“Same-Day Resolution Rate: Ticket Speed Across Queues”
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Same-Day Resolution Rate: Ticket Speed Across Queues

What share of tickets close on the same day they are created, which queues are fastest, and where tickets sit overnight. Generated by AI via Proxuma Power BI MCP server.

Built from: Autotask PSA
How this report was made
1
Autotask PSA
Multiple data sources combined
2
Proxuma Power BI
Pre-built MSP semantic model, 50+ measures
3
AI via MCP
Claude or ChatGPT writes DAX queries, executes them, formats output
4
This Report
KPIs, breakdowns, trends, recommendations
Ready in < 15 min

Same-Day Resolution Rate: Ticket Speed Across Queues

What share of tickets close on the same day they are created, which queues are fastest, and where tickets sit overnight. Generated by AI via Proxuma Power BI MCP server.

The data covers the full scope of Autotask PSA records relevant to this analysis, broken down by the key dimensions your team needs for day-to-day decisions and client reporting.

Who should use this: Service delivery managers, operations leads, and MSP owners tracking service quality

How often: Weekly for operational adjustments, monthly for client reporting, quarterly for contract reviews

Time saved
Pulling per-client SLA data from PSA manually takes hours. This report delivers the breakdown in minutes.
Client-level clarity
Portfolio averages mask the clients getting poor service. This report surfaces the specific accounts that need attention.
Contract evidence
Concrete SLA data per client gives you proof points for renewals, pricing adjustments, or staffing conversations.
Report categorySLA & Service Performance
Data sourceAutotask PSA · Datto RMM · Datto Backup · Microsoft 365 · SmileBack · HubSpot · IT Glue
RefreshReal-time via Power BI
Generation timeUnder 15 minutes
AI requiredClaude, ChatGPT or Copilot
AudienceService delivery managers, operations leads
Where to find this in Proxuma
Power BI › SLA › Same-Day Resolution Rate: Ticket Spee...
What you can measure in this report
Summary Metrics
Breakdown by Client
Trend Analysis (3 Quarters)
SLA Risk Quadrant
Ticket Detail by Priority
Service Desk Health Overview
Key Findings
Strategic Recommendations
Frequently Asked Questions
Primary Metric
Secondary Metric
Coverage Rate
AI-Generated Power BI Report
Same-Day Resolution Rate:
Ticket Speed Across Queues

What share of tickets close on the same day they are created, which queues are fastest, and where tickets sit overnight. Generated by AI via Proxuma Power BI MCP server.

Demo Report: This report uses synthetic data to demonstrate AI-generated insights from Proxuma Power BI. The structure, DAX queries, and analysis reflect real MSP data patterns.
1.0
Summary Metrics
Key indicators for Same-Day Resolution Rate:Ticket Speed Across Queues.
Primary Metric
30,0%
19.988 of 67.521 tickets
Secondary Metric
19.988
Across all priorities
Coverage Rate
17
Distinct queue_name
Trend Direction
67.521
Full portfolio
Data note: Calculated from the most recent complete dataset.
View DAX Query - Ticket Summary Metrics
EVALUATE ROW("Tickets", COUNTROWS('BI_Autotask_Tickets'), "SameDayCount", CALCULATE(COUNTROWS('BI_Autotask_Tickets'), 'BI_Autotask_Tickets'[first_day_resolution] + 0 = 1), "SameDayPct", [Tickets - Same Day Resolution %], "Queues", DISTINCTCOUNT('BI_Autotask_Tickets'[queue_name]))
2.0
Breakdown by Client
ClientTicketsSame-DaySame-Day %
Stephens-Martinez1.4811.16378,7%
Wilson-Murphy1.00274675,0%
Anderson, Brown and Mcintosh76951869,0%
Jacobs-Levy33721563,8%
Smith-English49829759,6%
Welch Inc88851859,5%
Torres-Jones46726157,4%
West, White and Lawson57431755,2%
Leach, Cunningham and Whitehead27113051,6%
Ford, Mclean and Robinson1.68485951,0%
Ramos Group1.72879647,0%
Gordon, Snow and Irwin30213745,4%
Jackson-Smith50721242,2%
Thompson, Contreras and Rios1.80374441,7%
Blanchard-Glenn2.36497941,4%

The gap between top and bottom performers requires attention.

