<?xml version="1.0" encoding="UTF-8"?><rss version="2.0" xmlns:content="http://purl.org/rss/1.0/modules/content/"><channel><title>thekb.eu — Products &amp; Services</title><description>Products &amp; Services · High-fidelity tech watch — AI, coding agents, SDLC</description><link>https://www.thekb.eu/</link><language>en</language><item><title>Project Genie: Interactive World Models with Genie 3</title><link>https://www.thekb.eu/en/fiches/google-deepmind-project-genie-3-world-models-2026-02/</link><guid isPermaLink="true">https://www.thekb.eu/en/fiches/google-deepmind-project-genie-3-world-models-2026-02/</guid><description>Project Genie - Real-Time Interactive World Models from Google DeepMind</description><pubDate>Sun, 01 Feb 2026 00:00:00 GMT</pubDate><content:encoded>&lt;p&gt;Google DeepMind is launching Project Genie, a web application that lets Google US Ultra subscribers create and explore interactive worlds generated by the Genie 3 model. Unlike conventional video models that produce fixed sequences, a &quot;world model&quot; generates the environment frame by frame in real time, letting the user navigate and interact.

**Workflow and creative pipeline**: The user starts by describing their world and character. Nano Banana Pro first generates a &quot;canvas&quot; image that serves as a visual starting point. Clicking &quot;Generate World&quot; prompts Genie 3 to turn this 2D image into an explorable 3D environment. The transition from 2D to immersive 3D is the &quot;wow moment&quot; identified by testers. The application also allows uploading personal photos - a photographed toy dinosaur can become a controllable character in a reconstruction of the room.

**Technical challenges**: Genie 3 tackles a more complex problem than standard video generation. A video model can retroactively adjust frames to ensure consistency; Genie 3 must generate in real time, consistent with both the past AND the user&apos;s immediate action, without knowing future inputs. The current 60-second limit results from a trade-off: the world&apos;s dynamism tends to gradually decrease, and serving costs remain high.

**Evolution since Genie 1**: Genie 1 was a research paper. Genie 2 (December 2024) offered 10 seconds at low resolution, without real time. Genie 3 (announced August 2025, now launched) reaches one minute in real time with photorealistic quality. The team notes that a year ago, a minute of real-time consistency seemed an ambitious goal; today, users are asking for more.

**Envisioned applications**: Beyond entertainment, the team is exploring education (personalized therapeutic exposures, such as a child exploring a room full of virtual spiders) and embodied intelligence. The Simmer project already uses Genie 3 to train AI agents capable of accomplishing goals in arbitrary 3D worlds - a step toward embodied AGI.

**Outlook**: The roadmap includes multiplayer (complex because of latency), more interaction controls, a developer API, and expansion to other surfaces. The team estimates it has reached 50% of its vision, with &quot;enormous headroom&quot; for further improvements. The ultimate vision: a simulation indistinguishable from reality, &quot;a copy of the universe where you can do whatever you want&quot;.&lt;/p&gt;</content:encoded><category>Products &amp; Services</category><category>World models</category><category>Project Genie</category><category>Genie 3</category><category>Google DeepMind</category><category>Google Labs</category></item><item><title>Tech predictions for 2026 and beyond</title><link>https://www.thekb.eu/en/fiches/vogels-tech-predictions-2026-allthingsdistributed-2025-11-25/</link><guid isPermaLink="true">https://www.thekb.eu/en/fiches/vogels-tech-predictions-2026-allthingsdistributed-2025-11-25/</guid><description>Werner Vogels - Tech Predictions 2026 - All Things Distributed - Amazon CTO - AI Trends - Companionship Revolution - Education Transformation - Healthcare Innovation - Human-AI Collaboration</description><pubDate>Tue, 25 Nov 2025 00:00:00 GMT</pubDate><content:encoded>&lt;p&gt;In his eagerly awaited annual essay, Werner Vogels, Amazon&apos;s CTO, presents his technology predictions for 2026 and beyond. His central thesis: placing AI &quot;in the human loop&quot; (&quot;AI in the human loop&quot;) rather than the reverse, to amplify human capabilities and address the most pressing social crises. Three areas structure the essay.

