AI 资讯
What are the most powerful underground AI tools that no one talks about enough?
Most powerful AI/agent tools nobody talks about, and it leaves you behind IMO 1. Instructor define a Pydantic model, get clean structured JSON out of any LLM every time → https://github.com/567-labs/instructor 2. Octopoda gives any AI agent persistent memory and catches it when it loops and quietly burns your tokens. open source → https://www.octopodas.com 3. E2B secure cloud sandboxes so your agent can actually run the code it writes without nuking your machine → https://e2b.dev 4. Firecrawl turn any website into clean, LLM-ready markdown in one API call → https://firecrawl.dev 5. Composio plug your agent into 1000+ apps (Gmail, Slack, GitHub) with the auth handled for you → https://composio.dev 6. LiteLLM one API for 100+ models across OpenAI, Anthropic and local, swap without rewriting a line → https://github.com/BerriAI/litellm what are yours, let me know and I will add it to the list next month! submitted by /u/DetectiveMindless652 [link] [留言]
AI 资讯
Indie Hacking the App Store: Navigating Apple's Guidelines for Niche Catholic AI Applications
Indie Hacking the App Store: Navigating Apple's Guidelines for Niche Catholic AI Applications The era of building generic software-as-a-service (SaaS) platforms is shifting. For independent developers and indie hackers, the real opportunity now lies in underserved, highly specific markets. One of the most fascinating and complex niches emerging today is the intersection of artificial intelligence and religious utility. Building a catholic ai application presents a unique set of technical, ethical, and regulatory hurdles. Developers must create highly accurate systems while navigating strict platform guidelines. Unlike general-purpose chatbots, religious applications require absolute precision. A single theological error can ruin user trust. Furthermore, platforms like the Apple App Store have strict rules regarding user safety, privacy, and functionality. This article explores the technical architecture, prompt engineering strategies, and platform compliance steps required to build and launch a successful catholic ai app . Whether you are using Flutter, Swift, or Kotlin, these insights will help you build a robust, secure, and helpful application. Designing a Catholic AI: Aligning with the Catholic Church Stance on AI Before writing a single line of code, developers must understand the domain. Building tools for this community requires respect for established doctrines and traditions. Fortunately, the Vatican has provided clear guidance on this technology. The Catholic Church Stance on AI The Vatican has taken a proactive and surprisingly technical approach to modern computing. Under the leadership of Pope Francis, the Church has introduced the concept of "algorethics"—the ethical development and deployment of algorithms. The catholic church stance on ai emphasizes that technology must always serve human dignity, protect personal privacy, and promote truth. For developers, this means your application must prioritize: Truthfulness: Minimizing errors in theological ou
AI 资讯
Introducing BulkSMSOnline: Global SMS API Built by a Small, Developer-First Team
We’re a tiny team of 2–9 engineers who believe business messaging should be simple, reliable, and accessible to everyone. Today we’re officially opening up BulkSMSOnline to the Dev.to community, and we’d love your feedback. What’s BulkSMSOnline? A global bulk SMS platform that lets you send campaigns, alerts, OTPs, and notifications via: A clean web portal A REST API An HTTP API It’s designed for developers who want reliable global delivery without fighting arcane telecom protocols or opaque pricing. Why We Built It We noticed a pattern: most SMS platforms either overcomplicate things with bloated SDKs or hide behind enterprise gatekeepers that don’t listen. We wanted something different a lean, transparent API backed by real people who actually care about your deliverability. So we built BulkSMSOnline around three principles: Reliability : Messages must arrive, every time. Radical simplicity : A clean API you can integrate in minutes. Transparency : Honest pricing, clear limits, no surprises. Quick Start: Send an SMS in Under 5 Minutes Here’s how simple it is with our REST API. For full docs, check out our developer portal . curl -X POST https://api.bulksmsonline.com/v1/sms \ -H "Authorization: Bearer YOUR_API_KEY" \ -H "Content-Type: application/json" \ -d '{ "to": "+1234567890", "message": "Hello from BulkSMSOnline!", "sender": "MyApp" }' You’ll get a JSON response with a message ID and status. That’s it. No multi-page setup or carrier negotiations. What else can you do? Send bulk messages with a single API call Track delivery in real time via webhooks Pull reports programmatically Use our HTTP API for legacy systems Who’s Behind This? We’re a small, agile team (2–9 people). That means: No bureaucracy: Fixes and features ship fast. Direct access: When you email support, you reach the engineers who built the platform. Your feedback shapes our roadmap: Many of our recent features came from developer conversations. Tech stack we love: Python, Node.js, PostgreSQL, an
AI 资讯
The Meta hack shows there’s more to AI security than Mythos
On June 5, 404 Media reported that attackers had been using Meta’s AI customer support agent to steal Instagram accounts. Their approach was simple: They asked the agent to link the accounts to email addresses that they controlled, and the agent complied. One attacker broke into the dormant Obama White House account and made pro-Iran…
AI 资讯
AI Has Come for Serif Fonts
AI companies are using serif to project humanity. Critics are calling it “tasteslop.”
