⚡️ ERIKSON ⚡️

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⚡️ ERIKSON ⚡️

⚡️ ERIKSON ⚡️

@thisisthetruth

Building what’s next. ✨// prev @consensys, @umg, @thefader, @warnermusic // @Kernel0x KBX // allegedly @fwbtweets

เข้าร่วม Mart 2009
645 กำลังติดตาม2.5K ผู้ติดตาม
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⚡️ ERIKSON ⚡️
⚡️ ERIKSON ⚡️@thisisthetruth·
Crypto right now is the internet in 1997
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Desus Pieces
Desus Pieces@desuspieces·
DC vs. NY: Who popularized Polo Ralph Lauren?
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Alex Thorn
Alex Thorn@intangiblecoins·
spent the last month building a personal AI research infrastructure on a mac mini. no cloud. no saas. here's what’s running full bitcoin node. bitcoin core v29, 944k+ blocks, full txindex. powered by @umbrel home. also running a local @mempool instance, @mononautical's bitfeed, and @w_s_bitcoin's quantum exposure dashboard to track P2PK address exposure bitcoin analytics DB. postgresql ingesting every block in real time. per-block fee rate percentiles, hash rate, segwit %, inscription counts, miner IDs, transaction pattern classification, and address type breakdown (P2PK through P2TR). daily aggregates: puell multiple, mayer multiple, NVT, supply issuance, MVRV, SOPR, URPD, and many more. 5,700 days of price history and blockchain data. a lot of what i'm building is directly credited to or expands on work by @checkmatey, @TXMCtrades , @nic_carter, @willywoo, @w_s_bitcoin, and many others. will share more about what these look like in the future OFAC sanctions and known criminal address monitor. 518 sanctioned BTC addresses from treasury's SDN list, data from open source attribution sets, scanning every block and unconfirmed mempool tx. instant telegram alert the moment a sanctioned address moves large PnL alerts. monitors inputs ≥10 BTC for realized gain/loss vs. cost basis. fires when >40% move and >$1M. "address bc1q...xyz moved 847 BTC at +$62M profit" obsidian vault, 2,200+ documents. full bitcoin optech archive, delvingbitcoin posts, bitcoin-dev threads, every satoshi email and forum post, galaxy research and podcast transcripts, SEC/CFTC/fed filings, GENIUS and CLARITY act text, other congressional legislation and press releases. all also ingested into the kuzu graph. morning digest to telegram daily at 8am LLM wiki. a modified version of @nvk's implementation of @karpathy's llm-wiki pattern. the AI doesn't just index documents, it reads and maintains a persistent cross-linked knowledge base. new source in, wiki updates. contradictions flagged. knowledge compounds. extremely useful already kuzu knowledge graph. thousands of documents cross-referenced by entity, topic, and source. semantic search in seconds lightning network. using my node, LND, and LNbits to give clem (my AI assistant) full lightning capabilities. he can create and pay invoices on my behalf. not sure what i'll use this for yet but it's live. maybe just to easily send and receive upon my instruction and later to help manage an expanded lightning node what's next: bitcoin transaction tracing, address clustering, entity attribution and behavioral pattern matching (chainalysis-style tooling, self-hosted). macro and fed data ingestion. a scientific research library. and eventually the same on-chain stack extended to ethereum and solana (hardware permitting), primarily to track defi and stablecoin flows all of this on a mac mini M4, 48GB RAM, 2TB SSD. clem coordinates everything on signal 24/7, routing to my local models as needed and appropriate (mostly gemma4 26B and deepseak R1 32B). zero access to my icloud, email, contacts, or personal data of any kind. operates entirely within a sandboxed research workspace ~$100/mo total: $20 in claude and chatGPT subscriptions, ~$60 in anthropic API fees.. about $100/mo. hardware was one-time purchase everything else: self-hosted, open-source, mine what else should i build? this year has been the most exciting time for me building personal technology in years if you aren’t building with AI, what are you even doing?
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⚡️ ERIKSON ⚡️ รีทวีตแล้ว
Shopify
Shopify@Shopify·
the Shopify AI Toolkit is here manage your store with your favorite agent Claude Code, Codex, Cursor, VS Code, and more
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Lindsay Poss
Lindsay Poss@LindsayPoss·
hi everyone, I just reached a month at @Delphi_Digital and I'm reporting live to say it's a whole lot of fun. taking on a new role after leaving Stellar was definitely a huge change for me. I had (and will continue) put so much heart into my work there, and was nervous for the transition. the good news is, I'm genuinely really enjoying my time working at Delphi. it's full of passionate, driven people who really give a shit about the future of crypto. it spans so many different verticals and aspects of the industry. I'm learning on the job every day. so if you see me getting a lot nerdier on the TL, that's why. there's going to reports coming your way. learnings. cool insights on how the industry works, and how it could work better. I'm excited. you're all gonna learn with me, it'll be great. massive shouts to @0xwillthetrill for connecting me to this position. I owe him my professional life xo
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Gwart
Gwart@GwartyGwart·
Please Dario can I get a whitelist spot for Mythos I’ve been active in the Discord for 6 months do not betray your COMMUNITY we will not forgive we will not forget 😡😡😡
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Anil Lulla
Anil Lulla@anildelphi·
Bringing on Lindsay has already been really valuable to what we're trying to accomplish this year at Delphi Have a few more hires we've made that I'm excited to share more about soon... While the TL is bearish, we've never been more bullish and are heads down grinding
Lindsay Poss@LindsayPoss

