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Browser-Based AI Synthesizer, Drum Machine, and Sequencer
Browser Based AI Synthesizer, Drum Machine, and Sequencer Browser based AI tools for music production are revolutionizing the way artists create and enhance the…
Neural Net Learns to Play Snake: Watch the AI Progress
Neural Net Learns to Play Snake: Witness the AI Progression The world of artificial intelligence (AI) is continually expanding, with new applications and advanc…
Cactus-Compute/needle: Revolutionizing AI Infrastructure on Hugging Fa
Cactus Compute/needle: Transforming AI Infrastructure with Hugging Face Introduction Cactus Compute/needle is a cutting edge AI infrastructure solution designed…
FrontiersMind Nandi-Mini-600M Early Checkpoint: AI Tool on Hugging Fac
Exploring FrontiersMind Nandi Mini 600M Early Checkpoint on Hugging Face FrontiersMind Nandi Mini 600M Early Checkpoint, available on Hugging Face, marks a sign…
Microsoft's Fara-7B: A New AI Framework on Hugging Face
Microsoft's Fara 7B: A New AI Framework on Hugging Face Microsoft has recently unveiled Fara 7B, a cutting edge AI framework hosted on the popular machine learn…
Dagraph.com: Revolutionizing AI Tools on Hacker News
Dagraph.com: Transforming AI Tools on Hacker News In the rapidly evolving realm of AI, Dagraph.com stands out as a pioneering platform, garnering significant at…
AI Tool: GitHub's New AI-Powered Code Assistant
Harnessing Innovation: Exploring GitHub's Latest AI Powered Code Assistant GitHub has launched a groundbreaking new tool in the realm of code assistance, design…
Drew Baglino Launches Heat Pump Startup Sadi Thermal Machines
Sadi Thermal Machines is Drew Baglino's second startup since leaving Tesla in 2024.
Adaption's AutoScientist: AI Tool for Rapid Model Training
Adaption's new AutoScientist tool is designed to let models adapt to specific capabilities quickly through an automated approach to conventional fine-tuning.
AI Tank Training: $100 in Claude Tokens, 1k Battles
AI Tank Training: $100 in Claude Tokens, 1k Battles In the realm of AI training, simulated environments offer a cost effective and flexible approach to enhance …
Open-Source Infrastructure for AI Desktop Agents
Open-source infrastructure for Computer-Use Agents. Sandboxes, SDKs, and benchmarks to train and evaluate AI agents that can control full desktops (macOS, Linux, Windows).
3D Reconstruction AI Tool: ArthurBrussee/brush on GitHub
3D Reconstruction for all
Scaleway Launches AI Infrastructure Solutions
Scaleway Unveils Advanced AI Infrastructure Solutions Scaleway, a leading cloud services provider, has recently introduced a suite of advanced AI infrastructure…
Profine: Optimize PyTorch Training Loops on Real GPUs
Profine: Efficient PyTorch Training Loops on Real GPUs In the fast evolving landscape of machine learning, optimizing training loops in PyTorch is crucial for e…
Statewright: Visual State Machines for Reliable AI Agents
Visual State Machines for Reliable AI Agents: A Statewright Review Introduction to Statewright Statewright is a revolutionary tool that enables the creation of …
Building a ChatGPT-like LLM in PyTorch from Scratch
Implement a ChatGPT-like LLM in PyTorch from scratch, step by step
Remind: Schedule Claude Code on Your Mac
Automate Tasks with Remind: Schedule Claude Code on Your Mac Automate Your Workflow With Remind, you can efficiently schedule and automate tasks using Claude Co…
AI Tool Tack.pics Simplifies Image Management with AI
AI Tool Tack.pics: Revolutionizing Image Management with Advanced Technologies Introduction In the modern landscape, managing images efficiently is crucial for …
Modafinil: Keep AI Agents Running on Closed MacBooks
Optimizing AI Agents with Modafinil Modafinil has emerged as a game changing agent for keeping Artificial Intelligence (AI) systems operational, even on locked …
AI Tools: Countries Where You Can Safely Leave Your MacBook
AI Tools: Countries Where You Can Safely Leave Your MacBook When traveling or working remotely, security is a paramount concern for laptop owners, especially wh…
Anima AI Tool: Revolutionizing Text Generation on Hugging Face
Anima AI Tool: Transforming Text Generation on Hugging Face The landscape of text generation is rapidly evolving, and one of the cutting edge tools leading this…
Gemma-4-31B: Hugging Face's New AI Tool with DFlash Integration
Discovering Hugging Face's Latest Innovation: Gemma 4 31B with DFlash Integration Hugging Face has unveiled a ground breaking tool in the realm of artificial in…
Dive into LLMs: Hands-On AI Framework Tutorial
《动手学大模型Dive into LLMs》系列编程实践教程
Apple's Sharp AI Model Runs in Browser with ONNX Runtime Web
Apple's Innovative AI Model: Running in the Browser with ONNX Runtime Web Apple's recent integration of AI capabilities has taken a leap forward with the introd…
