A new era of intelligence with Gemini 3
DeepMind has published a blog post titled 'A new era of intelligence with Gemini 3,' suggesting a major new model release or announcement in the Gemini series. The body content was not provided, but the title and source indicate this is a flagship model announcement from Google DeepMind. This would represent the next generation of the Gemini model family following Gemini 2.x.
Related guides (4)
Related events (8)
Gemini 3.5: Frontier Intelligence with Action
Google DeepMind has announced Gemini 3.5, a new model generation positioned around agentic capabilities and complex workflow execution. The announcement emphasizes action-oriented AI, suggesting a focus on tool use, multi-step reasoning, and autonomous task completion. The blog post is brief, indicating this may be an initial announcement with further details to follow.
Gemini 3.1 Pro: A smarter model for your most complex tasks
Google DeepMind has announced Gemini 3.1 Pro, a new model positioned for complex reasoning tasks where simple answers are insufficient. The announcement comes from the official DeepMind blog, indicating a flagship-tier release. The body content is minimal, providing little technical detail beyond the positioning statement.
Gemini 3 Deep Think: Advancing science, research and engineering
DeepMind has announced an update to Gemini 3 Deep Think, described as their most specialized reasoning mode, targeting science, research, and engineering challenges. The announcement comes from the official DeepMind blog and positions this as a capability advancement over prior reasoning modes. The body is brief and lacks technical specifics, but the naming convention suggests this is a distinct reasoning-focused variant of the Gemini 3 model family. No benchmark results, architecture details, or availability information are provided in the excerpt.
Gemini 3 Flash: frontier intelligence built for speed
Google DeepMind has announced Gemini 3 Flash, a new model positioned as a frontier-intelligence offering optimized for speed and cost efficiency. The announcement comes from the official DeepMind blog, indicating a formal product release. Specific capability details and benchmarks are not included in the available body text.
Gemini 2.5: Updates to our family of thinking models
Google DeepMind has announced updates to the Gemini 2.5 model family, including Gemini 2.5 Pro reaching stable status, Gemini 2.5 Flash becoming generally available, and a new Gemini 2.5 Flash-Lite entering preview. These releases mark the maturation of DeepMind's 'thinking model' line with enhanced performance and accuracy. The updates span multiple tiers of the Gemini 2.5 family, from the flagship Pro to the lightweight Flash-Lite variant.
Gemini 2.5: Google DeepMind's Most Intelligent AI Model with Built-in Thinking
Google DeepMind has announced Gemini 2.5, described as their most intelligent AI model to date, with thinking capabilities built directly into the model. The announcement comes from the official DeepMind blog and marks a significant step in Google's frontier model development. The integration of thinking natively into the model suggests a chain-of-thought or reasoning-first architecture similar to approaches seen in competing models.
Improved Gemini Audio Models for Powerful Voice Experiences
DeepMind has announced improved Gemini audio models targeting enhanced voice experience capabilities. The announcement comes from the official DeepMind blog, indicating a formal product or capability update to the Gemini model family's audio processing and generation features. Specific technical details were not available in the body text, but the framing suggests advances in speech understanding, synthesis, or real-time voice interaction. This is part of Google DeepMind's ongoing development of multimodal Gemini capabilities.
Introducing Gemini Omni
DeepMind has announced Gemini Omni, a new model or capability in the Gemini family, published on their official blog in May 2026. The article body was not available for ingestion, so specific capability details, benchmarks, or deployment information cannot be extracted. Based on the naming convention, this likely represents a multimodal or unified-modality extension of the Gemini model line. Further details should be retrieved from the source URL.



