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Tech Jun 03, 2026

GitLab Cuts 14% of Staff to Scale AI Workloads

GitLab is laying off 14% of its workforce, about 350 employees, as it restructures to scale its pla…
The Restructuring Effort Developer platform GitLab has laid off about 14% of its workforce, approximately 350 employees, as part of a broader restructuring effort. The company announced in May that it would reduce its workforce as it exited 22 countries, flattened management layers, and invested in infrastructure to scale its platform and serve increased traffic from AI workflows. Scaling for AI Workloads CEO Bill Staples said during a conference call on Tuesday that agentic workloads are stressing developer infrastructure more than it was designed to handle. GitLab's rival GitHub has also struggled to deal with a massive influx of AI-powered submissions that have affected its uptime. GitLab is partnering with an unspecified AI lab to design and rebuild its infrastructure for AI workloads. The company is constructing APIs optimized for agents to store and retrieve context, including code. GitLab is investing in orchestration tools for coordinating software development between AI agents and developers. Financial Impact GitLab reported first-quarter revenue of $264 million, up 23% from a year earlier, and gross margins of 88%. The company expects to incur $30 million to $35 million in restructuring expenses as part of the effort. Industry Trend GitLab joins a number of tech companies such as Intuit, Amazon, Block, Cisco, Cloudflare, Meta, Microsoft, and Oracle that have laid off large numbers of employees, citing a need to make AI a core part of their business. The tech industry has already cut more than 100,000 jobs this year, per Statista. The Future Outlook The tech industry is seeing a familiar pattern: companies reporting record revenues while simultaneously shrinking their workforces, with AI cited as both the reason for growth and the justification for cuts. GitLab's focus on AI workloads and infrastructure is expected to drive future growth, but at the cost of significant restructuring expenses.
#GitLab #AI #Layoffs
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Tech Jun 02, 2026

Microsoft Unveils Scout, an AI Assistant Inspired by OpenClaw

Microsoft has launched Scout, an AI assistant inspired by OpenClaw, designed to bring flexibility a…
The Launch of Microsoft Scout Microsoft has introduced Scout, a new AI assistant inspired by OpenClaw, aimed at integrating into the Microsoft 365 ecosystem. This assistant is built on the OpenClaw framework, offering a persistent identity and style that users can customize. How Scout Operates Users can name their Scout instance and provide ongoing feedback for task automation. Scout is designed to adapt to user needs, creating a personalized experience. It operates across desktop, web browser, and cloud, ensuring easy connectivity to various systems. Features and Security Comes with prepackaged skills for tasks like calendar management and meeting agendas. Users can develop custom skills, enhancing the assistant's capabilities over time. Includes a built-in policy conformance system for security and audit trails. Availability and Integration Scout is available through Microsoft's Frontier program and requires a GitHub Copilot subscription. It is part of Microsoft's broader AI product launches, including Project Solara and updates to Copilot. The Future of AI Assistants With Scout, Microsoft aims to create a sticky AI tool that improves with user investment. The customization loop and security features are designed to make Scout a valuable and trustworthy assistant in the Microsoft 365 ecosystem.
#Microsoft #OpenClaw #AI Assistant
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Tech May 30, 2026

GitHub Copilot's Token-Based Billing Sparks Developer Outrage

GitHub Copilot is switching to a token-based billing system, sparking concern among developers who …
The Shift to Token-Based Billing GitHub Copilot, a tool developed by Microsoft, is changing its billing system from a flat subscription rate to a token-usage system. This change, effective June 1, has sparked concern among developers who fear significant cost increases. The Impact on Developers The new system will charge users based on the number of tokens they use, rather than a low flat rate based on requests. Some developers have taken to online forums to express their discontent, sharing screenshots of drastic cost increases. One developer reported a potential increase from $29 to $750 per month, while another saw costs jump from $50 to $3,000. The Data Analysis Previous flat rate: $29-$50 per month New token-based rate: potentially $750-$3,000 per month The Impact Analysis The changes could disproportionately affect smaller companies and workers, who may struggle to balance their monthly budgets. Some developers have argued that the new system is unfair, given that Microsoft previously encouraged indiscriminate use of the chatbot. The Prediction As the new billing system takes effect, it's likely that some developers will be forced to reevaluate their use of GitHub Copilot or seek alternative tools. The move may also lead to increased scrutiny of Microsoft's pricing strategies and the economics behind its products.
#GitHub #Copilot #Microsoft
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Tech May 28, 2026

