Amanote Research
Register
Sign In
Learning-Based Memory Allocation for C++ Server Workloads
doi 10.1145/3373376.3378525
Full Text
Open PDF
Abstract
Available in
full text
Date
March 9, 2020
Authors
Martin Maas
David G. Andersen
Michael Isard
Mohammad Mahdi Javanmard
Kathryn S. McKinley
Colin Raffel
Publisher
ACM
Related search
Cooperative GPGPU Scheduling for Consolidating Server Workloads
IEICE Transactions on Information and Systems
Electronic Engineering
Pattern Recognition
Hardware
Computer Vision
Electrical
Architecture
Artificial Intelligence
Software
Runtime Energy Consumption Estimation for Server Workloads Based on Chaotic Time-Series Approximation
Transactions on Architecture and Code Optimization
Hardware
Information Systems
Architecture
Software
Memory Allocation Vulnerability Analysis and Analysis Optimization for C Programs Based on Formal Methods
Journal of Software
PetaCache: A Memory-Based Data-Server System
Scalable Algorithms for Server Allocation in Infostations
Stretch: Balancing QoS and Throughput for Colocated Server Workloads on SMT Cores
Memory-Based Learning
Behind the Scenes: Memory Analysis of Graphical Workloads on Tile-Based GPUs
Block-Based Allocation Algorithms for FLASH Memory in Embedded Systems
Lecture Notes in Computer Science
Computer Science
Theoretical Computer Science