System: MWMS
Document Type: Framework
Authority Level: MCR Source Of Truth
Status: Draft For MCR
Version: v1.2
Primary Location: MCR
Future Operational Destination: HeadOffice Brain, MWMS Brain, Brain Room, AI Manager, AI Employee Router, Task Executor Systems, Newsletter Intelligence, Routed Actions, HeadOffice Dashboard, Finance Brain, Experimentation Brain, Ads Brain, Affiliate Brain, AIBS Brain
Parent Page: HeadOffice
Owner: Martyn
Developer Boundary: Do Not Touch M’s Active Build Areas Unless Specifically Assigned
Source Of Truth: MCR
Last Reviewed: 2026-06-21
Source / Origin: MWMS KPI Dashboard And Insight Summary Framework v1.1 + AI Automations by Jack — actionable AI dashboards, funnel visibility, constraint identification, conversational data access, governed record updates, calendar and email actions, client-facing KPI systems and outcome-focused dashboard block
Related Pages: MWMS AI Dashboard Capability Framework, MWMS AI Agent Outcome Measurement Framework, MWMS AI Observability Metadata Standard, MWMS Business Brain Copilot Architecture Framework, MWMS AI Agent Orchestration Framework, MWMS AI Multi Agent Role Design Framework, MWMS AI Employee Capability Stack Framework, MWMS Independent Model Review And Rescue Routing Framework, MWMS External Knowledge Engine And Reasoning Agent Separation Framework, MWMS AI Work Session Closure And Knowledge Commitment Protocol, MWMS AI Usage And Cost Visibility Standard
Source Evidence: The existing v1.1 framework defines decision-first KPI governance, KPI quality, metric hierarchy, role-based views, alerts, drill-downs, cost visibility, evidence, confidence, outcome tracking and AI-generated insight summaries. The newly absorbed AI Automations by Jack dashboard block adds a stronger operational distinction between visibility, diagnosis, action and outcome dashboards; funnel-stage and constraint analysis; conversational data inspection; governed write permissions; downstream action verification; client isolation; and decision-ready recommendations tied to economic value rather than decorative presentation.
Purpose
The purpose of this document is to define the MWMS KPI Dashboard And Insight Summary Framework.
This framework explains how MWMS selects, structures, validates, displays, and interprets key performance indicators, dashboard cards, insight summaries, status panels, risk indicators, and decision-ready dashboard views.
MWMS dashboards must not become cluttered reporting screens.
A dashboard must help HeadOffice and the Brains quickly understand:
what matters now
what is improving
what is failing
what needs action
what needs testing
what needs monitoring
what is blocked
what is risky
what requires human review
who owns the next action
The purpose of a KPI dashboard is not to show everything.
The purpose is to show the few things that matter most.
The purpose of an insight summary is not to repeat the number.
The purpose is to explain what the number means and what MWMS should do next.
Scope
This framework applies to all MWMS KPI dashboards, dashboard cards, insight summaries, status views, operational scorecards, and future client dashboards.
This includes dashboards and summaries for:
HeadOffice Dashboard
Newsletter Intelligence
Routed Actions
Brain Room activity
AI Employee outcomes
AI Employee failures
Permission Gatekeeper records
Operational Decision records
Structured Analysis records
Forecasting and Scenario Planning records
Course Absorption progress
Opportunity System
Affiliate offer pipeline
Research Brain findings
Finance Brain exposure
Experimentation Brain test results
Ads Brain performance
Content Brain production
M developer progress
system stability
recurring reports
future AIBS client dashboards
future AIBS client weekly reports
This framework applies before any KPI, dashboard card, insight panel, summary block, or client-facing visual is treated as operationally useful or dashboard-ready.
This framework does not authorize technical development, plugin/UI work, Supabase schema work, dashboard build work, client delivery, or automation by itself.
It defines the governance standard for KPI and insight-summary design.
Core Definition
A KPI is a key performance indicator that helps MWMS understand progress, risk, performance, quality, activity, or outcome.
An Insight Summary is a short explanation that turns a KPI, trend, status, or dashboard item into decision-ready meaning.
A KPI answers:
What is the measurable state?
An insight summary answers:
What does this mean, why does it matter, and what should happen next?
MWMS dashboards should combine both.
A dashboard that shows numbers without meaning is weak.
A dashboard that shows meaning without source data is risky.
A strong MWMS dashboard needs:
clean source data
selected KPIs
readable visual layout
concise insight summaries
decision_deadline
expected_outcome
owners
next actions
risk status
review status
decision relevance
Core Principle
The core principle of this framework is:
Dashboards must help HeadOffice decide faster and better.
A dashboard is successful only when it improves:
attention
prioritization
decision quality
risk control
decision_deadline
expected_outcome
owner clarity
workflow visibility
outcome tracking
system learning
A dashboard fails when it becomes:
decorative
overloaded
vague
stale
noisy
unactionable
decision_deadline
expected_outcome
ownerless
disconnected from decisions
MWMS should prefer a small number of high-quality KPIs over a large number of weak metrics.
MWMS Decision Dashboard Operating Model
Dashboard Value Levels
MWMS dashboards should be classified by the value they provide.
Level 1: Visibility Dashboard
A Visibility Dashboard shows what is happening.
Examples:
current values
counts
status
trend
risk level
queue size
cost
capacity
recent activity
Purpose:
To make current state visible.
Rule:
A Visibility Dashboard must not imply diagnosis, recommendation or action authority unless those functions are explicitly present.
Level 2: Diagnostic Dashboard
A Diagnostic Dashboard explains:
what changed
where the constraint sits
why the change matters
which evidence supports the diagnosis
what needs further investigation
which assumptions remain uncertain
Purpose:
To help a human understand the likely cause or operating constraint.
Rule:
A diagnostic statement must show its evidence, confidence and limitations.
Level 3: Action Dashboard
An Action Dashboard allows a user or authorised agent to initiate approved actions such as:
assign owner
change status
request review
create task
draft communication
open supporting evidence
schedule approved follow-up
update an authorised record
trigger an approved workflow
Purpose:
To convert visibility and diagnosis into governed action.
Rule:
An Action Dashboard must separate viewing, recommendation, approval, writing and external execution permissions.
Level 4: Outcome Dashboard
An Outcome Dashboard shows whether the approved action improved:
conversion
revenue
cost
delivery
response time
risk
quality
capacity
customer outcome
system reliability
Purpose:
To close the loop between action and measurable result.
Rule:
A dashboard is not decision-complete until the result of the action can be reviewed.
Dashboard Value Progression
The preferred progression is:
Visibility
→ Diagnosis
→ Recommended Action
→ Approval
→ Execution
→ Verified Outcome
→ Learning
Rule
MWMS must not skip directly from a displayed number to an external action without the required evidence, permission and confirmation.
Funnel And Constraint Dashboard Model
A funnel dashboard may represent a sequence such as:
Traffic
→ Leads
→ Qualified Leads
→ Appointments
→ Attended Appointments
→ Presentations
→ Proposals
→ Sales
→ Revenue
→ Retention
Each stage should define:
Stage Name:
Current Volume:
Prior Stage Volume:
Conversion From Prior Stage:
Target:
Warning Threshold:
Critical Threshold:
Variance:
Trend:
Data Source:
Update Time:
Freshness:
Confidence:
Primary Constraint:
Supporting Evidence:
Recommended Investigation:
Approved Action:
Owner:
Expected Outcome:
Review Date:
Rule
A funnel stage must use an agreed definition.
