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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 08, 2026

The Enterprise AI Gold Rush: A Flurry of Deals and Investments

The enterprise AI market is heating up with a series of deals and investments, including Anthropic …
The Enterprise AI Gold Rush The enterprise AI market is witnessing a surge in deals and investments, with several companies making significant moves to capitalize on the growing demand for AI solutions. This week, Anthropic and OpenAI announced new joint ventures targeting enterprise AI deployment, while SAP invested $1B in German AI startup Prior Labs. Key Players and Deals Anthropic and OpenAI: Announced new joint ventures targeting enterprise AI deployment SAP: Invested $1B in German AI startup Prior Labs xAI: Entered into a compute arrangement with Anthropic The Acquisition Landscape With these moves, it's becoming clear that startups building enterprise tools are likely acquisition targets. The enterprise AI market is attracting significant attention, and companies are positioning themselves for a potential IPO season. What's Next? As the enterprise AI market continues to evolve, we can expect to see more deals and investments in the coming months. The Equity podcast hosts discuss these developments and what they mean for the future of AI in the enterprise space. Stay Up-to-Date To stay informed about the latest developments in the enterprise AI space, subscribe to the Equity podcast on YouTube, Apple Podcasts, Overcast, Spotify, and follow Equity on X and Threads at @EquityPod.
#Anthropic #OpenAI #SAP
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Tech May 08, 2026

OpenAI's Realtime API Upgrade: The Dawn of Reasoning Voice Agents

OpenAI is advancing its Realtime API with three new voice models—GPT-Realtime-2, Translate, and Whi…
OpenAI is significantly upgrading its developer tools by introducing a suite of advanced voice intelligence features to its Realtime API. This move aims to transition voice interfaces from simple call-and-response mechanisms to sophisticated agents capable of reasoning, translating, and transcribing in real-time.The Evolution of Voice Interaction: Three New ModelsGPT-Realtime-2: The flagship model, upgraded with GPT-5-class reasoning, allowing it to handle complex, multi-turn conversations more effectively than its predecessor.GPT-Realtime-Translate: A real-time translation tool supporting 70 input languages and 13 output languages, designed to keep pace with conversational flow.GPT-Realtime-Whisper: A live transcription engine that captures speech-to-text interactions as they happen.Bridging the Gap: Technical Specifications and Language SupportThe core value proposition here is the shift from passive listening to active reasoning. By integrating these models, OpenAI is enabling applications that can "listen, reason, translate, transcribe, and take action" simultaneously. The translation feature is particularly robust, offering a wide array of linguistic support that suggests a focus on global accessibility and cross-border communication.Reshaping Enterprise Customer Service and AccessibilityThese updates are a direct hit on the enterprise market. Companies looking to upgrade customer service will find these tools essential for creating more empathetic and responsive support bots. Beyond customer service, the technology opens doors for educational tools, media platforms, and creator economies where real-time interaction is key. The inclusion of guardrails against spam and fraud indicates that OpenAI is prioritizing safety as these powerful tools move into production environments.The Future of Voice-First InterfacesWe can expect a rapid acceleration in the adoption of voice-first applications across all sectors. As these models become more accessible via the Realtime API, we will likely see a shift away from text-heavy interfaces toward more natural, conversational user experiences. The integration of GPT-5-class reasoning into voice models suggests that the "chatbot" era is giving way to the "agent" era, where voice is the primary interface for complex tasks.
#OpenAI #GPT-5 #Realtime API
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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

Anthropic's Mythos Model Revolutionizes Firefox's Cybersecurity Approach

Anthropic's Mythos model has significantly improved Firefox's cybersecurity by discovering thousand…
The Power of Anthropic's Mythos Model When Anthropic unveiled its new Mythos model in April, it also delivered a stern warning to anyone developing software. The model was so powerful at sniffing out software vulnerabilities, the lab claimed, that it had discovered thousands of high-severity bugs that would need to be fixed before it could be made public. Improving Software Security with AI Now, security researchers for Mozilla's Firefox browser are providing a closer look at what that process has looked like in practice, and what Mythos' powers mean for software security at large. In a post published on Thursday, Mozilla said Mythos has unearthed a wealth of high-severity bugs, including some that had lain dormant in the code for more than a decade. The Data Behind the Discovery In April 2026, Firefox shipped 423 bug fixes, compared to just 31 exactly a year earlier. The researchers have also published details on 12 of the bugs, which range from a pair of unusual sandbox vulnerabilities, to a 15-year-old error in how the browser parses an HTML element. The Impact on Cybersecurity The fact that the system helped reveal vulnerabilities in Firefox's 'sandbox' system is particularly impressive, given how intricate an attack that exploits it needs to be. To find sandbox vulnerabilities, the model must write a compromised patch for the browser, then attack the most secure part of the software with the new code implemented. Finding and demonstrating the bug is a delicate, multi-step process, requiring both creativity and close attention. The Future of AI in Cybersecurity It's still not clear how AI's emerging capabilities will change the broader balance of power in cybersecurity. One month since Mythos was previewed, most of the bugs discovered likely haven't been patched, which makes it hard to capture the full scope of their impact. Anthropic has been scrupulous about following responsible disclosure norms, but it's likely bad actors are using similar techniques behind the scenes, even if the models they're using aren't quite as good. The Prediction Speaking at a recent event, Anthropic CEO Dario Amodei was optimistic that the new tools would ultimately favor defenders. 'If we handle this right, we could be in a better position than we started, because we fixed all these bugs. There are only so many bugs to find,' Amodei said. 'So I think there's a better world on the other side of this.'
#Anthropic #Mozilla #Firefox
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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 07, 2026

