Using InputBlaster, a novel approach in leveraging LLMs for automated generation of diverse text inputs in mobile app testing.
This paper is under CC 4.0 license.
Android GUI testing, Large language model, In-context learning 1 INTRODUCTION Mobile applications have become an indispensable component of our daily lives, enabling instant access to a myriad of services, information, and communication platforms. The increasing reliance on these applications necessitates a high standard of quality and performance to ensure user satisfaction and maintain a competitive edge in the fast-paced digital landscape.
France Dernières Nouvelles, France Actualités
Similar News:Vous pouvez également lire des articles d'actualité similaires à celui-ci que nous avons collectés auprès d'autres sources d'information.
Leveraging Generative AI And LLMs In The Industrial IoT RealmSrikar Kasarla is Senior Vice President of Technology & R&D at Schneider Electric. Read Srikar Kasarla's full executive profile here.
Lire la suite »
Function Calling LLMs: Combining SLIMs and DRAGON for Better RAG PerformanceDespite the enormous entrepreneurial energy poured into LLMs, most high-profile applications are still limited by their focus on chat-like interfaces.
Lire la suite »
Are advanced LLMs edging out even the need for category fine-tuning?Generically trained LLMs challenge fine-tuning norms and elevating AI interaction through prompt engineering.
Lire la suite »
100 Days of AI, Day 17: The Different Ways Security Attacks are Created Using LLMsThis post covers different security attacks possible using LLMs and how developers are adapting to them.
Lire la suite »
Opera Adds Experimental Support for Local LLMs in its BrowserOpera introduces experimental support for 150 local LLM variants, allowing users to access and manage them directly from the browser. This feature is important for privacy-conscious users as it keeps their data locally on their device.
Lire la suite »
Generation Z is a coddled and incompetent generationGen Zers are the latest and worst result of raising children too softly and allowing them to believe that they have earned everything.
Lire la suite »