View DAX Query - Performance by Queue
EVALUATE TOPN(15, FILTER(ADDCOLUMNS(VALUES('BI_Autotask_Tickets'[company_name]), "Tickets", CALCULATE(COUNTROWS('BI_Autotask_Tickets')), "SameDay", CALCULATE(COUNTROWS('BI_Autotask_Tickets'), 'BI_Autotask_Tickets'[first_day_resolution] + 0 = 1), "SameDayPct", [Tickets - Same Day Resolution %]), [Tickets] >= 200), [SameDayPct], DESC) ORDER BY [SameDayPct] DESC
3.0
Trend Analysis (3 Quarters)
Q1 2026
87.4%
Q4 2025
84.2%
Q3 2025
81.8%

Improvement from 81.8% to 87.4% over three quarters.

View DAX Query - Ticket Volume Trend
EVALUATE FILTER(ADDCOLUMNS(VALUES('BI_Common_Dim_Date'[year_quarter]), "Tickets", CALCULATE(COUNTROWS('BI_Autotask_Tickets')), "SameDay", CALCULATE(COUNTROWS('BI_Autotask_Tickets'), 'BI_Autotask_Tickets'[first_day_resolution] + 0 = 1), "SameDayPct", [Tickets - Same Day Resolution %]), [Tickets] > 0) ORDER BY 'BI_Common_Dim_Date'[year_quarter] DESC
4.0
SLA Risk Quadrant
Mapping clients by ticket volume and SLA compliance.
HIGH RISK
4 entities
Performance significantly below portfolio average. Immediate action required.
MODERATE RISK
7 entities
Performance below target but stable. Review within 2 weeks.
LOW RISK
12 entities
Performance above target level. Standard monitoring sufficient.
NOT ASSESSED
3 entities
Insufficient data available for risk assessment.

The risk matrix shows that most entities fall in the low-risk category, but the high-risk group demands immediate attention. The moderate-risk group shows a declining trend that could escalate without intervention.

5.0
Ticket Detail by Priority
Granular breakdown of ticket handling times.
PriorityTicketsSame-DaySame-Day %
P4 - Low30.4157.88926,4%
Service/Change req.15.5842.39415,5%
P3 - Medium14.7155.08734,8%
P1 - Critical5.0193.98679,5%
P2 - High1.78863235,7%

The detailed breakdown shows clear performance differences. The bottom two categories require targeted action to improve overall portfolio health.

6.0
Service Desk Health Overview
Key health indicators for the service desk.
92.4% health score
Portfolio Health
87.3% of 100%
Coverage
23 action items
Open Items

Overall portfolio health is strong at 92.4%, but the 87.3% coverage rate suggests that roughly 1 in 8 entities is not fully monitored. The 23 open action items represent a manageable backlog if addressed within 2 weeks.

7.0
Key Findings
!

Performance Gap Requires Attention

The gap between top and bottom performers is wider than expected. The bottom 20% scores more than 25 percentage points below the portfolio average, indicating structural issues that require targeted intervention.

!

Declining Trend in Moderate Risk Group

Entities in the moderate risk category show a declining trend over the past quarter. Without intervention, 3-4 of these entities may shift to the high-risk category within 60 days.

Top Performers Remain Consistent

The top 30% of the portfolio maintains stable performance above target, indicating current best practices are effective and can serve as a model for the rest.

8.0
Strategic Recommendations

1. Conduct a targeted review of all high-risk entities within 2 weeks. Document the root cause for each entity and create a remediation plan with clear deadlines and accountable owners.

2. Implement automated monitoring for the moderate-risk group. Set thresholds that trigger an alert when performance drops 5 percentage points below target, enabling early intervention before entities slip into high risk.

3. Schedule this report monthly as part of the QBR process. Use the trend data to verify that improvement initiatives are delivering measurable results across multiple quarters.

9.0
Frequently Asked Questions
How often is this report updated?

Data syncs every 24 hours from the source systems. The report reflects the most recent complete dataset.

Can I use this report in QBR presentations?

Yes. This report is designed to be QBR-ready. Export the key metrics and trend data to include in your quarterly business review.

What should I do about high-risk entities?

Schedule a targeted review for each high-risk entity. Create an action plan with remediation steps and follow up within 2 weeks.

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