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Building an Image Similarity Search using Spotify Annoy, PyTorch & Machine Learning

3 4月, 2023 | 10:35 上午 - 11:30 上午 (UTC) 國際標準時間

Location: Stockholm

位址: Regeringsgatan 59 111 57 Stockholm Sweden c / o Epicenter

  • 格式:
  • alt##In person實體活動 (Stockholm)
  • alt##Livestream線上直播

主題: 資料科學與機器學習

語言: 英文

What is this session about?

Spotify Annoy (approximate nearest neighbor Oh Yeah!) is an open-source algorithm used by Spotify for identifying similar sounding songs for recommendations to users. Spotify Annoy can also be used to create a search index for similar images, which has many real-world implementations including recommending products in on-line stores. Azure Machine Learning provides a fully-featured platform allowing data scientists, developers and teams to collaborate in the rapid development and deployment of machine learning solutions.

Why should you attend?

In this demo intensive session Alan will run through the process of creating an image similarity search API hosted in Azure ML. Starting with the creation of an image dataset he will create an Azure ML experiment to use a pre-trained PyTorch model to create an approximate nearest neighbor index using Spotify Annoy. He will then create an endpoint in Azure ML that return images that are similar to a target image. Throughout the process he will explain the theory of using PyTorch and Spotify Annoy and how the features of Azure ML Studio can be leveraged for the rapid cloud-based development of machine learning solutions.

演講者

本頁面的一部分可能是機器翻譯或人工智能翻譯的.