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Test DataDog/test-infra-definitions#1267 #31558
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[Fast Unit Tests Report] On pipeline 50100661 (CI Visibility). The following jobs did not run any unit tests: Jobs:
If you modified Go files and expected unit tests to run in these jobs, please double check the job logs. If you think tests should have been executed reach out to #agent-devx-help |
Regression DetectorRegression Detector ResultsMetrics dashboard Baseline: 90bfbe5 Optimization Goals: ❌ Significant changes detected
|
perf | experiment | goal | Δ mean % | Δ mean % CI | trials | links |
---|---|---|---|---|---|---|
❌ | basic_py_check | % cpu utilization | +5.05 | [+1.07, +9.03] | 1 | Logs |
➖ | uds_dogstatsd_to_api_cpu | % cpu utilization | +2.05 | [+1.31, +2.79] | 1 | Logs |
➖ | quality_gate_logs | % cpu utilization | +0.40 | [-2.53, +3.33] | 1 | Logs |
➖ | quality_gate_idle_all_features | memory utilization | +0.35 | [+0.23, +0.47] | 1 | Logs bounds checks dashboard |
➖ | file_to_blackhole_500ms_latency | egress throughput | +0.30 | [-0.46, +1.06] | 1 | Logs |
➖ | tcp_syslog_to_blackhole | ingress throughput | +0.29 | [+0.24, +0.34] | 1 | Logs |
➖ | otel_to_otel_logs | ingress throughput | +0.26 | [-0.41, +0.93] | 1 | Logs |
➖ | quality_gate_idle | memory utilization | +0.25 | [+0.21, +0.29] | 1 | Logs bounds checks dashboard |
➖ | file_to_blackhole_1000ms_latency_linear_load | egress throughput | +0.15 | [-0.31, +0.61] | 1 | Logs |
➖ | file_to_blackhole_0ms_latency | egress throughput | +0.07 | [-0.73, +0.87] | 1 | Logs |
➖ | file_to_blackhole_100ms_latency | egress throughput | +0.04 | [-0.68, +0.76] | 1 | Logs |
➖ | file_to_blackhole_300ms_latency | egress throughput | +0.00 | [-0.63, +0.63] | 1 | Logs |
➖ | tcp_dd_logs_filter_exclude | ingress throughput | +0.00 | [-0.01, +0.01] | 1 | Logs |
➖ | uds_dogstatsd_to_api | ingress throughput | -0.00 | [-0.10, +0.10] | 1 | Logs |
➖ | file_tree | memory utilization | -0.04 | [-0.19, +0.10] | 1 | Logs |
➖ | file_to_blackhole_1000ms_latency | egress throughput | -0.64 | [-1.41, +0.14] | 1 | Logs |
➖ | pycheck_lots_of_tags | % cpu utilization | -3.30 | [-6.67, +0.08] | 1 | Logs |
Bounds Checks: ❌ Failed
perf | experiment | bounds_check_name | replicates_passed | links |
---|---|---|---|---|
❌ | file_to_blackhole_500ms_latency | lost_bytes | 7/10 | |
❌ | file_to_blackhole_0ms_latency | lost_bytes | 9/10 | |
✅ | file_to_blackhole_0ms_latency | memory_usage | 10/10 | |
✅ | file_to_blackhole_1000ms_latency | memory_usage | 10/10 | |
✅ | file_to_blackhole_1000ms_latency_linear_load | memory_usage | 10/10 | |
✅ | file_to_blackhole_100ms_latency | lost_bytes | 10/10 | |
✅ | file_to_blackhole_100ms_latency | memory_usage | 10/10 | |
✅ | file_to_blackhole_300ms_latency | lost_bytes | 10/10 | |
✅ | file_to_blackhole_300ms_latency | memory_usage | 10/10 | |
✅ | file_to_blackhole_500ms_latency | memory_usage | 10/10 | |
✅ | quality_gate_idle | memory_usage | 10/10 | bounds checks dashboard |
✅ | quality_gate_idle_all_features | memory_usage | 10/10 | bounds checks dashboard |
✅ | quality_gate_logs | lost_bytes | 10/10 | |
✅ | quality_gate_logs | memory_usage | 10/10 |
Explanation
Confidence level: 90.00%
Effect size tolerance: |Δ mean %| ≥ 5.00%
Performance changes are noted in the perf column of each table:
- ✅ = significantly better comparison variant performance
- ❌ = significantly worse comparison variant performance
- ➖ = no significant change in performance
A regression test is an A/B test of target performance in a repeatable rig, where "performance" is measured as "comparison variant minus baseline variant" for an optimization goal (e.g., ingress throughput). Due to intrinsic variability in measuring that goal, we can only estimate its mean value for each experiment; we report uncertainty in that value as a 90.00% confidence interval denoted "Δ mean % CI".
For each experiment, we decide whether a change in performance is a "regression" -- a change worth investigating further -- if all of the following criteria are true:
-
Its estimated |Δ mean %| ≥ 5.00%, indicating the change is big enough to merit a closer look.
-
Its 90.00% confidence interval "Δ mean % CI" does not contain zero, indicating that if our statistical model is accurate, there is at least a 90.00% chance there is a difference in performance between baseline and comparison variants.
-
Its configuration does not mark it "erratic".
CI Pass/Fail Decision
✅ Passed. All Quality Gates passed.
- quality_gate_idle, bounds check memory_usage: 10/10 replicas passed. Gate passed.
- quality_gate_idle_all_features, bounds check memory_usage: 10/10 replicas passed. Gate passed.
- quality_gate_logs, bounds check lost_bytes: 10/10 replicas passed. Gate passed.
- quality_gate_logs, bounds check memory_usage: 10/10 replicas passed. Gate passed.
What does this PR do?
Test DataDog/test-infra-definitions#1267
Motivation
Better understand the impact of DataDog/test-infra-definitions#1265 on e2e tests.
Describe how to test/QA your changes
Validate that all
containers
e2e tests are passing.Possible Drawbacks / Trade-offs
Additional Notes