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Meta and Spotify blast EU decisions on AI

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Meta and Spotify blast EU decisions on AI


Meta, which owns Facebook, WhatsApp and Instagram, recently halted plans to harvest data from European users to train its AI models after pressure from privacy regulators
Meta, which owns Facebook, WhatsApp and Instagram, recently halted plans to harvest data from European users to train its AI models after pressure from privacy regulators.

A group of companies including Meta and Spotify blasted the European Union Thursday for its “fragmented and inconsistent” decision-making on data privacy and artificial intelligence (AI).

The firms along with several researchers and industry bodies signed an open letter claiming that Europe was already becoming less competitive and risked falling further behind in the age of AI.

The signatories called for “harmonized, consistent, quick and clear decisions” from data privacy regulators to “enable European data to be used in AI training for the benefit of Europeans”.

The letter takes issue with recent decisions under the 2018 general data protection regulation (GDPR).

Meta, which owns Facebook, WhatsApp and Instagram, recently halted plans to harvest data from European users to train its AI models after pressure from privacy regulators.

“In recent times, regulatory decision making has become fragmented and unpredictable, while interventions by the European Data Protection Authorities have created huge uncertainty about what kinds of data can be used to train AI models,” said the letter.

A European Commission spokesperson said at the time that all companies in the EU were expected to abide by data privacy rules.

Meta has faced record fines for breaching the privacy of users, including a single penalty of more than one billion euros under GDPR.

As well as data privacy rules, Europe became the first regional bloc to frame major legislation aiming to stop abuses of the technology—its AI Act coming into force earlier this year.

Meta and other tech giants have increasingly delayed products for the European market, claiming they were seeking legal clarity.

Meta delayed the EU-wide release of its Twitter alternative Threads by several months last year.

Google has similarly held back the release of AI tools in the EU.

© 2024 AFP

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Meta and Spotify blast EU decisions on AI (2024, September 19)
retrieved 19 September 2024
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Tropical cyclone intensity exacerbated by increasing depth of ocean mixed layer, finds study

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Tropical cyclone intensity exacerbated by increasing depth of ocean mixed layer, finds study


Tropical cyclone intensity exacerbated by increasing depth of ocean mixed layer
Simulated sea surface temperature changes and upper ocean currents after 72 hours since tropical cyclone initiation according to ocean mixed layer depth: 2 m (a), 5 m (b), 10 m (c), 15 m (d), 20 m (e), 50 m (f) and 100 m (g). Credit: Zhang et al. 2024.

Tropical cyclones can have severe consequences for both the marine and terrestrial environments, as well as the organisms and communities who inhabit them. In the oceans, there can be alterations in sea surface temperature that disrupt biological processes and hospitable conditions for life, the devastation of surface algae and other primary producers, which impacts complex marine food chains, as well as damaging coral reefs. Meanwhile, on land, the heavy rainfall, strong winds and storm surges can lead to significant damage to property and infrastructure, as well as loss of lives.

These natural phenomena are powered by warm surface waters, as the rising water vapor causes condensation of water droplets, and thus cloud formation and rain. This releases heat, warming the atmosphere further and causing the air to continue to rise, bringing in cooler air towards the base, which we experience as strong winds. Consequently, as tropical cyclones move over land they lose this initial energy source and eventually dissipate.

Therefore, the surface layer of the ocean is particularly important. Recent research published in Frontiers in Marine Science has investigated how the depth of the mixed layer (the deepest layer affected by surface turbulence and separating cooler ocean depths from atmospheric interactions) impacts ocean temperatures, and subsequently tropical cyclone formation.

To do so, Yalan Zhang, of China’s National University of Defense Technology, and colleagues used models to simulate different ocean mixed layer depth (2 m, 5 m, 10 m, 15 m, 20 m, 50 m and 100 m) influences on tropical cyclones in the western North Pacific over four days, in both one and three dimensions. The former model type focuses mostly on the influence of depth, while the latter incorporates heat, salinity and water mass movement (for example, upwelling).

Tropical cyclone intensity exacerbated by increasing depth of ocean mixed layer
Tropical cyclone destructive potential (PDS) increase according to seven experimental ocean mixed layer depths. Credit: Zhang et al. 2024.

