Top Artificial Intelligence AI Search Engines to Know in 2024

With recent technological advancements, search engines have significantly improved. An Artificial Intelligence (AI) search engine improves user experience by comprehending user queries at a deeper level than just matching keywords. In order to understand and react to search inputs more accurately and individually, these sophisticated search tools make use of machine learning, natural language processing, and deep learning. Artificial intelligence (AI) search engines are able to provide more thorough and pertinent responses, understand the meaning behind poorly stated or incomplete questions, and customize search results depending on user preferences and previous searches. 

  1. Gemini

Gemini, the AI search engine formerly known as Google Bard, is exceptional at preparing, creating, and giving thorough responses. It makes use of the Massive Multitask Language Understanding (MMLU) model, which provides precise statistical information and the capacity to modify responses in accordance with the tone of the user. In addition to generating text responses that resemble those of a human, 

Gemini can also be used to create audio and image prompts, as well as interact with other Google services like Maps and Flights. It supports programming languages like Python, Java, C++, and Go and integrates AI to deliver more pertinent responses and assists users by responding to their inquiries helpfully.

  1. Bing AI

Microsoft’s Bing AI is a powerful AI-powered search engine renowned for its thorough responses and product integration. It was introduced in February 2023 and uses deep neural networks to validate responses from various sources. In addition to supporting English, German, French, and Spanish, Bing AI also acts as an AI image creator, lets users select the tone of responses that can be creative, balanced, or exact, and interfaces with Microsoft Office applications. 

  1. Komo

Komo is a search engine driven by AI that aims to provide quick, precise, and comprehensive results. It makes use of sophisticated machine-learning techniques and makes recommendations for relevant queries and data from external sources. Komo offers voice and picture prompts, summarises each response, and gains knowledge from previous searches to deliver more accurate results. 

  1. Yep

Yep is an AI search engine that prioritizes privacy and offers pertinent results. Yep supports numerous languages, guarantees simple access to crucial files, and integrates with other engines for a wider variety of information. Though Yep supports searches in multiple languages and may customize results using machine learning techniques, it lacks certain features, responds slowly, and often has trouble with continuous chat sessions.

  1. You.com

You.com is an AI search engine that puts the autonomy and privacy of its users first. It supports different search forms and regional preferences by offering thorough responses and citing sources. You.com supports searches in different media, including voice and image, and permits regionally specialized searches. It also sources information and displays it at the bottom of the results. While You.com offers writing help, content creation, and relevant keyword suggestions, it lacks the functionality of industry heavyweights like Google and occasionally uses Google to provide search results.

  1. Phind

Phind provides thorough responses to technical queries and effectively generates code snippets by utilizing NVIDIA’s TensorRT-LLM library. With its extensive library of programming resources, Phind caters to the demands of developers. It offers articles, tutorials, and learning materials, and it makes conversational suggestions for coding enhancements. Although Phind is dependable and may be integrated with development tools to increase efficiency, it is not appropriate for non-technical questions and can occasionally give biased results.

  1. Neeva

Former Google executives established the ad-free, privacy-focused search engine Neeva. It provides individualized search results by taking user preferences into account without monitoring their behavior. Neeva prioritizes user privacy, offers an ad-free experience, and offers customized search results. Its market reach is limited, and access to all functions needs a subscription.

  1. Perplexity AI

Like conversational AI assistants, Perplexity AI uses natural language processing to provide succinct and pertinent answers. Without requiring users to click on links, it can comprehend questions in natural language and respond with direct responses. In comparison to big search engines, Perplexity AI has a smaller knowledge base and offers less in-depth research, but it is still easy to use for casual searches and produces quick and accurate replies.

  1. Andi

Andi’s design prioritizes user privacy and transparent algorithms to deliver safe and objective search results. Andi emphasizes impartial information and employs open, user-controlled algorithms. Even though Andi values user privacy and objective, factual information more than industry heavyweights like Google and Bing, it may not have as many sophisticated features.

In conclusion, AI search engines, which provide individualized, thorough, and context-aware results, are transforming the way information is obtained. There are multiple AI search engines out there to suit each demand, be they broad statistical data, privacy-focused queries, or specialized tools for developers. As technology continues to evolve, these tools will likely become even more integral to every individual’s daily online experiences.

Tanya Malhotra is a final year undergrad from the University of Petroleum & Energy Studies, Dehradun, pursuing BTech in Computer Science Engineering with a specialization in Artificial Intelligence and Machine Learning.
She is a Data Science enthusiast with good analytical and critical thinking, along with an ardent interest in acquiring new skills, leading groups, and managing work in an organized manner.

🚀 [FREE AI WEBINAR] 'Optimise Your Custom Embedding Space: How to find the right embedding model for YOUR data.' (July 18, 2024) [Promoted]