Builds 02_text_cleaner.py from stub to working: character-level hygiene for CSV/Excel inputs covering trim, whitespace collapse, smart-character folding, Unicode NFC/NFKC, BOM strip, zero-width strip, control-char strip, line-ending normalization, and per-column case conversion. Three presets (minimal/excel-hygiene/paranoid) keep the buyer surface small. - src/core/text_clean.py: pure helpers + CleanOptions/CleanResult + clean_dataframe with dtype-safe column selection - src/cli_text_clean.py: Typer CLI mirroring the dedup CLI shape (dry-run by default, --apply writes cleaned + changes audit, JSON config save/load) - src/gui/pages/2_Text_Cleaner.py: real Streamlit page with preset picker, advanced toggles, preview, before/after metrics, and three download buttons - tests/test_text_clean.py + test_cli_text_clean.py: 92 new tests covering edge cases E1-E50 from the spec - samples/messy_text.csv: demo dataset surfacing UC1, UC3, UC6, UC10 in 10 rows - test-cases/uc16-uc26 + ec05-ec09: per-use-case and per-edge-case fixtures Docs: TECHNICAL.md §10.2 (full Tier 1/2/3 spec), DECISIONS.md v1.7 entry locking the spec, CLI-REFERENCE.md gains the text cleaner section, README.md gains a top-level Text Cleaner block, USER-GUIDE.md status row 02 promoted Skeleton -> Working. 200/200 tests pass. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
165 lines
6.1 KiB
Markdown
165 lines
6.1 KiB
Markdown
# DataTools
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A bundle of Python data-cleaning tools for CSV and Excel files. Two scripts ship today; more are in build.
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| # | Tool | What it does |
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| 01 | **Deduplicator** | Find and remove duplicate rows with exact + fuzzy matching, smart normalization, and interactive review. |
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| 02 | **Text Cleaner** | Trim whitespace, fold smart quotes, strip invisible / control characters, normalize Unicode, normalize line endings, optional case conversion. |
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## Deduplicator
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## Features
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- **Zero-config start** — auto-detects encoding, delimiters, headers, and match columns
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- **Fuzzy matching** — Jaro-Winkler, Levenshtein, and token set ratio algorithms
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- **5 built-in normalizers** — email (Gmail dot/plus), phone (E.164), name (titles/suffixes), address (USPS), string (whitespace/case)
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- **Merge mode** — fill missing fields in the surviving row from removed duplicates
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- **4 survivor rules** — keep first, last, most complete, or most recent row per group
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- **Interactive review** — inspect match groups with inline checkboxes and column dropdowns, cherry-pick values, preview surviving rows live
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- **Config profiles** — save and reload your settings as JSON for repeatable runs
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- **Dual interface** — full CLI for automation, Streamlit GUI for visual review
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- **Dry-run by default** — preview what would change before writing anything
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- **Audit trail** — every run produces a match groups report and timestamped log
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## Quick Start
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### Install
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```bash
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pip install -r requirements.txt
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```
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### CLI
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```bash
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# Preview duplicates (dry run — no files written)
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python -m src.cli customers.csv
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# Remove duplicates and save the result
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python -m src.cli customers.csv --apply
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# Fuzzy-match names at 80% similarity, merge missing fields
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python -m src.cli customers.csv --fuzzy name --threshold 80 --merge --apply
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# Interactively review each match group
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python -m src.cli customers.csv --review --apply
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```
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### GUI
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```bash
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streamlit run src/gui/app.py
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```
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Upload a file, click **Find Duplicates**, review match groups side-by-side, then download the cleaned result.
