paperspace gradient
Published Mar 24, 2021 • 1 min read
SUMMARY

This post announces and links the recording for a joint Roboflow and Paperspace webinar that walks through training a Detectron2 object detection model on a blood cell count dataset. The session covers accessing public image datasets through Roboflow, applying preprocessing and augmentation, and running GPU-backed training notebooks on Paperspace Gradient, giving attendees a practical end-to-end path from raw data to a trained Detectron2 model.

Missed the event or looking for the recording? Check out the Roboflow + Paperspace Detectron2 webinar recording here and notebook here!

Tomorrow, Roboflow and Paperspace are co-hosting a webinar teaching you how to build a Detectron2 model with our tools. Roboflow gives you "everything you need to start building computer vision into your applications." Paperspace is "the cloud platform built for the future." We'll show you how to seamlessly use these together.

Register for tomorrow's Detectron2 webinar here.

This Thursday, March 25 at 1:00pm Eastern time, we'll have Jacob Solawetz (ML Engineer for Roboflow) and Rachel Rapp (ML Engineer and Developer Advocate for Paperspace) walk through building a Detectron object detection model on the blood cell count dataset.

By the end of the webinar, you'll know:

If you'd like to follow along, make sure you register for the webinar and create Roboflow and Paperspace accounts ahead of time.

Looking forward to seeing you tomorrow at 1pm Eastern time!


Want to check out other Roboflow x Paperspace collaborations?

Cite this Post

Use the following entry to cite this post in your research:

Matt Brems. (Mar 24, 2021). Webinar: How to Build a Detectron2 Model with Roboflow and Paperspace Gradient. Roboflow Blog: https://blog.roboflow.com/webinar-how-to-build-detectron-model-roboflow-paperspace-gradient-gpu/

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Written by

Matt Brems
Growth Manager @ Roboflow. Previously solved data science problems across finance, education, politics, and more. Passionate about teaching and empowering others to accomplish more.

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