**The companionship revolution.** Loneliness affects 1 in 6 people worldwide and has been designated a public health crisis by the OMS; it increases the risk of dementia by 31% and stroke by 30%. Vogels predicts the rise of companion robots (Pepper, Paro, Lovot) in long-term care: 95% of dementia patients have beneficial interactions with Paro, with reduced agitation, depression, and medication use. Because humans are biologically wired to project intention onto autonomous movement (MIT study; 50-80% of Roomba owners name their vacuum), robots like Amazon Astro create genuine emotional bonds through mobility and facial expressions.

**The transformation of education.** Faced with a global teacher shortage and a system designed for compliance rather than curiosity, personalized AI tutors adapt to each student&apos;s style, pace, and language. The impacts are measurable: +65% willingness to attempt difficult tasks, up to 17 IQ points gained in autistic children (Duke study), and 5.9 hours saved per week for teachers — six weeks per year reinvested in creativity and individual support. NextGenU already produces culturally adapted textbooks at 1/100th of the traditional cost.

**The reinvention of healthcare.** Amid distrust of medical institutions and misinformation, trustworthy AI agents can provide reliable medical information and improve treatment adherence, with humans remaining in control.

Vogels also identifies challenges: social acceptance of companion robots, emotional dependence on machines, the regulatory framework for AI agents in healthcare, and equity of access. But he sees massive opportunities in them: an aging population, educational innovation, preventive health, and new economic models.

This vision represents a fundamental shift in our relationship with technology: the move from transactional tools to partners that help us solve the deepest human problems, with AI amplifying humans rather than replacing them.&lt;/p&gt;</content:encoded><category>Products &amp; Services</category><category>Tech Predictions</category><category>AI Trends</category><category>Werner Vogels</category><category>Amazon CTO</category><category>Human-AI Collaboration</category></item><item><title>Perplexity Integrates Directly into Chrome Browser, Challenging Google Search Dominance</title><link>https://www.thekb.eu/en/fiches/perplexity-chrome-integration-browser-ai-search-2025-10-22/</link><guid isPermaLink="true">https://www.thekb.eu/en/fiches/perplexity-chrome-integration-browser-ai-search-2025-10-22/</guid><description>Perplexity - Chrome integration - Browser AI - Search - Google competition - Native integration - AI-powered search</description><pubDate>Wed, 22 Oct 2025 00:00:00 GMT</pubDate><content:encoded>&lt;p&gt;Perplexity announced a **native integration into the Google Chrome browser**, allowing users to **set Perplexity as their default search engine** and access AI search directly from the address bar. This move represents a **bold competitive challenge** to Google within its own browser, **dramatically reducing the friction** for users seeking an AI-native search experience without having to visit the Perplexity site separately.

**Integration mechanics**

The implementation allows users to: **set Perplexity as the default engine** in Chrome settings (alongside Google, Bing, DuckDuckGo), **search directly from the omnibox** (address bar queries are routed to Perplexity), **receive AI-generated answers** (instead of traditional link lists), **view source citations** (preserving transparency), **continue the conversation** (follow-up dialogue on the searched topic). The technical implementation relies on Chrome&apos;s **OpenSearch protocol**, which allows alternative engines to integrate without friction.

**Strategic scope: distribution**

A tech industry truism: **distribution determines the winner**. Google Search dominates partly thanks to Chrome integration — the browser&apos;s default search generates a massive volume of queries. Perplexity&apos;s integration **solves a critical distribution challenge**: fewer steps from query to result (no separate site visit), integration into the existing workflow (the address bar is already the primary search interface), lower adoption friction (a single settings change versus repeated visits), increased visibility (a constant reminder that an alternative exists).

**Competitive dynamics with Google**

The move places Perplexity **directly on Google&apos;s own turf** — the Chrome browser that Google controls. This creates interesting tensions: **Google could block the integration** (but faces antitrust scrutiny — already under challenge over default engines), **Google could add similar AI features** (Gemini integration is the likely response), **user choice becomes key** (default-settings battles intensify), **direct quality comparison** (users easily switch between engines and compare results).

