Challenges and Opportunities in Automating ...
Type de document :
Autre communication scientifique (congrès sans actes - poster - séminaire...): Communication dans un congrès avec actes
DOI :
URL permanente :
Titre :
Challenges and Opportunities in Automating DBMS: A Qualitative Study
Auteur(s) :
Wang, Yifan [Auteur]
Orange Innovation
Université de Lille
Self-adaptation for distributed services and large software systems [SPIRALS]
Bourhis, Pierre [Auteur]
Self-adaptation for distributed services and large software systems [SPIRALS]
Centre National de la Recherche Scientifique [CNRS]
Université de Lille
Rouvoy, Romain [Auteur]
Self-adaptation for distributed services and large software systems [SPIRALS]
Université de Lille
Royer, Patrick [Auteur]
Orange Innovation
Orange Innovation
Université de Lille
Self-adaptation for distributed services and large software systems [SPIRALS]
Bourhis, Pierre [Auteur]
Self-adaptation for distributed services and large software systems [SPIRALS]
Centre National de la Recherche Scientifique [CNRS]
Université de Lille
Rouvoy, Romain [Auteur]
Self-adaptation for distributed services and large software systems [SPIRALS]
Université de Lille
Royer, Patrick [Auteur]
Orange Innovation
Titre de la manifestation scientifique :
ASE '24: 39th IEEE/ACM International Conference on Automated Software Engineering
Ville :
Sacramento - Californie
Pays :
Etats-Unis d'Amérique
Date de début de la manifestation scientifique :
2024-10-28
Éditeur :
ACM
Date de publication :
2024-10-24
Mot(s)-clé(s) en anglais :
reference → Empirical studies
Social and professional topics → Automation Automation DBMS Empirical research Qualitative methods
Social and professional topics → Automation Automation
DBMS
Empirical research
Qualitative methods
Social and professional topics → Automation Automation DBMS Empirical research Qualitative methods
Social and professional topics → Automation Automation
DBMS
Empirical research
Qualitative methods
Discipline(s) HAL :
Informatique [cs]
Résumé en anglais : [en]
Background. In recent years, the volume and complexity of data handled by Database Management Systems (DBMS) have surged, necessitating greater efforts and resources for efficient administration. In response, numerous ...
Lire la suite >Background. In recent years, the volume and complexity of data handled by Database Management Systems (DBMS) have surged, necessitating greater efforts and resources for efficient administration. In response, numerous automation tools for DBMS administration have emerged, particularly with the progression of AI and machine learning technologies. However, despite these advancements, the industry-wide adoption of such tools remains limited.Aims. This qualitative research aims to delve into the practices of DBMS users, identifying their difficulties around DBMS administration. By doing so, we intend to uncover key challenges and prospects for DBMS administration automation, thereby promoting its development and adoption.Method. This paper presents the findings of a qualitative study we conducted in an industrial setting to explore this particular issue. The study involved conducting in-depth interviews with 11 DBMS experts, and we analyzed the data to derive a set of implications.Results. We argue that our study offers two important contributions: firstly, it provides valuable insights into the challenges and opportunities of DBMS administration automation through interviewees' perceptions, routines, and experiences. Secondly, it presents a set of findings that can be derived to useful implications and promote DBMS administration automation.<p>Conclusions. This paper presents an empirical study conducted in an industrial context that examines the challenges and opportunities of DBMS administration automation within a particular company. Although the study's findings may not apply to all companies, we believe the results provide a valuable body of knowledge with implications that can be useful for future research endeavors.</p>Lire moins >
Lire la suite >Background. In recent years, the volume and complexity of data handled by Database Management Systems (DBMS) have surged, necessitating greater efforts and resources for efficient administration. In response, numerous automation tools for DBMS administration have emerged, particularly with the progression of AI and machine learning technologies. However, despite these advancements, the industry-wide adoption of such tools remains limited.Aims. This qualitative research aims to delve into the practices of DBMS users, identifying their difficulties around DBMS administration. By doing so, we intend to uncover key challenges and prospects for DBMS administration automation, thereby promoting its development and adoption.Method. This paper presents the findings of a qualitative study we conducted in an industrial setting to explore this particular issue. The study involved conducting in-depth interviews with 11 DBMS experts, and we analyzed the data to derive a set of implications.Results. We argue that our study offers two important contributions: firstly, it provides valuable insights into the challenges and opportunities of DBMS administration automation through interviewees' perceptions, routines, and experiences. Secondly, it presents a set of findings that can be derived to useful implications and promote DBMS administration automation.<p>Conclusions. This paper presents an empirical study conducted in an industrial context that examines the challenges and opportunities of DBMS administration automation within a particular company. Although the study's findings may not apply to all companies, we believe the results provide a valuable body of knowledge with implications that can be useful for future research endeavors.</p>Lire moins >
Langue :
Anglais
Comité de lecture :
Oui
Audience :
Internationale
Vulgarisation :
Non
Collections :
Source :
Date de dépôt :
2024-11-08T03:09:37Z
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