About

​JAX is a Python library designed for high-performance numerical computing and machine learning research. It offers a NumPy-like API, facilitating seamless adoption for those familiar with NumPy. Key features of JAX include automatic differentiation, just-in-time compilation, vectorization, and parallelization, all optimized for execution on CPUs, GPUs, and TPUs. These capabilities enable efficient computation for complex mathematical functions and large-scale machine-learning models. JAX also integrates with various libraries within its ecosystem, such as Flax for neural networks and Optax for optimization tasks. Comprehensive documentation, including tutorials and user guides, is available to assist users in leveraging JAX's full potential. ​

About

Fast and versatile, the NumPy vectorization, indexing, and broadcasting concepts are the de-facto standards of array computing today. NumPy offers comprehensive mathematical functions, random number generators, linear algebra routines, Fourier transforms, and more. NumPy supports a wide range of hardware and computing platforms, and plays well with distributed, GPU, and sparse array libraries. The core of NumPy is well-optimized C code. Enjoy the flexibility of Python with the speed of compiled code. NumPy’s high level syntax makes it accessible and productive for programmers from any background or experience level. NumPy brings the computational power of languages like C and Fortran to Python, a language much easier to learn and use. With this power comes simplicity: a solution in NumPy is often clear and elegant.

About

Transition seamlessly between eager and graph modes with TorchScript, and accelerate the path to production with TorchServe. Scalable distributed training and performance optimization in research and production is enabled by the torch-distributed backend. A rich ecosystem of tools and libraries extends PyTorch and supports development in computer vision, NLP and more. PyTorch is well supported on major cloud platforms, providing frictionless development and easy scaling. Select your preferences and run the install command. Stable represents the most currently tested and supported version of PyTorch. This should be suitable for many users. Preview is available if you want the latest, not fully tested and supported, 1.10 builds that are generated nightly. Please ensure that you have met the prerequisites (e.g., numpy), depending on your package manager. Anaconda is our recommended package manager since it installs all dependencies.

About

The Universal Sentence Encoder (USE) encodes text into high-dimensional vectors that can be utilized for tasks such as text classification, semantic similarity, and clustering. It offers two model variants: one based on the Transformer architecture and another on Deep Averaging Network (DAN), allowing a balance between accuracy and computational efficiency. The Transformer-based model captures context-sensitive embeddings by processing the entire input sequence simultaneously, while the DAN-based model computes embeddings by averaging word embeddings, followed by a feedforward neural network. These embeddings facilitate efficient semantic similarity calculations and enhance performance on downstream tasks with minimal supervised training data. The USE is accessible via TensorFlow Hub, enabling seamless integration into various applications.

Platforms Supported

Windows
Mac
Linux
Cloud
On-Premises
iPhone
iPad
Android
Chromebook

Platforms Supported

Windows
Mac
Linux
Cloud
On-Premises
iPhone
iPad
Android
Chromebook

Platforms Supported

Windows
Mac
Linux
Cloud
On-Premises
iPhone
iPad
Android
Chromebook

Platforms Supported

Windows
Mac
Linux
Cloud
On-Premises
iPhone
iPad
Android
Chromebook

Audience

Professional researchers and developers searching for a solution to manage their numerical computing and machine learning operations in Python

Audience

Component Library solution for DevOps teams

Audience

Researchers in need of an open source machine learning solution to accelerate research prototyping and production deployment

Audience

Data scientists and machine learning engineers seeking a tool to optimize their natural language processing models with robust sentence embeddings

Support

Phone Support
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Support

Phone Support
24/7 Live Support
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Support

Phone Support
24/7 Live Support
Online

Support

Phone Support
24/7 Live Support
Online

API

Offers API

API

Offers API

API

Offers API

API

Offers API

Screenshots and Videos

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Screenshots and Videos

Screenshots and Videos

Pricing

No information available.
Free Version
Free Trial

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Free
Free Version
Free Trial

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Free Version
Free Trial

Pricing

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Free Version
Free Trial

Reviews/Ratings

Overall 0.0 / 5
ease 0.0 / 5
features 0.0 / 5
design 0.0 / 5
support 0.0 / 5

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Reviews/Ratings

Overall 5.0 / 5
ease 5.0 / 5
features 5.0 / 5
design 5.0 / 5
support 5.0 / 5

Reviews/Ratings

Overall 5.0 / 5
ease 1.0 / 5
features 5.0 / 5
design 5.0 / 5
support 5.0 / 5

Reviews/Ratings

Overall 0.0 / 5
ease 0.0 / 5
features 0.0 / 5
design 0.0 / 5
support 0.0 / 5

This software hasn't been reviewed yet. Be the first to provide a review:

Review this Software

Training

Documentation
Webinars
Live Online
In Person

Training

Documentation
Webinars
Live Online
In Person

Training

Documentation
Webinars
Live Online
In Person

Training

Documentation
Webinars
Live Online
In Person

Company Information

JAX
United States
docs.jax.dev/en/latest/

Company Information

NumPy
numpy.org

Company Information

PyTorch
Founded: 2016
pytorch.org

Company Information

Tensorflow
Founded: 2015
United States
www.tensorflow.org/hub/tutorials/semantic_similarity_with_tf_hub_universal_encoder

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Categories

Categories

Categories

Categories

Integrations

Amazon EC2 Trn2 Instances
Avanzai
Daft
Dataoorts GPU Cloud
Fabric for Deep Learning (FfDL)
Flower
GPUonCLOUD
Gradient
IREN Cloud
Label Studio
Modelbit
Runyour AI
Skyportal
VLLM
Yandex Data Proc
Yandex DataSphere
ZenML
Zepl
voyage-3-large

Integrations

Amazon EC2 Trn2 Instances
Avanzai
Daft
Dataoorts GPU Cloud
Fabric for Deep Learning (FfDL)
Flower
GPUonCLOUD
Gradient
IREN Cloud
Label Studio
Modelbit
Runyour AI
Skyportal
VLLM
Yandex Data Proc
Yandex DataSphere
ZenML
Zepl
voyage-3-large

Integrations

Amazon EC2 Trn2 Instances
Avanzai
Daft
Dataoorts GPU Cloud
Fabric for Deep Learning (FfDL)
Flower
GPUonCLOUD
Gradient
IREN Cloud
Label Studio
Modelbit
Runyour AI
Skyportal
VLLM
Yandex Data Proc
Yandex DataSphere
ZenML
Zepl
voyage-3-large

Integrations

Amazon EC2 Trn2 Instances
Avanzai
Daft
Dataoorts GPU Cloud
Fabric for Deep Learning (FfDL)
Flower
GPUonCLOUD
Gradient
IREN Cloud
Label Studio
Modelbit
Runyour AI
Skyportal
VLLM
Yandex Data Proc
Yandex DataSphere
ZenML
Zepl
voyage-3-large
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