Agent skill

Apache Spark Optimizer

Analyzes and optimizes Apache Spark jobs for performance, cost, and resource utilization

Stars 514
Forks 31

Install this agent skill to your Project

npx add-skill https://github.com/a5c-ai/babysitter/tree/main/library/specializations/data-engineering-analytics/skills/apache-spark-optimizer

SKILL.md

Apache Spark Optimizer

Overview

Analyzes and optimizes Apache Spark jobs for performance, cost, and resource utilization. This skill provides deep expertise in Spark execution plans, partitioning strategies, and resource configuration to maximize efficiency.

Capabilities

  • Spark execution plan analysis and optimization
  • Partition strategy recommendations
  • Shuffle reduction techniques
  • Memory and executor configuration tuning
  • Catalyst optimizer hints generation
  • Data skew detection and mitigation
  • Broadcast join optimization
  • Caching strategy recommendations

Input Schema

json
{
  "sparkCode": "string",
  "clusterConfig": "object",
  "executionMetrics": "object",
  "dataCharacteristics": {
    "volumeGB": "number",
    "partitionCount": "number",
    "skewFactor": "number"
  }
}

Output Schema

json
{
  "optimizedCode": "string",
  "recommendations": ["string"],
  "expectedImprovement": {
    "executionTime": "percentage",
    "resourceUsage": "percentage",
    "cost": "percentage"
  },
  "configChanges": "object"
}

Target Processes

  • ETL/ELT Pipeline
  • Streaming Pipeline
  • Feature Store Setup
  • Pipeline Migration

Usage Guidelines

  1. Provide the Spark code or job definition for analysis
  2. Include cluster configuration details (executors, memory, cores)
  3. Share execution metrics if available (from Spark UI or history server)
  4. Describe data characteristics including volume, partitions, and known skew

Best Practices

  • Always analyze execution plans before and after optimization
  • Test optimizations on representative data samples first
  • Monitor resource utilization during optimization validation
  • Document configuration changes for reproducibility
  • Consider cost implications alongside performance gains

Expand your agent's capabilities with these related and highly-rated skills.

a5c-ai/babysitter

gsd-tools

Central utility skill for GSD operations. Provides config parsing, slug generation, timestamps, path operations, and orchestrates calls to other specialized skills. Acts as the unified entry point that the original gsd-tools.cjs provided via its lib/ modules (commands, config, core, init).

514 31
Explore
a5c-ai/babysitter

model-profile-resolution

Resolve model profile (quality/balanced/budget) at orchestration start and map agents to specific models. Enables cost/quality tradeoffs by selecting appropriate AI models for each agent role.

514 31
Explore
a5c-ai/babysitter

verification-suite

Plan structure validation, phase completeness checks, reference integrity verification, and artifact existence confirmation. Provides the structured verification layer ensuring GSD artifacts are well-formed and complete.

514 31
Explore
a5c-ai/babysitter

state-management

STATE.md reading, writing, and field-level updates. Provides cross-session state persistence via .planning/STATE.md with structured fields for current task, completed phases, blockers, decisions, and quick tasks.

514 31
Explore
a5c-ai/babysitter

git-integration

Git commit patterns, formats, and conventions for GSD methodology. Provides atomic commits per task, structured commit messages, planning file commits, branch management, and milestone tag operations.

514 31
Explore
a5c-ai/babysitter

frontmatter-parsing

YAML frontmatter parsing and manipulation for .planning/ documents. Provides read, write, update, query, and validation operations on frontmatter blocks in GSD markdown artifacts.

514 31
Explore

Didn't find tool you were looking for?

Be as detailed as possible for better results