RSI is the new AGI — and it's just as hard to pin down

Recursive self-improvement (RSI) has become the latest buzzword in AI, with researchers and startup…
The Rise of Recursive Self-Improvement in AIThe word "recursion" is the latest buzzword in AI circles. Two separate startups have taken on the name, and many more have started referencing recursive self-improvement (RSI) in their roadmaps. Like AGI before it, RSI has become a three-letter byword for a cataclysmic AI takeoff – even if there's still a little disagreement about what it exactly means.In basic terms, RSI refers to an AI system that can continuously upgrade itself. Once AI systems can manage the upgrade cycle better than humans, the process can become a closed loop, limited only by the compute power they can access, and humans are no longer necessary or even helpful.Scary or not, that's a vision that a lot of AI labs are eager to chase.Key Players Pursuing Recursive SystemsEarlier this month, well-known AI researcher Richard Socher launched the aptly named Recursive Superintelligence with RSI as an explicit goal. "Our main focus is to build truly recursive, self-improving superintelligence at scale," Socher told TechCrunch at launch, "which means that the entire process of ideation, implementation, and validation of research ideas would be automatic."A number of other prominent researchers are already chasing that same goal, hoping for a breakthrough that will make recursive self-improvement possible.One of the most prominent is Andrej Karpathy, a legendary figure from Tesla and OpenAI, who is using agent swarms to train LLMs on simple tasks for a project he calls Auto-Research. Karpathy has been unusually open about the project, tweeting about milestones regularly and making the building blocks available through a public GitHub repo. So far, the work has mostly been confined to making minor improvements on a GPT-2 scale model — as Karpathy noted in March, "It's not novel, ground-breaking 'research' (yet)" — but it's been enough to convince lots of other researchers to follow the RSI dream. And with Karpathy now working on pre-training at Anthropic, he will have plenty of opportunity to apply the idea at a larger scale.Adaption — founded by Cohere and Google alum Sara Hooker — recently launched a similar tool called AutoScientist in an effort to automate frontier training. Like Karpathy's auto-researchers, the system trains agents to make incremental improvements — but for Adaption, the goal is to make it easier to train a full-scale frontier model. If those same researchers start to push the frontier forward, the system could quickly spiral into something very much like RSI.Disarray founder Doris Xin drew more specific RSI interest when her self-trained machine learning agent took home 28 medals in a recent Kaggle competition, beating out many human-trained agents. As she sees it, the major challenge is reliability."I would argue, given infinite compute and infinite time horizon, we are already there," Xin told me. "I want to make an argument that this is not a creative endeavor, really. It's just a lot of meat-and-potatoes engineering."The Current State of Self-Improving AIThere's also plenty of evidence that the AI industry isn't very close to recursive systems in any meaningful way — and is still grappling with talking to a wary public about its progress. So Google CEO Sundar Pichai basically admitted in a recent podcast interview."It's a continuum, and we are all definitely making progress," Pichai said. "But in the way people describe RSI, that would represent a next level of acceleration and would have a lot of implications, but we aren't quite there yet."But the continuum includes an awful lot of self-improving AI systems.In January, one of Anthropic's lead programmers for Claude Code estimated that "close to 100%" of his team's code was written by the tool — a frank admission that Claude Code was literally writing itself.Just because engineers are using an AI tool doesn't mean the tool can replace them — but Anthropic seems to be getting close to replacing engineers