
Justin@interjc
open on x ↗opencode.ai 是个好东西,自带的 glm4.7 免费不说,还可以通过安装插件把 Google 家的 Antigravity 内置的 Claude 和 Gemini 额度导入进来 配合上 Google AI Pro 的六人共享搬家套餐,美滋滋

opencode.ai 是个好东西,自带的 glm4.7 免费不说,还可以通过安装插件把 Google 家的 Antigravity 内置的 Claude 和 Gemini 额度导入进来 配合上 Google AI Pro 的六人共享搬家套餐,美滋滋
▶@DataChaz
@every
▶@askalphaxiv
▶@samhogan
@PrajwalTomar_@wesbos definitely @mobbin https://mobbin.com/
also UI library showcases like @chakra_ui is an underrated place to look!@jeffzxh
@GithubProjects
@dhruvtwt_I've tried all ( 74 😵💫 ) AI Coding Agents & IDEs
[Rork, CodeRabbit, Anima, Zed, Factory, Cursor, Windsurf, Copilot, Lovable, Bolt, v0, Replit, MarsX, Canva, Devin, Github Spark, Vercel, Lindy, Warp, Figma, Cline, Vibe Coder & more]
The most complete list ever made (with demos & notes):@johnrushx
@tom_doerr
▶@TheAhmadOsman
@OpenRouter≡ 10+2
@bbssppllvv
▶@ctatedev
▶@coderabbitai
@GithubProjects
@Zai_org
▶@QingQ77
▶@zkgoudanIntroducing Vibe SDK@rauchg
▶@CopilotKitI took the @karpathy autoresearch loop and pointed it at markets.
25 AI agents debate macro, rates, commodities, sectors, and single stocks daily. Every recommendation scored against real outcomes. Worst agent by rolling Sharpe gets its prompt rewritten by the system. Keep or revert. Same loop, prompts are the weights, Sharpe is the loss function.
Trained the agents on 18 months of market data. 378 iterations. 54 prompt modifications, 16 survived.
The system learned which agents to trust using Darwinian weights — geopolitical, commodities, and the @BillAckman quality compounder rose to the top.
The agents even figured out their own portfolio manager was the weakest link before we did!
Deployed the trained agents. +22% in 173 days. Best pick: AVGO at $152, held for +128%.
The final prompts are evolutionary products — shaped by market feedback, not human intuition. Now running live with my own capital.
https://github.com/chrisworsey55/atlas-gic
Part hedge fund, part research experiment :)@Chris_Worsey
▶@iannuttall
@haydenbleasel
▶@NousResearch
▶@hyperbrowser
@flowisgreat_