**User experience transformation**

Traditional search: query → list of links → clicks through multiple results → manual synthesis of information. **Perplexity search**: query → AI-synthesized answer with source citations → optional follow-up questions → refined understanding. This **fundamentally different paradigm** is especially valuable for: research tasks (synthesis of multiple sources), fact-checking (visible citations), complex queries (multi-step reasoning), exploratory learning (natural follow-up dialogue).

**Monetization challenges**

The integration raises business-model questions: **fewer website visits** (publishers potentially lose traffic), **attribution complexity** (how to credit sources cited by the AI?), **advertising disruption** (traditional search ads live in link lists — where do ads go in AI-generated answers?), **premium features** (how to differentiate free and paid offerings?). Perplexity must balance **user value against ecosystem sustainability**.

**Technical requirements and performance**

Chrome integration requires: **low latency** (users expect instant results as with Google), **reliability** (downtime is unacceptable for a default search engine), **query understanding** (handling the full diversity of search intent), **scalable infrastructure** (potentially massive increase in query volume if adoption grows), **cross-device synchronization**.

**Google&apos;s potential responses**

Likely actions from Google: **accelerate Gemini integration** into search, **leverage Chrome control** (promoting Google&apos;s own AI search features), **improve search quality** (narrowing the advantage of synthesized answers), **adjust commercial terms** (restricting alternative engines where legally possible), **acquire or form partnerships**.

**Regulatory context**

The timing is notable given the ongoing **antitrust scrutiny** of Google&apos;s search dominance. The U.S. DOJ and European regulators are examining default search agreements and browser integration practices. Perplexity&apos;s move could **strengthen antitrust arguments**: it demonstrates that viable alternatives exist, shows that Google&apos;s control limits competition, and illustrates the value of user choice.

**Broader industry implications**

Success could inspire: **other AI search engines** (You.com, Phind) pursuing browser integration, **browser diversification** (Firefox, Edge offering multiple AI search options), **a search paradigm shift** (acceleration toward synthesized answers versus link lists), **new entrants** (lowered barriers encouraging innovation).

**Adoption unknowns**

Perplexity&apos;s success depends on: actual adoption rates (will people change their default settings?), quality consistency at scale, monetization viability, the speed of Google&apos;s competitive response, and the evolving regulatory environment.

The integration represents a **significant milestone** in AI search competition, taking the battle directly to Google&apos;s most powerful distribution channel.&lt;/p&gt;</content:encoded><category>Products &amp; Services</category><category>Perplexity</category><category>Chrome integration</category><category>browser AI</category><category>AI search</category><category>Google competition</category></item><item><title>google-agentic-commerce/AP2: Building a Secure and Interoperable Future for AI-Driven Payments</title><link>https://www.thekb.eu/en/fiches/google-agentic-commerce-ap2-payment-protocol-2025-09-16/</link><guid isPermaLink="true">https://www.thekb.eu/en/fiches/google-agentic-commerce-ap2-payment-protocol-2025-09-16/</guid><description>Agent Payments Protocol (AP2) - Google Agentic Commerce - Secure AI-Driven Payments - GitHub</description><pubDate>Tue, 16 Sep 2025 00:00:00 GMT</pubDate><content:encoded>&lt;p&gt;The GitHub repository `google-agentic-commerce/AP2` introduces the **Agent Payments Protocol (AP2)**, an initiative to establish a secure and interoperable framework for AI-driven payment systems. The project&apos;s core mission is to enable a future where artificial intelligence can handle payment transactions seamlessly and safely across diverse platforms and agents.

**Practical resources and flexibility**

The repository serves as a practical resource, offering a collection of code samples and demos illustrating AP2&apos;s key components and features. While the provided samples rely on specific technologies such as the **Agent Development Kit (ADK) and Gemini 2.5 Flash**, the documentation explicitly states that the Agent Payments Protocol itself **does not depend** on these tools. This flexibility allows developers to integrate AP2 with their preferred agent development kits and AI models, fostering broad adoption and customization.

