skillZs
LIVE SKILL TAGS
>>> LIVE SKILLS INDEX <<<
* OPEN SOURCE *
NO LOGIN, NO TRACKING
REAL INSTALL DATA
← back to all skills
forcedotcom/sf-skills1.3k installs

data360-orchestrate

Salesforce Data Cloud product orchestrator for connect→prepare→harmonize→segment→act workflows. Use this skill when the user needs a multi-step Data Cloud pipeline, cross-phase troubleshooting, or data space and data kit management. TRIGGER when: user needs a multi-step Data Cloud pipeline, asks to set up or troubleshoot Data Cloud across phases, manages data spaces or data kits, or wants a cross-phase sf data360 workflow. DO NOT TRIGGER when: work is isolated to a single phase (use the matching phase-specific skill), the task is STDM/session tracing/parquet telemetry (use agentforce-observe), standard CRM SOQL (use platform-soql-query), or Apex implementation (use platform-apex-generate).

How do I install this agent skill?

npx skills add https://github.com/forcedotcom/sf-skills --skill data360-orchestrate
view source ↗

Is this agent skill safe to install?

  • Gen Agent Trust Hubfail

    This skill installs and executes external software from an individual's GitHub repository. It uses scripts to clone, compile, and link a community-maintained Salesforce CLI plugin and suggests running a remote Python script directly from the internet via pipe-to-shell. These patterns represent significant remote code execution and supply chain risks.

  • Socketwarn

    2 alerts: gptSecurity

  • Snykfail

    Risk: CRITICAL · 2 issues

What does this agent skill do?

data360-orchestrate: Salesforce Data Cloud Orchestrator

Use this skill when the user needs product-level Data Cloud workflow guidance rather than a single isolated command family: pipeline setup, cross-phase troubleshooting, data spaces, data kits, or deciding whether a task belongs in Connect, Prepare, Harmonize, Segment, Act, or Retrieve.

This skill intentionally follows sf-skills house style while using the external sf data360 command surface as the runtime. The plugin is not vendored into this repo.


When This Skill Owns the Task

Use data360-orchestrate when the work involves:

  • multi-phase Data Cloud setup or remediation
  • data spaces (sf data360 data-space *)
  • data kits (sf data360 data-kit *)
  • health checks (sf data360 doctor)
  • CRM-to-unified-profile pipeline design
  • deciding how to move from ingestion → harmonization → segmentation → activation
  • cross-phase troubleshooting where the root cause is not yet clear

Delegate to a phase-specific skill when the user is focused on one area:

PhaseUse this skillTypical scope
Connectdata360-connectconnections, connectors, source discovery
Preparedata360-preparedata streams, DLOs, transforms, DocAI
Harmonizedata360-harmonizeDMOs, mappings, identity resolution, data graphs
Segmentdata360-segmentsegments, calculated insights
Actdata360-activateactivations, activation targets, data actions
Retrievedata360-querySQL, search indexes, vector search, async query

Delegate outside the family when the user is:


Required Context to Gather First

Ask for or infer:

  • target org alias
  • whether the plugin is already installed and linked
  • whether the user wants design guidance, read-only inspection, or live mutation
  • data sources involved: CRM objects, external databases, file ingestion, knowledge, etc.
  • desired outcome: unified profiles, segments, activations, vector search, analytics, or troubleshooting
  • whether the user is working in the default data space or a custom one
  • whether the org has already been classified with scripts/diagnose-org.mjs
  • which command family is failing today, if any

If plugin availability or org readiness is uncertain, start with:


Core Operating Rules

  • Use the external sf data360 plugin runtime; do not reimplement or vendor the command layer.
  • Prefer the smallest phase-specific skill once the task is localized.
  • Run readiness classification before mutation-heavy work. Prefer scripts/diagnose-org.mjs over guessing from one failing command.
  • For sf data360 commands, suppress linked-plugin warning noise with 2>/dev/null unless the stderr output is needed for debugging.
  • Distinguish Data Cloud SQL from CRM SOQL.
  • Do not treat sf data360 doctor as a full-product readiness check; the current upstream command only checks the search-index surface.
  • Do not treat query describe as a universal tenant probe; only use it with a known DMO/DLO table after broader readiness is confirmed.
  • Preserve Data Cloud-specific API-version workarounds when they matter.
  • Prefer generic, reusable JSON definition files over org-specific workshop payloads.

