Workflow discovery
We sit with your team, map the work as it actually happens, and find the highest-leverage gaps.
agentic AI for real business problems
We don't drop a deck and disappear. We embed senior engineers inside your business, walk the floor, find the gaps where work breaks down, and ship production agents that actually solve the problem - with evals, guardrails, and audit trails baked in.
The gap between an impressive Loom demo and a regulated production system is where 90% of AI projects die. They lack evals, hallucinate at the wrong moment, leak data, or simply fall over under real load.
We're forward-deployed engineers. We sit inside your team, learn the workflow, and ship agentic systems that survive the messiness of real enterprise: regulated processes, audit trails, vendor lock-in, multi-tenant data, and budget guardrails included.
End-to-end agentic AI engineering - from forward-deployed discovery through regulated production deployment.
We sit with your team, map the work as it actually happens, and find the highest-leverage gaps.
Pattern selection, tool design, memory model, and policy layer for each agent.
Vector indexes, hybrid retrieval, and grounding pipelines tuned for your data.
LLM-as-judge, golden sets, regression suites, and live shadow testing.
PII detection, prompt-injection defense, output policy, and human-in-loop.
Self-hosted, hybrid, or fully managed on AWS, Azure, or GCP.
Tracing, metrics, cost, and quality dashboards built into the runtime.
On-call, SLOs, and continuous improvement loops once your agents are live.
A predictable, evals-first delivery model that compounds across every agent you ship.
Senior engineers join your standups in week one. We learn the work the way the team actually does it.
We surface the gaps, size opportunity, and pick the agent that pays for the engagement first.
Agent design, tools, RAG, and guardrails wired into a working system with eval harness in place.
Roll out under SLOs with on-call, incident response, and continuous evals. We don't ghost.
Everything decision-makers and engineers ask before kicking off.
Our engineers are embedded inside your team - in your Slack, your codebase, your standups, your office where it makes sense. We don't write a spec from a Zoom call and disappear. We learn the workflow as it actually runs, find the gap, and ship into your environment under your review.
Chatbots answer questions. Copilots assist a user. Agentic systems take actions on behalf of the user - looking up data, calling tools, making decisions, and handing off across specialist agents. They require deeper engineering: tool contracts, guardrails, memory, evaluation, and observability.
Yes. We build provider-agnostic agentic systems that run on OpenAI, Anthropic, AWS Bedrock, Google Gemini, or open-weight models on your infrastructure. We help you choose the right model per task and design for portability.
We layer multiple controls - grounded retrieval, tool-driven verification, structured outputs, policy guards, and continuous evaluations on golden sets. Critical workflows are wrapped with human-in-the-loop review and confidence thresholds. We measure hallucination rate and treat it like any other production SLO.
Most engagements run as embedded pods (3-6 months) or fixed-scope sprints (4-6 weeks per agent). We operate on milestones with weekly demos, eval reports, and a clear path to production from week one.
We engineer to the controls those standards require - PII redaction, audit trails, role-based access, model risk reviews, and continuous evidence collection - and we deploy in your environment so your existing certifications cover the engagement. Where you need a specific attestation, we work with your security team to scope it together.
Yes. Most customers retain Techimax pods for managed operations under SLOs - including on-call, regression suites, model upgrades, evals, and continuous improvement. We can also fully transition to your team with knowledge transfer.
A first agent in production typically runs USD 60-120K depending on scope and integrations. A multi-agent enterprise platform runs USD 250K-1M+ for a 6-12 month engagement. We provide fixed-fee proposals after a one-week scoping sprint.
In 60 minutes with a senior engineer, you walk away with the gaps mapped, the agent worth building first, a risk read on what your team has already shipped, and a reference architecture - at zero cost, no obligation.
Where the work breaks down today and which gap an agent should close first - calibrated to your business.
Where engineering and ops hours actually go - and where forward-deployed delivery takes you next.
An honest view of what your team has already vibe-coded and what it needs to survive production.
Reference architecture for your runtime, evals, RAG, and integrations - vendor-agnostic.
Reserve a 60-minute working session with a senior AI engineer and practice lead.
Tell us the workflow you'd like solved. A senior engineer responds with a fixed-scope plan in 48 hours - including evals, guardrails, and a path to production.