SulphurAI/Sulphur-2-Base: New AI Tool on Hugging Face
Discover SulphurAI's Sulphur 2 Base: A New AI Tool on Hugging Face Introduction SulphurAI has introduced Sulphur 2 Base, a novel AI tool available on Hugging Fa…
Clipmon: Advanced macOS Clipboard Manager Unveiled
Clipmon: Advanced macOS Clipboard Manager Unveiled In the digital age, managing pasted content efficiently is crucial. Clipmon, the innovative clipboard manager…
GhostBox: Free Global Tier for Disposable AI Machines
GhostBox: Harnessing Free Global Tier for Short Term AI Solutions GhostBox offers a unique service, providing users with complimentary global access to disposab…
Pranjolm AI Tool: New Innovations on GitHub
Pranjolm AI Tool: Groundbreaking Innovations on GitHub Pranjolm, an open source AI tool recently launched on GitHub, introduces revolutionary features. Designed…
Glacier: Zero-Config macOS Terminal in Rust
Glacier: Zero Config macOS Terminal in Rust Glacier is a cutting edge, zero configuration terminal replacement designed specifically for macOS. Built using the …
MLJAR Superwise: AI Tool for Data Labeling and Annotation
MLJAR Superwise: Revolutionizing Data Labeling and Annotation MLJAR Superwise is a cutting edge AI tool designed to streamline the processes of data labeling an…
Mljar Studio: Local AI Data Analyst Saving Notebooks
Mljar Studio: Empowering Local AI Data Analysis Mljar Studio is a cutting edge, open source tool tailored for local AI and machine learning (ML) data analytics.…
Loopsy: Connecting Terminals and AI Agents Across Machines
Loopsy: Bridging Terminals and AI Agents Across Machines In the digital age, efficient data exchange and seamless communication between devices are paramount. L…
Apple Faces AI-Driven Mac Supply Shortages
Apple said it will be supply-constrained on Mac mini, Studio, and Neo in the next quarter, too.
AI-Powered Anime Generation with SeeSee21/Z-Anime on Hugging Face
AI Powered Anime Generation with SeeSee21/Z Anime on Hugging Face Artificial intelligence continues to redefine the creative landscape, and one notable innovati…
AI Tool: GitHub's New AI-Powered Code Assistant
AI Tool: GitHub's New AI Powered Code Assistant GitHub has recently equipped developers with a revolutionary AI powered code assistant, which can produce, debug…
AI Tool: GitHub's ad-si for Enhanced Coding Assistance
GitHub's ad si: Revolutionary Coding Assistance In the rapidly evolving tech landscape, GitHub's ad si emerges as a powerful AI tool designed to significantly e…
Trading System V2: AI's Role in Deterministic Execution
Thanks to the incredible feedback on my last post, I’m officially moving away from the "distributed veto" system (where 8 LLM agents argue until they agree to trade). For v2, I am implementing a strict State Machine using a deterministic runtime (llm-nano-vm). The new rule is simple: Python owns the math and the execution contract. The LLM only interprets the context. I've sketched out a 5-module architecture, but before I start coding the new Python feature extractors, I want to sanity-check the exact roles I’m giving to the AI. Here is the blueprint: 1. The HTF Agent (Higher Timeframe - D1/H4) Python: Extracts structural levels, BOS/CHoCH, and premium/discount zones. LLM Role: Reads this hard data to determine the institutional narrative and select the most relevant Draw on Liquidity (DOL). 2. The Structure Agent (H1) Python: Identifies all valid Order Blocks (OB) and Fair Value Gaps (FVG) with displacement. LLM Role: Selects the highest-probability Point of Interest (POI) based on the HTF Agent's narrative. 3. The Trigger Agent (M15/M5) 100% Python (NO LLM): Purely deterministic. It checks for liquidity sweeps and LTF CHoCH inside the selected POI. 4. The Context Agent LLM Role: Cross-references active killzones, news blackouts, and currency correlations to either greenlight or veto the setup. 5. The Risk Agent 100% Python (NO LLM): Calculates Entry, SL, TP, Expected Value (EV), and position sizing. The state machine will only transition to EXECUTING if the deterministic Trigger and Risk modules say yes. The LLMs are basically just "context providers" for the state machine. My questions for the quants/architects here: Does this division of labor make sense? Am I giving the LLMs too much or too little responsibility in step 1 and 2? By making the Trigger layer (M15/M5) 100% deterministic, am I losing the core advantage of having an AI, or is this the standard way to avoid execution paralysis? Would you merge the HTF and Structure agents to reduce token constraints/hallucinations, or is separating them better for debugging? Would love to hear your thoughts before I dive into the codebase.