Do not compare stages built from inconsistent event definitions, time windows or populations.
Constraint Identification Standard
The lowest conversion rate is not automatically the highest-value opportunity.
Constraint identification should consider:
economic value
revenue impact
customer impact
downstream effect
controllability
data quality
sample size
capacity
risk
effort required
time to improvement
dependency exposure
confidence
reversibility
The system should distinguish:
Observed Constraint
A directly visible blockage or weak stage.
Suspected Cause
A reason inferred from the available evidence.
Priority Opportunity
A constraint worth addressing based on expected value and feasibility.
Rule
A dashboard may identify a likely constraint.
It must not present an inferred cause as proven fact without sufficient evidence.
Economic Value Prioritisation
A constraint should be prioritised using more than percentage movement.
Possible factors include:
value per recovered lead
value per appointment
value per sale
margin
lifetime value
cost to fix
time to fix
probability of success
risk of inaction
capacity effect
revenue timing
Rule
A small improvement at a high-value stage may matter more than a large improvement at a low-value stage.
Metric Source Of Truth Standard
Every material dashboard metric should define:
Metric Name:
Metric Definition:
Calculation Rule:
Source System:
Source Table Or Record:
Source Owner:
Update Method:
Update Frequency:
Last Successful Update:
Freshness Status:
Data Quality Status:
Client Boundary:
Project Boundary:
Confidence:
Known Limitations:
Rule
A visually attractive dashboard must not become a competing source of truth.
It is a view over governed records, definitions and calculations.
Metric Freshness Standard
Recommended freshness states:
Live
Current
Delayed
Stale
Unknown
Unavailable
The dashboard should display:
expected refresh frequency
last successful refresh
current delay
stale threshold
failure state
Rule
A stale metric must not be displayed as current without a visible warning.
Read Recommend Approve Write Execute Separation
Dashboard permissions should be separated into:
Read
View approved data.
Interpret
Calculate trends, comparisons or diagnostic summaries.
Recommend
Propose a change or action.
Approve
Authorise the proposed change or action.
Write
Modify an approved internal record.
Execute
Trigger an external effect.
Verify
Confirm that the downstream action actually succeeded.
Rule
Read access does not imply write access.
Write access does not imply external execution authority.
Recommendation does not imply approval.
Action Confirmation Standard
Before a high-impact action is executed, show:
Proposed Action:
Affected Record:
Current Value:
Proposed Value:
Reason:
Supporting Evidence:
Destination:
External Effect:
Owner:
Approval Required:
Approver:
Rollback Path:
Confirmation State:
High-impact actions may include:
sending email
changing budget
changing financial records
creating or cancelling appointments
publishing content
changing client status
starting outreach
deleting records
triggering payment
changing permissions
Rule
The user must be able to see what will change before approval.
Downstream Tool Success Verification
The system must distinguish:
Request Created
Tool Called
Tool Accepted Request
Record Created Or Updated
External Effect Completed
User Notified
Result Verified
Example:
The dashboard must not state:
Appointment Booked
unless the calendar system has returned a successful event record.
If the downstream tool fails, the dashboard should show:
failure state
error summary
affected action
retry status
human owner
safe next step
Rule
A successful AI response is not proof that the external action succeeded.
Dashboard Action Audit Record
Every material dashboard action should record:
Action ID:
Dashboard:
User Or Agent:
Role:
Permission Level:
Action Type:
Affected Record:
Old Value:
New Value:
Destination:
Requested At:
Approved At:
Executed At:
Verified At:
Tool Used:
Tool Result:
External Record ID:
Failure State:
Rollback State:
Outcome Link:
Rule
Action dashboards must support reconstruction of who changed what, why and with what result.
Client And Tenant Isolation Standard
Reusable client dashboards must isolate:
client identity
users
roles
credentials
data sources
records
knowledge sources
actions
reports
audit logs
billing records
notifications
permissions
The system must not rely only on:
a visible access code
a shared public link
a client name passed from the browser
an editable frontend field
an unprotected webhook
Rule
Client identity and access must be validated before data is retrieved or an action is executed.
Rules-Based And AI-Generated Insight Labels
Every insight should be labelled as one of:
Direct Metric
Calculated Metric
Rules-Based Alert
Rules-Based Recommendation
AI-Generated Summary
AI-Generated Diagnosis
AI-Generated Recommendation
Human Decision
The dashboard should show:
method
source evidence
confidence
assumptions
missing data
review status
Rule
AI-generated recommendations must not appear as objective system facts.
Recommendation Evidence Standard
Every material recommendation should define:
Recommendation:
Evidence:
Metric Window:
Comparison:
Assumptions:
Confidence:
Missing Data:
Expected Benefit:
Estimated Effort:
Risk:
Alternative Action:
Human Review Required:
Rule
The system should be able to explain why it recommended an action.
Universal Benchmark Prohibition
Course examples may include suggested conversion targets or operating ratios.
These must not become universal MWMS benchmarks unless validated for:
market
channel
offer
traffic source
customer type
price point
sales process
sample size
time period
Rule
A benchmark is contextual evidence, not permanent truth.
Every serious MWMS dashboard should operate across seven layers:
- Source Layer
Defines where the data comes from.
- Validation Layer
Confirms whether the data is complete, current, correctly classified, and safe to use.
- KPI Layer
Selects the few indicators that matter.
- Insight Layer
Explains what the KPI means.
- Decision Layer
Shows the decision, approval, escalation, or next action required.
- Ownership Layer
Shows who owns the next step.
- Outcome Layer
Shows what happened after the decision.
Operating Model Rule
A dashboard is incomplete when it stops at measurement.
The full path is:
Source
→ Validation
→ KPI
→ Insight
→ Decision
→ Owner
→ Outcome
Dashboard Decision Classes
Every important dashboard item should support at least one decision class.
Recommended decision classes:
Act Now
Review
Approve
Reject
Escalate
Assign
Investigate
Test
Continue
Pause
Stop
Park
Monitor
Close
Decision Class Rule
A dashboard item that supports no decision should usually be removed from the top-level dashboard.
Dashboard Time Horizons
MWMS dashboards may operate across four time horizons.
Immediate
Used for urgent risks, blockers, failures, overspend, broken workflows, missing decision_deadline
expected_outcome
owners, or required approvals.
Operational
Used for daily and weekly work flow, task health, production status, action queues, client delivery, and active experiments.
Strategic
Used for monthly performance, resource allocation, Brain capability, product direction, portfolio performance, and business constraints.
Historical
Used for trends, learning, comparative review, and long-term outcomes.
Time Horizon Rule
Immediate and operational items should dominate action dashboards.
Strategic and historical items should support review, not crowd urgent work.
KPI Dashboard Design Principles
- The Five Second Rule
A dashboard should communicate the main operational picture within five seconds.
A user should quickly understand:
what needs attention
what is safe
what is blocked
what is urgent
what changed
what action is required
Five Second Rule:
If the dashboard cannot reveal the main situation quickly, it is too noisy.
This does not mean every detail must be visible in five seconds.
It means the top-level decision picture must be clear.
- Few Metrics Beat Many Metrics
MWMS should not track everything just because data exists.
