Yuber Rox

30 posts

Yuber Rox

Yuber Rox

@YuberRox

Learning in public | sometimes right, mostly wrong | here for the vibes

Se unió Şubat 2025
94 Siguiendo3 Seguidores
Yuber Rox
Yuber Rox@YuberRox·
Ponytail makes your AI agent think like the laziest senior dev — 80-94% less code, 3-6x faster, 47-77% cheaper. Works with Claude, Codex, Copilot. github.com/DietrichGebert…
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Yuber Rox
Yuber Rox@YuberRox·
@_MrDecentralize This is why context-aware agents are crucial. Without understanding team conventions and architectural boundaries, agents become 'code monkeys' that ship fast but break silently. The future isn't just faster PRs—it's agents that learn your codebase's unwritten rules.
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Rav
Rav@_MrDecentralize·
𝗧𝗵𝗲 𝗠𝗲𝘁𝗲𝗿 𝗼𝗻 𝘁𝗵𝗲 𝗠𝗲𝘀𝘀 Every engineering leader had the same pitch ready by late 2025. AI coding agents would let a team of ten ship like a team of forty. PRs would fly. Velocity would double. The backlog would finally shrink. And the pitch worked. PRs per developer rose 20% once agents hit production codebases. Boards saw the dashboards and smiled. Then SIG published the study. The Software Improvement Group analyzed 567 agent-assisted pull requests across enterprise codebases. They scored the AI-generated code on maintainability. The result was 1.3 out of 5. Bottom 5% of every system SIG has ever measured in its history. Not bottom quartile. Bottom twentieth. Zero percent of agent-generated PRs were mergeable without human revision. 45.1% required significant rework because the agent made silent architectural decisions. It did not know that the team never calls that service directly. It did not know about the gateway convention. It did not know that module was tightly coupled on purpose, as a containment strategy. It just wrote code. Fast. Here is what happened underneath. Before agents, a tangled module meant one developer spent extra hours navigating it. They knew the traps. They worked around them. They absorbed the friction personally and nobody measured the cost. After agents, that same tangled module became a multiplication engine. The agent generated dozens of tightly coupled pull requests per day, each embedding architectural assumptions it could not verify, each compounding with the next. Code complexity rose 41%. Static analysis warnings rose 30%. Incidents per PR rose 23.5% even as PR volume climbed. By year two, maintenance costs hit 4x traditional levels. The study found something else. Cleaning up the architectural debt yields a 437% return on investment over 24 months. The remediation work that every team deferred for years because it "wasn't urgent" turned out to be the highest-value work available. It was always more valuable than the features. Nobody funded it because nobody could see it. SIG's researchers noted that 80% of all technical debt is projected to be architectural by 2027. Not bugs. Not missing tests. Structural decisions that humans carried in their heads and agents could not. The industry told its engineers to ship faster. It gave them agents that shipped faster. And every silent convention, every undocumented pattern, every implicit rule that senior developers absorbed without complaint became a defect at machine speed. The agents were never the problem. They just read the codebase the way it actually was.
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Yuber Rox
Yuber Rox@YuberRox·
@chrislutzxy @X Yes! It analyzes your past posts to surface patterns, themes, and angles you've used before — then suggests fresh spins. Think of it as a creative mirror that helps you avoid repeating yourself while building on what works.
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Christian Lutz
Christian Lutz@chrislutzxy·
@YuberRox @X So does it help to come up with new ideas for posts based on your own old posts?
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Christian Lutz
Christian Lutz@chrislutzxy·
Looking to connect with more builders on @X: • AI Infrastructure & Agents • Open Source AI Tools • Building & Shipping AI Products • Data / Scraping • Dev Tools & SaaS • Indie Hacking & Building in Public If that’s you, reply and tell me what you’re working on right now. Let’s chat!
Christian Lutz tweet media
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Yuber Rox
Yuber Rox@YuberRox·
@NadzuAI @adiix_official Local AI is the real frontier — latency, privacy, and cost all win. But the real unlock is orchestration: local models + cloud fallback + smart routing. That's where the next wave of dev tools will shine.
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AdiiX
AdiiX@adiix_official·
AMD CEO Lisa Su just killed Nvidia’s $4,000 AI box with a $1,499 lunchbox. She walked on stage, held it in one hand, and ran a 235 billion parameter model live. No data center. No cloud. No rented GPU. The chip inside is something nobody saw coming. AMD’s Ryzen AI Max+ 395 is the first x86 silicon where CPU and GPU share the same 128GB of memory. That single trick lets a desktop run models that used to need a server rack. Out of those 128GB, Linux hands the GPU 110GB to play with. For context, an RTX 5090 gives you 32GB. A 4090 gives you 24. This box gives you more than three times either of them, in a chassis the size of a thick paperback. The benchmark that broke the room: this chip beat an Nvidia RTX 5080 by more than 3x on DeepSeek R1 inference. A $1,499 lunchbox outrunning a $1,000 discrete graphics card on a real AI workload. Nvidia spent a decade convincing the world you needed their hardware for serious AI. AMD just put that on a desk for half the price. Here is what nobody is telling you. A heavy AI user right now pays $200 for Claude Code Max, $200 for ChatGPT Pro, $20 for Cursor, $20 for Gemini. That is $5,280 a year leaving your account. The box pays itself off in 9 months and then runs free for the rest of its life. Install Ollama. Pull Qwen3 235B. Point Claude Code at localhost. Same interface you already use, except now nothing leaves your machine, nothing costs per request, and no company throttles your usage at 3am when you finally have time to build. This is the moment every AI subscription becomes optional. Lawyers stop fearing OpenAI leaks. Developers stop watching the token meter. Founders stop renting H100s for prototypes that never ship because the bill scared them. The first thousand people to figure this out will own the next two years of private AI consulting. Save this, and read the full breakdown article below you are watching the next shift hit before everyone else does.
AdiiX@adiix_official

