Gcf
FreeNot checkedThe AI-native wire format for structured data. 50-92% fewer tokens than JSON, with multi-turn delta encoding for agent loops. 100% comprehension on every fronti
About
The AI-native wire format for structured data. 50-92% fewer tokens than JSON, with multi-turn delta encoding for agent loops. 100% comprehension on every frontier model. Zero dependencies.
README
gcf-typescript
TypeScript implementation of GCF — the most token-efficient wire format for LLMs. A drop-in alternative to JSON and TOON for any structured data.
Built for the agentic loop, where the same structured context crosses the model boundary turn after turn. A single payload is 50-92% smaller than JSON, but GCF also deduplicates repeated structure across turns and sends only deltas when context changes, so by the 5th overlapping call each response costs 99% fewer tokens than JSON, and a 10-call session runs 94.4% cheaper than re-sending JSON every turn. Session dedup and delta both need local IDs and a multi-turn design that neither JSON nor TOON has.
- 100% comprehension on every frontier model, zero training. 29% fewer tokens than TOON and 56% fewer than JSON across 16 datasets; 91.2% on structurally complex code graphs (vs TOON 68.8%, JSON 54.1%).
- Proven lossless across 43,000,000,000+ round-trips in 5 formats and 6 languages. Zero runtime dependencies.
- One format, four properties no other single format holds at once: schema-free, lossless, token-compact (50-92% vs JSON), and model-readable with zero training. JSON is verbose, Protobuf needs a schema, MessagePack is binary, and TOON isn't reliably lossless.
2,500+ LLM evaluations. Full benchmarks.
Docs: gcformat.com · Playground · GCF vs TOON
Install
npm install @blackwell-systems/gcf
Zero dependencies. TypeScript-first. Includes CLI. Don't want to change code? Use the MCP proxy for zero-code adoption.
CLI
npx @blackwell-systems/gcf encode < payload.json # JSON to GCF
npx @blackwell-systems/gcf decode < payload.gcf # GCF to JSON
npx @blackwell-systems/gcf stats < payload.json # token comparison
Payload: 50 symbols, 20 edges
JSON ██████████████████████████████ 4,200 tokens
GCF ████████░░░░░░░░░░░░░░░░░░░░░░ 1,150 tokens
Savings: 73% fewer tokens with GCF
Or install globally: npm install -g @blackwell-systems/gcf then use gcf directly.
Library
Quick Start
import { encodeGeneric } from '@blackwell-systems/gcf';
const output = encodeGeneric({
employees: [
{ id: 1, name: 'Alice', department: 'Engineering', salary: 95000 },
{ id: 2, name: 'Bob', department: 'Sales', salary: 72000 },
],
});
Output:
## employees [2]{id,name,department,salary}
1|Alice|Engineering|95000
2|Bob|Sales|72000
Decode
import { decode } from '@blackwell-systems/gcf';
const p = decode(input);
console.log(p.tool, p.symbols.length, 'symbols', p.edges.length, 'edges');
Session Deduplication
Track transmitted symbols across multiple tool responses. Previously-sent symbols become bare references instead of full declarations:
import { Session, encodeWithSession } from '@blackwell-systems/gcf';
const sess = new Session();
const out1 = encodeWithSession(payload1, sess); // full declarations
const out2 = encodeWithSession(payload2, sess); // reused symbols as "@N # previously transmitted"
By the 5th call in a session: 86% fewer tokens than JSON from dedup alone, 99% stacked with delta encoding.
Streaming Encode
Write GCF output incrementally as symbols and edges arrive. Zero buffering, O(1) memory per row. Ideal for MCP servers that walk large graphs or paginate results:
import { StreamEncoder } from '@blackwell-systems/gcf';
const enc = new StreamEncoder(writer, 'context_for_task', { tokenBudget: 5000 });
// Symbols emit immediately as they're discovered.
enc.writeSymbol({ qualifiedName: 'pkg.Auth', kind: 'function', score: 0.95, provenance: 'lsp', distance: 0 });
enc.writeSymbol({ qualifiedName: 'pkg.Server', kind: 'function', score: 0.60, provenance: 'lsp', distance: 1 });
// Edges emit immediately too.
enc.writeEdge({ source: 'pkg.Server', target: 'pkg.Auth', edgeType: 'calls' });
// Close emits the ##! summary trailer with final counts.
enc.close();
Output:
GCF tool=context_for_task budget=5000
## targets
@0 fn pkg.Auth 0.95 lsp
## related
@1 fn pkg.Server 0.60 lsp
## edges [?]
@0<@1 calls
##! summary symbols=2 edges=1 counts=1,1,1
The writer is any object with a write(s: string) method (Node.js streams, web WritableStreams, or a simple callback). Standard decode() handles streaming output with no changes.
