Acontext model (or context modeling) defines how context data are structured and maintained (It plays a key role in supporting efficient context management).[1] It aims to produce a formal or semi-formal description of the context information that is present in acontext-aware system. In other words, the context is the surrounding element for the system, and a model provides the mathematical interface and a behavioral description of the surrounding environment.
It is used to represent the reusable context information of the components (The top-level classes consist ofOperating system, component container,hardware requirement andSoftware requirement).
A key role of context model is to simplify and introduce greater structure into the task of developing context-aware applications.[2][3]
TheUnified Modeling Language as used in systems engineering defines a context model as the physical scope of the system being designed, which could include the user as well as the environment and other actors. Asystem context diagram represents the context graphically..
Several examples of context models occur under other domains.
A context model can also apply to the surrounding elements in agene sequence. Like the context rules of a grammar disambiguating a lexical element, this helps to disambiguate the role of the gene.[5]
Within anontology, a context model provides disambiguation of a subject viasemantic analysis of information related to the subject.[6][7]
In terms of a physical environment, a context model defines the external interfaces that a system will interact with. This type of context model has been used to create models forvirtual environments such as theAdaptive Vehicle Make program. A context model used during design defines land, aquatic, or atmospheric characteristics (stated in terms of mathematical algorithms or a simulation) that the eventual product will face in the real environment.[8]
In the context oflarge language models, a context model refers to a component or aspect of thelanguage model that focuses on understanding and incorporating contextual information from the input text. The main purpose of a context model is to provide the language model with a better understanding of the context surrounding words, phrases, or sentences, so that it can generate more coherent and contextually appropriate responses. Indeep learning-based language models likeGPT-4 orBERT, the context model is an inherent part of the architecture. These models use mechanisms such asattention mechanisms and multi-layeredtransformer (machine learning) architectures to capture contextual information from the input sequence. The context model takes into account the relationships between words and their surrounding text, helping the language model understand the meaning of a word in a specific context, handle ambiguities, and generate more accurate and coherent responses.
Examples of AI-basednumerical weather prediction systems that apply context models includeGoogle DeepMind'sGraphCast,Huawei'sPanguWeather, andNVIDIA'sFourCastNet, drawing from historical and re-analysis context data. In general, the approach is to match up current conditions using past data as context and then apply a mix of physics and historical outcomes to form a projection.
^Abdelsalam Helal; Mounir Mokhtari; Bessam Abdulrazak (2008).The Engineering Handbook of Smart Technology for Aging, Disability and Independence. Wiley. p. 592.ISBN978-0-471-71155-1.
^Wang, Xiao Hang; Zhang, D. Qing; Gu, Tao; Pung, Hung Keng (2004). "Ontology based context modeling and reasoning using OWL".Proceedings of the Second IEEE Annual Conference on Pervasive Computing and Communications Workshops. IEEE:18–22.CiteSeerX10.1.1.3.9626.