Tech
Coats Digital launches AI-powered GSDQuest for garment costing
GSDQuest leverages advanced artificial intelligence to analyse product images and automatically identify garment design and construction elements. Using Coats Digital’s proprietary QED Library, it instantly generates a standardised Bill of Labour, removing the need for time-consuming manual input. This breakthrough accelerates costing from hours to mere seconds while delivering unprecedented accuracy and consistency.
Coats Digital has launched GSDQuest, an AI-powered tool that transforms garment costing by generating a standardised Bill of Labour in seconds from product images.
Built on the proven GSDCost methodology, it leverages AI and the QED Library for accurate SMV analysis, enabling fair benchmarking, faster decisions, and smarter, more sustainable supply chain collaboration.
Crucially, GSDQuest is designed to be accessible and user-friendly for all professionals — not just certified GSD practitioners. For the first time, anyone in the supply chain can benefit from the power of GSDCost’s award-winning, scientifically grounded SMV garment analysis, instantly and effortlessly.
Building on the proven scientific methodology of GSDCost, which uses internationally recognised standard motion codes and Standard Minute Values (SMVs), GSDQuest ensures that all costing outputs are grounded in robust, data-driven time-motion science. This scientific foundation supports fair and transparent benchmarking across brands and manufacturers, enabling more precise cost prediction, fact-based negotiation, and sustainable supply chain collaboration.
Jonathan McCormack, Senior Engineering Director, Coats Digital, said: “GSDQuest represents a significant leap forward for the apparel industry. By combining AI-powered image analysis with our trusted QED Library, we are automating the complex and traditionally manual process of garment costing with advanced next-gen technology. And for the first time, this power is in the hands of any user, regardless of technical background. GSDQuest can be applied at any stage of the product lifecycle — from initial design through to production approvals — and is built with multi-modal AI that can make presumptive analyses from both visible and hidden design information. It works across images, PDFs, tech packs and more — and can analyse multiple garments at once. This not only drastically reduces lead times but also enhances accuracy and standardisation, empowering brands and manufacturers to respond effectively to increasingly volatile market conditions.”
Traditional costing often requires technical and costing teams to spend hours analysing design features and building operation-level estimates using internal libraries. GSDQuest eliminates these repetitive tasks and transforms costing into a strategic, intelligent process.
Key features of GSDQuest include:
- Automatic recognition of garment features from multiple product images
- Integration with the QED Library for construction method mapping
- Instant generation of standardised Bill of Labour
- Detection of hidden design elements for comprehensive costing
- Scalability across product categories and vendor networks
- Upcoming API integration for seamless workflow embedding
Kunal Kapur, Managing Director, Coats Digital, said: “The fashion industry is at a tipping point. Legacy processes can no longer keep pace with the speed, complexity and cost pressures brands and manufacturers face. GSDQuest represents a game-changing shift — replacing guesswork and manual effort with intelligent automation, scientific consistency and real-time accuracy. It’s part of our mission to harness AI to solve fashion’s biggest challenges — helping our customers work faster, more fairly, and more sustainably. The result is better decisions, stronger partnerships, and a smarter supply chain for all.”
As well as manufacturers, GSDQuest is designed for use by brands, costing teams, technical and sourcing professionals, to support early costing, sample evaluation, and final approvals. Its seamless integration into tech pack creation and design workflows is expected to significantly enhance global supply chain efficiency and collaboration.
GSDCost is the global standard for establishing accurate, sustainable garment manufacturing methods and Standard Minute Values (SMVs). Grounded in time-motion science, it provides a robust, data-driven foundation for precise cost benchmarking and fair wage practices. GSDCost enables manufacturers to define operations using internationally accepted motion codes, ensuring consistency, transparency, and compliance across complex supply chains.
Note: The headline, insights, and image of this press release may have been refined by the Fibre2Fashion staff; the rest of the content remains unchanged.
Fibre2Fashion News Desk (HU)
Tech
Is AI ready for the courtroom? New framework tackles the technology’s biggest weaknesses
For over a decade, computer scientist Randy Goebel and his colleagues in Japan have been using a tried-and-true method from his field to advance artificial intelligence in the world of law: a yearly competition.
Drawing on example legal cases taken from the Japanese bar exam, contestants must use an AI system that can retrieve statutes relevant to the cases, and, more crucially, make a decision: did the defendants in the cases break the law, or not?
It’s this yes/no answer that AI struggles with the most, says Goebel—and it raises questions of whether AI systems can be ethically and effectively deployed by lawyers, judges and other legal professionals who face giant dockets and narrow time windows to deliver justice.
