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Tech May 31, 2026

CNN vs. Perplexity: The Copyright Clash in the Age of AI Search

CNN has filed a federal lawsuit against Perplexity, alleging the AI search engine unlawfully copied…
The Battle for Content Ownership: CNN Sues PerplexityUnited States news channel CNN has initiated a federal lawsuit against Perplexity in New York, alleging that the AI search engine provider is unlawfully distributing its copyrighted content. This legal action marks a significant escalation in the ongoing conflict between traditional media and the rapidly evolving generative AI sector.Allegations of Unlawful Content DistributionThe complaint, filed on Thursday, alleges that Perplexity unlawfully copied thousands of CNN stories, videos, and images to power its products. The lawsuit claims the company distributes "identical or substantially similar" content, effectively repurposing original reporting without permission. CNN is seeking an unspecified amount of monetary damages and a court order to block Perplexity from violating intellectual property rights.The High-Stakes Economics of AI DataThis legal battle centers on the valuation of data versus the protection of creative work. Perplexity, valued at tens of billions of dollars, has defended its practices by stating, "You can’t copyright facts." However, CNN argues that while facts may not be copyrightable, the specific reporting, curation, and presentation of news are protected by copyright law. The lawsuit emphasizes that Perplexity exploits the economic incentives that make original newsgathering possible.Shifting the Paradigm of AI TrainingThis case is not isolated; it is part of a broader industry trend. Since the launch of OpenAI’s ChatGPT in 2022, news publishers have faced existential threats regarding their content being scraped for training large language models. CNN's lawsuit joins a growing list of high-stakes cases brought against AI firms, including The New York Times, Reddit, and Dow Jones. Consequently, many news firms are now pivoting toward signing licensing deals and partnerships with Big Tech to ensure verified access and compensation.The Future of AI-News IntegrationThe outcome of this lawsuit will likely set a precedent for how AI companies handle copyrighted material. As legal challenges mount, the industry is moving away from "scraping" and toward "licensing." We can expect a future where AI search engines must pay for access to premium news content, fundamentally changing the revenue models of digital media.
#CNN #Perplexity #Copyright Law
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Tech May 30, 2026

Meta Developing AI-Powered Pendant

Meta is reportedly developing an AI-powered pendant, building on its acquisition of Limitless, an A…
Meta's Foray into AI Wearables Meta is developing an AI-powered pendant that it plans to start testing in the next year, according to a memo viewed by The Information. This device would presumably build on the work of Limitless, an AI device startup that Meta acquired at the end of 2025. The Acquisition and Its Implications The startup made an AI pendant that users could attach to their shirt or wear as a necklace to record their conversations. At the time, Meta said the acquisition would allow it to "accelerate our work to build AI-enabled wearables." Challenges in AI Wearables Earlier AI wearables have failed to catch on with consumers — perhaps due to privacy concerns and tone-deaf marketing, or perhaps because they just weren’t that useful. But companies like OpenAI aren’t giving up. Meta's Future Plans The memo also reportedly states that the company is planning to expand its lineup of AI glasses and launch a business subscription called Wearables for Work. With all these planned devices, Meta is apparently hoping to reverse the fortunes of its hardware-focused Reality Labs division, which lost $4 billion in the first quarter of this year.
#Meta #AI #Wearables
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Tech May 30, 2026

