Skip to main content

Capture Spark plans, config, and table metadata for Cluster Yield analysis

Project description

cluster-yield-snapshot

Passive Spark plan capture for Cluster Yield analysis. Drop two lines into any notebook — no refactoring, no query registration, no code changes.

Works on Databricks (serverless + classic), EMR, Dataproc, and open-source Spark.

Install

pip install cluster-yield-snapshot

# In a Databricks notebook
%pip install cluster-yield-snapshot

How it works

Two lines at the top. Two lines at the bottom. Everything in between is untouched:

# Cell 1 — start capture
from cluster_yield_snapshot import CYSnapshot
cy = CYSnapshot(spark).start()
# ═══════════════════════════════════════════
# Rest of the notebook — completely unchanged
# ═══════════════════════════════════════════
df = spark.sql("SELECT * FROM orders WHERE date > '2024-01-01'")
users = spark.table("analytics.users")
enriched = df.join(users, "user_id").groupBy("region").agg(sum("amount"))
enriched.write.parquet("s3://output/regional_revenue")
# Last cell — harvest
cy.stop().save()

That's it. Every spark.sql() call, every .collect(), every .write.parquet() in between is silently captured with its full physical plan. On stop(), catalog stats (table sizes, partitions, file counts) are automatically gathered for every table that appeared in the plans.

What it captures

start() hooks into three places:

Hook What it catches Plan timing
spark.sql() Every SQL query At creation (pre-AQE)
DataFrame actions (.collect(), .show(), .count(), .toPandas(), etc.) Execution results Post-AQE (final plan)
Write methods (.write.parquet(), .save(), .saveAsTable(), etc.) Data output Post-AQE (final plan)

When the same query is captured at both spark.sql() time and action time, the action-time plan (post-AQE) replaces the earlier one. You get the plan Spark actually executed, not just the plan it intended to execute.

stop() then collects catalog metadata:

Data Source
Table size (bytes) DESCRIBE DETAIL / Catalyst stats
Row count Table properties / Catalyst stats
File count, avg file size DESCRIBE DETAIL
Partition columns DESCRIBE EXTENDED
Spark config + drift sparkContext.getConf() / SET -v
Environment Platform detection (Databricks / YARN / K8s)

Upload to Cluster Yield

The server analyzes on ingest — runs detectors, estimates costs, diffs against your last snapshot:

cy = CYSnapshot(spark, api_key="cy_...", environment="prod-analytics").start()
# ... notebook ...
cy.stop().upload()

Install with upload support: pip install cluster-yield-snapshot[upload]

Context manager

with CYSnapshot(spark) as cy:
    df = spark.sql("SELECT ...")
    df.show()

cy.save()

Manual capture (edge cases)

For queries you can't run through start()/stop() (e.g. building a snapshot from known queries without executing them):

cy = CYSnapshot(spark)
cy.query("daily_revenue", "SELECT region, SUM(amount) FROM orders GROUP BY region")
cy.df("enriched", some_existing_dataframe)
cy.save()

Safety

The capture hooks are read-only and wrapped in try/except:

  • They only read queryExecution.executedPlan — no writes, no modifications
  • If our code fails for any reason, the user's code continues normally
  • stop() cleanly restores all original methods
  • A re-entrancy guard prevents our internal Spark calls (catalog stats) from being captured
  • The notebook behaves identically with or without capture running

Snapshot JSON envelope

{
  "snapshot": { "version": "0.3.0", "capturedAt": "...", "snapshotType": "environment" },
  "environment": { "sparkVersion": "3.5.1", "platform": "databricks", ... },
  "config": { "all": {}, "optimizerRelevant": {}, "nonDefault": {} },
  "catalog": { "tables": { "default.orders": { "sizeInBytes": 85899345920, ... } } },
  "plans": [
    {
      "label": "sql-1-SELECT * FROM orders WHERE ...",
      "fingerprint": "a1b2c3d4...",
      "plan": [...],
      "sql": "SELECT * FROM orders WHERE date > '2024-01-01'",
      "trigger": "action.collect"
    }
  ],
  "errors": null
}

Compatible with the Cluster Yield Scala analysis engine, the JVM PlanCaptureListener, and the PlanExtractor — the analyzer is agnostic to capture method.

Module structure

cluster_yield_snapshot/
├── __init__.py        # Public API: CYSnapshot, snapshot_capture
├── snapshot.py        # Orchestrator: start/stop/save/upload
├── _capture.py        # Passive capture engine (monkey-patching)
├── plans.py           # Plan extraction, operator parsing, fingerprinting
├── catalog.py         # Table stats (DESCRIBE DETAIL/EXTENDED/Catalyst)
├── config.py          # Spark config capture + drift detection
├── environment.py     # Platform detection (Databricks, YARN, K8s)
├── upload.py          # HTTP upload to SaaS backend
├── quick_scan.py      # Lightweight teaser findings
├── formatting.py      # Terminal summary + Databricks HTML
├── _compat.py         # Classic PySpark vs Spark Connect abstraction
└── _util.py           # Shared utilities

Spark Connect / Serverless

On Spark Connect, the JVM is not accessible. Plan capture falls back to text explain. Catalog stats fall back to DESCRIBE DETAIL and DESCRIBE EXTENDED (no Catalyst stats). The text plan parser runs server-side for full analysis.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

cluster_yield_snapshot-0.3.24.tar.gz (66.3 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

cluster_yield_snapshot-0.3.24-py3-none-any.whl (54.0 kB view details)

Uploaded Python 3

File details

Details for the file cluster_yield_snapshot-0.3.24.tar.gz.

File metadata

  • Download URL: cluster_yield_snapshot-0.3.24.tar.gz
  • Upload date:
  • Size: 66.3 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.9.6

File hashes

Hashes for cluster_yield_snapshot-0.3.24.tar.gz
Algorithm Hash digest
SHA256 64dfea25be7eee1b80a970f1180bdaf878a33e05b9de5f9c7e3ed4cf35720b78
MD5 d363f1823e42beb08911edba57d353a4
BLAKE2b-256 e2b1a4e301fda04b197aef48311ed4384afdf6772f8ab5621f64dae4deb57175

See more details on using hashes here.

File details

Details for the file cluster_yield_snapshot-0.3.24-py3-none-any.whl.

File metadata

File hashes

Hashes for cluster_yield_snapshot-0.3.24-py3-none-any.whl
Algorithm Hash digest
SHA256 51d8bc5091dbff5887cd735f2ed984d4c23b748324345f0a3ebb2ebe9d8f288d
MD5 8a85858f30528464f96805b457edda64
BLAKE2b-256 f0f4cf24e3b290509c233bd9afbc9a77221797c2a921105d6f1b2094a8e607a9

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page