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Steam
+
Bruin

Steam + Bruin

Source

Ingest Steam data into your warehouse with incremental loading, quality checks, and full lineage. Defined in YAML, version-controlled in Git.

For business teams

What you get

  • Analysis beyond built-in reports

    Join Steam behavioral data with revenue, support, and CRM data. Answer questions Steam alone can't.

  • Trusted behavioral data

    Quality checks catch tracking gaps, duplicate events, and missing timestamps before they corrupt your models.

  • Self-serve for analysts

    Steam data lands in your warehouse where analysts already work. No more exporting, no more waiting.

  • Real user journeys

    Combine Steam events with purchase and support data to see the full customer journey, not just the product funnel.

For data & engineering teams

How it works

  • Event schema validation

    Check for null event IDs, missing timestamps, and duplicate events on every sync. Catch tracking issues at ingestion.

  • YAML-defined, Git-versioned

    Your Steam pipeline is a YAML file. Review in PRs, deploy with CI/CD, roll back with git revert.

  • SQL + Python transforms

    Transform raw Steam events into funnels, cohorts, and user journeys with SQL or Python — in the same pipeline.

  • Dependency-aware scheduling

    Bruin resolves pipeline dependencies automatically. Transforms only run after Steam data has landed.

Before you start

Steam developer account
Web API key from Steam
Published application on Steam

Step 1

Add your Steam connection

Connect using Steam Web API key. Add this to your Bruin environment file — credentials are stored securely and referenced by name in your pipeline YAML.

Parameters

  • api_keySteam Web API key
  • app_idSteam application ID
connections:
  steam:
    type: steam
    uri: "steam://api_key@app_id"

Step 2

Create your pipeline

Define a YAML asset that tells Bruin what to pull from Steam and where to land it. This file lives in your Git repo — reviewable, version-controlled, and deployable with CI/CD.

Available tables

playersachievementsleaderboardsapp_detailsreviews
name: raw.steam_players
type: ingestr

parameters:
  source_connection: steam
  source_table: 'players'
  destination: bigquery

Step 3

Add quality checks

Add column-level and custom SQL checks to your Steam data. If a check fails, the pipeline stops — bad data never reaches downstream models or dashboards.

Catch duplicate events and missing timestamps
Validate event freshness — stale data gets flagged
Ensure event IDs are unique across syncs
columns:
  - name: event_id
    checks:
      - name: not_null
      - name: unique
  - name: event_timestamp
    checks:
      - name: not_null

custom_checks:
  - name: data is fresh
    query: |
      SELECT MAX(event_timestamp) >
        TIMESTAMP_SUB(CURRENT_TIMESTAMP(), INTERVAL 24 HOUR)
      FROM raw.steam_players

Step 4

Run it

One command. Bruin connects to Steam, pulls data incrementally, runs your quality checks, and lands clean data in your warehouse. If a check fails, the pipeline stops — bad data never reaches downstream.

Backfill historical data with --start-date
Schedule with cron or trigger from CI/CD
Full lineage from Steam to your dashboards
$ bruin run .
Running pipeline...

  steam_players
    ✓ Fetched 2,847 new records
    ✓ Quality: campaign_id not_null     PASSED
    ✓ Quality: spend not_null           PASSED
    ✓ Quality: no negative ad spend     PASSED
    ✓ Loaded into bigquery

  Completed in 12s

Ready to connect Steam?

Start for free, or book a demo to see how Bruin handles ingestion, quality, lineage, and scheduling for your entire data stack.