Top VCs on the AI Frenzy: Insights from 3 Industry Leaders

Three top VCs, Niko Bonatsos of Verdict Capital, Andreas Stavropoulos of Threshold Ventures, and Be…
The Lead This week at TechCrunch’s StrictlyVC event in Athens, I sat down with three top VCs to discuss the current state of venture investing, the wave of mega-IPOs, and where they see opportunities in AI. VC Insights on AI and Mega-IPOs The conversation featured Niko Bonatsos of Verdict Capital, Andreas Stavropoulos of Threshold Ventures, and Ben Blume of Atomico. They discussed the potential impact of SpaceX's reported $1.75 trillion valuation at IPO, as well as the opportunities and challenges in the AI space. The Data Analysis SpaceX's potential $1.75 trillion valuation at IPO OpenAI and Anthropic potentially not far behind in terms of valuation Three-quarters of all venture capital raised over the last year went into five companies $500 million fund looking at the same opportunities as people investing from a $10 billion or $15 billion fund The Impact Analysis The VCs discussed how the current flood of capital into AI may be justified by future earnings, but also acknowledged the risk of extreme FOMO (fear of missing out). They also touched on the challenges of pricing deals when things are moving fast and the importance of looking beyond age as a proxy for entrepreneurial potential. The Prediction The VCs see opportunities in areas such as consumer fintech, AI interacting with the physical world, and robotics. They predict that the next generation of companies will be able to go after much larger markets and that immigrant founders will continue to play a significant role in driving innovation.
#Venture Capital #AI #SpaceX
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Tech May 30, 2026

The Browser Wars: Top Alternatives to Chrome and Safari in 2026

The browser wars are heating up in 2026, with several alternative browsers emerging as challengers …
The Browser Wars: An Overview The browser market is dominated by Google Chrome and Apple Safari, but users seeking alternatives have a variety of options. These alternative browsers aim to challenge the industry giants with innovative features, AI integration, and a focus on user well-being. AI-Powered Browsers Several startups have launched AI-powered browsers, including: Perplexity's Comet: A chatbot-based search engine that can perform actions like summarizing emails and browsing web pages. Currently available only to users with Perplexity's $200/month Max plan. The Browser Company's Dia: An AI-centric browser that helps users navigate the web more easily. Currently available as an invite-only beta. Opera's Neon: A browser with contextual awareness that can perform tasks like researching and shopping. Expected to be a subscription product, but pricing has not been announced. OpenAI's Atlas: An AI-powered web browser that allows users to ask ChatGPT about search results and browse websites within the chatbot. Currently available on macOS, with plans for Windows, iOS, and Android. Privacy-First Browsers Some browsers prioritize user privacy, including: Brave: A well-known privacy-first browser with built-in ad and tracker blocking capabilities. It also features a gamified approach to browsing and rewards users with its own cryptocurrency, Basic Attention Token (BAT). DuckDuckGo: A browser that blocks trackers and ads, and doesn't track user data. It has also introduced generative AI features, such as a chatbot. Ladybird: An open-source browser that aims to build an entirely new browser from scratch, without relying on existing code. It will offer features to minimize data collection, such as a built-in ad blocker. Productivity-Focused Browsers Some browsers focus on productivity and user well-being, including: SigmaOS: A Mac-only browser with a workspace-style interface that emphasizes productivity. It displays tabs vertically and allows users to create workspaces to better organize different activities. Zen Browser: An open-source browser that aims to create a "calmer internet" with features like tab organization and community-made plug-ins and themes. Opera Air: A mindfulness-themed browser that includes features designed to support mental well-being, such as break reminders and breathing exercises. Vivaldi: A Chromium-based browser with a customizable user interface and features like ad blocking and a password manager. The Future of Browsers The browser wars are expected to continue, with more innovative features and AI integration on the horizon. As users become increasingly concerned about privacy and productivity, browsers that prioritize these aspects are likely to gain popularity.
#Google Chrome #Apple Safari #Perplexity
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Tech May 29, 2026

