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Trump says Microsoft will pay more for its datacenters' electricity

The Guardian

A Microsoft data center in Aldie, Virginia, on 28 October 2025. A Microsoft data center in Aldie, Virginia, on 28 October 2025. Trump says Microsoft will pay more for its datacenters' electricity Microsoft's president said firm won't accept tax breaks in towns for its datacenters as backlash against facilities grow Tue 13 Jan 2026 17.09 ESTLast modified on Tue 13 Jan 2026 17.16 EST Donald Trump said he is partnering with tech companies to ensure the large energy-hungry datacenters vital for AI do not drive up electricity bills in the US. On Tuesday, the US president announced that Microsoft was "first up". "We are the'HOTTEST' Country in the World, and Number One in AI. Data Centers are key to that boom, and keeping Americans FREE and SECURE but, the big Technology Companies who build them must'pay their own way.'"


Machu Picchu hit by a row over tourist buses

BBC News

Machu Picchu, the remains of a 15th Century Inca city, is Peru's most popular tourist destination, and a Unesco world heritage site. Yet a continuing dispute over the buses that take visitors up to the mountain-top site recently saw some 1,400 stranded tourists needing to be evacuated. Cristian Alberto Caballero Chacón is head of operations for bus company Consettur, which for the past 30 years has transported some 4,500 people every day to Machu Picchu from the local town of Aguas Calientes. It is a 20-minute journey, and the only alternative is an arduous, steep, two-hour walk. He admits that in the past few months there have been some conflicts between people from different communities here.


Q&A: How anacondas, chickens, and locals may be able to coexist in the Amazon

Popular Science

Breakthroughs, discoveries, and DIY tips sent every weekday. South America's lush Amazon region is a biodiversity hotspot, which means that every living thing must find a way to co-exist. Even some of the most feared snakes on the planet–anacondas. In a paper published June 16 in the journal Frontiers in Amphibian and Reptile Science, conservation biologists Beatriz Cosendey and Juarez Carlos Brito Pezzuti from the Federal University of Pará's Center for Amazonian Studies in Brazil, analyze the key points behind the interactions between humans and the local anaconda populations. Ahead of the paper's publication, the team at Frontiers conducted this wide-ranging Q&A with Conesday.


An Investigation into the Causal Mechanism of Political Opinion Dynamics: A Model of Hierarchical Coarse-Graining with Community-Bounded Social Influence

Widler, Valeria, Kaminska, Barbara, Martins, Andre C. R., Puga-Gonzalez, Ivan

arXiv.org Artificial Intelligence

The increasing polarization in democratic societies is an emergent outcome of political opinion dynamics. Yet, the fundamental mechanisms behind the formation of political opinions, from individual beliefs to collective consensus, remain unknown. Understanding that a causal mechanism must account for both bottom-up and top-down influences, we conceptualize political opinion dynamics as hierarchical coarse-graining, where microscale opinions integrate into a macro-scale state variable. Using the CODA (Continuous Opinions Discrete Actions) model, we simulate Bayesian opinion updating, social identity-based information integration, and migration between social identity groups to represent higher-level connectivity. This results in coarse-graining across micro, meso, and macro levels. Our findings show that higher-level connectivity shapes information integration, yielding three regimes: independent (disconnected, local convergence), parallel (fast, global convergence), and iterative (slow, stepwise convergence). In the iterative regime, low connectivity fosters transient diversity, indicating an informed consensus. In all regimes, time-scale separation leads to downward causation, where agents converge on the aggregate majority choice, driving consensus. Critically, any degree of coherent higher-level information integration can overcome misalignment via global downward causation. The results highlight how emergent properties of the causal mechanism, such as downward causation, are essential for consensus and may inform more precise investigations into polarized political discourse.


Evaluating Large Language Model Biases in Persona-Steered Generation

Liu, Andy, Diab, Mona, Fried, Daniel

arXiv.org Artificial Intelligence

The task of persona-steered text generation requires large language models (LLMs) to generate text that reflects the distribution of views that an individual fitting a persona could have. People have multifaceted personas, but prior work on bias in LLM-generated opinions has only explored multiple-choice settings or one-dimensional personas. We define an incongruous persona as a persona with multiple traits where one trait makes its other traits less likely in human survey data, e.g. political liberals who support increased military spending. We find that LLMs are 9.7% less steerable towards incongruous personas than congruous ones, sometimes generating the stereotypical stance associated with its demographic rather than the target stance. Models that we evaluate that are fine-tuned with Reinforcement Learning from Human Feedback (RLHF) are more steerable, especially towards stances associated with political liberals and women, but present significantly less diverse views of personas. We also find variance in LLM steerability that cannot be predicted from multiple-choice opinion evaluation. Our results show the importance of evaluating models in open-ended text generation, as it can surface new LLM opinion biases. Moreover, such a setup can shed light on our ability to steer models toward a richer and more diverse range of viewpoints.


