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Qualigentic

Qualigentic — Hero

Agentic AI built for software quality.

The end-to-end platform that reads requirements, generates tests, executes them, and maintains your suite — on your infrastructure, on your terms.

On-premise & Private Cloud
Mehrfach-Framework
DORA · Solvency II · PSD2
Qualigentic — The Challenge

CI/CD ships faster. QA capacity does not. Regulators are now part of the conversation.

60–70%
of QA effort is spent maintaining existing tests — not writing new ones
DORA
Solvency II · PSD2 — quality is now an audit topic. Regulators want evidence chains, not screenshots.
Generic
AI ≠ QA AI
Coding assistants generate code. They do not execute, monitor, or maintain a test suite.
Traditionelle QA-Tools nutzen KI nicht nativ

Manuelles Skripting und getrennte Automatisierung können bei kürzeren Release-Zyklen nicht mithalten.

Generische KI-Assistenten generieren Tests ohne Governance

No audit trail, no project context, no integration with the QA lifecycle — and no data residency control.

Keine Rückverfolgbarkeit zwischen Anforderungen, Tests und Ausführung

Quality reporting becomes guesswork. Regulator-facing evidence is incomplete or missing entirely.

Quality teams need their own AI

Agentic, governed, and on your infrastructure — not a generic productivity tool for individual engineers.

Qualigentic — Capabilities

Six capabilities. One platform. Built specifically for the QA function.

From requirements to audit-grade evidence. Not a generic coding assistant — agentic AI specialised in software quality.

01

Requirements → Test Cases

From Jira, ALM, or spec text to executable test cases — automatically.

  • Positive Fälle, negative Fälle und Grenzfälle
  • Connects to Jira · ALM · Confluence
  • Free-text input from PMs or BAs
  • Reduzierter technischer Vorbereitungsaufwand
02

Multi-framework Generation

Production-ready scripts across all major frameworks. No proprietary runtime.

  • Selenium · Cypress · Playwright
  • Robot Framework
  • Open standards in, open standards out
03

Autonomous Maintenance

Agents detect stale, broken, and redundant tests and refactor them automatically.

  • Erkennung von veralteten oder redundanten Tests
  • Self-healing scripts after code changes
  • Impact analysis on every commit
04

Coverage & Gap Analytics

Functional coverage maps, gap recommendations and risk-weighted scoring.

  • Funktionale Abdeckung Analyse
  • Gap recommendations and new scenarios
  • Redundanz- und Duplikaterkennung
05

Intelligent Execution Analysis

Separate application failures from script failures. Pattern detection across runs.

  • App- vs. Skriptfehlerklassifizierung
  • Fehlermustererkennung
  • Einblicke zur Weiterentwicklung der Suite
06

Audit-grade Traceability

Requirement → test → execution → result. Signed, archived, retrievable on demand.

  • Full DORA / Solvency II / PSD2 evidence chain
  • RBAC, audit logs and retention policies
  • Regulator-facing evidence in one query
Qualigentic — Comparison

Why Qualigentic?

Generic AI is a productivity tool for individual engineers. Qualigentic is a platform for the QA function.

Fähigkeit Generic AI Assistants Qualigentic
Generate test code from requirements Suggestion only Production-ready
Execute tests, not just write them Nein
Maintain the suite autonomously Nein
Multi-framework output (Selenium, Cypress, Playwright, Robot) Teilweise
Requirement → test → execution → archive chain Nein
Data residency / on-premise option Cloud only On-prem available
DORA / Solvency II / PSD2 audit evidence Nein
Pricing model Per-token (developer seat) Platform + services

ChatGPT, Claude direct, GitHub Copilot, Gemini Code Assist suggest code. They do not own the QA function.

Qualigentic — Architecture

Open standards in. Open standards out. Customer infrastructure throughout.

Multi-model AI support, agentic orchestration and deployment options to fit every context — including regulated industries.