hi everyone, I just reached a month at @Delphi_Digital and I'm reporting live to say it's a whole lot of fun. taking on a new role after leaving Stellar was definitely a huge change for me. I had (and will continue) put so much heart into my work there, and was nervous for the transition. the good news is, I'm genuinely really enjoying my time working at Delphi. it's full of passionate, driven people who really give a shit about the future of crypto. it spans so many different verticals and aspects of the industry. I'm learning on the job every day. so if you see me getting a lot nerdier on the TL, that's why. there's going to reports coming your way. learnings. cool insights on how the industry works, and how it could work better. I'm excited. you're all gonna learn with me, it'll be great. massive shouts to @0xwillthetrill for connecting me to this position. I owe him my professional life xo

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Danieljosep.eth
Danieljosep.eth@danieljosep_eth·
Hey I joined Aave and Im super excited about it
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Peter Yang
Peter Yang@petergyang·
Ok I’ll bite - wtf is Hermes agent? Is that like the luxury bag version of OpenClaw
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⚡️ ERIKSON ⚡️ รีทวีตแล้ว
Claude
Claude@claudeai·
Introducing Claude Managed Agents: everything you need to build and deploy agents at scale. It pairs an agent harness tuned for performance with production infrastructure, so you can go from prototype to launch in days. Now in public beta on the Claude Platform.
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⚡️ ERIKSON ⚡️
⚡️ ERIKSON ⚡️@thisisthetruth·
standing in the middle of chez Paree w a doubles tshirt stuffed in a Nocta hoodie #canada
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Sriram Krishnan
Sriram Krishnan@sriramk·
there are several products waiting to be built here.
Andrej Karpathy@karpathy

LLM Knowledge Bases Something I'm finding very useful recently: using LLMs to build personal knowledge bases for various topics of research interest. In this way, a large fraction of my recent token throughput is going less into manipulating code, and more into manipulating knowledge (stored as markdown and images). The latest LLMs are quite good at it. So: Data ingest: I index source documents (articles, papers, repos, datasets, images, etc.) into a raw/ directory, then I use an LLM to incrementally "compile" a wiki, which is just a collection of .md files in a directory structure. The wiki includes summaries of all the data in raw/, backlinks, and then it categorizes data into concepts, writes articles for them, and links them all. To convert web articles into .md files I like to use the Obsidian Web Clipper extension, and then I also use a hotkey to download all the related images to local so that my LLM can easily reference them. IDE: I use Obsidian as the IDE "frontend" where I can view the raw data, the the compiled wiki, and the derived visualizations. Important to note that the LLM writes and maintains all of the data of the wiki, I rarely touch it directly. I've played with a few Obsidian plugins to render and view data in other ways (e.g. Marp for slides). Q&A: Where things get interesting is that once your wiki is big enough (e.g. mine on some recent research is ~100 articles and ~400K words), you can ask your LLM agent all kinds of complex questions against the wiki, and it will go off, research the answers, etc. I thought I had to reach for fancy RAG, but the LLM has been pretty good about auto-maintaining index files and brief summaries of all the documents and it reads all the important related data fairly easily at this ~small scale. Output: Instead of getting answers in text/terminal, I like to have it render markdown files for me, or slide shows (Marp format), or matplotlib images, all of which I then view again in Obsidian. You can imagine many other visual output formats depending on the query. Often, I end up "filing" the outputs back into the wiki to enhance it for further queries. So my own explorations and queries always "add up" in the knowledge base. Linting: I've run some LLM "health checks" over the wiki to e.g. find inconsistent data, impute missing data (with web searchers), find interesting connections for new article candidates, etc., to incrementally clean up the wiki and enhance its overall data integrity. The LLMs are quite good at suggesting further questions to ask and look into. Extra tools: I find myself developing additional tools to process the data, e.g. I vibe coded a small and naive search engine over the wiki, which I both use directly (in a web ui), but more often I want to hand it off to an LLM via CLI as a tool for larger queries. Further explorations: As the repo grows, the natural desire is to also think about synthetic data generation + finetuning to have your LLM "know" the data in its weights instead of just context windows. TLDR: raw data from a given number of sources is collected, then compiled by an LLM into a .md wiki, then operated on by various CLIs by the LLM to do Q&A and to incrementally enhance the wiki, and all of it viewable in Obsidian. You rarely ever write or edit the wiki manually, it's the domain of the LLM. I think there is room here for an incredible new product instead of a hacky collection of scripts.