Recommended Workflow

1. Verify the runtime and auth

Confirm:

  • sf is installed
  • the community Data Cloud plugin is linked
  • the target org is authenticated

Recommended checks:

sf data360 man
sf org display -o <alias>
bash ./scripts/verify-plugin.sh <alias>

Treat sf data360 doctor as a broad health signal, not the sole gate. On partially provisioned orgs it can fail even when read-only command families like connectors, DMOs, or segments still work.

2. Classify readiness before changing anything

Run the shared classifier first:

node ./scripts/diagnose-org.mjs -o <org> --json

Only use a query-plane probe after you know the table name is real:

node ./scripts/diagnose-org.mjs -o <org> --phase retrieve --describe-table MyDMO__dlm --json

Use the classifier to distinguish:

  • empty-but-enabled modules
  • feature-gated modules
  • query-plane issues
  • runtime/auth failures

3. Discover existing state with read-only commands

Use targeted inspection after classification:

sf data360 doctor -o <org> 2>/dev/null
sf data360 data-space list -o <org> 2>/dev/null
sf data360 data-stream list -o <org> 2>/dev/null
sf data360 dmo list -o <org> 2>/dev/null
sf data360 identity-resolution list -o <org> 2>/dev/null
sf data360 segment list -o <org> 2>/dev/null
sf data360 activation platforms -o <org> 2>/dev/null

4. Localize the phase

Route the task:

  • source/connector issue → Connect
  • ingestion/DLO/stream issue → Prepare
  • mapping/IR/unified profile issue → Harmonize
  • audience or insight issue → Segment
  • downstream push issue → Act
  • SQL/search/index issue → Retrieve

5. Choose deterministic artifacts when possible

Prefer JSON definition files and repeatable scripts over one-off manual steps. Generic templates live in:

  • assets/definitions/data-stream.template.json
  • assets/definitions/dmo.template.json
  • assets/definitions/mapping.template.json
  • assets/definitions/relationship.template.json
  • assets/definitions/identity-resolution.template.json
  • assets/definitions/data-graph.template.json
  • assets/definitions/calculated-insight.template.json
  • assets/definitions/segment.template.json
  • assets/definitions/activation-target.template.json
  • assets/definitions/activation.template.json
  • assets/definitions/data-action-target.template.json
  • assets/definitions/data-action.template.json
  • assets/definitions/search-index.template.json

6. Verify after each phase

Typical verification:

  • stream/DLO exists
  • DMO/mapping exists
  • identity resolution run completed
  • unified records or segment counts look correct
  • activation/search index status is healthy

High-Signal Gotchas

  • connection list requires --connector-type.
  • dmo list --all is useful when you need the full catalog, but first-page dmo list is often enough for readiness checks and much faster.
  • Segment creation may need --api-version 64.0.
  • segment members returns opaque IDs; use SQL joins for human-readable details.
  • sf data360 doctor can fail on partially provisioned orgs even when some read-only commands still work; fall back to targeted smoke checks.
  • query describe errors such as Couldn't find CDP tenant ID or DataModelEntity ... not found are query-plane clues, not automatic proof that the whole product is disabled.
  • Many long-running jobs are asynchronous in practice even when the command returns quickly.
  • Some Data Cloud operations still require UI setup outside the CLI runtime.

Output Format

When finishing, report in this order:

  1. Task classification
  2. Runtime status
  3. Readiness classification
  4. Phase(s) involved
  5. Commands or artifacts used
  6. Verification result
  7. Next recommended step

Suggested shape:

Data Cloud task: <setup / inspect / troubleshoot / migrate>
Runtime: <plugin ready / missing / partially verified>
Readiness: <ready / ready_empty / partial / feature_gated / blocked>
Phases: <connect / prepare / harmonize / segment / act / retrieve>
Artifacts: <json files, commands, scripts>
Verification: <passed / partial / blocked>
Next step: <next phase, setup guidance, or cross-skill handoff>

Cross-Skill Integration

NeedDelegate toReason
load or clean CRM source dataplatform-data-manageseed or fix source records before ingestion
create missing CRM schemaplatform-custom-object-generate, platform-custom-field-generateData Cloud expects existing objects/fields
deploy permissions or bundlesplatform-metadata-deployenvironment preparation
write Apex against Data Cloud outputsplatform-apex-generatecode implementation
Flow automation after segmentation/activationautomation-flow-generatedeclarative orchestration
session tracing / STDM / parquet analysisagentforce-observedifferent Data Cloud use case

Reference Map

Start here

Phase skills

Deterministic helpers

Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.

<a href="https://skillzs.dev/skills/forcedotcom/sf-skills/data360-orchestrate">View data360-orchestrate on skillZs</a>