Category: 3. Business

  • Simulation-based pipeline tailors training data for dexterous robots | MIT News

    Simulation-based pipeline tailors training data for dexterous robots | MIT News

    When ChatGPT or Gemini give what seems to be an expert response to your burning questions, you may not realize how much information it relies on to give that reply. Like other popular generative artificial intelligence (AI) models, these chatbots rely on backbone systems called foundation models that train on billions, or even trillions, of data points.

    In a similar vein, engineers are hoping to build foundation models that train a range of robots on new skills like picking up, moving, and putting down objects in places like homes and factories. The problem is that it’s difficult to collect and transfer instructional data across robotic systems. You could teach your system by teleoperating the hardware step-by-step using technology like virtual reality (VR), but that can be time-consuming. Training on videos from the internet is less instructive, since the clips don’t provide a step-by-step, specialized task walk-through for particular robots.

    A simulation-driven approach called “PhysicsGen” from MIT’s Computer Science and Artificial Intelligence Laboratory (CSAIL) and the Robotics and AI Institute customizes robot training data to help robots find the most efficient movements for a task. The system can multiply a few dozen VR demonstrations into nearly 3,000 simulations per machine. These high-quality instructions are then mapped to the precise configurations of mechanical companions like robotic arms and hands. 

    PhysicsGen creates data that generalize to specific robots and condition via a three-step process. First, a VR headset tracks how humans manipulate objects like blocks using their hands. These interactions are mapped in a 3D physics simulator at the same time, visualizing the key points of our hands as small spheres that mirror our gestures. For example, if you flipped a toy over, you’d see 3D shapes representing different parts of your hands rotating a virtual version of that object.

    The pipeline then remaps these points to a 3D model of the setup of a specific machine (like a robotic arm), moving them to the precise “joints” where a system twists and turns. Finally, PhysicsGen uses trajectory optimization — essentially simulating the most efficient motions to complete a task — so the robot knows the best ways to do things like repositioning a box.

    Each simulation is a detailed training data point that walks a robot through potential ways to handle objects. When implemented into a policy (or the action plan that the robot follows), the machine has a variety of ways to approach a task, and can try out different motions if one doesn’t work.

    “We’re creating robot-specific data without needing humans to re-record specialized demonstrations for each machine,” says Lujie Yang, an MIT PhD student in electrical engineering and computer science and CSAIL affiliate who is the lead author of a new paper introducing the project. “We’re scaling up the data in an autonomous and efficient way, making task instructions useful to a wider range of machines.”

    Generating so many instructional trajectories for robots could eventually help engineers build a massive dataset to guide machines like robotic arms and dexterous hands. For example, the pipeline might help two robotic arms collaborate on picking up warehouse items and placing them in the right boxes for deliveries. The system may also guide two robots to work together in a household on tasks like putting away cups.

    PhysicsGen’s potential also extends to converting data designed for older robots or different environments into useful instructions for new machines. “Despite being collected for a specific type of robot, we can revive these prior datasets to make them more generally useful,” adds Yang.

    Addition by multiplication

    PhysicsGen turned just 24 human demonstrations into thousands of simulated ones, helping both digital and real-world robots reorient objects.

    Yang and her colleagues first tested their pipeline in a virtual experiment where a floating robotic hand needed to rotate a block into a target position. The digital robot executed the task at a rate of 81 percent accuracy by training on PhysicGen’s massive dataset, a 60 percent improvement from a baseline that only learned from human demonstrations.

    The researchers also found that PhysicsGen could improve how virtual robotic arms collaborate to manipulate objects. Their system created extra training data that helped two pairs of robots successfully accomplish tasks as much as 30 percent more often than a purely human-taught baseline.

    In an experiment with a pair of real-world robotic arms, the researchers observed similar improvements as the machines teamed up to flip a large box into its designated position. When the robots deviated from the intended trajectory or mishandled the object, they were able to recover mid-task by referencing alternative trajectories from their library of instructional data.

