search & discovery
30 articles about search & discovery in AI news
Mediagenix Enhances Content Personalization with AI Semantic Search for Better Discovery
Media technology company Mediagenix has integrated AI-powered semantic search into its content management platform to improve content discovery and personalization for broadcasters and media companies. This represents a practical application of embedding technology in the media sector.
The Intent-Source Divide: How AI Search Queries Shape Hotel Discovery
A new arXiv study audits Google Gemini's hotel recommendations in Tokyo, finding a 25.1 percentage-point gap in citations between experiential and transactional queries. This 'Intent-Source Divide' suggests AI search may reduce reliance on Online Travel Agencies (OTAs) for discovery.
From Code to Discovery: The Next Frontier of AI Agents in Research
AI researcher Omar Saray predicts a shift from 'agentic coding' to 'agentic research'—where AI systems will autonomously conduct scientific discovery. This evolution promises to accelerate innovation across disciplines.
Beyond Simple Search: How Advanced Image Retrieval Transforms Luxury Discovery
New research reveals major flaws in current visual search tech. For luxury retail, this means missed sales from poor multi-item inspiration and inconsistent results. A new benchmark and method promise more accurate, nuanced product discovery.
ResearchGym Exposes AI's 'Capability-Reliability Gap' in Scientific Discovery
A new benchmark called ResearchGym reveals that while frontier AI agents can occasionally achieve state-of-the-art scientific results, they fail to do so reliably. In controlled evaluations, agents completed only 26.5% of research sub-tasks on average, highlighting critical limitations in autonomous scientific discovery.
DrugPlayGround Benchmark Tests LLMs on Drug Discovery Tasks
A new framework called DrugPlayGround provides the first standardized benchmark for evaluating large language models on key drug discovery tasks, including predicting drug-protein interactions and chemical properties. This addresses a critical gap in objectively assessing LLMs' potential to accelerate pharmaceutical research.
Anthropic Launches Dedicated Science Blog to Chronicle AI Research and Applications
Anthropic has launched a new Science Blog to publish its research and case studies on using AI to accelerate scientific discovery, aligning with its mission to increase the pace of scientific progress.
AI Accelerates Genomic Discovery, Unlocking '7 Years of Potential in 30 Minutes'
An AI science-research technology is reportedly accelerating discovery in genomics at an unprecedented rate, described as unlocking seven years of potential work in just thirty minutes.
OpenAI's 'Autonomous AI Researchers' Vision Sparks Debate on Biology's 'ChatGPT Moment'
A tweet highlights OpenAI's repeated references to 'autonomous AI researchers' as signaling a 'ChatGPT moment for biology,' suggesting AI could accelerate drug discovery by orders of magnitude. The claim draws a direct analogy to AlphaFold's impact on structural biology.
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.
NEO: A Unified Language Model for Large-Scale Search, Recommendation, and Reasoning
Researchers propose NEO, a framework that adapts a pre-trained LLM into a single, tool-free model for catalog-grounded tasks like recommendation and search. It represents items as structured IDs (SIDs) interleaved with text, enabling controlled, valid outputs. This offers a path to consolidate discovery systems.
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.
Best Buy Partners with Google to Integrate Product Catalog into AI-Powered Discovery
Best Buy is partnering with Google to enable direct purchasing within AI search and Gemini, positioning itself as a hub for AI hardware discovery. This move responds to flat revenue and aims to capture new digital shopping behaviors.
AI Bridges the Gap Between Data and Discovery: New Framework Aligns Scientific Observations with Decades of Literature
Researchers have developed a novel AI framework that aligns X-ray spectra with scientific literature using contrastive learning. This multimodal approach improves physical variable estimation by 16-18% and identifies high-priority astronomical targets, demonstrating how AI can accelerate scientific discovery by connecting data with domain knowledge.
Beyond Cosine Similarity: How Embedding Magnitude Optimization Can Transform Luxury Search & Recommendation
New research reveals that controlling embedding magnitude—not just direction—significantly boosts retrieval and RAG performance. For luxury retail, this means more accurate product discovery, personalized recommendations, and enhanced clienteling through superior semantic search.
Beyond Keywords: How Google's AI Mode Revolutionizes Visual Discovery for Luxury Retail
Google's AI Mode uses advanced multimodal AI to understand the intent behind visual searches. For luxury brands, this means customers can find products using complex, subjective descriptions, unlocking a new frontier in visual commerce and inspiration-based discovery.
