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From science-superpowers
Delegates independent investigations (literature survey, multi-dataset replication, robustness checks) to parallel agents, then synthesizes results. Preserves context by isolating each agent's scope.
npx claudepluginhub k-dense-ai/science-superpowers --plugin science-superpowersHow this skill is triggered — by the user, by Claude, or both
Slash command
/science-superpowers:dispatching-parallel-investigationsThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
You delegate investigations to specialized agents with isolated context. By precisely crafting their instructions, you keep each focused and preserve your own context for synthesis. They never inherit your session history — you construct exactly what each needs.
Orchestrates 10 agents for parallel research execution on topics, gathering and synthesizing information efficiently. Use for deep, multi-faceted investigations requiring speed.
Orchestrates full research pipeline from Brainstorming to Reporting via Planning, Implementation, Testing & Visualization phases with user checkpoints. Configurable for physics, AI/ML, statistics, math domains, depth, and agent personas.
Decomposes tasks into independent concerns and launches parallel specialized agent groups. For multi-subtask requests, cross-domain research, or parallelizable file/module work.
Share bugs, ideas, or general feedback.
You delegate investigations to specialized agents with isolated context. By precisely crafting their instructions, you keep each focused and preserve your own context for synthesis. They never inherit your session history — you construct exactly what each needs.
When you have multiple independent investigations (different datasets, different sub-topics in a literature survey, different pre-specified robustness checks), running them sequentially wastes time. Each is independent and can run in parallel.
Core principle: One agent per independent investigation. Let them run concurrently, then synthesize.
Parallelism multiplies researcher degrees of freedom. If you dispatch 20 specifications and report the one that "works," you have p-hacked at scale — parallelism made it faster, not more honest.
digraph when_to_use {
"Multiple investigations?" [shape=diamond];
"Independent?" [shape=diamond];
"Pre-specified or all-reported?" [shape=diamond];
"Single agent / sequential" [shape=box];
"STOP: this is spec-hunting" [shape=box];
"Parallel dispatch" [shape=box];
"Multiple investigations?" -> "Independent?" [label="yes"];
"Independent?" -> "Single agent / sequential" [label="no - shared state"];
"Independent?" -> "Pre-specified or all-reported?" [label="yes"];
"Pre-specified or all-reported?" -> "Parallel dispatch" [label="yes"];
"Pre-specified or all-reported?" -> "STOP: this is spec-hunting" [label="no - cherry-picking"];
}
Use when:
Don't use when:
Group by what's being examined. Each must be understandable without the others.
Each agent gets:
Task("Survey prior effect sizes for X in domain A")
Task("Survey known confounds for X")
Task("Replicate the primary model on dataset B, exact spec")
Replicate the primary model on dataset B.
Use EXACTLY this pre-registered specification (do not alter it to improve fit):
outcome ~ exposure + age + site, OLS, exclude rows with missing exposure
Dataset B is at data/raw/site_b.csv (immutable). Set seed 20260528.
Validate the loaded shape, run the model, report:
- the coefficient on exposure with 95% CI and p
- N used and any rows excluded (with reason)
Do NOT try alternative specifications. Report this one result.
After agents return:
science-superpowers:verifying-results-before-claiming)