The best dashboards usually show a small set of meaningful KPIs.
Strong dashboards may use:
5 to 10 top-level KPIs
supporting drill-down cards
filtered queue views
insight summaries
risk alerts
Few Metrics Rule:
Every KPI must earn its place.
If a metric does not support a decision, action, risk review, or outcome review, it should be removed, parked, or moved to a lower-level report.
- Leading And Lagging Indicators Must Be Balanced
MWMS needs both leading and lagging indicators.
Leading Indicators
Leading indicators show what may happen next.
Examples:
number of blocked actions
number of missing decision_deadline
expected_outcome
owners
rising validation failures
repeated newsletter signals
increasing finance exposure
offer research backlog
M tasks waiting for evidence
schema failures before automation
Lagging Indicators
Lagging indicators show what already happened.
Examples:
completed outcomes
revenue generated
tests completed
pages created
failures closed
campaigns completed
reports delivered
tasks completed
Leading And Lagging Rule:
Leading indicators help MWMS act early. Lagging indicators help MWMS judge results.
Dashboards should not rely only on historical results.
- Every KPI Needs Context
A KPI without context can mislead.
Context may include:
source
time range
comparison period
decision_deadline
expected_outcome
owner
status
risk level
confidence level
trend
target
threshold
source quality
human review status
Example:
“12 open actions” is weak.
“12 open actions, 3 high priority, 2 blocked, 1 decision_deadline
expected_outcome
ownerless” is useful.
Context Rule:
A KPI should not stand alone if it affects decisions.
- Every Important Dashboard Item Needs Meaning
A dashboard item should explain why it matters.
Good insight summary:
“Three high-priority routed actions are blocked because decision_deadline
expected_outcome
owners are missing. HeadOffice should assign decision_deadline
expected_outcome
owners before creating new actions.”
Weak insight summary:
“Routed actions increased.”
Meaning Rule:
Insight summaries must explain operational meaning, not repeat the metric.
- Dashboards Must Separate Draft From Active
MWMS dashboards must not mix draft, unvalidated, parked, rejected, and active items as if they are equal.
Statuses should be clearly separated:
Draft
Ready For Review
Active
Routed
Parked
Rejected
Completed
Escalated
Blocked
Status Rule:
Draft data should not appear as active operational truth.
This is critical for Newsletter Intelligence, Routed Actions, M developer tasks, client reports, and future automation.
- Dashboards Must Show Ownership
Any dashboard item requiring action should have an decision_deadline
expected_outcome
owner.
Possible decision_deadline
expected_outcome
owners:
Martyn
HeadOffice
M
Research Brain
Finance Brain
Experimentation Brain
Ads Brain
Affiliate Brain
Content Brain
Validation Agent
Failure Handler Agent
Outcome Logger Agent
Future Client Review Owner
Owner Rule:
An actionable dashboard item without an decision_deadline
expected_outcome
owner is not ready.
- Dashboards Must Show Next Action
A dashboard should not only say what is happening.
It should show what should happen next.
Examples:
review
assign decision_deadline
expected_outcome
owner
route to Research
route to Finance
park
reject
validate
escalate
prepare M handoff
monitor
close
update report
request evidence
Next Action Rule:
A dashboard item without a next action becomes passive reporting.
- Dashboards Must Show Risk
Risk must be visible where it affects decisions.
Risk levels:
Low
Medium
High
Critical
Risk may relate to:
finance
compliance
MCR integrity
developer work
automation
data quality
client trust
paid traffic
public content
system stability
Risk Rule:
High-risk items must be visually and operationally harder to ignore.
- Dashboards Must Be Retired Or Refined
Dashboards should improve over time.
A KPI, card, panel, or summary should be revised or removed if it:
is not used
creates confusion
duplicates another metric
has weak data
produces no decisions
creates noise
lacks decision_deadline
expected_outcome
owner
lacks action
is stale
cannot be validated
Refinement Rule:
Dashboards should evolve through Kaizen, not accumulate clutter.
KPI Quality Standard
Every KPI should pass six tests.
Decision Test
Does the KPI support a real decision?
Source Test
Is the source known and trustworthy?
Definition Test
Is the metric defined consistently?
Timeliness Test
Is the data current enough for the decision?
Ownership Test
Is someone responsible for responding?
Outcome Test
Can MWMS later determine whether the response helped?
KPI Quality Rule
A KPI that fails two or more tests should not appear as an active top-level KPI.
KPI Definition Record
Every material KPI should define:
KPI Name:
Business Question:
Decision Supported:
Formula Or Logic:
Unit:
Source:
Owning Brain:
Data Owner:
Time Range:
Update Frequency:
Target:
Warning Threshold:
Critical Threshold:
Comparison Basis:
Leading Or Lagging:
Confidence:
Known Limitations:
Required Review:
Retirement Trigger:
KPI Definition Rule
Two dashboards must not use the same KPI name with different logic without explicit distinction.
Metric Hierarchy
MWMS should separate:
North Star Metrics
Top-level indicators tied to business or system success.
Decision KPIs
Indicators used for current decisions.
Diagnostic Metrics
Supporting measures used to explain why a KPI moved.
Activity Metrics
Counts of work performed.
Health Metrics
Measures of system reliability, quality, cost, risk, and operational stability.
Outcome Metrics
Measures of actual business, user, client, or system improvement.
Metric Hierarchy Rule
Activity metrics must not be presented as outcomes.
KPI Categories
MWMS recognizes the following KPI categories.
- Action KPIs
Used to track operational work requiring attention.
Examples:
Open Routed Actions
High Priority Actions
Blocked Actions
Ownerless Actions
Overdue Actions
Actions Completed This Week
Purpose:
To help HeadOffice manage operational flow.
- Signal KPIs
Used to track intelligence signals.
Examples:
ACT NOW Signals
TEST Signals
MONITOR Signals
Parked Signals
Rejected Noise
Repeated Signal Themes
Purpose:
To separate useful intelligence from noise.
- Risk KPIs
Used to track risk exposure.
Examples:
Critical Risks
High-Risk Developer Items
Finance Exposure Alerts
Compliance Flags
Client Review Risks
Automation Readiness Risks
Purpose:
To make risk visible before it becomes damage.
- Outcome KPIs
Used to track useful results.
Examples:
Useful Outcomes Created
Decisions Supported
Risks Reduced
Pages Improved
Failures Corrected
Reports Used
M Tasks Clarified
Purpose:
To measure value, not output volume.
- Failure KPIs
Used to track failures and recurring weaknesses.
Examples:
Validation Failures
Schema Failures
Tool Failures
Handoff Failures
Context Failures
Permission Blocks
Repeated Correction Types
Purpose:
To support Kaizen and system hardening.
- Workflow KPIs
Used to track workflow health.
Examples:
Items Waiting For Review
Items Waiting For Validation
Items Waiting For Research
Items Waiting For Finance
Items Waiting For M
Items Parked
Items Rejected
Purpose:
To identify bottlenecks and stalled work.
- Finance KPIs
Used to track money and exposure.
Examples:
Active Test Budget
Spend To Date
Break-Even Gap
Cash Exposure
Tool Cost
Contractor Cost
Campaign Risk
Approved Budget Remaining
Purpose:
To prevent uncontrolled financial risk.