De facto ban lifted on building onshore windfarms in England

The Guardian > Energy

Michael Gove has loosened restrictions on building onshore windfarms in England, meaning developments will no longer be quashed by one objection, but campaigners have said such schemes are still at a disadvantage. The communities secretary announced on Tuesday that the government would make a series of changes to the planning system in order to lift a de facto ban on the structures that has been in place since 2015. The move comes after a long campaign by Conservative MPs to overturn the 2015 rules, which have allowed local authorities to block new turbines based on just one complaint. Those rules have led to just 20 new onshore turbines being given planning permission in the last nine years. Gove said: "To increase our energy security and develop a cleaner, greener economy, we are introducing new measures to allow local communities to back onshore wind power projects. This will only apply in areas where developments have community support, but these changes will help build on Britain's enormous success as a global leader in offshore wind, helping us on our journey to net zero."


Towards Bridging the Digital Language Divide

Bella, Gábor, Helm, Paula, Koch, Gertraud, Giunchiglia, Fausto

arXiv.org Artificial Intelligence

It is a well-known fact that current AI-based language technology -- language models, machine translation systems, multilingual dictionaries and corpora -- focuses on the world's 2-3% most widely spoken languages. Recent research efforts have attempted to expand the coverage of AI technology to `under-resourced languages.' The goal of our paper is to bring attention to a phenomenon that we call linguistic bias: multilingual language processing systems often exhibit a hardwired, yet usually involuntary and hidden representational preference towards certain languages. Linguistic bias is manifested in uneven per-language performance even in the case of similar test conditions. We show that biased technology is often the result of research and development methodologies that do not do justice to the complexity of the languages being represented, and that can even become ethically problematic as they disregard valuable aspects of diversity as well as the needs of the language communities themselves. As our attempt at building diversity-aware language resources, we present a new initiative that aims at reducing linguistic bias through both technological design and methodology, based on an eye-level collaboration with local communities.


Random Walk on Multiple Networks

Luo, Dongsheng, Bian, Yuchen, Yan, Yaowei, Yu, Xiong, Huan, Jun, Liu, Xiao, Zhang, Xiang

arXiv.org Artificial Intelligence

Random Walk is a basic algorithm to explore the structure of networks, which can be used in many tasks, such as local community detection and network embedding. Existing random walk methods are based on single networks that contain limited information. In contrast, real data often contain entities with different types or/and from different sources, which are comprehensive and can be better modeled by multiple networks. To take advantage of rich information in multiple networks and make better inferences on entities, in this study, we propose random walk on multiple networks, RWM. RWM is flexible and supports both multiplex networks and general multiple networks, which may form many-to-many node mappings between networks. RWM sends a random walker on each network to obtain the local proximity (i.e., node visiting probabilities) w.r.t. the starting nodes. Walkers with similar visiting probabilities reinforce each other. We theoretically analyze the convergence properties of RWM. Two approximation methods with theoretical performance guarantees are proposed for efficient computation. We apply RWM in link prediction, network embedding, and local community detection. Comprehensive experiments conducted on both synthetic and real-world datasets demonstrate the effectiveness and efficiency of RWM.


Machine Learning Engineer - Ads at Nextdoor - San Francisco, CA

#artificialintelligence

Nextdoor is where you connect to the neighborhoods that matter to you so you can belong. Our purpose is to cultivate a kinder world where everyone has a neighborhood they can rely on. Neighbors around the world turn to Nextdoor daily to receive trusted information, give and get help, get things done, and build real-world connections with those nearby -- neighbors, businesses, and public services. Today, neighbors rely on Nextdoor in more than 305,000 neighborhoods across 11 countries. At Nextdoor, machine learning is one of the most important teams we are growing.


Machine Learning Engineer Intern - Summer 2023

#artificialintelligence

Nextdoor is where you connect to the neighborhoods that matter to you so you can belong. Our purpose is to cultivate a kinder world where everyone has a neighborhood they can rely on. Neighbors around the world turn to Nextdoor daily to receive trusted information, give and get help, get things done, and build real-world connections with those nearby -- neighbors, businesses, and public services. Today, neighbors rely on Nextdoor in more than 295,000 neighborhoods across 11 countries. At Nextdoor, Machine Learning is one of the most important teams we are growing.