Abstract and keywords
Abstract:
The article explores how artificial intelligence can enhance the efficiency of databases, including both SQL and NoSQL. It examines the latest approaches, such as automated parameter tuning and query optimization using machine learning. The analysis demonstrates that artificial intelligence significantly improves the performance of database management systems. The integration of artificial intelligence not only increases efficiency but also enhances the reliability and manageability of systems. This is particularly important as data volumes continue to grow, and demands for faster processing intensify.

Keywords:
SQL, databases, artificial intelligence, performance optimization, NoSQL, machine learning, database management systems
References

1. Bugaychenko D. Yu., Burakov D. P. Obzor metodov optimizacii zaprosov v relyacionnyh bazah dannyh s ispol'zovaniem iskusstvennogo intellekta // International Journal of Open Information Technologies. – 2024. – T. 12, № 5. – S. 42-51. – ISSN 2307-8162.

2. Malyhin N. I. Migraciya s JPQL na Criteria API i Metamodel v Hibernate ORM / N.I. Malyhin // Aktual'nye issledovaniya. – 2020. – № 10 (13). doi:https://doi.org/10.5281/zenodo.11059086. – EDN DUYQHJ.

3. Derkach M. A. Obzor sovremennyh podhodov k avtomatizacii tuninga baz dannyh s pomosch'yu metodov mashinnogo obucheniya // Vestnik kibernetiki. – 2023. – T. 22, № 4. – S. 58-67. – DOIhttps://doi.org/10.35266/2307-2188-2023-4-58-67. – EDN ABCDEF.

4. Kuznecov S. D. NoSQL: novaya volna razvitiya baz dannyh // Trudy Instituta sistemnogo programmirovaniya RAN. – 2022. – T. 34, № 2. – S. 7-28. – DOIhttps://doi.org/10.15514/ISPRAS-2022-34(2)-1. – EDN JQDHMI.

5. Agal'cov V. P., Titov D. V. Bazy dannyh. V 2-h tomah. Tom 2. Raspredelennye i udalennye bazy dannyh: uchebnik. – Moskva: INFRA-M, 2024. – 284 s. – ISBN 978-5-16-018351-4. – EDN DUYQHJ.

6. Baranov S. N., Petrov V. Yu. Ispol'zovanie metodov iskusstvennogo intellekta dlya prognozirovaniya vremennyh ryadov v sistemah upravleniya bazami dannyh // Informacionnye tehnologii i vychislitel'nye sistemy. – 2023. – № 3. – S. 14-23. – DOIhttps://doi.org/10.14357/20718632230302. – EDN DUYQHJ.

7. Panov A. V. Metody optimizacii proizvoditel'nosti SQL-zaprosov na osnove mashinnogo obucheniya // Programmnye produkty i sistemy. – 2024. – № 1. – S. 92-101. – DOIhttps://doi.org/10.15827/0236-235X.141.092-101. – EDN DUYQHJ.

8. Sidorov A. A., Ivanov K. K. Metod intellektual'nogo keshirovaniya dannyh na osnove analiza patternov obrascheniy // Vestnik komp'yuternyh i informacionnyh tehnologiy. – 2022. – T. 19, № 7. – S. 33-41. – DOIhttps://doi.org/10.14489/vkit.2022.07.pp.033-041. – EDN QRSTUV.

9. Malygin D. S. Mikroservisnaya arhitektura v oblachnyh sistemah: riski i vozmozhnosti primeneniya v 2024–2030 gg. // Modelirovanie, optimizaciya i informacionnye tehnologii. – 2024. – T. 12, № 2 (45). – DOIhttps://doi.org/10.26102/2310-6018/2024.45.2.023. – EDN DUYQHJ. DOI: https://doi.org/10.26102/2310-6018/2024.45.2.029

10. Zhukov D. O., Scheglov S. N. Primenenie tehnologiy iskusstvennogo intellekta dlya avtomatizacii upravleniya dannymi v korporativnyh informacionnyh sistemah // Prikladnaya informatika. – 2023. – T. 18, № 6 (108). – S. 55-67. – DOIhttps://doi.org/10.37791/2687-0649-2023-18-6-55-67. – EDN DUYQHJ.

11. Komp'yuternoe modelirovanie rabotosposobnosti elektricheskoy shemy v sistemah avtomatizacii proektirovaniya / V. K. Zol'nikov, S. V. Stoya-nov, E. V. Shmakov, N. N. Litvinov // Modelirovanie sistem i processov. – 2024. – T. 17, № 3. – S. 26-36. – DOIhttps://doi.org/10.12737/2219-0767-2024-24-34. – EDN EJJKJP. DOI: https://doi.org/10.20948/mm-2024-02-01

12. Formalizaciya verifikacii topologii i elektricheskoy shemy dlya sistem avtomatizirovannogo proektirovaniya / T. V. Skvorcova, K. V. Zol'nikov, A. M. Plotnikov, I. V. Skorkin // Modelirovanie sistem i processov. – 2024. – T. 17, № 3. – S. 61-70. – DOIhttps://doi.org/10.12737/2219-0767-2024-59-68. – EDN DUYQHJ.

Login or Create
* Forgot password?