Agent Skills: Senior ML Engineer

ML engineering skill for productionizing models, building MLOps pipelines, and integrating LLMs. Covers model deployment, feature stores, drift monitoring, RAG systems, and cost optimization.

UncategorizedID: alirezarezvani/claude-skills/senior-ml-engineer

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engineering-team/senior-ml-engineer/SKILL.md

Skill Metadata

Name
senior-ml-engineer
Description
ML engineering skill for productionizing models, building MLOps pipelines, and integrating LLMs. Covers model deployment, feature stores, drift monitoring, RAG systems, and cost optimization.

Senior ML Engineer

Production ML engineering patterns for model deployment, MLOps infrastructure, and LLM integration.


Table of Contents


Model Deployment Workflow

Deploy a trained model to production with monitoring:

  1. Export model to standardized format (ONNX, TorchScript, SavedModel)
  2. Package model with dependencies in Docker container
  3. Deploy to staging environment
  4. Run integration tests against staging
  5. Deploy canary (5% traffic) to production
  6. Monitor latency and error rates for 1 hour
  7. Promote to full production if metrics pass
  8. Validation: p95 latency < 100ms, error rate < 0.1%

Container Template

FROM python:3.11-slim

COPY requirements.txt .
RUN pip install --no-cache-dir -r requirements.txt

COPY model/ /app/model/
COPY src/ /app/src/

HEALTHCHECK CMD curl -f http://localhost:8080/health || exit 1

EXPOSE 8080
CMD ["uvicorn", "src.server:app", "--host", "0.0.0.0", "--port", "8080"]

Serving Options

| Option | Latency | Throughput | Use Case | |--------|---------|------------|----------| | FastAPI + Uvicorn | Low | Medium | REST APIs, small models | | Triton Inference Server | Very Low | Very High | GPU inference, batching | | TensorFlow Serving | Low | High | TensorFlow models | | TorchServe | Low | High | PyTorch models | | Ray Serve | Medium | High | Complex pipelines, multi-model |


MLOps Pipeline Setup

Establish automated training and deployment:

  1. Configure feature store (Feast, Tecton) for training data
  2. Set up experiment tracking (MLflow, Weights & Biases)
  3. Create training pipeline with hyperparameter logging
  4. Register model in model registry with version metadata
  5. Configure staging deployment triggered by registry events
  6. Set up A/B testing infrastructure for model comparison
  7. Enable drift monitoring with alerting
  8. Validation: New models automatically evaluated against baseline

Feature Store Pattern

from feast import Entity, Feature, FeatureView, FileSource

user = Entity(name="user_id", value_type=ValueType.INT64)

user_features = FeatureView(
    name="user_features",
    entities=["user_id"],
    ttl=timedelta(days=1),
    features=[
        Feature(name="purchase_count_30d", dtype=ValueType.INT64),
        Feature(name="avg_order_value", dtype=ValueType.FLOAT),
    ],
    online=True,
    source=FileSource(path="data/user_features.parquet"),
)

Retraining Triggers

| Trigger | Detection | Action | |---------|-----------|--------| | Scheduled | Cron (weekly/monthly) | Full retrain | | Performance drop | Accuracy < threshold | Immediate retrain | | Data drift | PSI > 0.2 | Evaluate, then retrain | | New data volume | X new samples | Incremental update |


LLM Integration Workflow

Integrate LLM APIs into production applications:

  1. Create provider abstraction layer for vendor flexibility
  2. Implement retry logic with exponential backoff
  3. Configure fallback to secondary provider
  4. Set up token counting and context truncation
  5. Add response caching for repeated queries
  6. Implement cost tracking per request
  7. Add structured output validation with Pydantic
  8. Validation: Response parses correctly, cost within budget

Provider Abstraction

from abc import ABC, abstractmethod
from tenacity import retry, stop_after_attempt, wait_exponential

class LLMProvider(ABC):
    @abstractmethod
    def complete(self, prompt: str, **kwargs) -> str:
        pass

@retry(stop=stop_after_attempt(3), wait=wait_exponential(min=1, max=10))
def call_llm_with_retry(provider: LLMProvider, prompt: str) -> str:
    return provider.complete(prompt)