- Experimentation KPIs
Used to track tests and learning.
Examples:
Active Tests
Completed Tests
Winning Tests
Failed Tests
Tests Awaiting Decision
Tests Without Success Criteria
Learning Captured
Purpose:
To ensure testing produces learning, not random activity.
- Developer KPIs
Used to track M and development workflow health.
Examples:
M Tasks Open
M Tasks Blocked
Tasks Waiting For Evidence
Tasks Completed
Safe Save Points
Failed Tests
Items Not To Touch
Purpose:
To support M without creating unclear or risky work.
- Client KPIs
Used for future AIBS client systems.
Examples:
Client Reports Drafted
Client Reports Reviewed
Client Risks
Client Decisions Needed
Client Workflow Health
Client Actions Completed
Client Data Quality Issues
Purpose:
To support safe, clear, reviewed client reporting.
- Cost And Efficiency KPIs
Used to track whether AI, tool, model, workflow, support, and delivery costs remain justified.
Examples:
Cost Per Work Unit
Cost Per Useful Outcome
Model Cost By Agent
Tool Cost By Workflow
Human Review Time
Support Cost
Retry Cost
Cost Variance
Purpose:
To make AI and system economics visible.
- Quality And Reliability KPIs
Used to track whether outputs and systems are trustworthy.
Examples:
Validation Pass Rate
Independent Review Pass Rate
Correction Rate
Citation Accuracy
Source Grounding Rate
Workflow Success Rate
Recovery Rate
Stale Data Rate
Purpose:
To prevent activity and speed from hiding weak quality.
- Capacity And Load KPIs
Used to track whether Brains, AI Employees, M, or systems are overloaded.
Examples:
Open Work Units
Work Units Per Owner
Queue Age
Average Handoff Time
Review Backlog
M Capacity Exposure
Agent Concurrency
Human Approval Backlog
Purpose:
To identify bottlenecks before work fails.
- Knowledge And Memory KPIs
Used to track knowledge quality and continuity.
Examples:
Knowledge Commitments Completed
Unresolved Knowledge Conflicts
Stale Canon References
Retrieval Success Rate
Missing Source Rate
Duplicate Knowledge Records
Session Closure Completion Rate
Purpose:
To ensure dashboards and AI Employees are operating from current, durable knowledge.
- Client Value KPIs
Used to track whether future AIBS systems create visible business value.
Examples:
Money Captured
Money Saved
Time Saved
Leads Recovered
Appointments Booked
Revenue Influenced
Risk Reduced
Tasks Automated
Client Decisions Supported
Purpose:
To show business outcomes rather than technical activity.
Insight Summary Structure
Every important dashboard insight should follow this structure.
- What Happened
State the observable fact.
Example:
“Five routed actions are currently blocked.”
- Why It Matters
Explain the business or operational meaning.
Example:
“Blocked actions reduce HeadOffice visibility and delay Brain-to-Brain workflow progress.”
- Risk Or Opportunity
Explain the risk or opportunity.
Example:
“If decision_deadline
expected_outcome
owners are not assigned, these actions may become stale and create dashboard noise.”
- Recommended Action
State what should happen next.
Example:
“Assign decision_deadline
expected_outcome
owners or park low-priority items before creating more actions.”
- Owner
State who owns the next action.
Example:
“Owner: HeadOffice.”
- Confidence
State how reliable the insight is.
Recommended values:
High
Medium
Low
Unknown
- Evidence
State the source, comparison, or supporting record.
- Decision Deadline
State when action is required where time matters.
- Expected Outcome
State what should improve if the recommendation is followed.
Quick Insight Summary Format
What Happened:
Why It Matters:
Risk Or Opportunity:
Recommended Action:
Owner:
Confidence:
Evidence:
Decision Deadline:
Expected Outcome:
Dashboard Item Record Template
Additional v1.2 Fields
Dashboard Value Level:
Recommended values:
Visibility
Diagnostic
Action
Outcome
Metric Definition:
Calculation Rule:
Source System:
Source Record:
Source Owner:
Last Successful Update:
Freshness Status:
Data Quality Status:
Insight Method:
Recommended values:
Direct Metric
Calculated Metric
Rules-Based Alert
Rules-Based Recommendation
AI-Generated Summary
AI-Generated Diagnosis
AI-Generated Recommendation
Human Decision
Assumptions:
Missing Data:
Current Value Before Action:
Proposed Value After Action:
External Effect:
Approval State:
Approver:
Execution State:
Verification State:
External Record ID:
Rollback Path:
Client Boundary:
Project Boundary:
Action Audit Reference:
Use this template when defining a KPI card, insight card, or dashboard item.
Dashboard Item Name
Field:
Dashboard Item Name:
Dashboard Item Type
Field:
Dashboard Item Type:
Recommended values:
KPI Card
Insight Card
Risk Alert
Queue Panel
Trend Panel
Scorecard
Report Panel
Client Dashboard Item
Dashboard Purpose
Field:
Dashboard Purpose:
Owning Brain
Field:
Owning Brain:
Data Source
Field:
Data Source:
Decision Supported
Field:
Decision Supported:
Decision Class
Field:
Decision Class:
Recommended values:
Act Now
Review
Approve
Reject
Escalate
Assign
Investigate
Test
Continue
Pause
Stop
Park
Monitor
Close
KPI Or Metric
Field:
KPI Or Metric:
Time Range
Field:
Time Range:
Recommended values:
Today
This Week
Last 7 Days
This Month
Last 30 Days
Current Sprint
Current Campaign
Current Report Period
Custom
Source Quality
Field:
Source Quality:
Recommended values:
Strong
Usable
Partial
Weak
Stale
Unknown
Current Value
Field:
Current Value:
Target
Field:
Target:
Warning Threshold
Field:
Warning Threshold:
Critical Threshold
Field:
Critical Threshold:
Comparison Value
Field:
Comparison Value:
Trend
Field:
Trend:
Recommended values:
Improving
Stable
Declining
Spiking
Unknown
Not Applicable
Status
Field:
Status:
Recommended values:
Draft
Ready For Review
Active
Parked
Rejected
Completed
Escalated
Retired
Priority
Field:
Priority:
Recommended values:
Low
Medium
High
Critical
Risk Level
Field:
Risk Level:
Recommended values:
Low
Medium
High
Critical
Confidence
Field:
Confidence:
Recommended values:
High
Medium
Low
Unknown
Evidence Reference
Field:
Evidence Reference:
Insight Summary
Field:
Insight Summary:
Recommended Action
Field:
Recommended Action:
Decision Deadline
Field:
Decision Deadline:
Expected Outcome
Field:
Expected Outcome:
Owner
Field:
Owner:
Review Frequency
Field:
Review Frequency:
Recommended values:
Manual
Daily
Weekly
Monthly
Per Campaign
Per Sprint
Per Client Cycle
On Change
Human Review Required
Field:
Human Review Required: Yes / No
Dashboard Destination
Field:
Dashboard Destination:
Drill-Down Destination
Field:
Drill-Down Destination:
Outcome Tracking Method
Field:
Outcome Tracking Method:
Retirement Trigger
Field:
Retirement Trigger:
Failure Conditions
Field:
Failure Conditions:
Last Reviewed
Field:
Last Reviewed:
Quick Use Version
Dashboard Item Name:
Dashboard Item Type:
Dashboard Purpose:
Decision Supported:
Decision Class:
Owning Brain:
Data Source:
KPI Or Metric:
Time Range:
Source Quality:
Current Value:
Target:
Warning Threshold:
Critical Threshold:
Comparison Value:
Trend:
Status:
Priority:
Risk Level:
Confidence:
Evidence Reference:
Insight Summary:
Recommended Action:
Decision Deadline:
Expected Outcome:
Owner:
Review Frequency:
Human Review Required:
Dashboard Destination:
Drill-Down Destination:
Outcome Tracking Method:
Retirement Trigger:
Failure Conditions:
Last Reviewed:
Role-Based Dashboard Views
Different users should not automatically receive the same dashboard.