Decoding the AI Buzzwords: A Comprehensive Glossary

TechCrunch’s latest piece demystifies the rapidly expanding AI jargon by offering a living glossary…
Why a Living AI Glossary Matters NowArtificial intelligence is reshaping every industry, but its rapid evolution has spawned a parallel explosion of terminology that can leave even seasoned technologists feeling insecure. TechCrunch’s new glossary aims to provide a single, regularly‑updated reference that translates the most common AI buzzwords into plain language.Key Definitions from AGI to RLHFThe article walks readers through a spectrum of concepts, including:Artificial General Intelligence (AGI) – AI that outperforms humans on most economically valuable tasks, as defined by OpenAI and Google DeepMind.AI Agent – An autonomous tool that can perform multi‑step tasks such as expense filing, ticket booking, or code maintenance.API Endpoints – “Buttons” that let software components interact, enabling agents to automate third‑party services.Chain‑of‑Thought Reasoning – A technique that breaks problems into intermediate steps to improve accuracy.Compute – The hardware (GPUs, CPUs, TPUs) that powers AI model training and inference.Deep Learning – Multi‑layered neural networks that learn features directly from data.Diffusion – The process behind many generative AI models that learns to reverse noise‑added data.Distillation – A teacher‑student method for creating smaller, faster models like GPT‑4 Turbo.Fine‑Tuning – Adding task‑specific data to a pre‑trained model to improve performance.GAN – Generative Adversarial Networks that pit a generator against a discriminator to produce realistic outputs.Hallucination – When models generate inaccurate or fabricated information.Inference – Running a trained model to make predictions, often accelerated by specialized hardware.LLM – Large Language Models that power assistants such as ChatGPT, Claude, Gemini, and Llama.Memory Cache (KV Caching) – An optimization that stores intermediate calculations to speed up inference.Open Source vs. Closed Source – The debate over publicly available model code (e.g., Meta’s Llama) versus proprietary systems (e.g., OpenAI’s GPT).Parallelization – Executing many calculations simultaneously, a cornerstone of modern AI hardware.RAMageddon – The current shortage of memory chips driven by AI data‑center demand.Recursive Self‑Improvement (RSI) – Models that can redesign themselves, a potential step toward singularity.Reinforcement Learning from Human Feedback (RLHF) – Training models with reward signals to improve helpfulness and safety.Tokens & Throughput – The basic units of text processing that determine cost and performance.Quantifying the AI Vocabulary ExplosionThe glossary covers more than 30 distinct terms, each accompanied by concise explanations and links to deeper resources. By cataloguing this breadth, the piece highlights how quickly the AI lexicon has expanded within just a few years of mainstream adoption.Implications for Developers, Investors, and the PublicUnderstanding this terminology is no longer optional. For developers, clear definitions accelerate product building and reduce miscommunication when integrating APIs or deploying agents. Investors gain a sharper lens for evaluating startup pitches that hinge on concepts like fine‑tuning or distillation. Meanwhile, the broader public can better assess claims about “AGI” or “hallucinations,” mitigating hype‑driven misinformation.Future of AI Terminology and Industry AdoptionTechCrunch positions the glossary as a “living document,” promising regular updates as new techniques (e.g., emerging diffusion variants or next‑gen RLHF methods) appear. As AI systems become more autonomous and specialized, the vocabulary will continue to evolve, making ongoing education essential for anyone interacting with the technology.
#OpenAI #Google DeepMind #LLM
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Business May 29, 2026

Glean's Annual Recurring Revenue Surpasses $300M as AI Cost-Cutting Becomes Key Selling Point

Glean, an enterprise AI search startup, has reached $300 million in annual recurring revenue, a thr…
Glean's Rapid Growth in Enterprise AI Search Glean, a company often described as the Google for enterprise, has reached $300 million in annual recurring revenue (ARR), a three-fold increase from the $100 million milestone it reached just 15 months ago. This growth is particularly remarkable given the increasing competition in the enterprise AI search market from tech giants like Google, Microsoft, and OpenAI. The Competitive Landscape and Glean's Unique Value Proposition According to Glean CEO Arvind Jain, the company's early mover advantage and deep understanding of customers' business needs set it apart from competitors. Glean's AI tools achieve this understanding by connecting to and learning from enterprises' internal software systems, creating a "context graph" that helps reduce AI computing costs. The Cost-Cutting Advantage of Glean's AI Tools Glean's context graph helps enterprises cut AI computing costs by reducing the number of tokens consumed. This results in significant cost savings for customers, making it a major selling point in a market where many companies are struggling with AI budget overruns. Business Model and Pricing Structures Glean offers various pricing structures, including a consumption-based model and a hybrid model that combines a fixed monthly fee with separate usage fees. The company's customers include Databricks, Reddit, Pinterest, and Samsung. The Future Outlook for Glean and Enterprise AI Search As the enterprise AI search market continues to grow, Glean's focus on cost-cutting and its unique value proposition position it well for future success. With a valuation of $7.2 billion and a strong customer base, Glean is poised to remain a leader in the space.
#Glean #AI #Enterprise Search
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Tech May 29, 2026

