deepstream-dev
NVIDIA DeepStream SDK 9.0 development with Python pyservicemaker API. Use when building video analytics pipelines, GStreamer-based video processing, TensorRT inference integration, object detection/tracking, or Kafka/message broker integration.
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npx skills add https://github.com/nvidia/skills --skill deepstream-devIs this agent skill safe to install?
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This skill provides comprehensive and legitimate documentation for developing video analytics applications with the NVIDIA DeepStream SDK 9.0. It includes detailed guides for pipeline architecture, Python API usage, and integration with message brokers like Kafka. No malicious instructions, prompt injections, or security vulnerabilities were found, and all setup steps use standard industry practices and well-known dependencies.
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What does this agent skill do?
DeepStream Development Skill
When this skill is active, ALWAYS read the relevant reference documents before generating code. Do NOT rely on memory - the reference documents contain critical details about exact property names, correct API usage, and common pitfalls.
SDK and Architecture Quick Reference
DeepStream SDK 9.0 Version Requirements
- GStreamer: 1.24.2
- NVIDIA Driver: 590+
- CUDA: 13.1
- TensorRT: 10.14.1.48
- Platforms: Ubuntu 24.04 (x86_64 and ARM64/Jetson)
Typical Pipeline Flow
Source → Stream Muxer → Inference → [Tracker] → OSD → Renderer
Components in [brackets] are optional -- only add them when the user explicitly requests them.
| Stage | Role | Key Element(s) | Required? |
|---|---|---|---|
| Source | Input from files, RTSP, cameras | nvurisrcbin (preferred), nvmultiurisrcbin, filesrc | Yes |
| Stream Muxer | Batches streams for inference | nvstreammux | Yes |
| Inference | TensorRT model execution | nvinfer, nvinferserver | Yes |
| Tracker | Multi-object tracking across frames | nvtracker | Only if requested |
| OSD | Draws bounding boxes, labels, overlays | nvosdbin | Yes (for visualization) |
| Renderer | Display or save output | nveglglessink, nv3dsink, filesink | Yes |
Memory Model
DeepStream uses NVIDIA Video Memory Manager (NVMM) for zero-copy GPU buffer transfers. Caps strings use memory:NVMM to indicate GPU memory (e.g., video/x-raw(memory:NVMM), format=NV12).
Critical Rules
-
Only Add Requested Components: Do NOT add pipeline elements the user did not ask for.
- Tracker (
nvtracker): Only add when the user explicitly requests tracking or object IDs across frames - Secondary GIEs: Only add when the user requests classification or attribute extraction
- Analytics (
nvdsanalytics): Only add when the user requests line crossing, ROI counting, etc. - Message broker (
nvmsgbroker/nvmsgconv): Only add when the user requests Kafka/cloud messaging - When in doubt, build the minimal working pipeline and let the user ask for additions
- Tracker (
-
Default to
nvurisrcbinfor Sources: When the user says "camera", "stream", "video", or provides a file path:- Always use
nvurisrcbin-- it handles RTSP, HTTP, and local files (file://) transparently - Only use
filesrc+qtdemux+ parser when the user explicitly needs raw file source control - For RTSP/live sources, also set
live-source=1onnvstreammuxandsync=0on the sink - Convert local paths to URI:
"file://" + os.path.abspath(path)
- Always use
-
Metadata Iteration: Use
.frame_itemsand.object_items(returns iterators, NOT lists)- NEVER use
len()on these - iterate to count - Iterator can only be consumed once
- NEVER use
-
Request Pad Syntax: Use
"sink_%u"template, NEVER literal pad namespipeline.link(("decoder", "mux"), ("", "sink_%u")) # CORRECT # pipeline.link(("decoder", "mux"), ("", "sink_0")) # WRONG - will fail -
Platform Detection for Sinks:
import platform sink_type = "nv3dsink" if platform.processor() == "aarch64" else "nveglglessink" -
Buffer Cloning: Always clone buffers for async processing
tensor = buffer.extract(0).clone() # CRITICAL -
Queue Types:
queue.Queue→ Use withthreading.Threadmultiprocessing.Queue→ Use withmultiprocessing.Process- Using wrong type causes silent data loss!
-
nvinfer Config Format:
- YAML: Use
property:section (NOTmodel:),key: valuewith space after colon - INI: Use
[property]section,key=valuewith equals sign - Section MUST be named
property
- YAML: Use
-
nvmsgbroker is a SINK: Cannot have downstream elements - use
teeto split pipeline -
ALL Sinks Need async=0 for Tee Splits or Dynamic Sources: CRITICAL for state transitions
# When using tee splits OR dynamic sources, ALL sinks MUST have async=0 pipeline.add("nveglglessink", "sink", { "sync": 0, "qos": 0, "async": 0 # CRITICAL - prevents state transition deadlock })Symptom if missing: Pipeline stays in PAUSED state, no video displays.