AI 资讯
Article Series: Securing the AI Stack: From Model to Production
This series provides your roadmap for the machine age, exploring how to move from vulnerable prototypes to resilient systems through layered defense, robust MLOps, and integrated governance. By Claudio Masolo
AI 资讯
anthropic wants a global ai freeze. they're also about to ipo at $1 trillion.
so anthropic just dropped a blog post calling for a global pause on frontier ai development, warning that models could start recursively self-improving and spiral beyond human control. sounds scary. sounds noble. let's talk about what's actually going on here. anthropic is reportedly eyeing a $1 trillion+ ipo, and they just happen to be the ones calling for everyone to stop building. analysts are already asking whether this is really just about freezing the status quo so they can hold their lead. putting it plainly: a pause helps anthropic keep its position and probably grow market share too. and here's where it gets a bit hypocritacal: over 80% of the code in anthropic's own codebase is now written by claude. they're absolutely running the playbook they want everyone else to put down. but the thing nobody's really talking about is regulatory capture. this is textbook. you become the dominant player, go to governments, say "this technology is dangerous, we need oversight, we're the responsible ones, let us help write the rules." suddenly the regulations that get passed only you can afford to comply with, locking in your architecture, your safety benchmarks, your evaluations. smaller competitors get crushed under compliance costs, open source gets kneecapped, and you get a moat that no vc cheque can cross. they compared it to nuclear arms control which sounds serious until you realise ai training is far easier to hide than a missile silo, so any agreement just punishes the people honest enough to follow it. the safety concerns might be real. but the timing, the ipo, the regulatory push is all hard to look at all that and not raise an eyebrow. submitted by /u/Complete-Sea6655 [link] [留言]
AI 资讯
Creaibo 2.0 beta is open — looking for AI content creators to test and break things
We're opening up Creaibo 2.0 beta applications, and I'd genuinely love to get feedback from this community. What is Creaibo? An AI-powered creative tool for images, video, and content production. We're focused on giving creators a more coherent workflow rather than yet another single-task generator. Cora is our core AI assistant inside the product. Why post here? Because people here actually use these tools seriously and have real opinions. We've been building based on the frustration that AI tools are great at individual tasks but terrible at keeping your creative context together across a project. Curious if that resonates. What we're looking for in beta testers: Anyone actively creating content with AI, whether that's video, images, marketing assets, or anything in between. Especially useful: people willing to tell us what's broken. Apply here: https://www.creaibo.com/survery We also published a new Cora demo this week if you want to see what the tool actually does before applying: https://www.bilibili.com/video/BV1ETEF6VEHu/ Happy to answer questions in the comments. submitted by /u/Objective_Dirt_9799 [link] [留言]
AI 资讯
OpenAI gives free daily tokens if you do this
found this buried in the openai dashboard and honestly surprised more people don’t know about it it’s called the data sharing program. go to your api dashboard, hit data controls, toggle on sharing. that’s it. you get free tokens every single day. up to 2.5 million tokens daily on the lighter models like gpt-4o-mini, o3-mini, gpt-4.1-mini. for the heavier models it’s 250k tokens per day. resets daily. the trade is your prompts and outputs can be used by openai to train their models. so don’t use it for client work or anything sensitive but for side projects, learning, experiments… you’re basically getting free api access every day just for flipping a toggle not a trial. not a promo. it’s an ongoing program and it just sits there unclaimed for most people submitted by /u/NewMuffin3926 [link] [留言]
AI 资讯
CMA Orders Google AI Search Opt-Out for Publishers
