101 ways to solve neural search with Jina
About the speaker: Pratik is an open-source NLP engineer passionate about search engines. He enjoys discussing practical solutions and writing on medium and substack. You can find more about him at www.pratik.ai
Abstract: Search is one of the most used applications of NLP and has evolved tremendously with time. In this talk, we will discuss different ways to build neural search and touch on the below topics:
- What is neural search?
- Anatomy of neural search
- Making neural search from scratch
- Intro to Jina
- Tenets of Jina
- Jina adapters
- Neural search use cases for text, audio and video
Neural search at scale
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Website: https://dair.ai/
GitHub: https://github.com/dair-ai
Twitter: https://twitter.com/dair_ai
Newsletter: https://dair.ai/newsletter/
Slack: https://join.slack.com/t/dairai/shared_invite/zt-jg9gef0k-dQ9~6wl0w5AaVFmd3QU1Ow
Видео 101 ways to solve neural search with Jina канала Elvis Saravia
Abstract: Search is one of the most used applications of NLP and has evolved tremendously with time. In this talk, we will discuss different ways to build neural search and touch on the below topics:
- What is neural search?
- Anatomy of neural search
- Making neural search from scratch
- Intro to Jina
- Tenets of Jina
- Jina adapters
- Neural search use cases for text, audio and video
Neural search at scale
----
Website: https://dair.ai/
GitHub: https://github.com/dair-ai
Twitter: https://twitter.com/dair_ai
Newsletter: https://dair.ai/newsletter/
Slack: https://join.slack.com/t/dairai/shared_invite/zt-jg9gef0k-dQ9~6wl0w5AaVFmd3QU1Ow
Видео 101 ways to solve neural search with Jina канала Elvis Saravia
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