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track-ml-experiments

pjt222
업데이트됨 2 days ago
1 조회
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메타aiautomationdesign

정보

이 스킬은 MLflow 트래킹 서버를 설정하여 머신러닝 실험을 관리하고, 주요 프레임워크에 대한 자동 로깅과 체계적인 실행 비교를 가능하게 합니다. 개발자가 수동 로깅에서 전환하고, 원격 저장소에서 아티팩트를 관리하며, 완전한 계보 추적이 가능한 재현성 있는 워크플로를 구축하도록 돕습니다. 새로운 ML 프로젝트를 시작하거나 여러 훈련 실행을 체계적으로 비교해야 할 때 사용하세요.

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Claude Code

추천
기본
npx skills add pjt222/agent-almanac -a claude-code
플러그인 명령대체
/plugin add https://github.com/pjt222/agent-almanac
Git 클론대체
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/track-ml-experiments

Claude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요

문서

Track ML Experiments

See Extended Examples for complete configuration files and templates.

Set up MLflow tracking server + impl comprehensive experiment tracking w/ metrics, params, artifacts.

Use When

  • Start new ML proj needing experiment tracking
  • Migrate from manual logs → automated
  • Cmp multi training runs systematically
  • Share experiment results w/ team
  • Build reproducible ML workflows w/ full lineage
  • Integrate experiment tracking into CI/CD

In

  • Required: Python env w/ ML framework (sklearn, pytorch, tensorflow, xgboost)
  • Required: MLflow install (pip install mlflow)
  • Optional: Remote storage backend (S3, Azure Blob, GCS) for artifacts
  • Optional: DB backend (PostgreSQL, MySQL) for metadata
  • Optional: Auth creds for remote backends

Do

Step 1: Init MLflow Tracking Server

Setup w/ appropriate backend stores.

# Option 1: Local file-based tracking (development)
mkdir -p mlruns
export MLFLOW_TRACKING_URI="file:./mlruns"

# Option 2: SQLite backend with local artifacts
mlflow server \
  --backend-store-uri sqlite:///mlflow.db \
  --default-artifact-root ./mlartifacts \
# ... (see EXAMPLES.md for complete implementation)

Create config file for team sharing:

# mlflow_config.py
import os

MLFLOW_TRACKING_URI = os.getenv(
    "MLFLOW_TRACKING_URI",
    "http://mlflow-server.company.com:5000"
)

# ... (see EXAMPLES.md for complete implementation)

Got: MLflow UI accessible at host:port, empty experiments list. Server logs confirm startup w/o errors.

If err: Check port avail w/ netstat -tulpn | grep 5000, verify DB connection strings, ensure S3 creds configured (aws configure), check firewall for remote.

Step 2: Configure Autologging for ML Frameworks

Enable framework-specific autologging → capture metrics, params, models auto.

# training_script.py
import mlflow
from mlflow_config import MLFLOW_TRACKING_URI, MLFLOW_EXPERIMENT_NAME

# Set tracking URI
mlflow.set_tracking_uri(MLFLOW_TRACKING_URI)
mlflow.set_experiment(MLFLOW_EXPERIMENT_NAME)

# ... (see EXAMPLES.md for complete implementation)

For PyTorch:

import mlflow.pytorch

mlflow.pytorch.autolog(
    log_every_n_epoch=1,
    log_every_n_step=None,
    log_models=True,
    disable=False,
    exclusive=False,
# ... (see EXAMPLES.md for complete implementation)

Got: Run appears in UI w/ all hyperparams, metrics (training/val loss, acc), model artifacts, input examples auto-logged.

If err: Verify MLflow ver compat w/ ML framework (mlflow.sklearn.autolog() needs MLflow ≥1.20), check autolog supported for model type, disable + use manual logging fallback, inspect logs w/ mlflow.set_tracking_uri() for connection errs.

Step 3: Comprehensive Manual Logging

Add custom metrics, params, artifacts, tags for complete documentation.

# comprehensive_tracking.py
import mlflow
import numpy as np
import matplotlib.pyplot as plt
from pathlib import Path

def train_and_log_model(params, X_train, y_train, X_test, y_test):
    """
# ... (see EXAMPLES.md for complete implementation)

Got: UI displays rich info: step-by-step metrics, viz artifacts, model signature, input examples, comprehensive tags for filter/search.