-
Built-in Probe Attachment:
measure_fps_probecan only be attached to processing elements (e.g.,nvinfer,nvosdbin), NOT to sink elements. Attaching to a sink raisesRuntimeError: Probe failure. -
Dynamic ONNX Models Require
infer-dims: When the ONNX model has dynamic input shapes (e.g., exported withdynamic=Truein Ultralytics YOLO, or with dynamic batch/height/width axes), you MUST addinfer-dims=C;H;Wto the nvinfer config. Without it, TensorRT sees-1for dynamic dimensions and fails withsetDimensions: Error Code 3. Common values:- YOLO models (640 input):
infer-dims=3;640;640 - Models with 416 input:
infer-dims=3;416;416 - Models with 1280 input:
infer-dims=3;1280;1280
- YOLO models (640 input):
-
Ultralytics YOLO Output Format Depends on Model Generation — newer models (v10+/v26+) output post-NMS results; older models (v8/v11) output raw pre-NMS tensors. The custom parser and
cluster-modemust match the actual output:
| Model generation | Output tensor shape | Fields | cluster-mode |
|---|---|---|---|
| v8 / v11 | [batch, 84, 8400] | [features(4+80), anchors] — raw cx/cy/w/h + class scores, no NMS | 2 (NMS) |
| v10 / v26+ | [batch, 300, 6] | [max_det, (x1,y1,x2,y2,conf,cls)] — already post-NMS, pixel coords | 4 (none) |
How to identify at runtime: log inferDims.d[0] and inferDims.d[1] inside the custom parser.
d={84, 8400}→ pre-NMS (v8/v11 style)d={300, 6}→ post-NMS (v10/v26+ style)
Symptom of mismatch: If cluster-mode: 2 is used with a post-NMS [N, 6] output, bounding boxes appear shifted by 45° or 135° from the actual objects (DeepStream's NMS incorrectly re-processes already-final coordinates).
If you see tilted or rotated boxes, also check the OBB / rotation_angle note in references/nvinfer_config.md: for non-OBB models, value-initialize NvDsInferObjectDetectionInfo with obj{} and keep rotation_angle = 0; plain NvDsInferObjectDetectionInfo obj; leaves fields uninitialized.
- Virtual Environment Must Include pyservicemaker:
pyservicemakeris installed system-wide but is NOT accessible from a standard Python virtual environment. When a task requires a venv (e.g., for model download/conversion pip dependencies), always installpyservicemakerandpyyamlinside the venv. The venv setup in generated code and README must always include:
Symptom if missing:python3 -m venv venv source venv/bin/activate pip install /opt/nvidia/deepstream/deepstream/service-maker/python/pyservicemaker*.whl pyyaml pip install -r requirements.txt # other dependenciesModuleNotFoundError: No module named 'pyservicemaker'when running the app inside the venv.
Key Paths (DeepStream 9.0)
- Models:
/opt/nvidia/deepstream/deepstream/samples/models/ - Primary Detector:
/opt/nvidia/deepstream/deepstream/samples/models/Primary_Detector/resnet18_trafficcamnet_pruned.onnx - Tracker lib:
/opt/nvidia/deepstream/deepstream/lib/libnvds_nvmultiobjecttracker.so - Kafka lib:
/opt/nvidia/deepstream/deepstream/lib/libnvds_kafka_proto.so - Sample configs:
/opt/nvidia/deepstream/deepstream/samples/configs/deepstream-app/
Reference Documents
IMPORTANT: Always read these documents for complete details. Do NOT generate code from memory.
| Document | Use When |
|---|---|
| references/gstreamer_plugins.md | Looking up plugin properties, ALL properties listed |
| references/service_maker_api.md | Using Pipeline/Flow API, metadata access, probes, EventMessageUserMetadata |
| references/use_cases_pipelines.md | Building pipelines: simple playback, multi-inference, cascaded GIE |
| references/kafka_messaging.md | Kafka/message broker setup, nvmsgconv/nvmsgbroker config, msg2p-newapi |
| references/best_practices.md | Design patterns, common pitfalls, anti-patterns |
| references/buffer_apis.md | BufferProvider/Feeder (injection), BufferRetriever/Receiver (extraction) |
| references/media_extractor_advanced.md | MediaExtractor, MediaChunk, FrameSampler |
| references/utilities_config.md | PerfMonitor, EngineFileMonitor, SourceConfig, SensorInfo, SmartRecordConfig |
| references/nvinfer_config.md | nvinfer config file format, ALL parameters |
| references/tracker_config.md | nvtracker config, NvDCF/IOU/DeepSORT/NvSORT |
| references/troubleshooting.md | Error messages and solutions |
| references/rest_api_dynamic.md | REST API, dynamic source add/remove, nvmultiurisrcbin |
| references/metamux_config.md | nvdsmetamux config, parallel multi-model inference, metadata merging, source ID filtering |
| references/docker_containers.md | Docker images, Dockerfile examples, pyservicemaker install, container run commands |
Quick Error Reference
| Error | Solution |
|---|---|
iterator has no len() | Iterate to count, don't use len() |
pad template not found | Use "sink_%u" not "sink_0" |
| Queue data loss | Use multiprocessing.Queue with Process |
| Config parse failed | Use property: not model: in YAML |
is-classifier deprecation warning | Use network-type: 1 instead of is-classifier: 1 for classifiers; omit both for detectors |
min-boxes unknown key warning | Use minBoxes (camelCase) in class-attrs-* sections, not min-boxes |
| Secondary GIE inactive | Set process-mode: 2, check operate-on-gie-id |
| Tee/dynamic source stuck PAUSED | Set async: 0 on ALL sink elements |
| RTSP no data/reconnecting | Test URL with ffplay, check credentials |
RuntimeError: Probe failure | measure_fps_probe cannot attach to sink elements; use nvinfer or nvosdbin instead |
setDimensions negative dims / engine build failed | Add infer-dims=C;H;W for dynamic ONNX models (e.g., infer-dims=3;640;640) |
No module named 'pyservicemaker' in venv | pip install /opt/nvidia/deepstream/deepstream/service-maker/python/pyservicemaker*.whl pyyaml inside the venv |
AttributeError: object has no attribute 'obj_label' | Use obj_meta.label not obj_meta.obj_label in pyservicemaker (C API name differs from Python binding) |
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