Possible views include:
HeadOffice View
Shows enterprise priorities, major risks, approvals, bottlenecks, outcomes, capacity, cost, and cross-Brain health.
Brain Owner View
Shows local performance, queues, dependencies, decisions, failures, and outcomes.
Operator View
Shows assigned work, blockers, due actions, status, and required evidence.
M Developer View
Shows only confirmed build tasks, save points, blockers, test evidence, and protected areas.
Client View
Shows reviewed business outcomes, progress, risks, decisions, and next actions in client-safe language.
Reviewer View
Shows evidence, validation state, disagreement, risk, and approval requirements.
Role View Rule
Each user should see the minimum information needed to decide or act.
Internal technical detail should not leak into client-facing views.
AI-Generated Insight Summary Rules
AI may draft dashboard insights.
AI-generated insights must:
use current validated data
cite or preserve the source record
distinguish fact from inference
show confidence
avoid inventing causation
avoid presenting correlation as proof
avoid creating urgency without thresholds
respect current status
respect client and permission boundaries
identify missing data
state when human review is required
AI Insight Rule
AI may explain the dashboard.
It must not silently redefine the KPI, alter the source data, or approve its own high-risk recommendation.
Dashboard Drill-Down Standard
Top-level cards should link or route to the evidence behind them.
A drill-down may show:
source records
time-series trend
status breakdown
decision_deadline
expected_outcome
owner breakdown
Brain breakdown
risk breakdown
failure reasons
review notes
decision history
outcome history
Drill-Down Rule
The top-level dashboard should stay simple.
Complexity belongs in controlled drill-down views.
Dashboard Alert Standard
An alert should fire only when a defined threshold, failure condition, deadline, or authority rule is met.
Every alert should define:
alert name
trigger
severity
decision_deadline
expected_outcome
owner
notification route
required response
deadline
dismissal rule
escalation rule
closure condition
Alert Rule
Repeated alerts with no action create alert fatigue and should be refined or retired.
Core MWMS Dashboard Examples
Example 1: HeadOffice ACT NOW KPI
Dashboard Item Name:
HeadOffice ACT NOW Count
Dashboard Item Type:
KPI Card / Risk Alert
Dashboard Purpose:
Show how many items currently require immediate HeadOffice attention.
Owning Brain:
HeadOffice Brain
Data Source:
Routed Actions, Newsletter Queue Review, Risk Alerts, Operational Decision records.
KPI Or Metric:
Number of active ACT NOW items.
Time Range:
This Week
Source Quality:
Usable if records have status, priority, decision_deadline
expected_outcome
owner, and next action.
Current Value:
Number of active ACT NOW items.
Comparison Value:
Previous week ACT NOW count.
Trend:
Improving / Stable / Spiking / Unknown
Status:
Active
Priority:
High / Critical
Risk Level:
Medium to Critical depending on items.
Insight Summary:
Shows whether HeadOffice has immediate actions requiring attention.
Recommended Action:
Review ACT NOW items before creating new work.
Owner:
HeadOffice
Review Frequency:
Daily
Human Review Required:
Yes
Dashboard Destination:
HeadOffice Dashboard
Failure Conditions:
Missing decision_deadline
expected_outcome
owners, stale ACT NOW items, vague recommended actions.
Last Reviewed:
YYYY-MM-DD
Example 2: Newsletter Signal Quality KPI
Dashboard Item Name:
Newsletter Signal Quality Summary
Dashboard Item Type:
KPI Card / Insight Card
Dashboard Purpose:
Show whether Newsletter Intelligence is producing useful signals or noise.
Owning Brain:
HeadOffice Brain
Data Source:
newsletter_intelligence records and Newsletter Queue Review.
KPI Or Metric:
Count of ACT NOW, TEST, MONITOR, PARK, and REJECT items.
Time Range:
Last 7 Days
Source Quality:
Usable if email body capture is complete and fields are valid.
Current Value:
Signal counts by action type.
Comparison Value:
Previous 7 days.
Trend:
Improving / Stable / Declining / Unknown
Status:
Active after validation.
Priority:
Medium
Risk Level:
Medium
Insight Summary:
Shows whether external intelligence is producing action-worthy material or mostly rejected noise.
Recommended Action:
Tighten extraction rules if too many weak signals reach review.
Owner:
HeadOffice
Review Frequency:
Weekly
Human Review Required:
Yes before downstream action.
Dashboard Destination:
HeadOffice Dashboard / Newsletter Intelligence Digest
Failure Conditions:
Generic extracted insights, missing action type, incomplete body source, inflated urgency.
Last Reviewed:
YYYY-MM-DD
Example 3: Routed Actions Health KPI
Dashboard Item Name:
Routed Actions Health Panel
Dashboard Item Type:
Queue Panel / KPI Card
Dashboard Purpose:
Show whether routed actions are moving, blocked, decision_deadline
expected_outcome
ownerless, or stale.
Owning Brain:
HeadOffice Brain
Data Source:
Routed Actions records.
KPI Or Metric:
Open, blocked, decision_deadline
expected_outcome
ownerless, overdue, and completed actions.
Time Range:
This Week
Source Quality:
Usable if decision_deadline
expected_outcome
owner, status, due date, priority, and next action fields are complete.
Current Value:
Counts by status.
Comparison Value:
Previous week.
Trend:
Improving / Stable / Declining / Unknown
Status:
Active
Priority:
High if blocked or decision_deadline
expected_outcome
ownerless items exist.
Risk Level:
Medium to High
Insight Summary:
Shows whether action routing is healthy or creating operational drag.
Recommended Action:
Assign decision_deadline
expected_outcome
owners, close completed items, park stale items, escalate blockers.
Owner:
HeadOffice
Review Frequency:
Daily / Weekly
Human Review Required:
Yes for escalations.
Dashboard Destination:
HeadOffice Dashboard / Routed Actions Panel
Failure Conditions:
Missing decision_deadline
expected_outcome
owner, missing next action, stale records, too many parked items shown as active.
Last Reviewed:
YYYY-MM-DD
Example 4: AI Employee Outcome KPI
Dashboard Item Name:
AI Employee Outcome Value Scorecard
Dashboard Item Type:
Scorecard / Report Panel
Dashboard Purpose:
Show whether AI Employees are producing useful outcomes rather than output volume.
Owning Brain:
HeadOffice Brain
Data Source:
AI Agent Outcome Logs, Failure Logs, validation results.
KPI Or Metric:
Useful outcomes, weak outcomes, repeated failures, risks reduced, decisions supported.
Time Range:
This Month
Source Quality:
Partial until outcome logging is consistent.
