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Shared constants and utilities for ChainSwarm blockchain analytics projects

Project description

chainswarm-core

CI PyPI version Python 3.13+ License

Shared constants and utilities for ChainSwarm blockchain analytics projects.

Overview

chainswarm-core provides a single source of truth for:

  • Blockchain network definitions - Network types, block times, native assets
  • Address classifications - Address types, trust levels, risk mappings
  • Pattern detection constants - Pattern types, detection methods, role classifications
  • Database utilities - ClickHouse repository base class and row conversion utilities
  • Observability - Logging, metrics (Prometheus), and graceful shutdown
  • Celery jobs - Celery app factory, base task class, loguru integration

This package eliminates code duplication across ChainSwarm projects including:

  • data-pipeline
  • chain-synthetics
  • analytics-pipeline
  • ml-pipeline
  • benchmark
  • risk-scoring

Installation

pip install chainswarm-core

For development:

pip install chainswarm-core[dev]

Quick Start

from chainswarm_core import (
    AddressTypes,
    Network,
    NetworkType,
    RiskLevels,
    TrustLevels,
)

# Check network type
if Network.get_node_type("polkadot") == NetworkType.SUBSTRATE:
    print("Polkadot is a Substrate network")

# Get block time
block_time = Network.get_block_time("bitcoin")  # Returns 600 seconds

# Check address risk
from chainswarm_core.constants import get_address_type_risk_level, is_high_risk_address_type

risk = get_address_type_risk_level(AddressTypes.MIXER)  # Returns "critical"
is_risky = is_high_risk_address_type(AddressTypes.GAMBLING)  # Returns True

Modules

chainswarm_core.constants.networks

Network type classifications and blockchain network enum.

from chainswarm_core.constants.networks import (
    NetworkType,      # SUBSTRATE, EVM, UTXO
    Network,          # Enum of supported networks
    substrate_networks,
    evm_networks,
    utxo_networks,
)

# Get native asset symbol
symbol = Network.get_native_asset_symbol("bittensor")  # Returns "TAO"

chainswarm_core.constants.addresses

Address type and trust level classifications.

from chainswarm_core.constants.addresses import (
    AddressTypes,     # EXCHANGE, DEX, MIXER, VALIDATOR, etc.
    TrustLevels,      # VERIFIED, COMMUNITY, OFFICIAL, etc.
    is_high_risk_address_type,
    is_trusted_address_type,
)

chainswarm_core.constants.risk

Risk levels, severities, and risk mappings.

from chainswarm_core.constants.risk import (
    RiskLevels,       # LOW, MEDIUM, HIGH, CRITICAL
    Severities,       # LOW, MEDIUM, HIGH, CRITICAL
    ADDRESS_TYPE_RISK_MAP,
    AddressSubtypeRiskModifiers,
    get_address_type_risk_level,
    get_subtype_risk_modifier,
)

# Get risk level for address type
risk = get_address_type_risk_level(AddressTypes.SCAM)  # Returns "critical"

# Get risk modifier for subtype
modifier = get_subtype_risk_modifier("uniswap_v3")  # Returns 0.8

chainswarm_core.constants.patterns

Pattern detection types and role classifications.

from chainswarm_core.constants.patterns import (
    PatternTypes,     # CYCLE, LAYERING_PATH, SMURFING_NETWORK, etc.
    DetectionMethods, # SCC_ANALYSIS, CYCLE_DETECTION, etc.
    PatternRoles,     # ATTACKER, MULE, HOT_WALLET, etc.
    MALICIOUS_ROLES,
    VICTIM_ROLES,
    BENIGN_ROLES,
    is_malicious_role,
    is_victim_role,
    is_benign_role,
)

chainswarm_core.db

ClickHouse database utilities.

from chainswarm_core.db import (
    BaseRepository,
    row_to_dict,
    convert_clickhouse_enum,
    clickhouse_row_to_pydantic,
    rows_to_pydantic_list,
)

# Create a repository
class MyRepository(BaseRepository):
    @classmethod
    def schema(cls) -> str:
        return "my_table.sql"
    
    @classmethod
    def table_name(cls) -> str:
        return "my_table"

# Convert rows to Pydantic models
from pydantic import BaseModel

class MyModel(BaseModel):
    id: int
    name: str

rows = [(1, "first"), (2, "second")]
columns = ["id", "name"]
models = rows_to_pydantic_list(MyModel, rows, columns)

chainswarm_core.observability

Unified logging, metrics, and shutdown handling.

