BitcoinWorld Enterprise AI’s Breakthrough: Maisa AI Secures $25M to Conquer the 95% Failure Rate with Agentic Solutions In a world where digital innovation often promises boundless potential, from decentralized finance to cutting-edge artificial intelligence, the reality can sometimes fall short of expectations. Just as navigating the crypto markets requires a keen eye for reliability and verifiable outcomes, enterprises venturing into AI are encountering a stark challenge: a staggering 95% enterprise AI failure rate for generative AI pilots. This alarming statistic, revealed by MIT’s NANDA initiative, highlights a critical need for solutions that can deliver on AI’s promise without the pervasive issues of unreliability and opacity. Enter Maisa AI, a year-old startup that has just secured a significant $25 million seed round to revolutionize how businesses adopt and trust AI. Why is Enterprise AI Struggling with a 95% Failure Rate? The promise of generative AI to transform business operations has led to widespread experimentation, yet most companies find their pilot projects falling flat. The core issue lies in the nature of current AI systems, which often operate as ‘opaque black boxes.’ This lack of transparency makes it incredibly difficult for organizations to trust AI with critical tasks, leading to high rates of hallucinations and unpredictable outputs. As Maisa AI CEO David Villalón notes, the challenge isn’t just about generating responses, but about ensuring those responses are reliable and auditable. Imagine reviewing ‘three months of work done in five minutes’ and needing to verify its accuracy; the human effort required becomes unfeasible. This fundamental flaw in current enterprise AI deployments is what Maisa AI aims to address head-on, focusing on building systems that are not only intelligent but also accountable. Maisa AI’s Vision: Pioneering Accountable Agentic AI Rather than abandoning AI, the most forward-thinking organizations are now exploring agentic AI systems. These systems are designed to learn, adapt, and be supervised, moving beyond simple response generation to building robust, verifiable processes. Maisa AI’s approach, centered on ‘chain-of-work,’ uses AI to construct the execution process itself, ensuring a structured and auditable pathway to results. This is a significant departure from ‘vibe coding’ platforms, which primarily focus on using AI to build the responses directly. With its new $25 million seed round, Maisa AI has launched Maisa Studio, a model-agnostic, self-serve platform that empowers users to deploy digital workers trainable with natural language. This platform is built on the premise that true enterprise automation demands accountable AI agents, a critical differentiator in a market flooded with less reliable solutions. Beyond Rules: Unlocking Advanced AI Automation with Trust Maisa AI is redefining AI automation by focusing on trustworthiness and accountability. Its proprietary systems, HALP (Human-Augmented LLM Processing) and KPU (Knowledge Processing Unit), are at the heart of this innovation. HALP works like a student at a blackboard, engaging users to understand their needs while the digital workers meticulously outline each step of the process. This interactive method ensures human oversight and clarifies the AI’s intended actions. The KPU is a deterministic system specifically engineered to limit hallucinations, a common pitfall in generative AI. By prioritizing these technical challenges, Maisa AI has developed a solution that resonates deeply with companies needing to apply AI to critical, high-stakes tasks. Clients in sectors like banking, car manufacturing, and energy are already leveraging Maisa AI in production, showcasing its ability to unlock productivity gains without the rigid, predefined rules or extensive manual programming typically associated with traditional Robotic Process Automation (RPA). Furthermore, Maisa AI offers flexible deployment options, including secure cloud or on-premise solutions, catering to diverse enterprise needs. Fueling Growth: Maisa AI’s Strategic Funding and Expansion The $25 million seed round, led by European VC firm Creandum, underscores the market’s confidence in Maisa AI’s unique vision. This substantial investment follows a $5 million pre-seed round last December, which saw participation from San Francisco-based venture firms NFX and Village Global. Notably, U.S. firm Forgepoint Capital International also joined this new round via its European joint venture with Spanish bank Banco Santander, highlighting Maisa AI’s appeal for regulated sectors demanding high levels of security and compliance. With dual headquarters in Valencia and San Francisco, Maisa AI is strategically positioned for global expansion. The company plans to significantly grow its team from 35 to 65 people by the first quarter of 2026 to meet escalating demand. As CEO David Villalón observed regarding the ‘AI framework gold rush,’ a ‘quick start’ can quickly turn into a ‘long nightmare’ without reliability and auditability. Maisa AI aims to differentiate itself from competitors like CrewAI and other workflow automation products by focusing on complex use cases that demand accountability from non-technical users. The startup anticipates rapid growth as it begins serving its waiting list later this year, with Villalón confidently stating, ‘We are going to show the market that there is a company that is delivering what has been promised, and that it’s working.’ The Future of Enterprise AI: Trust and Accountability Maisa AI’s successful funding round and innovative approach mark a pivotal moment in the evolution of enterprise AI. By tackling the critical issue of the 95% AI failure rate with a commitment to accountable, agentic systems, Maisa AI is paving the way for a new era of trust and reliability in artificial intelligence. Their focus on ‘chain-of-work,’ human-augmented processing, and deterministic knowledge units ensures that digital workers can be deployed with confidence, even in the most sensitive and regulated environments. As businesses continue to seek transformative productivity gains, Maisa AI stands ready to deliver on the true promise of AI, ensuring that innovation is matched with verifiable results and unwavering accountability. To learn more about the latest AI market trends, explore our article on key developments shaping AI models features. This post Enterprise AI’s Breakthrough: Maisa AI Secures $25M to Conquer the 95% Failure Rate with Agentic Solutions first appeared on BitcoinWorld and is written by Editorial