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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

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

Musk’s Lawsuit Casts Spotlight on OpenAI’s Safety Record

A federal court hearing in Oakland featured former OpenAI employee Rosie Campbell testifying that t…
Legal Battle Over OpenAI’s Safety CommitmentElon Musk’s lawsuit alleges that OpenAI has strayed from its founding promise to ensure humanity benefits from artificial general intelligence (AGI). A federal court in Oakland heard testimony that the company’s for‑profit arm may be prioritising market rollout over safety safeguards.Testimony Reveals Shift From Research to Product FocusFormer employee and board member Rosie Campbell testified that after joining the AGI readiness team in 2021, she observed a transition from a research‑centric culture to a “product‑focused organization.” She cited the disbanding of her team in 2024 and the shutdown of the Super Alignment team as evidence.Campbell highlighted a deployment of GPT‑4 in India via Microsoft’s Bing before review by the Deployment Safety Board.She argued that without robust safety processes, scaling powerful models is “suboptimal” for the public good.Financial Pressures and Funding Needs HighlightedUnder cross‑examination, Campbell acknowledged that achieving AGI “will likely require significant funding,” suggesting that financial imperatives are driving the product push. No specific dollar amounts were disclosed, but the implication is that capital constraints are influencing safety trade‑offs.Governance Gaps Undermine AI Safety OversightTestimony from former board members Tasha McCauley and expert witness David Schizer painted a picture of a non‑profit board unable to supervise the for‑profit subsidiary. Allegations included:Misleading statements by CEO Sam Altman about board decisions.Failure to disclose the launch of ChatGPT and conflicts of interest.Board’s limited confidence in the information it received.The board’s brief removal of Altman in 2023, linked to the India deployment incident, underscores the recurring tension between governance and commercial rollout.Regulatory Scrutiny Likely to IntensifyBoth Campbell and McCauley argued that OpenAI’s internal failures justify stronger government regulation of advanced AI systems. As the lawsuit proceeds, policymakers may face increased pressure to define clear safety review mandates for AI deployments.
#Elon Musk #OpenAI #Sam Altman
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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 07, 2026

Barry Diller on Trust and AGI: 'Trust is Irrelevant' as AI Nears

Billionaire media mogul Barry Diller expresses trust in OpenAI CEO Sam Altman but emphasizes that t…
The Diller-Altman Trust Dynamic Billionaire media mogul Barry Diller doesn’t think OpenAI CEO Sam Altman is untrustworthy, despite recent reporting to the contrary. Onstage at The Wall Street Journal’s “Future of Everything” conference this week, Diller vouched for the AI exec, who has been accused by some former colleagues and board members of being manipulative and deceptive at times. The AGI Conundrum Diller, who is friendly with Altman, was responding to a question about whether or not people should put their faith in Altman to ensure that artificial intelligence benefits humanity. In particular, he was asked about the theoretical form of AI known as artificial general intelligence, or AGI, which could one day outperform humans on any task. The Limits of Trust in AI Development The media exec, a co-founder of Fox Broadcasting and chairman of IAC and Expedia Group, said that while he believes Altman is sincere in his pursuits, that’s not really the area of concern people should be focused on. Rather, it’s the unknown consequences that will result from AI. “One of the big issues with AI is it goes way beyond trust,” Diller said. “It may be that trust is irrelevant because the things that are happening are a surprise to the people who are making those things happen.” The Unknowns of AI Progress Diller added that the development of AI is a journey into the unknown, with even those creating it unsure of the outcomes. He emphasized that progress in AI is inevitable and that the focus should be on preparing for its consequences. “We have embarked on something that is going to change almost everything. It is not under-reported. Now, whether these huge investments are going to come through — I couldn’t care less. I’m not invested in it, but progress is going to be made,” The Need for Guardrails Diller also highlighted the importance of establishing guardrails for AI development to prevent unforeseen negative consequences. He warned that if humans don’t think about guardrails, then the alternative is that “another force, an AGI force, will do it themselves. And once that happens, once you unleash that, there’s no going back.”
#Barry Diller #Sam Altman #OpenAI
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Tech May 06, 2026