Asana Acquires StackAI for $75M to Accelerate AI-Native Workplace Platform

Asana has acquired workflow automation company StackAI for $75 million as part of its strategy to b…
Asana's Strategic AI AcquisitionAsana has acquired the workflow automation company StackAI for $75 million, marking a significant step in the company's broader AI pivot. The acquisition aims to position Asana as an "AI-native workplace platform" and integrate StackAI's agent-building capabilities into Asana's existing work management system. The announcement was made Thursday afternoon to coincide with Asana's earnings and investor call.StackAI's Workflow Automation CapabilitiesStackAI, built as an AI workflow-automation system, designs agents to operate within existing business systems, pulling in data from platforms like Salesforce, Slack, and Gsuite. The company, founded by Tony Rosinol and Bernard Aceituno, will join Asana as part of the acquisition. StackAI has faced competition from automation tools like Zapier as well as AI labs like OpenAI and Anthropic in the rapidly evolving AI automation space.Financial Terms and Funding BackgroundThe acquisition comes as StackAI had raised just under $20 million, according to PitchBook data, with most of it coming in a recent $16 million Series A round. That round included funding from Gradient, Epakon Capital, Lobby VC, LifeX Ventures, and Vercel CEO Guillermo Rauch. While the $75 million acquisition price represents a significant premium over StackAI's funding, it reflects Asana's commitment to accelerating its AI capabilities.Asana's AI-Native TransformationWhile users are most familiar with Asana's work management system, the company has been releasing AI-oriented products in recent years, including the AI Studio agent builder and AI Teammates series of pre-built automations. Asana believes its deep integration into existing corporate workflows provides a key advantage, allowing it to distill context and training data that would otherwise be unavailable. This acquisition specifically aims to "agentify the most complex business processes end-to-end," according to CEO Dan Rogers.Future of Human-Agent Work in EnterpriseAsana has struggled on public markets during the AI era, losing more than half its market cap value since the introduction of ChatGPT. However, revenue has continued to grow steadily, and the new leadership is confident that human-agent products will enable a rebound. With this acquisition, Asana aims to accelerate its roadmap into "the next phase of human-agent work," potentially differentiating itself from both traditional work management platforms and standalone AI automation tools in the competitive enterprise software landscape.
#Asana #StackAI #AI
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Tech May 28, 2026

