Roboflow Dataset Upload¶
v2¶
Class: RoboflowDatasetUploadBlockV2 (there are multiple versions of this block)
Source: inference.core.workflows.core_steps.sinks.roboflow.dataset_upload.v2.RoboflowDatasetUploadBlockV2
Warning: This block has multiple versions. Please refer to the specific version for details. You can learn more about how versions work here: Versioning
Upload images and model predictions to a Roboflow dataset for active learning, model improvement, and data collection, with configurable usage quotas, probabilistic sampling, batch organization, image compression, and optional annotation persistence.
How This Block Works¶
This block uploads workflow images and predictions to your Roboflow dataset for storage, labeling, and model training. The block:
- Takes images and optional model predictions (object detection, instance segmentation, keypoint detection, or classification) as input
- Validates the Roboflow API key is available (required for uploading)
- Applies probabilistic sampling based on
data_percentagesetting, randomly selecting a percentage of inputs to upload (e.g., 50% uploads half the data, 100% uploads everything) - Checks usage quotas (minutely, hourly, daily limits) to ensure uploads stay within configured rate limits for active learning strategies
- Prepares images by resizing if they exceed maximum size (maintaining aspect ratio) and compressing to specified quality level
- Generates labeling batch names based on the prefix and batch creation frequency (never, daily, weekly, or monthly), organizing uploaded data into batches
- Optionally persists model predictions as annotations if
persist_predictionsis enabled, allowing predictions to serve as pre-labels for review and correction - Attaches registration tags to images for organization and filtering in the Roboflow platform
- Registers the image (and annotations if enabled) to the specified Roboflow project via the Roboflow API
- Executes synchronously or asynchronously based on
fire_and_forgetsetting, allowing non-blocking uploads for faster workflow execution - Returns error status and messages indicating upload success, failure, or sampling skip
The block supports active learning workflows by implementing usage quotas that prevent excessive data collection, helping focus on collecting valuable training data within rate limits. The probabilistic sampling feature (new in v2) allows you to randomly sample a percentage of data for upload, enabling cost-effective data collection strategies where you want to collect representative samples rather than all data. Images are organized into labeling batches that can be automatically recreated on a schedule (daily, weekly, monthly), making it easier to manage and review collected data over time. The block can operate in fire-and-forget mode for asynchronous execution, allowing workflows to continue processing without waiting for uploads to complete, or synchronously for debugging and error handling.
Version Differences (v2 vs v1)¶
New Features in v2:
-
Probabilistic Data Sampling: Added
data_percentageparameter (0-100%) that enables random sampling of data for upload. This allows you to upload only a percentage of workflow inputs (e.g., 25% samples one in four images), reducing storage and annotation costs while still collecting representative data. When sampling skips an upload, the block returns a message indicating the skip. -
Improved Default Settings:
max_image_sizedefault increased from (512, 512) to (1920, 1080) for higher resolution data collectioncompression_leveldefault increased from 75 to 95 for better image quality preservation
Behavior Changes:
- By default,
data_percentageis set to 100, so v2 behaves identically to v1 unless sampling is explicitly configured - The block now uses probabilistic sampling before quota checking and image preparation, allowing efficient filtering before resource-intensive operations
Requirements¶
API Key Required: This block requires a valid Roboflow API key to upload data. The API key must be configured in your environment or workflow configuration. Visit https://docs.roboflow.com/api-reference/authentication#retrieve-an-api-key to learn how to retrieve an API key.
Common Use Cases¶
- Active Learning Data Collection: Collect images and predictions from production environments where models struggle or are uncertain (e.g., low-confidence detections, edge cases), enabling iterative model improvement by gathering challenging examples for retraining
- Probabilistic Data Sampling: Use
data_percentageto randomly sample a subset of data for upload (e.g., upload 20% of all detections, 50% of low-confidence cases), enabling cost-effective data collection strategies that reduce storage and annotation overhead while maintaining dataset diversity - Production Data Logging: Continuously upload production inference data to Roboflow datasets for monitoring, analysis, and future model training, creating a growing dataset from real-world deployments
- Pre-Labeled Data Collection: Upload images with model predictions as pre-labels (when
persist_predictionsis enabled), accelerating annotation workflows by providing initial labels that can be reviewed and corrected rather than starting from scratch - Stratified Data Sampling: Combine probabilistic sampling with rate limiting and quotas to selectively collect data based on specific criteria (e.g., sample 30% of detections that pass filters), ensuring diverse and balanced dataset collection without overwhelming storage or annotation resources
- Batch-Based Labeling Workflows: Organize uploaded data into batches with automatic recreation schedules (daily, weekly, monthly), making it easier to manage labeling tasks, track progress, and organize data collection efforts over time
Connecting to Other Blocks¶
This block receives data from workflow steps and uploads it to Roboflow:
- After detection or analysis blocks (e.g., Object Detection Model, Instance Segmentation Model, Classification Model, Keypoint Detection Model) to upload images along with their predictions, enabling active learning by collecting inference data with model outputs for annotation and retraining
- After filtering or analytics blocks (e.g., Detections Filter, Continue If, Overlap Filter) to selectively upload only specific types of data (e.g., low-confidence detections, overlapping objects, specific classes), focusing data collection on valuable edge cases or interesting scenarios
- After rate limiter blocks (e.g., Rate Limiter) to throttle upload frequency and stay within usage quotas, ensuring controlled data collection that respects rate limits and prevents excessive storage usage
- Image inputs or preprocessing blocks to upload raw images or processed images (e.g., crops, transformed images) without predictions, enabling collection of image data for future labeling or analysis
- Conditional workflows using flow control blocks (e.g., Continue If) to upload data only when certain conditions are met (e.g., upload only when detection count exceeds threshold, upload only errors or failures), enabling selective data collection based on workflow state
- Batch processing workflows where multiple images or predictions are generated, allowing bulk upload of workflow outputs to Roboflow datasets with probabilistic sampling for organized and cost-effective data collection
Type identifier¶
Use the following identifier in step "type" field: roboflow_core/roboflow_dataset_upload@v2to add the block as
as step in your workflow.