    Senior author Russ Tedrake, who is the Toyota Professor of Electrical Engineering and Computer Science, Aeronautics and Astronautics, and Mechanical Engineering at MIT, adds that this imitation-guided data generation technique combines the strengths of human demonstration with the power of robot motion planning algorithms.

    “Even a single demonstration from a human can make the motion planning problem much easier,” says Tedrake, who is also a senior vice president of large behavior models at the Toyota Research Institute and CSAIL principal investigator. “In the future, perhaps the foundation models will be able to provide this information, and this type of data generation technique will provide a type of post-training recipe for that model.”

    The future of PhysicsGen

    Soon, PhysicsGen may be extended to a new frontier: diversifying the tasks a machine can execute.

    “We’d like to use PhysicsGen to teach a robot to pour water when it’s only been trained to put away dishes, for example,” says Yang. “Our pipeline doesn’t just generate dynamically feasible motions for familiar tasks; it also has the potential of creating a diverse library of physical interactions that we believe can serve as building blocks for accomplishing entirely new tasks a human hasn’t demonstrated.”

    Creating lots of widely applicable training data may eventually help build a foundation model for robots, though MIT researchers caution that this is a somewhat distant goal. The CSAIL-led team is investigating how PhysicsGen can harness vast, unstructured resources — like internet videos — as seeds for simulation. The goal: transform everyday visual content into rich, robot-ready data that could teach machines to perform tasks no one explicitly showed them.

    Yang and her colleagues also aim to make PhysicsGen even more useful for robots with diverse shapes and configurations in the future. To make that happen, they plan to leverage datasets with demonstrations of real robots, capturing how robotic joints move instead of human ones.

    The researchers also plan to incorporate reinforcement learning, where an AI system learns by trial and error, to make PhysicsGen expand its dataset beyond human-provided examples. They may augment their pipeline with advanced perception techniques to help a robot perceive and interpret their environment visually, allowing the machine to analyze and adapt to the complexities of the physical world.

    For now, PhysicsGen shows how AI can help us teach different robots to manipulate objects within the same category, particularly rigid ones. The pipeline may soon help robots find the best ways to handle soft items (like fruits) and deformable ones (like clay), but those interactions aren’t easy to simulate yet.

    Yang and Tedrake wrote the paper with two CSAIL colleagues: co-lead author and MIT PhD student Hyung Ju “Terry” Suh SM ’22 and MIT PhD student Bernhard Paus Græsdal. Robotics and AI Institute researchers Tong Zhao ’22, MEng ’23, Tarik Kelestemur, Jiuguang Wang, and Tao Pang PhD ’23 are also authors. Their work was supported by the Robotics and AI Institute and Amazon.

    The researchers recently presented their work at the Robotics: Science and Systems conference.

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  • Gold climbs over 1% on safe-haven bids as Trump imposes fresh tariffs – Reuters

    1. Gold climbs over 1% on safe-haven bids as Trump imposes fresh tariffs  Reuters
    2. Gold prices rise on Trump tariff threat; platinum, silver outperform  Investing.com
    3. Gold edges higher on softer dollar, trade war intensifies  Dunya News
    4. Gold price in Pakistan: Rates on July 11  FXStreet
    5. Gold News: Trump Tariffs Fuel Inflation Fears as Gold Price Awaits Fed Clarity  FXEmpire

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  • Dalpiciclib Plus Endocrine Therapy Prolonged Invasive Disease-Free Survival in HR+/HER2– Breast Cancer

    Dalpiciclib Plus Endocrine Therapy Prolonged Invasive Disease-Free Survival in HR+/HER2– Breast Cancer

    Dalpiciclib (SHR6390; Jiangsu Hengrui Medicine Co) in combination with endocrine therapy (ET) significantly improved progression-free survival (PFS) in first- and later-line settings for hormone receptor-positive (HR+)/HER2– advanced breast cancer. These data, from a first interim analysis of the phase 3 DAWNA-A trial (NCT03927456), were presented at the 2025 American Society of Clinical Oncology Annual Meeting in Chicago.1

