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With $20M in funding, Solid Data has a solid plan to improve the reliability of AI agents - SiliconANGLE
With $20M in funding, Solid Data has a solid plan to improve the reliability of AI agents Solid Data Inc. is trying to help enterprises get around the problem of error-prone artificial intelligence agents after raising $20 million in seed funding today. The round, led by Team8 and SignalFire, will help Solid to accelerate the deployment of its AI-ready semantic models, which are designed to help AI systems verify, prepare and understand business data. The startup says it's tackling the problem of untrustworthy AI. Though AI agents offer the enticing prospect of automating business workflows and decision-making, they simply cannot be relied upon to do this with enough accuracy to take over from experienced humans. The problem is that AI agents don't properly understand the business context behind the data they're supposed to work with. That's because every organization does things differently, with key metrics for revenue, performance and customer activity being defined differently across teams and tools. There's a huge amount of inconsistency, and it means business leaders cannot trust the answers and insights generated by AI. "AI isn't failing because it lacks intelligence," Solid co-founder and Chief Executive Yoni Leitersdorf said in a blog post. "It's failing because it doesn't understand how businesses actually work." According to Leitersdorf, existing data infrastructure architectures aren't suitable for agentic AI systems. They're designed to store, process and query data, but they don't provide any clues into the meaning - or semantics - of that data, which evolves over time as organizations grow. "No matter how powerful the models are, AI can't deliver reliable results unless it understands the data it's using -- what the numbers mean, which rules apply, and which definitions the business actually trusts," the CEO said. "That understanding is missing in most enterprises today, and it's quietly becoming the biggest blocker to real AI impact." AI has trouble understanding semantics because enterprise data is notoriously fragmented and complex, and it's constantly changing over time as metrics evolve, definitions shift and rules vary by context. The business logic lives in things like dashboards, documentation and in people's heads, where it can't easily be accessed by AI models, Leitersdorf said. Though humans can get around this using their experience and judgment, AI agents don't possess this expertise, which means they can often generate conflicting answers, hesitate and fail to act when they should. Leitersdorf predicts that as AI becomes more capable at retrieving and analyzing business information, organizations are going to need to spend much more time on defining and validating business meaning in a systematic way. He refers to this nascent discipline as "semantic engineering": essentially, teaching AI how to interpret business data correctly over time, as organizations evolve. It's likely this role will be performed by today's data analysts, because they will have more time on their hands as AI takes over the manual aspects of data analytics work, he said. Solid will become an essential tool for these "semantic engineers" in future, Leitersdorf believes. Its semantic models are designed to create a single source of truth for business meaning and automate how it's maintained and tested over time. It applies an engineering-focused approach to semantics that ensures definitions are kept accurate and continually validated over time as business data and operations evolve. What Solid's semantic agents do is integrate with existing data platforms so they can learn the structure and meaning of enterprise data based on the nuances of each organization's business processes. Once they've got this logic nailed down, they'll keep it up to date whenever definitions change, ensuring it's always accurate. In this way, Solid provides a consistent foundation for AI systems and agents, making the answers and insights they generate much more reliable and ensuring that automated workflows don't break down. The startup said the impact of its semantic models is immediate, as the accuracy of AI responses rises from around 20% to 30% on average to more than 85%. In addition, it reduces the manual work associated with maintaining and testing business semantics by between 50% and 70%, freeing up data engineers to focus on other work. Solid also changes the timeline for AI deployments. New AI systems that used to take one to two years to deploy and stabilize can be gotten up and running within six months or less, allowing companies to move experiments into real, operational much more quickly, Leitersdorf said. To coincide with the general availability of its platform, Solid is offering all new customers a free, 30-day trial to see for themselves how much the reliability of their AI systems and agents will improve. Meanwhile, Solid will use the capital from today's round to accelerate its product development roadmap, expand its team and better support its growing customer base. SignalFire Principal Ryan Wexler said AI adoption is happening so fast that most organizations cannot keep their data aligned. "AI needs consistent business definitions to work, but historically those definitions have been manual, brittle and impossible to maintain at scale," he said. "What makes Solid different is that it automates the creation and ongoing maintenance of business meaning and treats it like a real engineering system.