Properties¶
| Name | Type | Description | Refs |
|---|---|---|---|
name |
str |
Enter a unique identifier for this step.. | ❌ |
target_project |
str |
Roboflow project identifier where uploaded images and annotations will be saved. Must be a valid project in your Roboflow workspace. The project name can be specified directly or referenced from workflow inputs.. | ✅ |
data_percentage |
float |
Percentage of input data (0.0 to 100.0) to randomly sample for upload. This enables probabilistic data collection where only a subset of inputs are uploaded, reducing storage and annotation costs. For example, 25.0 uploads approximately 25% of images (one in four on average), 50.0 uploads half, and 100.0 uploads everything (no sampling). Random sampling occurs before quota checking and image processing, making it efficient for large-scale data collection workflows.. | ✅ |
minutely_usage_limit |
int |
Maximum number of image uploads allowed per minute for this quota. Part of the usage quota system that enforces rate limits for active learning data collection. Uploads exceeding this limit are skipped to prevent excessive data collection. Works together with hourly_usage_limit and daily_usage_limit to provide multi-level rate limiting. Note: This quota is checked after probabilistic sampling via data_percentage.. | ❌ |
hourly_usage_limit |
int |
Maximum number of image uploads allowed per hour for this quota. Part of the usage quota system that enforces rate limits for active learning data collection. Uploads exceeding this limit are skipped to prevent excessive data collection. Works together with minutely_usage_limit and daily_usage_limit to provide multi-level rate limiting. Note: This quota is checked after probabilistic sampling via data_percentage.. | ❌ |
daily_usage_limit |
int |
Maximum number of image uploads allowed per day for this quota. Part of the usage quota system that enforces rate limits for active learning data collection. Uploads exceeding this limit are skipped to prevent excessive data collection. Works together with minutely_usage_limit and hourly_usage_limit to provide multi-level rate limiting. Note: This quota is checked after probabilistic sampling via data_percentage.. | ❌ |
usage_quota_name |
str |
Unique identifier for tracking usage quotas (minutely, hourly, daily limits). Used internally to manage rate limiting across multiple upload operations. Each unique quota name maintains separate counters, allowing different upload strategies or data collection workflows to have independent rate limits.. | ❌ |
max_image_size |
Tuple[int, int] |
Maximum dimensions (width, height) for uploaded images. Images exceeding these dimensions are automatically resized while preserving aspect ratio before uploading. Default is (1920, 1080) for higher resolution data collection. Use smaller sizes (e.g., (512, 512)) for efficient storage and faster uploads, or keep the default for preserving image quality.. | ❌ |
compression_level |
int |
JPEG compression quality level for uploaded images, ranging from 1 (highest compression, smallest file size, lower quality) to 100 (no compression, largest file size, highest quality). Default is 95 for better image quality preservation. Higher values preserve more image quality but increase storage and bandwidth usage. Typical values range from 70-95 for balanced quality and size.. | ❌ |
registration_tags |
List[str] |
List of tags to attach to uploaded images for organization and filtering in Roboflow. Tags can be static strings (e.g., 'location-florida', 'camera-1') or dynamic values from workflow inputs. Tags help organize collected data, filter images in Roboflow, and add metadata for dataset management. Can be an empty list if no tags are needed.. | ✅ |
persist_predictions |
bool |
If True, model predictions are saved as annotations (pre-labels) in the Roboflow dataset alongside images. This enables predictions to serve as starting points for annotation, allowing reviewers to correct or approve labels rather than creating them from scratch. If False, only images are uploaded without annotations. Enabling this accelerates annotation workflows by providing initial labels.. | ✅ |
disable_sink |
bool |
If True, the block execution is disabled and no uploads occur. This allows temporarily disabling data collection without removing the block from workflows, useful for testing, debugging, or conditional data collection. When disabled, returns a message indicating the sink was disabled. Default is False (uploads enabled).. | ✅ |
fire_and_forget |
bool |
If True, uploads execute asynchronously (fire-and-forget mode), allowing the workflow to continue immediately without waiting for upload completion. This improves workflow performance but prevents error handling. If False, uploads execute synchronously, blocking workflow execution until completion and allowing proper error handling and status reporting. Use async mode (True) for production workflows where speed is prioritized, and sync mode (False) for debugging or when error handling is critical.. | ✅ |
labeling_batch_prefix |
str |
Prefix used to generate labeling batch names for organizing uploaded images in Roboflow. Combined with the batch recreation frequency and timestamps to create batch names like 'workflows_data_collector_2024_01_15'. Batches help organize collected data for labeling, making it easier to manage and review uploaded images in groups. Can be customized to match your organization scheme.. | ✅ |
labeling_batches_recreation_frequency |
str |
Frequency at which new labeling batches are automatically created for uploaded images. Options: 'never' (all images go to the same batch), 'daily' (new batch each day), 'weekly' (new batch each week), 'monthly' (new batch each month). Batch timestamps are appended to the labeling_batch_prefix to create unique batch names. Automatically organizing uploads into time-based batches simplifies dataset management and makes it easier to track and review collected data over time.. | ❌ |
image_name |
str |
Optional custom name for the uploaded image. This is useful when you want to preserve the original filename or use a meaningful identifier (e.g., serial number, timestamp) for the image in the Roboflow dataset. The name should not include file extension. If not provided, a UUID will be generated automatically.. | ✅ |
The Refs column marks possibility to parametrise the property with dynamic values available
in workflow runtime. See Bindings for more info.