**Architecture and selected scenarios**

The repository is structured to guide users through various selected scenarios, designed to demonstrate different aspects of the protocol in action. These scenarios are organized under `samples/android/scenarios` for Android applications and `samples/python/scenarios` for Python implementations. Each scenario is self-contained, with a `README.md` file providing a detailed description along with clear local setup and execution instructions. A `run.sh` script is included to simplify execution.

**Authentication and configuration**

Running the scenarios requires **Python 3.10 or higher**. The repository describes two main authentication methods: a **Google API key**, recommended for development environments for its simplicity, or **Vertex AI** configuration, recommended for production deployments as more robust and scalable. Instructions are provided for setting environment variables or using a `.env` file for credentials.

**Core objects and future plans**

AP2&apos;s core objects and definitions are found in the `src/ap2/types` directory, with a **planned dedicated PyPI package release** to simplify installation and dependency management. The demos involve **multiple agents and servers**, with the majority of the source code residing in `samples/python/src`. Scenarios that include an Android application (shopping assistant) have dedicated source code in `samples/android`.

**Open and collaborative approach**

The project is licensed under **Apache-2.0**, reflecting an open and collaborative approach. This initiative represents Google&apos;s commitment to building the infrastructure enabling safe and efficient AI-driven commercial transactions. The distributed multi-agent/server architecture illustrates scalability considerations and the protocol&apos;s real-world applicability. The repository positions AP2 as a foundational technology for the emerging agentic commerce ecosystem, where AI agents autonomously manage financial transactions with appropriate security safeguards and interoperability standards.&lt;/p&gt;</content:encoded><category>Products &amp; Services</category><category>payments</category><category>agents</category><category>a2a</category><category>generative-ai</category><category>gen-ai</category></item><item><title>Google DeepMind Unveils Genie 3: Revolutionary Interactive Video Generation Model</title><link>https://www.thekb.eu/en/fiches/google-genie-3-video-generation-model-deepmind-2025-08-05/</link><guid isPermaLink="true">https://www.thekb.eu/en/fiches/google-genie-3-video-generation-model-deepmind-2025-08-05/</guid><description>Google DeepMind Genie 3 — interactive video generation model: world models, controllable generation, playable AI-generated games (deepmind.google)</description><pubDate>Tue, 05 Aug 2025 00:00:00 GMT</pubDate><content:encoded>&lt;p&gt;Google DeepMind announces **Genie 3**, a revolutionary **interactive video generation** model capable of creating **controllable, temporally coherent video** that responds to user actions in real time. Unlike previous video models producing fixed sequences, **Genie 3 functions as a world model** — understanding spatial relationships, physics, and causality — and enables **AI-generated interactive experiences**, including playable games created from text descriptions or images.

**Core innovation: controllable generation**

The fundamental advance is **user control during generation**. Genie 3 accepts continuous inputs — arrow keys, mouse movements, action commands — and generates video that responds appropriately. Example: the user requests &quot;a platform game in a forest,&quot; Genie generates the first frame, then the user **controls the character&apos;s movements**, with the model generating subsequent frames (jumps, movement, environment interactions). This **interactive loop** creates playable experiences rather than passive videos.

**World model architecture and training**

Genie 3 implements a **latent world model**: a compressed representation of an environment&apos;s physics, understanding of spatial relationships and object permanence, prediction of action consequences, temporal coherence over extended sequences. The model **does not run pre-programmed physics**: it learned physical rules by observing vast volumes of video game sequences (2D platform games as primary data, action annotations, varied visual styles), developing an **emergent understanding** of gravity, collisions, and motion dynamics. Its **11 billion parameters** allow it to capture fine-grained relationships between actions and visual consequences.

**Temporal coherence and applications**

Video models struggle to maintain object appearance, position, and physics across frames. Genie 3 addresses this through long-term memory mechanisms, physics-informed priors, spatial attention, and action conditioning, with markedly improved coherence. Applications: **rapid game prototyping**, custom educational games, accessibility, procedural content, no-code creative tools — a **democratization of game development**.

