Solid Data raises $20M to solve enterprise AI's context crisis with Semantics Engineering

2 Sources

Share

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.

News article

Solid Data Secures $20 Million to Address Enterprise AI Reliability Crisis

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

1

. 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 cannot

2

.

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

1

. "AI isn't failing because it lacks intelligence," Leitersdorf explained. "It's failing because it doesn't understand how businesses actually work"

1

.

Introducing Semantics Engineering as a New Discipline

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

2

. 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 grow

1

.

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

1

. 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 understanding

2

.

Business-Aware Semantic Models Create Single Source of Truth

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

2

. 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 processes

1

2

.

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

1

. 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

.

Dramatic Improvements in AI Accuracy and Deployment Speed

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%

1

. 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

1

. 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

.

What This Means for Enterprise AI Adoption

Aviad Harell, Managing Partner at Team8, called Solid "the missing piece that unlocks AI's real potential inside the enterprise"

2

. 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 results

1

.

To coincide with general availability, Solid is offering new customers a free 30-day trial to demonstrate how much their AI systems will improve

1

. 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.

Today's Top Stories

TheOutpost.ai

Your Daily Dose of Curated AI News

Don’t drown in AI news. We cut through the noise - filtering, ranking and summarizing the most important AI news, breakthroughs and research daily. Spend less time searching for the latest in AI and get straight to action.

© 2026 Triveous Technologies Private Limited
Instagram logo
LinkedIn logo