aipoweredsearch.com/affiliate-program

Preview meta tags from the aipoweredsearch.com website.

Linked Hostnames

19

Thumbnail

Search Engine Appearance

Google

https://aipoweredsearch.com/affiliate-program

AI-Powered Search

Build search engines powered by the latest machine learning techniques and large language models.</b> AI-Powered Search</i> shows you how to build cutting-edge search engines that continuously learn from both your users and your content and drive more domain-aware and intelligent search. Inside you’ll learn modern, data-science-driven search techniques like: Semantic search using dense vector embeddings from foundation models</li> Retrieval augmented generation</li> Question answering and summarization combining search and LLMs</li> Fine-tuning transformer-based LLMs</li> Personalized search based on user signals and vector embeddings</li> Collecting user behavioral signals and building signals boosting models</li> Semantic knowledge graphs for domain-specific learning</li> Implementing machine-learned ranking models (learning to rank)</li> Building click models to automate machine-learned ranking</li> Generative search, hybrid search, and the search frontier</li> </ul> Today’s search engines are expected to be smart, understanding the nuances of natural language queries, as well as each user’s preferences and context. This book empowers you to build search engines that take advantage of user interactions and the hidden semantic relationships in your content to automatically deliver better, more relevant search experiences. You’ll even learn how to integrate large language models (LLMs) like GPT and other foundation models to massively accelerate the capabilities of your search technology.



Bing

AI-Powered Search

https://aipoweredsearch.com/affiliate-program

Build search engines powered by the latest machine learning techniques and large language models.</b> AI-Powered Search</i> shows you how to build cutting-edge search engines that continuously learn from both your users and your content and drive more domain-aware and intelligent search. Inside you’ll learn modern, data-science-driven search techniques like: Semantic search using dense vector embeddings from foundation models</li> Retrieval augmented generation</li> Question answering and summarization combining search and LLMs</li> Fine-tuning transformer-based LLMs</li> Personalized search based on user signals and vector embeddings</li> Collecting user behavioral signals and building signals boosting models</li> Semantic knowledge graphs for domain-specific learning</li> Implementing machine-learned ranking models (learning to rank)</li> Building click models to automate machine-learned ranking</li> Generative search, hybrid search, and the search frontier</li> </ul> Today’s search engines are expected to be smart, understanding the nuances of natural language queries, as well as each user’s preferences and context. This book empowers you to build search engines that take advantage of user interactions and the hidden semantic relationships in your content to automatically deliver better, more relevant search experiences. You’ll even learn how to integrate large language models (LLMs) like GPT and other foundation models to massively accelerate the capabilities of your search technology.



DuckDuckGo

https://aipoweredsearch.com/affiliate-program

AI-Powered Search

Build search engines powered by the latest machine learning techniques and large language models.</b> AI-Powered Search</i> shows you how to build cutting-edge search engines that continuously learn from both your users and your content and drive more domain-aware and intelligent search. Inside you’ll learn modern, data-science-driven search techniques like: Semantic search using dense vector embeddings from foundation models</li> Retrieval augmented generation</li> Question answering and summarization combining search and LLMs</li> Fine-tuning transformer-based LLMs</li> Personalized search based on user signals and vector embeddings</li> Collecting user behavioral signals and building signals boosting models</li> Semantic knowledge graphs for domain-specific learning</li> Implementing machine-learned ranking models (learning to rank)</li> Building click models to automate machine-learned ranking</li> Generative search, hybrid search, and the search frontier</li> </ul> Today’s search engines are expected to be smart, understanding the nuances of natural language queries, as well as each user’s preferences and context. This book empowers you to build search engines that take advantage of user interactions and the hidden semantic relationships in your content to automatically deliver better, more relevant search experiences. You’ll even learn how to integrate large language models (LLMs) like GPT and other foundation models to massively accelerate the capabilities of your search technology.

  • General Meta Tags

    14
    • title
      AI-Powered Search
    • theme-color
      #333333
    • Content-Type
      text/html; charset=UTF-8
    • X-UA-Compatible
      IE=edge
    • viewport
      width=device-width, initial-scale=1, maximum-scale=1, user-scalable=0
  • Open Graph Meta Tags

    8
    • og:title
      AI-Powered Search
    • og:type
      website
    • og:url
      https://www.manning.com/books/ai-powered-search
    • og:site_name
      Manning Publications
    • US country flagog:locale
      en_US
  • Twitter Meta Tags

    5
    • twitter:title
      AI-Powered Search
    • twitter:site
      @manningbooks
    • twitter:card
      summary_large_image
    • twitter:description
      Build search engines powered by the latest machine learning techniques and large language models.</b> AI-Powered Search</i> shows you how to build cutting-edge search engines that continuously learn from both your users and your content and drive more domain-aware and intelligent search. Inside you’ll learn modern, data-science-driven search techniques like: Semantic search using dense vector embeddings from foundation models</li> Retrieval augmented generation</li> Question answering and summarization combining search and LLMs</li> Fine-tuning transformer-based LLMs</li> Personalized search based on user signals and vector embeddings</li> Collecting user behavioral signals and building signals boosting models</li> Semantic knowledge graphs for domain-specific learning</li> Implementing machine-learned ranking models (learning to rank)</li> Building click models to automate machine-learned ranking</li> Generative search, hybrid search, and the search frontier</li> </ul> Today’s search engines are expected to be smart, understanding the nuances of natural language queries, as well as each user’s preferences and context. This book empowers you to build search engines that take advantage of user interactions and the hidden semantic relationships in your content to automatically deliver better, more relevant search experiences. You’ll even learn how to integrate large language models (LLMs) like GPT and other foundation models to massively accelerate the capabilities of your search technology.
    • twitter:image
      https://s3.us-west-2.amazonaws.com/social-images.manning.com/graingert/twitter.png
  • Link Tags

    19
    • apple-touch-icon
      https://images.manning.com/152/152/crop/book/0/06f77d9-4d90-4c9e-a316-460c24b48fd2/Grainger-AI-MEAP-HI.png
    • apple-touch-icon
      https://images.manning.com/57/57/crop/book/0/06f77d9-4d90-4c9e-a316-460c24b48fd2/Grainger-AI-MEAP-HI.png
    • apple-touch-icon
      https://images.manning.com/60/60/crop/book/0/06f77d9-4d90-4c9e-a316-460c24b48fd2/Grainger-AI-MEAP-HI.png
    • apple-touch-icon
      https://images.manning.com/72/72/crop/book/0/06f77d9-4d90-4c9e-a316-460c24b48fd2/Grainger-AI-MEAP-HI.png
    • apple-touch-icon
      https://images.manning.com/76/76/crop/book/0/06f77d9-4d90-4c9e-a316-460c24b48fd2/Grainger-AI-MEAP-HI.png

Links

89