'facet': 'acc' },
        'val_acc': { 'line': 'validation', 'facet': 'acc' }
    },
    facet_config = {
        'loss': { 'name': 'Cross-Entropy', 'limit': [0, None], 'scale': 'linear' },
        'acc': { 'name': 'Accuracy', 'limit': [0, 1], 'scale': 'linear' }
    },
    xaxis_config = { 'name': 'Epoch', 'limit': [0, 500] }
)

with plot:
    # optimize model
    for epoch in range(500):
        # compute loss
        z_test = network(x_test)
        loss_test = criterion(z_test, y_test)

        optimizer.zero_grad()
        z_train = network(x_train)
        loss_train = criterion(z_train, y_train)
        loss_train.backward()
        optimizer.step()

        # compute accuacy
        accuacy_test = sklearn.metrics.accuracy_score(torch.argmax(z_test, 1).numpy(), y_test)
        accuacy_train = sklearn.metrics.accuracy_score(torch.argmax(z_train, 1).numpy(), y_train)

        # append and update
        plot.append(epoch, {
            'loss': loss_train,
            'val_loss': loss_test,
            'acc': accuacy_train,
            'val_acc': accuacy_test
        })
        plot.draw()

Gif of learning-curve for pytorch example

Sponsor

Sponsored by NearForm Research.

Keywords

FAQs


Did you know?

Socket

Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.

Install

Related posts

SocketSocket SOC 2 Logo

Product

  • Package Alerts
  • Integrations
  • Docs
  • Pricing
  • FAQ
  • Roadmap
  • Changelog

Packages

npm

Stay in touch

Get open source security insights delivered straight into your inbox.


  • Terms
  • Privacy
  • Security

Made with ⚡️ by Socket Inc