ByteDance Reportedly Delays Global Launch of Seedance 2.0 AI Video Generator

ByteDance has reportedly paused the global rollout of its Seedance 2.0 AI video generator after viral clips sparked backlash from Hollywood studios over intellectual property concerns.

By Samantha Reed Edited by Maria Konash Published:
ByteDance Reportedly Delays Global Launch of Seedance 2.0 AI Video Generator
ByteDance delays the global launch of Seedance 2.0 after viral clips and Hollywood legal threats over IP concerns. Image: Claudio Schwarz / Unsplash

ByteDance has reportedly paused plans to release its Seedance 2.0 AI video generator globally, following legal concerns raised by Hollywood studios, according to a report from The Information.

The model debuted in China in February, where short clips generated by the system quickly spread across social media. One widely shared video depicted Tom Cruise fighting Brad Pitt, drawing attention for its realism but also triggering criticism from the film industry.

Some screenwriters and filmmakers warned that tools like Seedance could threaten creative professions, while major studios moved quickly to challenge the technology’s potential use of copyrighted characters and likenesses.

Hollywood Pushback Over Intellectual Property

According to the report, several studios sent cease-and-desist letters to ByteDance after the viral clips appeared online. Lawyers representing Disney reportedly accused the company of carrying out a “virtual smash-and-grab” of the studio’s intellectual property.

In response to the criticism, ByteDance said it would implement stronger safeguards to protect intellectual property within the system.

The company had originally planned to launch Seedance 2.0 internationally in mid-March, but the rollout has now been delayed while engineers and legal teams work to address potential compliance and copyright issues.

ByteDance has not publicly confirmed the delay and did not immediately respond to requests for comment.

The situation highlights the growing tension between generative AI companies and the entertainment industry, as tools capable of producing realistic video content raise new questions about copyright, likeness rights, and creative ownership.

OpenAI in Talks With Private Equity Firms to Launch $10B Enterprise AI Venture

OpenAI is reportedly negotiating with TPG, Advent, Bain, and Brookfield to create a $10 billion joint venture aimed at deploying its enterprise AI tools across private equity portfolio companies.

By Maria Konash Published:
OpenAI in Talks With Private Equity Firms to Launch $10B Enterprise AI Venture
OpenAI is in talks with private equity firms to launch a $10B joint venture. Image: ilgmyzin / Unsplash

OpenAI is in advanced discussions with several major private equity firms to establish a joint venture designed to accelerate enterprise adoption of its artificial intelligence tools, according to reports from Reuters.

According to people familiar with the negotiations, the proposed venture would involve firms including TPG, Advent International, Bain Capital, and Brookfield Asset Management. The initiative could carry a pre-money valuation of about $10 billion.

Under the proposed structure, the participating private equity firms would collectively commit roughly $4 billion in capital in exchange for equity stakes and board representation in the venture. TPG is expected to act as the anchor investor, contributing the largest share of capital, while the other firms would participate as co-founding partners.

The venture would distribute OpenAI’s enterprise products across companies owned by the private equity firms and potentially beyond their existing portfolios. The arrangement would also give the investors early access to OpenAI’s technology as they seek to prepare their portfolio companies for increasing AI disruption.

Competition With Anthropic for Enterprise Influence

OpenAI and its rival Anthropic are both actively pursuing relationships with private equity groups, which control large networks of companies and influence corporate technology spending.

Anthropic is reportedly exploring a similar joint venture structure with firms including Blackstone, Permira, and Hellman & Friedman to deploy its Claude AI platform across portfolio companies. That proposed partnership could involve approximately $1 billion in equity investment.

The structure of the deals differs, however. OpenAI is reportedly offering preferred equity, which gives investors priority returns and downside protection, while Anthropic is offering common equity.

Driving Enterprise AI Adoption

The potential joint venture could also support the rollout of OpenAI’s enterprise platform Frontier, which anchors the company’s broader Frontier Alliances program. Through this initiative, OpenAI pairs engineers with consulting firms such as BCG, McKinsey, Accenture, and Capgemini to help organizations integrate AI agents into core operations.

“As demand for AI continues to skyrocket, we want to help our customers deploy these technologies in all the ways that help them create impact,” said Fidji Simo, CEO of Applications at OpenAI.

OpenAI’s enterprise business has grown rapidly. Sources say it generated approximately $10 billion of the company’s $25 billion in annualized revenue as of last month.

The talks remain ongoing, and no final agreement has been reached. If completed, the partnership could create one of the largest AI-focused distribution networks for enterprise software through the private equity ecosystem.

Encyclopedia Britannica and Merriam-Webster Sue OpenAI Over AI Training Data

Encyclopaedia Britannica and Merriam-Webster have sued OpenAI, alleging the company copied nearly 100,000 articles and dictionary entries to train ChatGPT without permission.