    Breast cancer cells | Image Credit: © sknab – stock.adobe.com

    Dalpiciclib is an oral CDK4/6 inhibitor that targets overexpressed CDK4/6 proteins to interrupt cancer cell proliferation. It is approved in China by the National Medical Products Administration in combination with fulvestrant (Falsodex; AstraZeneca) for the treatment of relapsed/progressed HR+/HER2- advanced breast cancer. As of 2025, it’s not approved by the FDA.2,3

    DAWNA-A is a randomized, double-blind, phase 3 study evaluating dalpiciclib plus ET as adjuvant therapy in 5274 patients (ages 18 to 75) with stage 2 to 3 HR+/HER2– breast cancer and pathologically confirmed ipsilateral axillary lymph node involvement. They were randomized 1:1 to receive either daily dalpiciclib at a dosage of 125 mg (3 weeks on/1 week off for 2 years) plus ET (letrozole 2.5 mg; anastrozole 1 mg; tamoxifen 10 mg; toremifene 60 mg daily for 5 years; n = 2640) or placebo + ET (n = 2634). The trial’s primary end point was invasive disease-free survival (iDFS), with secondary end points including DFS, distant DFS (DDFS), overall survival (OS), and safety.4

    Pre- and perimenopausal patients received LHRH agonists, with use in perimenopausal patients determined at the investigator’s discretion. Stratification factors included menopausal status (pre/perimenopausal vs postmenopausal), clinical stage (2 vs 3), number of involved lymph nodes (<4 vs ≥4), and receipt of adjuvant chemotherapy (yes vs no).4

    At the median follow-up of 20.3 months, patients treated with dalpiciclib in combination with ET achieved superior iDFS compared with the placebo group (HR 0.56, 95% CI 0.43–0.71; 1-sided P < .0001), and these benefits were consistent across subgroups. Additionally, dalpiciclib plus ET was preferred over placebo plus ET by DFS and distant DFS.4

    “The phase III DAWNA-A met its primary end point at the first internal analysis, with significant iDFS benefits with dalpiciclib plus [ET] versus placebo plus [ET],” said Zhi-Ming Shao, PhD, Fudan University Shanghai Cancer Center, in their presentation.4

    The safety profile was favorable, with no deaths due to treatment-related adverse events (TRAEs). Treatment-related adverse events (TRAEs) occurred in 3.7% of patients in the dalpiciclib arm and 1.5% in the placebo arm, leading to treatment discontinuation in 2.1% and 0.8% of patients, respectively.4

    “Our data supports dalpiciclib plus [ET] as a neoadjuvant treatment option for [HR+/HER2–] early breast cancer, especially in Chinese populations,” concluded Shao.4

    REFERENCES
    1. A study of SHR6390 in combination with fulvestrant in patients with HR positive and HER2 negative advanced breast cancer. Updated June 3, 2021. Accessed July 11, 2025. https://clinicaltrials.gov/study/NCT03927456
    2. New CDK4/6 Inhibitor offers benefits for advanced-stage, hormone receptor-positive, HER2-negative breast cancer. Breastcancer.org. November 16, 2022. Accessed July 11, 2025. https://www.breastcancer.org/research-news/new-cdk46-inhibitor-offers-benefits-for-advanced-stage-hormone-receptor-positive-her2-negative-breast-cancer
    3. NMPA approves AiRuiKang® (dalpiciclib) in combination with fulvestrant for the treatment of relapsed/progressed HR+/HER2- advanced breast cancer. Hengrui. January 3, 2021. Accessed July 11, 2025. https://www.hengrui.com/en/media/detail-149.html
    4. Shao ZM, Hao J, Wang S, et al. Dalpiciclib (Dalp) plus endocrine therapy (ET) as adjuvant treatment for HR+/HER2– early breast cancer (BC): The randomized, phase 3, DAWNA-A trial. 2025 ASCO Annual Meeting. Chicago, IL. Abstract 515

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  • Trump's $100 million crypto mystery man – Reuters

