[Opt-Net] PhD position, TU Graz, Austria: Artificial Intelligence for Improved Container Loading Efficiency

Bettina Klinz klinz at math.tugraz.at
Wed Feb 7 19:41:21 CET 2024


Artificial Intelligence for Improved Container Loading
Efficiency (PhD position)

The Combinatorial Optimization group within the Institute of Discrete
Mathematics at Graz University of Technology is seeking a PhD student
to work on an applied optimization project aiming at efficient solutions
for real-world container loading problems as a contribution to a greener future.


Context of position/Advisors
============================

A fully funded PhD position is offered for 3 years. The starting date is
                   September 1, 2024
(slightly later or earlier starting dates are possible upon mutual consent).

The annual gross salary is 50103.2 Euro (employment for 40 hours per week,
no teaching obligations involved). The position is part of the research
project "Artificial Intelligence for Improved Container Loading Efficiency"
(AI4CL) which is funded by the Austrian Research Promotion Agency (FFG) within
the AI for Green funding call.  The project will be carried out in
collaboration with the start-up S2data https://www.s2-data.at which is
offering software-as-a-service solutions for holistic supply chain optimization.
The PhD student will be supervised by Eranda Dragoti-Cela and Bettina Klinz
on the side of Graz University of Technology and by Stefan Lendl on the side of
S2data.



Goals/PhD topic
===============

The goal of the project is to develop new algorithms for container loading
problems. The task there is to find an efficient placement of boxes into
transport containers such that special loading constraints (e.g., box
stacking rules, weight distribution rules, rules about the placement location
of dangerous goods) are satisfied.  A special focus within this project will
be on achieving more efficient and greener transports.

>From a methodological point of view, the project will involve approaches from
different areas of mathematical optimization, computer science and operations
research. The developed suite of algorithms will vary strongly in their
mathematical foundation. Techniques that we envisage to make use of include
mixed-integer programming, column generation, local search algorithms and
metaheuristics, tree search based algorithms with neural network
state-evaluations and constraint generation approaches.
The developed algorithms will be tested and evaluated not only on existing
academic benchmark data but also on real industry data.



Requirements
============

The candidates must have a master degree (or equivalent) in mathematics or
a related field with a sound mathematical background by October 2024.
Due to the applied character of the project some experience in coding
and an interest into optimization problems are an absolute requirement.
A solid background in optimization, prior experience with C/C++ or Python,
knowledge of MIP solvers and familiarity with machine learning are a plus.


Applications
============

The application should contain

* a cover letter
* a scientific CV
* higher education certificates/diplomas
* the master thesis, or a recent draft of it (if available)
* names and email addresses of at least two references for recommendation
   letters, including the master thesis supervisor

More documents can be sent if appropriate. There is no need to send
recommendation letters at the deadline - we will contact the corresponding
letter writers on demand. Please notify them that we might ask for a letter
with a relatively short deadline after the application was sent.


Applications (preferably as a single pdf file) should be sent to:

ai4green-applications at math.tugraz.at

The application deadline is April 15, 2024.
                             ===============

Late applications will be considered until the position is filled.

A pdf version of this announcement is available at
https://www.math.tugraz.at/opt/grants/ai4green_phdpos.pdf



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