Cost Management

| Provider | Input Cost | Output Cost | |----------|------------|-------------| | GPT-4 | $0.03/1K | $0.06/1K | | GPT-3.5 | $0.0005/1K | $0.0015/1K | | Claude 3 Opus | $0.015/1K | $0.075/1K | | Claude 3 Haiku | $0.00025/1K | $0.00125/1K |


RAG System Implementation

Build retrieval-augmented generation pipeline:

  1. Choose vector database (Pinecone, Qdrant, Weaviate)
  2. Select embedding model based on quality/cost tradeoff
  3. Implement document chunking strategy
  4. Create ingestion pipeline with metadata extraction
  5. Build retrieval with query embedding
  6. Add reranking for relevance improvement
  7. Format context and send to LLM
  8. Validation: Response references retrieved context, no hallucinations

Vector Database Selection

| Database | Hosting | Scale | Latency | Best For | |----------|---------|-------|---------|----------| | Pinecone | Managed | High | Low | Production, managed | | Qdrant | Both | High | Very Low | Performance-critical | | Weaviate | Both | High | Low | Hybrid search | | Chroma | Self-hosted | Medium | Low | Prototyping | | pgvector | Self-hosted | Medium | Medium | Existing Postgres |

Chunking Strategies

| Strategy | Chunk Size | Overlap | Best For | |----------|------------|---------|----------| | Fixed | 500-1000 tokens | 50-100 | General text | | Sentence | 3-5 sentences | 1 sentence | Structured text | | Semantic | Variable | Based on meaning | Research papers | | Recursive | Hierarchical | Parent-child | Long documents |


Model Monitoring

Monitor production models for drift and degradation:

  1. Set up latency tracking (p50, p95, p99)
  2. Configure error rate alerting
  3. Implement input data drift detection
  4. Track prediction distribution shifts
  5. Log ground truth when available
  6. Compare model versions with A/B metrics
  7. Set up automated retraining triggers
  8. Validation: Alerts fire before user-visible degradation

Drift Detection

from scipy.stats import ks_2samp

def detect_drift(reference, current, threshold=0.05):
    statistic, p_value = ks_2samp(reference, current)
    return {
        "drift_detected": p_value < threshold,
        "ks_statistic": statistic,
        "p_value": p_value
    }

Alert Thresholds

| Metric | Warning | Critical | |--------|---------|----------| | p95 latency | > 100ms | > 200ms | | Error rate | > 0.1% | > 1% | | PSI (drift) | > 0.1 | > 0.2 | | Accuracy drop | > 2% | > 5% |


Reference Documentation

MLOps Production Patterns

references/mlops_production_patterns.md contains:

  • Model deployment pipeline with Kubernetes manifests
  • Feature store architecture with Feast examples
  • Model monitoring with drift detection code
  • A/B testing infrastructure with traffic splitting
  • Automated retraining pipeline with MLflow

LLM Integration Guide

references/llm_integration_guide.md contains:

  • Provider abstraction layer pattern
  • Retry and fallback strategies with tenacity
  • Prompt engineering templates (few-shot, CoT)
  • Token optimization with tiktoken
  • Cost calculation and tracking

RAG System Architecture

references/rag_system_architecture.md contains:

  • RAG pipeline implementation with code
  • Vector database comparison and integration
  • Chunking strategies (fixed, semantic, recursive)
  • Embedding model selection guide
  • Hybrid search and reranking patterns

Tools

Model Deployment Pipeline

python scripts/model_deployment_pipeline.py --model model.pkl --target staging

Generates deployment artifacts: Dockerfile, Kubernetes manifests, health checks.

RAG System Builder

python scripts/rag_system_builder.py --config rag_config.yaml --analyze

Scaffolds RAG pipeline with vector store integration and retrieval logic.

ML Monitoring Suite

python scripts/ml_monitoring_suite.py --config monitoring.yaml --deploy

Sets up drift detection, alerting, and performance dashboards.


Tech Stack

| Category | Tools | |----------|-------| | ML Frameworks | PyTorch, TensorFlow, Scikit-learn, XGBoost | | LLM Frameworks | LangChain, LlamaIndex, DSPy | | MLOps | MLflow, Weights & Biases, Kubeflow | | Data | Spark, Airflow, dbt, Kafka | | Deployment | Docker, Kubernetes, Triton | | Databases | PostgreSQL, BigQuery, Pinecone, Redis |