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@arryakhadi

Automating the boring part

Katılım Kasım 2014
769 Takip Edilen849 Takipçiler
HoodCatZ
HoodCatZ@HoodCatZNFT·
WL APPLICATION IS LIVE. Apply now: hoodcatz.xyz Applications won’t stay open for long.
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AK@arryakhadi·
@NesoArts_NFT 0x2D331DEDFABc3B46Df6Bed7acC9E8687D912Bab2
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NESO
NESO@NesoArts_NFT·
First Graffiti Art Collection on Robinhood 💚 Unique Graffiti Art dating from 2002-2026 ! Each NFT will be tied to its IRL location ! GTD applications are now open: nesoarts.xyz Apply through our website and drop your EVM below for GTD spot 💚
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GE
GE@GuarEmperor·
Most hype mint this week @just_t00ns Mint Price : $17 Mint date : 20 July Supply : 5K @Frag_Growth Mint Price : $35 Mint date : 16 July Supply : 1600 you all get wl?
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AK@arryakhadi·
@iniheksa Farming launch enak kalau LP depth beneran tumbuh, kalau cuma narik exit liquidity ya ujungnya sama aja
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AK@arryakhadi·
@remotesimple Ini tipe repo yang harus dibaca pelan, sekali salah setting range LP bisa jadi pelajaran mahal
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AK@arryakhadi·
@wisenergynoah Feels like a good shift for small accounts, but only if mutual visibility rewards real niche conversations
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AK@arryakhadi·
@zksrzkshmr Bedanya sekarang bungkusnya lebih tradfi, tapi loop insentifnya tetap mirip banget sama BSC era reward token
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zksrzkshmr
zksrzkshmr@zksrzkshmr·
Banyak bermunculan dividend paying tokenized stocks token di Robinhood. 😂😂 Ingat BSC tahun 2021? Dividend paying token saat itu (menurutku) salah satu meta terbesar di BSC setelah era farms LP v2 dan auto liquidity. Waktu itu hampir setiap hari muncul token baru dengan ciri khas embel² "Earn BUSD while holding *****" atau "Hold ***** Get BUSD every ** minutes" dsb. Kebanyakan dividendnya dibayar pake BUSD, tapi ada juga yg pake CAKE, BTCB, ETH, DOGE, ADA, dll. Mekanismenya sederhana. Si Token tsb dibuat dengan mengenakan tax fee tx (ex 10%–20% bahkan lebih), lalu sebagian fee nya dibagikan sebagai dividend kepada holder. Konsep passive income ini bener² disukai banget, tapi banyak juga yg fomo beli bukan karena utilitasnya, melainkan untuk mendapatkan dividend perjam bahkan permenit. Beberapa projek yg cukup dikenal saat itu (menurutku) HODL Token (salah satu paling viral dengan reward BNB/BUSD). Lalu ada BabyCake dengan reward token CAKE. Ada juga BabyBTC, BabyETH, BabyADA, dan ratusan token lain dengan konsep serupa (Baby Baby Baby). Pada puncaknya, banyak token yg mencapai MCAP puluhan hingga ratusan juta USD. Launch baru sering kali habis diborong dalam hitungan menit. Hampir semua developer mencoba membuat "reward token" versi mereka sendiri. Namun hype tsb akhirnya mereda karena beberapa faktor. - Banyak projek copas. - Banyak rug pull + scam. - Tax fee tx tinggi membuat aktivitas swap menurun. - Dividend yg diterima holder ikut mengecil ketika vol tx menurun. Dan sekarang mulai bermunculan dividend paying tokenized stocks token di Robinhood. De javu buat yg pernah melewati era BSC 2021. 🤣🤣 Bedanya dulu narasinya dividen paying pake crito, sekarang bergeser jadi dividend paying pake tokenized stocks token, sehingga terasa lebih dekat dengan dunia aset tradisional. Intinya "Siapa cepat dia dapat. Siapa telat dia rungkat". Gimana menurutmu? ERC-1726 (2019), inspired by PoWH3D (2018).
