BankStatementParser is your essential tool for easy bank statement management. Designed with finance and treasury experts in mind, it offers a simple way to handle CAMT (ISO 20022) formats and more. Get quick, accurate insights from your financial data and spend less time on processing. It's the smart, hassle-free way to stay on top of your transactions.
Project description
Bank Statement Parser
Parse bank statements across six structured formats (CAMT, PAIN.001, CSV, OFX/QFX, MT940) and PDFs — both digital and scanned — into a single unified Transaction model. ISO 20022 files take the deterministic path; PDFs fall through to a configurable LLM (Ollama by default, any LiteLLM-supported provider) and finally to a multimodal vision model for scanned/photocopied statements.
Built for finance teams, treasury analysts, and fintech developers who need reliable, auditable extraction across the full spectrum of bank statement formats — without sending data to external services unless they explicitly opt in.
Key Features
| Feature | Description |
|---|---|
| 6 structured formats | CAMT.053, PAIN.001, CSV, OFX, QFX, MT940 |
| Hybrid PDF pipeline (v0.0.5) | smart_ingest() routes digital PDFs through a text-LLM and scanned PDFs through a multimodal vision model. Deterministic parsers always tried first ($0 cost). |
| Local-first LLM (v0.0.5) | Ollama is the default backend; switch to Anthropic, OpenAI, or any LiteLLM provider via BSP_HYBRID_MODEL. Vision is opt-in via BSP_HYBRID_VISION_MODEL — no surprise downloads. |
| Golden Rule verification (v0.0.5) | Every result carries opening + credits − debits == closing status: VERIFIED, DISCREPANCY, or FAILED. |
| Idempotent dedup (v0.0.5) | Every Transaction carries a stable transaction_hash (MD5 of date + normalized description + amount). Deduplicator.dedupe_by_hash() makes incremental ingestion safe to re-run. |
| Auto-detection | detect_statement_format() identifies the format; create_parser() returns the right parser |
| PII redaction | Names, IBANs, and addresses masked by default — opt in with --show-pii |
| Streaming | parse_streaming() at 27,000+ tx/s (CAMT) and 52,000+ tx/s (PAIN.001) with bounded memory |
| Parallel | parse_files_parallel() for multi-file batch processing across CPU cores |
| Secure ZIP | iter_secure_xml_entries() rejects zip bombs, encrypted entries, and suspicious compression ratios |
| In-memory parsing | from_string() and from_bytes() parse XML without touching disk |
| Export | CSV, JSON, Excel (.xlsx), and optional Polars DataFrames |
| 100% coverage | 541 tests, 100% branch coverage, property-based fuzzing with Hypothesis |
Requirements
- Python 3.9 through 3.14
- Poetry (for local development)
Install
# Core install — deterministic parsers only (CAMT, PAIN.001, CSV, OFX, QFX, MT940)
pip install bankstatementparser
# Add the text-LLM path for digital PDFs (litellm + pypdf)
pip install 'bankstatementparser[hybrid]'
# Add higher-fidelity table extraction (adds pdfplumber)
pip install 'bankstatementparser[hybrid-plus]'
# Add the multimodal vision path for scanned/photocopied PDFs (adds pypdfium2)
pip install 'bankstatementparser[hybrid-vision]'
The core install has zero AI dependencies. Every [hybrid*] extra is opt-in and pure-Python — no poppler, no system libraries, no GPU required.
Local Development
Clone and install on macOS, Linux, or WSL:
git clone https://github.com/sebastienrousseau/bankstatementparser.git
cd bankstatementparser
python3 -m venv .venv
source .venv/bin/activate
pip install poetry
poetry install --with dev
Quick Start
Parse a CAMT statement
from bankstatementparser import CamtParser
parser = CamtParser("statement.xml")
transactions = parser.parse()
print(transactions)
Amount Currency DrCr Debtor Creditor ValDt AccountId
105678.5 SEK CRDT MUELLER 2010-10-18 50000000054910
-200000.0 SEK DBIT 2010-10-18 50000000054910
30000.0 SEK CRDT 2010-10-18 50000000054910
Parse a PAIN.001 payment file
from bankstatementparser import Pain001Parser
parser = Pain001Parser("payment.xml")
payments = parser.parse()
print(payments)
PmtInfId PmtMtd InstdAmt Currency CdtrNm EndToEndId
PMT-001 TRF 1500.00 EUR ACME Corp E2E-001
PMT-001 TRF 2300.50 EUR Global Ltd E2E-002
Auto-detect the format
from bankstatementparser import create_parser, detect_statement_format
fmt = detect_statement_format("transactions.ofx")
parser = create_parser("transactions.ofx", fmt)
records = parser.parse()
Works with .xml, .csv, .ofx, .qfx, and .mt940 files.
