Design
8 Golden Rules of Interface Design
To improve the usability of an application it is important to have a well designed interface. Shneiderman’s “Eight Golden Rules of Interface Design” are a guide to good interaction design. These rules were obtained from the text Designing the User Interface by Ben Shneiderman. Shneiderman proposed this collection of principles that are derived heuristically from experience and applicable in most interactive systems after being properly refined, extended, and interpreted.
1) Strive for consistency.
Consistent sequences of actions should be required in similar situations; identical terminology should be used in prompts, menus, and help screens; and consistent commands should be employed throughout.
2) Enable frequent users to use shortcuts.
As the frequency of use increases, so do the user’s desires to reduce the number of interactions and to increase the pace of interaction. Abbreviations, function keys, hidden commands, and macro facilities are very helpful to an expert user.
3) Offer informative feedback.
For every operator action, there should be some system feedback. For frequent and minor actions, the response can be modest, while for infrequent and major actions, the response should be more substantial.
4) Design dialog to yield closure.
Sequences of actions should be organized into groups with a beginning, middle, and end. The informative feedback at the completion of a group of actions gives the operators the satisfaction of accomplishment, a sense of relief, the signal to drop contingency plans and options from their minds, and an indication that the way is clear to prepare for the next group of actions.
5) Offer simple error handling.
As much as possible, design the system so the user cannot make a serious error. If an error is made, the system should be able to detect the error and offer simple, comprehensible mechanisms for handling the error.
6) Permit easy reversal of actions.
This feature relieves anxiety, since the user knows that errors can be undone; it thus encourages exploration of unfamiliar options. The units of reversibility may be a single action, a data entry, or a complete group of actions.
7) Support internal locus of control.
Experienced operators strongly desire the sense that they are in charge of the system and that the system responds to their actions. Design the system to make users the initiators of actions rather than the responders.
8) Reduce short-term memory load.
The limitation of human information processing in short-term memory requires that displays be kept simple, multiple page displays be consolidated, window-motion frequency be reduced, and sufficient training time be allotted for codes, mnemonics, and sequences of actions.
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Design
Development of Explainable AI (XAI)
Artificial Intelligence (AI) is a rapidly evolving field that has the potential to change the way we live and work. The latest research in AI is focused on developing more advanced and sophisticated AI systems that can perform a wide range of tasks with greater accuracy and efficiency.
One area of AI research that has gained a lot of attention in recent years is deep learning. This is a type of machine learning that uses neural networks to model complex patterns in data. Deep learning has been used to achieve breakthroughs in areas such as image recognition, natural language processing, and speech recognition. AI is also expected to have a significant impact on the field of robotics. Advancements in AI are making it possible to develop robots that can perform a wide range of tasks with greater autonomy and intelligence. This has the potential to revolutionize industries such as manufacturing, transportation, and healthcare.
Another area of AI research that is attracting a lot of attention is the development of generative models. These are AI systems that can generate new data, such as images or text, based on what they have learned. This has the potential to revolutionize fields such as art and design, music, and writing. Another area of research is the development of explainable AI (XAI), which aims to make AI systems more transparent and understandable. This is important for ensuring that AI systems can be trusted and used responsibly. XAI has been recognised by AI researchers as a crucial component of reliable AI, and explainability has recently attracted more attention. To address growing ethical and legal concerns Explainable artificial intelligence (XAI) is a useful tool for as well as important How? and Why? questions about AI systems. However, despite the demand for explainability across several disciplines and the growing interest in XAI research, XAI still has a number of drawbacks.
The creation of AI systems that can clearly and transparently explain their decision-making processes is known as explainable AI (XAI). This is crucial in circumstances when an AI system’s decisions could have broad repercussions, such as in the legal, financial, and healthcare systems. Here are a few instances of XAI in action:
- Healthcare: An AI system that diagnoses medical issues must be able to justify its findings by referencing the patient’s medical history, test results, and other pertinent information.
