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المحتوى المقدم من Apes On Keys. يتم تحميل جميع محتويات البودكاست بما في ذلك الحلقات والرسومات وأوصاف البودكاست وتقديمها مباشرة بواسطة Apes On Keys أو شريك منصة البودكاست الخاص بهم. إذا كنت تعتقد أن شخصًا ما يستخدم عملك المحمي بحقوق الطبع والنشر دون إذنك، فيمكنك اتباع العملية الموضحة هنا https://ar.player.fm/legal.
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What It Takes To Onboard Agents by Anna Piñol at NfX

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المحتوى المقدم من Apes On Keys. يتم تحميل جميع محتويات البودكاست بما في ذلك الحلقات والرسومات وأوصاف البودكاست وتقديمها مباشرة بواسطة Apes On Keys أو شريك منصة البودكاست الخاص بهم. إذا كنت تعتقد أن شخصًا ما يستخدم عملك المحمي بحقوق الطبع والنشر دون إذنك، فيمكنك اتباع العملية الموضحة هنا https://ar.player.fm/legal.

Gist: Explores the challenges of AI agent adoption, identifying critical infrastructure needs like accountability, context understanding, and coordination to transform AI from experimental technology to practical, trustworthy workplace tools.

An AI voice reading of: "What It Takes To Onboard Agents" by Anna Piñol at NfX

Key Figures & Topics: Gemini, GPT-4, Large language models, McKinsey, UiPath, Claude, NFX, ElevenLabs, Robotic Process Automation, Blue Prism, Anna Pinole, David Villalon, Manuel Romero, Misa, Workfusion, AI, automation, Agents, infrastructure, Enterprise

Summary:
The podcast explores the current state of AI agents and the challenges in their widespread adoption. Despite rapid technological progress in AI capabilities, there is a significant gap between the intent to implement AI in organizations and actual implementation. The NFX representatives discuss how moving from traditional Robotic Process Automation (RPA) to Agentic Process Automation (APA) requires solving key infrastructure challenges.

To bridge the adoption gap, the episode identifies three critical layers needed for AI agent implementation: the accountability layer, the context layer, and the coordination layer. The accountability layer focuses on creating transparency and verifiable work, allowing organizations to understand and audit AI decision-making processes. The context layer involves developing systems that help AI agents understand a company's unique culture, goals, and unwritten knowledge, making them more adaptable and intelligent.

The final discussions center on the future of AI agents, emphasizing the need for interoperability, tools, and a collaborative ecosystem. The speakers predict a future where businesses will manage teams of AI agents across various functions, with the potential for agents to communicate, collaborate, and even exchange services. They highlight that solving these infrastructural challenges will be crucial in transforming AI agents from experimental technology to trusted, everyday tools.

1-liners:

  • "We are moving from robotic process automation to an agentic process automation."
  • "The world where we are all using AI agents each day is an inevitability."
  • "63% of leaders thought implementing AI was a high priority, but 91% of those respondents didn't feel prepared to do so."
  • "The key is reducing the risks, real and perceived, associated with implementation."
  • "A lot of what we learn at a new job isn't written down anywhere. It's learned by observation, intuition, through receiving feedback and asking clarifying questions."


too long didn't listen (tldl;)

  • The AI agent ecosystem is currently missing three critical infrastructure layers: accountability, context, and coordination, which are necessary for widespread enterprise adoption
  • Unlike Robotic Process Automation (RPA), AI agents powered by Large Language Models (LLMs) can handle more complex, unstructured tasks with greater adaptability
  • Enterprises need transparency in AI processes, requiring a 'chain of work' that shows exactly how and why an AI agent makes specific decisions
  • Successful AI agents must understand an organization's unique culture, communication style, and unwritten knowledge, not just follow rigid rules
  • The future of work will likely involve managing teams of AI agents across different business functions, requiring robust inter-agent communication and coordination systems
  • Building trust is crucial for AI agent adoption: organizations want systems that reduce implementation risks and provide verifiable, auditable outcomes
  • The emerging 'Business to Agent' (B2A) tooling ecosystem will be critical in empowering AI agents to become more autonomous and capable
  • While AI agent technology is progressing rapidly, there remains a significant gap between technological potential and actual enterprise implementation
  continue reading

8 حلقات

Artwork
iconمشاركة
 

Fetch error

Hmmm there seems to be a problem fetching this series right now. Last successful fetch was on April 25, 2025 05:10 (5M ago)

What now? This series will be checked again in the next day. If you believe it should be working, please verify the publisher's feed link below is valid and includes actual episode links. You can contact support to request the feed be immediately fetched.

