5G Investment News
  • Top News
  • Economy
  • Forex
  • Investing
  • Stock
  • Editor’s Pick
No Result
View All Result
5G Investment News
  • Top News
  • Economy
  • Forex
  • Investing
  • Stock
  • Editor’s Pick
No Result
View All Result
5G Investment News
No Result
View All Result
Home Stock

Shifting towards smarter search technology on websites

by
August 28, 2024
in Stock
0
Shifting towards smarter search technology on websites

VECTOR search understands the context and meaning behind queries, allowing it to retrieve more relevant results for users’ vague searches.

This growth reflects the growing reliance on the internet for various activities and information-seeking purposes. The increasing number of internet users in the Philippines underscores the importance of adapting to the digital age and addressing potential challenges that come when searching for things.

Nearly 90% of users will not return to a site if they have a bad experience. Take a moment to appreciate that staggering statistic. Site reliability engineers are traditionally focused on the “five 9s,” ensuring a website remains up and accessible 99.999% of the time. Yet, that is only a part of the picture guaranteeing a positive user experience. What else can cause a user to click away from a site and never return?

Not being able to discover what they were looking for.

The frustration of trying to search for something and being unable to find it quickly and efficiently may be one of a user’s most disappointing experiences. You want to build a site where that rarely happens. However, users make it very hard. Oftentimes, they do not know exactly what they are looking for. They have a picture in their mind of what they want but lack the precise terms, and their search ends up being submitted with keywords such as: “the thing that tightens screws.” A human respondent to that search will return an index of screwdrivers. What will your keyword-based search return? Articles about tightening techniques, blog posts on different types of screws and tools that have nothing to do with screwdrivers.

This example happens all the time, every single day, countless times a day.

Facing this dilemma requires a new resource to improve the user experience and bring clarity even when users lack it. Vector search offers possibilities that are not feasible with traditional keyword search alone.

HOW VECTOR SEARCH WORKSVector search is a machine learning method that transforms textual data into high-dimensional vectors, capturing semantic relationships between words and phrases. It differs from traditional keyword-based search, which relies on exact matches, by understanding the context and meaning behind queries. This approach enhances the accuracy and relevance of search results, making it a powerful tool for modern information retrieval systems. Vector search interprets the meaning behind queries, identifying relevant documents with related terms. This makes it an invaluable tool for improving user experience by providing precise and accurate search results in response to imprecise or descriptive queries.

Here’s a simple vector search example: -0.024047505110502243.

The process of embedding involves converting textual data into numerical representations, such as vectors, to capture the meaning of words and phrases. This allows models to measure similarity between terms based on their usage and context in large datasets. This transformation leads to more nuanced and context-aware search functionalities, potentially advancing information retrieval and artificial intelligence (AI). For example, a dataset containing the string “Your text string goes here” can be converted into vectors by assigning numerical values to each word, allowing better understanding of relationships and similarities.

These vectors represent the semantic meaning of the words and allow the search functionality to understand and retrieve relevant information based on context rather than just exact keyword matches.

The search engine converts user queries into vector representations using a simple dataset, comparing them with the dataset’s vectors. The vector search identifies that the query’s context and semantics are similar to “Your text string goes here,” allowing the engine to return the most relevant result based on the similarity of the vectors. This process transforms uncertain and unclear user queries into more certainty and clarity.

HOW TO STORE AND RETRIEVE VECTOR EMBEDDINGSVector search is a crucial tool for websites that require quick and cost-effective storage and retrieval of vector embeddings. As a site’s data grows, so do the vector embeddings, making any solution highly scalable. A generic database solution is not suitable for vector search needs, as it must be specialized to handle high-dimensional embeddings efficiently, support rapid similarity searches, and optimize storage for large volumes of vectors. This ensures the search system remains performant and responsive, providing relevant results in real-time even as data scales. A vector search database solution should offer advanced indexing capabilities, support multiple data types, and integrate with popular AI frameworks and embedding generation tools. Additionally, it should provide a quality search experience in offline environments, known as delivering computing “on the edge.” Integrating vector search into a site can improve user experience and ensure repeat visits.

Genie Yuan is the regional vice-president for APAC Japan, Couchbase.

Previous Post

Are financial advisers in demand?

Next Post

Government corporations’ excess funds, rising interest payments, and the NGRP

Next Post
Government corporations’ excess funds, rising interest payments, and the NGRP

Government corporations’ excess funds, rising interest payments, and the NGRP

Enter Your Information Below To Receive Free Trading Ideas, Latest News And Articles.







    Fill Out & Get More Relevant News





    Stay ahead of the market and unlock exclusive trading insights & timely news. We value your privacy - your information is secure, and you can unsubscribe anytime. Gain an edge with hand-picked trading opportunities, stay informed with market-moving updates, and learn from expert tips & strategies.
    Your information is secure and your privacy is protected. By opting in you agree to receive emails from us. Remember that you can opt-out any time, we hate spam too!

    Recommended

    Explore franchise businesses at Franchise Negosyo Para sa Region XI (Davao)

    Explore franchise businesses at Franchise Negosyo Para sa Region XI (Davao)

    July 4, 2025
    Wimbledon winners to pay up to £1.3m in tax as HMRC claims £17m from prize pot

    Wimbledon winners to pay up to £1.3m in tax as HMRC claims £17m from prize pot

    July 4, 2025
    BSP sees room for 2 more rate cuts

    BSP sees room for 2 more rate cuts

    July 3, 2025
    Finance department eyes tax on online gaming

    Finance department eyes tax on online gaming

    July 3, 2025

    Disclaimer: 5GInvestmentNews.com, its managers, its employees, and assigns (collectively “The Company”) do not make any guarantee or warranty about what is advertised above. Information provided by this website is for research purposes only and should not be considered as personalized financial advice.
    The Company is not affiliated with, nor does it receive compensation from, any specific security. The Company is not registered or licensed by any governing body in any jurisdiction to give investing advice or provide investment recommendation. Any investments recommended here should be taken into consideration only after consulting with your investment advisor and after reviewing the prospectus or financial statements of the company.

    • Privacy Policy
    • Terms & Conditions

    Copyright © 2024 5GInvestmentNews. All Rights Reserved.

    No Result
    View All Result
    • Home
    • Privacy Policy
    • suspicious engagement
    • Terms & Conditions
    • Thank you

    © 2025 JNews - Premium WordPress news & magazine theme by Jegtheme.