Delta Encoding
When the consumer already has a prior context pack, send only what changed:
import { encodeDelta, type DeltaPayload } from '@blackwell-systems/gcf';
const delta: DeltaPayload = {
tool: 'context_for_task',
baseRoot: 'aaa111',
newRoot: 'bbb222',
removed: [{ qualifiedName: 'pkg.OldFunc', kind: 'function', score: 0, provenance: '', distance: 0 }],
added: [{ qualifiedName: 'pkg.NewFunc', kind: 'function', score: 0.85, provenance: 'rwr', distance: 0 }],
removedEdges: [],
addedEdges: [],
deltaTokens: 30,
fullTokens: 200,
};
const output = encodeDelta(delta);
81.2% savings on re-queries where the pack changed slightly.
Generic Encoding
Encode any JS value (not just graph payloads) into GCF tabular format:
import { encodeGeneric } from '@blackwell-systems/gcf';
const output = encodeGeneric({
employees: [
{ id: 1, name: 'Alice', department: 'Engineering', salary: 95000 },
{ id: 2, name: 'Bob', department: 'Sales', salary: 72000 },
],
});
Output:
## employees [2]{id,name,department,salary}
1|Alice|Engineering|95000
2|Bob|Sales|72000
Works on objects, arrays, and primitives. Arrays of uniform objects get tabular rows. Nested objects use ## key section headers.
Generic-Profile Delta (multi-turn)
In an agent loop the same keyed table gets re-queried turn after turn. Instead of re-sending the whole table each time, send only the changed rows (SPEC §10a):
import {
diffGenericSets,
encodeGenericDelta,
verifyGenericDelta,
type GenericSet,
} from '@blackwell-systems/gcf';
const base: GenericSet = {
key: 'id',
fields: ['id', 'status'],
rows: [
{ id: 1001, status: 'pending' },
{ id: 1002, status: 'shipped' },
],
};
const next: GenericSet = {
key: 'id',
fields: ['id', 'status'],
rows: [
{ id: 1001, status: 'shipped' }, // changed
{ id: 1003, status: 'pending' }, // added (1002 removed)
],
};
const d = diffGenericSets(base, next); // GenericDeltaPayload
const wire = encodeGenericDelta(d); // ## added / ## changed / ## removed
const held = verifyGenericDelta(base, d, d.newRoot); // atomic apply + new_root verification
Opt-in and bilateral, keyed on content-addressed pack roots. By the 5th overlapping call, ~97% fewer tokens than re-sending JSON.
Re-anchor session helper
GenericDeltaSession manages the delta/re-anchor cadence for you: each next() returns either a compact delta or, on its cadence, a full re-anchor (which re-grounds the consumer), updating its held base.
import { GenericDeltaSession, sizeGuard } from '@blackwell-systems/gcf';
const sess = new GenericDeltaSession(base, 'orders', sizeGuard());
let wire = sess.currentFull(); // transmit the base once to establish it
for (const snapshot of stream) { // each turn's current GenericSet
const { wire, isFull } = sess.next(snapshot); // a compact delta, or a periodic full re-anchor
}
fixedN(15) re-anchors every N turns; sizeGuard() (recommended) re-anchors once the cumulative delta reaches a full payload's size. It introduces no new wire syntax and the decoder stays cadence-agnostic, so a re-anchor is just the protocol's "full" outcome on a schedule.
API
| Function | Description |
|---|---|
encode(p: Payload): string |
Encode a graph payload to GCF text |
encodeGeneric(data: unknown): string |
Encode any value to GCF tabular format |
decode(input: string): Payload |
Parse GCF text back to a Payload |
encodeWithSession(p: Payload, s: Session): string |
Encode with session deduplication |
new StreamEncoder(w, tool, opts) |
Create a streaming encoder (zero-buffering) |
encodeDelta(d: DeltaPayload): string |
Encode a delta (added/removed only) |
diffGenericSets(base, next): GenericDeltaPayload |
Diff two keyed record sets (generic profile) |
encodeGenericDelta(d): string / decodeGenericDelta(s) |
Generic-profile delta wire (§10a) |
verifyGenericDelta(base, d, root): GenericSet |
Atomic apply + new_root verification |
new GenericDeltaSession(base, tool, policy) |
Producer-side re-anchor cadence helper (§10a.8) |
new Session() |
Create a new session tracker |
Types
| Type | Purpose |
|---|---|
Payload |
Full GCF payload: tool, budget, symbols, edges, pack root |
Symbol |
Graph node: qualified name, kind, score, provenance, distance |
Edge |
Directed relationship: source, target, edge type |
DeltaPayload |
Diff between two packs: added/removed symbols and edges |
GenericSet / GenericDeltaPayload |
Keyed record set and its generic-profile diff (§10a) |
GenericDeltaSession |
Stateful producer that schedules delta vs full re-anchor (§10a.8) |
Session |
Tracker for multi-call deduplication |
KIND_ABBREV / KIND_EXPAND |
Bidirectional kind abbreviation maps |
Benchmarks
2,500+ LLM evaluations across 11 models, 4 providers, and 50+ independent test runs.
