The AI Operations Layer for IT Teams
PractIQ standardizes, manages and automates how IT departments work with AI across the entire SDLC – from analysis to QA.
PractIQ is built by the Inteca team
PractIQ is an AI platform for the enterprise SDLC
BANKING · FINANCE · ENTERPRISE · LARGE IT DEPARTMENTS
TRUSTED BY LEADING ENTERPRISES
ABOUT PRACTIQ
What is PractIQ?
PractIQ is an AI Delivery Operating System – not another AI tool, but an operating model that defines how teams work with AI in software delivery.
An operating model that defines how you work with AI
PractIQ integrates with your organization’s existing systems – documentation, code repositories, standards – to understand its context. It operates based on proven SDLC practices, validating quality and compliance with context at every stage.
The output is deployment-ready products: standards-compliant code, technical specifications, E2E test coverage and documentation.
Workflow in PractIQ
PractIQ integrates with your systems, processes context through SDLC practices, and delivers deployment-ready outputs — with continuous validation of results at every stage.
PractIQ understands your IT ecosystem
Deployment-ready outputs
Practices are modular — you can implement one, several, or all five. Each works independently, and together they create a coherent AI operating model for the entire SDLC.
SDLC PRACTICES
Five PractIQ Practices
Behind each practice stands an orchestrated team of AI agents – they share your organization’s context, build knowledge models and verify every artifact with human involvement.
01
Analysis
AI supports requirements gathering and verification. Complete, consistent and traceable from project day one.
02
Documentation
Automatic generation and quality control of technical documentation — whether you’re working with new code, an existing system or legacy.
03
Architecture
AI-assisted design with automatic C4, ADR and DSL generation. Architecture documentation over 90% faster.
04
Development
Structured agentic coding – uniform quality and structure in every piece of AI-generated code.
05
QA
Quality built into every SDLC stage. Full output traceability using Playwright, Gherkin, WireMock and Jest.
Each practice is self-contained. Deploy one, three or five — it’s your call. Individually they work independently, together they form a complete operating model covering the entire development lifecycle.
USE CASES
Three Scenarios. Three Concrete Answers.
New project, existing system expansion, legacy exit – PractIQ addresses each of these cases.
Forward Engineering
Greenfield – new projects
Instead of starting from a blank page, your team gets a standardized, AI-driven operating model for the entire SDLC.
Backward Engineering
Brownfield – existing systems
To modernize, you first need to understand. PractIQ reconstructs missing documentation and architecture directly from source code.
Backward Engineering
Legacy systems
When you have the full picture of your systems, you can act. Rewrite applications, extract knowledge from code, replace vendor-locked solutions.

Why PractIQ?
PractIQ sets the framework for human-AI collaboration in software delivery. Order, repeatability, predictability and measurability – at organizational scale.
clarity
Governance
Defines the rules of collaboration between people, AI agents and processes – who is responsible for what, under which rules and with what outcome.
STANDARDS
Repeatability
Uniform standards and outcomes in every project and at every stage — regardless of who is on the team.
CERTAINTY
Predictability
Ongoing validation and consistent patterns across the entire SDLC. No more situations where “this project looked completely different.”
Control
Control
Traceability at every step instead of an opaque process. CTOs and CIOs can measure and demonstrate AI value at the organizational level.
FAQ
Frequently Asked Questions About PractIQ
Book a PractIQ Demo — no commitments, no sales pressure.
What to Expect:
⏱️30-minute video call | Scheduled within 48 hours
Zero sales pressure. Just expert guidance to help you make informed decisions.









