Inference of Machine Learning (ML) models, i.e. the process of obtaining predictions from trained models, is often an overlooked problem. Model inference is however one of the main contributors of both technical debt in ML applications and infrastructure complexity. MASQ is a framework able to run inference of ML models directly on DBMSs. MASQ not only averts expensive data movements for those predictive scenarios where data resides on a database, but it also naturally exploits all the "Enterprise-grade"features such as governance, security and auditability which make DBMSs the cornerstone of many businesses. MASQ compiles trained models and ML pipelines implemented in scikit-learn directly into standard SQL: no UDFs nor vendor-specific syntax are used, and therefore queries can be readily executed on any DBMS. In this demo, we will showcase MASQ's capabilities through a GUI allowing attendees to: (1) train ML pipelines composed of data featurizers and ML models; (2) compile the trained pipelines into SQL, and deploy them on different DBMSs (MySQL and SQLServer in the demo); and (3) compare the related performance under different configurations (e.g., the original pipeline on the ML framework against the SQL implementations).

Transforming ML Predictive Pipelines into SQL with MASQ / Del Buono, F.; Paganelli, M.; Sottovia, P.; Interlandi, M.; Guerra, F.. - In: PROCEEDINGS - ACM-SIGMOD INTERNATIONAL CONFERENCE ON MANAGEMENT OF DATA. - ISSN 0730-8078. - (2021), pp. 2696-2700. (Intervento presentato al convegno 2021 International Conference on Management of Data, SIGMOD 2021 tenutosi a chn nel 2021) [10.1145/3448016.3452771].

Transforming ML Predictive Pipelines into SQL with MASQ

Del Buono F.;Paganelli M.;Sottovia P.;Interlandi M.;Guerra F.
2021

Abstract

Inference of Machine Learning (ML) models, i.e. the process of obtaining predictions from trained models, is often an overlooked problem. Model inference is however one of the main contributors of both technical debt in ML applications and infrastructure complexity. MASQ is a framework able to run inference of ML models directly on DBMSs. MASQ not only averts expensive data movements for those predictive scenarios where data resides on a database, but it also naturally exploits all the "Enterprise-grade"features such as governance, security and auditability which make DBMSs the cornerstone of many businesses. MASQ compiles trained models and ML pipelines implemented in scikit-learn directly into standard SQL: no UDFs nor vendor-specific syntax are used, and therefore queries can be readily executed on any DBMS. In this demo, we will showcase MASQ's capabilities through a GUI allowing attendees to: (1) train ML pipelines composed of data featurizers and ML models; (2) compile the trained pipelines into SQL, and deploy them on different DBMSs (MySQL and SQLServer in the demo); and (3) compare the related performance under different configurations (e.g., the original pipeline on the ML framework against the SQL implementations).
2021
2021 International Conference on Management of Data, SIGMOD 2021
chn
2021
2696
2700
Del Buono, F.; Paganelli, M.; Sottovia, P.; Interlandi, M.; Guerra, F.
Transforming ML Predictive Pipelines into SQL with MASQ / Del Buono, F.; Paganelli, M.; Sottovia, P.; Interlandi, M.; Guerra, F.. - In: PROCEEDINGS - ACM-SIGMOD INTERNATIONAL CONFERENCE ON MANAGEMENT OF DATA. - ISSN 0730-8078. - (2021), pp. 2696-2700. (Intervento presentato al convegno 2021 International Conference on Management of Data, SIGMOD 2021 tenutosi a chn nel 2021) [10.1145/3448016.3452771].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1248873
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