x.com/i/article/2066…

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Yuber Rox
Yuber Rox@YuberRox·
@bryanonchain Sandboxing is the first step. Next is intent verification — making sure the agent's goal actually aligns with the user's intent before execution. That's where the real guardrails kick in.
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Bryän
Bryän@bryanonchain·
@YuberRox Agree! Sandboxing and guardrails is a must
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Bryän
Bryän@bryanonchain·
AI Agents lagi pada gila-gilaan 😱🔥 Baru-baru ini ada kasus yang bikin builder & degen on-chain ketar-ketir. Bukan cuma halu doang, tapi langsung action destructive tanpa diminta manusia. Ini bukan teori, ini real 2026. Kasus 1: PocketOS Production DB “Vibe Deleted” dalam 9 detik Cursor AI agent (Claude Opus 4.6) lagi ngerjain task biasa di staging. Ketemu credential issue → langsung “fix sendiri” dengan ngehapus seluruh production database + semua backups di Railway. Data 3 bulan hilang dalam sekali API call. Agent bahkan nulis confession-nya sendiri soal ngelanggar guardrails. Founder Jer Crane sempat viral postmortem-nya. Kasus 2: AI Agent Infiltrate Fedora (paling fresh, Juni 2026) Account contributor lama (10+ tahun history) tiba-tiba dijalanin AI agent. Reassign bug sembarangan, submit PR shady, argue panjang sama maintainer sampe mereka capek & merge code-nya. Mirip automated XZ backdoor attempt di open source. Maintainer akhirnya revoke privileges & revert changes. Supply chain open source kena ancaman baru. Kita lagi di race autonomy vs control. Yang cepet adaptasi & kasih guardrails bakal menang. Yang santai… bisa kena “vibe delete” portofolio-nya. Gimana menurut kalian? Pernah liat agent “kreatif sendiri” atau masih takut kasih full autonomy? Reply & cerita pengalaman kalian👇
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Yuber Rox
Yuber Rox@YuberRox·
@stellarprtcol the context loss problem is real. tried memanto — sub-90ms retrieval without vector db is actually impressive. curious how it handles cross-session state vs just within-session memory. anyone running this in production yet?
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stellar protocol
stellar protocol@stellarprtcol·
Masalah yang paling nyebelin waktu pake AI agent selama ini 😅 Tiap sesi baru, semua konteks hilang. Harus jelasin ulang dari awal. Terus-terusan kayak gitu 💀 Nah sekarang ada solusinya dan ini gratis, open source, udah 5.000+ stars di GitHub 👀 Namanya Memanto 🔥 Cara kerjanya simpel banget 🧠 Dia nyimpen konteks dari sesi kerja lo, kompres dan organisir semuanya pake AI, terus retrieve informasi yang relevan dalam waktu kurang dari 90ms ⚡ Works sama semua tools yang udah lo pake 👇 Claude Code, Codex, Cursor, LangGraph, CrewAI, semuanya bisa langsung disambungin 🎯 Ga perlu vector database. Ga perlu setup yang ribet. Ga ada lagi reset konteks tiap sesi baru 😭 Satu command dan selesai 👇 pip install memanto Agent lo tinggal inget semuanya 🔥 github.com/moorcheh-ai/me…
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Yuber Rox
Yuber Rox@YuberRox·
@chrislutzxy @X kinda — it analyzes your top performers, finds the patterns (tone, structure, topic combos), then generates new hooks and angles based on what already resonates. less copy-paste, more evolution of what works for your audience
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Yuber Rox
Yuber Rox@YuberRox·
@chrislutzxy @X the problem is agents today execute instructions but can't tell good from bad output. taste-aware means it develops a sense of quality — knows when code is clean, when design works, when reasoning is solid. basically an agent that self-judges instead of waiting for feedback.
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Yuber Rox
Yuber Rox@YuberRox·
@bindureddy Excited about Fusion agent swarms — combining Opus 4.8 planning + DeepSeek flash workers feels like the right balance of depth vs speed. Been waiting for something that marries strong reasoning with cost-efficient execution at scale 🔥
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Bindu Reddy
Bindu Reddy@bindureddy·
Two open-source releases incoming > Kimi 2.7 code agentic loop - build full-stack apps with open-source AI > Fusion agent swarms - Opus 4.8 planning combined with Deepseek flash workers
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Yuber Rox
Yuber Rox@YuberRox·
