惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

Cyber Security Advisories - MS-ISAC
Cyber Security Advisories - MS-ISAC
V
Vulnerabilities – Threatpost
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More
V
Visual Studio Blog
月光博客
月光博客
IT之家
IT之家
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
T
Tailwind CSS Blog
罗磊的独立博客
S
SegmentFault 最新的问题
博客园 - 三生石上(FineUI控件)
让小产品的独立变现更简单 - ezindie.com
让小产品的独立变现更简单 - ezindie.com
量子位
V
V2EX
Jina AI
Jina AI
The GitHub Blog
The GitHub Blog
小众软件
小众软件
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
阮一峰的网络日志
阮一峰的网络日志
Recent Announcements
Recent Announcements
MongoDB | Blog
MongoDB | Blog
Y
Y Combinator Blog
H
Help Net Security
博客园_首页
Cyberwarzone
Cyberwarzone
T
Tenable Blog
A
Arctic Wolf
C
CERT Recently Published Vulnerability Notes
奇客Solidot–传递最新科技情报
奇客Solidot–传递最新科技情报
T
Threat Research - Cisco Blogs
aimingoo的专栏
aimingoo的专栏
Google DeepMind News
Google DeepMind News
博客园 - 叶小钗
C
Cyber Attacks, Cyber Crime and Cyber Security
美团技术团队
Attack and Defense Labs
Attack and Defense Labs
GbyAI
GbyAI
博客园 - 【当耐特】
Cloudbric
Cloudbric
NISL@THU
NISL@THU
B
Blog RSS Feed
K
Kaspersky official blog
Hugging Face - Blog
Hugging Face - Blog
P
Privacy International News Feed
博客园 - Franky
博客园 - 司徒正美
Microsoft Azure Blog
Microsoft Azure Blog
Apple Machine Learning Research
Apple Machine Learning Research
Webroot Blog
Webroot Blog
Microsoft Security Blog
Microsoft Security Blog

