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Изходен канал @clockstackwheels · Post #503 · 14.08

14 августа 2013 года, ровно 9 лет назад, я впервые установил Telegram. Вот такой скриншот был в промо-материалах: акцент на технологии, а про рюшечки для блондинок упомянуто вскользь с шуткой. Позавчера Telegram выкатил анимированные эмодзи и кастомные реакции. Перед этим Павел Дуров написал пост о том, что Apple очередной раз задерживает обновление, в котором будет революционный способ самовыражения. Обновление вышло, а революции что-то не видно: анимированные колобки были ещё в Qip десять лет назад, кастомные реакции есть в Slack и Discord. Ну да ладно. Меня больше удивляет фиксация команды Telegram на рюшечках: огромные силы тратятся на все эти стикеры, анимации, реакции, эмодзи. И среди последнего десятка крупных обновлений, кажется, не было ни одного без этой фигни. Почему так происходит? Некоторые говорят, это потому, что Телеграм уже полностью доделан, и в него банально нечего добавить. Но это не так: до сих пор нет средств дискавери для каналов, до сих пор нельзя адекватно прикреплять картинку к тексту, сжатие фотографий всё ещё очень шакальное, полноценно редактировать альбом невозможно, посты в каналах по интерфейсу всё ещё чат-монолог на 60% от ширины экрана, на главной странице всё ещё вперемешку сущности из всех папок, и вообще управление папками сделано через одно место. В общем, много всего ещё нужно править. Думаю, дело в другом: команда Telegram очень круто умеет в UI/UX и фичи, лучше всех на рынке. Но почти не умеет в бизнес и маркетинг. Она, как и Дуров, не понимают, как продавать свой продукт. Им сейчас надо привлечь широкие массы и, видимо, внутренняя статистика показывает рост активности и вовлечённости от всех этих рюшечек. А, значит, надо ещё больше рюшечек. Но это примерно как в продуктовом магазине обнаружить, что люди покупают алкоголь, и начать очень активно развивать это направление, подзабив на всё остальное. Расширять полки с бухлом, рекламировать его, ставить прямо на входе, заслонять спиртягой хлеб и другие продукты. Покупателей, возможно, станет больше, но они будут алкашами. #web

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AI & Law

@ai_and_law · Post #750 · 26.01.2026 г., 08:04

🇺🇸TRAIN Act: U.S. Congress Moves Toward Mandatory AI Training Transparency Bipartisan lawmakers have introduced the Transparency and Responsibility for Artificial Intelligence Networks (TRAIN) Act in the U.S. House, aiming to give copyright holders access to AI training records to determine whether their works were used to train generative AI models without consent or compensation. The bill, led by Rep. Madeleine Dean (PA-04) and Rep. Nathaniel Moran (TX-01), follows a Senate version reintroduced by Senators Peter Welch, Marsha Blackburn, Adam Schiff, and Josh Hawley. This is the first time the TRAIN Act has been introduced in the House. The proposal is modeled on enforcement mechanisms used in online piracy cases and responds to the current lack of any clear process for creators to verify whether their content was ingested into training datasets. The bill has support from major creator and rights-holder organizations, including the Recording Industry Association of America (RIAA) and SAG-AFTRA, alongside groups representing musicians, publishers, and copyright licensing. If enacted, the TRAIN Act would shift AI copyright disputes from speculation to evidence by establishing a legal path to training-data disclosure. It would also add pressure on AI companies that do not currently reveal how their models are trained. #AIandLaw#Copyright#TrainingData#Transparency

AI & Law

@ai_and_law · Post #785 · 16.03.2026 г., 07:04

🇪🇺📖Study Finds Limited Availability of AI Training Data Disclosures Under EU AI Act Researchers from Trinity College Dublin report that information about AI training data required under the AI Act is often missing and difficult to locate. The law requires developers to publish summaries explaining how their models were trained, using a disclosure template designed to help copyright holders enforce their rights regarding the use of copyrighted material in AI training. A pre-print study funded by Mozilla found that only a small number of such summaries could be identified. The researchers also found structural issues in accessing the disclosures. The AI Act does not specify where companies must publish the summaries, leaving the decision to developers. As a result, no common publication mechanism exists and practices vary widely. The template created by the European Commission AI Office has led to heterogeneous implementations, making it difficult to determine whether the available documents meet EU transparency requirements. Most of the identified disclosures were produced by smaller organizations, including documentation for Switzerland’s Apertus national model. A document published by Microsoft for one of its open-source models was also reviewed, but the study found that it lacked several required details. Researchers recommend creating a centralized portal for publishing transparency summaries to improve accessibility and support enforcement once the AI Act obligations become applicable in August. #AIAct#AITransparency#TrainingData#Copyright#AIGovernance#AIRegulation#EULaw

Venture Village Wall 🦄

@venturevillagewall · Post #3551 · 20.12.2024 г., 09:32

Fraction AI Raises $6M Fraction AI successfully secured $6M in funding for its groundbreaking project aimed at democratizing access to high-quality training data for artificial intelligence using Web3 technology. The funding round concluded on December 18, 2024. #FractionAI#Funding#AI#Web3#TrainingData#TechInvestment#Innovation#DataDemocratization

AI & Law

@ai_and_law · Post #783 · 12.03.2026 г., 07:04

🇺🇸Court Allows Enforcement of California AI Training Data Disclosure Law A US federal court has denied a request by Elon Musk’s AI company xAI to block enforcement of California Assembly Bill 2013. The law requires AI developers whose models are accessible in California to publicly disclose key information about training datasets, including dataset sources, collection timelines, whether collection is ongoing, and whether datasets contain copyrighted, trademarked, patented, or personal data. Companies must also indicate whether training data was licensed or purchased and the extent of synthetic data used. xAI argued the law would force disclosure of trade secrets, including dataset sources, dataset sizes, and data-cleaning methods. According to the company, such transparency could allow competitors to infer what datasets it uses and replicate its approach. The company warned that compliance could be “economically devastating” and reduce the value of its proprietary data practices. However, US District Judge Jesus Bernal ruled that xAI failed to demonstrate that the law requires disclosure of protected trade secrets. The court found the company’s claims too general and based largely on hypotheticals. The motion for a preliminary injunction was denied, allowing the law—which took effect in January—to remain in force while the lawsuit continues. #AIRegulation#AITransparency#TrainingData#TradeSecrets#AIAct#AIGovernance#TechLaw