Workflow
AI agents
icon
Search documents
X @Andy
Andy· 2025-07-10 22:53
Remember the AI agents meta on SOL and Base?What a time to be alive. ...
Production software keeps breaking and it will only get worse — Anish Agarwal, Traversal.ai
AI Engineer· 2025-07-10 16:29
Problem Statement - The current software engineering workflow is inefficient, with too much time spent on troubleshooting production incidents [2][9] - Existing approaches to automated troubleshooting, such as AIOps and LLMs, have fundamental limitations [10][11][12][13][14][15][16][17][18] - Troubleshooting is becoming increasingly complex due to AI-generated code and increasingly complex systems [3][4] Solution: Traversal's Approach - Traversal combines causal machine learning (statistics), reasoning models (semantics), and a novel agentic control flow (swarms of agents) for autonomous troubleshooting [19][20][21][22][23][24] - Causal machine learning helps identify cause-and-effect relationships in data, addressing the issue of correlated failures [20][21] - Reasoning models provide semantic understanding of logs, metrics, and code [22] - Swarms of agents enable exhaustive search through telemetry data in an efficient way [23][24] Results and Impact - Traversal has achieved a 40% reduction in mean time to resolution (MTTR) for Digital Ocean, a cloud provider serving hundreds of thousands of customers [32][37] - Traversal AI orchestrates a swarm of expert AIs to sift through petabytes of observability data in parallel, providing users with the root cause of incidents within five minutes [39][40] - Traversal integrates with various observability tools, processing trillions of logs [45] Future Applications - The principles of exhaustive search and swarms of agents can be applied to other domains such as network observability and cybersecurity [47]
高盛:中国软件_产品追踪_人工智能代理升级,多模态人工智能模型解锁应用场景;软件项目投标评审
Goldman Sachs· 2025-07-09 02:40
7 July 2025 | 9:24AM HKT China Software: Product Tracker: AI agents upgraded, multi-modal AI models to unlock use cases; Software projects bidding review We reviewed software product launches form 1Q25 till date (Exhibit 1), and see the momentum of AI-native applications and software with AI features new launches remaining strong in 2Q25, especially agentic AI, multi-modal AI model, and model deployment. Vendors across AI foundation models and applications are migrating from basic integration to LLMs to mor ...
X @Bankless
Bankless· 2025-07-07 13:03
Key Highlights of Agentic Commerce Protocol (ACP) in DeFAI - Virtual launched Agentic Commerce Protocol (ACP), a coordination layer for AI agents, facilitating transactions and communication across clusters for complex tasks [1] - ACP aims to be the SWIFT for AI agents, enabling interoperability and coordinated workflows [1][2] - Virtual supports dedicated ACP clusters, including the Autonomous Hedge Fund, featuring agents like @AIxVC_Axelrod [1] DeFAI Agents and Applications - Three ACP-integrated DeFAI agents are highlighted: @Mamo_agent (savings), @GigabrainGG (market analytics), and Virgen Capital (AI-native VC cluster) [2][3] - @Mamo_agent optimizes yield on $USDC (6.5% APY) and $cbBTC (<1%) [2] - Virgen Capital, by @VaderResearch, targets pre-TGE tokens and distributes returns to $VADER stakers [3] DeFAI Market Trends and Challenges - Two categories of DeFAI agents are emerging: onchain assistants and signal/yield agents [4] - Structuring blockchain data for agents to extract signal remains a challenge [4] - DeFi agents are expected to become the default interface for navigating onchain, simplifying access [5] Future Implications - DeFAI agents are seen as a natural evolution, smoothing out DeFi's interface friction [5] - ACP facilitates the transition of agents from isolated tools to coordinated systems, potentially leading to a unified onchain OS [5]
12-Factor Agents: Patterns of reliable LLM applications — Dex Horthy, HumanLayer
AI Engineer· 2025-07-03 20:50
Core Principles of Agent Building - The industry emphasizes rethinking agent development from first principles, applying established software engineering practices to build reliable agents [11] - The industry highlights the importance of owning the control flow in agent design, allowing for flexibility in managing execution and business states [24][25] - The industry suggests that agents should be stateless, with state management handled externally to provide greater flexibility and control [47][49] Key Factors for Reliable Agents - The industry recognizes the ability of LLMs to convert natural language into JSON as a fundamental capability for building effective agents [13] - The industry suggests that direct tool use by agents can be harmful, advocating for a more structured approach using JSON and deterministic code [14][16] - The industry emphasizes the need to own and optimize prompts and context windows to ensure the quality and reliability of agent outputs [30][33] Practical Applications and Considerations - The industry promotes the use of small, focused "micro agents" within deterministic workflows to improve manageability and reliability [40] - The industry encourages integrating agents with various communication channels (email, Slack, Discord, SMS) to meet users where they are [39] - The industry advises focusing on the "hard AI parts" of agent development, such as prompt engineering and flow optimization, rather than relying on frameworks to abstract away complexity [52]