The contest has provided the foundation for a new paper in which Goebel and his co-authors outline the types of reasoning AI must use to “think” like lawyers and judges, and describe a framework for imbuing large language models (LLMs) with legal reasoning.
The paper is published in the journal Computer Law & Security Review.
“The mandate is to understand legal reasoning, but the passion and the value to society is to improve judicial decision-making,” Goebel says.
The need for these kinds of tools has been especially critical since the Supreme Court of Canada’s Jordan decision, Goebel says. That decision shortened the length of time prosecutors have to bring a case to trial, and it has resulted in cases as severe as sexual assault and fraud being thrown out of court.
“It’s a very good motivation to say, ‘Let’s enable the judicial system to be faster, more effective and more efficient,'” Goebel says.
Making machines ‘think’ like lawyers
The paper highlights three types of reasoning AI tools must possess to think like legal professionals: case-based, rule-based and abductive reasoning.
Some AI systems, such as LLMs, have proven adept at case-based reasoning, which requires legal experts to examine previous court cases and determine how laws were applied in the past to draw parallels to the current case in question.
Rule-based reasoning, which involves applying written laws to unique legal cases, can also be completed to some extent by AI tools.
But where AI tools struggle the most is with abductive reasoning, a type of logical inference that involves stringing together a plausible series of events that could explain, for example, why a defendant is not guilty of a crime. (Did the man with the knife in his hand stab the victim? Or did a gust of wind blow the knife into his hand?)
“Not surprisingly, abductive reasoning can’t be done by modern large language models, because they don’t reason,” Goebel says. “They’re like your friend who has read every page of Encyclopedia Britannica, who has an opinion on everything but knows nothing about how the logic fits together.”
Combined with their tendency to “hallucinate,” or invent “facts” wholesale, generic LLMs applied to the legal field are at best unreliable and, at worst, potentially career-ending for lawyers.
The important challenge for AI scientists is whether they can develop a reasoning framework that works in conjunction with generic LLMs to focus on accuracy and contextual relevance in legal reasoning, Goebel says.
No one-size-fits-all AI tool
When will we have AI tools that can cut the work of lawyers and judges in half? Perhaps not any time soon.
Goebel says a key takeaway from the competition, and one that is also outlined in the paper, is that using computer programs to aid legal decision-making is relatively new, and there is still a lot of work to be done.
Goebel foresees many separate AI tools employed for different types of legal tasks, rather than a single “godlike” LLM.
Claims made by some in the AI industry that humanity is on the cusp of creating an AI tool that can render “perfect” judicial decisions and legal arguments are absurd, Goebel says.
“Every judge I’ve spoken to has acknowledged there is no such thing as perfect judgment,” he says. “The question is really, ‘How do we determine whether the current technologies provide more value than harm?'”
More information:
Ha Thanh Nguyen et al, LLMs for legal reasoning: A unified framework and future perspectives, Computer Law & Security Review (2025). DOI: 10.1016/j.clsr.2025.106165
Citation:
Is AI ready for the courtroom? New framework tackles the technology’s biggest weaknesses (2025, October 28)
retrieved 28 October 2025
from https://techxplore.com/news/2025-10-ai-ready-courtroom-framework-tackles.html
This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.
Tech
Molecular engineering strategy boosts efficiency of inverted perovskite solar cells
Solar cells, devices that can directly convert radiation emitted from the sun into electricity, have become increasingly widespread and are contributing to the reduction of greenhouse gas emissions worldwide. While existing silicon-based solar cells have attained good performances, energy engineers have been exploring alternative designs that could be more efficient and affordable.
Perovskites, a class of materials with a characteristic crystal structure, have proved to be particularly promising for the development of low-cost and energy-efficient solar energy solutions. Recent studies specifically highlighted the potential of inverted perovskite solar cells, devices in which the extraction charge layers are arranged in the reverse order compared to traditional designs.
Inverted perovskite solar cells could be more stable and easier to manufacture on a large-scale than conventional perovskite-based cells. Nonetheless, most inverted cells developed so far were found to exhibit low energy-efficiencies, due to the uncontrolled formation of crystal grains that can produce defects and adversely impact the transport of charge carriers generated by sunlight.
Researchers at Huazhong University of Science and Technology recently devised a new molecular engineering strategy to control the crystallization of perovskite materials in inverted solar cells. This promising approach, outlined in a paper published in Nature Energy, entails mixing special naphthalene-based molecules into perovskites, to ensure that they grow more uniformly.
