nsys-analyze

por nvidia

Analyze profiling data from Kit-based apps. Covers Omniverse-specific NVTX zone interpretation, phase detection using sqlite3, Tracy Statistics/Range Limit…

npx skills add https://github.com/nvidia/omniperf --skill nsys-analyze

Profile Analysis for Omniverse / Kit-based Apps

Analyze profiling data from Kit, Isaac Sim, and Isaac Lab using sqlite3 (for .nsys-rep), Tracy Statistics/Range Limit (primary .tracy path), and csvexport (automated .tracy fallback). For capturing profiles and installing tools, see the profiling and install-profilers skills.

Required tools: nsys, sqlite3, csvexport; Tracy GUI is needed for the primary .tracy Statistics workflow. See install-profilers skill.

Omniverse NVTX Zone Reference

Zone PatternMeaningPhase
App Update / App Main loopFrame boundariesRuntime
UsdFileOp / UsdFileOp::open / UsdFileOp::newStageStage operationsStartup/Loading
UsdContext::Impl::renderUSD render contextRuntime
RtxHydraEngine::render*RTX render passesRuntime
Hydra render views*Hydra render delegate opsRuntime
OmniGraph::* / ComputeGraphImpl::*OmniGraph computeRuntime
GeoTreeNode::* / Fabric::*Fabric/scene populationLoading/Runtime
Carbonite::* / carb::*Low-level framework (noise — exclude)All
Thread waiting...Idle thread (noise — exclude)All
Executing task / Running fiberTask scheduler (noise — exclude)All

Phase Detection Rules

Kit apps have phases: startuploadingruntimeshutdown.

  • Startup = trace start → first App Update frame
  • Loading frames = frames with duration > 5× median (stage loading spikes — can appear at start or mid-run)
  • Runtime frames = frames with duration ≤ 5× median (steady-state)
  • Frame marker = App Update zone (NOT App::beginUpdate)

Note: Loading in Kit apps often happens during runtime as a long frame, not as a separate phase before the first frame. The 5× median threshold reliably separates loading spikes from runtime frames.


Analysis Path A: nsys SQLite (for .nsys-rep files)

Step 1: Export to SQLite

nsys export --type=sqlite -o profile.sqlite profile.nsys-rep --force-overwrite=true

Step 2: Overview + Phases + Frame Analysis

sqlite3 -header -column profile.sqlite "
WITH frames AS (
  SELECT ROW_NUMBER() OVER (ORDER BY e.start) as n,
         e.start, e.end, (e.end - e.start) as dur_ns
  FROM NVTX_EVENTS e LEFT JOIN StringIds s ON e.textId = s.id
  WHERE COALESCE(e.text, s.value) = 'App Update' AND e.end IS NOT NULL
),
frame_med AS (
  SELECT dur_ns as med FROM frames ORDER BY dur_ns
  LIMIT 1 OFFSET (SELECT COUNT(*)/2 FROM frames)
),
runtime AS (
  SELECT dur_ns FROM frames, frame_med WHERE dur_ns <= med * 5 ORDER BY dur_ns
)
SELECT
  ROUND((SELECT (MIN(start) - (SELECT MIN(start) FROM NVTX_EVENTS)) / 1e9 FROM frames), 2) as startup_sec,
  ROUND((SELECT (MAX(end) - MIN(start)) / 1e9 FROM frames), 2) as total_sec,
  (SELECT COUNT(*) FROM frames) as total_frames,
  (SELECT COUNT(*) FROM frames, frame_med WHERE dur_ns > med * 5) as loading_frames,
  COUNT(*) as runtime_frames,
  ROUND(AVG(dur_ns)/1e6, 2) as mean_ms,
  (SELECT ROUND(dur_ns/1e6,2) FROM runtime LIMIT 1 OFFSET (SELECT COUNT(*)/2 FROM runtime)) as p50_ms,
  (SELECT ROUND(dur_ns/1e6,2) FROM runtime LIMIT 1 OFFSET (SELECT CAST(COUNT(*)*0.95 AS INT) FROM runtime)) as p95_ms,
  ROUND(MIN(dur_ns)/1e6, 2) as min_ms,
  ROUND(MAX(dur_ns)/1e6, 2) as max_ms,
  ROUND(1000.0/(AVG(dur_ns)/1e6), 1) as fps
FROM runtime;
"

Step 3: Top Zones (runtime only, noise excluded)