The CMA's conduct requirement under the UK Digital Markets, Competition and Consumers Act is the first binding law to separate content display rights from AI training data rights at domain and page level, covering Google AI Overviews, AI Mode, Gemini, and Vertex AI simultaneously, with a phased implementation calendar: main publisher controls by December 2026 and page-level grounding controls by March 2027. CMA chief Sarah Cardell explicitly signaled additional Google search requirements in coming weeks, and the CMA's biannual public compliance reporting obligation gives it a fast-acting mechanism if Google stalls. An anti-retaliation clause bars Google from penalizing opt-out publishers in organic rankings, closing the coercion mechanism that has made voluntary consent frameworks unworkable since AI Overviews launched in the UK in late 2025, when zero-click searches rose roughly 30% in health and local news categories. Fair licensing terms were explicitly deferred to a separate proceeding, a gap publisher trade bodies have already criticized and one the CMA has already signaled it intends to fill in its next enforcement phase. More : https://aiweekly.co/alerts/cma-orders-google-ai-search-opt-out-for-publishers submitted by /u/Justgototheeffinmoon [link] [留言]
AI 资讯
Anthropic president cites high capital needs as key motive for IPO - calls for pause to AI development
submitted by /u/ItsGazH [link] [留言]
AI 资讯
[OC] UK AI exposure data: clerical workers score 8.5/10 while most professionals score 6.5/10
I recently analysed UK occupation data to see which job categories appear most exposed to current-generation AI systems. The results are probably not what most people here would predict. Using ONS workforce data mapped to ISCO-08 occupation groups, I assigned AI exposure scores based on how much of an occupation's core task bundle can already be completed or substantially augmented by current models and automation systems. The highest score was not software development. It was clerical support work. Clerical occupations scored 8.5/10 across roughly 3 million UK workers. This includes administrative assistants, receptionists, customer service representatives, data-entry workers, call-centre staff, and bookkeeping clerks. The reason becomes obvious when you break occupations into tasks. Modern LLMs are exceptionally good at: Information retrieval Structured communication Summarisation Classification Form completion Draft generation Customer interaction workflows Those capabilities overlap directly with a large percentage of clerical work. Professionals scored 6.5/10. That category includes lawyers, engineers, accountants, analysts, architects, and software developers. What's interesting is that exposure and displacement aren't the same thing. A lawyer using AI to draft contracts becomes more productive. A customer-support department replacing a large portion of repetitive ticket handling with AI may reduce headcount entirely. The underlying capability overlap can be similar while labour-market outcomes are very different. The lowest-risk categories remain occupations requiring physical adaptation to unpredictable environments. Trades and elementary occupations scored between 2.0 and 2.5. One takeaway is that AI discussion often focuses on whether models can write code. The labour-market impact may arrive first through administrative and support functions because those workflows are already highly structured and relatively easy to automate. Curious how others here woul
AI 资讯
Autonomous AI.
I'm currently building an AI, specifically a large language model (LLM), using PowerShell. This AI will search the internet for code snippets and create databases. It will also have the ability to adjust and improve its own code. With PowerShell, I'm leveraging its scripting capabilities to automate tasks and manage data efficiently. The AI will integrate natural language processing techniques to understand and generate text, making it more user-friendly. Additionally, I plan to develop a simple interface to allow users to interact with the AI easily and provide feedback for continuous improvement. submitted by /u/Electrical-Tap-9224 [link] [留言]
开发者
Trying to automate too early made my workflows worse, not better
I’ve been experimenting with automating a few small workflows lately (lead scoring, file handling, etc.) One mistake I keep running into is trying to automate things before the process itself is actually clear. At first it feels productive: - add rules - add scoring - connect tools But over time it just turns into: - patching edge cases - fixing broken inputs - adding more conditions to handle weird situations At some point I realized the problem wasn’t the automation, it was that I didn’t really have a clean “manual logic” to begin with. Once I stepped back and tried to define the process in simple human terms, everything got easier: fewer rules, less complexity, way more stable Feels like automation doesn’t fix messy processes, it just exposes them faster. Curious if others ran into the same thing or if I’m overthinking it. submitted by /u/huncho-mohammed [link] [留言]
AI 资讯
What is the worst thing you can imagine yourself doing to someone else with jailbroken A
