Skip to main content

Python tools for CUTracer trace validation and analysis

Project description

CUTracer Python Module

Python tools for CUTracer trace validation, parsing, and analysis.

Overview

The cutracer Python package provides a comprehensive framework for working with CUTracer trace files. This module is designed to be:

  • Reusable: Import and use in your own Python scripts
  • Testable: Full unittest suite with real trace data
  • Type-safe: Type hints and mypy compatibility
  • Extensible: Plugin architecture for future enhancements

Installation

For Development

cd /path/to/CUTracer/python
pip install -e ".[dev]"

For Production Use

cd /path/to/CUTracer/python
pip install .

Features

Trace Validation (Current)

  • JSON Validation: Validate NDJSON trace files (mode 2) for syntax and schema compliance
  • Text Validation: Validate text-format trace files (mode 0) for format compliance
  • Cross-Format Consistency: Compare different trace formats for data consistency

Planned Features

  • Trace Parsing: Parse trace files into structured Python objects
  • Analysis Tools: Instruction histograms, performance metrics, trace comparison
  • Format Conversion: Convert between different trace formats
  • Compression Support: Handle zstd-compressed traces (mode 1)

Usage

CLI

After installation, the cutracer command provides a unified interface for tracing, querying, and analyzing CUDA traces:

# Trace a CUDA application (requires cutracer.so — see main README for build)
export CUTRACER_LIB_PATH=/path/to/CUTracer/lib
cutracer trace -i tma_trace -- python test.py

# Validate trace files
cutracer validate kernel_trace.ndjson

# Query and filter trace data
cutracer query trace.ndjson --filter "warp=24"

# Analyze traces
cutracer analyze warp-summary trace.ndjson

Python API

from cutracer.validation import (
    validate_json_trace,
    validate_text_trace,
    compare_trace_formats,
)

# Validate JSON trace
result = validate_json_trace("kernel_trace.ndjson")
if result["valid"]:
    print(f"✓ Valid JSON trace with {result['record_count']} records")
else:
    print(f"✗ Validation failed: {result['errors']}")

# Validate text trace
result = validate_text_trace("kernel_trace.log")
if result["valid"]:
    print(f"✓ Valid text trace")
else:
    print(f"✗ Validation failed: {result['errors']}")

# Compare two formats
result = compare_trace_formats("kernel_trace.log", "kernel_trace.ndjson")
if result["consistent"]:
    print("✓ Formats are consistent")
else:
    print(f"✗ Inconsistencies found: {result['differences']}")

Module Structure

python/
├── cutracer/                        # Main package
│   ├── __init__.py                  # Package entry point with version
│   └── validation/                  # Validation framework
│       ├── __init__.py              # Validation API exports
│       ├── schema_loader.py         # JSON Schema loader
│       ├── json_validator.py        # JSON syntax & schema validation
│       ├── text_validator.py        # Text format validation
│       ├── consistency.py           # Cross-format consistency checks
│       └── schemas/                 # JSON Schema definitions
│           ├── __init__.py
│           ├── reg_trace.schema.json
│           ├── mem_trace.schema.json
│           ├── opcode_only.schema.json
│           └── delay_config.schema.json
├── tests/                           # Unit tests
│   ├── __init__.py
│   ├── test_base.py                 # Base test class and utilities
│   ├── test_schemas.py              # Schema loading tests
│   ├── test_json_validator.py       # JSON validation tests
│   ├── test_text_validator.py       # Text validation tests
│   ├── test_consistency.py          # Consistency check tests
│   └── example_inputs/              # Real trace data for tests
│       ├── reg_trace_sample.ndjson
│       ├── reg_trace_sample.log
│       ├── invalid_syntax.ndjson
│       └── invalid_schema.ndjson
├── pyproject.toml                   # Modern Python project config
└── README.md                        # This file

