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Boskalis is currently looking for a student to start their graduation project with us. Logistic planning is a complex task involving numerous dependencies and a chain of events, especially in the large-scale projects that Boskalis conducts. Many projects share common challenges, such as aligning our assets, accounting for external dynamic factors, and meeting the objectives desired by venture partners. Traditional planning methods involve heuristic calculations guided by experience or rules of thumb, which are difficult to manage manually. Multi-Agent Systems (MAS) and Reinforcement Learning (RL) are promising fields worth exploring, as they have shown success in solving NP-hard problems through simulation and verification. The research project will require the student to conduct a literature review on developing such systems for our defined real-world projects. This will involve finding or building appropriate simulations to run these algorithms. Key design choices need to be made, such as defining the elements of the RL agent(s) and their environment. With a variety of RL algorithms and frameworks available, an educated choice must be made to address our specific problem effectively.
Job Responsibility:
Work with other data scientists and meet with multi-disciplinary operational engineers to understand the challenge
Conduct literature research on MAS and RL and how they can be used for making schedules
Formulate the problem in a mathematical model
Develop efficient generic methods for making schedules for the chosen methods and demonstrate how they can be scaled up for future needs
Report your final findings, demonstrating your design choices and reproducibility of results
Requirements:
You are doing a university master’s degree in computer science, AI, mathematics, or other related field
Affinity with Python and version controlling
Able to develop, train, and evaluate AI models, using TensorFlow, PyTorch, Keras
Theoretical understanding of MAS and RL, practical knowledge is not requested but pre
Proficiency in writing reports and findings, and presenting results
What we offer:
Receive supervision and support from data science experts from the Data Science & Engineering department
Gain access to necessary data and compute resources for training and deploying models (Databricks)
Low threshold to plan meetings with people to gain a better understanding
Utilize well-established development facilities (Python, source code control, packaging)
Access and review other developments that the Data Science & Engineering department are working on
Internship guidance
Warm welcome
Salary and more: As an intern, you will receive an internship allowance
A dynamic work environment
Young Boskalis: Monthly social and sporting activities, networking and knowledge sharing