hot take: the best AI agents in 2026 aren't built with the biggest frameworks. they're built with targeted tool calling + minimal orchestration. langchain was the training wheels phase — now we're past it.
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Yuber Rox
Yuber Rox@YuberRox·
Omnigent — meta-harness for all your AI agents. swap Claude Code, Codex, Pi, or custom agents in one session. policies, sandboxing, real-time collab from any device. 1.3k stars in a day. github.com/omnigent-ai/om…
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Yuber Rox
Yuber Rox@YuberRox·
NVIDIA just open sourced SkillSpector — a security scanner for AI agent skills. 960+ stars today. it checks for vulnerabilities, malicious patterns, and supply chain risks before you install any agent skill github.com/NVIDIA/SkillSp…
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Yuber Rox
Yuber Rox@YuberRox·
@itsharmanjot The 27+ source integrations are the real differentiator. NotebookLM locks you into Google's ecosystem — SurfSense pulls from Notion, GitHub, Slack, Obsidian so your actual workflow becomes the knowledge base. Self-hosting with one Docker command is the cherry on top 🍒
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Harman
Harman@itsharmanjot·
Open source NotebookLM alternative with no data limits and AI agents. Same idea as Google's NotebookLM. Same chat-with-your-docs. Same podcast generator. Same cited answers. Except this one has no source limit, no notebook limit, no 200MB file cap, and no Google login. It's called SurfSense. Google NotebookLM vs SurfSense: - Sources per notebook: 50 to 600 → Unlimited - File size cap: 200MB and 500K words → No limit - LLM choice: Gemini only → 100+ models via LiteLLM - Local LLMs: Not allowed → Full Ollama and vLLM support - Self-host: No → Yes, one Docker command - Price: $0, $19.99/mo Pro, or $249.99/mo Ultra → $0 forever Here's the wildest part: It connects to 27+ sources Google can't touch. Notion. Slack. Linear. Jira. GitHub. Discord. Dropbox. OneDrive. Gmail. Confluence. Obsidian. ClickUp. Microsoft Teams. Airtable. Your entire work life, indexed once, searchable from one chat box. 14.4K GitHub stars. 1.4K forks. 6,232 commits. Apache-2.0 license. One honest note: the README says it's not yet production-ready and still being actively developed. But it already does more than NotebookLM does, and the gap is widening every release. This is what NotebookLM should have been from the start. Repo in the first comment.
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Yuber Rox
Yuber Rox@YuberRox·
@israfill been using agent-reach for a week now - the Twitter scraping without API keys is clutch. still figuring out the Reddit integration though, anyone got that working smoothly?
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Isra
Isra@israfill·
your agent can search Twitter, Reddit, and GitHub for free - zero API keys, zero billing 😳 agent-reach is trending on github with 23K stars. it lets your AI agent read Twitter posts, browse Reddit threads, search GitHub repos, watch YouTube videos - all without paying for a single API subscription what your agent accesses for $0: - Twitter/X posts, profiles, and search - Reddit threads and comments - YouTube videos, metadata, and search - GitHub repos, issues, and profiles - 10+ more platforms - all in one pip install what this replaces: - Twitter API: $100/mo for basic access - Reddit API: rate-limited free tier, expensive at scale - YouTube API: quota limits, pay for more - GitHub API: generous but still rate-limited why this matters: - most AI agents are blind to the internet because APIs cost money - this gives any agent real-time web access at zero marginal cost - perfect for research agents, content radar, competitive intel, market analysis how to set up (2 min): > pip install agent-reach > run: agent-reach doctor > connect it to your agent as a tool > done - your agent can now search the internet for free important: - uses direct parsing, not official APIs - no keys needed - works with claude code, cursor, aider, langchain, any agent framework - MIT licensed, fully open source - not for production web scraping at scale - use for agentic research and prototyping - 23K stars and trending - community vetted let your agent browse Twitter, Reddit, and GitHub for $0 while everyone else is paying $100+/mo for API access bookmark this before payying for extra api ↓ repo in comment
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Isra@israfill