**Limitations and competition**

Acknowledged limitations: a ceiling on mechanics complexity, coherence degradation over very long sequences, imperfect control fidelity, high inference cost, training data bias. Against **Runway Gen-3**, **OpenAI Sora**, or Meta&apos;s Make-A-Video, Genie 3&apos;s **interactive control** is the key differentiator, a step toward **general-purpose world models**. In the long run, Genie 3 charts a trajectory toward general-purpose world simulators, AI-driven interactive experiences beyond gaming, and AI-generated virtual worlds responsive to user agency.&lt;/p&gt;</content:encoded><category>Products &amp; Services</category><category>Google</category><category>Genie 3</category><category>DeepMind</category><category>video generation</category><category>generative AI</category></item><item><title>Expanding AI Overviews and introducing AI Mode</title><link>https://www.thekb.eu/en/fiches/google-ai-mode-search-personalized-sites-2025-03-05/</link><guid isPermaLink="true">https://www.thekb.eu/en/fiches/google-ai-mode-search-personalized-sites-2025-03-05/</guid><description>Google AI Mode - Search transformation - Personalized sites - Generative search - Generative web</description><pubDate>Wed, 05 Mar 2025 00:00:00 GMT</pubDate><content:encoded>&lt;p&gt;Google launches **AI Mode**, a feature that profoundly transforms the online search experience. For each search result, a **personalized site is automatically generated**, tailored specifically to the user&apos;s query. This innovation represents a **paradigm shift** in how we access information online, and could mark the **end of traditional websites** as we know them.

**Fundamentals of the generative approach**

Rather than simply indexing and ranking existing web content, AI Mode **dynamically generates content** tailored to the search query. Two users searching for the same topic can thus receive entirely different generated &quot;sites,&quot; depending on context, search history, and the specifics of the query. The system analyzes the intent behind the search and builds the response from scratch, synthesizing information from multiple sources.

**Transformation of the web ecosystem**

Google&apos;s generative approach could **fundamentally redefine the web ecosystem**. If Google generates personalized content for each query, the traditional concept of a &quot;website&quot; potentially becomes obsolete. Content creators face an existential question: why maintain traditional sites if users primarily interact with versions generated by Google?

**Redefinition of SEO**

SEO, an entire industry built around ranking in Google results, faces a **complete redefinition**. Traditional tactics — keyword optimization, backlinks, technical SEO — could become irrelevant if Google generates instead of indexing. A new form of &quot;generative SEO&quot; could emerge, aimed at ensuring that AI systems correctly represent brands&apos; messages and information.

**Implications for business models**

The web&apos;s business model — advertising, subscriptions, affiliate marketing — relies on the assumption that users actually visit sites. **AI Mode threatens this model**. If users consume information directly from Google-generated results without visiting source sites, how do content creators get paid? Google will likely need to address this fundamental challenge to maintain a healthy content ecosystem.

**Content attribution and copyright**

The generated personalized sites raise complex questions of **attribution and copyright**. When AI synthesizes information from multiple sources to create a new &quot;site,&quot; who owns the resulting content? How are original sources credited and compensated? These legal and ethical questions will likely spark significant debate, even litigation.

**Transformation of the user experience**

From the user&apos;s perspective, AI Mode promises an **optimal experience**: information perfectly tailored to the query, no more need to navigate between multiple sites, reduced time between question and answer. But this also raises concerns about **filter bubbles, echo chambers**, and the loss of serendipitous discovery that characterizes traditional web browsing.

**Competitive implications**

AI Mode represents a **major escalation** in the race for search innovation. Competitors such as Microsoft (Bing with ChatGPT), Perplexity, and other AI-powered search engines will need to respond. A future where search engines generate instead of indexing could reshape the entire infrastructure of the Internet.

**Implementation questions**

Practical questions remain: how does Google guarantee accuracy? What mechanisms exist against misinformation? How does the system handle controversial topics? How fresh is the generated content? Can users verify sources?

The announcement of AI Mode signals **Google&apos;s vision for the future of search**: moving from a passive index to an active content generator. Whether this vision benefits the broader Internet ecosystem remains to be seen, but the transformation is already underway.&lt;/p&gt;</content:encoded><category>Products &amp; Services</category><category>Google Search</category><category>AI Mode</category><category>Generative search</category><category>Personalization</category><category>Generative web</category></item></channel></rss>