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You will be updated with latest job alerts via emailApplications are invited for appointment asResearch Assistant I/II in the Sustainability X-Lab Department of Real Estate and Construction to commence as soon as possible for 12 months with the possibility of renewal subject to satisfactory performance.
Duties and Responsibilities
1. Research Implementation & Computational Modeling
2. Data Curation & System Integration
3. Model Validation & Uncertainty Quantification
4. Interdisciplinary Collaboration & Communication
5. Scholarly Dissemination & Impact
6. Laboratory Operations & Compliance
Requirements
Academic Qualifications: Applicants should possess a Bachelors degree or above in Computer Science Artificial Intelligence Machine Learning Natural Language Processing or related fields. A solid foundation in computer science basics including data structures algorithms operating systems and computer networks is a must. Proficiency in at least one programming language such as Python or Java along with good programming skills and code standards is required.
Other Qualifications: Familiarity with the basic principles and architecture of large - language models and their applications in the natural language processing field is essential. Mastery of RAG technology and related tools and the ability to efficiently retrieve integrate and process big data are preferred. Experience in large - model development including familiarity with the model training optimization and evaluation process and the ability to independently develop the preliminary version of a vertical - category large model is not a must but will be given priority. Knowledge of large - model fine - tuning techniques and the ability to fine - tune models according to specific task requirements to enhance their performance in particular fields is also needed. And you ought to be familiar with deep - learning frameworks like PyTorch and TensorFlow and be able to use them for model development and training.
Project Experience: Candidates with relevant project experience will be given priority such as those who have participated in the development fine - tuning or application projects of large - language models or have practical experience in the natural language processing field. Experience in handling large - scale data sets and the ability to skillfully use data processing tools and platforms like Hadoop and Spark and have a certain understanding of big - data storage management and analysis is a plus.
Academic Background: You should have a strong interest in the academic research of large models and be willing to explore their academic value in vertical fields at work. The ability to read and understand academic papers in related fields and write research reports and papers is necessary. Those who have published papers in academic journals or conferences or have experience in participating in academic projects or research topics will be preferred.
Other Requirements: Good team-work spirit and communication skills are required as you need to closely cooperate with team members to complete project tasks. Strong learning ability and problem - solving skills are also important so that you can quickly master new technologies and knowledge and independently solve problems encountered in the project. Curiosity and exploratory spirit for new technologies and fields are highly valued as we expect you to keep learning and trying to promote the innovation and development of the project.
A highly competitive salary commensurate with qualifications and experience will be offered in addition to annual leave and medical benefits.
Enquiries can be sent to Prof. Zhang Xiaoling at .
The University only accepts online application for the above post. Applicants should apply online and upload an up-to-date C.V. Review of applications will start as soon as possible and continue untilAugust 31 2025 or until the post is filled whichever is earlier. We look forward to your joining and working together with us to make contributions to the field of sustainability research.
Full-Time