Available Connections¶
Compatible Blocks
Check what blocks you can connect to Roboflow Dataset Upload in version v2.
- inputs:
Florence-2 Model,Detections Combine,Trace Visualization,Roboflow Dataset Upload,Classification Label Visualization,Single-Label Classification Model,Line Counter,Clip Comparison,Ellipse Visualization,Detections Stabilizer,Triangle Visualization,Morphological Transformation,Path Deviation,LMM,Dimension Collapse,Local File Sink,VLM As Classifier,Icon Visualization,QR Code Generator,Stability AI Outpainting,OpenAI,Moondream2,Keypoint Detection Model,Florence-2 Model,Pixelate Visualization,Object Detection Model,Gaze Detection,Cosine Similarity,Background Color Visualization,Clip Comparison,Background Subtraction,Time in Zone,Keypoint Detection Model,Keypoint Visualization,Overlap Filter,EasyOCR,Image Blur,Polygon Visualization,Anthropic Claude,SIFT,Webhook Sink,Object Detection Model,YOLO-World Model,Heatmap Visualization,Image Threshold,Multi-Label Classification Model,Google Gemini,Text Display,Detection Event Log,OpenAI,Instance Segmentation Model,Single-Label Classification Model,Anthropic Claude,Time in Zone,CSV Formatter,Path Deviation,Detections Consensus,Stability AI Inpainting,Roboflow Custom Metadata,Polygon Visualization,CogVLM,Velocity,Bounding Box Visualization,Llama 3.2 Vision,Camera Focus,Identify Outliers,Email Notification,Dynamic Crop,Time in Zone,Image Contours,LMM For Classification,Buffer,Seg Preview,Segment Anything 2 Model,Stitch Images,Bounding Rectangle,Image Slicer,Byte Tracker,SAM 3,Crop Visualization,Grid Visualization,Roboflow Dataset Upload,Reference Path Visualization,Multi-Label Classification Model,Google Gemini,Stitch OCR Detections,Twilio SMS/MMS Notification,Image Slicer,Detections Classes Replacement,Detection Offset,Detections Transformation,Google Vision OCR,Camera Focus,Model Comparison Visualization,Template Matching,Model Monitoring Inference Aggregator,Image Preprocessing,Twilio SMS Notification,Color Visualization,Polygon Zone Visualization,OpenAI,Halo Visualization,Instance Segmentation Model,Contrast Equalization,Mask Area Measurement,Google Gemini,Perspective Correction,Circle Visualization,Blur Visualization,Dot Visualization,Camera Calibration,Relative Static Crop,Email Notification,Depth Estimation,VLM As Detector,Mask Visualization,Stability AI Image Generation,Dynamic Zone,Detections Filter,Byte Tracker,Size Measurement,Halo Visualization,Absolute Static Crop,Detections Stitch,OCR Model,Label Visualization,Detections Merge,Motion Detection,Anthropic Claude,Corner Visualization,Image Convert Grayscale,Stitch OCR Detections,SIFT Comparison,SIFT Comparison,Detections List Roll-Up,SAM 3,VLM As Detector,Line Counter Visualization,SAM 3,VLM As Classifier,JSON Parser,PTZ Tracking (ONVIF),Slack Notification,Identify Changes,Byte Tracker,OpenAI - outputs:
Florence-2 Model,Trace Visualization,Roboflow Dataset Upload,Classification Label Visualization,Single-Label Classification Model,Line Counter,Ellipse Visualization,Triangle Visualization,Morphological Transformation,Path Deviation,LMM,Local File Sink,Icon Visualization,QR Code Generator,Stability AI Outpainting,OpenAI,Keypoint Detection Model,Moondream2,Florence-2 Model,Pixelate Visualization,Object Detection Model,Gaze Detection,Background Color Visualization,Clip Comparison,Time in Zone,Keypoint Detection Model,Keypoint Visualization,Perception Encoder Embedding Model,Image Blur,Polygon Visualization,Anthropic Claude,Webhook Sink,Object Detection Model,Cache Get,YOLO-World Model,Multi-Label Classification Model,Heatmap Visualization,Image Threshold,Google Gemini,Text Display,OpenAI,Instance Segmentation Model,Single-Label Classification Model,Anthropic Claude,Time in Zone,Path Deviation,Detections Consensus,Stability AI Inpainting,Roboflow Custom Metadata,Polygon Visualization,CogVLM,Bounding Box Visualization,CLIP Embedding Model,Llama 3.2 Vision,Email Notification,Dynamic Crop,Time in Zone,LMM For Classification,Seg Preview,Segment Anything 2 Model,Line Counter,SAM 3,Distance Measurement,Crop Visualization,Roboflow Dataset Upload,Reference Path Visualization,Google Gemini,Twilio SMS/MMS Notification,Multi-Label Classification Model,Stitch OCR Detections,Detections Classes Replacement,Google Vision OCR,Pixel Color Count,Template Matching,Model Comparison Visualization,Image Preprocessing,Twilio SMS Notification,Color Visualization,Polygon Zone Visualization,OpenAI,Halo Visualization,Instance Segmentation Model,Contrast Equalization,Google Gemini,Perspective Correction,Circle Visualization,Blur Visualization,Dot Visualization,Camera Calibration,Email Notification,Depth Estimation,Mask Visualization,Dynamic Zone,Stability AI Image Generation,Size Measurement,Halo Visualization,Detections Stitch,Label Visualization,Motion Detection,Anthropic Claude,Corner Visualization,Stitch OCR Detections,Cache Set,SIFT Comparison,SAM 3,Line Counter Visualization,SAM 3,PTZ Tracking (ONVIF),Slack Notification,Model Monitoring Inference Aggregator,OpenAI