Hybrid extraction (PDFs included) (v0.0.5)
smart_ingest() is the single entry point that routes any file through the cheapest viable extraction path:
from bankstatementparser.hybrid import smart_ingest
# Path A — deterministic parser (free, fastest, $0)
result = smart_ingest("statement.xml")
print(result.source_method) # "deterministic"
# Path B — text-LLM for digital PDFs (set BSP_HYBRID_MODEL=ollama/llama3)
result = smart_ingest("statement.pdf")
print(result.source_method) # "llm"
print(result.verification.status) # VERIFIED | DISCREPANCY | FAILED
# Path C — multimodal vision for scanned PDFs (set BSP_HYBRID_VISION_MODEL)
# auto-routed when pypdf cannot extract enough text
result = smart_ingest("scan.pdf")
print(result.source_method) # "vision"
Every row carries:
source_method—"deterministic","llm", or"vision"for full audit provenancetransaction_hash— MD5 fingerprint ofdate | normalized_description | amount, ready for idempotent re-ingestionconfidence— float between 0 and 1 for LLM rows,Nonefor deterministicraw_source_text— best-effort source-text slice for the v0.0.6 review-mode UI
A complete walkthrough with synthetic UK-bank PDFs, mock vs. live mode, and a Mermaid flow diagram lives in examples/hybrid/README.md.
Parse from memory (no disk I/O)
from bankstatementparser import CamtParser
xml_bytes = download_from_sftp() # your own function
parser = CamtParser.from_bytes(xml_bytes, source_name="daily.xml")
transactions = parser.parse()
Pass only decompressed XML to from_string() or from_bytes(). For ZIP archives, use iter_secure_xml_entries().
Parse XML files inside a ZIP archive
from bankstatementparser import CamtParser, iter_secure_xml_entries
for entry in iter_secure_xml_entries("statements.zip"):
parser = CamtParser.from_bytes(entry.xml_bytes, source_name=entry.source_name)
transactions = parser.parse()
print(entry.source_name, len(transactions), "transactions")
The iterator enforces size limits, blocks encrypted entries, and rejects suspicious compression ratios before any XML parsing occurs.
PII Redaction
PII (names, IBANs, addresses) is redacted by default in console output and streaming mode.
# Redacted by default
for tx in parser.parse_streaming(redact_pii=True):
print(tx) # Names and addresses show as ***REDACTED***
# Opt in to see full data
for tx in parser.parse_streaming(redact_pii=False):
print(tx)
File exports (CSV, JSON, Excel) always contain the full unredacted data.
Streaming
Process large files incrementally. Memory stays bounded regardless of file size — tested at 50,000 transactions with sub-2x memory scaling.
from bankstatementparser import CamtParser
parser = CamtParser("large_statement.xml")
for transaction in parser.parse_streaming():
process(transaction) # each transaction is a dict
Works with both CamtParser and Pain001Parser. PAIN.001 files over 50 MB use chunk-based namespace stripping via a temporary file — the full document is never loaded into memory.
Performance
| Metric | CAMT | PAIN.001 |
|---|---|---|
| Throughput | 27,000+ tx/s | 52,000+ tx/s |
| Per-transaction latency | 37 us | 19 us |
| Time to first result | < 1 ms | < 2 ms |
| Memory scaling | Constant (1K–50K) | Constant (1K–50K) |
Performance is flat from 1,000 to 50,000 transactions. CI enforces minimum TPS and latency thresholds.
Parallel Parsing
Process multiple files simultaneously across CPU cores:
from bankstatementparser import parse_files_parallel
results = parse_files_parallel([
"statements/jan.xml",
"statements/feb.xml",
"statements/mar.xml",
])
for r in results:
print(r.path, r.status, len(r.transactions), "rows")
Uses ProcessPoolExecutor to bypass the GIL. Each file is parsed in its own worker process. Auto-detects format per file, or force with format_name="camt".
Command Line
After installation a bankstatementparser console script is available on PATH:
# Parse and display
bankstatementparser --type camt --input statement.xml
# Export to CSV
bankstatementparser --type camt --input statement.xml --output transactions.csv
# Stream with PII visible
bankstatementparser --type camt --input statement.xml --streaming --show-pii
# v0.0.5 — hybrid pipeline (auto-routes deterministic / text-LLM / vision)
bankstatementparser --type ingest --input statement.pdf
bankstatementparser --type ingest --input statement.pdf --output ledger.csv
Supports --type camt, --type pain001, and --type ingest (v0.0.5). The python -m bankstatementparser.cli ... invocation form continues to work for parity with older releases.
Deduplication
Detect duplicate transactions across multiple sources:
from bankstatementparser import CamtParser, Deduplicator
parser = CamtParser("statement.xml")
dedup = Deduplicator()
result = dedup.deduplicate(dedup.from_dataframe(parser.parse()))
print(f"Unique: {len(result.unique_transactions)}")
print(f"Exact duplicates: {len(result.exact_duplicates)}")
print(f"Suspected matches: {len(result.suspected_matches)}")
The Deduplicator uses deterministic hashing for exact matches and configurable similarity thresholds for suspected matches. Each match group includes a confidence score and reason for auditability.