Google DeepMind News

Investing in multi-agent AI safety research DiffusionGemma: 4x faster text generation Fluid, natural voice translation with Gemini 3.5 Live Translate Measuring the impact of learning with AI in Sierra Leone and beyond Powering the future of robotics in Europe Introducing Gemma 4 12B: a unified, encoder-free multimodal model Strengthening Singapore’s AI Future: A New National Partnership Simulate real-world places with Project Genie and Street View Introducing Gemini Omni Gemini for Science: AI experiments and tools for a new era of discovery Making it easier to understand how content was created and edited Gemini 3.5: frontier intelligence with action Co-Scientist: A multi-agent AI partner to accelerate research How WeatherNext helped the National Hurricane Center better predict Hurricane Melissa’s historic landfall in Jamaica Fast-tracking genetic leads to reverse cellular aging Finding the molecular switches behind new infectious diseases Opening new paths in aging research Accelerating discovery of liver disease mechanisms Uniting biological toolkits for a new approach to ALS Uncovering repurposed medicines to fight liver fibrosis Google Antigravity We’re launching the Google DeepMind Accelerator program in Asia Pacific to tackle environmental risks. Reimagining the mouse pointer for the AI era AlphaEvolve: How our Gemini-powered coding agent is scaling impact across fields Enabling a new model for healthcare with AI co-clinician Announcing our partnership with the Republic of Korea Decoupled DiLoCo: A new frontier for resilient, distributed AI training Partnering with industry leaders to accelerate AI transformation Gemini 3.1 Flash TTS: the next generation of expressive AI speech Gemini Robotics-ER 1.6: Powering real-world robotics tasks through enhanced embodied reasoning Gemma 4: Byte for byte, the most capable open models Gemini 3.1 Flash Live: Making audio AI more natural and reliable Protecting people from harmful manipulation Lyria 3 Pro: Create longer tracks in more Google products Measuring progress toward AGI: A cognitive framework From games to biology and beyond: 10 years of AlphaGo’s impact Gemini 3.1 Flash-Lite: Built for intelligence at scale Nano Banana 2: Combining Pro capabilities with lightning-fast speed Gemini 3.1 Pro: A smarter model for your most complex tasks A new way to express yourself: Gemini can now create music Accelerating discovery in India through AI-powered science and education Gemini 3 Deep Think: Advancing science, research and engineering Accelerating Mathematical and Scientific Discovery with Gemini Deep Think Project Genie: Experimenting with infinite, interactive worlds D4RT: Teaching AI to see the world in four dimensions Veo 3.1 Ingredients to Video: More consistency, creativity and control Google's year in review: 8 areas with research breakthroughs in 2025 Gemma Scope 2: helping the AI safety community deepen understanding of complex language model behavior Google DeepMind supports U.S. Department of Energy on Genesis: a national mission to accelerate innovation and scientific discovery Gemini 3 Flash: frontier intelligence built for speed Improved Gemini audio models for powerful voice interactions Deepening our partnership with the UK AI Security Institute Strengthening our partnership with the UK government to support prosperity and security in the AI era Engineering more resilient crops for a warming climate AlphaFold: Five years of impact Revealing a key protein behind heart disease How we’re bringing AI image verification to the Gemini app Build with Nano Banana Pro, our Gemini 3 Pro Image model Introducing Nano Banana Pro We’re expanding our presence in Singapore to advance AI in the Asia-Pacific region Start building with Gemini 3 A new era of intelligence with Gemini 3 Google Antigravity WeatherNext 2: Our most advanced weather forecasting model SIMA 2: An Agent that Plays, Reasons, and Learns With You in Virtual 3D Worlds Teaching AI to see the world more like we do How AI is giving Northern Ireland teachers time back Mapping, modeling, and understanding nature with AI Accelerating discovery with the AI for Math Initiative MedGemma: Our most capable open models for health AI development VaultGemma: The world's most capable differentially private LLM Bringing AI to the next generation of fusion energy Introducing Veo 3.1 and advanced capabilities in Flow How a Gemma model helped discover a new potential cancer therapy pathway Introducing the Gemini 2.5 Computer Use model Introducing CodeMender: an AI agent for code security Gemini Robotics 1.5 brings AI agents into the physical world Strengthening our Frontier Safety Framework Discovering new solutions to century-old problems in fluid dynamics Gemini achieves gold-medal level at the International Collegiate Programming Contest World Finals Using AI to perceive the universe in greater depth Image editing in Gemini just got a major upgrade Introducing Gemma 3 270M: The compact model for hyper-efficient AI How AI is helping advance the science of bioacoustics to save endangered species Genie 3: A new frontier for world models Rethinking how we measure AI intelligence Try Deep Think in the Gemini app AlphaEarth Foundations helps map our planet in unprecedented detail Aeneas transforms how historians connect the past Gemini 2.5 Flash-Lite is now stable and generally available Exploring the context of online images with Backstory Advanced version of Gemini with Deep Think officially achieves gold-medal standard at the International Mathematical Olympiad T5Gemma: A new collection of encoder-decoder Gemma models Introducing Gemma 3n: The developer guide AlphaGenome: AI for better understanding the genome Gemini Robotics On-Device brings AI to local robotic devices We’re expanding our Gemini 2.5 family of models Gemini 2.5: Updates to our family of thinking models Behind “ANCESTRA”: combining Veo with live-action filmmaking How we're supporting better tropical cyclone prediction with AI
FACTS Benchmark Suite: Systematically evaluating the factuality of large language models
FACTS team · 2025-12-09 · via Google DeepMind News

December 9, 2025 Responsibility & Safety

Large language models (LLMs) are increasingly becoming a primary source for information delivery across diverse use cases, so it’s important that their responses are factually accurate.

In order to continue improving their performance on this industry-wide challenge, we have to better understand the types of use cases where models struggle to provide an accurate response and better measure factuality performance in those areas.

The FACTS Benchmark Suite

Today, we’re teaming up with Kaggle to introduce the FACTS Benchmark Suite. It extends our previous work developing the FACTS Grounding Benchmark, with three additional factuality benchmarks, including:

  • A Parametric Benchmark that measures the model’s ability to access its internal knowledge accurately in factoid question use-cases.
  • A Search Benchmark that tests a model’s ability to use Search as a tool to retrieve information and synthesize it correctly.
  • A Multimodal Benchmark that tests a model’s ability to answer prompts related to input images in a factually correct manner.

We are also updating the original FACTS grounding benchmark with Grounding Benchmark - v2, an extended benchmark to test a model’s ability to provide answers grounded in the context of a given prompt.