Manage episode 468804767 series 3638292
المحتوى المقدم من Apes On Keys. يتم تحميل جميع محتويات البودكاست بما في ذلك الحلقات والرسومات وأوصاف البودكاست وتقديمها مباشرة بواسطة Apes On Keys أو شريك منصة البودكاست الخاص بهم. إذا كنت تعتقد أن شخصًا ما يستخدم عملك المحمي بحقوق الطبع والنشر دون إذنك، فيمكنك اتباع العملية الموضحة هنا https://ar.player.fm/legal.

Gist: Explores the challenges of AI agent adoption, identifying critical infrastructure needs like accountability, context understanding, and coordination to transform AI from experimental technology to practical, trustworthy workplace tools.

An AI voice reading of: "What It Takes To Onboard Agents" by Anna Piñol at NfX

Key Figures & Topics: Gemini, GPT-4, Large language models, McKinsey, UiPath, Claude, NFX, ElevenLabs, Robotic Process Automation, Blue Prism, Anna Pinole, David Villalon, Manuel Romero, Misa, Workfusion, AI, automation, Agents, infrastructure, Enterprise

Summary:
The podcast explores the current state of AI agents and the challenges in their widespread adoption. Despite rapid technological progress in AI capabilities, there is a significant gap between the intent to implement AI in organizations and actual implementation. The NFX representatives discuss how moving from traditional Robotic Process Automation (RPA) to Agentic Process Automation (APA) requires solving key infrastructure challenges.

To bridge the adoption gap, the episode identifies three critical layers needed for AI agent implementation: the accountability layer, the context layer, and the coordination layer. The accountability layer focuses on creating transparency and verifiable work, allowing organizations to understand and audit AI decision-making processes. The context layer involves developing systems that help AI agents understand a company's unique culture, goals, and unwritten knowledge, making them more adaptable and intelligent.

The final discussions center on the future of AI agents, emphasizing the need for interoperability, tools, and a collaborative ecosystem. The speakers predict a future where businesses will manage teams of AI agents across various functions, with the potential for agents to communicate, collaborate, and even exchange services. They highlight that solving these infrastructural challenges will be crucial in transforming AI agents from experimental technology to trusted, everyday tools.

1-liners:

  • "We are moving from robotic process automation to an agentic process automation."
  • "The world where we are all using AI agents each day is an inevitability."
  • "63% of leaders thought implementing AI was a high priority, but 91% of those respondents didn't feel prepared to do so."
  • "The key is reducing the risks, real and perceived, associated with implementation."
  • "A lot of what we learn at a new job isn't written down anywhere. It's learned by observation, intuition, through receiving feedback and asking clarifying questions."


too long didn't listen (tldl;)

  • The AI agent ecosystem is currently missing three critical infrastructure layers: accountability, context, and coordination, which are necessary for widespread enterprise adoption
  • Unlike Robotic Process Automation (RPA), AI agents powered by Large Language Models (LLMs) can handle more complex, unstructured tasks with greater adaptability
  • Enterprises need transparency in AI processes, requiring a 'chain of work' that shows exactly how and why an AI agent makes specific decisions
  • Successful AI agents must understand an organization's unique culture, communication style, and unwritten knowledge, not just follow rigid rules
  • The future of work will likely involve managing teams of AI agents across different business functions, requiring robust inter-agent communication and coordination systems
  • Building trust is crucial for AI agent adoption: organizations want systems that reduce implementation risks and provide verifiable, auditable outcomes
  • The emerging 'Business to Agent' (B2A) tooling ecosystem will be critical in empowering AI agents to become more autonomous and capable
  • While AI agent technology is progressing rapidly, there remains a significant gap between technological potential and actual enterprise implementation
  continue reading

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