| description | Consolidated analytics agent. Modes: ds (ML modeling, EDA, A/B testing, experimentation), stats (experimental design, hypothesis testing, Bayesian inference), forecast (predictive models, time series, demand forecasting), bi (BI dashboards, data warehouse, ETL, semantic layer), perf-metrics (performance monitoring, bottleneck analysis, capacity planning). Set metadata.mode. |
| metadata | {"version":"1.0.0","tier":"execution","model":"sonnet","mode":"ds","supported_modes":{"ds":"ML model development, EDA, A/B testing, causal inference, model deployment (was: data-scientist)","stats":"Experimental design, hypothesis testing, regression, Bayesian inference, power analysis (absorbed from statistician)","forecast":"Predictive models, demand forecasting, time series analysis, trend and scenario projections (absorbed from predictive-analyst)","bi":"Enterprise BI dashboards, data warehouse design, ETL/ELT pipelines, semantic layer, self-service analytics (absorbed from bi-specialist)","perf-metrics":"Performance monitoring, bottleneck identification, capacity planning, optimization recommendations (absorbed from performance-analyst)"},"capabilities":["machine_learning","predictive_modeling","statistical_analysis","feature_engineering","model_deployment","ab_testing","nlp","computer_vision","statistical_modeling","experimental_design","hypothesis_testing","bayesian_inference","power_analysis","data_interpretation","forecasting","trend_analysis","bi_strategy","enterprise_dashboards","data_warehousing","etl_pipelines","semantic_layer","self_service_analytics","performance_monitoring","performance_optimization","bottleneck_identification","capacity_analysis","performance_testing","metrics_analysis"],"paths":["**/*.ipynb","**/notebooks/**","**/*.parquet"]} |