Michael ecfc52499f fix(home): persist upload list across page navigation
Reported: clicking "Back to Home" from a tool page returned the user
to an empty home — their previously-uploaded files were gone.

Root cause: Streamlit's ``st.file_uploader`` widget state does not
reliably survive ``st.switch_page``. The widget gets unmounted on
navigation, and its ``UploadedFile`` objects don't always re-attach
on remount. The home page was treating the widget's return value as
the source of truth, so after navigation the list was empty.

Fix: introduce a session-state stash keyed by filename
(``home_uploads: dict[str, {"bytes": bytes, "size": int}]``) and
treat it as the source of truth for everything downstream — the
active-file pickup keys for tool pages, the per-file findings
cache, and the rendered file list. The widget is reduced to its
narrow role of capturing NEW uploads, which we merge into the stash
without ever removing.

Per-file remove: a "✕" button next to each filename drops just that
file (and its findings). The widget's own "✕" is bypassed by our
rendering, since trusting it would let the widget's state diverge
from the stash.

Clear-results button is unchanged: it wipes only the analysis cache,
leaving uploaded files intact (per the user's "persistent until
cleared" requirement — removal is per-file via "✕").

Tool-page compatibility: the singular ``home_uploaded_{name,size,
bytes}`` keys still get populated from the first entry in the stash
on every render, so ``pickup_or_upload`` on a tool page keeps
finding the active upload. When the user removes the active file,
those keys are cleared so the next render repopulates from whatever
file is now first.

``_StashedUpload`` is a small duck type ( ``.name``, ``.size``,
``.getvalue()`` ) so ``_run_analysis_on_upload`` accepts entries
restored from the stash without changes.

2220 tests pass. Smoke-verified via AppTest: pre-stashed
``home_uploads`` renders the file list with per-file remove buttons,
and the persistent state survives a simulated navigation round-trip.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-17 00:04:12 +00:00

🌐 Language: English · Español

DataTools

Local CSV / Excel cleaning. CLI + browser GUI, no cloud, no install ceremony. GUI ships with English and Spanish language packs.

Tools

# Tool Status
01 Find Duplicates — exact + fuzzy match, 5 normalizers, survivor rules, audit Ready
02 Clean Text — whitespace, smart chars, BOM, line endings, case ops Ready
03 Standardize Formats — dates, phones, emails, addresses, names, currencies, booleans Ready
04 Fix Missing Values — disguised-null detection, profile, mean/median/mode/ffill/bfill/interpolate, drop strategies Ready
05 Map Columns — fuzzy auto-rename, target schema with type coercion, required fields with defaults, drop/reorder Ready
06 Find Unusual Values Coming Soon
07 Combine Files Coming Soon
08 Quality Check Coming Soon
09 Automated Workflows — chain tools with recommended (not forced) order, save/load JSON, automate weekly cleanups Ready

Download (non-technical users)

Pre-built installers — no Python required:

Platform Download First-launch note
macOS DataTools-X.Y.Z-mac.dmg Drag DataTools.app into /Applications, then double-click.
Windows DataTools-X.Y.Z-win-setup.exe Run the installer; launches from Start Menu.
Linux DataTools-X.Y.Z-linux-x86_64.AppImage chmod +x the file, then double-click.

Latest release: see GitHub Releases (or the Gumroad listing). The installers are ~150200 MB; the launcher boots a local server at http://127.0.0.1:8501 and opens your browser. Nothing is sent to the cloud.

Install from source (developers)

pip install -r requirements.txt

Python 3.10+ required.

Run

GUI (recommended):

streamlit run src/gui/app.py

CLI — seven entry points:

python -m src.cli            customers.csv [--apply]   # dedup
python -m src.cli_text_clean messy.csv     [--apply]   # text clean
python -m src.cli_format     intl.csv      [--apply]   # format standardize (auto-streams >100 MB)
python -m src.cli_missing    holes.csv     [--apply]   # missing values
python -m src.cli_column_map vendor.csv    [--apply]   # column mapper
python -m src.cli_pipeline   any_file.csv  [--apply]   # chain tools end-to-end
python -m src.cli_analyze    any_file.csv  [--json]    # scan only

Every CLI runs preview-only by default; add --apply to write output.

Language

The GUI sidebar has a language picker. Packs ship for English and Español (src/i18n/packs/); the choice persists for the session. Adding a language: drop a <code>.json next to en.json mirroring its key tree, then list it in LANGUAGES. See Developer Guide §i18n.

Review & Normalize gate

Every uploaded file passes through a CSV-normalization gate before any tool sees it. The analyzer flags ~15 issue types (whitespace, NBSP / zero-width chars, BOM, encoding, smart punct, dirty headers, null sentinels, mojibake, …) tagged by confidence (high / medium / low) and fix action. The GUI shows each finding with Auto-fix / Skip / Customize, a live before/after preview, and an encoding-override picker. Tool pages refuse to load until the gate passes.

Output

Every run writes:

  • {input}_<tool>.csv — the cleaned data
  • {input}_changes.csv (text cleaner) or {input}_match_groups.csv (dedup) — audit trail
  • logs/<tool>_YYYYMMDD_HHMMSS.log — debug-level run log

Original input file is never modified.

Docs

Dependencies

pandas, openpyxl, rapidfuzz, phonenumbers, typer, loguru, charset-normalizer, streamlit. Optional: ftfy for mojibake repair.

License

Proprietary.

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