TeamBitcoinWorld Enterprise AI’s Breakthrough: Maisa AI Secures $25M to Conquer the 95% Failure Rate with Agentic Solutions In a world where digital innovation often promises boundless potential, from decentralized finance to cutting-edge artificial intelligence, the reality can sometimes fall short of expectations. Just as navigating the crypto markets requires a keen eye for reliability and verifiable outcomes, enterprises venturing into AI are encountering a stark challenge: a staggering 95% enterprise AI failure rate for generative AI pilots. This alarming statistic, revealed by MIT’s NANDA initiative, highlights a critical need for solutions that can deliver on AI’s promise without the pervasive issues of unreliability and opacity. Enter Maisa AI, a year-old startup that has just secured a significant $25 million seed round to revolutionize how businesses adopt and trust AI. Why is Enterprise AI Struggling with a 95% Failure Rate? The promise of generative AI to transform business operations has led to widespread experimentation, yet most companies find their pilot projects falling flat. The core issue lies in the nature of current AI systems, which often operate as ‘opaque black boxes.’ This lack of transparency makes it incredibly difficult for organizations to trust AI with critical tasks, leading to high rates of hallucinations and unpredictable outputs. As Maisa AI CEO David Villalón notes, the challenge isn’t just about generating responses, but about ensuring those responses are reliable and auditable. Imagine reviewing ‘three months of work done in five minutes’ and needing to verify its accuracy; the human effort required becomes unfeasible. This fundamental flaw in current enterprise AI deployments is what Maisa AI aims to address head-on, focusing on building systems that are not only intelligent but also accountable. Maisa AI’s Vision: Pioneering Accountable Agentic AI Rather than abandoning AI, the most forward-thinking organizations are now exploring agentic AI systems. These systems are designed to learn, adapt, and be supervised, moving beyond simple response generation to building robust, verifiable processes. Maisa AI’s approach, centered on ‘chain-of-work,’ uses AI to construct the execution process itself, ensuring a structured and auditable pathway to results. This is a significant departure from ‘vibe coding’ platforms, which primarily focus on using AI to build the responses directly. With its new $25 million seed round, Maisa AI has launched Maisa Studio, a model-agnostic, self-serve platform that empowers users to deploy digital workers trainable with natural language. This platform is built on the premise that true enterprise automation demands accountable AI agents, a critical differentiator in a market flooded with less reliable solutions. Beyond Rules: Unlocking Advanced AI Automation with Trust Maisa AI is redefining AI automation by focusing on trustworthiness and accountability. Its proprietary systems, HALP (Human-Augmented LLM Processing) and KPU (Knowledge Processing Unit), are at the heart of this innovation. HALP works like a student at a blackboard, engaging users to understand their needs while the digital workers meticulously outline each step of the process. This interactive method ensures human oversight and clarifies the AI’s intended actions. The KPU is a deterministic system specifically engineered to limit hallucinations, a common pitfall in generative AI. By prioritizing these technical challenges, Maisa AI has developed a solution that resonates deeply with companies needing to apply AI to critical, high-stakes tasks. Clients in sectors like banking, car manufacturing, and energy are already leveraging Maisa AI in production, showcasing its ability to unlock productivity gains without the rigid, predefined rules or extensive manual programming typically associated with traditional Robotic Process Automation (RPA). Furthermore, Maisa AI offers flexible deployment options, including secure cloud or on-premise solutions, catering to diverse enterprise needs. Fueling Growth: Maisa AI’s Strategic Funding and Expansion The $25 million seed round, led by European VC firm Creandum, underscores the market’s confidence in Maisa AI’s unique vision. This substantial investment follows a $5 million pre-seed round last December, which saw participation from San Francisco-based venture firms NFX and Village Global. Notably, U.S. firm Forgepoint Capital International also joined this new round via its European joint venture with Spanish bank Banco Santander, highlighting Maisa AI’s appeal for regulated sectors demanding high levels of security and compliance. With dual headquarters in Valencia and San Francisco, Maisa AI is strategically positioned for global expansion. The company plans to significantly grow its team from 35 to 65 people by the first quarter of 2026 to meet escalating demand. As CEO David Villalón observed regarding the ‘AI framework gold rush,’ a ‘quick start’ can quickly turn into a ‘long nightmare’ without reliability and auditability. Maisa AI aims to differentiate itself from competitors like CrewAI and other workflow automation products by focusing on complex use cases that demand accountability from non-technical users. The startup anticipates rapid growth as it begins serving its waiting list later this year, with Villalón confidently stating, ‘We are going to show the market that there is a company that is delivering what has been promised, and that it’s working.’ The Future of Enterprise AI: Trust and Accountability Maisa AI’s successful funding round and innovative approach mark a pivotal moment in the evolution of enterprise AI. By tackling the critical issue of the 95% AI failure rate with a commitment to accountable, agentic systems, Maisa AI is paving the way for a new era of trust and reliability in artificial intelligence. Their focus on ‘chain-of-work,’ human-augmented processing, and deterministic knowledge units ensures that digital workers can be deployed with confidence, even in the most sensitive and regulated environments. As businesses continue to seek transformative productivity gains, Maisa AI stands ready to deliver on the true promise of AI, ensuring that innovation is matched with verifiable results and unwavering accountability. To learn more about the latest AI market trends, explore our article on key developments shaping AI models features. This post Enterprise AI’s Breakthrough: Maisa AI Secures $25M to Conquer the 95% Failure Rate with Agentic Solutions first appeared on BitcoinWorld and is written by Editorial Team