“Formamidinium and cesium metal halide perovskites enable high efficiency in inverted perovskite solar cells, but uncontrolled crystallization limits their performance,” wrote Qisen Zhou, Guoyu Huang and their colleagues in their paper. “We regulate the nucleation and growth of the perovskite through aromatic interactions between naphthalene ammonium salts and naphthalenesulfonates.”
Essentially, the researchers mixed naphthalene-based molecules into the perovskite solution to control the formation and growth of perovskite crystals. They found that the resulting perovskite films were uniform and had very few defects, which is highly favorable for the development of inverted solar cells.
“The ammonium groups of the naphthalene ammonium salts occupy the formamidinium site, while the sulfonate groups of the naphthalenesulfonates coordinate with lead ions,” explained the authors. “Their naphthalene moieties form tight aromatic stacking adjacent to the [PbI6]4− octahedra. These interactions promote ordered out-of-plane crystallization along the (100) plane, enhancing defect passivation and carrier transport.”
Zhou, Huang and his colleagues used the uniform perovskite films they created to fabricate inverted perovskite solar cells. They then tested the performance, efficiency and stability of these cells under continuous illumination.
“We achieve a power conversion efficiency of 27.02% (certified 26.88%) for inverted solar cells,” wrote the researchers. “Encapsulated devices retain 98.2% of their initial efficiency after 2,000 h of maximum power point tracking under continuous illumination in ambient air. Furthermore, we demonstrate a certified steady-state efficiency of 23.18% for inverted mini-modules with an aperture area of 11.09 cm2 and a certified efficiency of 29.07% for all-perovskite tandem solar cells.”
The initial results gathered by this research team are highly promising, highlighting the promise of their molecular engineering approach for the development of energy-efficient inverted perovskite solar cells. In the future, their strategy could be further refined to achieve additional efficiency gains and used to realize high-quality perovskite films with varying compositions.
Written for you by our author Ingrid Fadelli, edited by Lisa Lock, and fact-checked and reviewed by Robert Egan—this article is the result of careful human work. We rely on readers like you to keep independent science journalism alive.
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More information:
Qisen Zhou et al, Aromatic interaction-driven out-of-plane orientation for inverted perovskite solar cells with improved efficiency, Nature Energy (2025). DOI: 10.1038/s41560-025-01882-x
© 2025 Science X Network
Citation:
Molecular engineering strategy boosts efficiency of inverted perovskite solar cells (2025, October 28)
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part may be reproduced without the written permission. The content is provided for information purposes only.
Tech
The Republican Plan to Reform the Census Could Put Everyone’s Privacy at Risk
President Donald Trump and the Republican Party have spent the better part of the president’s second term radically reshaping the federal government. But in recent weeks, the GOP has set its sights on taking another run at an old target: the US census.
Since the first Trump administration, the right has sought to add a question to the census that captures a respondent’s immigration status and to exclude noncitizens from the tallies that determine how seats in Congress are distributed. In 2019, the Supreme Court struck down an attempt by the first Trump administration to add a citizenship question to the census.
But now, a little-known algorithmic process called “differential privacy,” created to keep census data from being used to identify individual respondents, has become the right’s latest focus. WIRED spoke to six experts about the GOP’s ongoing effort to falsely allege that a system created to protect people’s privacy has made the data from the 2020 census inaccurate.
If successful, the campaign to get rid of differential privacy could not only radically change the kind of data made available, but could put the data of every person living in the US at risk. The campaign could also discourage immigrants from participating in the census entirely.
The Census Bureau regularly publishes anonymized data so that policymakers and researchers can use it. That data is also sensitive: Conducted every 10 years, the census counts every person living in the United States, citizen and noncitizen alike. The data includes detailed information like the race, sex, and age, as well the languages they speak, their home address, economic status, and the number of people living in a house. This data is used for allocating the federal funds that support public services like schools and hospitals, as well as for how a state’s population is divided up and represented in Congress. The more people in a state, the more Congressional representation—and more votes in the Electoral College.
As computers got increasingly sophisticated and data more abundant and accessible, census employees and researchers realized the data published by the Census Bureau could be reverse engineered to identify individual people. According to Title XIII of the US Code, it is illegal for census workers to publish any data that would identify individual people, their homes, or businesses. A a government employee revealing this kind of information could be punished with thousands of dollars in fines or even a possible prison sentence.
For individuals, this could mean, for instance, someone could use census data without differential privacy to identify transgender youth, according to research from the University of Washington.
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