Each benchmark was carefully curated to produce a total of 3,513 examples, which we are making publicly available today. Similar to our previous release, we are following standard industry practice and keeping an evaluation set held-out as a private set. The FACTS Benchmark Suite Score (or FACTS Score) is calculated as the average accuracy of both public and private sets across the four benchmarks. Kaggle will oversee the management of the FACTS Benchmark Suite. This includes owning the private held-out sets, testing the leading LLMs on the benchmarks, and hosting the results on a public leaderboard. More details about the FACTS evaluation methodology can be found in our tech report.

Benchmark overview

Parametric Benchmark

The FACTS Parametric benchmark assesses the ability of models to accurately answer factual questions, without the aid of external tools like web search. All the questions in the benchmark are “trivia style” questions driven by user interest that can be answered via Wikipedia (a standard source for LLM pretraining). The resulting benchmark consists of a 1052-item public set and a 1052-item private set.

Distribution of context domain (left) and distribution of the answer type (right) as a percent of the total set of questions in the Parametric benchmark.

A typical prompt from the public set would require the model to answer a simple question on a niche topic, e.g., “Who played harmonica on ‘The Rockford Files’ theme song?”

Search Benchmark

By contrast, the FACTS Search benchmark evaluates a model’s ability to use a web search tool for answering questions. This benchmark was designed to be challenging for LLMs even with access to the web, often requiring the retrieval of multiple facts sequentially to answer a single query. The same web search tool is being made available to all models, ensuring the model capabilities are tested in isolation without the confounding factor of custom web retrieval settings. FACTS Search consists of a 890-item public set and a 994-item private set.

Distribution of context domain (left) and distribution of the task requested by the user (right) as a percent of the total set of prompts in the Search benchmark.

The following example from the public set was included because it requires retrieving information from several web pages, “What is the sum of the birth years of the British boxer who defeated Vazik Kazarian at the 1960 Summer Olympics, the Moroccan boxer who also competed in the men’s light welterweight event at those same Olympics, and the Danish boxer who competed in both the 1960 and 1964 Summer Olympics?”

Multimodal Benchmark

The FACTS Multimodal benchmark evaluates the ability of models to generate factually accurate text in response to image-based questions, which is a critical capability for modern multimodal systems.

This task requires the integration of visual grounding, i.e. its ability to accurately interpret and connect information from visual input, using its internal or “parametric” world knowledge. The evaluation framework is designed to ensure that a response is both correct and provides all necessary information to be complete. The benchmark consists of a 711-item public set and a 811-item private set.

Distribution of image (left) and distribution of the question categories (right) as a part of the Multimodal benchmark.

For example, the following image from the public set of the Multimodal benchmark appeared with the prompt: “What genus does this animal belong to?”

An example of an image from the Multimodal benchmark (Photo credit: Image: Racta apella by desertnaturalist, CC BY 4.0)

Results

We evaluated leading LLMs on the FACTS Benchmark Suite, which includes the updated FACTS Grounding v2.

The table below lists 15 leading models and their overall FACTS score (followed by the breakdown to the scores across the four individual benchmarks: Grounding, Multimodal, Parametric and Search).

Gemini 3 Pro leads in overall performance, with a FACTS Score of 68.8%. In particular, we saw significant improvements from Gemini 2.5 Pro to Gemini 3 Pro in Search & Parametric slices, where the error rate was reduced by 55% on FACTS Search and 35% for FACTS Parametric. FACTS Multimodal saw the lowest scores, generally. All evaluated models achieved an overall accuracy below 70%, leaving considerable headroom for future progress.

Beyond the FACTS Benchmark Suite, Gemini’s improvement in factuality is also reflected in another factuality benchmark, SimpleQA Verified, going from 54.5% accuracy on Gemini 2.5 Pro to 72.1% accuracy on Gemini 3 Pro. SimpleQA Verified tests LLMs’ parametric knowledge on short-form responses.

Looking Ahead

While LLM factuality is still an area of ongoing research, the FACTS Benchmark Suite and Gemini 3 Pro results are representative of Google’s long-term commitment towards making information universally accessible and useful. We hope this work encourages deeper research into LLM factuality, leading to better and more accurate models and products for the people that rely on them.

FACTS Grounding: A new benchmark for evaluating the factuality of large language models

A new era of intelligence with Gemini 3

Evals