search engines

30 articles about search engines in AI news

Bain & Company Research: Why Consumers Choose AI Chatbots Over Search Engines

Bain & Company research reveals a significant consumer preference shift toward AI chatbots for product discovery and purchase decisions. This has direct implications for luxury retail's digital strategy and customer experience design.

100% relevant

Algorithmic Trust and Compliance: A New Framework for Visibility in Generative AI Search

A new arXiv study introduces Generative Engine Optimization (GEO), a framework for optimizing content for AI search engines. It finds AI exhibits a strong bias towards authoritative, third-party sources, making compliance and trust signals critical for visibility in regulated sectors.

72% relevant

AI-Powered Search Makes Customer Reviews a Critical SEO Battleground

AI search engines like ChatGPT and Perplexity are reshaping product discovery by synthesizing customer reviews into recommendations. Brands are now aggressively soliciting detailed reviews to optimize for this new discovery layer, treating review volume and quality as a form of AI SEO.

100% relevant

Profound's $96M Bet: How AI Chatbots Are Rewriting the Rules of Digital Marketing

AI startup Profound raised $96 million at a $1 billion valuation to help brands optimize for AI-generated answers rather than traditional search results. The funding signals a major shift as marketers prepare for AI chatbots to replace conventional search engines.

70% relevant

New Diagnostic Tool Reveals Hidden Flaws in AI Ranking Systems

Researchers have developed a novel diagnostic method that isolates and analyzes LLM reranking behavior using fixed evidence pools. The study reveals surprising inconsistencies in how different AI models prioritize information, with implications for search engines and information retrieval systems.

72% relevant

How Personalized Recommendation Engines Drive Engagement in OTT Platforms

A technical blog post on Medium emphasizes the critical role of personalized recommendation engines in Over-The-Top (OTT) media platforms, citing that most viewer engagement is driven by algorithmic suggestions rather than active search. This reinforces the foundational importance of recommendation systems in digital content consumption.

81% relevant

AMES: A Scalable, Backend-Agnostic Architecture for Multimodal Enterprise Search

Researchers propose AMES, a unified multimodal retrieval system using late interaction. It enables cross-modal search (text, image, video) within existing enterprise engines like Solr without major redesign, balancing speed and accuracy.

79% relevant

BM25: The 30-Year-Old Algorithm Still Powering Production Search

A viral technical thread details why BM25, a 30-year-old statistical ranking algorithm, is still foundational for search. It argues for its continued use, especially in hybrid systems with vector search, for precise keyword matching.

85% relevant

ColBERT-Att: New Research Enhances Neural Retrieval by Integrating Attention into Late Interaction

Researchers propose ColBERT-Att, a novel neural information retrieval model that integrates attention weights into the late-interaction framework. The method shows improved recall accuracy on standard benchmarks like MS-MARCO, BEIR, and LoTTE.

86% relevant

Google Research's TurboQuant Achieves 6x LLM Compression Without Accuracy Loss, 8x Speedup on H100

Google Research introduced TurboQuant, a novel compression algorithm that shrinks LLM memory footprint by 6x without retraining or accuracy drop. Its 4-bit version delivers 8x faster processing on H100 GPUs while matching full-precision quality.

95% relevant

AgenticGEO: Self-Evolving AI Framework for Generative Search Engine Optimization Outperforms 14 Baselines

Researchers propose AgenticGEO, an AI framework that evolves content strategies to maximize inclusion in generative search engine outputs. It uses MAP-Elites and a Co-Evolving Critic to reduce costly API calls, achieving state-of-the-art performance across 3 datasets.

91% relevant

CogSearch: A Multi-Agent Framework for Proactive Decision Support in E-Commerce Search

Researchers from JD.com introduce CogSearch, a cognitive-aligned multi-agent framework that transforms e-commerce search from passive retrieval to proactive decision support. Offline benchmarks and online A/B tests show significant improvements in conversion, especially for complex queries.

99% relevant

Perplexity CEO Reveals Key Distinction Between AI Search and Traditional Models

Perplexity CEO Aravind Srinivas explains how their 'Personal Computer' approach fundamentally differs from OpenAI's models, emphasizing real-time information retrieval over static knowledge bases. This distinction highlights the evolving landscape of AI-powered search tools.

85% relevant

SAPO: A One-Line Code Fix for Training Stable AI Search Agents

Researchers propose SAPO, a simple modification to stabilize reinforcement learning for search agents, preventing catastrophic training collapse. It delivers +10.6% performance gains with minimal code changes.

77% relevant

Developer Creates Unified Private Search Engine Aggregating Google, Bing, and 70+ Sites

A developer has built a privacy-focused search engine that simultaneously queries Google, Bing, and over 70 other sites without collecting user data. This tool addresses growing concerns about search engine tracking and data monetization.

