Dmitry Komarov
Independent AI/LLM architect · Former Head of AI in banking
Secure Enterprise AI. From pilots to production.
I help companies turn GenAI ideas into measurable production systems: LLM platforms, agentic workflows, AI security, automation, observability, cost control, and governance.
Head of AI in Rosbank; AI Lead across the T-Bank transition
Built AI platforms and production LLM workflows for regulated environments
Managed AI/product analytics teams of 30+ specialists
Python since 2013; TypeScript, infrastructure, local LLMs, servers and AI hardware
Published on LLM injection and AI security at Hightech.fm
AI Engineer at The Value Engineering: LLMs, agents, automation, AI readiness
services
How I can help
I can help at different levels of intent: a quick expert review, a readiness audit, an LLM/agent security review, production development, or ongoing AI leadership.
Fast entryAI/LLM ConsultationA focused review of your AI task, architecture, vendor choice, workflow, or security risk.
- Clear next step
- Architecture and risk notes
- Audit or build recommendation
- Use-case map
- Risk and data readiness score
- Roadmap with business impact
- Threat model
- Attack surface review
- Guardrails and observability plan
- Working pilot
- Production architecture
- Evals, tracing, and cost controls
- AI roadmap
- Vendor and architecture decisions
- Team enablement and governance
writing
Writing and field notes
I write about the parts of AI work that decide whether a system survives production: context, evals, tool risk, security, local models, and operating discipline.
Why enterprise AI breaks between demo and productionEnterprise AI usually breaks after the demo, when the system meets real data, permissions, workflows, evals, security, cost, and ownership.AI Readiness Audit: how to find where LLMs and agents can actually create ROIBefore building another AI pilot, map the process, data, risk, operating model, and ROI path. This is the audit I run before recommending a build.Context engineering for enterprise agents: why prompts are not enoughEnterprise agents fail when teams treat context as a long prompt. Production systems need scoped memory, retrieval, permissions, tool context, evals, and observability.
process
How we start
- You send a short brief or Telegram message.
- I clarify the business goal, risks, data context, and whether I can help.
- If there is fit, you get a concrete next step: consultation, audit, security review, pilot, or longer-term AI leadership.