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google/datalineage-summary

google

datalineage-summary

Summarizes Google Cloud Data Lineage graphs to help users debug data quality issues and understand data provenance for BQ/GCS. Use when summarizing upstream and downstream data flows, and presenting complex lineage data as an intuitive Markdown report. Don't use for generic BigQuery queries, editing lineage relationships, or downstream deprecation. Don't use for downstream blast-radius impact analysis (use datalineage-bigquery-asset-impact-analysis skill instead).

global
category:BigDataAndAnalytics
New~1.7k
v1.0Saved Jul 17, 2026

Data Lineage Summary

This skill guides the agent in investigating and summarizing the Data Lineage graph for a specific focal asset (Table-Level Lineage) or specific fields (Column-Level Lineage). It provides an intuitive left-to-right walkthrough of how data enters and leaves the asset, abstracting away complex node and link details into plain English.

Prerequisites

This skill relies on the Google Cloud Data Lineage (Knowledge Catalog) MCP Server for graph traversal. Ensure you can run search_lineage queries in both upstream and downstream directions. For detailed connection configurations and tool schemas, refer to MCP Usage.

Workflow Logic

1. Get Lineage

Fetch the lineage graph in both directions from the focal point (both upstream and downstream) by making two separate calls to the MCP tool: one with "direction": "UPSTREAM" and another with "direction": "DOWNSTREAM".

  • Location Strategy: You MUST use the read_url tool to fetch the comprehensive list of locations dynamically from the provided Knowledge Catalog Locations link. To ensure cross-regional lineage is not missed, always verify the current list of GCP regions using this link before populating the locations array. You MUST populate the locations array with all supported physical regions fetched from this link. You may optionally additionally determine the asset's specific active region (using bq show or gcloud storage ls).

  • Search Parameters: Use maxDepth = 10, maxResults = 5000 and maxProcessPerLink = 10 as robust defaults when calling search_lineage. For example, a DOWNSTREAM call should be formatted like this (expanding the locations array as needed):

    {
      "parent": "projects/project_id/locations/us",
      "locations": [
        "us",
        "us-central1",
        "us-east1",
        "us-west1",
        "europe-west1",
        "asia-northeast1"
      ],
      "rootCriteria": {
        "entities": {
          "entities": [
            {
              "fullyQualifiedName": "bigquery:project.dataset.table"
            }
          ]
        }
      },
      "direction": "DOWNSTREAM",
      "limits": {
        "maxDepth": 10,
        "maxResults": 5000,
        "maxProcessPerLink": 10
      }
    }
    

    Ensure you make a similar call with "direction": "UPSTREAM" to fetch the upstream lineage.

  • Column-Level Lineage (CLL): The search_lineage tool can find all Column-Level Lineage (CLL) by configuring the field array. If Table-Level Lineage (TLL) is requested, configure the call to get CLL links along with the TLL links by exploiting the "*" wildcard. For example:

    "rootCriteria": {
      "entities": {
        "entities": [
          {
            "fullyQualifiedName": "bigquery:project.dataset.table",
            "field": [
              "*"
            ]
          }
        ]
      }
    }
    

    If evaluating a specific column, replace "*" with the specific column name (e.g., "efficiency_score").

2. Summarize

Generate the summary using the prompt guidelines below.

  • Persona: Act as an expert Data Lineage Analyst generating a concise, easy-to-understand left-to-right walkthrough of the data flow.
  • Structure & Flow: Start immediately with the summary text, structured as follows:
    • Overall Flow Type: State the inferred workflow type and data domain (e.g., "This appears to be a Feature Engineering workflow...").
    • Systems Overview: List the primary systems involved up front. If the request is for Column-Level Lineage, you MUST explicitly declare that the scope of the analysis is limited to the specified field up front.
    • Upstream Lineage: Use the exact bold header **Upstream Lineage:**. Narrative must detail how data arrives at the focal asset, mentioning key source systems, projects, and processing tasks (e.g., Spark on Dataproc).
    • Downstream Lineage: Use the exact bold header **Downstream Lineage:**. Detail where data goes from the focal asset to final consumer systems.
    • Analysis Metadata: Display the parameters used for the API call to provide transparency on the boundaries of the summary. The output must contain:
      • Locations Searched: {list_of_locations_queried}
      • Parent Location: {parent_path}
      • Depth Limit: {maxDepth}
      • Process per Link Limit: {maxProcessPerLink}
      • Tip for User: A prompt suggesting they can ask to rerun with expanded locations (if not all were used) or depth.
  • Granularity Constraints:
    • Prioritize flows between Systems, Projects, and Datasets over individual files/tables.
    • You MUST explicitly list specific asset names (e.g., source tables, intermediate views, consumer tables) if there are fewer than 5. Do not just summarize counts if there are fewer than 5; name them explicitly. Otherwise, if 5 or more, aggregate them by count (e.g., "5 GCS buckets").
    • Only mention counts for ultimate sources, final consumers, and total assets.
    • Do not repeat project names redundantly for every dataset if only one project is involved.
  • Tone: Avoid jargon and generic phrases like "There are distinct factual points." Be direct and clear. The final output is Markdown.

3. Return the Summary

Return the final summarized output back to the user.

External Documentation

Files2
2 files · 12.3 KB

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Overall Score

78/100

Grade

B

Good

Safety

82

Quality

80

Clarity

75

Completeness

70

Summary

This skill guides an agent to investigate and summarize Google Cloud Data Lineage graphs for specific assets (table-level or column-level), producing intuitive Markdown reports that explain upstream and downstream data flows. It uses the Data Lineage MCP server to traverse lineage graphs and synthesizes findings into plain-English summaries following a structured persona and layout.

Detected Capabilities

MCP tool invocation (search_lineage)HTTP request (read_url to fetch locations dynamically)Data analysis and transformationMarkdown document generation

Trigger Keywords

Phrases that MCP clients use to match this skill to user intent.

data lineage summaryunderstand data flowdebug data qualitycolumn lineage analysisbigquery data provenance

Risk Signals

INFO

HTTP read request to external documentation (read_url to docs.cloud.google.com)

SKILL.md line 41-43
INFO

MCP server configuration with auth provider

references/mcp-usage.md, MCP configuration block
INFO

Reference to external APIs (datalineage.googleapis.com)

references/mcp-usage.md, MCP server setup

Referenced Domains

External domains referenced in skill content, detected by static analysis.

datalineage.googleapis.comdocs.cloud.google.comwww.apache.org

Use Cases

  • Debug data quality issues by understanding data provenance
  • Summarize complex upstream and downstream data flows
  • Analyze column-level lineage for specific fields
  • Generate data flow documentation for stakeholders
  • Investigate which systems and projects feed into a BigQuery table

Quality Notes

  • Well-structured workflow with clear prerequisites and three-step logic (Get Lineage, Summarize, Return)
  • Comprehensive parameter guidance for search_lineage calls with realistic defaults (maxDepth=10, maxResults=5000)
  • Detailed persona and output structure guidelines ensure consistent, readable summaries
  • Explicit scoping documented: table-level vs column-level lineage clearly differentiated
  • References external MCP documentation and provides setup instructions
  • Column-level lineage support via wildcard syntax is well-explained with examples
  • Granularity constraints prevent over-aggregation for small result sets (explicit naming for <5 assets)
  • Locations fetching strategy via read_url ensures cross-regional coverage dynamically
  • Output metadata transparency (locations, parent path, depth limits) helps users understand analysis boundaries
  • Minor: references to external docs use .md.txt extensions; unclear if these are actual accessible URLs
Model: claude-haiku-4-5-20251001Analyzed: Jul 17, 2026

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