Logging

from chainswarm_core.observability import (
    setup_logger,
    generate_correlation_id,
    get_correlation_id,
    set_correlation_id,
)

setup_logger("my-service")

correlation_id = generate_correlation_id()
set_correlation_id(correlation_id)

from loguru import logger
logger.info("Processing request")

Graceful Shutdown

from chainswarm_core.observability import (
    terminate_event,
    install_shutdown_handlers,
)

install_shutdown_handlers()

while not terminate_event.is_set():
    process_batch()

Prometheus Metrics

from chainswarm_core.observability import (
    setup_metrics,
    get_metrics_registry,
    MetricsRegistry,
    DURATION_BUCKETS,
)

PORT_MAPPING = {
    "my-service-indexer": 9101,
    "my-service-api": 9200,
}

metrics = setup_metrics("my-service-indexer", port_mapping=PORT_MAPPING)

blocks_counter = metrics.create_counter(
    "blocks_processed_total",
    "Total blocks processed",
    labelnames=["network"]
)
blocks_counter.labels(network="torus").inc()

processing_time = metrics.create_histogram(
    "block_processing_seconds",
    "Block processing duration",
    buckets=DURATION_BUCKETS
)
with processing_time.time():
    process_block()

Metrics Decorator

from chainswarm_core.observability import manage_metrics

@manage_metrics(success_metric_name="task_success", failure_metric_name="task_failure")
def run_task():
    pass

chainswarm_core.jobs

Celery infrastructure with loguru integration and JSON beat schedule loading.

Create Celery App

from chainswarm_core.jobs import create_celery_app

celery_app = create_celery_app(
    name="my-service-jobs",
    autodiscover=["packages.jobs.tasks"],
    beat_schedule_path="packages/jobs/beat_schedule.json",
)

Define Tasks

from chainswarm_core.jobs import BaseTask, BaseTaskContext, BaseTaskResult
from typing import Any, Dict

class MyTask(BaseTask):
    name = "my_task"

    def execute_task(self, context: Dict[str, Any]) -> Dict[str, Any]:
        ctx = BaseTaskContext(**context)
        return BaseTaskResult(
            network=ctx.network,
            status="success",
            processing_date=ctx.processing_date,
        ).__dict__

my_task = celery_app.register_task(MyTask())

Beat Schedule JSON

{
  "my-task-every-hour": {
    "task": "packages.jobs.tasks.my_task",
    "schedule": "0 * * * *",
    "args": [{"network": "torus", "processing_date": "2024-01-01"}]
  }
}

Cron strings are automatically converted to crontab() objects.

Development Worker

from chainswarm_core.jobs import create_celery_app, run_dev_worker

celery_app = create_celery_app("my-service", ["packages.jobs.tasks"])

if __name__ == "__main__":
    run_dev_worker(celery_app)

Migration Guide

From project-local constants

Before:

from packages.storage.constants import AddressTypes, RiskLevels
from packages.storage.repositories.base_repository import BaseRepository

After:

from chainswarm_core import AddressTypes, RiskLevels, BaseRepository

From project-local repository utils

Before:

from packages.storage.repositories.utils import row_to_dict

After:

from chainswarm_core.db import row_to_dict

Development

Setup

# Clone the repository
git clone https://github.com/chainswarm/core.git
cd core

# Install with dev dependencies
pip install -e ".[dev]"

# Run tests
pytest tests/ -v

Running Tests

# All tests
pytest

# With coverage
pytest --cov=chainswarm_core --cov-report=html

# Specific module
pytest tests/test_constants/test_networks.py -v

CI/CD

  • CI: Runs on every push and PR to main

    • Tests on Python 3.13
  • Publish: Manual workflow dispatch to publish to PyPI

    • Requires version match in pyproject.toml
    • Creates GitHub release with tag

Contributing

  1. Fork the repository
  2. Create a feature branch (git checkout -b feature/amazing-feature)
  3. Make your changes
  4. Run tests
  5. Commit your changes (git commit -m 'Add amazing feature')
  6. Push to the branch (git push origin feature/amazing-feature)
  7. Open a Pull Request

License

This project is licensed under the Apache License 2.0 - see the LICENSE file for details.

Links

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