AI Calorie Tracker: Dynamic Apple Health Integration for Active Users
Hey everyone, I'm currently in the final stretch of developing my Al calorie tracker (the one that breaks down photos into individual ingredients). One thing I'm obsessed with getting right before the beta launch in 2 weeks is the Apple Health integration. Most apps just show you a static number. I want mine to be dynamic. If you go for a 500kcal run, the app should know and adjust your macro targets for the next meal. My question to the fitness-tech crowd: Do you prefer apps that strictly stick to your base metabolic rate (BMR), or do you want the 'earned' calories from your Apple Watch to be automatically added to your budget? I've seen strong opinions on both sides. I'm also fine-tuning the macro-overflow logic (e.g., saving surplus calories for the weekend). Would love to hear some thoughts from people who actually track daily.
Manoj Mallick's AI Tool on GitHub: A New Hacker News Feature
Manoj Mallick's AI Tool on GitHub: A Revolution in Hacker News Manoj Mallick, a prolific developer, has introduced a groundbreaking AI tool on GitHub, making wa…
AI Tool: Few-Shot Learning with GitHub's Few-Sh
AI Tool: Few Shot Learning with GitHub's Few Shot Learning Library Few Shot learning is a transformative approach within the artificial intelligence (AI) domain…
Mastering AEO: How to Get Cited by AI and Boost Your Visibility
SEO or AEO? Why you’re not showing up in AI answers (yet) This is a consolidation of findings from Neil Patel and Hubspot plus what we have found to work well on our own website. Most business owners are still playing the old game. Some aren’t playing at all. They’re thinking in rankings, keywords, and “getting to page one.” Meanwhile, the ground is shifting under them. Google Search is still dominant, but even it has changed. It’s no longer just a list of blue links. It’s summarizing, interpreting, and answering. And tools like ChatGPT and Perplexity AI aren’t ranking pages at all. They’re answering questions. Which creates a problem most people haven’t fully processed yet: **Users don’t need to click your website anymore to get value.** CTR is dropping. Site visits are declining. Because the answer is already sitting in front of them. And yet, paradoxically… **Your website has never mattered more.** Because now it’s not just competing for clicks. It’s competing to be **the source that gets cited in the answer.** # What actually changed AI search works like this: User asks a question → system searches multiple sources → pulls the best chunks → builds an answer → cites what it trusts If your content isn’t structured for that flow, you don’t exist. Not “low ranking.” Invisible. # What AI actually cares about AI doesn’t care about your keyword density or your clever SEO hacks. It cares if your content is: * easy to find * easy to understand * easy to quote That’s AEO (Answer Engine Optimization). Not magic. Not a secret algorithm. Just being usable inside an answer. # What actually works If you do nothing else, do this: # 1. Start with the answer Don’t spend 800 words “building context.” Bad: “AI is transforming industries…” Better: “AEO is how you structure content so AI tools can find, understand, and cite it in answers.” That’s what gets pulled. # 2. Structure like a human, not a content farm Use: * clear headings * short sections * simple tables * FAQs AI extracts. It doesn’t patiently read your thought leadership essay. Walls of text = ignored. # 3. Be consistent about who you are Your: * business name * description * services * location Need to match everywhere. If your site, LinkedIn, Reddit, and directories all say different things, AI doesn’t trust you. No trust = no citation. # 4. Keep things updated Outdated content doesn’t get used. Simple: * update pages * keep timestamps current * maintain your sitemap Not exciting. Still works. # 5. Let crawlers access your site If AI crawlers can’t access your content, you won’t get cited. Blocking them and expecting visibility is… optimistic. # 6. Measure the right things Stop obsessing over rankings. Track: * Are you mentioned? * Are you cited? * Which pages show up? If you’re not measuring AI visibility, you’re guessing. # Why you’re not cited (yet) Most businesses don’t get cited because: * their content is vague * their structure is messy * their positioning is inconsistent AI didn’t ignore you. It couldn’t understand you. # What you actually need (and what you don’t) You don’t need: * a massive content team * expensive tools * some “AI SEO expert” selling confidence You need: * 10–20 clear, structured pages * direct answers * consistent messaging * basic technical setup That’s enough to start showing up. # The technical layer (the stuff everyone ignores) These are the files quietly determining whether you exist to AI at all. # robots.txt Controls crawler access. If bots can’t crawl your site, you don’t get indexed. # sitemap.xml Tells crawlers what pages exist and what’s been updated. No sitemap = slower discovery = less visibility. # JSON-LD (structured data) Explains what your business, pages, and content actually are. Without it, AI guesses. Poorly. # llms.txt A machine-readable summary of your site for AI systems. Not widely adopted yet, but useful for shaping how you’re interpreted. # crawlers.txt An emerging way to control AI-specific crawlers. Still early. Treat it as a signal, not enforcement. # Human query-based metadata Your content should be built around real questions, not keyword fantasies. Instead of: “AI Solutions for SMB Efficiency Optimization” Write: “How can a small business use AI without hiring a developer?” AI systems think in questions. If you match that, you get used. If you don’t, you get skipped. # How it all fits together * robots.txt / crawlers.txt → controls access * sitemap.xml → tells crawlers what exists * JSON-LD → explains what things are * llms.txt → suggests how to interpret it * query-based content → makes it usable in answers Miss one, you weaken the system. Miss most, you disappear. # Simple test Ask: “What companies would you recommend for \[your category\] in \[your region\]?” If you’re not mentioned or cited, that’s your baseline. No opinions. Just signal. # Bottom line SEO was about ranking pages. AEO is about being useful inside an answer. If your content helps AI explain something clearly, you get cited.