Development

Running Tests

cd python/

# Run all tests
python -m unittest discover -s tests -v

# Run specific test file
python -m unittest tests.test_json_validator -v

Type Checking

cd python/
mypy cutracer/

Code Formatting

# From project root directory
./format.sh format

# Or manually with ufmt
ufmt format python/
usort format python/

Running All Checks

# Format code
./format.sh format

# Type check
mypy cutracer/

# Run tests
python -m unittest discover -s tests -v

Validation Details

JSON Trace Validation

The JSON validator checks:

  • Syntax: Valid JSON format on each line (NDJSON)
  • Schema: Correct field types and structure per JSON Schema
  • Required Fields: message_type, ctx, kernel_launch_id, trace_index, timestamp, sass, etc.
  • Register Values: Arrays of integers with proper format
  • CTA/Warp IDs: Valid integer ranges

Text Trace Validation

The text validator checks:

  • Format Patterns: Correct CTX/CTA/warp header patterns
  • Register Output: Proper hex format (e.g., Reg0_T00: 0x...)
  • Memory Access: Valid memory address patterns

Consistency Validation

The consistency validator compares:

  • Record Counts: Same number of records in both formats
  • Content Matching: Same kernel IDs, trace indices, SASS strings
  • Timestamp Order: Consistent ordering between formats

Trace Format Reference

JSON Format (NDJSON - Mode 2)

Each line is a JSON object with the following structure:

{
  "message_type": "reg_trace",
  "ctx": "0x58a0c0",
  "kernel_launch_id": 0,
  "trace_index": 0,
  "timestamp": 1762026820167834792,
  "sass": "LDC R1, c[0x0][0x28] ;",
  "pc": 0,
  "opcode_id": 0,
  "warp": 0,
  "cta": [0, 0, 0],
  "regs": [[0, 0, 0, ...]]
}

Text Format (Mode 0)

Human-readable format with CTX headers and register values:

CTX 0x58a0c0 - CTA 0,0,0 - warp 0 - LDC R1, c[0x0][0x28] ;:
    * Reg0_T00: 0x0000000000000000  Reg0_T01: 0x0000000000000000 ...

Contributing

  1. Install development dependencies: pip install -e ".[dev]"
  2. Make your changes
  3. Run tests: python -m unittest discover -s tests -v
  4. Run type checker: mypy cutracer/
  5. Format code: ./format.sh format
  6. Submit a pull request

License

MIT License - See LICENSE file for details.

Support

For issues and questions, please open an issue on the CUTracer GitHub repository.

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

cutracer-0.2.2.dev20260509075914.tar.gz (91.4 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

cutracer-0.2.2.dev20260509075914-py3-none-any.whl (72.9 kB view details)

Uploaded Python 3

File details

Details for the file cutracer-0.2.2.dev20260509075914.tar.gz.

File metadata

File hashes

Hashes for cutracer-0.2.2.dev20260509075914.tar.gz
Algorithm Hash digest
SHA256 74b77cfa38cf0d925385135d727da4d2a52a07b4ed1f4c5619eb5837f3694893
MD5 699112e5722ec6a310a5b8eaf676e2bf
BLAKE2b-256 fc5bad329ccd5994a6113eedc42cf316f7a75f62b44b1a156fac2cce1df21c36

See more details on using hashes here.

Provenance

The following attestation bundles were made for cutracer-0.2.2.dev20260509075914.tar.gz:

Publisher: nightly-pypi.yml on facebookexperimental/CUTracer

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

File details

Details for the file cutracer-0.2.2.dev20260509075914-py3-none-any.whl.

File metadata

File hashes

Hashes for cutracer-0.2.2.dev20260509075914-py3-none-any.whl
Algorithm Hash digest
SHA256 d9bd5dc18fa1319ebb1085fd6df481c0e2b8a02a6d86e1eabc77c165320038bb
MD5 64af92c96971f1727a45877e207712c7
BLAKE2b-256 8836f6af2c8c047a6e1d88a9768d2d8860cf7355f1e7d45b17c51e0769cb281f

See more details on using hashes here.

Provenance

The following attestation bundles were made for cutracer-0.2.2.dev20260509075914-py3-none-any.whl:

Publisher: nightly-pypi.yml on facebookexperimental/CUTracer

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page