Beyond Google: The Rise of AI Search Engines

By Bayes
Elephant wearing google logo

A new breed of search engine is emerging, armed with artificial intelligence (AI) and intent on taking on the mammoth Google. These plucky startups are capitalising on widespread frustration over the status quo: the dominance of a few tech titans, the increasing commercialisation of personal data, opaque censorship policies and advertising clutter so dense it obscures results. Instead they promise accuracy, transparency and brevity, portending a new era of utility.

One such example is Perplexity, which bills itself as a “conversational search companion”. Queries yield swift, tailored answers rather than links to click through, reducing the legwork for time-poor researchers. Its responses are studded with citations, minimising hallucinations. Follow-up questions based on previous answers are smoothly fielded. For power-users it offers a choice of underlying large language models (LLMs).

Komo takes a similar tack but without the back-and-forth; questions are handled discretely. Phind, meanwhile, focuses squarely on assisting software developers, its LLM generating code snippets as good as or better than GPT-4 Turbo, and four times as fast. Waldo proffers an AI-boost for marketers, brand strategists and salesfolk, automating repetitive researching and reporting tasks.

Rather than rely on keywords as Google does, Exa searches by semantic meaning, delivering results more attuned to users’ intents without the need to filter out irrelevant hits.

A crop of search engines stand out not only by redefining search paradigms with artificial intelligence and machine learning, but also by emphasizing privacy protections and user-centricity. You.com offers an adaptive, privacy-conscious search experience via its YouChat assistant, which purportedly improves with use. Touting capabilities from summarization to code-writing, it blends traditional search with innovative AI to serve diverse needs. Similarly, Andi has emerged as a privacy-first search engine, blocking tracking technologies like Google’s FLoC to ensure secure searching. Its Reader feature enables consuming content directly on the platform, potentially reshaping relations between publishers and search.

Undergirding these developments is the evolution of search technology itself. Machine learning and natural language processing form the backbone enabling these engines to better predict intent and interpret language’s nuanced complexities. This shift toward more intuitive, user-focused experiences goes hand-in-hand with emphases on privacy and security to address rising data monetization concerns.

As the search engine landscape continues to evolve, the interplay between AI advancements, user privacy, and the quest for more personalized, contextually relevant search experiences will undoubtedly shape the future of how we access information online. The challenge for these emerging platforms will be to sustain innovation while maintaining the trust and satisfaction of their users, carving out a space in a market long dominated by established players. The common thread is the application of recent advances in natural language processing to enhance search. As barriers to entry fall, AI is being productised into handy tools that get users to answers in fewer steps. Though their youth shows — the odd hallucination still slips through — these startups foretell an internet where discovery is streamlined. Google still dominates, but facing down platoons of AI-natives will give it pause. The days of the monolithic search engine seem numbered.