Enterprise AI’s Breakthrough: Maisa AI Secures $25M to Conquer the 95% Failure Rate with Agentic Solutions

BitcoinWorld

Enterprise AI’s Breakthrough: Maisa AI Secures $25M to Conquer the 95% Failure Rate with Agentic Solutions

In a world where digital innovation often promises boundless potential, from decentralized finance to cutting-edge artificial intelligence, the reality can sometimes fall short of expectations. Just as navigating the crypto markets requires a keen eye for reliability and verifiable outcomes, enterprises venturing into AI are encountering a stark challenge: a staggering 95% enterprise AI failure rate for generative AI pilots. This alarming statistic, revealed by MIT’s NANDA initiative, highlights a critical need for solutions that can deliver on AI’s promise without the pervasive issues of unreliability and opacity. Enter Maisa AI, a year-old startup that has just secured a significant $25 million seed round to revolutionize how businesses adopt and trust AI.

Why is Enterprise AI Struggling with a 95% Failure Rate?

The promise of generative AI to transform business operations has led to widespread experimentation, yet most companies find their pilot projects falling flat. The core issue lies in the nature of current AI systems, which often operate as ‘opaque black boxes.’ This lack of transparency makes it incredibly difficult for organizations to trust AI with critical tasks, leading to high rates of hallucinations and unpredictable outputs. As Maisa AI CEO David Villalón notes, the challenge isn’t just about generating responses, but about ensuring those responses are reliable and auditable. Imagine reviewing ‘three months of work done in five minutes’ and needing to verify its accuracy; the human effort required becomes unfeasible. This fundamental flaw in current enterprise AI deployments is what Maisa AI aims to address head-on, focusing on building systems that are not only intelligent but also accountable.

