16/01/2020

Doctoral Researcher (f/m/d) on "Merging Self-Assembly of Copolymers and 3D Laser Nanoprinting"

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  • ORGANISATION NAME
    Cluster of Excellence 3D Matter Made to Order
  • ORGANISATION COUNTRY
    Germany
  • FUNDING TYPE
    Funding
  • DEADLINE DATE
    31/07/2020
  • RESEARCH FIELD
    Natural sciences
  • CAREER STAGE
    First Stage Researcher (R1) (Up to the point of PhD)

Outline

The Cluster of Excellence 3D Matter Made to Order (3DMM2O) combines the competencies of two universities of Excellence to advance 3D Additive Manufacturing to the next level. The goal is to break current barriers of scale, precision and speed to unleash the true potential of the technology.

The Carl Zeiss Foundation funds a scholarship program, supporting doctoral researchers during the preparation of their thesis.

Funding

The scholarship provides funding for 3 years to national and international students to cover maintenance and additional funding for research travel expenses and research materials. The current rate is 17.616 €/annum.

Requirements

  • Degree in chemistry or materials science
  • Background in synthetic organic and/or polymer chemistry
  • Experience in 3D printing is advantageous
  • Good level of English (oral and written) is essential

Qualified women are strongly encouraged to apply. Disabled persons with equivalent aptitude will be favored.

 

For further questions about the project you can contact: eva.blasco[at]kit.edu

Please go to our application portal: https://functionalmaterials.applicationportal.org/home.html

The application period is open until position is filled. We will start reviewing applications immediately.

Attachments

Call_Blasco_Final.pdf (742.08 KB)

Disclaimer:

The responsibility for the funding offers published on this website, including the funding description, lies entirely with the publishing institutions. The application is handled uniquely by the employer, who is also fully responsible for the recruitment and selection processes.