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welcome to the Burstiness and Perplexity community
Our mission is to create a true learning community where an exploration of AI, tools, agents and use cases can merge with thoughtful conversations about implications and fundamental ideas. To get a deeper overview of this Skool, click on the Classroom tab above, and enter the Welcome Classroom If you are joining, please consider engaging, not just lurking.Tell us about yourself and where you are in life journey and how tech and AI intersect it. for updates on research, models, and use cases, click on the Classrooms tab and then find the Bleeding Edge Classroom
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Google’s Managed MCP and the Rise of Agent-First Infrastructure
Death of the Wrapper: Google has fundamentally altered the trajectory of AI application development with the release of managed Model Context Protocol (MCP) servers for Google Cloud Platform (GCP). By treating AI agents as first-class citizens of the cloud infrastructure—rather than external clients that need custom API wrappers—Google is betting that the future of software interaction is not human-to-API, but agent-to-endpoint. 1. The Technology: What Actually Launched? Google’s release targets four key services, with a roadmap to cover the entire GCP catalog. • BigQuery MCP: Allows agents to query datasets, understand schema, and generate SQL without hallucinating column names. It uses Google’s existing “Discovery” mechanisms but formats the output specifically for LLM context windows. • Google Maps Platform: Agents can now perform “grounding” checks—verifying real-world addresses, calculating routes, or checking business hours as a validation step in a larger workflow. • Compute Engine & GKE: Perhaps the most radical addition. Agents can now read cluster status, check pod logs, and potentially restart services. This paves the way for “Self-Healing Infrastructure” where an agent detects a 500 error and creates a replacement pod automatically. The architecture utilizes a new StreamableHTTPConnectionParams method, allowing secure, stateless connections that don’t require a persistent WebSocket, fitting better with serverless enterprise architectures. 2. The Strategic Play: Why Now? This announcement coincides with the launch of Gemini 3 and the formation of the Agentic AI Foundation. Google is executing a “pincer movement” on the market: 1. Top-Down: Releasing state-of-the-art models (Gemini 3). 2. Bottom-Up: Owning the standard (MCP) that all models use to talk to data. By making GCP the “easiest place to run agents,” Google hopes to lure developers away from AWS and Azure. If your data lives in BigQuery, and BigQuery has a native “port” for your AI agent, moving that data to Amazon Redshift (which might require building a custom tool) becomes significantly less attractive.
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poetiq:Technical Analysis for Implementation
(Live build in the Hidden State Drift Mastermind) Poetiq has achieved state-of-the-art (SOTA) performance on ARC-AGI-2 with 54% accuracy at $30.57 per problem—breaking the 50% barrier for the first time and surpassing average human performance (60% is typically human baseline). This represents a 9-point improvement over the previous SOTA (45% by Gemini 3 Deep Think) at less than half the cost($77.16 → $30.57). Key Achievement Date: December 5, 2025 (officially verified by ARC Prize) 1. THE CORE INNOVATION: THE META-SYSTEM What It Is Poetiq's breakthrough is NOT a new foundation model. Instead, it's a meta-system that orchestrates existing frontier LLMs through: 1. Intelligent Multi-Agent Coordination - Multiple LLM "experts" that propose solutions, evaluate feedback, and self-audit 2. Test-Time Compute - Iterative reasoning and self-verification at inference time (not training time) 3. Adaptive Problem-Solving - Automatically selects which models, prompting strategies, and approaches (including code generation) for each specific problem 4. Cost Optimization - Achieves efficiency through intelligent early stopping and resource allocation Fundamental Design Principles "The prompt is an interface, not the intelligence" - Doesn't ask a single question; uses iterative loops - LLM generates proposed solution → receives feedback → analyzes → refines → repeats - Multi-step self-improving process builds and perfects answers incrementally Self-Auditing - System autonomously decides when it has sufficient information - Monitors its own progress and terminates when solution is satisfactory - Minimizes wasteful computation Why This Works for ARC-AGI-2 ARC-AGI-2 tests: - Abstract pattern recognition - "figure out the rule from 3 examples" - Fluid intelligence - NOT knowledge-based, requires true generalization - Spatial reasoning - Complex visual pattern relationships The core problem: Raw frontier models score below human baseline because their stochasticity makes knowledge extraction unreliable. Poetiq's meta-system systematizes knowledge extraction for complex reasoning.
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Introduction
Hey everyone 👋 Just joined Burstiness & Perplexity and I’m pumped to be here. The mix of AI across legal, supply chain, marketing, and SEO is exactly what I’ve been looking for 🤖 I’m currently exploring how to better use AI for:• Content creation that actually converts• Workflow automation & agents• Data analysis for smarter decision-making My goal is to go beyond just “using tools” and really understand how to apply AI in practical, scalable ways across different industries. Looking forward to learning from you all and sharing insights as I go. Let’s build something powerful.
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Let's build a lot for this community! 💪
Hi everyone 👋 I am an AI and full-stack engineer working on LLM systems, AI agents, automation, and multimodal AI (text, voice, and vision). Most of my work focuses on building AI systems that run in real production environments, not just demos. I usually connect LLMs with APIs, databases, tools, and business logic so they can operate reliably inside real workflows. *AI / ML Systems* • LLM orchestration pipelines • tool use (ReAct-style) and reasoning loops • safety guardrails and grounded generation • evaluation and reliability pipelines • multi-agent workflows and memory systems • RAG systems (vector databases, hybrid search, custom retrievers) • document intelligence (PDF extraction, OCR, structured data pipelines) • multimodal AI (text, voice, vision, audio pipelines) *Full-Stack & Infrastructure* • React / Next.js frontends • FastAPI / NestJS backend systems • secure APIs and RBAC design • automation pipelines (n8n, Zapier, Make, webhooks) • API integrations and workflow orchestration • cloud deployment and scalable backend systems • monitoring, observability, and production reliability Recently I have also been exploring AI systems in the music industry, including music understanding, audio analysis, recommendation systems, and AI-assisted production workflows. I have worked on systems in areas like healthcare AI, document intelligence, and automation platforms. For this good community, Let's build perfect a lot ! 💪
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