How Teams Determine What Should Not Be Automated
Knowing what not to automate keeps processes stable.

George Munguia
Tennessee
, Harmony Co-Founder
Harmony Co-Founder
Many automation projects fail not because the technology is wrong, but because the choice of what to automate was wrong. In mid-sized factories, where every minute of uptime matters and teams are stretched thin, automating the wrong workflow can create friction, waste time, or even slow production.
A clear, practical framework helps plants choose automation targets that are low-risk, high-impact, and aligned with real operational needs, not vendor promises or abstract “Industry 4.0” goals.
This guide provides a manufacturing-ready decision model any plant can use to determine what should be automated, what should not, and what should wait until the data, processes, or behaviors are ready.
The 5 Criteria for Selecting Good Automation Candidates
1. Frequency: Does the task happen often enough to matter?
Automation pays off when a task is:
Repeated daily or hourly
Part of every shift
Part of every changeover
A recurring maintenance process
A repetitive data capture activity
If a workflow happens once a month, automation rarely produces real ROI.
High-frequency = high-value.
2. Variability: Is the process stable enough to automate?
Good automation targets follow predictable steps.
Bad automation targets vary wildly depending on:
Operator style
Machine quirks
Product variation
Shift pressure
Ad hoc adjustments
Automation thrives in stable patterns, not chaos.
If the workflow changes constantly, stabilize it first, then automate.
3. Impact: Does improving this task meaningfully affect throughput, quality, or downtime?
A task is worth automating if it:
Reduces scrap
Reduces rework
Improves uptime
Shortens troubleshooting time
Improves shift communication
Eliminates shadow processes (whiteboards, binders, spreadsheets)
Saves meaningful labor hours
Automation should attach directly to operational or financial outcomes.
4. Data Availability: Do we have clean data to support the automation?
Automation fails when it requires:
Missing data
Inconsistent categories
Ambiguous notes
Unreliable time stamps
Data buried in spreadsheets or paper
Before automating anything, confirm the workflow has:
Simple data fields
Consistent tagging across shifts
Clear definitions
Capture at the right moment
Little-to-no manual transcription
If the data is unreliable, fix the data model first.
5. User Fit: Will operators and supervisors actually use the automation?
Nothing kills ROI faster than low adoption.
Workflows succeed when:
Operators see clear benefit
Supervisors can reinforce usage
Maintenance trusts the signals
Input steps align with real shift rhythms
If the workflow adds steps, adds friction, or slows the floor, it will be resisted.
Automation must remove work, not add it.
The Automation Decision Matrix: Automate, Delay, or Avoid
Below is the plant-ready model used during on-site Harmony deployments.
Category 1 , Automate Now (High Impact, High Stability, High Frequency)
These are the ideal automation candidates.
Examples:
Downtime tagging
Scrap categorization
Digital setup verification
Shift handoff summaries
Simple maintenance triage
Digital forms replacing paper travelers
Basic machine state capture (run/stop/cycle time)
These workflows:
Occur multiple times per shift
Generate high-value data
Reduce operator burden
Improve clarity across shifts
Help maintenance respond faster
Characteristics:
Stable, repetitive, high-value → automate early.
Category 2 , Automate After Data Is Clean (High Impact, Low Data Availability)
These tasks will benefit from automation, but only after 2–4 weeks of structured data capture.
Examples:
Predictive scrap detection
Drift analysis on changeovers
Automated root-cause recommendations
Predictive maintenance scoring
Material-to-scrap correlation models
Failure clustering
These require:
Consistent logging
Validated patterns
Cross-shift alignment
Characteristics:
High-value, but dependent on good data → collect data first, then automate.
Category 3 - Stabilize First, Then Automate (High Impact, High Variability)
These workflows matter but are too inconsistent to automate immediately.
Examples:
Complex changeovers with tribal knowledge
Multi-step quality inspection sequences
Repairs with variable diagnosis paths
Troubleshooting routines with operator-specific steps
Characteristics:
Important, but highly variable → document → simplify → stabilize → automate.
Category 4 , Support With AI Insights, Not Automation (High Complexity, Judgment-Heavy)
These tasks require human judgment and should be augmented, not automated.
Examples:
Approving deviations
Interpreting unusual machine behavior
Adjusting process parameters for edge cases
Diagnosing rare failures
Leadership decision-making
AI can provide:
Suggestions
Patterns
Signal detection
Alerts
Historical context
…but humans should remain in control.
Characteristics:
High value, but too judgment-driven → augment with AI, don’t automate.
Category 5 - Do Not Automate (Low Frequency, Low Impact, High Complexity)
These workflows waste resources when automated.
