Hasil Pencarian  ::  Simpan CSV :: Kembali

Hasil Pencarian

Ditemukan 35782 dokumen yang sesuai dengan query
cover
"Practical load balancing presents an entire analytical framework to increase performance not just of one machine, but of your entire infrastructure.
Practical load balancing starts by introducing key concepts and the tools you'll need to tackle your load-balancing issues. You'll travel through the IP layers and learn how they can create increased network traffic for you. You'll see how to account for persistence and state, and how you can judge the performance of scheduling algorithms.
You'll then learn how to avoid performance degradation and any risk of the sudden disappearance of a service on a server. If you're concerned with running your load balancer for an entire network, you'll find out how to set up your network topography, and condense each topographical variety into recipes that will serve you in different situations. You'll also learn about individual servers, and load balancers that can perform cookie insertion or improve your SSL throughput.
You'll also explore load balancing in the modern context of the cloud. While load balancers need to be configured for high availability once the conditions on the network have been created, modern load balancing has found its way into the cloud, where good balancing is vital for the very functioning of the cloud, and where IPv6 is becoming ever more important."
New York: Springer, 2012
e20426558
eBooks  Universitas Indonesia Library
cover
Bai, Ying
New Jersey: John Wiley & Sons, 2011
005.13 BAI p
Buku Teks SO  Universitas Indonesia Library
cover
Fritchey, Grant
"This book learn to be proactive in establishing performance baselines using tools like performance monitor and extended events. You’ll learn to recognize bottlenecks and defuse them before the phone rings. You’ll learn some quick solutions too, but emphasis is on designing for performance and getting it right, and upon heading off trouble before it occurs. Delight your users. Silence that ringing phone. Put the principles and lessons from SQL Server 2012 Query Performance Tuning into practice today. Establish performance baselines and monitor against them. Troubleshoot and eliminate bottlenecks that frustrate users. Plan ahead to achieve the right level of performance.
"
New York : Springer, 2012
e20425620
eBooks  Universitas Indonesia Library
cover
Ari Nugroho
"ABSTRAK
Densely Connected Convolutional Networks (DenseNet) merupakan salah satu
model arsitektur Deep Learning yang menghubungkan setiap layer beserta feature-maps ke seluruh layer berikutnya, sehingga layer berikutnya menerima input
feature-maps dari seluruh layer sebelumnya. Karena padatnya arsitektur DenseNet
meyebabkan komputasi model memerlukan waktu lama dan pemakaian memory
GPU yang besar. Penelitian ini mengembangkan metode optimisasi DenseNet
menggunakan batching strategy yang bertujuan untuk mengatasi permasalahan
DenseNet dalam hal percepatan komputasi dan penghematan ruang memory GPU.
Batching strategy adalah metode yang digunakan dalam Stochastic Gradient
Descent (SGD) dimana metode tersebut menerapkan metode dinamik batching
dengan inisialisasi awal menggunakan ukuran batch kecil dan ditingkatkan
ukurannya secara adaptif selama training hingga sampai ukuran batch besar agar
terjadi peningkatan paralelisasi komputasi untuk mempercepat waktu pelatihan.
Metode batching strategy juga dilengkapi dengan manajemen memory GPU
menggunakan metode gradient accumulation. Dari hasil percobaan dan pengujian
terhadap metode tersebut dihasilkan peningkatan kecepatan waktu pelatihan hingga
1,7x pada dataset CIFAR-10 dan 1,5x pada dataset CIFAR-100 serta dapat
meningkatkan akurasi DenseNet. Manajemen memory yang digunakan dapat
menghemat memory GPU hingga 30% jika dibandingkan dengan native DenseNet.
Dataset yang digunakan menggunakan CIFAR-10 dan CIFAR-100 datasets.
Penerapan metode batching strategy tersebut terbukti dapat menghasilkan
percepatan dan penghematan ruang memory GPU.

ABSTRACT
Densely Connected Convolutional Networks (DenseNet) is one of the Deep
Learning architecture models that connect each layer and feature maps to all
subsequent layers so that the next layer receives input feature maps from all
previous layers. Because of its DenseNet architecture, computational models
require a long time and use large GPU memory. This research develops the
DenseNet optimization method using a batching strategy that aims to overcome the
DenseNet problem in terms of accelerating computing time and saving GPU
memory. Batching strategy is a method used in Stochastic Gradient Descent (SGD)
where the technique applies dynamic batching approach with initial initialization
using small batch sizes and adaptively increased size during training to large batch
sizes so that there is an increase in computational parallelization to speed up training
time. The batching strategy method is also equipped with GPU memory
management using the gradient accumulation method. From the results of
experiments and testing of these methods resulted in an increase in training time
speed of up to 1.7x on the CIFAR-10 dataset and 1.5x on the CIFAR-100 dataset
and can improve DenseNet accuracy. Memory management used can save GPU
memory up to 30% when compared to native DenseNet. The dataset used uses
CIFAR-10 and CIFAR-100 datasets. The application of the batching strategy
method is proven to be able to produce acceleration and saving of GPU memory."
2020
T-Pdf
UI - Tesis Membership  Universitas Indonesia Library
cover
Strate, Jason
"What you'll learn from Expert performance indexing for SQL Server 2012 will help you understand what indexes are doing in the database and what can be done to mitigate and improve their effects on performance. The final destination is a guided tour through a number of real-world scenarios and approaches that can be taken to investigate, mitigate, and improve the performance of your database. Defines indexes and provides an understanding of their role. Uncovers and explains the statistics that are kept in indexes. Teaches strategies and approaches for indexing databases."
New York: Springer, 2012
e20425515
eBooks  Universitas Indonesia Library
cover
Fakultas Ilmu Komputer Universitas Indonesia, 1997
S26987
UI - Skripsi Membership  Universitas Indonesia Library
cover
Subramanian, Mani.
Noida, India: Pearson, 2011
004.6 SUB n
Buku Teks SO  Universitas Indonesia Library
cover
Desfray, Philippe
"Modeling enterprise architecture with TOGAF explains everything you need to know to effectively model enterprise architecture with The Open Group Architecture Framework (TOGAF), the leading EA standard. This solution-focused reference presents key techniques and illustrative examples to help you model enterprise architecture.
This book describes the TOGAF standard and its structure, from the architecture transformation method to governance, and presents enterprise architecture modeling practices with plenty of examples of TOGAF deliverables in the context of a case study.
Although widespread and growing quickly, enterprise architecture is delicate to manage across all its dimensions. Focusing on the architecture transformation method, TOGAF provides a wide framework, which covers the repository, governance, and a set of recognized best practices. The examples featured in this book were realized using the open source Modelio tool, which includes extensions for TOGAF. "
Waltham, MA: Morgan Kaufmann, 2014
e20427303
eBooks  Universitas Indonesia Library
cover
Zhao, Dongmei
"This book provides an analysis of transmission power and network performance in different wireless communication networks. It presents the latest research and techniques for power and interference control and performance modeling in wireless communication networks with different network topologies, air interfaces, and transmission techniques. While studying the power distributions and resource management, the reader will also learn basic methodology and skills for problem formulations, can ascertain the complexity for designing radio resource management strategies in modern wireless communication networks, thus keeping pace with state-of-the-art research progress in radio transmission technologies."
New York: Springer, 2012
e20407707
eBooks  Universitas Indonesia Library
cover
Kotama Guritno
Depok: Fakultas Teknik Universitas Indonesia, 1995
S36386
UI - Skripsi Membership  Universitas Indonesia Library
<<   1 2 3 4 5 6 7 8 9 10   >>