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Roboflow | Transfer Learning in Computer Vision | What, How, Why @Roboflow | Uploaded 3 years ago | Updated 1 hour ago
Transfer learning enables you to use what one model learned from one domain and apply it to a new domain. This enables models to train more quickly and often more accurately. In this hands on video, we breakdown what transfer learning is and how to get started.

A primer on transfer learning: blog.roboflow.com/a-primer-on-transfer-learning
Public datasets: public.roboflow.com
Roboflow: roboflow.com
Mean average precision: blog.roboflow.com/mean-average-precision

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Transfer Learning in Computer Vision | What, How, Why @Roboflow

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