Skip to main content Skip to site alert

Secondary Navigation

  • Menu  Close 
  • Search
  • Info For Navigation

    • International Families
    • Parents & Families
    • Educators
Johns Hopkins Engineering Innovation Pre-College Programs
Johns Hopkins Engineering Innovation Pre-College Programs

Utility Navigation

  • Request Info
  • Apply
  • Give

Site Navigation

  • Programs
    • Explore Engineering Innovation: In-Person
    • Sustainable Energy Engineering: In-person
    • Explore Engineering Innovation: Online
    • Biomedical Engineering Innovation: Online
    • New! Explore Engineering Innovation: Hybrid
    • New! Intro to Python: Online
  • Locations
    • Residential Programs
    • Commuter Programs
    • Online Programs
    • Hybrid Programs
  • Admissions
    • Application Process
    • Application Dates and Deadlines
    • Hear from Our Alumni
    • Apply
  • Cost & Aid
    • Tuition and Fees
    • Scholarships
    • Scholarship Sponsors
  • Admitted & Past Students
    • Admitted Residential Students
    • Admitted Commuter Students
    • Admitted Online Students
    • Admitted Hybrid Residential Students
    • Admitted Hybrid Commuter Students
    • Policies & Services
    • Request a JHU Transcript
  • Info Sessions & Events
  • About Us
    • Contact Us
    • Employment Opportunities
    • Truss Simulator
Search

Info For Navigation

  • International Families
  • Parents & Families
  • Educators

You are here:

  1. Home
  2. News
  3. Brain-inspired, Energy-aware Computing Architectures for Big Data

Brain-inspired, Energy-aware Computing Architectures for Big Data

Developing new ways to solve such problems by utilizing a scalable low-power architecture.

Published: May 12, 2021
Category:
  • Research Projects
  • Microsystems and Computer Engineering

Share Options

  • Share toTwitter
  • Share toFacebook
  • Share toLinkedIn

The human brain is capable of solving some complex problems very quickly while being very energy-efficient. We are working on developing new ways to solve such problems by utilizing a scalable low-power architecture to do event-based distributed processing similar to the way neurons interact in the brain.

Stay Connected

  • Facebook
  • X
  • Instagram
  • YouTube
  • LinkedIn

Johns Hopkins Engineering Innovation Pre-College Programs

Address

3500 San Martin Drive, First Floor Baltimore, MD 21218
Get Directions

Contact

Phone: 443-927-1986
Email: [email protected]

Footer Navigation

Legal Navigation

2025 Johns Hopkins University. All rights reserved.

Site Menu

Site Navigation

  • Programs
    • Explore Engineering Innovation: In-Person
    • Sustainable Energy Engineering: In-person
    • Explore Engineering Innovation: Online
    • Biomedical Engineering Innovation: Online
    • New! Explore Engineering Innovation: Hybrid
    • New! Intro to Python: Online
  • Locations
    • Residential Programs
    • Commuter Programs
    • Online Programs
    • Hybrid Programs
  • Admissions
    • Application Process
    • Application Dates and Deadlines
    • Hear from Our Alumni
    • Apply
  • Cost & Aid
    • Tuition and Fees
    • Scholarships
    • Scholarship Sponsors
  • Admitted & Past Students
    • Admitted Residential Students
    • Admitted Commuter Students
    • Admitted Online Students
    • Admitted Hybrid Residential Students
    • Admitted Hybrid Commuter Students
    • Policies & Services
    • Request a JHU Transcript
  • Info Sessions & Events
  • About Us
    • Contact Us
    • Employment Opportunities
    • Truss Simulator

Utility Navigation

  • Request Info
  • Apply
  • Give

Secondary Navigation