If err: Check artifact storage perms (aws s3 ls s3://bucket/path), verify matplotlib backend for figure logging (plt.switch_backend('Agg')), ensure JSON-serializable for log_dict, check disk space for local.

Step 4: Compare Runs + Generate Reports

Use MLflow comparison tools to analyze multiple experiments.

# compare_runs.py
import mlflow
from mlflow.tracking import MlflowClient

client = MlflowClient()

def compare_experiments(experiment_name, metric_name="test_accuracy", top_n=5):
    """
# ... (see EXAMPLES.md for complete implementation)

CLI comparison:

# Compare runs using MLflow CLI
mlflow runs compare --experiment-name customer-churn \
  --order-by "metrics.test_accuracy DESC" \
  --max-results 10

# Export run data to CSV
mlflow experiments csv --experiment-name customer-churn \
  --output experiments.csv

Got: Console shows sorted runs w/ key metrics, HTML report w/ formatted comparison, CSV w/ all run data.

If err: Verify experiment exists w/ mlflow experiments list, check metric names match exact (case-sensitive), ensure runs completed (check status), verify file write perms for outputs.

Step 5: Configure Remote Artifact Storage

Setup S3/Azure/GCS backends for scalable artifact mgmt.

# artifact_storage_config.py
import mlflow
import os

def configure_s3_backend():
    """
    Configure S3 for artifact storage.
    """
# ... (see EXAMPLES.md for complete implementation)

Docker Compose for MLflow w/ PostgreSQL + S3:

# docker-compose.yml
version: '3.8'

services:
  postgres:
    image: postgres:14
    environment:
      POSTGRES_DB: mlflow
# ... (see EXAMPLES.md for complete implementation)

Got: Artifacts upload to remote, UI shows artifact links pointing to S3/Azure/GCS URIs, downloading from UI works.

If err: Verify cloud creds w/ aws s3 ls | az storage blob list, check bucket perms (write access), ensure MLflow w/ cloud extras (pip install mlflow[extras]), test net connectivity to storage, check CORS for browser access.

Step 6: Experiment Lifecycle Mgmt

Setup automated cleanup, archival, organization policies.

# lifecycle_management.py
import mlflow
from mlflow.tracking import MlflowClient
from datetime import datetime, timedelta

client = MlflowClient()

def archive_old_experiments(days_old=90):
# ... (see EXAMPLES.md for complete implementation)

Got: Old experiments → deleted state, failed runs removed from active, best runs tagged for filter, storage reclaimed.

If err: Check experiment perms (must be owner to delete), verify runs actually FAILED status, ensure metric exists for all ranked, check DB connectivity for bulk ops, verify perms for artifact deletion in remote.

Check

  • MLflow tracking server accessible via web UI
  • Experiments created + runs logged
  • Autologging captures framework-specific metrics auto
  • Custom metrics, params, artifacts logged correct
  • Comparison queries return expected top runs
  • Remote artifact storage configured + functional
  • Artifacts downloadable from UI + programmatic
  • Run filtering + searching works w/ tags
  • HTML comparison reports gen w/o errs
  • Lifecycle scripts execute

Traps

  • Connection timeouts: Server not accessible from training scripts → verify MLFLOW_TRACKING_URI env, check firewall, ensure server running
  • Artifact upload fails: S3/Azure creds not configured | bucket missing → test cloud CLI first, verify bucket perms
  • Missing metrics: Autologging disabled | unsupported framework ver → check compat, fallback to manual logging
  • Run clutter: Too many runs polluting UI → impl tagging strategy early, use lifecycle scripts regularly
  • Large artifacts: Logging entire datasets → storage bloat. Log samples | refs, use external data versioning (DVC)
  • Inconsistent naming: Params logged w/ diff names across runs → standardize naming in config
  • DB locks: SQLite no concurrent writes → use PostgreSQL/MySQL for multi-user
  • Autolog conflicts: Multiple autolog configs interfere → use exclusive=True | disable conflicting

  • register-ml-model — register tracked models in MLflow Model Registry
  • version-ml-data — version datasets via DVC for reproducible experiments
  • setup-automl-pipeline — integrate tracking into automated ML pipelines
  • deploy-ml-model-serving — deploy best-performing tracked models to prod
  • orchestrate-ml-pipeline — combine tracking w/ workflow orchestration

GitHub 저장소

pjt222/agent-almanac
경로: i18n/caveman-ultra/skills/track-ml-experiments
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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