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Tech May 10, 2026

Decoding AI: A Comprehensive Glossary of Key Terms

The article provides a comprehensive glossary of key AI terms, aiming to help readers understand th…
Breaking Down the Complex Language of AI Artificial intelligence is changing the world, and simultaneously inventing a whole new language to describe how it’s doing it. Spend five minutes reading about AI and you’ll run into LLMs, RAG, RLHF, and a dozen other terms that can make even very smart people in the tech world feel insecure. This glossary is our attempt to fix that. We update it regularly as the field evolves, so consider it a living document, much like the AI systems it describes. Artificial General Intelligence (AGI) Artificial general intelligence, or AGI, is a nebulous term. But it generally refers to AI that’s more capable than the average human at many, if not most, tasks. OpenAI CEO Sam Altman once described AGI as the “equivalent of a median human that you could hire as a co-worker.” Meanwhile, OpenAI’s charter defines AGI as “highly autonomous systems that outperform humans at most economically valuable work.” Google DeepMind’s understanding differs slightly from these two definitions; the lab views AGI as “AI that’s at least as capable as humans at most cognitive tasks.” Confused? Not to worry — so are experts at the forefront of AI research. AI Agent An AI agent refers to a tool that uses AI technologies to perform a series of tasks on your behalf — beyond what a more basic AI chatbot could do — such as filing expenses, booking tickets or a table at a restaurant, or even writing and maintaining code. However, as we’ve explained before, there are lots of moving pieces in this emergent space, so “AI agent” might mean different things to different people. Infrastructure is also still being built out to deliver on its envisaged capabilities. But the basic concept implies an autonomous system that may draw on multiple AI systems to carry out multistep tasks. API Endpoints Think of API endpoints as “buttons” on the back of a piece of software that other programs can press to make it do things. Developers use these interfaces to build integrations — for example, allowing one application to pull data from another, or enabling an AI agent to control third-party services directly without a human manually operating each interface. Most smart home devices and connected platforms have these hidden buttons available, even if ordinary users never see or interact with them. As AI agents grow more capable, they are increasingly able to find and use these endpoints on their own, opening up powerful — and sometimes unexpected — possibilities for automation. Chain-of-Thought Reasoning Given a simple question, a human brain can answer without even thinking too much about it — things like “which animal is taller, a giraffe or a cat?” But in many cases, you often need a pen and paper to come up with the right answer because there are intermediary steps. For instance, if a farmer has chickens and cows, and together they have 40 heads and 120 legs, you might need to write down a simple equation to come up with the answer (20 chickens and 20 cows). Coding Agent This is a more specific concept that an “AI agent,” which means a program that can take actions on its own, step by step, to complete a goal. A coding agent is a specialized version applied to software development. Rather than simply suggesting code for a human to review and paste in, a coding agent can write, test, and debug code autonomously, handling the kind of iterative, trial-and-error work that typically consumes a developer’s day. Compute Although somewhat of a multivalent term, compute generally refers to the vital computational power that allows AI models to operate. This type of processing fuels the AI industry, giving it the ability to train and deploy its powerful models. The term is often a shorthand for the kinds of hardware that provides the computational power — things like GPUs, CPUs, TPUs, and other forms of infrastructure that form the bedrock of the modern AI industry. Deep Learning A subset of self-improving machine learning in which AI algorithms are designed with a multi-layered, artificial neural network (ANN) structure. This allows them to make more complex correlations compared to simpler machine learning-based systems, such as linear models or decision trees.
#Artificial Intelligence #AI Glossary #TechCrunch
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Tech May 09, 2026

Nvidia Commits Over $40 B to AI Equity Deals in Early 2026

Nvidia has poured more than $40 billion into AI equity investments in early 2026, highlighted by a …
Nvidia has committed over $40 billion to equity investments in AI companies during the first months of 2026, a mix of a massive $30 billion stake in OpenAI and several multi‑billion‑dollar deals with firms such as Corning and IREN. The spending underscores the chipmaker’s strategy to embed itself deeper into the AI ecosystem, even as critics label the moves “circular investments.”Strategic Stakes: From a $30 B OpenAI Bet to Multi‑Billion Deals with Corning and IRENAccording to CNBC, the bulk of the $40 billion total stems from a single $30 billion investment in OpenAI. In addition, Nvidia announced seven multi‑billion‑dollar equity placements, most recently up to $3.2 billion in glassmaker Corning and up to $2.1 billion in data‑center operator IREN. The chipmaker has also participated in roughly two dozen private‑startup rounds in 2026, adding to the 67 venture deals recorded in 2025.Numbers on the Table: Investment Breakdown and Deal VolumeTotal AI equity commitments in 2026 (first months): $40 billionFlagship OpenAI investment: $30 billionCorning deal size: up to $3.2 billionIREN deal size: up to $2.1 billionPublic‑company equity deals announced: 7Private‑startup rounds participated in 2026: ~24Industry Ripple Effects: Circular Investments and Competitive MoatsCritics argue the investments create “circular deals,” shuffling capital between Nvidia and its customers. Matthew Bryson of Wedbush Securities notes the pattern fits a “circular investment theme,” but adds that successful outcomes could reinforce Nvidia’s “competitive moat” by securing key AI workloads and data pipelines.What’s Next: Potential Outcomes for Nvidia’s AI EcosystemIf the funded companies deliver strong AI products, Nvidia could lock in long‑term demand for its GPUs and related hardware, strengthening its market dominance. Conversely, regulatory scrutiny over anticompetitive financing could arise. Analysts expect Nvidia to continue leveraging its balance sheet to shape the AI value chain throughout 2026 and beyond.
#Nvidia #OpenAI #Corning
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Tech May 08, 2026