too. In a recent survey tied to the Mythos preview, five out of 18 Anthropic engineers believed that, with harness improvements, this version of Mythos could soon substitute for an L4 engineer — a midlevel programmer who can take on involved projects without supervision.Still, there were some of the same weaknesses you might expect."Some of Claude's major reported weaknesses compared to an L4 include: self-managing week-long ambiguous tasks, understanding org priorities, taste, verification, instruction-following, and epistemics," the report reads.In other words, its weaknesses are everything involved with self-direction, which is the cornerstone for RSI. But sure, for everything else, Claude is ready to step right in.Expert Perspectives on RSI TimelinesJust like the AGI term before it, the AI industry also can't tell us how far away it is from showcasing a meaningful recursive system. When Georgetown's Center for Security and Emerging Technology assembled a group of experts to study RSI last year, the group found a major split in assessments — some expecting an imminent "superintelligence" style explosion while others expected slower progress and an eventual plateau. But all agreed that recursion made the future especially difficult to predict.Helen Toner, director of CSET and a former board member at OpenAI, told TechCrunch that simply using AI tools to do AI research isn't enough to qualify as RSI. "They're just using AI for as much as they can," Toner told TechCrunch. "And I think that is different from the classic definition of RSI, which is really that there are no humans needed."Toner pointed to a recent post by METR's Ajeya Cotra, which distinguishes different milestones on the path to the AI research takeover. One step, which Cotra calls "adequacy," would come when the system can still perform research after all humans are removed — even if the resulting research isn't as valuable or efficient. "Parity" comes when an AI-only system is as good at research as a human-only system. "Supremacy," the final stage, comes when an AI-only system outperforms a collaborative system between humans and AI.Ultimately, Cotra concludes that AI is very close to the adequacy threshold of being able to produce some work on its own — similar to the incremental changes made by Karpathy's Auto-Research system. "I wouldn't be totally shocked if you told me this milestone had already passed, and I expect it to happen in the next couple years," Cotra wrote.She was less clear on when parity will come, but once it does, she thinks it would "massively accelerate the pace of AI progress, leading to AI research supremacy within another year."The Challenges Ahead for Recursive AIWith so much of AI built on scaling laws, there's a strong tendency to think RSI will follow the same curve. Toner thinks that many of those pursuing AI research and development via RSI "think of it as a pretty smooth ladder, where you can just keep scaling up."But even if AI researchers are able to make incremental improvements like Karpathy's auto-researchers, there will be larger challenges in handing off the whole process of research. Toner put it in terms of the history of computing, which has seen human beings handing off more and more of the process while still directing things from the top."We went from machine languages to assembly language and compiled languages; you're getting further and further from the guts of the computer," Toner said. "But the human is still, in some intuitive sense, running the show."Moving beyond that paradigm will take significant challenges, both in engineering and alignment. But even with the massive investments happening, there's no infinite compute available — and the basic trade-off between human labor and machine intelligence will be hard to overcome.The Future of Recursive Self-ImprovementAs for a total recursive AI system of apocalyptic visions? The only thing researchers essentially agree on is that, like AGI, it's not here yet.
#Recursive Self-Improvement #AGI #AI Research
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Tech May 22, 2026