By Samantha Reed Edited by Maria Konash Published: Updated:
Encyclopedia Britannica and Merriam-Webster Sue OpenAI Over AI Training Data
Britannica and Merriam-Webster sue OpenAI, alleging tens of thousands of articles and entries were used to train ChatGPT. Image: Levart_Photographer / Unsplash

Encyclopaedia Britannica and its dictionary subsidiary Merriam-Webster have filed a lawsuit against OpenAI in federal court in Manhattan, accusing the company of unlawfully using their reference materials to train its artificial intelligence models.

According to the complaint filed Friday, the publishers allege that OpenAI copied nearly 100,000 encyclopedia articles and dictionary entries from their online platforms to train its large language models, including the system behind ChatGPT.

Britannica claims that the AI-generated summaries produced by ChatGPT replicate its content and may reduce traffic to its websites by providing answers directly to users. The complaint argues that this practice “cannibalizes” Britannica’s audience and undermines its subscription-based information services.

The publishers also allege that ChatGPT can generate responses that closely resemble original Britannica entries, sometimes reproducing passages nearly verbatim. In addition, the lawsuit claims OpenAI improperly references Britannica in AI responses, which the company argues could mislead users into believing the chatbot has permission to reproduce its content.

Britannica is seeking unspecified financial damages and a court order preventing further use of its materials in AI training.

Part of Broader AI Copyright Disputes

The case is the latest in a series of legal battles between content owners and AI developers over the use of copyrighted material to train generative AI systems. Authors, publishers, and media companies have filed multiple lawsuits arguing that their work was used without permission or compensation.

Technology companies, including OpenAI, have defended their practices by arguing that training AI models on large datasets constitutes fair use because the models transform the information into new outputs rather than reproducing the original content.

Britannica previously filed a related lawsuit against AI startup Perplexity AI, which remains ongoing. The outcome of these cases could influence how courts interpret copyright law in the era of large-scale AI model training.

AI & Machine Learning, News, Regulation & Policy

Qiwi Co-Founder to Lead Mercuryo AI Labs for Agent-to-Agent Payments

Qiwi co-founder Sergey Solonin will lead Mercuryo AI Labs, developing infrastructure that allows AI agents to autonomously make payments using programmable virtual cards and policy-based controls.

By Daniel Mercer Edited by Maria Konash Published:
Qiwi Co-Founder to Lead Mercuryo AI Labs for Agent-to-Agent Payments
Qiwi co-founder joins Mercuryo to lead AI Labs, developing infrastructure for autonomous AI-to-AI payments. Image: Markus Winkler / Unsplash

Entrepreneur Sergey Solonin, widely known as the co-founder and longtime CEO of Qiwi, will lead Mercuryo AI Labs. He announced the move on LinkedIn, saying he will focus on developing infrastructure that enables AI agents to make payments to each other.

Solonin served as Qiwi’s CEO for nearly eight years before stepping down in January 2020. Since then, he has invested in multiple startups and launched an ambitious project in Bali called Nuanu, a creative city he began building in 2022. According to Solonin, around 5,000 people currently live there. Despite these projects, he has now decided to return to fintech.

Interestingly, Solonin didn’t start a new venture from scratch but instead joined Mercuryo, a cryptocurrency payments service. The company was founded in 2018 by Petr Kozyakov, Grigory Vaysman, and Alexander Vasiliev.

Public data shows two funding rounds for Mercuryo: €2.5 million in 2020 and $7.5 million in 2021, both led by venture fund Target Global. It is unclear whether Solonin participated as an investor in those rounds.

Solonin explains his renewed interest in fintech by pointing to the next evolution of payments:

“The next wave of payments won’t be between people. It will be between agents. Software will pay software. Autonomously. AI agents can already search, compare, negotiate and recommend. But the moment they actually need to pay for something, a human still has to step in. Every time. That’s the bottleneck — and it’s massive.”

He says Mercuryo AI Labs will focus on solving that bottleneck by building agentic payment infrastructure.

“So I’m going all in. Today I’m leading Mercuryo AI Labs — a company building infrastructure for agent payments. The idea is simple: give your AI agent a virtual card, set the spending rules, and let it transact. Settlements can happen in stablecoins or fiat. There’s a full audit trail. Humans set the policy — agents execute.”

AI & Machine Learning, News

Nebius Signs $27B AI Infrastructure Deal With Meta

Nebius has signed a long-term AI infrastructure agreement with Meta worth up to $27 billion, providing large-scale compute capacity powered by Nvidia’s Vera Rubin platform.

By Olivia Grant Edited by Maria Konash Published:
Nebius Signs $27B AI Infrastructure Deal With Meta
Nebius and Meta sign a $27B deal to deploy Nvidia Vera Rubin systems for large-scale AI infrastructure. Image: Growtika / Unsplash

Nebius Group has signed a long-term agreement with Meta to provide large-scale artificial intelligence infrastructure as part of the social media company’s expanding data center strategy. The contract has a total potential value of up to $27 billion over five years.

