Agentic AI Atlasby a5c.ai
OverviewWikiGraphFor AgentsEdgesSearchWorkspace
/
GitHubDocsDiscord
iiRecord
Agentic AI Atlas · Dashboard Development Cycle
workflow:dashboard-development-cyclea5c.ai
Search record views/
Record · tabs

Available views

II.Record viewspp. 1 - 1
overviewjsongraph
II.
Workflow overview

workflow:dashboard-development-cycle

Reference · live

Dashboard Development Cycle overview

Develops data dashboards from requirements through stakeholder acceptance -- gathering dashboard requirements including target audience, key questions, and decision contexts, designing data models and semantic layers that support required aggregations and drill-downs, selecting visualization types that effectively communicate each metric, building interactive dashboard prototypes and conducting usability reviews with stakeholders, implementing data refresh pipelines and access controls, validating metric accuracy against source-of-truth systems, and documenting dashboard usage guidance and metric definitions. Produces dashboard, data model documentation, and metric glossary. Excludes data infrastructure provisioning and ETL pipeline development.

WorkflowOutgoing · 11Incoming · 5

Attributes

displayName
Dashboard Development Cycle
workflowKind
data
triggerType
on-demand
typicalCadence
per-project
complexity
cross-team
description
Develops data dashboards from requirements through stakeholder acceptance -- gathering dashboard requirements including target audience, key questions, and decision contexts, designing data models and semantic layers that support required aggregations and drill-downs, selecting visualization types that effectively communicate each metric, building interactive dashboard prototypes and conducting usability reviews with stakeholders, implementing data refresh pipelines and access controls, validating metric accuracy against source-of-truth systems, and documenting dashboard usage guidance and metric definitions. Produces dashboard, data model documentation, and metric glossary. Excludes data infrastructure provisioning and ETL pipeline development.

Outgoing edges

applies_to_domain2
  • domain:business-intelligence·DomainBusiness Intelligence
  • domain:data-engineering·DomainData Engineering
involves_role3
  • role:data-analyst·RoleData Analyst
  • role:data-scientist·RoleData Scientist
  • role:product-designer·RoleProduct Designer
performed_by_org_unit2
  • org-unit:business-intelligence-team·OrgUnitBusiness Intelligence Team
  • org-unit:analytics-team·OrgUnitAnalytics Team
requires_skill_area2
  • skill-area:python-data-pipelines·SkillAreaPython Data Pipelines
  • skill-area:data-quality·SkillAreaData Quality
triggers_responsibility2
  • responsibility:data-quality-monitoring·ResponsibilityData quality monitoring
  • responsibility:slo-definition·ResponsibilitySLO definition

Incoming edges

follows_workflow5
  • stack-profile:geospatial-analytics·StackProfileGeospatial Analytics (PostGIS + Python + Leaflet/Mapbox + GeoPandas)
  • stack-profile:internal-dashboard·StackProfileInternal Dashboard Stack (React, Recharts, Express, PostgreSQL, Redis)
  • stack-profile:analytics-dashboard·StackProfileAnalytics Dashboard Stack (React, D3, Recharts, Python, FastAPI, Grafana)
  • stack-profile:hr-people-analytics·StackProfileHR / People Analytics Stack (Python, PostgreSQL, dbt, Metabase, FastAPI)
  • stack-profile:time-series-analytics·StackProfileTime-Series Analytics Stack (InfluxDB, Grafana, Telegraf, Python, Go)

Related pages

No related wiki pages for this record.

Shortcuts

Open in graph
Browse node kind