Export
parser = CamtParser("statement.xml")
parser.parse()
# CSV
parser.export_csv("output.csv")
# JSON (includes summary + transactions)
parser.export_json("output.json")
# Excel
parser.camt_to_excel("output.xlsx")
Polars (optional)
Convert any parser output to a Polars DataFrame:
polars_df = parser.to_polars()
lazy_df = parser.to_polars_lazy()
Install with pip install bankstatementparser[polars].
Examples
See examples/ for 22 runnable scripts (14 deterministic + 8 hybrid):
Deterministic parsers
| Example | What it demonstrates |
|---|---|
parse_camt_basic.py |
Load a CAMT.053 file and print transactions |
parse_camt_from_string.py |
Parse CAMT from an in-memory XML string |
inspect_camt.py |
Extract balances, stats, and summaries |
export_camt.py |
Export to CSV and JSON |
export_camt_excel.py |
Export to Excel workbook |
stream_camt.py |
Stream transactions incrementally |
parse_camt_zip.py |
Secure ZIP archive processing |
parse_detected_formats.py |
Auto-detect CSV, OFX, MT940, and XML formats |
parse_pain001_basic.py |
Parse a PAIN.001 payment file |
export_pain001.py |
Export PAIN.001 to CSV and JSON |
stream_pain001.py |
Stream payments incrementally |
validate_input.py |
Validate file paths with InputValidator |
compatibility_wrappers.py |
Legacy API wrappers |
cli_examples.sh |
CLI commands for CAMT and PAIN.001 |
Hybrid pipeline (v0.0.5)
| Example | What it demonstrates |
|---|---|
hybrid/generate_sample_pdfs.py |
Produce reproducible synthetic UK-bank PDFs (digital + scanned) |
hybrid/01_smart_ingest_deterministic.py |
Path A — smart_ingest() against a CAMT.053 fixture, $0 cost |
hybrid/02_smart_ingest_text_llm.py |
Path B — text-LLM extraction from a digital PDF (mock or live Ollama) |
hybrid/03_smart_ingest_vision.py |
Path C — multimodal vision extraction with LOW_TEXT_DENSITY auto-routing |
hybrid/04_golden_rule.py |
All three verify_balance() outcomes |
hybrid/05_dedupe_recurring.py |
normalize_description() + dedupe_by_hash() for idempotent batching |
hybrid/06_cli_walkthrough.sh |
Four flavours of the new --type ingest CLI subcommand |
See examples/hybrid/README.md for the full walkthrough including a Mermaid flow diagram, the cross-platform verification matrix, and the Ollama smoke-test results.
XML Tag Mapping
See docs/MAPPING.md for a complete reference of ISO 20022 XML tags to DataFrame columns across all six formats. Use this when integrating with ERP systems or building reconciliation pipelines.
Project Layout
bankstatementparser/ Source code (13 modules, 100% branch coverage)
docs/compliance/ ISO 13485 validation, risk register, traceability
examples/ 14 runnable example scripts
scripts/ SBOM generation, checksums, signature verification
tests/ 467 tests (unit, integration, property-based, security)
Security
Bank statement files contain sensitive financial and personal data. This library is designed with security as a primary constraint:
- XXE protection —
resolve_entities=False,no_network=True,load_dtd=False - ZIP bomb protection — compression ratio limits, entry size caps, encrypted entry rejection
- Path traversal prevention — dangerous pattern blocklist, symlink resolution
- PII redaction — default masking of names, IBANs, and addresses
- Signed commits — enforced in CI via GitHub API verification
- Supply chain — SHA-256 hash-locked dependencies, CycloneDX SBOM, build provenance attestation
For vulnerability reports, see SECURITY.md.
For the full compliance suite, see docs/compliance/.
Verify the Repository
Run the full validation suite locally:
ruff check bankstatementparser tests examples scripts
python -m mypy bankstatementparser
python -m pytest
bandit -r bankstatementparser examples scripts -q
Contributing
Signed commits required. See CONTRIBUTING.md.
License
Apache License 2.0. See LICENSE.
FAQ
What formats are supported? CAMT.053, PAIN.001, CSV, OFX, QFX, and MT940.
Does any data leave my infrastructure?
No. Zero network calls. XML parsers enforce no_network=True. No cloud, no telemetry.
Is PII redacted automatically? Yes. Names, IBANs, and addresses are masked by default in console output and streaming. File exports retain full data.
Is the extraction deterministic? Yes. Same input produces byte-identical output. Critical for financial auditing.
Can it handle large files?
Yes. parse_streaming() is tested at 50,000 transactions (~25 MB) with bounded memory. Files over 50 MB use chunk-based streaming.
See FAQ.md for the complete FAQ covering data privacy, technical specs, and treasury workflows.
THE ARCHITECT ᛫ Sebastien Rousseau ᛫ https://sebastienrousseau.com THE ENGINE ᛞ EUXIS ᛫ Enterprise Unified Execution Intelligence System ᛫ https://euxis.co
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