| GCF | TOON | JSON | |
|---|---|---|---|
| Comprehension (23 runs, 10 models) | 91.2% | 68.8% | 54.1% |
| Generation (28 runs, 9 models) | 5/5 | 1.0/5 | 5.0/5 |
| Input tokens (500 symbols) | 11,090 | 16,378 | 53,341 |
| Output tokens (100 symbols) | 5,976 | 8,937 | 16,121 |
GCF wins 15/16 datasets on the expanded token efficiency benchmark. Full results: gcformat.com/guide/benchmarks
Implementations
| Language | Package | Repository |
|---|---|---|
| Go | go get github.com/blackwell-systems/gcf-go |
gcf-go |
| TypeScript | npm install @blackwell-systems/gcf |
gcf-typescript |
| Python | pip install gcf-python |
gcf-python |
| Rust | cargo add gcf |
gcf-rust |
| Swift | Swift Package Manager | gcf-swift |
| Kotlin | JitPack | gcf-kotlin |
| MCP Proxy | pip install gcf-proxy |
gcf-proxy (bidirectional, session dedup, HTTP frontend) |
| Claude Code Plugin | /plugin install |
gcf-claude-plugin (one-command install, session stats hook) |
| Codex Plugin | codex plugin add |
gcf-codex-plugin (one-command install, session stats hook) |
| VS Code | ext install blackwell-systems.gcf-vscode |
gcf-vscode (syntax highlighting) |
| n8n | npm install n8n-nodes-gcf |
gcf-n8n-nodes (workflow encode/decode) |
| Tree-sitter | npm install tree-sitter-gcf |
tree-sitter-gcf |
Zero runtime dependencies. Permanently. All six implementations depend only on their language's standard library. No transitive dependencies. No supply chain risk. This is a permanent commitment: GCF will never take on external runtime dependencies. MIT licensed. All implementations support both generic profile (encodeGeneric) and graph profile (encode). CLI included in all 6 languages.
Specification: SPEC v3.4.1 Stable with 204 conformance fixtures, 43,000,000,000+ lossless round-trips verified across 5 formats and 6 languages. All implementations at v2.4.0+ (Go v1.5.0). Cross-language 6x6 matrix verified.
Adopted by
Chrome DevTools MCP (46K stars, Google Chrome DevTools team) · Speakeasy (API tooling, customers include Google, Verizon, Mistral AI, DocuSign, Vercel) · OmniRoute (6.1K stars) · NetClaw (556 stars) · ctx (510 stars) · NeuroNest · Open Data Products SDK (Linux Foundation) · Raycast · and more
License
MIT - Dayna Blackwell
Install Gcf in Claude Desktop, Claude Code & Cursor
unyly install gcfInstalls into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.
First time? Get the CLI: curl -fsSL https://unyly.org/install | sh
Or configure manually
Run in your terminal:
claude mcp add gcf -- npx -y @blackwell-systems/gcfFAQ
Is Gcf MCP free?
Yes, Gcf MCP is free — one-click install via Unyly at no cost.
Does Gcf need an API key?
No, Gcf runs without API keys or environment variables.
Is Gcf hosted or self-hosted?
Self-hosted: the server runs locally on your machine via the install command above.
How do I install Gcf in Claude Desktop, Claude Code or Cursor?
Open Gcf on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
Related MCPs
Fetch
Web content fetching and conversion for efficient LLM usage.
AWS KB Retrieval
Retrieval from AWS Knowledge Base using Bedrock Agent Runtime.
by modelcontextprotocolSpring AI MCP Server
Provides auto-configuration for setting up an MCP server in Spring Boot applications.
llm-analysis-assistant
A very streamlined mcp client that supports calling and monitoring stdio/sse/streamableHttp, and can also view request responses through the /logs page. It also
by xuzexin-hzCompare Gcf with
Not sure what to pick?
Find your stack in 60 seconds
Author?
Embed badge for your README
Browse similar
All ai MCPs