The Final Private Push: Anthropic Secures $65 Billion to Dominate the AI Race

Anthropic has secured a historic $65 billion in funding at a $965 billion valuation, marking a pote…
The Final Private Push: Anthropic Secures $65 BillionAnthropic has closed a monumental Series H funding round, raising $65 billion at a $965 billion post-money valuation. This capital injection represents the startup's largest private fundraising effort to date and signals that the company is likely in its final pre-IPO stage. The round brings the company's total capital raised to a staggering level, positioning it as a heavyweight contender in the generative AI sector just as public markets begin to open up to high-growth technology companies.The Infrastructure and Investor EcosystemThe funding round was co-led by a consortium of elite institutional investors, including Altimeter Capital, Dragoneer, Greenoaks, and Sequoia Capital. Notably, the round saw participation from major infrastructure partners such as Samsung, SK Hynix, and Micron, highlighting the critical role hardware manufacturers are playing in the AI supply chain.Strategic Backing: Hyperscalers committed $15 billion, including a significant $5 billion from Amazon.Investor Demand: The round was highly competitive, with one institutional investor reportedly pledging up to $5 billion just to secure a meeting with the CFO.Use of Funds: Proceeds will be directed toward advancing safety research, expanding compute infrastructure, and scaling enterprise products.Valuation Wars and Revenue TrajectoryThis funding round places Anthropic at the epicenter of a fierce valuation war in the AI industry. The company's massive valuation comes as it reports a $47 billion revenue run rate and expects a 130% revenue surge to achieve its first operating profit. This financial performance contrasts sharply with the broader tech sector, illustrating the intense demand for high-performance AI models.Competitive Landscape: Anthropic's valuation rivals OpenAI, which raised $122 billion in March at an $852 billion valuation.Market Positioning: The company is reportedly preparing to launch models comparable to its powerful cybersecurity model, Mythos, which has been limited due to safety concerns.The Strategic Shift Toward Enterprise SafetyThe inclusion of infrastructure partners like Samsung and SK Hynix suggests a strategic pivot toward vertical integration. By securing hardware support, Anthropic ensures a stable supply chain for the compute-intensive models it is developing, such as the newly released Claude Opus 4.8. This model emphasizes agentic tasks, advanced coding, and self-correction capabilities, addressing a critical need for enterprises seeking reliable and safe AI solutions.The IPO Countdown and Market DominanceWith this massive capital raise and the release of advanced models, Anthropic is poised to lead the next phase of AI innovation. The company's ability to attract top-tier institutional investors and secure hardware partnerships positions it uniquely ahead of its IPO. As the race for AI dominance heats up, Anthropic's valuation and growth trajectory suggest it will be a key player in shaping the future of the public AI market.
#Anthropic #OpenAI #Sequoia Capital
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Tech May 28, 2026

AI Token Futures Emerge as Financial Markets Bet on AI's Future Value

Major financial exchanges are developing futures markets for AI tokens and GPU rentals, creating ne…
The Rise of AI Financial MarketsThe most important market of the future could be in LLM tokens — and financial groups are rushing to build new infrastructure for them. China's Shanghai Futures Exchange is currently designing a derivatives market for AI tokens, while major derivatives exchanges CME Group and the Intercontinental Exchange (the owner of the NYSE) have separately announced they're working on launching futures contracts for renting GPUs.Building the AI Derivatives InfrastructureGPU markets are still maturing, but given the wide range of companies using, selling, and renting GPUs, there's already a robust market for spot prices on GPU rental, typically charged by the hour. This has prompted major financial players to develop futures contracts that would allow businesses to hedge against fluctuating compute costs.Enterprise plans for major AI companies are commonly denominated in tokens: OpenAI, for example, charges $5 per million input tokens, and $30 per million output tokens if you want to use the API for its latest GPT-5.5 model. Even cloud providers are increasingly offering the opportunity to charge per token, as in Amazon's Bedrock system.The Economics of GPU and Token PricingAccording to data from AI Mining Co., which tracks daily GPU rental pricing across 28 marketplaces and cloud providers, median prices for Nvidia H100 GPUs ranged from $1.40 to $4.27 per hour across 13 marketplaces, while the average price for H200 GPUs were between $2.34 and $5 per hour across 10 marketplaces.Just over the past seven days, average H100 prices ranged from $2.79 to $3.33, showing the volatility that makes futures contracts attractive for risk management.Transforming the AI Investment LandscapeThe effort comes amid an unprecedented buildout of AI infrastructure. Cloud service providers, private equity firms, and infrastructure players alike have poured hundreds of billions into building data centers, anticipating that demand for GPUs and compute will continue to rise.An emerging crop of global neocloud companies is also vying for a piece of this demand. Some of these new entrants are specializing, focusing on inference, while others are competing with cloud giants like Oracle, AWS, and Google Cloud to offer their services to AI companies.The Future of AI Financial InstrumentsBy targeting AI tokens, the Shanghai exchange's derivative product would be tied to how AI companies price their services, giving businesses, investors, and data center operators a way to hedge against the cost of compute. As AI becomes increasingly central to business operations, these financial instruments will likely become essential components of the technology investment ecosystem.
#AI Tokens #GPU Futures #Shanghai Futures Exchange
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