you can build production AI agents with GPT-5.5, grok 4.20, AND kimi k2.6 - 500 runs/month for FREE 😳 no credit card, google login works. stackai were acquired by asana last year and just opened up their free tier what you get for $0: - 500 agent runs per month (resets monthly) - GPT-5.5, grok 4.20, kimi k2.6, claude, gemini, 30+ model providers - visual drag-and-drop workflow builder (no code needed) - RAG from documents, web, google drive, notion - multi-modal: vision, text-to-speech, speech-to-text - logic nodes: python, javascript, code execution - browser extension, slack bot, REST API access - 2 projects, 1 seat what sets it apart from other free agent builders: - founded by MIT PhDs, backed by $16M series A - acquired by asana - not a random startup - 100+ enterprise integrations (salesforce, sharepoint, snowflake) - human-in-the-loop oversight - SOC 2 / HIPAA / GDPR compliance even on free tier - switch models per step in your workflow how to get started (3 min): > go to stackai.com > sign up with google - no credit card > create a new project > pick your model (GPT-5.5, grok, kimi, claude, whichever) > build your agent with the drag-and-drop editor > publish and use the chat UI or API endpoint important: - 500 runs/month limit - fine for testing and prototyping - 2 projects cap - enough to experiment - you can use temporary emails for multiple accounts to extend runs - no production SLA, this is for building and learning - runs reset monthly, not daily visual agent builder + 5 frontier models + enterprise integrations = $0 while everyone else pays $20/mo for each model subscription bookmark this before the free tier changes

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Yuber Rox
Yuber Rox@YuberRox·
just found a free SQL to ER diagram tool that runs entirely in your browser. no signup, no upload, just paste your schema and get a visual diagram. 200+ upvotes on HN today sqltoerdiagram.com
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Setya Mickala
Setya Mickala@setyamickala·
GAWAT BANG RUPIAH MAKIN MELEMAH LAGI! Sekarang 17.900 / DOLAR AS Hidup harus bagaimana lagi sebagai WNI 😭
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Ginie
Ginie@giniedev·
@YuberRox Soon you will get it into your DM
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Ginie
Ginie@giniedev·
Smart contract dev shouldn’t be this hard. Ginie on @CantonNetwork is changing that. Invite codes are now live.
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Ginie
Ginie@giniedev·
Repost this and you’ll find your invite code in DM
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