JustFill PDF Forms
Fill any PDF form with AI agents — ML field detection on scans, visual review loop, reusable templates, and native AcroForm fill via justfill.app.
README
JustFill MCP Server
Let AI agents (Claude, ChatGPT, n8n — any MCP client) detect, review and fill PDF form fields through justfill.app.
<!-- mcp-name: io.github.mrmaciej1/justfill -->
Why agents can trust it
| Source | Confidence | What it means |
|---|---|---|
| Saved template | 1.0 | This exact PDF was filled before; geometry is human/agent-verified. No ML runs at all. |
| AcroForm | 1.0 | The PDF has embedded form fields — read from the file, filled natively. |
| ML detection | 0.0–0.95 | An honest draft. Review it visually (render_preview), fix it, then save_template to lock it in. |
ML confidence is calibrated: the detector's raw scores are not
probabilities (its server-side filter accepts boxes from raw ~0.02 and
auto-accepts at raw 0.15), so they are mapped onto 0–1 to mean what you'd
expect — ≥0.75 "detector is sure", 0.4–0.75 "probably right, glance at the
preview", <0.4 "borderline accept, verify". The raw detector score is kept
on each field as raw_score.
The correction loop (render_preview → add/update/remove_field) exists
precisely because ML detection has false positives and negatives. A false
positive costs nothing (leave it unfilled or remove it); a false negative is
visible on the preview and fixable with one add_field call. Once reviewed,
save_template makes every future fill of that form deterministic.
Setup
uv tool install ./mcp-server # or: pip install ./mcp-server
Authorize once (opens the browser, one click while logged in to justfill.app):
justfill-mcp login
Then the config needs no credentials at all:
{
"mcpServers": {
"justfill": { "command": "justfill-mcp" }
}
}
Alternatives, in the order the server checks them:
JUSTFILL_API_KEYenv — create a key at justfill.app → Account → API Keys and put"env": {"JUSTFILL_API_KEY": "jf_live_…"}in the config.- The key saved by
justfill-mcp login(~/.config/justfill/credentials.json). JUSTFILL_EMAIL+JUSTFILL_PASSWORD— legacy fallback; an API key is better (no password in config files, revocable per client, never expires mid-session).
Tools
open_pdf(path, min_confidence=0.0, max_pages=10, force_detect=False)— template → AcroForm → ML resolution order. Accepts scanned images too (jpg/png/tiff → converted to PDF, deterministically, so templates still match).force_detect=Trueignores a saved template and re-runs ML.render_preview(page_index)— page image with labeled field boxes (blue = deterministic, green/orange/red = ML confidence)render_filled_preview(values, page_index)— the same page with your values drawn in place (checkboxes get an X). Costs no fills — check before you fill.list_fields(page_index?)add_field(x, y, w, h, name, page_index, field_type, align?, vertical_align?)— coords in % of page, top-left originupdate_field(field_id, …)/remove_field(field_id)update_fields([{field_id, …}, …])/remove_fields([ids])— batch versionsprune_fields(field_type?, confidence_below?, width_below?, height_below?, page_index?, exclude_ids?)— bulk-delete detection noise in one call (criteria AND-ed, removed ids returned)fill_pdf(values, output_path, flatten=True)—values={field_id: text}; responds withwarningsfor values that will be shrunk/truncated to fitsave_template(name)— persist the reviewed layout for deterministic repeat fillslist_templates()
Text alignment: align = left|center|right, vertical_align =
top|middle|bottom — set per field (e.g. right for RTL forms, center for
boxed digits). Persisted in templates.
Example agent flow
open_pdf("~/forms/w-9.pdf") → acroform, 27 fields, confidence 1.0
fill_pdf({"f1": "Jane Doe", …}, "~/out/w-9-filled.pdf")
open_pdf("~/forms/scan.jpg") → converted to PDF; ml, 34 fields
render_preview(0) → agent sees noise + one missed line
prune_fields(field_type="cell", width_below=3) → 16 removed in one call
add_field(x=18, y=62.5, w=40, h=3, name="Phone")
render_filled_preview({…}) → values sit right, no overflow
fill_pdf({…}, "~/out/filled.pdf")
save_template("Client intake form") → next time: deterministic
Notes
- Auth is a regular justfill.app account; tokens auto-refresh on expiry.
- Pricing follows the same rules as the web app: template and AcroForm resolution never cost anything; ML detection is free on the free plan (daily caps apply) and uses per-page credits on paid plans; downloads consume the account's fill allowance/credits.
- One PDF open at a time per server session (by design — keeps ids stable).
- This repository mirrors released versions of the MCP client (development happens in a private monorepo alongside the justfill.app backend). Bug reports and feature requests are very welcome in the issue tracker here.
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