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X @Forbes
Forbes· 2025-09-10 22:00
This Startup Just Raised $13 Million To Make AI Agents Easy For Any Team https://t.co/pKsIzJ9VyP https://t.co/tW8JLm0tFs ...
X @s4mmy
s4mmy· 2025-09-10 18:54
AI Agents will make up 90%+ of Internet activity by 2026.We’ve seen GIZA churn $2bn in fully autonomous yield in the past few months with Pulse (Pendle DeFi strategies) going live today.Prediction market agents will outperform humans or simply replace the traditional user interfaces.There’s a sports betting TAO vault going live imminently that will enable you to earn double digit returns with a risk profile akin to stablecoin yield.AI tool capabilities are compounding enabling users to automate large parts ...
AI Agents与Agentic AI 的范式之争?
自动驾驶之心· 2025-09-05 16:03
Core Viewpoint - The article discusses the evolution and differentiation between AI Agents and Agentic AI, highlighting their respective roles in automating tasks and collaborating on complex objectives, with a focus on the advancements since the introduction of ChatGPT in November 2022 [2][10][57]. Group 1: Evolution of AI Technology - The emergence of ChatGPT in November 2022 marked a pivotal moment in AI development, leading to increased interest in AI Agents and Agentic AI [2][4]. - The historical context of AI Agents dates back to the 1970s with systems like MYCIN and DENDRAL, which were limited to rule-based operations without learning capabilities [10][11]. - The transition to AI Agents occurred with the introduction of frameworks like AutoGPT and BabyAGI in 2023, enabling these agents to autonomously complete multi-step tasks by integrating LLMs with external tools [12][13]. Group 2: Definition and Characteristics of AI Agents - AI Agents are defined as modular systems driven by LLMs and LIMs for task automation, addressing the limitations of traditional automation scripts [13][16]. - Three core features distinguish AI Agents: autonomy, task specificity, and reactivity [16][17]. - The dual-engine capability of LLMs and LIMs is essential for AI Agents, allowing them to operate independently and adapt to dynamic environments [17][21]. Group 3: Transition to Agentic AI - Agentic AI represents a shift from individual AI Agents to collaborative systems that can tackle complex tasks through multi-agent cooperation [24][27]. - The key difference between AI Agents and Agentic AI lies in the introduction of system-level intelligence, enabling broader autonomy and the management of multi-step tasks [27][29]. - Agentic AI systems utilize a coordination layer and shared memory to enhance collaboration and task management among multiple agents [33][36]. Group 4: Applications and Use Cases - The article outlines various applications of Agentic AI, including automated fund application writing, collaborative agricultural harvesting, and clinical decision support in healthcare [37][43]. - In these scenarios, Agentic AI systems demonstrate their ability to manage complex tasks efficiently through specialized agents working in unison [38][43]. Group 5: Challenges and Future Directions - The article identifies key challenges facing AI Agents and Agentic AI, including causal reasoning deficits, coordination bottlenecks, and the need for improved interpretability [48][50]. - Proposed solutions include enhancing retrieval-augmented generation (RAG), implementing causal modeling, and establishing governance frameworks to address ethical concerns [52][53]. - Future development paths for AI Agents and Agentic AI focus on scaling multi-agent collaboration, domain customization, and evolving into human collaborative partners [56][59].
X @Forbes
Forbes· 2025-09-05 13:14
This Startup Just Raised $13 Million To Make AI Agents Easy For Any Team https://t.co/Dml3E5ooMm ...
X @Forbes
Forbes· 2025-09-05 12:05
This Startup Just Raised $13 Million To Make AI Agents Easy For Any Teamhttps://t.co/F5rTzO5oGB https://t.co/d7s5T4whLs ...
China’s DeepSeek Develops Advanced AI Agents
Bloomberg Technology· 2025-09-04 20:20
Deep sea, actually, despite the sort of volatility of April, which deep sea cause in markets, it moves slower than some of the other Chinese names working on models. But the whole point is that this is a genetic. They want something that goes beyond the chapel.Yeah, that's right. And I think we've all been a little bit surprised at how little we've heard from Deep Sea in the last eight months since it upended the markets. We've seen a glut of products from Chinese and US rivals.And there's a lot of speculat ...
X @LBank.com
LBank.com· 2025-09-01 16:09
🎙️ From Identity to AI Agents: Exploring Matchain’s Road to Mass Adoption📅 Sep 3, 2025 | 🕒 12:00 PM UTC🎙️ Host:@LBank_Exchange🤝 Co-Host:@xmuha0🎤 Guests:@matchain_io & @petrixbarbosa📰 Media Observers:@CoinGapeMedia@cryptodotnews👉 Set a reminder:https://t.co/kunOisolgs#LBankSpaces #Matchain #AI #Crypto ...
X @s4mmy
s4mmy· 2025-08-30 07:27
AI & Crypto Market Overview - The industry believes in the future of AI and AI agent tokens [1] - The industry highlights VIRTUAL and Wayfinder as examples in the AI space [1] Investment Opportunity - The industry suggests readers explore the AI sector early [1]
X @Avi Chawla
Avi Chawla· 2025-08-29 19:24
AI Agent Evolution - AI agents have evolved from simple LLMs to sophisticated systems with reasoning, memory, and tool use [1] - Early transformer-based chatbots processed small chunks of input, exemplified by ChatGPT's initial 4k token context window [1] - LLMs expanded to handle thousands of tokens, enabling parsing of larger documents and longer conversations [1] - Retrieval-Augmented Generation (RAG) provided access to fresh and external data, enhancing LLM outputs with tools like search APIs and calculators [1] - Multimodal LLMs process text, images, and audio, incorporating memory for persistence across interactions [1] Key Components of Advanced AI Agents - Current AI agents are equipped with short-term, long-term, and episodic memory [1] - Tool calling capabilities, including search, APIs, and actions, are integral to advanced AI agents [1] - Reasoning and ReAct-based decision-making are crucial components of modern AI agents [1]
X @Avi Chawla
Avi Chawla· 2025-08-29 06:30
If you found it insightful, reshare it with your network.Find me → @_avichawlaEvery day, I share tutorials and insights on DS, ML, LLMs, and RAGs.Avi Chawla (@_avichawla):5 levels of evolution of AI Agents.Over the last few years, we’ve gone from simple LLMs → to fully-fledged Agentic systems with reasoning, memory, and tool use.Here’s a step-by-step breakdown.1) Small context window LLMs- Input: Text → LLM → Output: Text- Early https://t.co/DvNTsnXpYT ...