Google’s AI‑Driven Search Overhaul Sparks Surge in Alternative Engines

Google announced a conversational, AI‑first redesign at I/O 2026, prompting users to consider priva…
Google’s AI‑First Search Redesign at I/O 2026At the Google I/O 2026 keynote, Google unveiled a complete overhaul of its search product, introducing an optional AI mode and embedding an AI Overview chat box directly into results. Elizabeth Reid, head of Search, called it “the biggest upgrade to our iconic search box since its debut over 25 years ago.” The new experience aims to let users enlist AI agents for tasks such as automatic tour notifications for favorite bands.Pricing and Feature Shifts Highlight User ConcernsAI Overviews will appear even for non‑AI mode searches, adding a chat‑style interface.Google’s ad‑supported model remains unchanged, but the AI layer raises questions about data usage.Early feedback labels the change as “another AI‑forced adjustment,” recalling the controversial “stare into the sun” rollout.Why Users Are Turning to Alternative Search EnginesThe backlash stems from two main pain points: intrusive AI features and growing distrust of Google’s market dominance, reinforced by a 2024 U.S. District Court ruling on monopoly practices. Users seeking privacy, ad‑free experiences, or simple AI‑free results are exploring other options.Top Alternatives and Their Unique Value PropositionsKagi – Subscription‑based ($5/month or $10 for unlimited searches). Ad‑free, customizable “lenses” for academic or niche queries, and optional AI “Quick Answer” summaries.DuckDuckGo – Free, ad‑supported but privacy‑first; no tracking of search, browsing, or purchase history. AI answers can be disabled in settings.Startpage – Acts as a proxy to Google, stripping personal data before forwarding queries. Offers AI toggle and a more private Google experience.&udm;=14 – Open‑source script (available on GitHub) that appends a parameter to Google searches to suppress AI Overviews automatically.Brave – Chromium‑based browser with its own search engine; supports “Goggles” to filter results by source type and lets users enable or disable AI features.Ecosia – Chrome‑compatible, ad‑supported, and pledges ~80% of revenue to global reforestation projects, with transparent financial reporting.Looking Ahead: The Future Landscape of SearchIf Google’s AI integration continues to alienate a segment of its user base, the market share of privacy‑centric and subscription‑based engines could grow, pressuring Google to refine its approach or offer clearer opt‑out mechanisms. The competition may also accelerate innovation in AI‑free search experiences and sustainable monetization models.
#Google #Kagi #DuckDuckGo
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Tech May 21, 2026

Spotify Introduces AI-Powered Podcast Features

Spotify is introducing AI-powered features to enhance user engagement with podcasts, including pers…
Revolutionizing Podcast Consumption Spotify is taking a significant leap in podcast consumption by introducing AI-powered features that allow users to create personalized podcasts based on their interests. The company has released a GitHub-based command-line tool that enables users to generate podcasts using Claude Code and Codex, which can be saved to their Spotify library. Personalized Podcast Generation Users can create podcasts by providing custom prompts, such as "Share my daily city updates, and tell me about local concerts from artists I love," or "Help me understand economics in five minutes." They can also add links, PDFs, and text, and choose a custom voice to generate podcasts. AI-Powered Q&A; Feature Spotify is rolling out an AI-powered Q&A; feature for Premium mobile users in the U.S., Sweden, and Ireland. This feature allows users to ask questions about the episode they are listening to or a concept mentioned in the podcast to get answers. They can also ask for podcast recommendations on specific topics. Creator Tools and Features Creator sponsorship tool to manage brand partnerships Option for creators to charge a subscription to unlock exclusive content and experiences The Future of Podcasting With these new features, Spotify aims to increase user engagement and make podcast consumption more personalized and interactive. The company is taking a leaf out of other innovative apps, such as NotebookLM and ElevenLabs reader, to create a unique podcasting experience. Enhanced User Experience The introduction of AI-powered podcast features and creator tools is expected to enhance the overall user experience on Spotify, making it a more dynamic and engaging platform for podcast enthusiasts.
#Spotify #AI #Podcasts
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Tech May 19, 2026