AI Economy Leaders Reveal Bottlenecks and Future Directions

Five key figures in the AI supply chain discuss challenges and future developments, from chip short…
The Lead At the Milken Institute Global Conference, leaders from across the AI supply chain gathered to discuss the current state and future of artificial intelligence. They touched on various challenges, including chip shortages, energy constraints, and the potential for new AI architectures. The Bottlenecks in AI Development The discussion highlighted several bottlenecks in AI development. Christophe Fouquet, CEO of ASML, noted that despite efforts to accelerate chip manufacturing, the market will likely remain supply-limited for the next two to five years. Francis deSouza, COO of Google Cloud, pointed out the immense demand for AI infrastructure, with Google Cloud's revenue growing 63% and its backlog nearly doubling to $460 billion. The Data and Energy Constraints Qasar Younis, co-founder and CEO of Applied Intuition, emphasized that the bottleneck for his company is not silicon but data gathered from the real world, which is essential for training physical AI models. The energy required to power AI infrastructure is also a significant concern. deSouza mentioned that Google is exploring data centers in space to address energy constraints, although this comes with its own set of challenges. New AI Architectures and Their Implications Eve Bodnia, founder of Logical Intelligence, discussed a different approach to AI, focusing on energy-based models (EBMs) that aim to understand the underlying rules of data, similar to human brain function. This approach could be particularly useful for applications requiring an understanding of physical rules, such as chip design and robotics. The Future of AI: Agents, Guardrails, and Trust Dmitry Shevelenko, chief business officer of Perplexity, talked about the evolution of its search product into a 'digital worker' called Perplexity Computer. This tool is designed to act as a staff that a knowledge worker can direct, raising questions about control and security. Shevelenko emphasized the importance of granularity in permissions and actions to ensure trust and security. The Geopolitical and Generational Impact The discussion also touched on the geopolitical implications of physical AI and its impact on national sovereignty. Younis noted that physical AI manifests in the real world in ways that governments can't ignore, leading to questions about safety, data collection, and control. Regarding the impact on the next generation, the panelists were optimistic, highlighting the potential for AI to help address significant problems and unleash new levels of creativity and opportunity.
#AI #Google #ASML
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Tech May 06, 2026

Apple to Offer Multiple AI Models in iOS 27

Apple plans to release iOS 27 with a feature called 'Extensions' that allows users to choose from m…
Apple's AI Strategy Shift Apple is set to revolutionize its iOS experience with the upcoming release of iOS 27, later this year. The new operating system will introduce a feature called 'Extensions,' allowing iPhone users to choose from a variety of third-party large language models to power different functions within the iPhone's operating system. The 'Extensions' Feature The 'Extensions' feature will enable users to access generative AI capabilities from installed apps on demand, through Apple Intelligence features such as Siri, Writing Tools, Image Playground, and more. This move is expected to be available not only for iOS 27 but also for iPadOS 27 and macOS 27. AI Model Options Models from Google and Anthropic are currently being tested. The status of ChatGPT, currently available to users, remains unclear but may continue as an option. The Impact of AI on Apple's Strategy Apple's approach to AI is centered around integrating AI capabilities into its existing hardware rather than investing heavily in building out AI infrastructure and services. This strategy comes as the company is perceived to be behind in the AI space compared to its peers. The Future Outlook With Tim Cook stepping down and John Ternus taking over, Apple is poised to make significant changes in its AI strategy. The company's ability to generate substantial AI-based revenue suggests that its focus on user-centric AI experiences could pay off in the long run.
#Apple #iOS 27 #AI models
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Tech May 04, 2026

Sierra Raises $950M to Lead Enterprise AI Charge

Sierra, an AI startup led by Bret Taylor, raises $950 million in funding to become the 'global stan…
The Funding Boost Sierra, an AI startup led by Bret Taylor, has secured a $950 million funding round led by Tiger Global and GV. This investment pushes the company's post-money valuation above $15 billion, giving it over $1 billion to drive its mission to set the 'global standard' for AI-powered customer experiences. Rapid Growth and Adoption The company has seen rapid growth, expanding from four design partners a couple of years ago to now claiming over 40% of the Fortune 50 as customers. The agents on its platform are handling billions of interactions across various sectors, including mortgage refinancing, insurance claims processing, and nonprofit fundraising. Revenue Milestones Sierra's growth has been remarkable, achieving $100 million in annual recurring revenue (ARR) by late November and reaching $150 million in ARR by early February. This pace reflects the urgency enterprises feel about deploying AI and the associated costs. The Future of Enterprise AI The funding and growth underscore the competitive race to own enterprise AI. Taylor's vision includes a future where employees never need to navigate complex systems, with AI agents handling tasks autonomously. Sierra's recent launch of Ghostwriter, an 'agent as a service' tool, aims to expand its platform's capabilities beyond customer-facing agents. The Impact on Enterprise Software Taylor believes that many enterprise software tools are underutilized, with employees only logging in occasionally. The future Sierra and its investors are betting on involves AI agents handling tasks, making complex systems obsolete. The Road Ahead With this significant funding, Sierra is poised to make a substantial impact on the enterprise AI landscape. The company's progress and innovations, such as Ghostwriter, signal a shift towards more autonomous and efficient business operations.
#Sierra #Bret Taylor #Tiger Global
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