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Northern Lights Deep Learning Conference

Northern Lights Deep Learning Conference

Tuesday 9th January 2024 - Thursday 11th January 2024
  • Machine Learning
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Tuesday 9th January 2024 - Thursday 11th January 2024
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UiT The Arctic University of Norway

Northern Lights Deep Learning Conference

Deep learning, a rapidly advancing subset of machine learning, has demonstrated outstanding performance in various domains such as image classification, object detection, segmentation, time series prediction, and speech recognition. We will be attending the Northern Lights Deep Learning Conference, which aims to bring together researchers, fostering idea exchange, promoting collaborations and showcasing the latest advancements in research.

Interested in attending?

Places are extremely limited and we expect a high number of registrations for the event. Please be sure to apply early.

When & Where

Date:
Tuesday, 9 Jan – Thursday, 11 Jan 2024

Location:
UiT The Arctic University of Norway

Interested in a Graduate Opportunity at G-Research?

We typically launch our graduate positions in August. You can view all of our current roles – including internships and placement years – via the link below.

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