    1. Trump’s $100 million crypto mystery man  Reuters
    2. Week 24: President Trump Notches Another Mysterious Benefactor  Revolving Door Project
    3. He Will Steal As Much As You Let Him  jacobsilverman.com
    4. Does Trump’s Biggest Crypto Backer Really Exist?  The Nation
    5. Mysterious UAE-Based Aqua 1 Invests $100 Million in Trump’s Crypto Business  AInvest

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  • Probe into deadly egg-related Salmonella outbreak ends after 134 cases – CIDRAP

    Probe into deadly egg-related Salmonella outbreak ends after 134 cases – CIDRAP

    1. Probe into deadly egg-related Salmonella outbreak ends after 134 cases  CIDRAP
    2. Salmonella report linked to eggs distributed in Wyoming  Oil City News
    3. FDA ends recall of salmonella-contaminated brown eggs  upi.com
    4. Map Shows Major US Egg Recall Sickness Spreading as Death Reported  Newsweek
    5. Salmonella outbreak traced to eggs declared over after more than 100 illnesses and 1 death reported  Food Safety News

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  • MP Materials Deal Marks a Significant Shift in US Rare Earths Policy – Columbia University

    1. MP Materials Deal Marks a Significant Shift in US Rare Earths Policy  Columbia University
    2. Pentagon to become largest shareholder in rare earth miner MP Materials; shares surge 50%  CNBC
    3. Critical Commodities: The Future Is Upon Us  Investing.com
    4. Shares of Rare Earth Firms Lynas, Iluka Soar After US Peer Enters Multibillion-Dollar Partnership With US Department of Defense  MarketScreener
    5. Pentagon digs deep to mine SPAC of last resort  Breakingviews

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  • TikTok must face trial on kids exploitation lawsuit

    TikTok must face trial on kids exploitation lawsuit

    The TikTok logo is seen in this illustration taken on Aug. 22, 2022.

    Dado Ruvic | Reuters

    A judge this week rejected TikTok’s attempt to dismiss a lawsuit by the state of New Hampshire accusing it of using manipulative design features aimed at children and teens.

    “The Court’s decision is an important step toward holding TikTok accountable for unlawful practices that put children at risk,” state Attorney General John Formella said in a statement Friday.

    In his ruling Tuesday, New Hampshire Superior Court Judge John Kissinger Jr. said the state’s allegations were valid and specific enough to proceed, writing the civil claims were “based on the App’s alleged defective and dangerous features” and not the content in the app.

    The state alleges that social media platform TikTok is intentionally designed to be addictive and aims to exploit its young user base.

    The suit accuses the platform of implementing “addictive design features” meant to keep children engaged longer, increasing their exposure to advertisements and prompting purchases through TikTok’s e-commerce platform TikTok Shop.

    TikTok declined to comment.

    The case is the latest example of attorneys general targeting design elements and safety policies from tech companies instead of the content on the platforms, which is created by other users.

    Meta was accused by several states of implementing addictive features across its family of apps that have detrimental effects on children’s mental health.

    New Mexico filed a lawsuit against Snapchat in September, alleging the app was creating an environment where “predators can easily target children through sextortion schemes.”

    In April, social-messaging platform Discord was sued by the New Jersey attorney general over misleading consumers about child safety features.

    Congress has attempted to take action on regulating social media platforms, but to no avail. The Kids Online Safety Act was reintroduced to Congress in May after stalling in 2024.

    The measure would require social media platforms to have a “duty of care” to prevent their products from harming children.

    TikTok’s latest legal hurdle comes as its future in the U.S. remains uncertain.

    In April 2024, former President Joe Biden signed a law requiring ByteDance to divest of TikTok or see the app banned in the U.S. The app was removed from Apple and Google app stores in January ahead of President Donald Trump’s inauguration.

    Since taking office, Trump has postponed enforcement of the ban and continued to push back deadlines.

    In June, Trump granted ByteDance more time to sell off its U.S. TikTok operations, marking his third extension. The updated deadline is now set for Sept. 17.

    Trump also said in June that a group of “very wealthy people” is ready to buy TikTok and told reporters that he would be having discussions with China about a potential deal.

    TikTok is now building a new version of its app for U.S. users, according to The Information. The stand-alone app is expected to operate on a separate algorithm and data system, Reuters said.

