Computing k-Nearest Neighbors (KNN) is one of the core kernels used in many machine learning, data mining and scientific computing applications. Although kd-tree based O(log n) algorithms have been proposed for computing KNN, due to its inherent sequentiality, linear algorithms are being used in practice. This limits the applicability of such methods to millions of data points, with limited scalability for Big Data analytics challenges in the scientific domain. In this paper, we present parallel and highly optimized kd-tree based KNN algorithms (both construction and querying) suitable for distributed architectures. Our algorithm includes novel approaches for pruning se...
This paper presents an implementation of the brute-force exact k-Nearest Neighbor Graph (k-NNG) cons...
In this report, we present an efficient library for computing k-nearest neighbors (kNN) on datasets ...
Background: The analysis of biological networks has become a major challenge due to the recent devel...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
Recently parallel / distributed processing approaches have been proposed for processing k-Nearest Ne...
This thesis addresses the need for a scalable distributed solution for k-nearest-neighbor (kNN) sear...
In response to the rapid growth of many sorts of information, highway data has continued to evolve i...
Abstract: Parallel algorithms for main memory databases become an increasingly interesting topic as ...
This paper presents an implementation of the brute-force exact k-Nearest Neighbor Graph (k-NNG) cons...
We present a new approach for combining k-d trees and graphics processing units for near-est neighbo...
In this report, we present an efficient library for computing k-nearest neighbors (kNN) on datasets ...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
This paper presents an implementation of the brute-force exact k-Nearest Neighbor Graph (k-NNG) cons...
In this report, we present an efficient library for computing k-nearest neighbors (kNN) on datasets ...
Background: The analysis of biological networks has become a major challenge due to the recent devel...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
Recently parallel / distributed processing approaches have been proposed for processing k-Nearest Ne...
This thesis addresses the need for a scalable distributed solution for k-nearest-neighbor (kNN) sear...
In response to the rapid growth of many sorts of information, highway data has continued to evolve i...
Abstract: Parallel algorithms for main memory databases become an increasingly interesting topic as ...
This paper presents an implementation of the brute-force exact k-Nearest Neighbor Graph (k-NNG) cons...
We present a new approach for combining k-d trees and graphics processing units for near-est neighbo...
In this report, we present an efficient library for computing k-nearest neighbors (kNN) on datasets ...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
This paper presents an implementation of the brute-force exact k-Nearest Neighbor Graph (k-NNG) cons...
In this report, we present an efficient library for computing k-nearest neighbors (kNN) on datasets ...
Background: The analysis of biological networks has become a major challenge due to the recent devel...