Sieh dir unsere
Cloud-Native-Studie
an.
Zu den Inhalten springen
Services
Company
Career
Content Hub
Community
Contact
We contractually assure quality far above the current state of the art.
Projects
Compliance secured
Projects
Cloud Native Solution Options
AI Business Value
From idea to development
Cloud Migration
Making IT systems fit for the cloud
Hotspot Analysis
Effective help in IT crises
Product Discovery
Invent digital products
Product Engineering
Agile development of digital products
News
Dual doctorate at QAware: excellence in theory, practice and support
Events
26. September
InfoDay modernes API-Design
10. October @ 18:30
Meetup | Green Software Development Munich | hybrid
About us
Cloud pioneers with high quality demands
Our team
It is the people who make a company
News
Stay up to date
Partners
Partners enrich our perspectives
Your start with us
Professionals and graduates
Students
Pupils
Your job with us
Friendly, approachable and helpful
Your benefits
How to stay in the flow
Your development
Career paths and further training
Your workplace
Welcome to the New Normal
Blog
AI experts from QAware support podcast.
Events
26. September
InfoDay modernes API-Design
10. October @ 18:30
Meetup | Green Software Development Munich | hybrid
Content Hub
Everything about QAware in one place
Newest article
Dual doctorate at QAware: excellence in theory, practice and support
1 min. | Sabine Lange
Popular topics
Agile
Infrastructure
UI/UX
Technical Debt
Start-up
EN
DE
Talks
Stepping Away from the Lamppost: Domain-Level Technical Debt
18.08.2019
| Harald Störrle
Technical Debt
Conference Paper Euromicro/SEAA, August 2019 (Marcus Ciolkowsi, Harald Störrle) ResearchGate
Harald Störrle
Fitting the topic
Talks
Domain-level Technical Debt („Domain Debt“)
Articles
Challenges in Assessing Technical Debt based on Dynamic Runtime Data
Talks
Challenges in Assessing Technical Debt based on Dynamic Runtime Data
Talks
Lessons Learned from the ProDebt Research Project on Planning Technical Debt Strategically
Talks
Bewertung von Qualitätsschulden mit dynamischen Daten aus Test und Betrieb – Eine Machbarkeitsstudie