As Snowflake Intelligence (now in GA) begins making its way into the hands of data teams, business users, and AI leaders, Hakkoda is already busy helping client enterprises get the most out of its capabilities.
As one of Snowflake’s chosen launch partners, Hakkoda has had a front-row seat to the platform’s early capabilities, requirements, and real-world impact.
The following engagement offers a first look at what Snowflake Intelligence can deliver today when it is configured with the right patterns, the right context, and the right partnership.
Building Snowflake Intelligence the Right Way
Hakkoda recently partnered with a global performance apparel brand to bring natural-language access to one of their most valuable datasets. The goal: to empower business users to have a conversation with their data without waiting on dashboards, tickets, or analysts.
What unfolded was a real-life proving ground for the practical foundations that make Snowflake Intelligence successful. At the heart of the solution was a Snowflake Cortex Agent built on top of multiple core datasets. Through Snowflake Intelligence, users could ask everyday questions in plain English, and the agent would respond with clear, data-backed insights.
To achieve reliable performance, Hakkoda configured a Snowflake Cortex Analyst with the right semantic context: the definitions, relationships, synonyms, and metrics that reflect how the business actually speaks and works. Without that foundation, even the best model risks inconsistent or hallucinated responses. With it, AI becomes a dependable partner.
Snowflake’s semantic views played a central role. They allowed our team to encode business context in a structured, version-controlled format. This ensured the agent understood everything from column meanings to join logic to how different teams refer to the same concept. And because the client used dbt, Snowflake’s native dbt package made it seamless to manage semantic views through automated CI/CD, keeping them in sync with the underlying data.
The Power of Iteration and Real User Feedback
Snowflake Intelligence provides built-in feedback tools that allow AI teams to tune responses based on real-world interactions. Hakkoda used this signal to continuously refine prompts, semantics, and agent behavior throughout the engagement.
The result? More than 95% user satisfaction in both answer quality and accuracy by the end of the engagement.
That kind of trust doesn’t come from models alone. It comes from human-centered engineering that works directly with business stakeholders, understanding their expectations and optimizing the system around the kinds of burning questions they might ask.
Where Snowflake Intelligence Goes Next
While the engagement above focused on a single business domain, its success unlocked a much broader conversation. Once users experience natural-language access to data, they want it everywhere.
That raises important questions for any enterprise moving into AI-powered analytics:
- Should one agent handle multiple domains, or should each domain get its own?
- How do we scale context engineering across dozens of datasets? What does governance look like when agents proliferate?
- How do we ensure consistency, accuracy, and trust at enterprise scale?
This is where agent strategy and governance become as important as model configuration. And it’s where organizations increasingly look for seasoned partners who have navigated these patterns before.
Bringing It All Together
At Hakkoda, we don’t just help organizations explore exciting new Snowflake features. We help them operationalize those features and channel them into real business impact.
From semantic modeling to Cortex configuration to governance frameworks, we bring the technical patterns and best practices that turn promising POCs into production-grade capability.
Excited to start leveraging Snowflake Intelligence when it hits general or just looking to get your footing in the AI Data Cloud, let’s talk.