85% relevant

SearXNG Emerges as Privacy-First Alternative to Big Tech Search Dominance

SearXNG, an open-source metasearch engine, aggregates results from Google, Bing, and 70+ sources while eliminating tracking and profiling. Users can self-host instances to reclaim search privacy.

85% relevant

BM25-V: A Sparse, Interpretable First-Stage Retriever for Image Search

Researchers propose BM25-V, a hybrid image retrieval system combining Sparse Auto-Encoders with classic BM25 scoring. It achieves high recall efficiently, enabling accurate two-stage pipelines with interpretable results.

80% relevant

Perplexity AI Launches On-Device Search Engine: Privacy-First AI Comes Home

A new privacy-first AI search engine called Perplexity AI now runs entirely on users' own hardware, eliminating cloud data transmission. This breakthrough represents a significant shift toward decentralized, secure AI processing that protects user queries from corporate surveillance.

85% relevant

Future-Proof Your AI Search: Why Static Knowledge Bases Fail Luxury Retail

New research reveals AI retrieval benchmarks degrade over time as information changes. For luxury brands using AI for product recommendations and clienteling, this means static knowledge bases become stale, hurting customer experience and sales.

60% relevant

You.com's Research API: The Agentic Search Revolution That's Redefining Online Research

You.com has launched a groundbreaking Research API that autonomously executes multi-query searches, cross-references sources, and delivers fully cited answers—achieving #1 accuracy on DeepSearchQA benchmarks while eliminating hallucinations and traditional search limitations.

90% relevant

OpenAI Researcher's Exit Signals Growing Tensions Over AI Monetization Ethics

OpenAI researcher Zoë Hitzig resigned in protest as the company began testing ads in ChatGPT, warning that commercial pressures could transform AI assistants into manipulative platforms reminiscent of social media's worst excesses.

80% relevant

Nebius Makes $275M Bet on AI Agent Search with Tavily Acquisition

European cloud provider Nebius acquires AI search startup Tavily for $275 million, integrating agentic search capabilities into its AI cloud platform to challenge major players in the competitive AI infrastructure market.

70% relevant

Research Challenges Assumption That Fair Model Representations Guarantee Fair Recommendations

A new arXiv study finds that optimizing recommender systems for fair representations—where demographic data is obscured in model embeddings—does improve recommendation parity. However, it warns that evaluating fairness at the representation level is a poor proxy for measuring actual recommendation fairness when comparing models.

80% relevant

New Research Reveals the Complementary Strengths of Generative and ID-Based Recommendation Models

A new study systematically tests the hypothesis that generative recommendation (GR) models generalize better. It finds GR excels at generalization tasks, while ID-based models are better at memorization, and proposes a hybrid approach for improved performance.

70% relevant

New Research Proposes Lightweight Framework for Adapting LLMs to Complex Service Domains

A new arXiv paper introduces a three-part framework to efficiently adapt LLMs for technical service agents. It addresses latent decision logic, response ambiguity, and high training costs, validated on cloud service tasks. This matters for any domain needing robust, specialized AI agents.

72% relevant

New Research Reveals Fundamental Limitations of Vector Embeddings for Retrieval

A new theoretical paper demonstrates that embedding-based retrieval systems have inherent limitations in representing complex relevance relationships, even with simple queries. This challenges the assumption that better training data alone can solve all retrieval problems.

97% relevant

Agentic AI Shopping Agents: Reclaiming Customer Relationships in the Age of AI Search

Third-party AI agents are reshaping discovery, threatening direct brand relationships. Luxury retailers must deploy their own agentic AI to guide high-value journeys, curate personalized assortments, and own the client experience.

88% relevant

Beyond CLIP: How Pinterest's PinCLIP Model Solves Fashion's Cold-Start Problem

Pinterest's PinCLIP multimodal AI model enhances product discovery by 20% over standard VLMs. It addresses cold-start content with a 15% engagement uplift, offering luxury retailers a blueprint for visual search and recommendation engines.

80% relevant

DACT: A New Framework for Drift-Aware Continual Tokenization in Generative Recommender Systems

Researchers propose DACT, a framework to adapt generative recommender systems to evolving user behavior and new items without costly full retraining. It identifies 'drifting' items and selectively updates token sequences, balancing stability with plasticity. This addresses a core operational challenge for real-world, dynamic recommendation engines.

86% relevant

DeepSeek's HISA: Hierarchical Sparse Attention Cuts 64K Context Indexing Cost

DeepSeek researchers introduced HISA, a hierarchical sparse attention method that replaces flat token scanning. It removes a computational bottleneck at 64K context lengths without requiring any model retraining.

85% relevant