PhD In-Memory Computing for efficient online learning Spiking Neural Networks

Updated: about 1 month ago
Deadline: 02 Jun 2024

2 May 2024
Job Information
Organisation/Company

Eindhoven University of Technology (TU/e)
Research Field

Technology
Researcher Profile

First Stage Researcher (R1)
Country

Netherlands
Application Deadline

2 Jun 2024 - 22:00 (UTC)
Type of Contract

Temporary
Job Status

Not Applicable
Hours Per Week

38.0
Is the job funded through the EU Research Framework Programme?

Not funded by an EU programme
Is the Job related to staff position within a Research Infrastructure?

No

Offer Description

Objective:

To research, design, implement, and evaluate an ultra-low-power Spiking Neural Network (SNN) architecture that leverages in-memory computing principles for efficient online learning.

Background:

The field of neuromorphic computing seems to offer a transformative solution for achieving intelligence at the edge. By emulating the brain's efficient biological mechanisms through Spiking Neural Networks (SNNs), neuromorphic computing systems not only promise substantial energy efficiency but also enhance real-time processing capabilities when integrated with online learning.

The conventional von Neumann computing architectures, characterized by separate memory and processing units, encounter performance constraints due to the continual data transfer between these segments. This structure leads to heightened energy consumption and processing time. Additionally, the widespread reliance on energy-intensive dynamic random-access memory (DRAM) exacerbates these energy concerns, particularly when grappling with the intensive computational requirements of online learning tasks in SNNs. In response to these challenges, the research landscape is shifting. Notable innovations like IBM's TrueNorth chip, which mirrors neural networks, are emerging. Alongside these digital solutions, there's a burgeoning interest in exploring analog, hybrid, and advanced nanoelectronic devices, with a keen focus on those boasting memristive attributes. In-memory computing, which conducts calculations directly within memory storage, has become a popular design choice, further reducing energy while decreasing latency.

Research Questions:

  • How can in-memory computing principles be integrated into SNN architectures to enhance online learning capabilities?
  • What are the trade-offs between performance, power, and accuracy when implementing in-memory online learning in SNNs?
  • How can the inherent variability and non-ideality of in-memory devices be mitigated or exploited in SNN-based online learning systems?
  • Significance:

    This research aims to push the boundaries of neuromorphic engineering by combining the strengths of SNNs and in-memory computing. The outcome has the potential to revolutionize ultra-low-power applications, especially in edge devices, wearables, and IoT, making intelligent systems more pervasive and sustainable.


    Requirements
    Specific Requirements
    • Applicants must have or expect to receive a Master of Science degree or equivalent in Electrical Engineering, Applied Physics, or a related discipline.
    • Strong background in Digital/Mixed-Signal Integrated Circuit (IC) design.
    • Very good skills in HDL (Verilog, VHDL) and scripting languages (Python, TCL).
    • Basic knowledge on commercial EDA tools (Cadence/Mentor Graphics).
    • Knowledge in Neuromorphic architectures and Low power IC design would be a definite plus.

    Additional Information
    Benefits

    A meaningful job in a dynamic and ambitious university, in an interdisciplinary setting and within an international network. You will work on a beautiful, green campus within walking distance of the central train station. In addition, we offer you:

    • Full-time employment for four years, with an intermediate evaluation (go/no-go) after nine months. You will spend 10% of your employment on teaching tasks.
    • Salary and benefits (such as a pension scheme, paid pregnancy and maternity leave, partially paid parental leave) in accordance with the Collective Labour Agreement for Dutch Universities, scale P (min. €2,770 max. €3,539).
    • A year-end bonus of 8.3% and annual vacation pay of 8%.
    • High-quality training programs and other support to grow into a self-aware, autonomous scientific researcher. At TU/e we challenge you to take charge of your own learning process .
    • An excellent technical infrastructure, on-campus children's day care and sports facilities.
    • An allowance for commuting, working from home and internet costs.
    • A Staff Immigration Team and a tax compensation scheme (the 30% facility) for international candidates.

    Additional comments

    About us

    Eindhoven University of Technology is an internationally top-ranking university in the Netherlands that combines scientific curiosity with a hands-on attitude. Our spirit of collaboration translates into an open culture and a top-five position in collaborating with advanced industries. Fundamental knowledge enables us to design solutions for the highly complex problems of today and tomorrow.

    Curious to hear more about what it's like as a PhD candidate at TU/e? Please view the video.

    Information

    Do you recognize yourself in this profile and would you like to know more?
    Please contact dr.ir. S. Stuijk, email [email protected] .

    Visit our website for more information about the application process or the conditions of employment. You can also contact HR Services, email [email protected] .

    Are you inspired and would like to know more about working at TU/e? Please visit our career page .

    Application

    We invite you to submit a complete application by using the apply button.
    The application should include a:

    • Cover letter in which you describe your motivation and qualifications for the position.
    • Curriculum vitae, including a list of your publications and the contact information of three references.

    We look forward to receiving your application and will screen it as soon as possible. The vacancy will remain open until the position is filled.


    Website for additional job details

    https://www.academictransfer.com/341069/

    Work Location(s)
    Number of offers available
    1
    Company/Institute
    Eindhoven University of Technology (TU/e)
    Country
    Netherlands
    City
    Eindhoven
    Postal Code
    5612 AP
    Street
    De Rondom 70
    Geofield


    Where to apply
    Website

    https://www.academictransfer.com/en/341069/phd-in-memory-computing-for-efficien…

    Contact
    City

    Eindhoven
    Website

    http://www.tue.nl/
    Street

    De Rondom 70
    Postal Code

    5612 AP

    STATUS: EXPIRED

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