Elon Musk's OpenAI Exit: A Power Struggle Revealed

Elon Musk's departure from OpenAI in 2018 was the result of a power struggle with co-founders Greg …
The Lead-Up to Elon Musk's Departure from OpenAI In late August 2017, key figures at OpenAI gathered to discuss creating a for-profit subsidiary to commercialize its technology and raise funds needed to realize Artificial General Intelligence (AGI). Elon Musk demanded full control of the company, but his co-founders, Greg Brockman and Sam Altman, proposed equal shares. The Heated Meeting That Changed Everything During a tense meeting, Musk became angry and upset when told the others would not accede to his demand for control. He stormed out of the room, grabbed a painting of a Tesla, and asked Brockman and Ilya Sutskever when they would be departing OpenAI. Musk stopped his regular donations to OpenAI's operating budget, and within six months, he would leave the board. The Data Analysis: Financial Impact of OpenAI's Growth OpenAI's growth was fueled by investments from Microsoft, including a $1 billion investment in 2019 and a further $13 billion over the next four years. This led to a significant increase in the company's valuation, with Brockman's current stake worth almost $30 billion. The Impact Analysis: Power Struggle and Its Consequences The power struggle between Musk and his co-founders had significant consequences for OpenAI. Musk's departure led to a change in the company's direction, with a greater focus on commercialization and fundraising. This ultimately fueled Musk's suspicions that Altman and Brockman had taken advantage of him, leading to a lawsuit in 2024. The Prediction: What's Next for OpenAI and Elon Musk The trial between Musk and OpenAI is expected to continue, with both sides presenting their cases. The outcome will likely have significant implications for the future of AI development and the relationships between key players in the industry.
#Elon Musk #OpenAI #Greg Brockman
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Tech May 06, 2026

Apple Agrees to $250M Settlement Over Delayed AI Features in Siri

Apple has agreed to pay $250 million to settle a class-action lawsuit alleging it exaggerated the c…
The Settlement Details Apple has agreed to pay $250 million to settle a class-action lawsuit over how it marketed its AI features ahead of the launch of the iPhone 16. The lawsuit alleged that Apple exaggerated the breadth of features Apple Intelligence would bring, which included a significantly upgraded version of its assistant, Siri. The Allegations Against Apple The complaint alleges that the company created the impression that advanced AI capabilities would be available to users sooner than they actually were. In particular, the plaintiffs allege that Apple overstated both the readiness and functionality of these features, particularly the promised improvements to Siri, which have yet to fully materialize. The Financial Impact Apple will pay up to $250 million to settle the lawsuit. Eligible U.S. customers who purchased the iPhone 15 or iPhone 16 between June 10, 2024, and March 29, 2025, could receive up to $95 per device. The Future of Siri Apple has been touting a more advanced version of Siri ever since it unveiled Apple Intelligence in 2024 during WWDC. The anticipated updates are expected to help Siri function more like modern AI chatbots such as ChatGPT or Claude. The upgraded experience is rumored to be powered by Google Gemini, though newer reports state the company’s next iPhone operating system may let users choose from a number of third-party large language models. The Upcoming Developer Conference The settlement arrives ahead of Apple’s annual developer conference on June 8, when the company is expected to preview a version of its AI-enhanced Siri.
#Apple #Siri #AI
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Tech May 06, 2026