The researchers found that ocean mixed layer depth only has a small influence on the track the tropical cyclone takes, with slower translation speeds resulting from shallower ocean mixed layer depth moving the center of the tropical storm. However, they discovered a greater impact on the size and intensity of the event, reaching its peak 72 to 84 hours after initiation.

Importantly, this is only the case up to 15 m water depth, after which the ocean mixed layer depth prior to the tropical cyclone has marginal influence on the destructiveness of the event. The destructive potential increased 325.2% when the ocean mixed layer depth reached 5 m, reducing to 50% at 15 m and below 15% at depths thereafter.

This is because surface winds bring cold water from below the ocean mixed layer depth when it is shallower than 15 m, which decreases the temperature of the upper ocean. In fact, the scientists suggest 75% to 90% of sea surface cooling can be attributed to turbulence from wind-induced vertical shear (the change in wind speed and direction with altitude).

However, as the ocean mixed layer depth increases beyond this threshold point of 15 m, the effect of surface winds on sea surface temperature cooling is reduced, leading to increasing surface temperatures below the tropical cyclones, therefore fueling their development.

Furthermore, the passage of multiple tropical cyclones through the same area can cause the ocean mixed layer depth to deepen, which may reduce their future activity in that region, though the timescales between events to allow this are still being studied.

This research is significant, as global warming is likely to exacerbate tropical cyclone occurrences due to rising sea surface temperatures, so the role of ocean mixed layer depth in modulating these is paramount to understanding these phenomena of the marine realm and allowing populations to mitigate against their devastation in vulnerable regions.

More information:
Yalan Zhang et al, Impact of ocean mixed layer depth on tropical cyclone characteristics: a numerical investigation, Frontiers in Marine Science (2024). DOI: 10.3389/fmars.2024.1395492

© 2024 Science X Network

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Tropical cyclone intensity exacerbated by increasing depth of ocean mixed layer, finds study (2024, September 19)
retrieved 19 September 2024
from https://phys.org/news/2024-09-tropical-cyclone-intensity-exacerbated-depth.html

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‘Hunger Games’ studio Lionsgate to partner with AI company

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‘Hunger Games’ studio Lionsgate to partner with AI company


youtube
Credit: Pixabay/CC0 Public Domain

Lionsgate will work with artificial intelligence research company Runway to create and train a new artificial intelligence model customized to the “Hunger Games” and “John Wick” studio’s film and TV content, marking the AI company’s first collaboration with a Hollywood studio.

The model will generate cinematic video that can then be edited with Runway’s suite of tools, the Santa Monica-based studio said Wednesday.

Lionsgate Vice Chair Michael Burns said in a statement that several of the studio’s filmmakers were “already excited” about the potential applications for AI in pre- and postproduction processes.

“We view AI as a great tool for augmenting, enhancing and supplementing our current operations,” he said.

AI has emerged as a thorny issue in Hollywood, as entertainment companies want to harness such powerful tools to reduce costs and streamline their operations, but also don’t want to offend actors, writers and behind-the-scenes workers who fear that the technology will replace them.

Runway is far from the first AI company making inroads into the entertainment business. Already, ChatGPT maker OpenAI has started to meet with entertainment industry players to demonstrate its latest technology.

Also on Wednesday, YouTube said it would make an AI-powered text-to-video tool, Veo, available for creators later this year on YouTube Shorts. Through Veo, creators can type descriptions like “dreamlike secret garden, vivid colors, visible brushstrokes,” and a six-second clip will be created with AI depicting that image. Videos generated with AI will be labeled as such, YouTube said.

YouTube also announced it will add a “brainstorming buddy powered by AI” in its YouTube Studio that will suggest video ideas to creators that could help their projects.

“When we show this to creators, the thing they love most is how it unlocks elements of an idea they hadn’t even thought of yet,” said Sarah Ali, senior director of product, leading YouTube’s creation experiences and YouTube Shorts during a presentation in New York.

“This is not about replacing your ideas. It is about providing you with the tools to help you get there faster, or to uncover new areas you just hadn’t considered before.”