Input and Output Bindings¶
The available connections depend on its binding kinds. Check what binding kinds
Roboflow Dataset Upload in version v2 has.
Bindings
-
input
images(image): Image(s) to upload to the Roboflow dataset. Can be a single image or batch of images from workflow inputs or processing steps. Images are randomly sampled based on data_percentage, resized if they exceed max_image_size, and compressed before uploading. Supports batch processing..target_project(roboflow_project): Roboflow project identifier where uploaded images and annotations will be saved. Must be a valid project in your Roboflow workspace. The project name can be specified directly or referenced from workflow inputs..predictions(Union[classification_prediction,keypoint_detection_prediction,instance_segmentation_prediction,object_detection_prediction]): Optional model predictions to upload alongside images. Predictions are saved as annotations (pre-labels) in the Roboflow dataset when persist_predictions is enabled, allowing predictions to serve as starting points for annotation review and correction. Supports object detection, instance segmentation, keypoint detection, and classification predictions. If None, only images are uploaded..data_percentage(float): Percentage of input data (0.0 to 100.0) to randomly sample for upload. This enables probabilistic data collection where only a subset of inputs are uploaded, reducing storage and annotation costs. For example, 25.0 uploads approximately 25% of images (one in four on average), 50.0 uploads half, and 100.0 uploads everything (no sampling). Random sampling occurs before quota checking and image processing, making it efficient for large-scale data collection workflows..registration_tags(Union[list_of_values,string]): List of tags to attach to uploaded images for organization and filtering in Roboflow. Tags can be static strings (e.g., 'location-florida', 'camera-1') or dynamic values from workflow inputs. Tags help organize collected data, filter images in Roboflow, and add metadata for dataset management. Can be an empty list if no tags are needed..persist_predictions(boolean): If True, model predictions are saved as annotations (pre-labels) in the Roboflow dataset alongside images. This enables predictions to serve as starting points for annotation, allowing reviewers to correct or approve labels rather than creating them from scratch. If False, only images are uploaded without annotations. Enabling this accelerates annotation workflows by providing initial labels..disable_sink(boolean): If True, the block execution is disabled and no uploads occur. This allows temporarily disabling data collection without removing the block from workflows, useful for testing, debugging, or conditional data collection. When disabled, returns a message indicating the sink was disabled. Default is False (uploads enabled)..fire_and_forget(boolean): If True, uploads execute asynchronously (fire-and-forget mode), allowing the workflow to continue immediately without waiting for upload completion. This improves workflow performance but prevents error handling. If False, uploads execute synchronously, blocking workflow execution until completion and allowing proper error handling and status reporting. Use async mode (True) for production workflows where speed is prioritized, and sync mode (False) for debugging or when error handling is critical..labeling_batch_prefix(string): Prefix used to generate labeling batch names for organizing uploaded images in Roboflow. Combined with the batch recreation frequency and timestamps to create batch names like 'workflows_data_collector_2024_01_15'. Batches help organize collected data for labeling, making it easier to manage and review uploaded images in groups. Can be customized to match your organization scheme..image_name(string): Optional custom name for the uploaded image. This is useful when you want to preserve the original filename or use a meaningful identifier (e.g., serial number, timestamp) for the image in the Roboflow dataset. The name should not include file extension. If not provided, a UUID will be generated automatically..