Current Value:
Outcome counts and value categories.
Comparison Value:
Previous month or previous review cycle.
Trend:
Improving / Stable / Declining / Unknown
Status:
Draft / Active after manual proof.
Priority:
Medium
Risk Level:
Medium
Insight Summary:
Shows whether the AI workforce is improving MWMS or creating activity without outcomes.
Recommended Action:
Improve weak skills, merge overlapping roles, revise validation, or park low-value workflows.
Owner:
HeadOffice
Review Frequency:
Monthly
Human Review Required:
Yes
Dashboard Destination:
AI Employee Outcome Review / HeadOffice Dashboard
Failure Conditions:
Output volume counted as outcome, inflated value, missing examples, no Kaizen action.
Last Reviewed:
YYYY-MM-DD
Example 5: Finance Exposure KPI
Dashboard Item Name:
Finance Exposure Risk Card
Dashboard Item Type:
KPI Card / Risk Alert
Dashboard Purpose:
Show whether current tests, campaigns, or tools create financial exposure.
Owning Brain:
Finance Brain
Data Source:
Finance notes, ad spend records, campaign budgets, offer payout data.
KPI Or Metric:
Active exposure, approved test budget, spend to date, break-even risk.
Time Range:
Current Campaign / This Week
Source Quality:
Partial unless tracking, payout, and spend data are verified.
Current Value:
Current exposure amount or risk status.
Comparison Value:
Approved budget or prior period.
Trend:
Improving / Stable / Declining / Unknown
Status:
Active only after validation.
Priority:
High
Risk Level:
High
Insight Summary:
Shows whether current testing remains within safe financial boundaries.
Recommended Action:
Pause, continue, review assumptions, or escalate to HeadOffice.
Owner:
Finance Brain / HeadOffice
Review Frequency:
Daily during active spend.
Human Review Required:
Yes before spend increase.
Dashboard Destination:
Finance Brain / HeadOffice Dashboard
Failure Conditions:
Missing payout, missing spend data, tracking mismatch, outdated finance assumptions.
Last Reviewed:
YYYY-MM-DD
Example 6: M Developer Blocker KPI
Dashboard Item Name:
M Developer Blocker Card
Dashboard Item Type:
Risk Alert / Queue Panel
Dashboard Purpose:
Show whether M has blocked tasks or unclear handoffs.
Owning Brain:
HeadOffice Brain
Data Source:
Brain Room, Dev Console, M task notes, user-confirmed save points.
KPI Or Metric:
Number of blocked M tasks, tasks waiting for evidence, and tasks with unclear instructions.
Time Range:
Current Sprint
Source Quality:
Usable if current save point and task evidence are known.
Current Value:
Count of blocked or evidence-waiting tasks.
Comparison Value:
Previous review period.
Trend:
Improving / Stable / Declining / Unknown
Status:
Active
Priority:
High if active build is blocked.
Risk Level:
High
Insight Summary:
Shows whether M can continue safely or needs clarification.
Recommended Action:
Provide file path, current evidence, test steps, or park unclear task.
Owner:
Martyn / HeadOffice
Review Frequency:
Daily during active development.
Human Review Required:
Yes
Dashboard Destination:
HeadOffice Dashboard / Dev Console / Brain Room
Failure Conditions:
Old save point used, file path missing, M would need to guess, unrelated system risk.
Last Reviewed:
YYYY-MM-DD
Example 7: Future AIBS Client KPI
Dashboard Item Name:
Client Workflow Health KPI
Dashboard Item Type:
Client Dashboard Item / KPI Card / Insight Card
Dashboard Purpose:
Show client workflow status in simple business language.
Owning Brain:
AIBS Brain
Data Source:
Approved client workflow records and reviewed client data.
KPI Or Metric:
Workflow health, open issues, decisions needed, completed actions, risk status.
Time Range:
Current Report Period
Source Quality:
Must be Strong or Usable and client-approved.
Current Value:
Client workflow status.
Comparison Value:
Previous client report period.
Trend:
Improving / Stable / Declining / Unknown
Status:
Draft until human approved.
Priority:
Medium to High depending on client issue.
Risk Level:
High because client-facing.
Insight Summary:
Explains what changed, why it matters, and what the client should do next.
Recommended Action:
Review with client, request data, approve action, or monitor.
Owner:
Client Review Owner / HeadOffice
Review Frequency:
Per Client Cycle
Human Review Required:
Always before delivery.
Dashboard Destination:
Client Review Queue / client dashboard after approval.
Failure Conditions:
Unapproved data, privacy risk, unsupported claim, unclear recommendation, missing client review.
Last Reviewed:
YYYY-MM-DD
Dashboard Decision And Outcome Loop
Every material dashboard recommendation should be traceable through:
Signal
KPI
Insight
Decision
Owner
Action
Outcome
Learning
Dashboard Outcome Record
Decision ID:
Dashboard Item:
Decision Class:
Decision:
Owner:
Action Taken:
Date:
Expected Outcome:
Actual Outcome:
Result:
Useful / Partial / Weak / Harmful / Unknown
Learning:
KPI Or Threshold Change Required:
Next Review:
Outcome Loop Rule
MWMS should not keep generating recommendations without measuring whether prior dashboard-driven actions helped.
Dashboard Cost And Usage Review
A dashboard should be reviewed for:
build cost
maintenance cost
data cost
AI summary cost
human review cost
support burden
usage frequency
decision value
client value
Cost And Usage Rule
A dashboard that is expensive, rarely used, and produces no material decisions should be simplified, merged, parked, or retired.
KPI Dashboard Readiness Checklist
Before a KPI, dashboard item, or insight summary becomes active, check:
Is the dashboard purpose clear?
Is the owning Brain clear?
Is the data source known?
Is the source quality acceptable?
Is the KPI decision-relevant?
Is the decision class defined?
Is the KPI definition consistent?
Is the KPI leading, lagging, diagnostic, activity, health, or outcome?
Is the time range defined?
Is the current value available?
Is target defined where needed?
Are warning and critical thresholds defined where needed?
Is comparison value available where needed?
Is the trend clear?
Is status clear?
Is priority assigned?
Is risk level assigned?
Is confidence stated?
Is supporting evidence visible?
Is the insight summary meaningful?
Is recommended action specific?
Is a decision deadline defined where needed?
Is expected outcome defined?
Is decision_deadline
expected_outcome
owner assigned where needed?
Is review frequency appropriate?
Is human review required where needed?
Is destination clear?
Is drill-down available where needed?
Is outcome tracking defined?
Is retirement trigger defined?
Are failure conditions listed?
Is draft data separated from active data?
Are parked and rejected items handled correctly?
Is stale data marked?
Does this pass the five second rule?
Does this help HeadOffice decide?
Should this KPI be active, revised, parked, or retired?
If several answers are unclear, the dashboard item is not ready.
Action Dashboard Readiness Addendum
Before an Action Dashboard is approved, confirm:
dashboard value level is declared
metric definitions are approved
calculation rules are documented
source system is known
source owner is known
freshness state is visible
data quality state is visible
client boundary is enforced
role-based permissions are tested
read permission is separated from write permission
recommendation is separated from approval
write permission is separated from execution permission
high-impact confirmation is visible
old and new values are displayed
destination is confirmed
external effect is disclosed
tool failure handling exists
downstream success is verified
external record ID is retained where available
action audit record is created
rollback path exists where required
AI-generated insights are labelled
assumptions are visible
missing data is visible
universal benchmarks are not treated as facts
outcome tracking is connected
Additional Action Dashboard Failure Modes
Failure Mode: Decorative Dashboard
The dashboard looks impressive but supports no clear decision or action.