Optimizing Luxury Discovery: A Smarter Pre-Ranking Engine for Personalization
New research tackles inefficiency in recommendation pipelines by intelligently separating 'easy' from 'hard' customer matches. This heterogeneity-aware pre-ranking can boost personalization accuracy while controlling computational costs, directly applicable to luxury product discovery and clienteling.
Beyond General AI: How Liquid Foundation Models Are Revolutionizing Drug Discovery
Researchers have developed MMAI Gym, a specialized training platform that teaches AI the 'language of molecules' to create more efficient drug discovery models. The resulting Liquid Foundation Models outperform larger general-purpose AI while requiring fewer computational resources.
Beyond Chatbots: How Self-Evolving AI Agents Will Revolutionize Luxury Clienteling and Discovery
New self-evolving search agents (SE-Search) and meta-RL frameworks (MAGE) enable AI that learns from customer interactions, improving product discovery and personalized service over time. This moves beyond static chatbots to create adaptive, strategic shopping assistants.
RxnNano: How a Tiny AI Model Outperforms Giants in Chemical Discovery
Researchers have developed RxnNano, a compact 0.5B-parameter AI model that outperforms models ten times larger in predicting chemical reactions. Using innovative training techniques that prioritize chemical understanding over brute-force scaling, it achieves 23.5% better accuracy on key benchmarks for drug discovery applications.
XtalPi's Profit Milestone Signals AI's Transformative Impact on Pharmaceutical Discovery
Chinese AI drug discovery firm XtalPi projects its first annual profit in 2025 following a 193% revenue surge, marking a pivotal moment for AI-driven pharmaceutical research. The company's turnaround demonstrates the commercial viability of AI in accelerating drug development pipelines.
SciSpace Evolves: From AI Research Assistant to Full Workflow Platform with 'Skills'
SciSpace is expanding beyond its core AI tools for paper discovery and writing by introducing external app integrations and customizable 'Skills,' aiming to become a true all-in-one research workflow platform rather than just a collection of features.
AI Crosses the Rubicon: From Scientific Tool to Active Discovery Partner
This week marked a paradigm shift as AI systems transitioned from research tools to active participants in scientific discovery. OpenAI's GPT-5.2 Pro helped conjecture a new formula in particle physics, while Google's Gemini 3 Deep Think achieved unprecedented results on reasoning benchmarks. These developments signal AI's growing capacity for genuine scientific contribution.
Mathematics Enters New Era as Terence Tao Declares AI's Research Breakthroughs Are Real
Fields Medalist Terence Tao states AI has moved beyond hype to become a genuine tool for mathematical discovery, marking a paradigm shift in how research is conducted. His endorsement signals AI's maturation from experimental assistant to collaborative partner in solving complex problems.
Terence Tao Suggests AI Tools Like Lean Could Lower Barrier to Mathematical Research
Fields Medalist Terence Tao posits that AI tools, including proof assistants like Lean, could enable high school students to contribute to frontier math research, accelerating careers and discovery.
Sam Altman Outlines 3 AI Futures: Research, Operations, Personal Agents
OpenAI CEO Sam Altman outlined three potential outcomes for AI development: systems that conduct scientific research, accelerate company operations, and serve as trusted personal agents. This vision frames the strategic direction for OpenAI and the broader industry.
AI Research Loop Paper Claims Automated Experimentation Can Accelerate AI Development
A shared paper highlights research into using AI to run a mostly automated loop of experiments, suggesting a method to speed up AI research itself. The source notes a potential problem with the approach but does not specify details.
ASI-Evolve Automates AI Research Loop, Discovers 105 Better Linear Attention Designs and Boosts AMC32 Scores by 12.5 Points
Researchers developed ASI-Evolve, an AI system that automates experimental loops in AI research. It discovered 105 improved linear attention variants and boosted AMC32 scores by 12.5 points, demonstrating automated research acceleration.
OpenAI Reallocates Compute and Talent Toward 'Automated Researchers' and Agent Systems
OpenAI is reallocating significant compute resources and engineering talent toward developing 'automated researchers' and agent-based systems capable of executing complex tasks end-to-end, signaling a strategic pivot away from some existing projects.
Sam Altman Hints at OpenAI Acquisition Targeting 'Mixture' of Product Company and Research Lab
In an interview, OpenAI CEO Sam Altman indicated the company is considering an acquisition that looks like 'a mixture' of both a product company and a research lab. This suggests a strategic move to acquire teams that can both advance AI capabilities and rapidly productize them.