技能档案

BI Dashboards

Apache Superset, Metabase, Redash, Grafana, self-service analytics and visualization

Data Engineering Data Visualization

角色数

4

包含此技能的角色

级别数

5

结构化成长路径

必要要求

18

其余 2 个可选

领域

Data Engineering

skills.group

Data Visualization

最后更新

2026/3/17

如何使用

选择当前级别并对比期望。下方卡片显示晋升所需掌握的内容。

各级别期望

表格展示从初级到首席的技能深度变化。点击行查看详情。

角色 必要性 描述
Analytics Engineer 必要 Creates simple dashboards in Metabase/Looker/Tableau based on prepared dbt models. Understands data visualization principles: chart type selection, filters, drill-down. Works with the mart layer as the primary source for BI.
BI Analyst 必要 Builds basic dashboards in Tableau and Power BI following team templates. Understands core KPI definitions and applies standard visualization types for executive reporting. Follows BI style guides and documentation for consistent output.
Data Analyst 必要 Creates exploratory dashboards with basic filters and drill-downs. Understands standard chart types for statistical visualization. Builds simple cohort views and follows team conventions for dashboard layout and naming.
Data Scientist Builds basic ML experiment dashboards to track model metrics. Understands standard plots for feature importance and model performance. Integrates simple visualizations with MLflow or W&B following team practices.
角色 必要性 描述
Analytics Engineer 必要 Designs analytical dashboards with correct business logic: metric calculation at the BI vs dbt level, parameterized reports, cross-filtering. Optimizes dashboard performance through proper data modeling in the mart layer.
BI Analyst 必要 Independently designs interactive dashboards in Tableau and Power BI with calculated fields and LOD expressions. Optimizes query performance for large datasets. Implements self-service BI layers enabling business users to explore KPIs autonomously.
Data Analyst 必要 Independently builds analytical dashboards with advanced statistical visualizations and dynamic cohort analysis. Optimizes dashboard performance through query tuning and data extracts. Creates A/B test dashboards with significance indicators and confidence intervals.
Data Scientist Independently builds model monitoring dashboards tracking drift, accuracy, and latency metrics. Optimizes visualization pipelines for real-time experiment tracking. Integrates MLflow and W&B dashboards into team workflows for reproducible ML reporting.
角色 必要性 描述
Analytics Engineer 必要 Defines BI development standards: semantic layer / LookML / Tableau data models for metric consistency, dashboard templates for typical business tasks. Optimizes dbt model and BI interaction through extract-based or live connection approaches.
BI Analyst 必要 Designs enterprise BI architecture across Tableau, Power BI, and Looker with governed data models and semantic layers. Optimizes dashboard ecosystems for thousands of concurrent users. Implements data quality frameworks and row-level security for executive reporting.
Data Analyst 必要 Designs scalable dashboard architecture for advanced statistical visualization and cross-functional cohort analysis. Optimizes for big data sources with incremental refresh and materialized views. Implements data governance ensuring metric consistency across A/B test and analytics dashboards.
Data Scientist 必要 Designs end-to-end ML observability dashboards covering model lifecycle from training to production. Optimizes visualization systems for large-scale experiment tracking across teams. Implements governance frameworks for feature importance reporting and model performance transparency.
角色 必要性 描述
Analytics Engineer 必要 Defines the organization's BI strategy: tool selection and standardization (Looker vs Tableau vs Metabase), governance for metrics and dashboards, self-service analytics for business users. Implements a semantic layer for unified metric definitions.
BI Analyst 必要 Defines enterprise BI strategy and dashboard platform roadmap. Shapes self-service BI culture enabling business-driven analytics. Coordinates BI teams across departments and standardizes KPI definitions. Optimizes hybrid approaches combining Tableau, Power BI, and Looker ecosystems.
Data Analyst 必要 Defines analytics dashboard strategy and visualization standards across the organization. Shapes the analytical platform enabling self-service cohort analysis and A/B test reporting. Coordinates analytics teams and establishes metric governance ensuring statistical rigor in all dashboards.
Data Scientist 必要 Defines ML dashboard strategy for experiment tracking and model monitoring across data science teams. Shapes the MLOps visualization platform integrating MLflow, W&B, and custom dashboards. Coordinates ML teams on standardized reporting for model performance and feature importance.
角色 必要性 描述
Analytics Engineer 必要 Architects enterprise BI: multi-tool strategy for different audiences, embedded analytics for products, real-time dashboards. Defines the roadmap from traditional BI to self-service analytics and metrics layer.
BI Analyst 必要 Defines organizational BI strategy aligning dashboard platforms with business objectives. Designs enterprise-wide self-service BI architecture spanning Tableau, Power BI, and Looker. Establishes cross-departmental KPI governance framework ensuring data-driven decision-making at executive level.
Data Analyst 必要 Defines organizational analytics visualization strategy connecting dashboard platforms to data mesh architecture. Designs enterprise analytical framework for statistical reporting, cohort analysis, and experimentation. Establishes governance standards ensuring analytical rigor and metric consistency organization-wide.
Data Scientist 必要 Defines organizational ML observability strategy integrating experiment tracking, model monitoring, and feature analysis into a unified dashboard platform. Designs enterprise MLOps visualization framework across MLflow, W&B, and custom systems. Establishes governance for ML transparency and reproducibility.

社区

👁 关注 ✏️ 建议修改 登录以建议修改
📋 提案
暂无提案 BI Dashboards
正在加载评论...