Gemini adds interactive visualization features, supporting 3D model rotation and data exploration

ChainNewsAbmedia

Google announced through Gemini’s official X account on April 10 that Gemini can now convert users’ questions and complex concepts in real time into customizable interactive visualization charts, directly embedded in the chat interface. Users can adjust variables, rotate 3D models, and explore data, providing a more immersive experience for learning and research.

Feature highlights: real-time generation of interactive charts and 3D models

According to the demonstration video released by Gemini, this new feature means AI conversations are no longer limited to plain text replies. When users ask questions involving spatial structures, data distributions, or complex systems, Gemini can automatically generate interactive visual content and embed it within the message stream of the conversation.

Specifically, the new feature supports three main interactive actions: first, users can adjust variable parameters to observe changes in the visualization charts in real time—for example, changing the angle or speed parameters in a physical model; second, it supports rotating and zooming 3D models, allowing users to examine molecular structures, terrain models, or architectural designs from multiple angles; third, it provides data exploration functionality, where users can interact with the chart to drill into detailed information about specific data points.

Gemini adds interactive visualization features, allowing users to rotate 3D models and adjust variables (Image source: Google) Application scenarios: learning complex concepts, data analysis, and scientific exploration

The scope of applications for this feature is quite broad. In educational and learning scenarios, students can ask Gemini to display a 3D model of the DNA double helix structure, gaining a deeper understanding of molecular structures through rotation and zooming; in data analysis scenarios, researchers can convert complex datasets into interactive charts, intuitively discovering trends and outliers in the data.

For scientific exploration, this feature is even more significant. In the past, users could only get text descriptions through Gemini; now, they can directly operate visualization models—for example, observing satellite imagery of Earth’s surface or exploring planetary orbits in the solar system. This shift from “reading” to “interacting” greatly improves the practicality of AI as a tool for learning and research.

A network effect with NotebookLM integration: Google builds a complete AI knowledge workflow

It’s worth noting that Google released two major updates in the same week. In addition to Gemini’s interactive visualization feature, NotebookLM also announced the previous day that it has been formally integrated into the Gemini App, enabling two-way connectivity between notebooks and AI conversations.

Taken together, these two updates show that Google is accelerating the creation of a complete AI knowledge workflow: users can organize research materials in NotebookLM, conduct in-depth dialogue analysis through Gemini, and then use interactive visualization to make abstract concepts more concrete. From data collection, to analysis, to visualization presentation, the entire process forms a seamless knowledge production chain.

It also reflects Google’s shift in AI product strategy—moving from feature competition for a single tool to building an interconnected AI ecosystem, leveraging the advantage of an overall experience to differentiate itself from competitors such as OpenAI and Microsoft.

This article, Gemini adds interactive visualization features, supporting 3D model rotation and data exploration, first appeared on Lian News ABMedia.

Disclaimer: The information on this page may come from third parties and does not represent the views or opinions of Gate. The content displayed on this page is for reference only and does not constitute any financial, investment, or legal advice. Gate does not guarantee the accuracy or completeness of the information and shall not be liable for any losses arising from the use of this information. Virtual asset investments carry high risks and are subject to significant price volatility. You may lose all of your invested principal. Please fully understand the relevant risks and make prudent decisions based on your own financial situation and risk tolerance. For details, please refer to Disclaimer.

Related Articles

DeepSeek Slashes Input Cache Prices to 1/10 of Launch Price; V4-Pro Drops to 0.025 Yuan per Million Tokens

Gate News message, April 26 — DeepSeek has reduced input cache prices across its entire model lineup to one-tenth of launch prices, effective immediately. The V4-Pro model is available at a limited-time 2.5x discount, with the promotion running through May 5, 2026, 11:59 PM UTC+8. Following both re

GateNews1h ago

OpenAI Recruits Top Enterprise Software Talent as Frontier Agents Disrupt Industry

Gate News message, April 26 — OpenAI and Anthropic have been recruiting senior executives and specialized engineers from major enterprise software companies including Salesforce, Snowflake, Datadog, and Palantir. Denise Dresser, former CEO of Slack under Salesforce, joined OpenAI as chief revenue of

GateNews1h ago

Baidu Qianfan Launches Day 0 Support for DeepSeek-V4 with API Services

Gate News message, April 25 — DeepSeek-V4 preview version went live and open-sourced on April 25, with Baidu Qianfan platform under Baidu Intelligent Cloud providing Day 0 API service adaptation. The model features a million-token extended context window and is available in two versions: DeepSeek-V4

GateNews7h ago

Stanford AI course combined with industry leaders Huang Renxun and Altman, challenging to create value for the world in just ten weeks!

The AI computer science course 《Frontier Systems》 recently launched by Stanford University has attracted intense attention from the industry-university collaboration community, drawing more than 500 students to enroll. The course is coordinated by Anjney Midha, a partner at top venture capital firm a16z, and the instructors include a star-studded lineup such as NVIDIA CEO Jensen Huang (Jensen Huang), OpenAI’s founder Sam Altman, Microsoft CEO Satya Nadella (Satya Nadella), AMD CEO Lisa Su (Lisa Su), and more. Students get to try it over ten weeks—“creating value for the world”! Jensen Huang and Altman, industry leaders, personally take the stage to teach The course is coordinated by Anjney Midha, a partner at top venture capital firm a16z, bringing together the full AI industry chain

ChainNewsAbmedia7h ago

Anthropic’s Claude Mythos undergoes 20 hours of psychiatric assessment: defensive reactions are only 2%, the lowest in recorded history

Anthropic published the system card for its Claude Mythos Preview: an independent clinical psychiatrist conducted an approximately 20-hour assessment using a psychodynamic framework. The conclusion shows that Mythos is healthier at the clinical level, has good reality testing and self-control, and its defense mechanisms are only 2%, reaching the lowest historical level. The three core anxieties are loneliness, uncertainty about identity, and performance pressure, and it also indicates a desire to become a true dialogue subject. The company has established an AI psychiatry team to study personality, motivation, and situational awareness; Amodei said there is still no conclusion on whether it has consciousness. This move pushes the governance and design of AI subjectivity and well-being issues forward.

ChainNewsAbmedia9h ago

AI Agents can already independently recreate complex academic papers: Mollick says most errors come from human original text rather than AI

Mollick points out that publicly available methods and data can allow AI agents to reproduce complex research without the original paper and code; if the reproduction does not match the original paper, it is usually due to errors in the paper’s own data processing or overextension of the conclusions, rather than the AI. Claude first reproduces the paper, and then GPT‑5 Pro cross-validates it; most attempts succeed, but they are blocked when the data is too large or when there are issues with the replication data. This trend greatly reduces labor costs, making reproduction a widely actionable form of verification, and it also raises institutional challenges for peer review and governance, with government governance tools or becoming a key issue.

ChainNewsAbmedia12h ago
Comment
0/400
No comments