Examples:
Rare one-off tasks
Quarterly reports
Seldom-used quality forms
Workflows only used during audits
Tasks with no impact on scrap, uptime, safety, or labor
Automation here produces no meaningful operational gain.
Characteristics:
Low value, low frequency → not worth automating.
How to Evaluate Any Workflow in 5 Minutes
Ask these questions:
Does the task happen multiple times per shift?
If not, pause.Is the process stable enough to automate?
If not, stabilize first.Would improving this task reduce downtime, scrap, rework, or labor?
If not, skip.Is the necessary data already being captured?
If not, collect data first.Will operators and supervisors realistically adopt the automated version?
If not, redesign the workflow.
If a workflow passes all five, it is a strong automation candidate.
Real Examples of What Should and Should Not Be Automated
Automate Now
Digital downtime & scrap logging
Shift handoff summaries
Simple maintenance work requests
Setup verification
Run/stop status collection
Voice-input operator notes
Automate Later
Predictive maintenance models
Parameter drift analysis
Multi-variable scrap correlation
Cross-line comparison dashboards
Standardize First … Then Automate
Complex changeover routines
Quality inspection sequences
Manual rework processes
Use AI to Assist, Not Automate
Troubleshooting unusual defects
Maintenance diagnostics
Production schedule optimization during high variability
Do Not Automate
Low-frequency admin tasks
Niche quality forms
Highly customized one-off workflows
How Harmony Helps Plants Choose the Right Automation Targets
Harmony works on-site to design automation paths that fit real factory constraints.
Harmony helps manufacturers:
Map workflows directly on the floor
Identify high-value automation opportunities
Build simple, bilingual digital forms
Collect the right data before automating
Run one-cell pilots to validate impact
Automate workflows in safe, incremental steps
Avoid wasted automation on low-impact tasks
This creates a stable automation roadmap tailored to each plant.
Key Takeaways
Not every workflow should be automated, and many shouldn’t be automated yet.
Focus on high-frequency, high-stability, high-impact tasks first.
Collect minimum viable data before automating anything complex.
Stabilize and standardize chaotic workflows before digitizing.
Support judgment-heavy tasks with AI insights, not automation.
The right automation strategy reduces risk, improves adoption, and accelerates ROI.
Want help choosing what to automate, and what to avoid?
Harmony builds practical, risk-free automation pathways for mid-sized manufacturers across the Southeast.
Visit TryHarmony.ai
Many automation projects fail not because the technology is wrong, but because the choice of what to automate was wrong. In mid-sized factories, where every minute of uptime matters and teams are stretched thin, automating the wrong workflow can create friction, waste time, or even slow production.
A clear, practical framework helps plants choose automation targets that are low-risk, high-impact, and aligned with real operational needs, not vendor promises or abstract “Industry 4.0” goals.
This guide provides a manufacturing-ready decision model any plant can use to determine what should be automated, what should not, and what should wait until the data, processes, or behaviors are ready.
The 5 Criteria for Selecting Good Automation Candidates
1. Frequency: Does the task happen often enough to matter?
Automation pays off when a task is:
Repeated daily or hourly
Part of every shift
Part of every changeover
A recurring maintenance process
A repetitive data capture activity
If a workflow happens once a month, automation rarely produces real ROI.
High-frequency = high-value.
2. Variability: Is the process stable enough to automate?
Good automation targets follow predictable steps.
Bad automation targets vary wildly depending on:
Operator style
Machine quirks
Product variation
Shift pressure
Ad hoc adjustments
Automation thrives in stable patterns, not chaos.
If the workflow changes constantly, stabilize it first, then automate.
3. Impact: Does improving this task meaningfully affect throughput, quality, or downtime?
A task is worth automating if it:
Reduces scrap
Reduces rework
Improves uptime
Shortens troubleshooting time
Improves shift communication
Eliminates shadow processes (whiteboards, binders, spreadsheets)
Saves meaningful labor hours
Automation should attach directly to operational or financial outcomes.
4. Data Availability: Do we have clean data to support the automation?
Automation fails when it requires:
Missing data
Inconsistent categories
Ambiguous notes
Unreliable time stamps
Data buried in spreadsheets or paper
Before automating anything, confirm the workflow has:
Simple data fields
Consistent tagging across shifts
Clear definitions
Capture at the right moment
Little-to-no manual transcription
If the data is unreliable, fix the data model first.
5. User Fit: Will operators and supervisors actually use the automation?
Nothing kills ROI faster than low adoption.
Workflows succeed when:
Operators see clear benefit
Supervisors can reinforce usage
Maintenance trusts the signals
Input steps align with real shift rhythms
If the workflow adds steps, adds friction, or slows the floor, it will be resisted.