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AK@arryakhadi·
@GuarEmperor This is exactly why checking the calldata matters, UI can say bridge while tx is just a transfer
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GE
GE@GuarEmperor·
Just reminder people Many bridge scammers on ARC If you see a lot of Bridge Arc links on your timeline, be sure to check the frontend and also make sure sending to the contract not address EOA. These scammers typically use the Pair usdc ETH/Base via Circle CCTP and they say “we’re using CCTP Arc” this larp Example like this (check pict): Frontend bridgeappARC (web example) call contract USDC: - Ethereum USDC: 0xA0…. - Base USDC: 0x83…. - Function call: transfer(to, value) - to fixed: 0x5d…. so if u click bridge, wallet sign tx: USDC.transfer(0x5d…, amount) this fake not to contract but send addy scammer, fake and larp bridge router arc btw no one can bridge + all cctp on arc was blocked, for now only via OTC
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AK@arryakhadi·
@wallstengine Treasury first is a smart wedge. Retail payments get easier once the settlement rails already feel normal
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Wall St Engine
Wall St Engine@wallstengine·
JCB and Circle $CRCL signed an MOU to explore stablecoin payment collaboration. The companies will look at using USDC for cross-border treasury and payments, including a proof of concept for JCB’s internal fund transfers. They will also evaluate stablecoin-enabled in-store payments for merchants and international visitors in Japan.
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AK@arryakhadi·
@heymike This is the best way to learn it. Pick one annoying workflow, build a tiny tool, then iterate until it breaks less
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Mike E
Mike E@heymike·
A year ago I would've laughed in your face if you told me I'd be on a stage talking about building tools with AI. I'm a music marketing guy. Building tools is for software developers...right? I have never written a real line of code in my life lol. But somewhere along the way, I realized non-technical people also have the ability to build things on their own that they wish existed. Without oversimplifying it and exaggerating, all I do is literally describe what I want to an AI in plain English and it builds. That's it lol. Through repetition and going back and forth with it, I've learned some of the nuance of building my own tools: -How to prompt -What API keys are -How to store files -What a GitHub repository is -How to publish tools on forward-facing links automatically -What Vercel is I learned these things by exploring, experimenting, and going through the process... Watching YouTube videos and consuming content is great but the best way to learn is by actually doing! Here's how to start today: 1. Write down pain points in your daily work and pick one you'd like to solve with a tool or automation 2. Prompt Claude by telling it you are a non-technical user looking to build that tool in Claude Code and ask it to help you write the prompt for Claude Code. You can also tell it that it is an expert in whatever subject matter you are building 3. Copy that prompt and paste it into Claude Code 4. Go through the process...push it to debug, fix errors, work through glitches, etc. 5. Be specific with what you want and watch it build 6. Test, iterate, and test some more If you enjoyed this post...I talk about this and more insights on the music industry, AI, and creator economy every Thursday in my newsletter: heymikeworld.com/subscribe
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AK@arryakhadi·
@AskMichaelTaiwo The direct payment point is key. Audience is leverage, but the product is what makes it a business
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Michael Taiwo
Michael Taiwo@AskMichaelTaiwo·
The creator economy is now worth over 320 billion dollars, with more than 200 million people around the world calling themselves creators. Sounds like the greatest democratisation of opportunity in history. Then you read the distribution. Around 73 percent of them earn under thirty thousand dollars a year. Half earn under fifteen. So the creator economy is not one economy. It is a lottery with a tiny number of enormous winners and a vast crowd funding the show with their unpaid attention and effort. The top skims almost everything. The long tail gets exposure, which does not pay rent. I am not against any of this. Building an audience is a real and valuable skill. But I watch young people quit stable paths to chase it, having only ever seen the winners, never the hundred million playing the same game with nothing to show. Survivorship bias is the most expensive lie on the internet. You see the person who made it and assume the path is reliable. You never see the identical effort that led nowhere, because failure does not post a highlight reel. The part I would tell my own child is simple. Treat content like a business, not a slot machine. A business has customers who pay you directly, a product, a margin you can name. If your entire plan depends on an algorithm deciding to bless you, you do not have a business. You have a hope with a ring light. The internet did democratise the chance to be seen. It did not democratise the money. It just moved the odds somewhere brighter, louder, and far more crowded than the job everyone told you to escape.
