Linear algebra operations are at the core of many Machine Learning (ML) programs. At the same time, a considerable amount of the effort for solving data analytics problems is spent in data preparation. As a result, end-to- end ML pipelines often consist of (i) relational operators used for joining the input data, (ii) user defined functions used for feature extraction and vectorization, and (iii) linear algebra operators used for model training and cross- validation. Often, these pipelines need to scale out to large datasets. In this case, these pipelines are usually implemented on top of dataflow engines like Hadoop, Spark, or Flink. These dataflow engines implement relational operators on row-partitioned datasets. However, efficient linea...
Machine Learning (ML) applications require high-quality datasets. Automated data augmentation techni...
Linear algebra operations appear in nearly every application in advanced analytics, machine learning...
We present a simple conceptual framework to think about computing the relational join. Using this fr...
Linear algebra operations are at the core of many Machine Learning (ML) programs. At the same time, ...
In the big data era, the use of large-scale machine learning methods is becoming ubiquitous in data ...
Enterprise data analytics is a booming area in the data man-agement industry. Many companies are rac...
A Join-Project operation is a join operation followed by a duplicate eliminating projection operatio...
The ever increasing diversity of data analytics and AI applications has had a tremendous impact on t...
Two new algorithms, "Jive-join" and "Slam-join," are proposed for computing the ...
We consider the problem of computing machine learning models over multi-relational databases. The ma...
With the emergence of thread-level parallelism as the primary means for continued improvement of per...
ABSTRACT Computing an equi-join followed by a duplicate eliminating projection is conventionally don...
Big Model analytics tackles the training of massive models that go beyond the available memory of a ...
: In parallelizing the join operation of database systems, a primary objective is to partition the w...
The efficient, distributed factorization of large matrices on clusters of commodity machines is cruc...
Machine Learning (ML) applications require high-quality datasets. Automated data augmentation techni...
Linear algebra operations appear in nearly every application in advanced analytics, machine learning...
We present a simple conceptual framework to think about computing the relational join. Using this fr...
Linear algebra operations are at the core of many Machine Learning (ML) programs. At the same time, ...
In the big data era, the use of large-scale machine learning methods is becoming ubiquitous in data ...
Enterprise data analytics is a booming area in the data man-agement industry. Many companies are rac...
A Join-Project operation is a join operation followed by a duplicate eliminating projection operatio...
The ever increasing diversity of data analytics and AI applications has had a tremendous impact on t...
Two new algorithms, "Jive-join" and "Slam-join," are proposed for computing the ...
We consider the problem of computing machine learning models over multi-relational databases. The ma...
With the emergence of thread-level parallelism as the primary means for continued improvement of per...
ABSTRACT Computing an equi-join followed by a duplicate eliminating projection is conventionally don...
Big Model analytics tackles the training of massive models that go beyond the available memory of a ...
: In parallelizing the join operation of database systems, a primary objective is to partition the w...
The efficient, distributed factorization of large matrices on clusters of commodity machines is cruc...
Machine Learning (ML) applications require high-quality datasets. Automated data augmentation techni...
Linear algebra operations appear in nearly every application in advanced analytics, machine learning...
We present a simple conceptual framework to think about computing the relational join. Using this fr...