MCP Path
Semantic Batch Summary
Semantic Batch Summary is a public reference for knowledge signals, learning candidates, and explainable orientation. It names the signal, policy, or flow an agent should understand before choosing a concrete tool.
Reference page for a documented MCP capability path.
- Type
- MCP path
- Family
- Learning & Knowledge Evolution
- Effect
- bounded run
- Status
- Reference
- Path
- 11.13
Purpose
What this entry explains
What it does
This reference explains Semantic Batch Summary for knowledge signals, learning candidates, and explainable orientation. It is kept as a named reference so agents can cite the flow without inventing a tool name.
Use when
- Use this entry when an agent needs to start or monitor the bounded flow "Semantic Batch Summary" for knowledge signals, learning candidates, and explainable orientation.
- Use it as a reference path when the catalog describes a capability but no single public tool name is explicit.
- Use it before chaining follow-up tools so the next step is based on current evidence.
Reference Use
How agents should cite and apply this area
Examples are maintained at family level and use only public tool names or reference paths already present in the catalog.
Semantic Batch Summary describes a behavior for knowledge signals, learning candidates, and explainable orientation. The path shows which signal, gate, behavior, or boundary must be checked before choosing a concrete tool.
An agent cites this path when it needs Semantic Batch Summary as context for a decision, block, target check, or follow-up tool choice.
The public source does not name one callable tool for this path. The documentation therefore keeps it as a reference path and does not invent a callable name.
Relevant response signals: pksSemanticLearningBatchSummary. Safety axes: Automation. The reference path alone is not permission to execute. Before acting, check current MCP discovery, visible target, scope, and the actual response.
Family example
A task touches data, identity, or permissions in knowledge signals, learning candidates, and explainable orientation that may be used only with clear purpose.
The agent starts with nova.learn_suggest, reads the current response or reference, and only then chooses the concrete next tool.
Sensitive values stay in current scope; they are not guessed, logged, or copied into other contexts.Contract
Inputs and important response fields
This page is a public reference. Agents and integrators should still read current MCP tool discovery before execution, because schemas can be gated by settings or version.
Inputs
No stable public input field is derived from the catalog source for this path. Read current MCP discovery before execution.
| Response field | Explanation |
|---|---|
pksSemanticLearningBatchSummary | Content-bearing response field. Treat it as current evidence and consider sensitive data before forwarding it. |
Safety
Boundary before execution
Starts or observes a bounded run. Scope, limits, progress, and terminal status need to stay visible.
Treat stored knowledge as guidance only. Before any action, confirm the current page, target, scope, and visible evidence again.
For humans, this entry shows which bounded flow in knowledge signals, learning candidates, and explainable orientation starts or continues, and where scope, progress, and stopping conditions belong.
High-Impact Review
Execution boundary and recheck hints
Review category: Scheduler/tasks/automation
Runs need scope, budget, progress, stop condition, and reviewable terminal status before they start or continue.
False assumption: once started, a run may continue until success.
Task, schedule, variables, workspace, and run status must remain reviewable by the user.
Bound automations, poll progress, check terminal status, and avoid chaining when results are unclear.
Abort or recheck when budget, target set, run ID, workspace, or result status becomes unclear.
Safety Axes
How this path can affect work
Axes are stable catalog signals for humans, agents, and LLM discovery. One path can carry several axes.
automation_run
Starts or monitors crawls, sequences, schedulers, tasks, batches, or longer runs.
Keep scope, budget, progress, stop condition, and terminal status visible before and during the run.