Eingaben
Funktionale Anforderungen
User Stories / Spezifikationen
Bestehende Tests
Jira · ALM · Confluence
Free-text from PMs
Qualigentic Platform
RAG-Engine
Project context, test patterns, organisational memory
Agentic Orchestration
Multi-step planning, tool use, human-in-the-loop checkpoints
Multi-LLM Layer
Llama · Mistral · Anthropic · Azure OpenAI · AWS Bedrock
Fine-Tuning (PEFT / LoRA)
Customer-specific adaptation. Weights stay on customer infrastructure.
Governance & Audit
RBAC · Signed evidence chain · Retention · DORA-aligned controls
CI/CD-Integration GitHubGitLabAzure DevOpsJenkinsBitbucket
Ausgaben
Selenium-Skripte
Cypress-Skripte
Playwright-Skripte
Robot Framework
Coverage reports
Audit evidence

On-Premise

Your data centre. Open-source self-hosted models (Llama, Mistral). No data egress under any condition. Recommended for banking, insurance, healthcare and government.

Private Cloud

Your tenant. Azure AI Foundry, AWS or GCP — customer-owned. Bring-your-own model and keys. Region pinning for EU, US, JP data residency.

SaaS

Caixa Mágica managed. Fastest time-to-value for non-regulated workloads. EU-hosted, SOC 2-style controls, Anthropic / OpenAI / Azure OpenAI selectable.

Tiering is by capability, not by deployment. All tiers support on-premise, private cloud and SaaS. Regulated clients can start on-premise from day one — no lock-in to a cloud-only path.
Qualigentic — Packages

Tiers by capability, not by deployment.

From first AI adoption in QA to mission-critical operations in regulated industries. All tiers support on-premise, private cloud and SaaS.

Vorspeise

QA teams adopting AI for the first time

  • Multi-Framework-Testgenerierung
  • Requirements → executable scripts
  • Dashboards und Berichte
  • Single-team scope
  • Any deployment model
Mehr erfahren
Unternehmen

Mission-critical operations, regulated industries

  • Alles im Profi
  • Full DORA / Solvency II / PSD2 audit chain
  • Fine-tuning (PEFT / LoRA) on customer infrastructure
  • SLA + dedicated success engineering
  • Co-created roadmap
  • QA / TestOps consulting
Mehr erfahren

Regulated clients can buy Starter on-premise from day one. Commercial flexibility is part of the offering.

Qualigentic — FAQ

Häufig gestellte Fragen.

How is Qualigentic different from a generic AI coding assistant?

Generic AI assistants like ChatGPT, GitHub Copilot or Gemini Code Assist suggest code — they do not execute, monitor or maintain a test suite. Qualigentic is an agentic platform built around the QA function: it reads requirements, retains project context through RAG, generates production-ready tests, runs them, analyses failures, and maintains the suite — all with a governed audit chain.

Which frameworks are supported?

Selenium, Cypress, Playwright and Robot Framework are first-class. There is no proprietary runtime — all generated scripts use open standards. Additional frameworks can be enabled via the platform's adapter layer in the Enterprise tier.

Can Qualigentic run fully on-premise?

Yes — and this is available from the Starter tier, not just Enterprise. On-premise deployments use open-source self-hosted models (Llama, Mistral and others). Fine-tuning weights (PEFT / LoRA) never leave the customer's perimeter. No data egress under any condition.

How does Qualigentic handle regulatory compliance requirements?

The platform produces a signed audit evidence chain from requirement through to archived result, designed against DORA Articles 6 & 9, Solvency II Pillar 2, and PSD2 Article 95. Enterprise-tier customers get full RBAC, retention policies, and regulator-facing evidence retrievable on demand.

What does a typical pilot look like?

A time-boxed 6–8 week engagement: one application, one framework, one defined success criterion. Weeks 1–2 cover discovery and environment setup; weeks 3–5 run the first generation and execution cycles; weeks 6–7 validate coverage and produce a regulator-facing evidence sample; week 8 delivers an executive readout with ROI calculation and expansion plan. The pilot fee is credited 100% against the year-one platform fee on conversion.

Which AI models does Qualigentic use?

Qualigentic is model-agnostic. Supported options include open-source self-hosted models (Llama, Mistral), Anthropic Claude (preferred partner), Azure OpenAI / OpenAI, and AWS Bedrock. Customers choose the provider that fits their compliance scope — no Qualigentic lock-in.

Does Qualigentic replace QA engineers?

No. It removes the manual scaffolding, maintenance and triage work — freeing engineers to focus on test strategy, complex scenarios and quality engineering. Humans approve, escalate and override at every step of the agentic loop.

Qualigentic — Get Started

Agentic AI for Software Quality.
Lass uns reden.

Personalised demo, no commitment. We'll show how Qualigentic fits your context — frameworks, infrastructure and governance. Pilot fee credited 100% on conversion.

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