Perplexity’s Personal Computer Now Available to All Mac Users

Perplexity has released its Personal Computer AI agent to all macOS users via a new desktop app, ex…
Perplexity announced that its Personal Computer AI agent is now generally available to any macOS user through a dedicated desktop application, moving the technology from a cloud‑only model to the local machine.General‑Purpose AI Agent Moves From Cloud‑Only to Local Mac DevicesPersonal Computer expands the capabilities of the earlier Perplexity Computer by accessing local files, native macOS applications, and web resources.The app is distributed as a direct download and is not yet listed in the Mac App Store.It can be paired with Perplexity’s Comet browser to run web‑based tools without additional connectors.Subscription Model and Feature Set: What’s Included at LaunchRequires a Pro or Max subscription; the basic download is free.Supports integration with over 400 connectors and can orchestrate multi‑step workflows across apps.Designed for always‑on devices such as the Mac Mini and offers remote task approval via iPhone.Security Positioning Against Competing Local AgentsWhile competitors like OpenClaw have been criticized for elevated permissions and associated security risks, Perplexity markets Personal Computer as a “secure development environment” that keeps sensitive data on the device while processing in Perplexity’s servers.Future Roadmap: Deprecation of Legacy App and Expansion PlansThe older Perplexity Mac app will be phased out in the coming weeks.Perplexity hints at broader OS support and deeper integration with its AI ecosystem as adoption grows.Continued focus on remote accessibility suggests potential iOS‑only companion experiences.
#Perplexity #Personal Computer #Mac
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Tech May 07, 2026

China's Moonshot AI Raises $2B at $20B Valuation Amid Open Source AI Boom

Moonshot AI, a Beijing-based AI lab, has raised $2 billion at a $20 billion valuation, driven by su…
The Rise of Moonshot AI Chinese AI companies are making waves in the industry, despite not having the same level of funding as their Western counterparts. Moonshot AI, a Beijing-based AI lab, has raised about $2 billion at a valuation of $20 billion, according to a post by Huafeng Capital. Investor Interest and Funding Details The round was led by Chinese food delivery company Meituan's VC arm, Long-Z Investments, with participation from Tsinghua Capital, China Mobile, and CPE Yuanfeng. This recent funding brings Moonshot's total raised to $3.9 billion over the past six months. The Data Analysis Valuation: $20 billion Funding raised: $2 billion Annual recurring revenue: $200 million (as of April) Previous valuation: $4.3 billion (end of 2025), $10 billion (early 2026) The Impact Analysis The fundraising comes as investor appetite for open-weight AI models made by Chinese labs surges. Moonshot's Kimi models have gained significant traction, with the latest model, Kimi K2.6, being the second-most used LLM on distribution platform OpenRouter. The Prediction With demand for open source AI models on the rise, Moonshot AI and its competitors are poised for further growth. Other Chinese AI labs, such as DeepSeek, are reportedly in talks to raise outside capital, while some have even gone public on the back of demand for their AI models.
#Moonshot AI #Open Source AI #Chinese AI
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Tech May 07, 2026

