PlaidML

Unlock high-performance hardware with PlaidML. Framework supports TensorFlow, PyTorch, Keras and more. Improve ML models with increased performance, reduced power and cost.

PlaidML

PlaidML is a machine learning framework that allows developers to unlock high-performance hardware for their machine learning models. It is designed to be easy to use and highly efficient, offering developers a simple way to harness the power of GPUs, TPUs, and other specialized devices. PlaidML supports a wide range of popular frameworks, including TensorFlow, PyTorch, and Keras, so developers can quickly and easily develop and deploy their models across different hardware platforms. With PlaidML, developers can achieve higher performance on their machine learning models while also reducing their power consumption and cost. PlaidML also has a comprehensive set of tools and APIs to simplify development and deployment, making it easier for developers to bring their projects to life. With PlaidML, developers can unlock the potential of their hardware and create powerful, high-performance machine learning models.

Promoted
Scribe

Scribe

Turn any process into a step-by-step guide, instantly.

Promoted
AI Cover Letter Generator

AI Cover Letter Generator

Create a cover letter in seconds using AI

Cmd J

Cmd J

Use ChatGPT on any tab without the hassle of copy-pasting.
AgendaAI by Charma

AgendaAI by Charma

Boost productivity with AgendaAI by Charma, an AI-powered tool that quickly creates meeting
TextMagic

TextMagic

Optimize your customer engagement with TextMagic's powerful features: bulk messaging, custom
Aeneas

Aeneas

Create multimedia ebooks quickly and easily with Aeneas – automated audio-to-text synchroniz
Neuromation

Neuromation

Revolutionize AI development with Neuromation. Generate data pipelines and train/deploy mode
Databricks

Databricks

Databricks offers a powerful cloud-based platform to easily transform large datasets into ac
Browse all AI Websites

Daily AI Educational Newsletter on Whatsapp

Start Free Trial