servers / ai-plith-plith

ai.plith/plith MCP server

communitystreamable_httpremotewrite capablehealthy

AI agent infrastructure: dedup, cost prediction, validation, governance, failure intelligence.


01Tools · 15
ToolRiskSide effectsApproval
dedupq_complete
After executing a task, store the result so future identical or similar tasks return a cache hit via dedupq_check. Costs 2 credits.
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burnrate_budget
Get today's tracked LLM spend, per-model breakdown, projection, and budget alerts. Free — no credits charged.
readfalseunknown
burnrate_estimate
Before executing a multi-step agent plan, estimate the total LLM cost. Returns per-step breakdown and optimization suggestions. If the estimate exceeds your budget, pipe the same plan into burnrate_optimize. Costs 1 credit.
unknownunknownunknown
dedupq_check
Before executing any LLM task, check if an identical or semantically similar task has already been completed. Returns cached result on hit, saving one LLM call. On a miss, execute your task and call dedupq_complete to cache the result for future hits. Costs 1 credit.
writetrueunknown
burnrate_optimize
Get a cheaper equivalent plan by substituting models with lower-cost alternatives. Call after burnrate_estimate if the estimated cost exceeds your budget. Returns the optimized plan with substituted models, new per-step costs, total savings, and whether the target_budget is met. Optionally set target_budget to constrain the optimization. Costs 1 credit.
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guardrail_create_policy
Create a persistent governance policy that guardrail_check evaluates on every subsequent call. Define rules using and/or/not operators over action types, resource patterns, and budget thresholds. Call this before using guardrail_check — checks require at least one active policy. Policies persist until explicitly deleted. Duplicate policy names return an error. Returns the created policy with its ID and active status.
writetrueunknown
burnrate_track
Log the actual cost of an LLM call after execution. Call this after every LLM request to build calibration data that improves burnrate_estimate accuracy over time. Free — no credits charged. Returns the recorded cost entry with computed margin versus the prior estimate when one exists for this model and token range.
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guardrail_check
Evaluate a proposed agent action against your governance policies. Returns allow or deny with the matched policy reason. Requires at least one active policy created via guardrail_create_policy. Deterministic rule evaluation — no LLM. Costs 1 credit.
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rigor_plan
Before executing a complex task, get a structured workflow plan with per-step cost estimates. Classifies your task, selects the optimal framework sequence, and returns the full plan without executing anything. Free — no credits charged.
readfalseunknown
qualitygate_validate
After your agent generates output, validate it against your rules before shipping. Runs deterministic checks (regex, JSON schema, syntax) plus optional LLM-powered tone and factual analysis. Returns a structured verdict (pass, warn, or fail) with a 0-100 score and per-check issue details. Use qualitygate_trends to spot recurring failure patterns over time. Variable cost: 1 credit per deterministic check, 8 credits per LLM check.
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pitfalldb_query
Check for known failure patterns before executing a task type. Returns pitfalls with severity, fix suggestions, and confidence scores. After your agent runs, submit failures via pitfalldb_report so others benefit. Costs 2 credits.
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rigor_status
Check the status of a running or completed Rigor workflow. Returns progress, step results, and the full deliverable when complete. Use after rigor_execute with polling delivery to retrieve results.
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pitfalldb_report
Report an agent failure. PII-scrubbed before storage. Linked to existing pitfalls if similar. Free — no credits charged.
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rigor_execute
Execute a structured workflow end-to-end. Call rigor_plan first (free) to preview the step sequence and cost estimate before committing credits. Classifies the task, selects the optimal tool sequence, and executes each step with the right LLM model. Returns a complete deliverable — solution designs, competitive analyses, governance documents, and more. Supports SSE streaming for real-time progress, webhook callback, or polling.
writetrueunknown
rigor_workflows
List all Rigor workflows for your organization with filtering and pagination. Returns status, progress, capacity usage, and available actions per workflow. Use to monitor workflow state, understand concurrent limit usage, and identify stuck or completed workflows.
readfalseunknown

02Install & source
https://plith.ai/api/mcp
remote_url

03Access granted
Workflow automation · write

The access this server can exercise, inferred from its verified tools — not a declared OAuth scope.


05Provenance & freshness
sourcesOfficial MCP Registry [p1]
last_checked2026-07-06 20:51Z
next_check2026-07-08 20:41Z
cadenceevery 48h
verifiedtools_list:passed handshake:passed metadata:passed
index_statusindex6 unique facts >= 5

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ai.plith/plith MCP server — MCPExplorer