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Israeli entrepreneurs create 'Semantics Engineering,' aiming to solve enterprise AI context crisis
Israeli entrepreneurs launched an AI system to address the "context crisis" in AI enterprise adoption, designed to ensure that artificial intelligence models can reliably understand and operate on their data. Solid, a new enterprise software company founded by Yoni Leitersdorf (CEO) and Tal Segalov (CTO), announced on Wednesday that it had raised $20 million in seed funding to solve one of the current limitations companies find when adapting their systems to an AI platform: data inconsistency. "In most large organizations, key metrics such as revenue, customer activity, or performance are defined differently across teams and tools," they explained and added, "These inconsistencies lead to conflicting reports, slow decision-making, and AI-generated answers that teams struggle to trust." According to Solid, AI systems today only store and read the data given to them, without analyzing its meaning. Because data consistency is highly manual, most large modern companies struggle to achieve it day-to-day. The company developed an AI-powered data intelligence platform that automatically discovers, documents, and builds business-aware semantic models from your company's existing data, queries, and tools. Revolutionizing data engineering According to Leitersdorf and Segalov, Solid is building the foundations of "Semantics Engineering," which they call the future discipline of dedicated engineers focused on systematically defining, validating, and evolving business meaning. "These Semantic Engineers will be responsible for teaching AI how to correctly interpret data as the business changes. Today's data analysts are well-positioned to evolve into this role, as automation increasingly handles the manual aspects of analytics and frees teams to focus on higher-level business understanding," they explained. "Solid is creating the context graph that can be understood by data scientists, data engineers, and AI agents alike. With this shared context graph, enterprises will be able to harness Generative AI with their own internal data," said Ryan Wexler, Principal at SignalFire, one of the two main seed investors of Solid alongside Team8. "Solid is the missing piece that unlocks AI's real potential inside the enterprise," assured Aviad Harell, Managing Partner at Team8. Currently, Solid's solution can be implemented alongside modern data platforms, including Snowflake, Databricks, and BigQuery. During a partnership with SurveyMonkey, a software-as-a-service company that provides online survey and forms tools, Meenal Iyer, VP of data at SurveyMonkey, said, "Solid has given us a strong foundation where definitions stay aligned as our data and business evolve, so AI can deliver answers and power workflows we can actually trust."
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Israeli startup Solid Data secured $20 million in seed funding to tackle the enterprise AI context crisis through a new discipline called Semantics Engineering. The company's AI-ready semantic models aim to boost AI agent reliability from 20-30% to over 85% by teaching systems to understand business data correctly, addressing the critical problem of data inconsistency that prevents organizations from trusting AI-generated insights.

Solid Data Inc. announced $20 million in seed funding led by Team8 and SignalFire to tackle one of the most pressing challenges facing Enterprise AI adoption today: the inability of AI agents to reliably understand and operate on business data
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. Founded by Israeli entrepreneurs Yoni Leitersdorf (CEO) and Tal Segalov (CTO), the startup is introducing AI-ready semantic models designed to help AI systems verify, prepare and understand business data in ways that existing infrastructure cannot2
.The enterprise AI context crisis stems from a fundamental problem: while AI agents promise to automate business workflows and decision-making, they lack understanding of the business context behind the data they process. Key metrics for revenue, performance and customer activity are defined differently across teams and tools within organizations, creating data inconsistency that undermines trust in AI-generated insights
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. "AI isn't failing because it lacks intelligence," Leitersdorf explained. "It's failing because it doesn't understand how businesses actually work"1
.Solid Data is pioneering what its founders call Semantics Engineering, a nascent discipline focused on systematically defining, validating and evolving business meaning so AI can interpret data correctly as organizations change
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. This approach recognizes that existing data platforms are built to store, process and query data but don't provide clues into the contextual meaning or semantics of that data, which evolves as organizations grow1
.The challenge lies in how business logic lives across dashboards, documentation and in people's heads, making it inaccessible to AI models. While humans navigate this complexity using experience and judgment, the reliability of AI agents suffers dramatically without this expertise, often generating conflicting answers or failing to act when needed
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. Leitersdorf predicts that data analysts are well-positioned to evolve into semantic engineers as automation handles more manual aspects of analytics work, freeing teams to focus on higher-level business understanding2
.Solid's AI-powered data intelligence platform automatically discovers, documents and builds business-aware semantic models from a company's existing data, queries and tools
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. These semantic agents integrate with modern data platforms including Snowflake, Databricks and BigQuery to learn the structure and meaning of enterprise data based on each organization's unique business processes1
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.Once the evolving business logic is captured, Solid keeps it updated whenever definitions change, creating a single source of truth for business meaning that's automatically maintained and tested over time. This engineering-focused approach to semantics ensures definitions remain accurate and continually validated as business data and operations evolve
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. Ryan Wexler, Principal at SignalFire, noted that "Solid is creating the context graph that can be understood by data scientists, data engineers, and AI agents alike"2
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The impact of implementing Solid's platform is substantial and immediate. The accuracy of AI responses jumps from around 20% to 30% on average to more than 85%, while manual work associated with maintaining and testing business semantics drops by 50% to 70%
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. This frees data engineers to focus on strategic initiatives rather than constant validation work.Deployment timelines also compress dramatically. New AI systems that previously took one to two years to deploy and stabilize can now be operational within six months or less, allowing companies to move experiments into real production environments much faster
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. Meenal Iyer, VP of data at SurveyMonkey, shared her experience: "Solid has given us a strong foundation where definitions stay aligned as our data and business evolve, so AI can deliver answers and power workflows we can actually trust"2
.Aviad Harell, Managing Partner at Team8, called Solid "the missing piece that unlocks AI's real potential inside the enterprise"
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. For organizations struggling with Generative AI implementation, this addresses a critical blocker: without reliable understanding of business data, even the most powerful AI models cannot deliver trustworthy results1
.To coincide with general availability, Solid is offering new customers a free 30-day trial to demonstrate how much their AI systems will improve
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. The company plans to use the funding to accelerate product development as enterprises increasingly recognize that semantic understanding, not just computational power, determines whether AI agents can be trusted with critical business operations.Summarized by
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