Spotify Unveils Beta CLI to Turn AI Prompts into Private Podcasts

Spotify launched a beta command‑line interface that lets developers use LLM agents to create custom…
Spotify Introduces Beta CLI for AI‑Generated Personal PodcastsSpotify announced a beta command‑line interface (CLI) that lets developers use large‑language‑model agents such as OpenAI’s Codex, Anthropic’s Claude Code or OpenClaw to generate custom audio sessions and automatically add them to a private Spotify library.How the CLI Transforms Text Prompts into Private PodcastsDevelopers clone the open‑source tool from GitHub and authenticate via a browser‑based Spotify login.A prompt (e.g., “Create an audio deep‑dive on World Cup history”) is sent to the chosen LLM agent.The agent synthesizes spoken content, packages it as a podcast episode, and pushes it to the user’s Spotify library.Episodes remain private – they are not discoverable by other Spotify users.Early Adoption Signals and Revenue OutlookSpotify has not released usage statistics for the beta; the tool is currently limited to developers and power users.Potential monetization routes include premium “AI‑audio” subscriptions or a marketplace for third‑party prompt templates.Impact on the Personal Audio EcosystemBlurs the line between traditional streaming and AI‑generated content, positioning Spotify as a hub for both consumption and creation.Encourages competition with emerging AI‑audio platforms and could drive new creator‑first business models.Raises questions about content moderation, copyright, and the user experience of private versus public audio.What Comes Next for AI‑Driven ListeningSpotify plans to expand the CLI to a graphical interface and integrate deeper with its recommendation engine.Broader rollout may include support for additional LLM providers and native editing tools.Industry observers expect a wave of personalized, on‑demand audio experiences that could reshape daily information consumption.
#Spotify #OpenAI #Anthropic
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Tech May 06, 2026

DeepSeek Eyes $45B Valuation in First Funding Round

DeepSeek, the Chinese AI lab that gained attention for its low‑cost large language model, is negoti…
DeepSeek’s Funding Surge: From $20B to $45B in Weeks DeepSeek, the Chinese AI lab known for a cost‑efficient large language model, is in talks to raise its first venture‑capital round that could push its valuation to $45 billion, up from $20 billion just weeks earlier. First Venture Capital Round Targets Chinese AI Champion The round will be led by the state investment vehicle China Integrated Circuit Industry Investment Fund. Potential co‑investors include cloud giants Tencent and Alibaba. Founder Liang Wenfeng, who owns nearly 90% of the company, is seeking capital to retain talent amid competitor poaching. Valuation Leap and Investor Line‑up: Numbers at a Glance Previous valuation: $20 billion Target valuation: $45 billion Founder ownership: ~90% Key investors: China Integrated Circuit Industry Investment Fund, Tencent, Alibaba Model advantage: runs on Huawei chips, lower compute cost Strategic Implications for China’s AI Independence The funding aligns with Beijing’s goal to develop home‑grown AI hardware and software, reducing reliance on U.S. chips. By optimizing models for Huawei silicon, DeepSeek offers a domestic alternative to OpenAI and Anthropic, potentially accelerating China’s AI ecosystem. What the Next Funding Milestone Could Mean for Global AI Competition If the round closes at the projected valuation, DeepSeek could attract further private and state capital, scale its model offerings, and challenge Western AI leaders on both performance and cost. Analysts expect increased pressure on U.S. firms to secure supply chains and consider strategic partnerships in Asia.
#DeepSeek #Liang Wenfeng #China Integrated Circuit Industry Investment Fund
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Tech May 06, 2026

Ethos Raises $22.75M Series A to Transform Expert Networks with Voice Onboarding

London‑based startup Ethos closed a $22.75 million Series A led by a16z, using AI‑driven voice onbo…
Ethos, a London‑based AI startup, announced a $22.75 million Series A led by a16z on May 6 2026. The round, also backed by General Catalyst, XTX Markets, Evantic Capital, and Common Magic, will accelerate the company’s voice‑powered onboarding system that aims to deliver higher‑quality expert matches for corporate clients. Voice‑Powered Onboarding Redefines Expert Matching Ethos replaces the traditional form‑filled, title‑based profiling used by platforms like LinkedIn, GLG, and AlphaSights with a conversational interview. Experts answer curated questions via voice, allowing the platform to capture nuanced sub‑specializations and real‑world experience that job titles miss. Experts can be queried on complex criteria, e.g., “find people who worked at a funded startup backed by A‑grade investors solving finance automation.” Clients such as hedge funds, private‑equity firms, AI labs, and consulting groups can search across public data (blogs, papers) and voice‑derived insights. Ethos reports roughly 35,000 new experts joining each week, building a deep, searchable talent graph. Funding Round and Valuation Signals The Series A injects $22.75 million into Ethos, bringing its team to eight full‑time members while it scales its data pipeline. Lead investor: a16z (Anish Acharya highlighted voice as “the original form of human communication”). Participating investors: General Catalyst, XTX Markets, Evantic Capital, Common Magic. Revenue model: 30%+ per‑project fee; the company is on track for an eight‑figure annualized revenue run‑rate. Strategic Implications for the Expert‑Network Landscape By capturing richer signals, Ethos challenges legacy platforms that rely on shallow job‑title data. The voice interview approach creates a more granular knowledge graph, aligning with AI labs that are mapping every economically valuable occupation. Potential to attract AI‑driven professional services in law, health, finance, and management. Competitive edge over conversational‑AI interview tools like Listen Labs and Outset, which focus on interview automation rather than expert network depth. Provides a data moat as public sources (blogs, academic papers) are combined with proprietary voice‑derived insights. Growth Trajectory and Market Outlook Ethos aims to keep its core team compact while scaling its expert pool and client base. The influx of capital will support: Expansion of voice‑capture infrastructure and AI matching algorithms. Targeted outreach to high‑value corporate clients and AI research labs. Further integration of external data sources to enrich expert profiles. Analysts expect the voice‑first model to set a new standard for expert networks, especially as enterprises demand more precise skill‑based matches. If Ethos sustains its weekly onboarding rate, the platform could reach a critical mass that forces incumbents to adopt similar AI‑driven profiling methods.
#Ethos #a16z #James Lo
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Economy May 02, 2026

