Skip to content
MathWorks - Mobile View
  • Inicie sesión cuenta de MathWorksInicie sesión cuenta de MathWorks
  • Access your MathWorks Account
    • Mi Cuenta
    • Mi perfil de la comunidad
    • Asociar Licencia
    • Cerrar sesión
  • Productos
  • Soluciones
  • Educación
  • Soporte
  • Comunidad
  • Eventos
  • Obtenga MATLAB
MathWorks
  • Productos
  • Soluciones
  • Educación
  • Soporte
  • Comunidad
  • Eventos
  • Obtenga MATLAB
  • Inicie sesión cuenta de MathWorksInicie sesión cuenta de MathWorks
  • Access your MathWorks Account
    • Mi Cuenta
    • Mi perfil de la comunidad
    • Asociar Licencia
    • Cerrar sesión

Vídeos y webinars

  • MathWorks
  • Vídeos
  • Vídeos-Inicio
  • Buscar
  • Vídeos-Inicio
  • Buscar
  • Comuníquese con ventas
  • Software de prueba
26:09 Video length is 26:09.
  • Description
  • Related Resources

CAEML Research in Hardware Design and Optimization Using Machine Learning

Chris Cheng, Hewlett Packard Enterprise

The Center for Advanced Electronics through Machine Learning (CAEML) was established in 2016. Much of its research is starting to bear fruit in real-world applications. We will highlight two Hewlett Packard Enterprise applications that use CAEML research results.

The first is a 56G PAM channel optimization and training speed-up using principal component analysis (PCA) and polynomial chaotic expansion (PCE) surrogate models. A 56G PAM SerDes and a channel with varying loss is measured and machine learning techniques are used to accelerate the channel optimization process and correctly model the SerDes without using any simulations.

The second is a proactive hardware failure prediction method using machine learning techniques developed by CAEML. The method is currently being deployed in the field to proactively remove drives from the field to avoid potential performance degradation and data loss.

The presentation covers:

  • A brief introduction of CAEML
  • Unique applications of machine learning for hardware design that are different from typical CNN or LSTM neural network applications
  • Demonstration of a 56 PAM SerDes performance optimization using PCA and PCE surrogate models
  • Production application using proactive hardware failure prediction with casual inference to remove bad drives in the field
  • Future investigations of CAEML

CAEML researchers use MATLAB® and related toolboxes extensively throughout the application development process. For example, the standard MATLAB PCA package was used while custom MATLAB code was developed for the polynomial chaotic expansion surrogate models and the casual inference feature selection functions. The rich mathematical libraries allow rapid development of the prototype special functions.

Recorded: 6 Nov 2019

Related Products

  • Statistics and Machine Learning Toolbox
  • Global Optimization Toolbox

Learn More

View slides
See all proceedings from MATLAB EXPO 2019 United States

Bridging Wireless Communications Design and Testing with MATLAB

Read white paper
Related Information
Request Trial

Feedback

Featured Product

Statistics and Machine Learning Toolbox

  • Request Trial
  • Get Pricing

Up Next:

34:34
Machine Learning Made Easy

Related Videos:

5:36
Machine Learning for Predictive Modelling (Highlights)
44:37
Machine Learning for Predictive Modelling
41:25
Machine Learning with MATLAB
34:31
Machine Learning with MATLAB: Getting Started with...

View more related videos

MathWorks - Domain Selector

Select a Web Site

Choose a web site to get translated content where available and see local events and offers. Based on your location, we recommend that you select: .

  • Switzerland (English)
  • Switzerland (Deutsch)
  • Switzerland (Français)
  • 中国 (简体中文)
  • 中国 (English)

You can also select a web site from the following list:

How to Get Best Site Performance

Select the China site (in Chinese or English) for best site performance. Other MathWorks country sites are not optimized for visits from your location.

Americas

  • América Latina (Español)
  • Canada (English)
  • United States (English)

Europe

  • Belgium (English)
  • Denmark (English)
  • Deutschland (Deutsch)
  • España (Español)
  • Finland (English)
  • France (Français)
  • Ireland (English)
  • Italia (Italiano)
  • Luxembourg (English)
  • Netherlands (English)
  • Norway (English)
  • Österreich (Deutsch)
  • Portugal (English)
  • Sweden (English)
  • Switzerland
    • Deutsch
    • English
    • Français
  • United Kingdom (English)

Asia Pacific

  • Australia (English)
  • India (English)
  • New Zealand (English)
  • 中国
    • 简体中文Chinese
    • English
  • 日本Japanese (日本語)
  • 한국Korean (한국어)

Contact your local office

  • Comuníquese con ventas
  • Software de prueba

MathWorks

Accelerating the pace of engineering and science

MathWorks es el líder en el desarrollo de software de cálculo matemático para ingenieros

Descubra…

Explorar productos

  • MATLAB
  • Simulink
  • Software para estudiantes
  • Soporte para hardware
  • File Exchange

Probar o comprar

  • Descargas
  • Software de prueba
  • Comuníquese con ventas
  • Precios y licencias
  • Cómo comprar

Aprender a utilizar

  • Documentación
  • Tutoriales
  • Ejemplos
  • Vídeos y webinars
  • Formación

Obtener soporte

  • Ayuda para la instalación
  • MATLAB Answers
  • Consultoría
  • Centro de licencias
  • Contactar con soporte

Acerca de MathWorks

  • Ofertas de empleo
  • Sala de prensa
  • Misión social
  • Casos prácticos
  • Acerca de MathWorks
  • Select a Web Site United States
  • Centro de confianza
  • Marcas comerciales
  • Política de privacidad
  • Antipiratería
  • Estado de las aplicaciones

© 1994-2022 The MathWorks, Inc.

  • Facebook
  • Twitter
  • Instagram
  • YouTube
  • LinkedIn
  • RSS

Únase a la conversación