Unlock the Future with

Generative AI

Empowering Innovation with AI-Driven Creativity
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Bring it to Life

Innovate, Create, and Scale with Generative AI

Your ideas—enhanced. Innovation—faster. Productivity—elevated. Creativity—unleashed.

At Ontrac Solutions, we help you harness the power of Generative AI and cutting-edge AI technologies to drive real business transformation. Plus, with the exclusive Google Cloud GenAI consumption credit program, you can save while building your next AI-powered solution.

Let’s explore the possibilities together.

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Navigating AI with Confidence

AI: Art of the Possible

We empower your company to explore the untapped potential of artificial intelligence, discovering new opportunities to innovate, optimize, and succeed.

Frequently Asked Questions

Get answers to common questions about our GenAI consulting services.

What does a GenAI consulting engagement actually look like?
Most engagements start with a 4-week AI Readiness Audit covering data, infrastructure, governance, and use-case prioritization, followed by a 90-day production pilot. The deliverable is a working AI capability tied to a measurable business metric — not a slide deck. Ontrac has run this pattern with mid-market enterprises across financial services, healthcare, and PE-backed portfolio companies.
How do you decide which generative AI use case to start with?
We score candidate use cases on four dimensions: data readiness, business-value defensibility, technical feasibility, and change-management risk. The highest-ROI starting points for most mid-market enterprises are document summarization, support deflection, and proposal automation — not customer-facing chatbots, which carry the most risk.
What's the difference between GenAI consulting and traditional AI consulting?
Traditional AI consulting focused on predictive ML models trained on customer data. GenAI consulting focuses on foundation-model adaptation: retrieval-augmented generation, fine-tuning, and agentic workflows. The skill set, infrastructure, and governance challenges (hallucination, IP leakage) are different, and we staff each engagement accordingly.
How much should a mid-market enterprise budget for AI in year one?
Budget ranges we typically see: $150K–$350K for a single production pilot including the readiness audit, vendor and tooling costs, and 90 days of build. Recurring spend after year one (cloud, model API, and maintenance) usually runs $40K–$120K per pilot annually. Be wary of vendors that lead with seven-figure year-one quotes.
Do you build with OpenAI, Anthropic, Google, or open-source models?
All of them, depending on the use case. We don't lock clients into a single vendor. Decision factors include data sensitivity, latency tolerance, cost-per-token at expected volume, and fine-tuning needs. Reasoning-heavy tasks typically use frontier models, while cost-sensitive bulk workloads often run on open-source models.
How do you handle data privacy and AI governance?
Every engagement starts with a data-classification audit. Sensitive data (PHI, PII, IP) is processed inside the client's cloud tenant rather than via public APIs. We deliver a documented AI governance framework covering use-case approval, monitoring, and human-in-the-loop checkpoints — pre-empting the audit questions that block production deployments.

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