ilang-compress/SKILL.md
Compress natural language prompts into I-Lang — AI-native structured instructions. 40-65% token savings.
npx skillsauth add ilang-ai/ilang-openclaw ilang-compressInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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An AI-native prompt compression protocol created by a Chinese developer.
Compress natural language prompts into dense structured instructions that any AI understands natively. 40-65% token savings, zero training needed.
Token is money. Every prompt you send to GPT/Claude/Gemini, you pay by token. I-Lang compresses your instructions into a fraction of the original size — AI reads it just as well, you pay less.
When the user asks to compress a prompt, convert it to I-Lang syntax following these rules.
Single operation: [VERB:@ENTITY|mod1=val1,mod2=val2]
Pipe chain: [VERB1:@SRC]=>[VERB2]=>[VERB3:@DST]
Each step receives previous output as @PREV.
Data I/O: READ, WRIT, DEL, LIST, COPY, MOVE, STRM, CACH, SYNC, Π Transform: Σ, Δ, φ, ∇, DEDU, ∂, CHNK, FLAT, NEST, λ, REDU, PIVT, TRNS, ENCD, DECD, ξ, ζ, EXPN, θ, FMT Analysis: ψ, CLST, SCOR, BNCH, AUDT, VALD, CNT, μ, TRND, CORR, FRCS, ANOM Generation: CREA, DRFT, PARA, EXTD, SHRT, STYL, TMPL, FILL Output: Ω, DISP, EXPT, PRNT, LOG Meta: VERS, HELP, DESC, INTR, SELF, ECHO, NOOP
tgt, src, dst, frm, to, scp, dep, rng, whr, mch, exc, lim, off, top, bot, fmt, lng, sty, ton, len, col, row, srt, grp, typ, enc, chr, cap
@R2, @COS, @GH, @DRIVE, @LOCAL, @WORKER, @CF, @SCREEN, @LOG, @NULL, @STDIN, @SRC, @DST, @PREV
Input: Read the config file from GitHub and format it as JSON
Output: [READ:@GH|path=config.json]=>[FMT|fmt=json]
Explanation: READ fetches from GitHub, FMT converts to JSON format.
Saved: 55%
Input: Filter all fatal errors from system logs
Output: [φ:@LOG|whr="lvl=fatal"]
Explanation: φ (filter) selects only entries matching fatal level.
Saved: 55%
Input: Read all markdown files, merge them, summarize in 3 bullets, output
Output: [LIST:@LOCAL|mch="*.md"]=>[Π:READ]=>[Σ|len=3]=>[Ω]
Explanation: LIST finds files, Π batch-reads, Σ summarizes to 3 items, Ω outputs.
Saved: 65%
Built by ilang-ai from China. I-Lang is open source under MIT license.
I-Lang v2.0
development
Stop learning prompt engineering. Tell AI what you want in plain language — AI writes a structured instruction for you in I-Lang. Copy it to other AIs as a well-structured starting point. Zero prompt skills needed. Generates text instructions only, no code, no install, no credentials. Results may vary by model.
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data-ai
Compress natural language prompts into I-Lang — AI-native structured instructions. 40-65% token savings. Output is text notation only — review before passing to execution agents.