-
output
Example JSON definition of step Roboflow Dataset Upload in version v2
{
"name": "<your_step_name_here>",
"type": "roboflow_core/roboflow_dataset_upload@v2",
"images": "$inputs.image",
"target_project": "my_dataset",
"predictions": "$steps.object_detection_model.predictions",
"data_percentage": 100,
"minutely_usage_limit": 10,
"hourly_usage_limit": 10,
"daily_usage_limit": 10,
"usage_quota_name": "quota-for-data-sampling-1",
"max_image_size": [
1920,
1080
],
"compression_level": 95,
"registration_tags": [
"location-florida",
"factory-name",
"$inputs.dynamic_tag"
],
"persist_predictions": true,
"disable_sink": true,
"fire_and_forget": "<block_does_not_provide_example>",
"labeling_batch_prefix": "my_labeling_batch_name",
"labeling_batches_recreation_frequency": "never",
"image_name": "serial_12345"
}
v1¶
Class: RoboflowDatasetUploadBlockV1 (there are multiple versions of this block)
Source: inference.core.workflows.core_steps.sinks.roboflow.dataset_upload.v1.RoboflowDatasetUploadBlockV1
Warning: This block has multiple versions. Please refer to the specific version for details. You can learn more about how versions work here: Versioning
Upload images and model predictions to a Roboflow dataset for active learning, model improvement, and data collection, with configurable usage quotas, batch organization, image compression, and optional annotation persistence.
How This Block Works¶
This block uploads workflow images and predictions to your Roboflow dataset for storage, labeling, and model training. The block:
- Takes images and optional model predictions (object detection, instance segmentation, keypoint detection, or classification) as input
- Validates the Roboflow API key is available (required for uploading)
- Checks usage quotas (minutely, hourly, daily limits) to ensure uploads stay within configured rate limits for active learning strategies
- Prepares images by resizing if they exceed maximum size (maintaining aspect ratio) and compressing to specified quality level
- Generates labeling batch names based on the prefix and batch creation frequency (never, daily, weekly, or monthly), organizing uploaded data into batches
- Optionally persists model predictions as annotations if
persist_predictionsis enabled, allowing predictions to serve as pre-labels for review and correction - Attaches registration tags to images for organization and filtering in the Roboflow platform
- Registers the image (and annotations if enabled) to the specified Roboflow project via the Roboflow API
- Executes synchronously or asynchronously based on
fire_and_forgetsetting, allowing non-blocking uploads for faster workflow execution - Returns error status and messages indicating upload success or failure
The block supports active learning workflows by implementing usage quotas that prevent excessive data collection, helping focus on collecting valuable training data within rate limits. Images are organized into labeling batches that can be automatically recreated on a schedule (daily, weekly, monthly), making it easier to manage and review collected data over time. The block can operate in fire-and-forget mode for asynchronous execution, allowing workflows to continue processing without waiting for uploads to complete, or synchronously for debugging and error handling.
Requirements¶
API Key Required: This block requires a valid Roboflow API key to upload data. The API key must be configured in your environment or workflow configuration. Visit https://docs.roboflow.com/api-reference/authentication#retrieve-an-api-key to learn how to retrieve an API key.
Common Use Cases¶
- Active Learning Data Collection: Collect images and predictions from production environments where models struggle or are uncertain (e.g., low-confidence detections, edge cases), enabling iterative model improvement by gathering challenging examples for retraining
- Production Data Logging: Continuously upload production inference data to Roboflow datasets for monitoring, analysis, and future model training, creating a growing dataset from real-world deployments
- Pre-Labeled Data Collection: Upload images with model predictions as pre-labels (when
persist_predictionsis enabled), accelerating annotation workflows by providing initial labels that can be reviewed and corrected rather than starting from scratch - Stratified Data Sampling: Use rate limiting and quotas to selectively collect data based on specific criteria (e.g., combine with Rate Limiter or Continue If blocks), ensuring diverse and balanced dataset collection without overwhelming storage or annotation resources
- Batch-Based Labeling Workflows: Organize uploaded data into batches with automatic recreation schedules (daily, weekly, monthly), making it easier to manage labeling tasks, track progress, and organize data collection efforts over time
- Tagged Data Organization: Attach metadata tags to uploaded images (e.g., location, camera ID, time period, model version), enabling filtering and organization of collected data in Roboflow for better dataset management and analysis
Connecting to Other Blocks¶
This block receives data from workflow steps and uploads it to Roboflow:
- After detection or analysis blocks (e.g., Object Detection Model, Instance Segmentation Model, Classification Model, Keypoint Detection Model) to upload images along with their predictions, enabling active learning by collecting inference data with model outputs for annotation and retraining
- After filtering or analytics blocks (e.g., Detections Filter, Continue If, Overlap Filter) to selectively upload only specific types of data (e.g., low-confidence detections, overlapping objects, specific classes), focusing data collection on valuable edge cases or interesting scenarios
- After rate limiter blocks (e.g., Rate Limiter) to throttle upload frequency and stay within usage quotas, ensuring controlled data collection that respects rate limits and prevents excessive storage usage
- Image inputs or preprocessing blocks to upload raw images or processed images (e.g., crops, transformed images) without predictions, enabling collection of image data for future labeling or analysis
- Conditional workflows using flow control blocks (e.g., Continue If) to upload data only when certain conditions are met (e.g., upload only when detection count exceeds threshold, upload only errors or failures), enabling selective data collection based on workflow state
- Batch processing workflows where multiple images or predictions are generated, allowing bulk upload of workflow outputs to Roboflow datasets for organized data collection and management
Type identifier¶
Use the following identifier in step "type" field: roboflow_core/roboflow_dataset_upload@v1to add the block as
as step in your workflow.
