
AI Across the SDLC
We use AI directly inside the SDLC from requirements and architecture to development, QA, DevOps, and delivery management. Structured AI-assisted workflows, curated project context, human approval gates, and measurable quality controls accelerate delivery, reduce manual effort, detect risks earlier, and improve visibility.
What Andersen’s proven AI-delivery framework offers
Andersen combines domain expertise, AI-enabled workflows, and human-in-the-loop governance to accelerate delivery, improve visibility, and control SDLC risks without compromising quality, security, or control.
AI across the entire SDLC
Andersen applies AI to requirements, architecture, development, QA, DevOps, and delivery management workflows, reducing manual effort, speeding up handoffs, and improving SDLC visibility.
Delivery visibility and risk detection
We use AI-enabled delivery monitoring to identify bottlenecks, delays, delivery risks, and operational issues earlier across projects, making it possible to react faster and keep execution under control.
AI-assisted DevOps and operations
Our team integrates AI into troubleshooting, CI/CD pipelines, infrastructure workflows, and engineering operations to support faster issue resolution, stronger consistency, and more stable delivery environments.
Enterprise-ready delivery model
Andersen’s skilled technology experts deliver AI-enabled workflows with built-in security, compliance, and operational controls for large-scale and regulated complex environments.
Human-controlled quality and governance
We embed traceability-focused procedures, approval gates, and measurable quality controls into AI-enabled delivery processes to keep outputs reviewable, accountable, and aligned with project requirements.
AI-assisted delivery workflows
Andersen’s AI-native engineering practice offers structured delivery workflows with shared project context, automation support, and human review gates to keep execution coordinated and controlled.
AI tools embedded into our SDLC
How we apply AI across the SDLC
Customers we have worked with
How AI supports product delivery
At Andersen, AI is reliably integrated across requirements, architecture, development, testing, release management, and delivery operations to improve visibility, reduce repetitive work, and keep delivery governance stronger and more transparent.
Meet our expert

Marcin Wawryszczuk
Head of AI Department
18
years of experience
100+
AI projects in his portfolio
10+
research papers
Marcin is an experienced AI architect with global leadership experience, holding both MBA and PhD degrees.
- Specializes in GenAI/ML Architecture;
- Expert in Agentic AI and RAG ecosystems building;
- Active Assistant Research Professor.


What our experts say about AI
Explore insights from our experts on applying AI across software delivery, from discovery and development to testing, DevOps, and project management, with a focus on visibility, risks, speed, and human control.

What trends will shape the near future of finance apps?

What is the best way to innovate in the food industry?

Interview
Impact of AI on the Maritime Industry

Interview
AI and Vehicles
FAQ
Before applying AI, Andersen assesses the quality and completeness of existing project artifacts: requirements, documentation, architecture records, test coverage, codebase structure, delivery reports, and knowledge bases. The stronger the input context, the more accurate and useful AI-assisted outputs become.
Let’s discuss how AI can improve your software delivery
What happens next?
An expert contacts you after having analyzed your requirements;
If needed, we sign an NDA to ensure the highest privacy level;
We submit a comprehensive project proposal with estimates, timelines, CVs, etc.
Customers who trust us