2024 Los Angeles Times. Distributed by Tribune Content Agency, LLC.

Citation:
‘Hunger Games’ studio Lionsgate to partner with AI company (2024, September 19)
retrieved 19 September 2024
from https://techxplore.com/news/2024-09-hunger-games-studio-lionsgate-partner.html

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What to do and how to stay safe

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What to do and how to stay safe


rattlesnake
Credit: Unsplash/CC0 Public Domain

California is home to eight species of rattlesnakes. The reptiles can be seen on hiking trails, rural roads and even in your backyard, according to the Los Angeles County Department of Public Health.

The California Poison Control System said it receives hundreds of reports of rattlesnake bites every year, especially during peak rattlesnake season.

The venomous creatures tend to mate in the early summer. With young rattlers set to make their debut, you’re sure to see more of the scaly reptiles, experts say.

Here’s what to know and how to stay safe in California this rattlesnake season:

When are baby rattlesnakes born?

Rattlesnakes are most active outdoors from April through October, typically mating in the warmer months before giving birth in the fall, according to the California Department of Fish and Wildlife.

Female rattlesnakes will seek out old rodent burrows and tight crevices for nesting, and can give birth to as many as 25 babies in a litter, experts say.

The newborns will spend one or two weeks with mom before leaving the nest.

What do baby rattlers look like?

Young rattlesnakes look much like their adult counterparts—just smaller, according to Sciencing.com

Distinguishable features include a “large, triangular head that tapers quickly” and “thick bodies that taper at both ends.”

Baby rattlesnakes are usually between 6 and 12 inches long, the website said.

In comparison, adults can grow up to 8 feet long.

The vipers typically have diamond-shaped patterns on their backs, although the colors vary depending on their environment, experts say.

“Baby snakes have the same markings as adults, and the patterns may be even brighter and more noticeable,” Sciencing.com reported.

Do baby rattlesnakes have rattles?

Baby rattlesnakes are born “with a small rattle or button” on their tails, though they may be unable to make that tell-tale buzz until new segments of their rattle develop, according to the California Fish and Wildlife Department.

Made from keratin, the rattles grow a new “segment” each time a rattlesnake sheds its skin or molts, which can happen multiple times a year.

The vipers, regardless of age, don’t always rattle before they strike, however.

“In reality, most rattlesnakes don’t rattle unless they’re very stressed out,” said Emily Taylor, a biological sciences professor at Cal Poly in San Luis Obispo.

“You’ll walk by them and they’re curled up like forbidden cinnamon rolls,” said Taylor, who oversees the university’s Physiological Ecology of Reptiles Lab. “Camouflage is their first line of defense.”

Where are snakes and their young usually found?

Rattlesnakes and their young can be found in every corner of California and thrive in various habitats, according to the state’s Department of Fish and Wildlife.

“Rattlesnakes can live in rural and urban areas, on riverbanks, in parks and at golf courses,” the department’s website says. “They may also turn up around homes and yards in brushy areas and under wood piles.”

The scaly creatures require rocky, open areas to bask, experts say. Habitats with places to hide and a nearby water source are also a must.

Should you come across one in the wild—or steps from your front porch—experts say it’s best to keep your distance.

What should I do if I’m bitten by a rattlesnake?

While they’re smaller in size, a bite from a baby rattlesnake can be just as dangerous if treatment isn’t swift.

Youngsters release less venom but their poison can be more potent, according to Taylor.

There’s also what’s known as a “dry bite” when no venom is released “because venom creation and use can be energetically expensive,” the state Department of Fish and Wildlife said.

Either way, experts say rattlesnake bites require immediate attention.

“Severe or even life-threatening symptoms may occur within minutes or couple of hours after a rattlesnake bite,” according to the California Poison Control System. “As rattlesnake bites can be deadly, your best bet is to call 911 and get to a hospital as soon as you can.”

Bites are rare, however, and typically occur when a rattlesnake feels threatened, experts say.

Otherwise, the snakes try their best to avoid human contact.

How do I stay safe?

Prevention is key when it comes to avoiding a rattlesnake bite, experts say.