Automation must remove work, not add it.
The Automation Decision Matrix: Automate, Delay, or Avoid
Below is the plant-ready model used during on-site Harmony deployments.
Category 1 , Automate Now (High Impact, High Stability, High Frequency)
These are the ideal automation candidates.
Examples:
Downtime tagging
Scrap categorization
Digital setup verification
Shift handoff summaries
Simple maintenance triage
Digital forms replacing paper travelers
Basic machine state capture (run/stop/cycle time)
These workflows:
Occur multiple times per shift
Generate high-value data
Reduce operator burden
Improve clarity across shifts
Help maintenance respond faster
Characteristics:
Stable, repetitive, high-value → automate early.
Category 2 , Automate After Data Is Clean (High Impact, Low Data Availability)
These tasks will benefit from automation, but only after 2–4 weeks of structured data capture.
Examples:
Predictive scrap detection
Drift analysis on changeovers
Automated root-cause recommendations
Predictive maintenance scoring
Material-to-scrap correlation models
Failure clustering
These require:
Consistent logging
Validated patterns
Cross-shift alignment
Characteristics:
High-value, but dependent on good data → collect data first, then automate.
Category 3 - Stabilize First, Then Automate (High Impact, High Variability)
These workflows matter but are too inconsistent to automate immediately.
Examples:
Complex changeovers with tribal knowledge
Multi-step quality inspection sequences
Repairs with variable diagnosis paths
Troubleshooting routines with operator-specific steps
Characteristics:
Important, but highly variable → document → simplify → stabilize → automate.
Category 4 , Support With AI Insights, Not Automation (High Complexity, Judgment-Heavy)
These tasks require human judgment and should be augmented, not automated.
Examples:
Approving deviations
Interpreting unusual machine behavior
Adjusting process parameters for edge cases
Diagnosing rare failures
Leadership decision-making
AI can provide:
Suggestions
Patterns
Signal detection
Alerts
Historical context
…but humans should remain in control.
Characteristics:
High value, but too judgment-driven → augment with AI, don’t automate.
Category 5 - Do Not Automate (Low Frequency, Low Impact, High Complexity)
These workflows waste resources when automated.
Examples:
Rare one-off tasks
Quarterly reports
Seldom-used quality forms
Workflows only used during audits
Tasks with no impact on scrap, uptime, safety, or labor
Automation here produces no meaningful operational gain.
Characteristics:
Low value, low frequency → not worth automating.
How to Evaluate Any Workflow in 5 Minutes
Ask these questions:
Does the task happen multiple times per shift?
If not, pause.Is the process stable enough to automate?
If not, stabilize first.Would improving this task reduce downtime, scrap, rework, or labor?
If not, skip.Is the necessary data already being captured?
If not, collect data first.Will operators and supervisors realistically adopt the automated version?
If not, redesign the workflow.
If a workflow passes all five, it is a strong automation candidate.
Real Examples of What Should and Should Not Be Automated
Automate Now
Digital downtime & scrap logging
Shift handoff summaries
Simple maintenance work requests
Setup verification
Run/stop status collection
Voice-input operator notes
Automate Later
Predictive maintenance models
Parameter drift analysis
Multi-variable scrap correlation
Cross-line comparison dashboards
Standardize First … Then Automate
Complex changeover routines
Quality inspection sequences
Manual rework processes
Use AI to Assist, Not Automate
Troubleshooting unusual defects
Maintenance diagnostics
Production schedule optimization during high variability
Do Not Automate
Low-frequency admin tasks
Niche quality forms
Highly customized one-off workflows
How Harmony Helps Plants Choose the Right Automation Targets
Harmony works on-site to design automation paths that fit real factory constraints.
Harmony helps manufacturers:
Map workflows directly on the floor
Identify high-value automation opportunities
Build simple, bilingual digital forms
Collect the right data before automating
Run one-cell pilots to validate impact
Automate workflows in safe, incremental steps
Avoid wasted automation on low-impact tasks
This creates a stable automation roadmap tailored to each plant.
Key Takeaways
Not every workflow should be automated, and many shouldn’t be automated yet.
Focus on high-frequency, high-stability, high-impact tasks first.
Collect minimum viable data before automating anything complex.
Stabilize and standardize chaotic workflows before digitizing.
Support judgment-heavy tasks with AI insights, not automation.
The right automation strategy reduces risk, improves adoption, and accelerates ROI.
Want help choosing what to automate, and what to avoid?
Harmony builds practical, risk-free automation pathways for mid-sized manufacturers across the Southeast.
Visit TryHarmony.ai