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Lightweight Python library for reading and writing MCAP files

Project description

small-mcap

Lightweight Python library for reading and writing MCAP files.

Installation

uv add small-mcap

# With compression support
uv add small-mcap[compression]  # ZSTD + LZ4
uv add small-mcap[zstd]         # ZSTD only
uv add small-mcap[lz4]          # LZ4 only

Reader

Basic read

from small_mcap import read_message

with open("input.mcap", "rb") as f:
    for schema, channel, message in read_message(f):
        print(f"{channel.topic}: {message.data}")

Read multiple inputs

from small_mcap import read_message

with open("recording1.mcap", "rb") as f1, \
     open("recording2.mcap", "rb") as f2, \
     open("recording3.mcap", "rb") as f3:
    for schema, channel, message in read_message([f1, f2, f3]):
        print(f"{channel.topic}: {message.log_time}")

Read with topic filtering

from small_mcap import read_message, include_topics

with open("input.mcap", "rb") as f:
    topics = ["/camera/image", "/lidar/points"]
    for schema, channel, message in read_message(f, should_include=include_topics(topics)):
        print(f"{channel.topic}: {len(message.data)} bytes")

Read with time range

from small_mcap import read_message

with open("input.mcap", "rb") as f:
    start = 1000000000  # nanoseconds
    end = 2000000000
    for schema, channel, message in read_message(f, start_time_ns=start, end_time_ns=end):
        print(f"{channel.topic} at {message.log_time}")

Read decoded messages

from small_mcap import read_message_decoded
import json

class JsonDecoderFactory:
    def decoder_for(self, schema):
        if schema.encoding == "json":
            return lambda data: json.loads(data)
        return None

with open("input.mcap", "rb") as f:
    for msg in read_message_decoded(f, decoder_factories=[JsonDecoderFactory()]):
        print(f"{msg.channel.topic}: {msg.decoded_message}")

Read summary/metadata

from small_mcap import get_summary, get_header

with open("input.mcap", "rb") as f:
    summary = get_summary(f)
    print(f"Messages: {summary.statistics.message_count}")
    print(f"Duration: {summary.statistics.message_start_time} - {summary.statistics.message_end_time}")

    for channel in summary.channels.values():
        print(f"  {channel.topic}: {channel.message_encoding}")

Writer

Basic write

from small_mcap import McapWriter

with open("output.mcap", "wb") as f:
    writer = McapWriter(f)
    writer.start(profile="", library="my-app")

    # Add schema
    schema_id = 1
    writer.add_schema(schema_id, "MySchema", "json", b'{"type": "object"}')

    # Add channel
    channel_id = 1
    writer.add_channel(channel_id, "/my/topic", "json", schema_id)

    # Add messages
    for i in range(100):
        writer.add_message(
            channel_id,
            log_time=i * 1000000,  # nanoseconds
            data=b'{"value": 42}',
            publish_time=i * 1000000
        )

    writer.finish()

Write with compression

from small_mcap import McapWriter, CompressionType

with open("output.mcap", "wb") as f:
    writer = McapWriter(
        f,
        compression=CompressionType.ZSTD,
        chunk_size=1024 * 1024  # 1MB chunks
    )
    writer.start(profile="", library="my-app")

    schema_id = 1
    writer.add_schema(schema_id, "MySchema", "json", b"{}")
    channel_id = 1
    writer.add_channel(channel_id, "/topic", "json", schema_id)

    for i in range(1000):
        writer.add_message(channel_id, log_time=i*1000, data=b"data", publish_time=i*1000)

    writer.finish()

Write with encoder factory

from small_mcap import McapWriter
import json

class JsonEncoderFactory:
    """Implements EncoderFactoryProtocol for JSON messages."""
    profile = ""
    encoding = "jsonschema"
    message_encoding = "json"

    def encoder_for(self, schema):
        return lambda msg: json.dumps(msg).encode()

with open("output.mcap", "wb") as f:
    writer = McapWriter(f, encoder_factory=JsonEncoderFactory())
    writer.start(profile="", library="my-app")

    schema_id = 1
    writer.add_schema(schema_id, "SensorData", "jsonschema", b'{"type": "object"}')

    channel_id = 1
    writer.add_channel(channel_id, "/sensor/data", "json", schema_id)

    for i in range(100):
        msg = {"timestamp": i, "value": i * 2}
        writer.add_message_encode(channel_id, i * 1000, msg, publish_time=i * 1000)

    writer.finish()

Features

  • Zero dependencies for core functionality
  • Optional compression support (ZSTD, LZ4)
  • Lazy chunk loading for efficient memory usage
  • Topic and time-range filtering
  • Automatic schema/channel registration
  • CRC validation
  • Fast summary/metadata access

Performance

small-mcap is optimized for high-performance MCAP file reading with zero-copy operations and lazy chunk loading:

Key Optimizations:

  • Zero-copy memory access: Uses memoryview to avoid unnecessary data copies
  • Lazy chunk loading: Only decompresses chunks when needed
  • Parallel chunk decompression: num_workers threads decompress chunks ahead of the reader (zstd/lz4 release the GIL)
  • Binary search: Efficient time-range filtering using chunk indexes
  • Heap-based merging: Optimal multi-file reading with automatic ID remapping

Parallel Prefetch (num_workers)

Pass num_workers to read_message to decompress chunks in parallel using a thread pool. The main thread reads raw bytes sequentially while worker threads decompress ahead.

with open("large.mcap", "rb") as f:
    for schema, channel, message in read_message(f, num_workers=4):
        ...

Benchmarked on the included nuScenes MCAP file (431 MB, 560 zstd chunks, 30,900 messages; median of 5 runs):

Workers Median time (s) Msg/s Speedup
0 0.3878 79,675 1.00x
2 0.2017 153,223 1.92x
4 0.1357 227,727 2.86x
8 0.0920 335,839 4.22x

Comparison with other libraries:

Feature small-mcap mcap (official) rosbags pybag
Performance Fastest Fast Fast Moderate
Zero dependencies Yes No No No
Non-seekable streams Yes Yes No No
Multi-file reading Yes No Yes Yes
ROS1 support No No Yes No
SQLite3 backend No No Yes No

Benchmarks

Median runtime from pytest-benchmark on the included nuScenes dataset (data/data/nuScenes-v1.0-mini-scene-0061-ros2.mcap, 30,900 messages, 19.15s duration, 560 zstd chunks):

Scenario small-mcap mcap (official) rosbags pybag
Full read (seekable) 399.4 ms 493.4 ms 429.9 ms 521.4 ms
Full read (non-seekable) 405.9 ms 495.2 ms - -
Time-range filter (seekable) 106.1 ms 127.7 ms 426.3 ms 131.1 ms
Time-range filter (non-seekable) 125.0 ms 146.6 ms - -
Topic filter (seekable) 375.9 ms 458.9 ms 397.6 ms 451.9 ms
Topic filter (non-seekable) 396.4 ms 470.0 ms - -

Note: rosbags and pybag require seekable streams and are skipped for the non-seekable cases.

Summary:

  • small-mcap was fastest in all six scenarios
  • 1.17-1.24x faster than mcap (official) across all scenarios
  • 1.06-4.02x faster than rosbags where rosbags supports the scenario
  • 1.20-1.31x faster than pybag on seekable streams

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