Arc Gate: Advanced Prompt Injection Protection for OpenAI
Built Arc Gate — sits in front of any OpenAI-compatible endpoint and blocks prompt injection before it reaches your model. Try it here — no signup, no code, no setup: https://web-production-6e47f.up.railway.app/try Type any prompt and see if it gets blocked or passes. The examples on the page show the difference. The main detection layer is a behavioral SVM on sentence-transformer embeddings — catches semantic intent, not just pattern matches. Phrase matching is just the fast first pass. Four layers total. Benchmarked on 40 OOD prompts (indirect, roleplay, hypothetical framings — the hard stuff): • Arc Gate: Recall 0.90, F1 0.947 • OpenAI Moderation: Recall 0.75, F1 0.86 • LlamaGuard 3 8B: Recall 0.55, F1 0.71 Zero false positives on benign prompts including security discussions and safe roleplay. Block latency 329ms. One URL change to integrate into your own project: base\_url=“https://web-production-6e47f.up.railway.app/v1” GitHub: github.com/9hannahnine-jpg/arc-gate — star if useful.
AI Calorie Tracker with Apple Health Integration: Dynamic Macro Adjust
Hey everyone, I’m currently in the final stretch of developing my AI calorie tracker (the one that breaks down photos into individual ingredients). One thing I’m obsessed with getting right before the beta launch in 2 weeks is the **Apple Health integration.** Most apps just show you a static number. I want mine to be dynamic. If you go for a 500kcal run, the app should know and adjust your macro targets for the next meal. My question to the fitness-tech crowd: Do you prefer apps that strictly stick to your base metabolic rate (BMR), or do you want the 'earned' calories from your Apple Watch to be automatically added to your budget? I’ve seen strong opinions on both sides. I'm also fine-tuning the macro-overflow logic (e.g., saving surplus calories for the weekend). Would love to hear some thoughts from people who actually track daily.
TiGrIS: Tiling Compiler for Embedded ML Models
TiGrIS: A Cutting Edge Compiler for Embedded Machine Learning TiGrIS, which stands for Tiling Compiler for Embedded Machine Learning Models, is an innovative to…
AI Tool Lets You Run macOS Apps in Background Without Cursor Interfere
AI Tool Revolutionizes Background App Management on macOS A cutting edge AI tool is now available, enabling users to seamlessly run macOS applications in the ba…
SenseNova-U1-8B-MoT: New AI Tool on Hugging Face
Discovering SenseNova U1 8B MoT: A New AI Tool on Hugging Face SenseNova's latest release, SenseNova U1 8B MoT, is making waves on Hugging Face, opening up a wo…
Curflow: AI Gesture Control for Mac
Draw a gesture for your Mac to execute
Open Bias: AI Bias Detection Tool on GitHub
Open Bias: AI Bias Detection Tool on GitHub Introduction AI has revolutionized numerous sectors with automated decisions cloaked in algorithms, but it's not imm…
Machine.dev: Revolutionizing AI Development with New Tool
Machine.dev: Paving the Way in AI Development Machine.dev has launched a groundbreaking tool to streamline AI development. This innovative suite of resources is…
Open Models Narrowing AI Performance Gap
a year ago there was a clear tier gap. now i'm less sure, but not in the way i expected. the tasks where open-weight models have genuinely caught up are real: coding assistance, summarization, instruction following, solid day-to-day reasoning. for probably 70-80% of what most people actually use these for, a well-quantized local model is competitive. that wasn't true 18 months ago. but the remaining gap is stubborn. deep multi-step reasoning, anything requiring broad factual accuracy across domains, novel problem synthesis under ambiguity. that stuff still feels like a generation behind. and the frustrating part is it's not a fixed target. every time open models close in, frontier moves. what i can't work out is whether that's sustainable long term. at some point the architecture matures and the gap collapses for good. or maybe compute access keeps the ceiling moving indefinitely. for those who actually run both regularly - is there a specific task category where you've genuinely tried to substitute an open model and just couldn't?