Britain’s Golden Retirement Era Faces Its End as Pensions Shift

Britain’s post‑war model of a comfortable retirement, built on universal state pensions and generou…
The End of Britain’s Comfortable Retirement DreamBritain’s long‑standing model of a secure, leisure‑filled retirement – built on state pensions, generous occupational schemes and rising life expectancy – is now under pressure as demographic, economic and policy shifts threaten the “golden age” of retirement.From Post‑War Pension Prosperity to Modern AusterityAfter World II, the universal state pension introduced by the Attlee government, expanding occupational pensions and booming home‑ownership created a generation of retirees who could enjoy early retirement, travel and lifelong learning. The 1960s‑80s saw the rise of package holidays, the Open University and the University of the Third Age, while full employment and a free NHS underpinned rising healthy life expectancy.Numbers That Reveal a Changing Landscape1909: Britain introduced an old‑age pension for the poorest, age 70.2003: For the first time, the proportion of pensioners in relative poverty fell below the national average.2007‑08: Global financial crisis caused pension fund values to plunge, exposing the risk of private‑pension reliance.2020s: Defined‑contribution schemes now dominate, with many younger workers facing pension pots that are “nowhere near enough” for a comfortable retirement.Why the Retirement Contract Is FracturingThe shift from defined‑benefit to defined‑contribution schemes, combined with stagnant wages, high housing costs and rising student debt, has turned retirement into a contested political issue. Baby‑boomers are portrayed as a “selfish” generation in works such as David Willetts’s The Pinch, while Generation X faces lower pension entitlements and a likely decline in pensioner incomes as they enter the labour market.Advocacy groups like Age UK and the National Pensioners Convention have kept older‑people’s rights on the agenda, but inter‑generational tensions are deepening, especially after Brexit and the Covid‑19 pandemic.What the Next Decade May Hold for British RetireesResearch from the Social Market Foundation suggests that retirees of the 2030s will have smaller pension pots than the boomers, relying more on housing wealth. Without substantial policy reform, many will need to work into their 60s or 70s, or turn to the “FIRE” (Financial Independence, Retire Early) movement. Future reforms will need to blend work, care, learning and leisure, and leverage technology to sustain living standards without compromising the planet.
#UK pensions #Age UK #Generation X
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Politics May 02, 2026

Cuba Calls Trump’s New Sanctions ‘Collective Punishment’

Cuba’s foreign minister denounced President Donald Trump’s latest executive order as “collective pu…
Cuba Labels Trump’s New Sanctions as Collective Punishment Cuba’s foreign minister Bruno Rodriguez called the latest U.S. measures “collective punishment” after President Donald Trump signed an executive order targeting multiple sectors of the Cuban economy. Executive Order Expands Sanctions Across Key Cuban Sectors Targets entities in energy, defence, metals & mining, financial services and security. Also sanctions officials accused of serious human‑rights abuses or corruption. Announced during the 1 May labour‑day procession outside the U.S. embassy in Havana. Economic Indicators Highlight Deepening Crisis Only one Russian oil tanker has reached Cuba since the January fuel blockade. Tourism, once the island’s most lucrative industry, has sharply declined (no exact figure provided). Power cuts and supply shortages have become routine. Political and Humanitarian Fallout for Cuba and U.S. Relations The sanctions arrive amid renewed diplomatic overtures, with senior U.S. officials visiting Cuba earlier in April. Cuba insists its socialist system is non‑negotiable, while Washington continues to demand economic liberalisation, reparations for ex‑propriated property and “free and fair” elections. What the Next Moves Might Mean for Havana and Washington Non‑American companies operating in the sanctioned sectors lose the protective shield previously afforded by the embargo. Potential escalation could further isolate Cuba, worsening the humanitarian situation. Conversely, increased pressure may force Cuba back to the negotiating table, though the risk of deeper confrontation remains.
#Cuba #Donald Trump #US sanctions
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