    TikTok refuted the Reuters report, calling it “factually inaccurate.”

    Don’t miss these insights from CNBC PRO


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  • Saudi-GCC Non-oil Trade Surplus Achieves 203% Annual Growth: GASTAT

    Saudi-GCC Non-oil Trade Surplus Achieves 203% Annual Growth: GASTAT

    RIYADH, (UrduPoint / Pakistan Point News / WAM – 11th Jul, 2025) The non-oil trade surplus of Saudi Arabia with the Gulf Cooperation Council (GCC) countries recorded an annual growth rate of 203.2% to more than SAR2 billion in April. It soared to around SAR3,511 million from SAR1,158 million in the same month last year.

    According to preliminary data from the International Trade Bulletin for April, published by the General Authority for Statistics (GASTAT), the total volume of non-oil trade, including re-exports, between Saudi Arabia and GCC countries amounted to around SAR18,028 million. This reflects a year-on-year growth of 41.3%, with an increase of SAR5,271 million from SAR12,757 million in April 2024.

    Non-oil commodity exports, including re-exports, rose by 55%, totaling SAR10,770 million, up from SAR6,958 million in April of the previous year, an increase of over SAR3,812 million, Saudi Press Agency (SPA) reported citing the GASTAT figures.

    Meanwhile, the value of national non-oil commodity exports reached around SAR3,031 million, compared to SAR2,675 million in April 2024, achieving a year-on-year growth rate of 13.

    3%, with an increase estimated at SAR356 million.

    Additionally, the value of re-exports surged by 81%, reaching SAR7,738 million compared to SAR4,282 million, an increase of SAR3,456 million.

    Saudi Arabia’s imports from GCC countries stood at SAR7,258 million in April 2025, compared to SAR5,799 million last year, achieving a year-on-year growth of 25.2%, with an increase of SAR1,459 million.

    The data indicated that the United Arab Emirates ranked first in terms of non-oil trade volume with Saudi Arabia, amounting to SAR13,533 million, representing about 75.1% of the total.

    Bahrain followed in second place with a trade value of SAR1,798 million (10%), while Oman ranked third with SAR1,454 million (8.1%). Kuwait was fourth with SAR819.9 million (4.5%), and Qatar came next with a value of SAR422.1 million (2.3%).


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  • Levi Strauss limits selection for holiday shopping season due to tariffs – Reuters

    1. Levi Strauss limits selection for holiday shopping season due to tariffs  Reuters
    2. Levi’s Rides ‘Made in USA’ Wave: Posts 5% Growth and Profit Increase in H1  Modaes
    3. Levi Strauss stock price target raised to $22 from $17 at TD Cowen  Investing.com
    4. Levi’s surges as the jean maker shrugs off tariffs with strong earnings and boosted guidance  Sherwood News
    5. Levi’s ups guidance despite tariff impact  Retail Dive

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  • Kraft Heinz Stock Rises After Report of a Possible Break-Up

    Kraft Heinz Stock Rises After Report of a Possible Break-Up

    Joe Raedle / Getty Images

    Jell-O is among Kraft Heinz’s brands.

    Kraft Heinz is planning a break-up, according to a report, a move that could undo a massive merger just a decade old.

    The company is one of the world’s leading food makers, known for brands like Philadelphia cream cheese, Cool Whip, Maxwell House coffee and Stove Top stuffing. It could spin off part of its grocery business, The Wall Street Journal wrote Friday, citing people familiar with the matter, with a move possible within weeks.

    Shares of Kraft Heinz (KHC), which were down more than 11% this year through Thursday’s close above $26, were recently up nearly 2%. The company’s market value is above $31 billion, according to Visible Alpha data.

    The company said in May that deals were on the table.

    Wall Street analysts have an average price target of near $28 on Kraft Heinz stock, according to Visible Alpha.

    Today’s news follows another big food deal from earlier in the week. WK Kellogg (KLG) on Thursday said it agreed to be acquired by Italian sweets company The Ferrero Group,.

    Read the original article on Investopedia

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