Sort by
Refine Your Search
-
Listed
-
Category
-
Field
-
multimodal large model-based embodied intelligence system for the elderly (AEIS-Lite)”. Qualifications Applicants should have an honours degree or an equivalent qualification. Applicants are invited to contact
-
- “Building a federated learning platform for domain applications with foundation models”. Qualifications Applicants should: (a) have a doctoral degree or an equivalent qualification and must have no
-
to: (a) propose a resource verification mechanism to make an untrusted device contributing sufficient computing resources to AI model training and inference as it claimed; (b) assist the project team
-
publication track record. Preference will be given to those with research experience in structural mechanics, finite element modelling, fatigue, ultra-high-performance concrete, fibre reinforced polymer (FRP
-
[Appointment period: six months] Duties The appointees will assist the project leader in the research project - “Causality-aware trustworthy Large Language Model”. The appointees will be required to: (a
-
Mathematics; and (b) a strong background in spatiotemporal data processing, weather-related forecasting, deep learning, and/or atmospheric radiative modeling, along with proficient Python coding skills
-
the research project - “Re-inventing surface haptics for robust human-machine interactions: from new modelling to psychophysical evaluation”. Qualifications Applicants should: (a) have an honours degree
-
quantitative and analytical skills; (c) in-depth experience in econometric modelling and modern machine learning techniques; and (d) strong proficiency in handling large-scale datasets and advanced
-
equivalent and must have no more than five years of post-qualification experience at the time of application; (b) be proficient in OceanWave3D (or equivalent) for modelling floating structures; (c) have
-
deployment and post-training of foundation/large models”. He/She will be required to: (a) model quantum computing platforms; (b) design quantum networks and compilation algorithms; (c) evaluate