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#research-ai News & Analysis

5 articles tagged with #research-ai. AI-curated summaries with sentiment analysis and key takeaways from 50+ sources.

5 articles
AIBullishOpenAI News · Dec 117/108
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Advancing science and math with GPT-5.2

OpenAI has released GPT-5.2, their most advanced model for mathematics and science applications, achieving state-of-the-art performance on benchmarks like GPQA Diamond and FrontierMath. The model demonstrates significant research capabilities, including solving open theoretical problems and generating reliable mathematical proofs.

AIBullishOpenAI News · Mar 257/108
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Automating 90% of finance and legal work with agents

Hebbia has developed AI-powered research automation that can handle 90% of finance and legal work tasks, leveraging OpenAI's technology. This represents a significant advancement in AI-driven workflow automation for professional services industries.

AINeutralarXiv – CS AI · Jun 86/10
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Act As a Real Researcher: A Suite of Benchmarks Evaluating Frontier LLMs and Agentic Harnesses in Research Lifecycle

Researchers introduced AARRI-Bench, a new benchmark suite designed to evaluate frontier large language models and AI agents on their ability to conduct research with human-like professionalism and nuance. Testing showed that even top-performing systems like Claude Opus 4.7 with Mini-SWE-Agent achieved only 68.3% success rates, frequently missing subtle but critical details that human researchers would easily catch, highlighting the gap between autonomous research agents and truly capable human researchers.

🧠 Claude🧠 Opus
AINeutralarXiv – CS AI · May 286/10
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DeepSciVerify: Verifying Scientific Claim--Citation Alignment via LLM-Driven Evidence Escalation

Researchers present DeepSciVerify, an LLM-based system that verifies scientific claims against cited evidence by combining abstract-level analysis with selective full-text passage retrieval. The two-stage pipeline achieves 86.7% accuracy on benchmarks while reducing computational overhead by avoiding unnecessary full-text analysis in 67% of cases, addressing a critical reliability issue in AI-generated scientific content.

AINeutralarXiv – CS AI · May 126/10
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MaD Physics: Evaluating information seeking under constraints in physical environments

Researchers introduce MaD Physics, a benchmark for evaluating AI agents' ability to conduct scientific discovery under realistic resource constraints. The benchmark tests agents' capacity to make informative measurements within budget limits and infer underlying physical laws, using altered physics environments to prevent reliance on training data.

🧠 Gemini