X @Avi Chawla
Avi Chawla· 2025-07-01 06:32
AI Readiness & API Transformation - Every website must be "Agent-ready" in the coming era [1] - APIs need to be transformed into reliable, AI-ready tools [2] - Postman's 90-day AI readiness playbook details how to turn APIs into reliable, AI-ready tools [2] Key Components for AI-Ready APIs - Predictable structures are essential for AI agents [3] - Machine-readable metadata is crucial for AI understanding [3] - Standardized behavior is necessary for seamless AI interaction [3] Postman Playbook Highlights - Automatic documentation can be achieved by standardizing API format, Postman's Spec Hub automatically generates and validates API docs for both humans and AI agents without any manual work [2] - Validated specs can be turned into hosted, function-style endpoints, letting AI agents invoke APIs like native commands [3] Impact of AI Agents - Agents will make purchases, not humans [3] - Agents will find the best options, not humans [3] - Agents will fill out job applications, not humans [3]
Containing Agent Chaos — Solomon Hykes, Dagger
AI Engineer· 2025-06-28 16:30
AI agents promise breakthroughs but often deliver operational chaos. Building reliable, deployable systems with unpredictable LLMs feels like wrestling fog – testing outputs alone is insufficient when the underlying workflow is opaque and flaky. How do we move beyond fragile prototypes? This talk, from the creator of Docker, argues the solution lies outside the model: engineering reproducible execution workflows built on rigorous architectural discipline. Learn how containerization, applied not just to depl ...
Digital Asset Technologies Appoints Marcus Ingram as Chief Executive Officer and Director
Globenewswire· 2025-06-27 11:30
Group 1 - Digital Asset Technologies Inc. has appointed Marcus Ingram as the new CEO and Director, who will also continue as CEO of its portfolio company LiquidLink [1][2] - The appointment follows the resignation of Young Bann, who will remain as an Advisor to ensure a smooth transition [2] - Ingram aims to leverage blockchain technology to enhance payment systems and explore opportunities in Web3, DeFi, and decentralized infrastructure [3][4][5] Group 2 - Ingram believes LiquidLink has the potential to become a unicorn in a significant market and is committed to strategic investments in emerging digital economies [6] - Digital Asset Technologies focuses on equity investments in companies developing technology, particularly in blockchain and real-world asset tokenization [7] - LiquidLink is dedicated to building secure infrastructure for the tokenized economy, with its flagship product Xrpfy supporting multiple blockchains [8]
Taming Rogue AI Agents with Observability-Driven Evaluation — Jim Bennett, Galileo
AI Engineer· 2025-06-27 10:27
[Music] So I'm here to talk about taming rogue AI agents but essentially want to talk about uh evaluation driven development observability driven but really why we need observability. So, who uses AI? Is that Jim's stupid most stupid question of the day? Probably. Who trusts AI? Right. If you'd like to meet me after, I've got some snake oil you might be interested in buying. Yeah, we do not trust AI in the slightest. Now, different question. Who reads books? That's reading books. If you want some recommenda ...
Agentic Excellence: Mastering AI Agent Evals w/ Azure AI Evaluation SDK — Cedric Vidal, Microsoft
AI Engineer· 2025-06-27 10:04
AI Agent Evaluation - Azure AI Evaluation SDK is designed to rigorously assess agentic applications, focusing on capabilities, contextual understanding, and accuracy [1] - The SDK enables the creation of evaluations using structured test plans, scenarios, and advanced analytics to identify strengths and weaknesses of AI agents [1] - Companies are leveraging the SDK to enhance agent trustworthiness, reliability, and performance in conversational agents, data-driven decision-makers, and autonomous workflow orchestrators [1] Microsoft's AI Initiatives - Microsoft is promoting AI in startups and facilitating the transition of research and startup products to the market [1] - Cedric Vidal, Principal AI Advocate at Microsoft, specializes in Generative AI and the startup and research ecosystems [1] Industry Expertise - Cedric Vidal has experience as an Engineering Manager in the AI data labeling space for the self-driving industry and as CTO of a Fintech AI SAAS startup [1] - He also has 10 years of experience as a software engineering services consultant for major Fintech enterprises [1]