Filter

×
Active Filters Clear All
Keyword: Gemini 3.5 Flash ×
5 Total Reports
Google Product Launch 2026-05-22

Google I/O 2026 Pivots to Agentic AI: Antigravity 2.0 and TPU 8t/8i Reshape Control Plane

At I/O 2026, Google unveiled Gemini 3.5 Flash (4x output speed), Antigravity 2.0 multi-agent orchestration, TPU 8t/8i (3x training, 2x inference perf/W), and Gemini Spark, signaling a full pivot to Agentic AI infrastructure. By integrating platform and silicon, Google shifts control from model APIs to orchestration and hardware lock-in.

Google Other 2026-05-21

Google Antigravity Control Plane Redefines AI Development, Locks Agent Orchestration

At I/O 2026, Google launched Antigravity 2.0 desktop app and CLI/SDK as a unified agent control plane, alongside Gemini 3.5 Flash/Omni models, Managed Agents API, and native Android support in AI Studio. This aims to streamline AI development from prototype to production, but effectively locks developers into Google's ecosystem and cloud services.

Google Other 2026-05-19

Google TPU 8t/8i Enables Cross-Datacenter Training, Gemini 3.5 Flash 4x Faster

Google unveils TPU 8t (training) and TPU 8i (inference) with 3x raw compute and 2x perf-per-watt. JAX/Pathways enable distributed training across 1M+ TPUs across sites. Gemini 3.5 Flash delivers 4x output tokens per second vs frontier models. SynthID adopted by OpenAI, Nvidia, Kakao, Eleven Labs.

Google Other 2026-05-19

Google Antigravity 2.0 Shifts Control from Model API to Agent Orchestration

Google launches Antigravity 2.0 desktop app, Managed Agents API, and AI Studio mobile, creating an agent-first development platform. Powered by Gemini 3.5 Flash (4x faster), it deeply integrates with Android, Firebase, and Workspace, aiming to lock developers into Google's orchestration layer.

Google Other 1970-01-01

Google Gemini 3.5 Flash Turns Search into AI-First Answer Engine, Shifting Control from Links to Summaries

Google transforms Search into an AI-first answer engine powered by Gemini 3.5 Flash, with redesigned search bar, AI-generated summary pages, and proactive monitoring. Model improvements include 1M context, 65K output tokens, and multi-agent orchestration via Antigravity, enabling complex task automation.