Two things happened to me this week. First, the shocking power of agentic AI finally hit me at work. Power of God... Second, I read anthropics warning about recursive self-improvement in WSJ. It mentioned how some people are freaking out about the mere suggestion of restricting open source LLMs. It made me wonder if some of us are clueless about how dark the dark side of the power of God could be. I'm proposing a very uncomfortable thought experiment. An edge case. But an unfortunately long and sharp edge. I am asking all you people out there to think of the darkest thing you could see yourself doing with an unchained AI, perhaps at the worst moment in your life... Actually no, I'm not asking that. Let's do this AI style. I want you to imagine the worst version of yourself and then I want you to simulate the worst version of yourself imagining the worst thing they would do at the worst point in their life to their most hated enemy. If people answer honestly, this thread will get very disturbing. I'd ask the moderators not to take it down. It's an exploration of what's soon to be possible. And a conversation not likely to happen unless somebody explicitly prompts it. Its value to public discourse is one of safety. Generally speaking, our public servants are good people. They aren't inclined to let their mind to go where the worst of us might go with this technology. If nobody ever says out loud, how will we know to protect ourselves as a society? submitted by /u/dsfhhslkj [link] [留言]
AI 资讯
Horus Image Generation is here! 🤩📷
https://preview.redd.it/n55ohr6wrd5h1.png?width=1537&format=png&auto=webp&s=991397299a33b91459c9b33597ea920bf43abc28 I'm not here to promote my work or make money from what I'm about to say. I'm here to say that Egypt is already part of the AI race. Today, at TokenAI, we announced our first image generation model and the first release in the Horus Lens family: Horus Lens 1.0 . Horus Lens is a family of models specialized in text-to-image generation, forming a dedicated branch of the broader Horus model family developed and owned by TokenAI. This launch marks an important step forward for Egypt's AI ecosystem and highlights the growing role of the region in advancing artificial intelligence technologies. submitted by /u/assemsabryy [link] [留言]
AI 资讯
We kept improving the AI. Nothing changed.
Most AI projects don't fail because of the model. They fail because nobody trusts them enough to use them. Teams spend weeks comparing: GPT vs Claude Agent frameworks Prompt strategies Benchmarks Then the project quietly dies. Not because the AI was bad. Because nobody solved the boring stuff. Things like: Validation Monitoring Human approval flows Error handling Accountability In my experience, improving the model usually gives small gains. Improving trust changes everything. A 90% accurate agent that people trust creates value. A 99% accurate agent that nobody trusts gets ignored. The biggest challenge in AI isn't intelligence. It's adoption. Curious if others have seen the same thing. What actually killed the AI projects you've worked on? submitted by /u/MerisDabhi [link] [留言]
AI 资讯
Sam, Dario, and Demis Hassabis have signed a joint open letter calling for Law Protecting against Biological Weapons.
OpenAI’s Sam Altman, Anthropic’s Dario Amodei and Demis Hassabis of Google’s DeepMind AI lab with other top execs signed a letter urging Congress to require safeguards when companies order synthetic DNA and RNA, a key step in developing certain vaccines and biotech breakthroughs. submitted by /u/beasthunterr69 [link] [留言]
AI 资讯
Anyone else just sticking to Nano Banana 2 + Kling 3.0 on Artlist?
Been using the Artlist AI Toolkit for a while now and honestly just camp out on Nano Banana 2 for image editing and Kling 3.0 for video. Between those two I can pretty much handle everything I need. The toolkit has a ton of other stuff: Veo 3.1, Flux 2.0, GPT Image 1.5, Sora 2, but I haven't felt a strong enough reason to branch out yet. Curious if anyone's actually putting the other models to work or if most people find their two or three go-tos and just stay there. Is Veo 3.1 actually worth trying alongside Kling? And does anyone use the voiceover tools or is that still rough around the edges? submitted by /u/shogunattila [link] [留言]
AI 资讯
What tools can generate output from two inputs independent of the order?
I'd like to perform the typical operation of giving an AI some text to review and asking it to give me feedback, summarize the document, evaluate the content etc. Except, I want to give it two pieces of text, perhaps two sides of a debate, and I don't want the output to depend on the order of the two inputs. My naive idea is to do it both ways in two separate contexts, then feed those results to each other with a request for convergent results, and repeat until they converge. However, this seems like it would be rather slow and expensive. Are there any existing tools that enable this sort of task without extra tooling and iterative attempts at convergence? submitted by /u/sparr [link] [留言]