Google’s AI Studio Lets Anyone Build Android Apps in Minutes

Google unveiled AI Studio, a web‑based tool that lets users generate native Android apps in minutes…
Google AI Studio Enables Minute‑Long Android App Creation Google announced that its new AI Studio can turn a concept into a native Android app in minutes, collapsing a process that traditionally takes weeks of setup and coding. Built on the Kotlin language and Jetpack Compose toolkit. Supports hardware sensors such as GPS, Bluetooth, and NFC. Provides an embedded Android Emulator for live preview in the browser. Speed Gains and Scale: From Weeks to Minutes The platform promises a dramatic reduction in development time, moving from multi‑week cycles to a matter of minutes. It also leverages Gemini AI to suggest app ideas and streamline code generation. Prototype creation: minutes vs. traditional weeks. Future rollout will surface apps via conversational queries, linking to over 450,000 movies, TV shows, and sports streams. Opening Android Development to Non‑Technical Creators By offering a low‑code, web‑based environment, Google positions AI Studio against competitors like Cursor, Replit, and Claude Code, targeting both seasoned developers and first‑time creators. Non‑technical users can “vibe‑code” apps without deep programming knowledge. Developers can export projects to Android Studio or GitHub for further refinement. Internal testing tracks can be auto‑populated in the Google Play Console. Future Roadmap: Publishing, Firebase Integration, and AI‑Driven Discovery Google plans to expand AI Studio’s capabilities beyond personal utilities: Enable public publishing for family and friends. Add Firebase services (Firestore, Auth, App Check) for backend support. Introduce an “Ask Play” AI overlay that lets users discover apps through natural conversation. What’s Next for AI‑Generated Android Apps? As AI Studio rolls out ahead of the Google I/O conference, the company signals a broader strategy to embed AI across its ecosystem—from workspace tools to mobile experiences. Expect tighter integration with Gemini, broader app discovery via conversational search, and a growing marketplace of creator‑generated Android utilities in the coming year.
#Google #Gemini #Android
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Tech May 15, 2026

Clawdmeter Turns Claude Code Usage Stats into a Tiny Desktop Dashboard

An open‑source hardware gadget called the Clawdmeter visualizes Anthropic’s Claude Code token consu…
An open‑source hardware gadget called the Clawdmeter now visualizes Anthropic’s Claude Code token consumption on a small desktop screen, giving AI power users a playful, at‑a‑glance view of their usage. Clawdmeter: A Pixel‑Art Dashboard for Claude Tokens The device was conceived by Reykjavik‑based developer Hermann Haraldsson, who wanted to combine his interest in embedded hardware with the rising need to monitor AI token usage. Built around a Waveshare ESP32‑S3‑Touch‑AMOLED‑2.16 display, the Clawdmeter pairs with a laptop via Bluetooth, reads the Claude Code OAuth token, and pulls usage numbers from API response headers. When powered on, a pixel‑art Clawd sprite dances on the splash screen, accelerating as token consumption rises. Users can cycle through animations, view session and weekly usage charts, and even trigger Claude shortcuts (Space for voice mode, Shift+Tab for mode toggles) directly from the device’s side buttons. GitHub Reception and Early Adoption Metrics 800+ stars on GitHub since the May 10, 2026 launch 50 forks for custom extensions Open‑source repository invites community‑added animations, screens, and features Device runs on a small lithium‑ion battery, making it portable for desk use What the Clawdmeter Signals for AI Tool Adoption The project underscores two broader trends. First, the “tokenmaxxing” mindset—where engineers track the volume of AI tokens consumed as a badge of AI integration—is gaining traction across tech firms. Second, tools like Claude are becoming accessible enough that developers can leverage them to prototype hardware projects, effectively democratizing embedded development. As Haraldsson noted, Claude’s conversational guidance helped him complete the device in just a few days, blurring the line between software and hardware creation. Future Directions for Desktop AI Dashboards Given the enthusiastic community response, several pathways are likely. Open‑source contributors may add multi‑AI support (e.g., OpenAI, Google Gemini), richer analytics (cost tracking, token efficiency), or even haptic feedback. Commercial variants could emerge, offering premium enclosures or integrated charging. Ultimately, the Clawdmeter exemplifies how niche hardware can turn abstract AI usage data into tangible, motivating feedback—potentially spawning a new class of personal AI monitoring devices.
#Clawdmeter #Claude #Anthropic
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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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