The California Department of Fish and Wildlife offers several tips to avoid run-ins with the venomous vipers:

  • Stay alert when you’re outdoors.
  • Wear sturdy boots and loose-fitting long pants.
  • Stay on well-used trails, avoiding tall grass, weeds, and heavy underbrush.
  • Check rocks, stumps or logs before sitting down.
  • Shake out your sleeping bag and tent before use.
  • Let others know where you’re going, when you plan to return, and carry a cellphone.
  • Use the buddy system.

2024 The Sacramento Bee. Distributed by Tribune Content Agency, LLC.

Citation:
It’s baby rattlesnake season in California: What to do and how to stay safe (2024, September 19)
retrieved 19 September 2024
from https://phys.org/news/2024-09-baby-rattlesnake-season-california-stay.html

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Computational approach could continually teach robots new skills via dialogue

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Computational approach could continually teach robots new skills via dialogue


An approach to continually teach robots new skills via dialogues
An example run of our framework in the user study where a user asks a robot to make sandwich, but the robot does not know how to cut cheese so it asks for the users help with language and after the user teaches this skill the robot stores this skill and can use it forever to make a similar sandwich on its own. This work is a path toward a robot that can continue to learn with human feedback on real-world chores. Credit: arXiv (2024). DOI: 10.48550/arxiv.2409.03166

While roboticists have introduced increasingly sophisticated robotic systems over the past decades, most of the solutions introduced so far are pre-programmed and trained to tackle specific tasks. The ability to continuously teach robots new skills while interacting with them could be highly beneficial and could facilitate their widespread use.

Researchers at Arizona State University (ASU) recently developed a new computational approach that could allow users to continually train robots on new tasks via dialogue-based interactions. This approach, introduced in a paper posted to the arXiv preprint server, was initially used to teach a robotic manipulator how to successfully prepare a cold sandwich.

“Our goal is to contribute to the deployment of robots in people’s homes that can learn to cook cold meals,” Nakul Gopalan, supervising author for the paper, told Tech Xplore. “We want this from a user perspective where we understand what behaviors people need from a household robot.

“This user perspective has led us to using language and dialogue when communicating with robots. Unfortunately, these robots might not come knowing everything, like how to cook pasta for you.”

The key objective of the recent work by Gopalan and his colleagues was to devise a method that would allow robots to rapidly acquire previously unknown skills or behaviors from human agents.

In a previous paper, presented at the AAAI Conference on Artificial Intelligence, the team focused on teaching robots to complete visual tasks via dialogue-based interactions. Their new study builds on this previous effort, introducing a more comprehensive method for dialogue-based robot training.

“Our scope of this work is to improve the applicability of robots by allowing users to personalize their robots,” Weiwei Gu, co-author of the paper, told Tech Xplore. “As robots need to complete different tasks for different users, and completing these tasks requires different skills, it is impossible for the manufacturers to pre-train robots with all the skills that they need for all these scenarios. Therefore, robots need to obtain these skills and task relevant knowledge from the users.”

To ensure that a robot can effectively acquire new skills from users, the team had to overcome various challenges. First, they had to ensure that human users were engaged while teaching a robot and that the robot communicated any doubts or requested additional information in ways that non-expert users could understand.

“Second, the robot needs to capture the knowledge from only a few interactions with the users, as the users can’t be stuck with the robot for an infinite amount of time,” said Gu. “Last, the robot should not forget any pre-existing knowledge despite obtaining new knowledge.”

Gopalan, Gu and their colleagues Suresh Kondepudi and Lixiao Huang set out to collectively address all these requirements of continual learning. Their proposed interactive continual learning system tackles these three sub-tasks via three distinct components.

An approach to continually teach robots new skills via dialogues
A user teaching the robot a skill by holding the arm. Credit: Gu et al.

“First, a large language model (LLM)- based dialog system asks questions to users to acquire any knowledge it might not have or continue interacting with people,” explained Gopalan. “However, how does the robot know that it does not know something?

“To address this problem, we trained a second component on a library of robot skills and learned their mappings to language commands. If a skill requested is not close to language the robot already knows, it asks for a demonstration.”