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## CLI Usage Summary
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```
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python -m src.cli INPUT_FILE [OPTIONS]
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Options:
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--apply Write output files (default: preview only)
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--output, -o PATH Output file path
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--subset, -s COLS Columns to match on (comma-separated)
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--key, -k COLS Strong-key columns for exact matching
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--fuzzy COLS Columns to fuzzy-match
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--algorithm, -a ALG levenshtein | jaro_winkler | token_set_ratio
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--threshold, -t N Similarity threshold 0-100 (default: 85)
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--normalize COL:TYPE Per-column normalizers (e.g., email:email,phone:phone)
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--survivor RULE first | last | most-complete | most-recent
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--merge Fill missing fields from removed duplicates
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--review Interactively review each match group
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--config PATH Load settings from a JSON config file
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--save-config PATH Save current settings to JSON
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--sheet NAME Excel sheet name or 0-based index
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--encoding ENC Override auto-detected encoding
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--header-row N 0-based header row index
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--help Show full help
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```
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## Sample Output
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```
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$ python -m src.cli samples/messy_sales.csv
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Reading messy_sales.csv...
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50 rows, 8 columns
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Finding duplicates...
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──────────────────────────────────────────────────
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File: messy_sales.csv
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Rows in: 50
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Rows out: 28
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Removed: 22
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Groups: 22
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──────────────────────────────────────────────────
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Match groups:
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Group 1: rows [1, 2] → keep row 1 (confidence: 100.0%, matched on: email)
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Group 2: rows [3, 4] → keep row 3 (confidence: 92.3%, matched on: name, phone)
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...
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This was a preview. Add --apply to write the output files.
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```
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## Output Files
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When `--apply` is used, three files are produced:
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| File | Contents |
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|------|----------|
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| `{input}_deduplicated.csv` | Cleaned data with duplicates removed |
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| `{input}_removed.csv` | Rows that were removed |
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| `{input}_match_groups.csv` | Audit trail: group ID, confidence, matched columns, survivor flag |
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## Text Cleaner
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Character-level hygiene for messy CSV / Excel input. Solves the dirty-data failure modes that silently break VLOOKUPs, dedup runs, and downstream imports:
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- Trailing / leading whitespace and tabs in cells
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- Non-breaking spaces (`U+00A0`) hiding inside text where regular spaces should be
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- Smart quotes pasted from Word (`"` `"` `'` `'` → `"` `"` `'` `'`)
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- Em / en dashes, ellipsis, other typographic Unicode
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- Zero-width and bidi-mark characters (`U+200B`, `U+200C`, `U+200D`, etc.)
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- BOMs from Excel "Save As CSV UTF-8"
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- Mixed line endings (`\r\n`, bare `\r`) inside multi-line cells
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- Control characters (`U+0000`-`U+001F` minus `\t \n \r`)
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- Optional Unicode NFC / NFKC normalization
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- Optional per-column case conversion (UPPER / lower / smart Title / Sentence)
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```bash
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# Preview what would change (dry-run)
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python -m src.cli_text_clean samples/messy_text.csv
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# Apply the safe defaults
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python -m src.cli_text_clean samples/messy_text.csv --apply
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# Title-case the name column, upper-case the SKU column
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python -m src.cli_text_clean products.csv --case title:name,upper:sku --apply
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# Just trim and collapse — nothing fancy
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python -m src.cli_text_clean messy.csv --preset minimal --apply
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```
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Three presets: `minimal` (trim + collapse only), `excel-hygiene` (default; everything safe ON), `paranoid` (adds lossy NFKC fold).
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Outputs `{input}_cleaned.csv` plus a per-cell `{input}_changes.csv` audit (row, column, old, new, ops applied).
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See [docs/CLI-REFERENCE.md](docs/CLI-REFERENCE.md#text-cleaner-cli) for every flag.
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## Documentation
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- [CLI Reference](docs/CLI-REFERENCE.md) — every flag with examples and recipe sections
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- [Developer Guide](docs/DEVELOPER.md) — architecture, data flow, how to extend
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## Requirements
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- Python 3.10+
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- Dependencies: pandas, openpyxl, rapidfuzz, typer, phonenumbers, loguru, tqdm, charset-normalizer
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## License
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Proprietary. All rights reserved.
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