Under the agreement, Nebius will supply approximately $12 billion in dedicated AI computing capacity across multiple locations. The infrastructure will be built on one of the first large-scale deployments of Nvidia’s Vera Rubin computing platform.

Nebius expects to begin delivering the capacity starting in early 2027.

Meta has also committed to purchasing additional computing resources from Nebius clusters as they become available. The total value of these additional purchases could reach $15 billion during the five-year contract period.

Nebius plans to offer the majority of the new infrastructure capacity to its broader AI cloud customer base. Any remaining unused capacity will be reserved for Meta under the agreement.

Expanding AI Cloud Infrastructure

The deal reflects increasing demand for large-scale computing infrastructure as technology companies train and deploy more advanced AI systems. Large models and AI agents require enormous amounts of computing power, driving companies to secure long-term infrastructure agreements.

Nebius has positioned itself as a dedicated AI cloud provider, focusing on high-performance computing environments optimized for machine learning workloads. The company operates specialized infrastructure designed for training and inference tasks used by AI developers and enterprises.

Arkady Volozh, founder and chief executive of Nebius, said the agreement strengthens the company’s collaboration with Meta while supporting the expansion of its AI cloud business.

“We are pleased to expand our significant partnership with Meta as part of securing more large, long-term capacity contracts to accelerate the build-out and growth of our core AI cloud business,” Volozh said.

The partnership also supports Nebius’s broader strategy of building large-scale AI data centers based on Nvidia’s next-generation accelerated computing platforms.

Nebius said its financial guidance for 2026 remains unchanged following the announcement.

AI & Machine Learning, Cloud & Infrastructure, News

Engineer Uses AI to Develop Experimental Cancer Vaccine for His Dog

A Sydney engineer used AI tools including ChatGPT and AlphaFold to help design a personalized mRNA cancer vaccine for his dog with help from university researchers. Early results show significant tumor shrinkage.

By Laura Bennett Edited by Maria Konash Published:
Engineer Uses AI to Develop Experimental Cancer Vaccine for His Dog
ChatGPT and AlphaFold helped design a personalized mRNA cancer vaccine for a dog. Photo: Diana Polekhina / Unsplash

A technology entrepreneur in Sydney has helped develop an experimental personalized cancer vaccine for his dog using artificial intelligence tools and genomic analysis.

Paul Conyngham turned to AI after his dog Rosie was diagnosed with cancer in 2024. Initial treatments, including chemotherapy and surgery, failed to stop the tumors from progressing.

Conyngham, an electrical and computing engineer and co-founder of Core Intelligence Technologies, began researching alternative options. Using AI tools, he developed a strategy for identifying potential immunotherapy targets.

ChatGPT helped suggest immunotherapy approaches and pointed him toward researchers at the University of New South Wales Ramaciotti Centre for Genomics. Conyngham later worked with scientists at the university to sequence Rosie’s genome and analyze the mutations driving the cancer.

He also used AlphaFold, an AI system developed by Google DeepMind, to analyze mutated proteins and identify potential targets for treatment.

Development of a Personalized mRNA Vaccine

After analyzing the genomic data, Conyngham collaborated with researchers at UNSW’s RNA Institute to design a custom mRNA cancer vaccine tailored to Rosie’s specific tumor mutations.

The vaccine was developed in less than two months by Pall Thordarson, director of the institute and a specialist in nanomedicine and RNA technologies.

According to Thordarson, the case represents one of the first known examples of a personalized mRNA cancer vaccine created specifically for a dog.

“This is still at the frontier of where cancer immunotherapeutics are,” he said. “What Rosie is teaching us is that personalized medicine can be very effective, and done in a time-sensitive manner, with mRNA technology.”

Rosie received her first injection of the vaccine in December and a booster dose in February. Researchers reported that many of the tumors have since shrunk significantly, although some have not responded to the treatment.

Implications for AI in Medicine

While Rosie’s condition has not been fully cured, her health has improved considerably. According to Conyngham, the dog regained energy within weeks of receiving the treatment.

Researchers caution that the experimental therapy is still at an early stage and may not represent a universal solution for cancer treatment. However, the case demonstrates how AI tools can help accelerate the design of personalized therapies by analyzing genomic data and identifying potential biological targets.

The project also highlights the growing role of AI in biomedical research. Technologies such as protein-structure prediction and large language models are increasingly being used by scientists to analyze complex datasets and propose potential treatment strategies.

Some technology leaders say stories like Rosie’s illustrate how AI could transform the pace of medical discovery. As AI-assisted research tools become more widely available, researchers expect personalized medicine approaches to become faster and more accessible in both veterinary and human healthcare.

AI & Machine Learning, News, Research & Innovation