Close Menu
    DevStackTipsDevStackTips
    • Home
    • News & Updates
      1. Tech & Work
      2. View All

      This week in AI dev tools: Gemini 2.5 Pro and Flash GA, GitHub Copilot Spaces, and more (June 20, 2025)

      June 20, 2025

      Gemini 2.5 Pro and Flash are generally available and Gemini 2.5 Flash-Lite preview is announced

      June 19, 2025

      CSS Cascade Layers Vs. BEM Vs. Utility Classes: Specificity Control

      June 19, 2025

      IBM launches new integration to help unify AI security and governance

      June 18, 2025

      I replaced my Pixel 9 Pro with a $750 Android for a week. Now I’m questioning my loyalty

      June 21, 2025

      Less UFO, more Wall-E: You’ve never seen the best robot vacuum on the market

      June 21, 2025

      ChatGPT can now sum up your meetings – here’s how to use it (and who can)

      June 21, 2025

      One of World of Warcraft’s deadliest entities makes a world-shattering return after nearly 20 years — and he’s city-sized

      June 20, 2025
    • Development
      1. Algorithms & Data Structures
      2. Artificial Intelligence
      3. Back-End Development
      4. Databases
      5. Front-End Development
      6. Libraries & Frameworks
      7. Machine Learning
      8. Security
      9. Software Engineering
      10. Tools & IDEs
      11. Web Design
      12. Web Development
      13. Web Security
      14. Programming Languages
        • PHP
        • JavaScript
      Featured

      vitorccs/laravel-csv

      June 21, 2025
      Recent

      vitorccs/laravel-csv

      June 21, 2025

      Dr. Axel’s JavaScript flashcards

      June 20, 2025

      Syntax-Highlight – Custom Element For Syntax Highlighting Content

      June 20, 2025
    • Operating Systems
      1. Windows
      2. Linux
      3. macOS
      Featured

      RBDOOM-3-BFG is a modernization effort of DOOM-3-BFG

      June 21, 2025
      Recent

      RBDOOM-3-BFG is a modernization effort of DOOM-3-BFG

      June 21, 2025

      Rilasciato XLibre 25.0: il nuovo fork del server grafico X.Org si presenta al mondo GNU/Linux

      June 21, 2025

      Scoperte 2 Nuove Vulnerabilità che Minacciano il Mondo GNU/Linux

      June 21, 2025
    • Learning Resources
      • Books
      • Cheatsheets
      • Tutorials & Guides
    Home»Development»Machine Learning»Google Releases 76-Page Whitepaper on AI Agents: A Deep Technical Dive into Agentic RAG, Evaluation Frameworks, and Real-World Architectures

    Google Releases 76-Page Whitepaper on AI Agents: A Deep Technical Dive into Agentic RAG, Evaluation Frameworks, and Real-World Architectures

    May 6, 2025

    Google has published the second installment in its Agents Companion series—an in-depth 76-page whitepaper aimed at professionals developing advanced AI agent systems. Building on foundational concepts from the first release, this new edition focuses on operationalizing agents at scale, with specific emphasis on agent evaluation, multi-agent collaboration, and the evolution of Retrieval-Augmented Generation (RAG) into more adaptive, intelligent pipelines.

    Agentic RAG: From Static Retrieval to Iterative Reasoning

    At the center of this release is the evolution of RAG architectures. Traditional RAG pipelines typically involve static queries to vector stores followed by synthesis via large language models. However, this linear approach often fails in multi-perspective or multi-hop information retrieval.

    Agentic RAG reframes the process by introducing autonomous retrieval agents that reason iteratively and adjust their behavior based on intermediate results. These agents improve retrieval precision and adaptability through:

    • Context-Aware Query Expansion: Agents reformulate search queries dynamically based on evolving task context.
    • Multi-Step Decomposition: Complex queries are broken into logical subtasks, each addressed in sequence.
    • Adaptive Source Selection: Instead of querying a fixed vector store, agents select optimal sources contextually.
    • Fact Verification: Dedicated evaluator agents validate retrieved content for consistency and grounding before synthesis.

    The net result is a more intelligent RAG pipeline, capable of responding to nuanced information needs in high-stakes domains such as healthcare, legal compliance, and financial intelligence.

    Rigorous Evaluation of Agent Behavior

    Evaluating the performance of AI agents requires a distinct methodology from that used for static LLM outputs. Google’s framework separates agent evaluation into three primary dimensions:

    1. Capability Assessment: Benchmarking the agent’s ability to follow instructions, plan, reason, and use tools. Tools like AgentBench, PlanBench, and BFCL are highlighted for this purpose.
    2. Trajectory and Tool Use Analysis: Instead of focusing solely on outcomes, developers are encouraged to trace the agent’s action sequence (trajectory) and compare it to expected behavior using precision, recall, and match-based metrics.
    3. Final Response Evaluation: Evaluation of the agent’s output through autoraters—LLMs acting as evaluators—and human-in-the-loop methods. This ensures that assessments include both objective metrics and human-judged qualities like helpfulness and tone.