Samsung Hits $1 Trillion Valuation Fueled by AI Chip Boom

Samsung reached a $1 trillion valuation as surging demand for AI memory chips drove its stock up ov…
The Trillion-Dollar Milestone for SamsungSouth Korean tech giant Samsung reached a historic $1 trillion valuation on Wednesday as its shares surged more than 10%, driven by the ongoing artificial intelligence frenzy that's fueling unprecedented demand for chips. This milestone makes Samsung only the second Asian company to cross the trillion-dollar threshold, following Taiwan Semiconductor Manufacturing Company (TSMC).Financial Surge Driven by AI Chip DemandThe valuation surge comes on the heels of a blockbuster earnings report last week, in which Samsung posted profits eight times higher than the same period a year ago. At the heart of this financial boom is high-bandwidth memory (HBM), a specialized type of chip critical to running AI systems, which has dramatically improved the company's profit margins.Every company building AI right now requires advanced chips, and Samsung produces the memory chips that power these AI systems. As demand surges while supply struggles to keep pace, prices continue to climb, directly boosting Samsung's financial performance.Strategic Shifts in the Semiconductor IndustrySeveral factors contributed to Samsung's stock surge on Wednesday. Reports emerged that Apple has been in talks with both Samsung and Intel to manufacture chips for Apple devices on U.S. soil. This potential partnership would mark a significant shift in the global semiconductor supply chain, as Apple has long relied almost exclusively on TSMC in Taiwan for its chip production.The AI boom is driving a chip shortage across the semiconductor industry, as the world's three largest memory chip makers—Samsung, SK Hynix, and Micron—struggle to meet runaway demand from AI data centers. All three companies have redirected investment away from their consumer chip businesses to ramp up production of HBM, which carries substantially higher margins and has become essential to powering large-scale AI infrastructure.Intense Competition and Internal ChallengesDespite Samsung's current success, the company faces intense competition from rival SK Hynix, another South Korean semiconductor giant that is aggressively vying for the same HBM market. This competitive pressure keeps Samsung on its toes, requiring continuous innovation to maintain its technological edge.Internally, Samsung faces several challenges. Workers are threatening an 18-day strike later this month, demanding a bigger share of the AI-driven profits. Additionally, the company's phone and TV divisions, which also need to purchase the same memory chips to build their products, are paying a steep price for the same chips that are powering Samsung's record profits.Future Outlook in the AI Chip RaceLooking ahead, Samsung's position in the AI chip market appears strong but not without challenges. The company's trillion-dollar valuation reflects market confidence in its ability to capitalize on the AI revolution, but maintaining this momentum will require navigating complex geopolitical tensions, supply chain constraints, and intense competition.The potential partnership with Apple could provide a significant boost to Samsung's semiconductor division, offering a stable, high-volume customer outside the traditional AI data center market. However, the company must also address internal labor relations and find ways to balance the needs of its different business units in an increasingly competitive landscape.
#Samsung #AI chips #HBM memory
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Tech May 06, 2026

SAP Bets $1.16B on German AI Lab Prior Labs

SAP is acquiring German AI startup Prior Labs for an undisclosed amount and plans to invest $1.16 b…
SAP's Strategic Bet on AI Enterprise software giant SAP is making a significant bet on artificial intelligence (AI) with the acquisition of German startup Prior Labs for an undisclosed amount. As part of the deal, SAP plans to invest approximately $1.16 billion over the next four years to grow Prior Labs into an AI lab focused on structured data. The Event Details Prior Labs, founded just 18 months ago, specializes in tabular foundation models (TFMs) that can make predictions from data stored in tables and databases. This technology is seen as a better fit for enterprises than language models, particularly for SAP, whose software products rely heavily on databases. The Data Analysis The acquisition is a significant exit for Prior Labs' founders, Frank Hutter, Noah Hollmann, and Sauraj Gambhir, with sources indicating a healthy payout of over half a billion dollars in cash upfront. Prior Labs' TabPFN model series has gained traction among developers, with over three million downloads of its open-source models. The Impact Analysis The deal is part of SAP's broader strategy to bolster its AI capabilities and compete with emerging technologies. SAP has been investing in generative AI companies, including Anthropic, Aleph Alpha, and Cohere, and has developed its own relational pretrained transformer model, SAP-RPT-1. The Prediction With this acquisition, SAP aims to create a new "globally-leading frontier AI lab for structured data" in Europe. The company hopes that Prior Labs will develop TFMs that can combine data with language, reasoning, and domain knowledge, leading to innovative AI solutions for enterprises.
#SAP #Prior Labs #Artificial Intelligence
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