sqlite3 -header -column profile.sqlite "
WITH frames AS (
  SELECT ROW_NUMBER() OVER (ORDER BY e.start) as n,
         e.start, e.end, (e.end - e.start) as dur_ns
  FROM NVTX_EVENTS e LEFT JOIN StringIds s ON e.textId = s.id
  WHERE COALESCE(e.text, s.value) = 'App Update' AND e.end IS NOT NULL
),
frame_med AS (
  SELECT dur_ns as med FROM frames ORDER BY dur_ns
  LIMIT 1 OFFSET (SELECT COUNT(*)/2 FROM frames)
),
runtime_frames AS (
  -- Keep only frames classified as steady-state runtime. Do not collapse to
  -- one min/max span, because loading spikes can occur between runtime frames.
  SELECT f.start, f.end
  FROM frames f, frame_med m
  WHERE f.dur_ns <= m.med * 5
)
SELECT
  COALESCE(e.text, s.value) as zone_name,
  COUNT(*) as cnt,
  ROUND(AVG(e.end - e.start)/1e6, 3) as avg_ms,
  ROUND(SUM(e.end - e.start)/1e6, 2) as total_ms,
  ROUND(MAX(e.end - e.start)/1e6, 3) as max_ms
FROM NVTX_EVENTS e
LEFT JOIN StringIds s ON e.textId = s.id
WHERE EXISTS (
    SELECT 1 FROM runtime_frames rf
    WHERE e.start >= rf.start AND e.start < rf.end
  )
  AND e.end IS NOT NULL AND (e.end - e.start) > 0
  AND COALESCE(e.text, s.value) NOT LIKE '%Thread waiting%'
  AND COALESCE(e.text, s.value) NOT LIKE 'Carbonite::%'
  AND COALESCE(e.text, s.value) NOT LIKE 'carb::%'
  AND COALESCE(e.text, s.value) NOT IN ('Executing task','Running fiber')
GROUP BY zone_name
HAVING total_ms > 1
ORDER BY total_ms DESC LIMIT 30;
"

SQLite Schema Quick Reference

TableUse
NVTX_EVENTSNVTX ranges/markers. No name column — use text (inline) or join textId→StringIds.id.
StringIdsString lookup (idvalue)
CUPTI_ACTIVITY_KIND_KERNELCUDA kernel launches (empty for Kit/RTX apps — normal)
TARGET_INFO_GPUGPU hardware info
TARGET_INFO_SYSTEM_ENVSystem environment

Analysis Path B: Tracy Statistics (primary path for .tracy files)

Use Tracy GUI Statistics for .tracy files when the goal is hotspot ranking, regression analysis, or optimization comparison.

  1. Open the .tracy file in Tracy Profiler.
  2. Open View -> Statistics.
  3. Drag-select the steady-state interval on the timeline and set Range Limit.
  4. Record Mean, Median, Min, Max, Std Dev, Count, and Total Time for key zones.
  5. For before/after comparisons, use the same hardware, scene, parameters, and equal-length steady-state Range Limits.

Do not compare a single frame unless the issue is known to occur in one frame and is reproduced across multiple runs.


Analysis Path C: Tracy CSV (automated fallback for .tracy files)

csvexport profile.tracy > zones.csv

Inspect the header before scripting against csvexport output. Tracy versions and builds can differ:

  • Guide examples use name, mean, count, and total_time.
  • Other builds emit nanosecond-specific names such as total_ns, counts, and mean_ns.

Normalize the column names in scripts instead of assuming one schema.

Data is pre-aggregated — one row per unique zone, covering the entire trace (no phase separation).

head -1 zones.csv

Tracy CSV limitation: No per-invocation timestamps — only aggregates. For phase-aware analysis, prefer the nsys SQLite path.


Two-Version Comparison

With nsys SQLite (recommended)

nsys export --type=sqlite -o v1.sqlite v1.nsys-rep --force-overwrite=true
nsys export --type=sqlite -o v2.sqlite v2.nsys-rep --force-overwrite=true

Run the overview/frames/zones queries (Steps 2-3) on both databases, save outputs, then compare.

With Tracy CSV

csvexport v1.tracy > v1_zones.csv
csvexport v2.tracy > v2_zones.csv

Compare with Python:

import csv

def number(row, *names):
    for name in names:
        value = row.get(name)
        if value not in (None, ""):
            return float(value)
    return 0.0

def load_zones(path):
    zones = {}
    with open(path) as f:
        for row in csv.DictReader(f):
            name = row.get('name') or row.get('zone_name')
            if not name:
                continue
            zones[name] = {
                'total_ms': number(row, 'total_ns', 'total_time') / 1e6,
                'count': int(number(row, 'counts', 'count')),
                'mean_ms': number(row, 'mean_ns', 'mean') / 1e6,
            }
    return zones

v1, v2 = load_zones('v1_zones.csv'), load_zones('v2_zones.csv')

diffs = []
for name in set(v1) | set(v2):
    t1 = v1.get(name, {}).get('total_ms', 0)
    t2 = v2.get(name, {}).get('total_ms', 0)
    if t1 > 0.1 or t2 > 0.1:  # skip trivial zones
        diffs.append((name, t1, t2, t2 - t1))

print("=== Top Regressions (slower in v2) ===")
for name, t1, t2, d in sorted(diffs, key=lambda x: -x[3])[:15]:
    print(f"  {d:+10.1f}ms  {name}  (v1={t1:.1f}, v2={t2:.1f})")

print("\n=== Top Improvements (faster in v2) ===")
for name, t1, t2, d in sorted(diffs, key=lambda x: x[3])[:15]:
    print(f"  {d:+10.1f}ms  {name}  (v1={t1:.1f}, v2={t2:.1f})")

Report Structure

  1. Overall metrics — total duration, frame count per version
  2. Phase comparison — startup time, loading frames count/duration
  3. Frame analysis — mean frametime, P50, P95, FPS (runtime frames only)
  4. Top regressions — zones slower in v2, ranked by absolute ms impact
  5. Top improvements — zones faster in v2
  6. New/removed zones — zones appearing only in one version
  7. Root cause analysis — explain why the change happened

The goal: not just "FPS dropped 10%" but "FPS dropped 10% because rtUpdatePipeline added 59ms/frame in v2, a new shader pipeline recompilation step not present in v1."