Logo des Repositoriums
 
Konferenzbeitrag

Recursive SQL and GPU-Support for In-Database Machine Learning

Vorschaubild nicht verfügbar

Volltext URI

Dokumententyp

Text/Conference Paper

Zusatzinformation

Datum

2023

Zeitschriftentitel

ISSN der Zeitschrift

Bandtitel

Quelle

Verlag

Gesellschaft für Informatik e.V.

Zusammenfassung

But to retrieve the latest data from a database, time-consuming extraction is necessary as database systems have rarely been used for operations such as matrix algebra and gradient descent.In this work, we demonstrate that SQL with recursive tables makes it possible to express a complete machine learning pipeline out of data preprocessing, model training and its validation.To facilitate the specification of loss functions, we extend the code-generating database system Umbra by an operator for automatic differentiation for use within recursive tables:With the loss function expressed in SQL as a lambda function, Umbra generates machine code for each partial derivative.We further use automatic differentiation for a dedicated gradient descent operator, which generates LLVM code to train a user-specified model on GPUs.We fine-tune GPU kernels at hardware level to allow a higher throughput and propose non-blocking synchronisation of multiple units.In our evaluation, automatic differentiation accelerated the runtime by the number of cached subexpressions compared to compiling each derivative separately.Our GPU kernels with independent models allowed maximal throughput even for small batch sizes, making machine learning pipelines within SQL more competitive.

Beschreibung

Schüle, Maximilian Emanuel (2023): Recursive SQL and GPU-Support for In-Database Machine Learning. BTW 2023. DOI: 10.18420/BTW2023-62. Bonn: Gesellschaft für Informatik e.V.. ISBN: 978-3-88579-725-8. pp. 931-931. Dresden, Germany. 06.-10. März 2023

Schlagwörter

Zitierform

Tags