Properties¶
| Name | Type | Description | Refs |
|---|---|---|---|
name |
str |
Enter a unique identifier for this step.. | ❌ |
target_project |
str |
Roboflow project identifier where uploaded images and annotations will be saved. Must be a valid project in your Roboflow workspace. The project name can be specified directly or referenced from workflow inputs.. | ✅ |
minutely_usage_limit |
int |
Maximum number of image uploads allowed per minute for this quota. Part of the usage quota system that enforces rate limits for active learning data collection. Uploads exceeding this limit are skipped to prevent excessive data collection. Works together with hourly_usage_limit and daily_usage_limit to provide multi-level rate limiting.. | ❌ |
hourly_usage_limit |
int |
Maximum number of image uploads allowed per hour for this quota. Part of the usage quota system that enforces rate limits for active learning data collection. Uploads exceeding this limit are skipped to prevent excessive data collection. Works together with minutely_usage_limit and daily_usage_limit to provide multi-level rate limiting.. | ❌ |
daily_usage_limit |
int |
Maximum number of image uploads allowed per day for this quota. Part of the usage quota system that enforces rate limits for active learning data collection. Uploads exceeding this limit are skipped to prevent excessive data collection. Works together with minutely_usage_limit and hourly_usage_limit to provide multi-level rate limiting.. | ❌ |
usage_quota_name |
str |
Unique identifier for tracking usage quotas (minutely, hourly, daily limits). Used internally to manage rate limiting across multiple upload operations. Each unique quota name maintains separate counters, allowing different upload strategies or data collection workflows to have independent rate limits.. | ❌ |
max_image_size |
Tuple[int, int] |
Maximum dimensions (width, height) for uploaded images. Images exceeding these dimensions are automatically resized while preserving aspect ratio before uploading. Smaller sizes reduce storage and bandwidth but may lose image quality. Use larger sizes (e.g., (1920, 1080)) for high-resolution data collection, or smaller sizes (e.g., (512, 512)) for efficient storage and faster uploads.. | ❌ |
compression_level |
int |
JPEG compression quality level for uploaded images, ranging from 1 (highest compression, smallest file size, lower quality) to 100 (no compression, largest file size, highest quality). Higher values preserve more image quality but increase storage and bandwidth usage. Typical values range from 70-90 for balanced quality and size. Default of 75 provides good quality with reasonable file sizes.. | ❌ |
registration_tags |
List[str] |
List of tags to attach to uploaded images for organization and filtering in Roboflow. Tags can be static strings (e.g., 'location-florida', 'camera-1') or dynamic values from workflow inputs. Tags help organize collected data, filter images in Roboflow, and add metadata for dataset management. Can be an empty list if no tags are needed.. | ✅ |
persist_predictions |
bool |
If True, model predictions are saved as annotations (pre-labels) in the Roboflow dataset alongside images. This enables predictions to serve as starting points for annotation, allowing reviewers to correct or approve labels rather than creating them from scratch. If False, only images are uploaded without annotations. Enabling this accelerates annotation workflows by providing initial labels.. | ❌ |
disable_sink |
bool |
If True, the block execution is disabled and no uploads occur. This allows temporarily disabling data collection without removing the block from workflows, useful for testing, debugging, or conditional data collection. When disabled, returns a message indicating the sink was disabled. Default is False (uploads enabled).. | ✅ |
fire_and_forget |
bool |
If True, uploads execute asynchronously (fire-and-forget mode), allowing the workflow to continue immediately without waiting for upload completion. This improves workflow performance but prevents error handling. If False, uploads execute synchronously, blocking workflow execution until completion and allowing proper error handling and status reporting. Use async mode (True) for production workflows where speed is prioritized, and sync mode (False) for debugging or when error handling is critical.. | ✅ |
labeling_batch_prefix |
str |
Prefix used to generate labeling batch names for organizing uploaded images in Roboflow. Combined with the batch recreation frequency and timestamps to create batch names like 'workflows_data_collector_2024_01_15'. Batches help organize collected data for labeling, making it easier to manage and review uploaded images in groups. Can be customized to match your organization scheme.. | ✅ |
labeling_batches_recreation_frequency |
str |
Frequency at which new labeling batches are automatically created for uploaded images. Options: 'never' (all images go to the same batch), 'daily' (new batch each day), 'weekly' (new batch each week), 'monthly' (new batch each month). Batch timestamps are appended to the labeling_batch_prefix to create unique batch names. Automatically organizing uploads into time-based batches simplifies dataset management and makes it easier to track and review collected data over time.. | ❌ |
image_name |
str |
Optional custom name for the uploaded image. If provided, this name will be used instead of an auto-generated UUID. This is useful when you want to preserve the original filename or use a meaningful identifier (e.g., serial number, timestamp) for the image in the Roboflow dataset. The name should not include file extension. If not provided, a UUID will be generated automatically.. | ✅ |
The Refs column marks possibility to parametrise the property with dynamic values available
in workflow runtime. See Bindings for more info.
