
A practical, engineering‑led framework for turning gen AI investment into real adoption, measurable impact, and lasting culture.
Most organizations are investing in AI, but they struggle to make it part of everyday work. Tools get rolled out, excitement spikes, and then adoption stalls. Varonis’ Yoav Lax wanted to create a different outcome.
Yoav, Varonis’ AI Solutions Architect, has spent the last two years working hands‑on with engineering teams to move AI from experimentation into everyday work. In this blog, we’ll share the practical framework he used to turn early skepticism into real AI adoption — so other teams can apply the same approach and see daily, measurable impact for themselves.
When we started our journey with gen AI at Varonis, developers voiced legitimate concerns:
Those sentiments reflected real risks and friction points. A transformation would only stick if we addressed these questions with process, transparency, and measurable impact — not slogans.
Within two years, our engineering team’s adoption of gen AI moved to 100% (2025). Over the same period, we saw faster delivery cycles and fewer production bugs, indicating that code quality rose as adoption grew. These are the steps we took:
Our first principle for teamwide adoption of gen AI was to open access paired with leadership’s buy‑in. We started small, giving licenses to influential engineers and all leaders from day one, then expanded as we validated impact. Weekly feedback loops surfaced friction quickly and created momentum.
The goal was to learn fast, compare workflows “with/without” GenAI support, and build an environment that makes adoption inevitable.
[To increase adoption amongst our teams, we also formed an AI Guild, an exclusive hub of practitioners who shape standards, share patterns, and unblock teams, and appointed AI Champions across groups to be “field agents” for enablement.
We opened enrichment sessions (news, initiatives, success stories) to the broader org, where hundreds joined live. Most importantly, we ran hands‑on workshops that lifted people from basic usage to advanced techniques in a single day.
This matters because adoption accelerates when practitioners have a community, a playbook, and visible role models.
To cement habits, we hosted internal gen AI Hackathons focused on real day‑to‑day problems. Think of these as “dry runs” before touching core product code; practical building beats theoretical training every time.
In the weeks leading up to the event, we prepared our teams for success:
As a result, when the hackathon day arrived, teams were genuinely ready to deploy. Several projects shipped to production within weeks, proving that experimentation can — and should — translate into operational value.
We published team‑level adoption scorecards so groups could benchmark themselves, set targets, and respectively compete. We also analysed friction by IDE. For example, we observed higher acceptance and interaction rates in VS Code than in some other IDEs, so part of the adoption plan included nudging toward VS Code where appropriate. Visibility plus practical guidance beat mandates.
Beyond activation, we measured pull‑request (PR) dynamics where value becomes undeniable:
These are business outcomes — faster throughput with fewer quality surprises — and the metrics leaders care about.
We organized the journey into five phases:
This gave Varonis a clear path and a shared language for progress.
With speed and quality improving, our engineers adopted a builder’s mindset toward AI. Since the last hackathon, a community emerged that swaps patterns and ships with confidence.
The point isn’t novelty for novelty’s sake — it’s to cultivate an organization that learns and delivers better because AI is embedded.
Our internal AI Hub is the organizational backbone that turns AI from a tool to a culture. It’s a web app that centralizes how teams discover, use, and measure AI — so adoption is consistent, secure, and tied to outcomes.
Our AI Hub includes:
To have your organization adopt gen AI, start with approved access and leadership buy‑in, build a guild and champions, run hands‑on workshops and hackathons, measure relentlessly, and ship real AI‑powered outcomes.
This can result in near‑universal adoption, faster delivery, fewer production bugs, and a steady stream of innovation.

