Purpose

To help new Caddis customers establish clear visibility into their operations by collecting objective data on machine performance, cycle times, and downtime. This playbook walks users step-by-step through building a performance baseline that can be used to drive meaningful improvements.

“Before we had it, we were just taking people’s word for it… we weren’t measuring whether we made an improvement by uptime or runtime.”

— President, Aluminum Manufacturer

Timeline

7-10 days from integration to activation

Outcomes

What You'll Use In Caddis

Who's Involved

Step-by-Step Guide

Step 1: Select 3–5 Focus Machines

Choose machines that are:

Tip: Start small. Too much data early can lead to analysis paralysis.

Step 2: Let the Data Flow (7–10 Days)

Let Caddis do its job. Do not attempt to fix anything yet.

Use this period to observe behavior. Where do machines sit idle longer than expected?

Step 3: Schedule a ‘Get the Facts’ Team Meeting

Hold a 30–45-minute meeting after the observation period.

Suggested Agenda

  1. Objective: Understand our actual performance vs. assumptions
  2. Data Review: Use Caddis to show:
    • Total runtime hours vs. available hours
    • Most frequent stops per machine
    • Longest running cycle
    • Differences between shifts (if any)
  3. Operator/Team Feedback: Are these results expected? Surprising?
  4. Document Observations: What stands out? What trends do we see?

Step 4: Build the Baseline Report

Create a 1-page summary including

Optional Template Sections

Step 5: Assign Owners to Track Trends

Assign one owner per machine or department to:

Sample Roles: Supervisor, Maintenance Lead, Cell Lead

Step 6: Hold a Weekly ‘Data Huddle’

Duration: 15–20 mins, weekly
Attendees: Caddis Champion, Shift Leads, Maintenance

Topics:

Metrics to Track:

Metric Why It Matters
Runtime % Shows actual machine availability
Downtime frequency identifies bottlenecks or mechanical issues
Avg Cycle time Reveals consistency in process
Shift comparison Helps identify training or process variation

Common Challenges (and What to Do)

Challenge Solutions
This doesn't match what we were told by the team That’s expected. The point is to replace guesswork with facts. Use it to drive positive change, not blame
The data feels overwhelming Focus on trends, not perfection. You’re looking for outliers, not explanations for every detail.
Operators feel exposed Reframe Caddis as a tool for improvement, not surveillance. Share wins that come from the data.

What Success Looks Like