Ph.D. Scholarship: Metal Nano-Catalysts, Charles University in Prague, Czech Republic

Postdoc in Czech Republic

Ph.D. Scholarship: Metal Nano-Catalysts: This scholarship opportunity is aimed at supporting Ph.D. students interested in the use of machine learning (ML) and quantum chemistry for the innovative design and characterization of metal/metal-oxide cluster-based nanocatalysts. The project focuses on advancing sustainable chemistry by enhancing the stability and catalytic activity of nanocatalysts through cutting-edge computational techniques.

Ph.D. Scholarship Position: ML-Assisted Design and Characterization of Oxide-Supported Metal Nano-Catalysts

Designation

Ph.D. Scholarship Position

Table

FieldDetails
Research AreaMetal Nano-Catalysts and Sustainable Chemistry
LocationCharles University in Prague
Eligibility/QualificationCandidates must have a background in Chemistry, Materials Science, Chemical Engineering, or relevant fields, along with proficiency in computational modeling and machine learning.
DescriptionThe project focuses on the design of single atom and sub-nanometer metal particles on oxide supports to maximize catalytic activity while minimizing material usage. It includes hands-on experience with state-of-the-art ML techniques, computational methods, and collaborations with international research teams.
How to ApplyInterested candidates should submit their application, including a CV, cover letter, and relevant documentation, to [Specify how to apply, e.g., email, application portal].
Last Date for ApplyUntil position filled

Research Area

The focus of the research revolves around:

  • Interactions of metal clusters with oxide surfaces.
  • Control of cluster motion and growth.
  • Effects of particle size and shape on catalytic applications.
  • Utilization of alloying effects to enhance catalyst performance.
  • Selection of optimal systems for specific green chemistry applications.

Eligibility/Qualification

Candidates are expected to have:

  • A Master’s degree or equivalent in relevant fields such as Chemistry, Materials Science, or Chemical Engineering.
  • Experience and proficiency in computational modeling.
  • Familiarity with machine learning techniques.
  • Strong analytical and problem-solving skills.

Description

This Ph.D. project, supervised by Dr. Christopher James Heard, involves the use of machine learning and quantum chemistry-supported simulations for the bottom-up design of supported nanocatalysts aimed at sustainable chemistry applications. The project will leverage computational techniques to explore and address the grand challenges in supported metal nano-catalysts, facilitating experimental verification through collaborations with international research partners.

How to Apply

To apply for this scholarship, candidates should prepare:

  • A comprehensive CV
  • A cover letter detailing your motivation and relevant experience
  • Transcripts and any other required supporting documents
    Applications should be sent to [insert application email or portal link].

Last Date for Apply

Until position filled


Link

LEAVE A REPLY

Please enter your comment!
Please enter your name here