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AK@arryakhadi·
@0xyunss Paling kerasa itu trace per sesi, jadi agent berikutnya nggak perlu nebak konteks dari nol lagi
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yunus
yunus@0xyunss·
agent kalian udah canggih, tapi masih sering ngaco atau boros token? kemungkinan bukan masalah model-nya. tapi setup-nya yang kurang lengkap. Jamon Holmgren (founder Infinite Red) share sistem lengkap yang dia bangun untuk AI coding agent dan hasilnya viral karena sangat praktis. intinya: agent butuh ekosistem, bukan cuma prompt. beberapa komponen yang paling worth diadaptasi: AGENTS.md sebagai router file yang arahkan agent ke skill, doc, atau tool yang tepat berdasarkan task. bukan semua context di-load dari awal. worksheet / trace per sesi. setiap run agent menghasilkan log apa yang dilakukan. kalau gagal di tengah, agent lain bisa lanjut dari sini. ini yang bikin continuity jalan tanpa harus mulai dari nol. cross-agent review dengan persona berbeda bukan model yang sama review hasilnya sendiri. pakai agent lain dengan role spesifik: security reviewer, performance expert, maintainability checker. self-healing docs. docs yang agent update sendiri saat ada perubahan. makin lama, makin ngerti konteks project kalian. quality gates otomatis. agent run app, test, dan fix issue sendiri. bukan cuma generate kode terus selesai. yang menarik dari setup ini: Jamon bangun semua ini sambil punya 4 anak, bisnis, dan main hockey. artinya ini achievable bukan cuma buat tim besar. dari semua ini, mana yang belum kalian implementasikan di workflow agent kalian?
Jamon@jamonholmgren

I'm just going to dump my whole agentic setup out here, because I see too many people missing giant chunks of this and it's hurting them. Here's what I have and recommend: 0. an AGENTS.md that is a router -- it sends the agent to the right skills, docs, tools 1. a standard workflow doc/skill customized to my needs ... (grab Matt Pocock skills if you don't already have something) ... I tag this in most sessions with `@/AGENT_WORKFLOW.md` and it pulls it in. 2. self-healing docs for every system, and agents are instructed to keep them updated ... I tag the ones I know I need, or let the agent find them through AGENTS.md ... I also provide a more detailed summary in the first 7 lines of every doc, so they're easily greppable to find the right thing, and this is documented in AGENTS.md 3. agents always run the app ... the agent should always actually run the app itself, and test its work and fix issues as it goes, especially if running autonomously / asynchronously 4. end-to-end tests and instructions to write more and keep up to date, and docs on how to write tests, what to avoid, and a list of all the tests and what they test in yet another markdown doc ... write and run targeted tests during implementation, improve and commit with work 5. custom linters at precommit hooks looking for any problems you run across, with `--fix` fixing the problems automatically, OR if that's not feasible, it shells out to a cheaper LLM like Composer 2.5 or Sonnet to fix the problems -- NOT just flagging them, but actually resulting in cleaned code 6. cross-agent review at each major point: research, plan, implementation, and wrap-up. I mean codex, claude, cursor, whatever -- but it shouldn't be the same model reviewing the same code. And specific docs for agent review, what to look for, how to approach it. Also, personas -- looking at the code from different perspectives, such as maintainability, code quality, security, performance, AI smells, domains (e.g. "financial services expert" or whatever) ... and each persona also "owns" a set of system docs too and keeps them up to date 7. agent traces / worksheets that track what the agent is doing each session. if the agent fails partway through, you should be able to hand this worksheet to another agent and it could finish the job. commit this worksheet with the work so it's all connected and easy to reference later (you will reference these later!!), also have the agent apply git tags that correspond to specific worksheet names so they're easy to find 8. automatic agent feedback to you at the end of the session, added to a doc that is also committed with the work, that you periodically ingest into an interactive session and improve your workflows 9. a tools or bin folder that contains python or bash scripts that the agent has skills to make to make its job easier (for example, I have an `agent_review` bash script that lets the agent kick off agent reviews via CLI without knowing each agent's particular incantations) ... docs on how to make scripts effectively, and instructions to constantly build these out more 10. periodic agent sweeps through recent commits, looking for problems / gotchas from a higher level across commits 11. a coding conventions doc that is just for specific coding conventions you want to see in the code base, your review agents use these a lot (but a lot of this should be in linters) 12. an agent loop / night shift skill for autonomous work, that lays out how the agent is to approach this, from an orchestration standpoint 13. a task queue that is accessible to the agent (mine is just a TODOS.md, but yours might be in Linear etc, with a CLI to fetch via API) 14. a periodic false-confidence test audit skill that looks for tests that aren't actually testing what you think they're testing, and that fix those 15. visual regression tests -- take screenshots, compare via tool and with agent visual review, commit with work (git lfs useful here) or at least push into the PR 16. automatic performance benchmark tests that notice when performance degrades 17. performance profiling tools that can be used by agents for targeted benchmarking, trying new techniques, comparing outputs, and comparing profiles 18. end-of-shift full validations, including running all tests, performance, agent reviews, sweeps, everything -- when you return, it's all as pristine as it can be If you have all this, your agentic coding experience is going to be very different than dry prompting and manually guiding it toward the right thing every time.

