查尔摩斯工学院Phd申请条件和要求都有哪些?PhD position in Earth Observation, Data Science, and AI for poverty estimation项目是不是全奖?有没有奖学金?下面我们一起看一下查尔摩斯工学院申请Phd直招需要具备哪些条件和要求,以及托福、雅思语言成绩要到多少才能申请。
Who we are looking for
The following requirements are mandatory:
To qualify as a Doctoral student, you must have a Master’s degree (masterexamen) of 120 credits or a Master’s degree (magisterexamen) of 60 credits* in computer science, data science, statistics, applied mathematics, electrical engineering, signal processing, physics, computational social science, or a related field.
Strong written and verbal communication skills in English.
Solid programming skills in Python (or an equivalent scientific language such as R, Julia, or C++), with hands-on experience using modern deep-learning frameworks (e.g., PyTorch, TensorFlow, or JAX).
Foundational knowledge of deep learning and computer vision, demonstrated through coursework, a Master’s thesis, an internship, or an independent project.
Curiosity for interdisciplinary research—willingness to engage with questions in poverty research, sustainable development, and statistics alongside the technical work.
Personal qualities in line with the requirements profile: self-propelled, intellectually curious, collaborative, and able to communicate clearly with researchers from different disciplines.
*For students with an education earned outside Sweden, a 4-year Bachelor’s degree is accepted.
The following experience will strengthen your application:
Experience with image processing, preferably satellite imagery or other remote-sensing data.
Experience with Google Earth Engine, geospatial libraries (e.g., GDAL, rasterio, geopandas), or earth-observation data pipelines—or a strong willingness to learn.
Coursework or research exposure to remote sensing, geosciences, or spatial statistics.
Familiarity with modeling geo-temporal data (e.g., spatio-temporal CNNs, LSTMs, transformers, or Gaussian processes).
Interest in or exposure to causal inference (see, e.g., Imbens and Rubin, 2015, or Pearl, 2016).
Awareness of statistical issues that arise when predictions are used as data for inference (e.g., prediction-powered inference, conformal prediction, multiple imputation).
A Master’s thesis, peer-reviewed publication, conference paper, open-source contribution, or other written output that demonstrates independent research capacity.
Experience working in or with international, interdisciplinary, or policy-relevant research teams.
The project welcomes spin-off ideas that build on the candidate’s own interests, especially those that open new angles on the objectives above. Please state clearly in your application which parts of the project attract you most and link this to your background.