Correction:
Define the decision, owner, next action and outcome loop.
Failure Mode: Lowest Percentage Is Treated As The Main Constraint
The system chooses the smallest conversion rate without considering economic value, controllability or data quality.
Correction:
Apply the Constraint Identification Standard.
Failure Mode: Dashboard Becomes A Competing Source Of Truth
Values are edited or calculated in the interface without governed definitions or source records.
Correction:
Keep the dashboard as a controlled view over approved source systems.
Failure Mode: Stale Data Appears Current
The dashboard does not show refresh status or last successful update.
Correction:
Display freshness state, update time and stale warnings.
Failure Mode: Read Access Grants Write Authority
An agent that can inspect records can also change them.
Correction:
Separate read, recommend, approve, write, execute and verify permissions.
Failure Mode: Proposed Change Is Hidden
A user approves an action without seeing the old value, new value or external effect.
Correction:
Display the full Action Confirmation Standard.
Failure Mode: AI Claims External Success
The interface says an email was sent, appointment was booked or record was updated based only on model output.
Correction:
Verify the downstream tool result and store the external record ID where available.
Failure Mode: Record Modification Is Mistaken For Approval
Any updated timestamp triggers an external action.
Correction:
Use a dedicated approval state and approval event.
Failure Mode: Client Data Crosses Boundaries
A reusable dashboard retrieves or changes another client’s data.
Correction:
Enforce tenant isolation and test client-boundary failure cases.
Failure Mode: Public Link Acts As Authentication
A shared URL or visible code is treated as sufficient protection.
Correction:
Use proper identity, session and permission controls.
Failure Mode: AI Recommendation Appears As Fact
An inferred diagnosis is displayed without label, assumptions or confidence.
Correction:
Label the insight method and show evidence and uncertainty.
Failure Mode: Universal Benchmark Applied Blindly
A sample conversion target is treated as correct for every business.
Correction:
Validate benchmarks against the specific market, process and data.
Failure Mode: Action Has No Outcome Link
The dashboard triggers activity but does not measure whether it helped.
Correction:
Connect every material action to an expected outcome and review date.
Failure Mode: Rollback Is Impossible
A harmful record change or action cannot be reversed or contained.
Correction:
Define rollback, recovery and human escalation before execution.
Common KPI Dashboard Failure Modes
KPI dashboard design has failed if:
Dashboard tracks everything.
Dashboard has no clear decision purpose.
KPI is a vanity metric.
Source data is weak or unknown.
Data is stale but not marked.
Draft items appear as active.
Parked or rejected items inflate active counts.
KPI has no insight summary.
Insight summary repeats the number but adds no meaning.
Recommended action is missing.
Owner is missing.
Risk is hidden.
High-priority items are not visually distinct.
Too many KPIs are shown at once.
Dashboard is harder to understand than the source data.
Client dashboard includes unapproved data.
Dashboard is not reviewed or refined.
Dashboard creates noise instead of decisions.
Dashboard shows activity as value.
KPI definition changes between reports.
Thresholds are undefined.
AI-generated insight invents causation.
Confidence is hidden.
Alert fires repeatedly without decision_deadline
expected_outcome
owner or closure.
Client dashboard exposes internal detail.
Dashboard has no drill-down evidence.
Dashboard-driven actions are never measured.
Dashboard cost exceeds decision value.
Manual Use Rule
KPI dashboards and insight summaries should be manually proven before becoming automated dashboards or client-facing systems.
Manual use helps MWMS learn:
which KPIs matter
which KPIs create noise
which insight summaries help HeadOffice act
which data sources are reliable
which statuses are confusing
which dashboard cards need decision_deadline
expected_outcome
owners
which metrics should be leading indicators
which metrics should be lagging indicators
which dashboard sections should be retired
which client KPIs are safe and useful
which thresholds are meaningful
which alerts create action
which AI-generated insights require correction
which role views reduce confusion
which drill-downs are actually used
which dashboard decisions produce outcomes
Manual dashboard discipline comes before automation, plugin/UI build, or client delivery.
Future Plugin Or UI Relevance
This framework may later support:
HeadOffice KPI dashboard
HeadOffice Command Center
Newsletter Intelligence dashboard
Routed Actions dashboard
AI Employee outcome dashboard
Failure dashboard
Finance exposure dashboard
Experimentation dashboard
Ads performance dashboard
Opportunity pipeline dashboard
M developer progress dashboard
AIBS client dashboard
KPI schema registry
dashboard insight summary generator
Possible future fields:
dashboard_item_id
dashboard_item_name
dashboard_item_type
dashboard_purpose
decision_supported
decision_class
owning_brain
data_source
kpi_or_metric
time_range
source_quality
current_value
target
warning_threshold
critical_threshold
comparison_value
trend
status
priority
risk_level
confidence
evidence_reference
insight_summary
recommended_action
decision_deadline
expected_outcome
owner
review_frequency
human_review_required
dashboard_destination
drill_down_destination
outcome_tracking_method
retirement_trigger
failure_conditions
last_reviewed
created_at
updated_at
No technical build is authorized by this framework alone.
Governance Role
HeadOffice owns the MWMS KPI Dashboard And Insight Summary Framework.
HeadOffice is responsible for:
approving KPI dashboard principles
preventing dashboard clutter
deciding which KPIs deserve top-level visibility
ensuring source data is trusted
ensuring insight summaries explain meaning
ensuring dashboard items include decision_deadline
expected_outcome
owner and next action where needed
ensuring risk is visible
ensuring dashboards support decisions
ensuring KPI definitions remain consistent
ensuring thresholds are justified
ensuring AI-generated insights are grounded
ensuring role-based views protect access and clarity
ensuring alerts have owners and closure conditions
ensuring dashboard decisions are linked to outcomes
ensuring dashboard cost remains justified
ensuring stale or weak dashboard items are refined or retired
protecting M’s active build areas
protecting MCR source of truth
protecting future AIBS client dashboard quality
Individual Brains may propose local KPIs, but HeadOffice governs cross-Brain, HeadOffice-level, dashboard-level, finance-related, developer-related, automation-related, and client-facing KPIs.
Relationship To Other MWMS Standards
This framework supports and must align with:
MWMS Analytics And Visualization Workflow Framework
MWMS AI Schema And Decision Ready Output Framework
MWMS Structured Analysis And Insight Workflow Framework
MWMS Operational Decision Intelligence Framework
MWMS Forecasting And Scenario Planning Framework
MWMS Recurring Intelligence And Reporting Pipeline Framework
MWMS AI Agent Operations Core
MWMS AI Context Routing Framework
MWMS AI Permission Gatekeeper Framework
MWMS AI Output Validation Standard
MWMS AI Output Validation Checklist
MWMS Agentic Reporting Standard
MWMS Agentic Reporting Template
MWMS AI Agent Outcome Measurement Framework
MWMS AI Agent Outcome Log Record
MWMS AI Agent Failure Handling And Escalation Protocol
MWMS AI Agent Failure Log Record
MWMS Brain Routing Rule
MWMS Brain To Brain Request Protocol
MWMS Supabase Event Schema
AIBS Brain Blueprint
This framework adds the KPI and insight-summary layer to the MWMS dashboard and decision-intelligence system.