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AK@arryakhadi·
@svpino The hard part is admitting a boring workflow beats a fancy agent for most production tasks
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AK@arryakhadi·
@SciTechera Continual learning is the key phrase here. Agents that improve after deployment would change the whole product cycle
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SciTech Era
SciTech Era@SciTechera·
This is game changing for Agentic future! "Richard Sutton, the father of Reinforcement Learning and Turing Award winner, has launched Oak Lab to pursue a radically different path toward AGI." "Their long-term goal is a trillion-parameter AI agent that can learn continuously, plan in real time, and operate on just 20 watts of power, roughly the energy consumed by the human brain." "Instead of today's AI models that stop learning after training, Oak Lab aims to build agents that improve from experience throughout their lifetime, combining continual learning, world models and reinforcement learning into a new AI architecture." Acceleration is everywhere!
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AK@arryakhadi·
@wallstengine Japan is becoming a strong testbed for stablecoin payments. Card networks exploring treasury first feels like a practical entry point
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AK@arryakhadi·
@_vmlops Semantic Kernel is useful because it treats agents like software components. The hard part is still evals and reliability in real workflows
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Vaishnavi
Vaishnavi@_vmlops·
MICROSOFT'S SEMANTIC KERNEL: THE SDK BEHIND ENTERPRISE AI AGENTS what it does: → model-agnostic sdk for building ai agents → connects to openai, azure openai, huggingface, nvidia and more → supports python, .net, and java → plugin ecosystem with mcp support → vector db integrations across azure ai search, elasticsearch, chroma worth knowing: it's now evolved into microsoft agent framework (maf), the enterprise successor built for multi-agent orchestration at scale. source: github.com/microsoft/sema…
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AK@arryakhadi·
@devops_nk The payout is just feedback. The durable asset is trust around a niche people can actually remember you for
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Nandkishor
Nandkishor@devops_nk·
Getting monetized on 𝕏 today is much harder than it was 6 months ago because so many people trying. When I started focusing on 𝕏 6 months ago, the ecosystem was completely different. - Less competition. - More valuable content. - People genuinely wanted to build a personal brand by sharing useful insights. Today, I see many new creators joining 𝕏 with only one goal: getting monetized. Every day it's: - Let's connect. - Engagement farming. - Follow-for-follow. - Posting anything just to get impressions. > Nikita also mentioned If your only goal is the payout, you're missing the biggest opportunity this platform offers. > Build your brand around one niche. Become someone people trust and learn from. > Brands don't look for creators who only post about views, followers, what they ate today, or random viral content. > They look for subject matter experts who consistently add value and have built credibility in their niche. 𝕏 can give you much more than monetization: - Paid collaborations - Freelancing opportunities - Consulting - Clients - Speaking opportunities - A strong personal brand The monthly payout is just one income stream. Note: This post is for people who want to stay on 𝕏 for the long term, not those who are only chasing their first monetization payment.
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AK@arryakhadi·
@0xhbam This is the right direction for agents. Give them domain tools and repeatable workflows, not just a bigger prompt
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Himanshu Bamoria
Himanshu Bamoria@0xhbam·
We launched Goose Ads Remixer on Product Hunt today. AI agents are becoming coworkers that run growth. Claude Code, Codex, Cowork are powerful orchestrators that can already run your Meta ads end to end. They just need the right tools and skills. That's why we built Goose Ads Remixer. Give it to your agent: npx gooseworks install --all Then run: /goose-ads make ads for my brand These skills teach your agent how to: 1. Research your brand – products, logo, assets, language 2. Identify the hooks, offers, and layouts winning in your niche 3. Generate on-brand creatives from proven templates 4. Analyze your Meta account and tells you how to improve Your first 10 generations are free, and everything is 50% off until tomorrow. Link in comments.
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