    This process enables observability across both the reasoning and execution layers of agents, which is critical for production deployments.

    Scaling to Multi-Agent Architectures

    As real-world systems grow in complexity, Google’s whitepaper emphasizes a shift toward multi-agent architectures, where specialized agents collaborate, communicate, and self-correct.

    Key benefits include:

    • Modular Reasoning: Tasks are decomposed across planner, retriever, executor, and validator agents.
    • Fault Tolerance: Redundant checks and peer hand-offs increase system reliability.
    • Improved Scalability: Specialized agents can be independently scaled or replaced.

    Evaluation strategies adapt accordingly. Developers must track not only final task success but also coordination quality, adherence to delegated plans, and agent utilization efficiency. Trajectory analysis remains the primary lens, extended across multiple agents for system-level evaluation.

    Real-World Applications: From Enterprise Automation to Automotive AI

    The second half of the whitepaper focuses on real-world implementation patterns:

    AgentSpace and NotebookLM Enterprise

    Google’s AgentSpace is introduced as an enterprise-grade orchestration and governance platform for agent systems. It supports agent creation, deployment, and monitoring, incorporating Google Cloud’s security and IAM primitives. NotebookLM Enterprise, a research assistant framework, enables contextual summarization, multimodal interaction, and audio-based information synthesis.

    Automotive AI Case Study

    A highlight of the paper is a fully implemented multi-agent system within a connected vehicle context. Here, agents are designed for specialized tasks—navigation, messaging, media control, and user support—organized using design patterns such as:

    • Hierarchical Orchestration: Central agent routes tasks to domain experts.
    • Diamond Pattern: Responses are refined post-hoc by moderation agents.
    • Peer-to-Peer Handoff: Agents detect misclassification and reroute queries autonomously.
    • Collaborative Synthesis: Responses are merged across agents via a Response Mixer.
    • Adaptive Looping: Agents iteratively refine results until satisfactory outputs are achieved.

    This modular design allows automotive systems to balance low-latency, on-device tasks (e.g., climate control) with more resource-intensive, cloud-based reasoning (e.g., restaurant recommendations).


    Check out the Full Guide here. Also, don’t forget to follow us on Twitter.

    Here’s a brief overview of what we’re building at Marktechpost:

    • Newsletter– airesearchinsights.com/(30k+ subscribers)
    • miniCON AI Events – minicon.marktechpost.com
    • AI Reports & Magazines – magazine.marktechpost.com
    • AI Dev & Research News – marktechpost.com (1M+ monthly readers)
    • ML News Community – r/machinelearningnews (92k+ members)

    The post Google Releases 76-Page Whitepaper on AI Agents: A Deep Technical Dive into Agentic RAG, Evaluation Frameworks, and Real-World Architectures appeared first on MarkTechPost.

    Source: Read More 

    Facebook Twitter Reddit Email Copy Link
    Previous ArticleImplementing an AgentQL Model Context Protocol (MCP) Server
    Next Article AI SaaS Tools For Businesses in 2025

    Related Posts

    Machine Learning

    How to Evaluate Jailbreak Methods: A Case Study with the StrongREJECT Benchmark

    June 21, 2025
    Machine Learning

    Meta AI Researchers Introduced a Scalable Byte-Level Autoregressive U-Net Model That Outperforms Token-Based Transformers Across Language Modeling Benchmarks

    June 21, 2025
    Leave A Reply Cancel Reply

    For security, use of Google's reCAPTCHA service is required which is subject to the Google Privacy Policy and Terms of Use.

    Continue Reading

    Palo Alto Networks PAN-OS Vulnerability Enables Admin to Execute Root User Actions

    Security

    CVE-2025-37823 – Linux Kernel Net-Sched HFSC Use-After-Free Vulnerability

    Common Vulnerabilities and Exposures (CVEs)

    Building Generative AI-Powered Apps: A Hands-On Guide for Developers

    Tech & Work

    I tested these new Shokz clip-on earbuds, and they give Bose’s Ultra Open a run for their money

    News & Updates

    Highlights

    Artificial Intelligence

    DeepMind’s latest research at NeurIPS 2022

    May 27, 2025

    NeurIPS is the world’s largest conference in artificial intelligence (AI) and machine learning (ML), and…

    Life in 3280: Inside the Dome Cities, Cyborg Aristocracy & the Galactic Peace We Never Imagined

    May 2, 2025

    AI craze mania with AI action figures and turning pets into people

    April 11, 2025

    Exploit CVE-2019-9978: Remote Code Execution in Social Warfare WordPress Plugin (<= 3.5.2)

    June 3, 2025
    © DevStackTips 2025. All rights reserved.
    • Contact
    • Privacy Policy

    Type above and press Enter to search. Press Esc to cancel.