Maisa AI’s Vision: Pioneering Accountable Agentic AI

Rather than abandoning AI, the most forward-thinking organizations are now exploring agentic AI systems. These systems are designed to learn, adapt, and be supervised, moving beyond simple response generation to building robust, verifiable processes. Maisa AI’s approach, centered on ‘chain-of-work,’ uses AI to construct the execution process itself, ensuring a structured and auditable pathway to results. This is a significant departure from ‘vibe coding’ platforms, which primarily focus on using AI to build the responses directly. With its new $25 million seed round, Maisa AI has launched Maisa Studio, a model-agnostic, self-serve platform that empowers users to deploy digital workers trainable with natural language. This platform is built on the premise that true enterprise automation demands accountable AI agents, a critical differentiator in a market flooded with less reliable solutions.

Beyond Rules: Unlocking Advanced AI Automation with Trust

Maisa AI is redefining AI automation by focusing on trustworthiness and accountability. Its proprietary systems, HALP (Human-Augmented LLM Processing) and KPU (Knowledge Processing Unit), are at the heart of this innovation. HALP works like a student at a blackboard, engaging users to understand their needs while the digital workers meticulously outline each step of the process. This interactive method ensures human oversight and clarifies the AI’s intended actions. The KPU is a deterministic system specifically engineered to limit hallucinations, a common pitfall in generative AI. By prioritizing these technical challenges, Maisa AI has developed a solution that resonates deeply with companies needing to apply AI to critical, high-stakes tasks. Clients in sectors like banking, car manufacturing, and energy are already leveraging Maisa AI in production, showcasing its ability to unlock productivity gains without the rigid, predefined rules or extensive manual programming typically associated with traditional Robotic Process Automation (RPA). Furthermore, Maisa AI offers flexible deployment options, including secure cloud or on-premise solutions, catering to diverse enterprise needs.

Fueling Growth: Maisa AI’s Strategic Funding and Expansion

The $25 million seed round, led by European VC firm Creandum, underscores the market’s confidence in Maisa AI’s unique vision. This substantial investment follows a $5 million pre-seed round last December, which saw participation from San Francisco-based venture firms NFX and Village Global. Notably, U.S. firm Forgepoint Capital International also joined this new round via its European joint venture with Spanish bank Banco Santander, highlighting Maisa AI’s appeal for regulated sectors demanding high levels of security and compliance. With dual headquarters in Valencia and San Francisco, Maisa AI is strategically positioned for global expansion. The company plans to significantly grow its team from 35 to 65 people by the first quarter of 2026 to meet escalating demand. As CEO David Villalón observed regarding the ‘AI framework gold rush,’ a ‘quick start’ can quickly turn into a ‘long nightmare’ without reliability and auditability. Maisa AI aims to differentiate itself from competitors like CrewAI and other workflow automation products by focusing on complex use cases that demand accountability from non-technical users. The startup anticipates rapid growth as it begins serving its waiting list later this year, with Villalón confidently stating, ‘We are going to show the market that there is a company that is delivering what has been promised, and that it’s working.’

The Future of Enterprise AI: Trust and Accountability

Maisa AI’s successful funding round and innovative approach mark a pivotal moment in the evolution of enterprise AI. By tackling the critical issue of the 95% AI failure rate with a commitment to accountable, agentic systems, Maisa AI is paving the way for a new era of trust and reliability in artificial intelligence. Their focus on ‘chain-of-work,’ human-augmented processing, and deterministic knowledge units ensures that digital workers can be deployed with confidence, even in the most sensitive and regulated environments. As businesses continue to seek transformative productivity gains, Maisa AI stands ready to deliver on the true promise of AI, ensuring that innovation is matched with verifiable results and unwavering accountability.

To learn more about the latest AI market trends, explore our article on key developments shaping AI models features.

This post Enterprise AI’s Breakthrough: Maisa AI Secures $25M to Conquer the 95% Failure Rate with Agentic Solutions first appeared on BitcoinWorld and is written by Editorial Team

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