- Finance: An AI system that evaluates loan applications must be able to clearly explain the reasons a loan was authorised or denied, taking into account elements like income and credit history.
- Legal: An AI system that helps judges make sentencing decisions must be able to provide a clear explanation of how it arrived at its recommendations, taking into account factors such as the defendant’s prior criminal history, the circumstances of the crime, and relevant laws.
In each of these examples, the ability to explain the decision-making process of an AI system is critical for building trust and ensuring accountability.
It is important to be aware of the potential of this technology and actively seek ways to harness its power for the benefit of society as a whole. The latest research in AI is focused on developing more advanced and sophisticated AI systems that can perform a wide range of tasks with greater accuracy and efficiency. From deep learning, generative models, explainable AI and robotics, the potential applications of AI are vast and it is expected to play an even greater role in the coming years, leading to new and exciting opportunities for innovation and progress.
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Design
Extended Reality (XR), an evolving technology
Extended Reality, or XR, is a catch-all phrase that refers to a variety of technologies, including Virtual Reality (VR), Augmented Reality (AR), and Mixed Reality (MR). These innovations enable the development of immersive and interactive experiences that converge the real and virtual worlds. In the world of entertainment and gaming, XR has several applications. Virtual worlds and games that can transport users to other locations and eras can be created using VR and MR. The fields of training and education are further applications for XR. Users can learn and hone new abilities in a secure environment by using VR and AR to create realistic simulations and scenarios.
The performance and responsiveness of XR applications have recently improved because to the utilisation of edge computing and 5G. Edge computing allows data processing to occur closer to the user, which reduces latency and increases responsiveness. The use of AI and machine learning to enhance the realism and interactivity of XR experiences is another breakthrough. For instance, MIT researchers have created a virtual reality (VR) system that uses AI to create realistic scenes and characters that react to the user’s input in real time.
A rapidly developing technology, XR has numerous potential uses across numerous industries. There will probably be more advancements and use cases in the near future since it enables the construction of immersive and interactive experiences that blur the boundaries between the real and virtual worlds.
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Design
Multi-material printing and innovation in hybrid manufacturing
A type of 3D printing called multi-material additive manufacturing allows for the simultaneous printing of numerous materials, each with a variety of unique features. This technology has a wide range of applications and the power to completely alter how goods are created. The production of intricate and personalised products is one use for multi-material printing. It can be used, for instance, to print items with various textures, colours, and even degrees of hardness or flexibility. This makes it possible to produce items that would be challenging or impossible to make using conventional manufacturing techniques.
Engineering and prototyping both use multi-material printing. It can be used, for instance, to make workable prototypes of things like gears and bearings, that have different properties in a single print. This can greatly speed up the prototyping process and reduce the costs associated with creating multiple prototypes. Multi-material printing also has applications in the field of medicine. For example, it can be used to create customized prosthetics and other medical devices that have different properties in a single print. This allows for the creation of prosthetics that are more comfortable and functional for the patient.
New printing methods and materials have been used recently in multi-material printing. As an illustration, MIT researchers have created a technique for printing with several materials using a single nozzle, enabling the production of things with various qualities in a single print. the practise of “multi-material jetting,” which enables the use of a single print head to print numerous materials simultaneously. For instance, the J750 3D printer, and J850, which aims to “push the boundaries of 3D printed realism” from Stratasys can print with up to six different materials simultaneously, such as transparent materials, rigid and flexible plastics, and even color-changing materials.
Innovation in “hybrid manufacturing,” which mixes various production techniques including 3D printing, CNC machining, and casting to produce items with distinctive features. For example, researchers at the Technical University of Munich have developed a hybrid manufacturing process that allows for the printing of high-strength aluminium parts with embedded electronics.
Multi-material printing is a rapidly evolving technology with many potential applications in a wide range of industries. It has the ability to produce complex and customized objects that would be difficult or impossible to create using traditional manufacturing methods, and it’s likely that we will see more developments in the near future.
9,239 total views, 55 views today
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