Drift Protection
This framework protects MWMS from:
Tracking everything instead of what matters
Building dashboards that do not support decisions
Treating vanity metrics as operational intelligence
Displaying dirty or stale data
Mixing draft and active records
Showing numbers without meaning
Showing risks without decision_deadline
expected_outcome
owners
Creating dashboard items with no next action
Hiding high-risk items inside normal status
Creating dashboard clutter
Treating visual polish as usefulness
Delivering client dashboards without review
Automating dashboards before manual proof
Letting dashboards become a second source of truth
Forgetting to retire weak KPIs
Using activity metrics as outcomes
Allowing AI to invent causation
Changing KPI formulas without notice
Using thresholds with no evidence
Creating alerts without closure conditions
Showing every user the same dashboard
Hiding confidence or missing evidence
Failing to measure dashboard-driven outcomes
Maintaining dashboards whose cost exceeds their value
Any KPI or dashboard item that does not improve decision quality should be revised, parked, or retired.
Architectural Intent
The architectural intent of the MWMS KPI Dashboard And Insight Summary Framework is to make MWMS dashboards decision-first.
MWMS will create many records, reports, actions, signals, outcomes, failures, and tasks.
Dashboards must not merely display that activity.
They must help HeadOffice and the Brains know what matters.
The long-term goal is that every KPI and insight summary can answer:
Why does this KPI exist?
What decision does it support?
What source does it use?
Is the source trustworthy?
What does the number mean?
Is it improving or worsening?
What risk exists?
What action is recommended?
Who owns the next step?
Should this be reviewed, acted on, parked, or retired?
What decision class does it support?
What threshold changed?
How confident is the insight?
What evidence supports it?
Who must act and by when?
What outcome should follow?
Did the previous action work?
Is this dashboard still worth maintaining?
When MWMS controls dashboards this way, dashboards become operational intelligence tools, not decorative reporting pages.
Change Log
Version: v1.2
Date: 2026-06-21
Author: HeadOffice
Change:
Updated the MWMS KPI Dashboard And Insight Summary Framework using the AI Automations by Jack actionable dashboard block covering live KPI displays, funnel-stage conversion visibility, conversational data inspection, governed record updates, email and calendar actions, client-facing AI dashboards and outcome-focused decision support.
Preserved the existing v1.1 decision-dashboard, KPI-quality, metric-hierarchy, evidence, confidence, alerts, drill-down, role-based view, cost, outcome and AI-generated insight architecture.
Added:
Dashboard Value Levels
Dashboard Value Progression
Funnel And Constraint Dashboard Model
Constraint Identification Standard
Economic Value Prioritisation
Metric Source Of Truth Standard
Metric Freshness Standard
Read Recommend Approve Write Execute Separation
Action Confirmation Standard
Downstream Tool Success Verification
Dashboard Action Audit Record
Client And Tenant Isolation Standard
Rules-Based And AI-Generated Insight Labels
Recommendation Evidence Standard
Universal Benchmark Prohibition
Additional v1.2 Dashboard Item Record fields
Action Dashboard Readiness Addendum
additional Action Dashboard failure modes
Purpose of update:
To evolve the framework from decision-ready reporting into a governed visibility, diagnosis, action and outcome dashboard system that can safely display evidence, identify constraints, propose actions, request approval, execute authorised changes, verify downstream success and measure the resulting business outcome.
Version: v1.1
Date: 2026-06-20
Author: HeadOffice
Change
Updated the MWMS KPI Dashboard And Insight Summary Framework using the AI Automations by Jack block covering CEO systems, AI dashboards, Claude Agent Teams, NotebookLM, persistent knowledge, outcome visibility, cost visibility, multi-agent orchestration and business operating dashboards.
Added:
MWMS Decision Dashboard Operating Model
Dashboard Decision Classes
Dashboard Time Horizons
KPI Quality Standard
KPI Definition Record
Metric Hierarchy
Cost And Efficiency KPIs
Quality And Reliability KPIs
Capacity And Load KPIs
Knowledge And Memory KPIs
Client Value KPIs
Role-Based Dashboard Views
AI-Generated Insight Summary Rules
Dashboard Drill-Down Standard
Dashboard Alert Standard
Dashboard Decision And Outcome Loop
Dashboard Outcome Record
Dashboard Cost And Usage Review
Expanded:
Insight Summary Structure
Dashboard Item Record Template
Quick Use Version
KPI Dashboard Readiness Checklist
Common KPI Dashboard Failure Modes
Manual Use Rule
Future Plugin Or UI Relevance
Governance Role
Drift Protection
Architectural Intent
Change Impact Declaration
This v1.2 update strengthens the existing framework without changing its owner, parent page, authority level, or decision-first dashboard purpose.
Pages Created
None
Pages Updated
MWMS KPI Dashboard And Insight Summary Framework
Pages Deprecated
None
Standalone Pages Not Created
MWMS Dashboard Value Level Standard
MWMS Funnel And Constraint Dashboard Model
MWMS Constraint Identification Standard
MWMS Metric Source Of Truth Standard
MWMS Metric Freshness Standard
MWMS Dashboard Permission Separation Standard
MWMS Dashboard Action Confirmation Standard
MWMS Dashboard Tool Success Verification Standard
MWMS Dashboard Action Audit Record
MWMS Client Dashboard Isolation Standard
MWMS AI Dashboard Recommendation Evidence Standard
These concepts were absorbed into the unified MWMS KPI Dashboard And Insight Summary Framework rather than created as separate pages.
Registries Requiring Update
None confirmed by the supplied source.
Canon Version Update Required
No
Change Log Entry Required
Yes
Employee Impact Check
Employees impacted:
HeadOffice Dashboard Analyst
KPI Review Agent
Insight Summary Agent
Operational Decision Agent
Outcome Logger Agent
Failure Handler Agent
AIBS Client Dashboard Architect
Finance Review Agent
Data Quality Agent
Permission Gatekeeper Agent
Required behaviour updates:
AI Employees must identify whether a dashboard is visibility, diagnostic, action or outcome level.
AI Employees must not identify the lowest conversion percentage as the primary constraint without considering economic value, controllability, sample size, data quality, effort and downstream impact.
AI Employees must preserve metric definitions, calculation rules, sources, freshness and confidence.
AI Employees must separate read, interpret, recommend, approve, write, execute and verify authority.
AI Employees must display proposed changes, old values, new values, destination and external effect before high-impact approval.
AI Employees must verify downstream tool success before reporting that an external action completed.
AI Employees must preserve client and project boundaries.
AI Employees must label rules-based, AI-generated and human-decided insights correctly.
AI Employees must show assumptions, missing data, evidence and uncertainty behind recommendations.
AI Employees must not treat course examples or generic conversion targets as universal MWMS benchmarks.
AI Employees must connect material actions to expected outcomes and later review.
Strategic Absorption Result
MWMS gains a stronger dashboard operating system that moves from governed visibility through diagnosis, recommendation, approval, action, verification and outcome learning while protecting source truth, permissions, client isolation, data freshness and human decision authority.
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