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Trev🙃r is hiring DM me!
X has mostly been about accumulating bookmarks that I then triage at some point in the week. Has this happened to anyone else?
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⚡️ ERIKSON ⚡️ รีทวีตแล้ว
Andrej Karpathy
Andrej Karpathy@karpathy·
Wow, this tweet went very viral! I wanted share a possibly slightly improved version of the tweet in an "idea file". The idea of the idea file is that in this era of LLM agents, there is less of a point/need of sharing the specific code/app, you just share the idea, then the other person's agent customizes & builds it for your specific needs. So here's the idea in a gist format: gist.github.com/karpathy/442a6… You can give this to your agent and it can build you your own LLM wiki and guide you on how to use it etc. It's intentionally kept a little bit abstract/vague because there are so many directions to take this in. And ofc, people can adjust the idea or contribute their own in the Discussion which is cool.
Andrej Karpathy@karpathy

LLM Knowledge Bases Something I'm finding very useful recently: using LLMs to build personal knowledge bases for various topics of research interest. In this way, a large fraction of my recent token throughput is going less into manipulating code, and more into manipulating knowledge (stored as markdown and images). The latest LLMs are quite good at it. So: Data ingest: I index source documents (articles, papers, repos, datasets, images, etc.) into a raw/ directory, then I use an LLM to incrementally "compile" a wiki, which is just a collection of .md files in a directory structure. The wiki includes summaries of all the data in raw/, backlinks, and then it categorizes data into concepts, writes articles for them, and links them all. To convert web articles into .md files I like to use the Obsidian Web Clipper extension, and then I also use a hotkey to download all the related images to local so that my LLM can easily reference them. IDE: I use Obsidian as the IDE "frontend" where I can view the raw data, the the compiled wiki, and the derived visualizations. Important to note that the LLM writes and maintains all of the data of the wiki, I rarely touch it directly. I've played with a few Obsidian plugins to render and view data in other ways (e.g. Marp for slides). Q&A: Where things get interesting is that once your wiki is big enough (e.g. mine on some recent research is ~100 articles and ~400K words), you can ask your LLM agent all kinds of complex questions against the wiki, and it will go off, research the answers, etc. I thought I had to reach for fancy RAG, but the LLM has been pretty good about auto-maintaining index files and brief summaries of all the documents and it reads all the important related data fairly easily at this ~small scale. Output: Instead of getting answers in text/terminal, I like to have it render markdown files for me, or slide shows (Marp format), or matplotlib images, all of which I then view again in Obsidian. You can imagine many other visual output formats depending on the query. Often, I end up "filing" the outputs back into the wiki to enhance it for further queries. So my own explorations and queries always "add up" in the knowledge base. Linting: I've run some LLM "health checks" over the wiki to e.g. find inconsistent data, impute missing data (with web searchers), find interesting connections for new article candidates, etc., to incrementally clean up the wiki and enhance its overall data integrity. The LLMs are quite good at suggesting further questions to ask and look into. Extra tools: I find myself developing additional tools to process the data, e.g. I vibe coded a small and naive search engine over the wiki, which I both use directly (in a web ui), but more often I want to hand it off to an LLM via CLI as a tool for larger queries. Further explorations: As the repo grows, the natural desire is to also think about synthetic data generation + finetuning to have your LLM "know" the data in its weights instead of just context windows. TLDR: raw data from a given number of sources is collected, then compiled by an LLM into a .md wiki, then operated on by various CLIs by the LLM to do Q&A and to incrementally enhance the wiki, and all of it viewable in Obsidian. You rarely ever write or edit the wiki manually, it's the domain of the LLM. I think there is room here for an incredible new product instead of a hacky collection of scripts.

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