Towards Building Autonomous Data Services on Azure
Abstrak
Modern cloud has turned data services into easily accessible commodities. With just a few clicks, users are now able to access a catalog of data processing systems for a wide range of tasks. However, the cloud brings in both complexity and opportunity. While cloud users can quickly start an application by using various data services, it can be difficult to configure and optimize these services to gain the most value from them. For cloud providers, managing every aspect of an ever-increasing set of data services, while meeting customer SLAs and minimizing operational cost is becoming more challenging. Cloud technology enables the collection of significant amounts of workload traces and system telemetry. With the progress in data science (DS) and machine learning (ML), it is feasible and desirable to utilize a data-driven, ML-based approach to automate various aspects of data services, resulting in the creation of autonomous data services. This paper presents our perspectives and insights on creating autonomous data services on Azure. It also covers the future endeavors we plan to undertake and unresolved issues that still need attention.
Topik & Kata Kunci
Penulis (38)
Yiwen Zhu
Yuanyuan Tian
Joyce Cahoon
Subru Krishnan
Ankita Agarwal
Rana Alotaibi
Jesús Camacho-Rodríguez
Bibin Chundatt
Andrew Chung
Niharika Dutta
Andrew Fogarty
Anja Gruenheid
Brandon Haynes
Matteo Interlandi
Minu Iyer
Nick Jurgens
Sumeet Khushalani
Brian Kroth
Manoj Kumar
Jyoti Leeka
Sergiy Matusevych
Minni Mittal
Andreas Mueller
Kartheek Muthyala
Harsha Nagulapalli
Yoonjae Park
Hiren Patel
Anna Pavlenko
Olga Poppe
Santhosh Ravindran
Karla Saur
Rathijit Sen
Steve Suh
Arijit Tarafdar
Kunal Waghray
Demin Wang
Carlo Curino
Raghu Ramakrishnan
Akses Cepat
- Tahun Terbit
- 2024
- Bahasa
- en
- Sumber Database
- arXiv
- Akses
- Open Access ✓