Available Connections¶
Compatible Blocks
Check what blocks you can connect to Roboflow Dataset Upload in version v1.
- inputs:
Florence-2 Model,Detections Combine,Trace Visualization,Roboflow Dataset Upload,Classification Label Visualization,Single-Label Classification Model,Line Counter,Clip Comparison,Ellipse Visualization,Detections Stabilizer,Triangle Visualization,Morphological Transformation,Path Deviation,LMM,Dimension Collapse,Local File Sink,VLM As Classifier,Icon Visualization,QR Code Generator,Stability AI Outpainting,OpenAI,Moondream2,Keypoint Detection Model,Florence-2 Model,Pixelate Visualization,Object Detection Model,Gaze Detection,Background Color Visualization,Clip Comparison,Background Subtraction,Time in Zone,Keypoint Detection Model,Keypoint Visualization,Overlap Filter,EasyOCR,Image Blur,Polygon Visualization,Anthropic Claude,SIFT,Webhook Sink,Object Detection Model,YOLO-World Model,Heatmap Visualization,Image Threshold,Multi-Label Classification Model,Google Gemini,Text Display,Detection Event Log,OpenAI,Instance Segmentation Model,Single-Label Classification Model,Anthropic Claude,Time in Zone,CSV Formatter,Path Deviation,Detections Consensus,Stability AI Inpainting,Roboflow Custom Metadata,Polygon Visualization,CogVLM,Velocity,Bounding Box Visualization,Llama 3.2 Vision,Camera Focus,Identify Outliers,Email Notification,Dynamic Crop,Time in Zone,Image Contours,LMM For Classification,Buffer,Seg Preview,Segment Anything 2 Model,Stitch Images,Bounding Rectangle,Image Slicer,Byte Tracker,SAM 3,Crop Visualization,Grid Visualization,Roboflow Dataset Upload,Reference Path Visualization,Multi-Label Classification Model,Google Gemini,Stitch OCR Detections,Twilio SMS/MMS Notification,Image Slicer,Detections Classes Replacement,Detection Offset,Detections Transformation,Google Vision OCR,Camera Focus,Model Comparison Visualization,Template Matching,Model Monitoring Inference Aggregator,Image Preprocessing,Twilio SMS Notification,Color Visualization,Polygon Zone Visualization,OpenAI,Halo Visualization,Instance Segmentation Model,Contrast Equalization,Mask Area Measurement,Google Gemini,Perspective Correction,Circle Visualization,Blur Visualization,Dot Visualization,Camera Calibration,Relative Static Crop,Email Notification,Depth Estimation,VLM As Detector,Mask Visualization,Stability AI Image Generation,Dynamic Zone,Detections Filter,Byte Tracker,Size Measurement,Halo Visualization,Absolute Static Crop,Detections Stitch,OCR Model,Label Visualization,Detections Merge,Motion Detection,Anthropic Claude,Corner Visualization,Image Convert Grayscale,Stitch OCR Detections,SIFT Comparison,SIFT Comparison,Detections List Roll-Up,SAM 3,VLM As Detector,Line Counter Visualization,SAM 3,VLM As Classifier,JSON Parser,PTZ Tracking (ONVIF),Slack Notification,Identify Changes,Byte Tracker,OpenAI - outputs:
Florence-2 Model,Trace Visualization,Roboflow Dataset Upload,Classification Label Visualization,Single-Label Classification Model,Line Counter,Ellipse Visualization,Triangle Visualization,Morphological Transformation,Path Deviation,LMM,Local File Sink,Icon Visualization,QR Code Generator,Stability AI Outpainting,OpenAI,Keypoint Detection Model,Moondream2,Florence-2 Model,Pixelate Visualization,Object Detection Model,Gaze Detection,Background Color Visualization,Clip Comparison,Time in Zone,Keypoint Detection Model,Keypoint Visualization,Perception Encoder Embedding Model,Image Blur,Polygon Visualization,Anthropic Claude,Webhook Sink,Object Detection Model,Cache Get,YOLO-World Model,Multi-Label Classification Model,Heatmap Visualization,Image Threshold,Google Gemini,Text Display,OpenAI,Instance Segmentation Model,Single-Label Classification Model,Anthropic Claude,Time in Zone,Path Deviation,Detections Consensus,Stability AI Inpainting,Roboflow Custom Metadata,Polygon Visualization,CogVLM,Bounding Box Visualization,CLIP Embedding Model,Llama 3.2 Vision,Email Notification,Dynamic Crop,Time in Zone,LMM For Classification,Seg Preview,Segment Anything 2 Model,Line Counter,SAM 3,Distance Measurement,Crop Visualization,Roboflow Dataset Upload,Reference Path Visualization,Google Gemini,Twilio SMS/MMS Notification,Multi-Label Classification Model,Stitch OCR Detections,Detections Classes Replacement,Google Vision OCR,Pixel Color Count,Template Matching,Model Comparison Visualization,Image Preprocessing,Twilio SMS Notification,Color Visualization,Polygon Zone Visualization,OpenAI,Halo Visualization,Instance Segmentation Model,Contrast Equalization,Google Gemini,Perspective Correction,Circle Visualization,Blur Visualization,Dot Visualization,Camera Calibration,Email Notification,Depth Estimation,Mask Visualization,Dynamic Zone,Stability AI Image Generation,Size Measurement,Halo Visualization,Detections Stitch,Label Visualization,Motion Detection,Anthropic Claude,Corner Visualization,Stitch OCR Detections,Cache Set,SIFT Comparison,SAM 3,Line Counter Visualization,SAM 3,PTZ Tracking (ONVIF),Slack Notification,Model Monitoring Inference Aggregator,OpenAI