The team’s newly developed system also includes a mechanism that allows robots to understand when humans are demonstrating how to complete a task. If the demonstrations provided were insufficient and they did not reliably acquire a skill yet, the module allows robots to ask for additional ones.

“We jointly used skill representations and language representations to model the robots’ knowledge of a skill,” said Gu. “When the robot needs to perform a skill, it first estimates whether it possesses the capability to directly perform the skill by comparing the language representations of the skill and that of all the skills the robot possesses.

“The robot directly performs the skill if it is confident that it can do so. Otherwise, it asks the user to demonstrate the skill by performing the skill themselves in front of the robots.”

Essentially, after a robot observes a user completing a specific task, the team’s system determines it already possesses the skills necessary to complete it, based on the visual information gathered.

If the system predicts that the robot has not yet acquired the new skill, the robot will ask the user to delineate the associated robot trajectories using a remote control, so that it can add these to its skill library and complete the same task independently in the future.

“We connect these representations of skills with an LLM to allow the robot to express its doubts, so that even non-expert users can understand the requirements of the robot and help accordingly,” said Gu.

The system’s second module is based on pre-trained and fine-tuned action chunking transformers (ACT) with low-rank adaptation (LoRA). Finally, the team developed a continual learning module that allows a robot to continuously add new skills to its skill library.

“After the robot is pre-trained with certain pre-selected skills, the majority weights of the neural-network are fixed, and only a small portion of the weights introduced by the Low-Rank Adaptation is used to learn novel skills for the robots,” said Gu. “We found that our algorithm was able to learn novel skills efficiently without catastrophically forgetting any pre-existing skill.”

The researchers evaluated their proposed closed loop skill learning system in a series of real-world tests, applying it to a Franka FR3 robotic manipulator. This robot interacted with eight human users and gradually learned to tackle a simple everyday task, namely making a sandwich.

An approach to continually teach robots new skills via dialogues
The robot after it completed the entire sequence of tasks and made a sandwich. Credit: Gu et al.

“The fact that we can demonstrate a closed loop skill training approach with dialog with real users is impressive on its own,” said Gopalan. “We show that the robot can make sandwiches taught by users that came to our lab.”

The initial results gathered by the researchers were highly promising, as the ACT-LORA component was found to acquire new fine-tuned skills with 100% accuracy after only five human demonstrations. In addition, the model retained an accuracy of 74.75% on pre-trained skills, outperforming other similar models.

“We are very excited that the robot system we designed was able to function with real users as it shows a promising future for real robot applications for this work,” said Gu. “However, we do find room to improve the effectiveness of the communication of such a system.”

Although the newly developed learning system yielded good results in the team’s experiments, it also has some limitations. For instance, the team found that it could not support turn-taking between robots and human users, thus it relied on the researchers to elucidate whose turn it was to tackle the task at hand.

“While our findings were exciting for us, we also observed that the robot takes time to learn and this can be irritating to users,” said Gopalan. “We still have to find mechanisms to make this process faster, which is a core machine learning problem that we intend to solve next.

“We want this work to get in people’s homes for real experiments, so we know where the challenges in using robots in a home care situation exist.”

The system developed by Gu, Gopalan and his colleagues could soon be improved further and tested on a wider range of cooking tasks. The researchers are now working on solving the turn-taking issues they observed and extending the set of meals that users can teach robots to cook. They also plan to conduct further experiments involving a larger group of human participants.

“The turn-taking problem is an interesting problem in natural interactions,” added Gu. “This research problem also has strong application implications on interactive household robots.

“In addition to addressing this problem, we are interested in scaling up the size of this work by introducing more different tasks and experimenting with our system with users from real-world demographics.”

More information:
Weiwei Gu et al, Continual Skill and Task Learning via Dialogue, arXiv (2024). DOI: 10.48550/arxiv.2409.03166

Journal information:
arXiv


© 2024 Science X Network

Citation:
Computational approach could continually teach robots new skills via dialogue (2024, September 19)
retrieved 19 September 2024
from https://techxplore.com/news/2024-09-approach-robots-skills-dialogue.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.





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