Input and Output Bindings¶
The available connections depend on its binding kinds. Check what binding kinds
Roboflow Dataset Upload in version v1 has.
Bindings
-
input
image(image): Image(s) to upload to the Roboflow dataset. Can be a single image or batch of images from workflow inputs or processing steps. Images are resized if they exceed max_image_size and compressed before uploading. Supports batch processing..predictions(Union[classification_prediction,keypoint_detection_prediction,instance_segmentation_prediction,object_detection_prediction]): Optional model predictions to upload alongside images. Predictions are saved as annotations (pre-labels) in the Roboflow dataset when persist_predictions is enabled, allowing predictions to serve as starting points for annotation review and correction. Supports object detection, instance segmentation, keypoint detection, and classification predictions. If None, only images are uploaded..target_project(roboflow_project): Roboflow project identifier where uploaded images and annotations will be saved. Must be a valid project in your Roboflow workspace. The project name can be specified directly or referenced from workflow inputs..registration_tags(Union[list_of_values,string]): List of tags to attach to uploaded images for organization and filtering in Roboflow. Tags can be static strings (e.g., 'location-florida', 'camera-1') or dynamic values from workflow inputs. Tags help organize collected data, filter images in Roboflow, and add metadata for dataset management. Can be an empty list if no tags are needed..disable_sink(boolean): If True, the block execution is disabled and no uploads occur. This allows temporarily disabling data collection without removing the block from workflows, useful for testing, debugging, or conditional data collection. When disabled, returns a message indicating the sink was disabled. Default is False (uploads enabled)..fire_and_forget(boolean): If True, uploads execute asynchronously (fire-and-forget mode), allowing the workflow to continue immediately without waiting for upload completion. This improves workflow performance but prevents error handling. If False, uploads execute synchronously, blocking workflow execution until completion and allowing proper error handling and status reporting. Use async mode (True) for production workflows where speed is prioritized, and sync mode (False) for debugging or when error handling is critical..labeling_batch_prefix(string): Prefix used to generate labeling batch names for organizing uploaded images in Roboflow. Combined with the batch recreation frequency and timestamps to create batch names like 'workflows_data_collector_2024_01_15'. Batches help organize collected data for labeling, making it easier to manage and review uploaded images in groups. Can be customized to match your organization scheme..image_name(string): Optional custom name for the uploaded image. If provided, this name will be used instead of an auto-generated UUID. This is useful when you want to preserve the original filename or use a meaningful identifier (e.g., serial number, timestamp) for the image in the Roboflow dataset. The name should not include file extension. If not provided, a UUID will be generated automatically..
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output
Example JSON definition of step Roboflow Dataset Upload in version v1
{
"name": "<your_step_name_here>",
"type": "roboflow_core/roboflow_dataset_upload@v1",
"image": "$inputs.image",
"predictions": "$steps.object_detection_model.predictions",
"target_project": "my_project",
"minutely_usage_limit": 10,
"hourly_usage_limit": 10,
"daily_usage_limit": 10,
"usage_quota_name": "quota-for-data-sampling-1",
"max_image_size": [
512,
512
],
"compression_level": 75,
"registration_tags": [
"location-florida",
"factory-name",
"$inputs.dynamic_tag"
],
"persist_predictions": true,
"disable_sink": true,
"fire_and_forget": true,
"labeling_batch_prefix": "my_labeling_batch_name",
"labeling_batches_recreation_frequency": "never",
"image_name": "serial_12345"
}