Bacalhau Docs
GithubSlackBlogEnterprise
v1.5.x
  • Documentation
  • Use Cases
  • CLI & API
  • References
  • Community
v1.5.x
  • Welcome
  • Getting Started
    • How Bacalhau Works
    • Installation
    • Create Network
    • Hardware Setup
    • Container Onboarding
      • Docker Workloads
      • WebAssembly (Wasm) Workloads
  • Setting Up
    • Running Nodes
      • Node Onboarding
      • GPU Installation
      • Job selection policy
      • Access Management
      • Node persistence
      • Connect Storage
      • Configuring Transport Level Security
      • Limits and Timeouts
      • Test Network Locally
      • Bacalhau WebUI
      • Private IPFS Network Setup
    • Workload Onboarding
      • Container
        • Docker Workload Onboarding
        • WebAssembly (Wasm) Workloads
        • Bacalhau Docker Image
        • How To Work With Custom Containers in Bacalhau
      • Python
        • Building and Running Custom Python Container
        • Running Pandas on Bacalhau
        • Running a Python Script
        • Running Jupyter Notebooks on Bacalhau
        • Scripting Bacalhau with Python
      • R (language)
        • Building and Running your Custom R Containers on Bacalhau
        • Running a Simple R Script on Bacalhau
      • Run CUDA programs on Bacalhau
      • Running a Prolog Script
      • Reading Data from Multiple S3 Buckets using Bacalhau
      • Running Rust programs as WebAssembly (WASM)
      • Generate Synthetic Data using Sparkov Data Generation technique
    • Data Ingestion
      • Copy Data from URL to Public Storage
      • Pinning Data
      • Running a Job over S3 data
    • Networking Instructions
      • Accessing the Internet from Jobs
      • Utilizing NATS.io within Bacalhau
    • GPU Workloads Setup
    • Automatic Update Checking
    • Marketplace Deployments
      • Google Cloud Marketplace
  • Guides
    • (Updated) Configuration Management
    • Write a config.yaml
    • Write a SpecConfig
  • Examples
    • Data Engineering
      • Using Bacalhau with DuckDB
      • Ethereum Blockchain Analysis with Ethereum-ETL and Bacalhau
      • Convert CSV To Parquet Or Avro
      • Simple Image Processing
      • Oceanography - Data Conversion
      • Video Processing
    • Model Inference
      • EasyOCR (Optical Character Recognition) on Bacalhau
      • Running Inference on Dolly 2.0 Model with Hugging Face
      • Speech Recognition using Whisper
      • Stable Diffusion on a GPU
      • Stable Diffusion on a CPU
      • Object Detection with YOLOv5 on Bacalhau
      • Generate Realistic Images using StyleGAN3 and Bacalhau
      • Stable Diffusion Checkpoint Inference
      • Running Inference on a Model stored on S3
    • Model Training
      • Training Pytorch Model with Bacalhau
      • Training Tensorflow Model
      • Stable Diffusion Dreambooth (Finetuning)
    • Molecular Dynamics
      • Running BIDS Apps on Bacalhau
      • Coresets On Bacalhau
      • Genomics Data Generation
      • Gromacs for Analysis
      • Molecular Simulation with OpenMM and Bacalhau
  • References
    • Jobs Guide
      • Job Specification
        • Job Types
        • Task Specification
          • Engines
            • Docker Engine Specification
            • WebAssembly (WASM) Engine Specification
          • Publishers
            • IPFS Publisher Specification
            • Local Publisher Specification
            • S3 Publisher Specification
          • Sources
            • IPFS Source Specification
            • Local Source Specification
            • S3 Source Specification
            • URL Source Specification
          • Network Specification
          • Input Source Specification
          • Resources Specification
          • ResultPath Specification
        • Constraint Specification
        • Labels Specification
        • Meta Specification
      • Job Templates
      • Queuing & Timeouts
        • Job Queuing
        • Timeouts Specification
      • Job Results
        • State
    • CLI Guide
      • Single CLI commands
        • Agent
          • Agent Overview
          • Agent Alive
          • Agent Node
          • Agent Version
        • Config
          • Config Overview
          • Config Auto-Resources
          • Config Default
          • Config List
          • Config Set
        • Job
          • Job Overview
          • Job Describe
          • Job Exec
          • Job Executions
          • Job History
          • Job List
          • Job Logs
          • Job Run
          • Job Stop
        • Node
          • Node Overview
          • Node Approve
          • Node Delete
          • Node List
          • Node Describe
          • Node Reject
      • Command Migration
    • API Guide
      • Bacalhau API overview
      • Best Practices
      • Agent Endpoint
      • Orchestrator Endpoint
      • Migration API
    • Node Management
    • Authentication & Authorization
    • Database Integration
    • Debugging
      • Debugging Failed Jobs
      • Debugging Locally
    • Running Locally In Devstack
    • Setting up Dev Environment
  • Help & FAQ
    • Bacalhau FAQs
    • Glossary
    • Release Notes
      • v1.5.0 Release Notes
      • v1.4.0 Release Notes
  • Integrations
    • Apache Airflow Provider for Bacalhau
    • Lilypad
    • Bacalhau Python SDK
    • Observability for WebAssembly Workloads
  • Community
    • Social Media
    • Style Guide
    • Ways to Contribute
Powered by GitBook
LogoLogo

Use Cases

  • Distributed ETL
  • Edge ML
  • Distributed Data Warehousing
  • Fleet Management

About Us

  • Who we are
  • What we value

News & Blog

  • Blog

Get Support

  • Request Enterprise Solutions

Expanso (2025). All Rights Reserved.

On this page
  • Labels Parameters
  • Filtering Operators
  • Example Usage
  • Practical Applications
  • Conclusion

Was this helpful?

Export as PDF
  1. References
  2. Jobs Guide
  3. Job Specification

Labels Specification

The Labels block within a Job specification plays a crucial role in Bacalhau, serving as a mechanism for filtering jobs. By attaching specific labels to jobs, users can quickly and effectively filter and manage jobs via both the Command Line Interface (CLI) and Application Programming Interface (API) based on various criteria.

Labels Parameters

Labels are essentially key-value pairs attached to jobs, allowing for detailed categorizations and filtrations. Each label consists of a Key and a Value. These labels can be filtered using operators to pinpoint specific jobs fitting certain criteria.

Filtering Operators

Jobs can be filtered using the following operators:

  1. in: Checks if the key's value matches any within a specified list of values.

  2. notin: Validates that the key's value isn’t within a provided list of values.

  3. exists: Checks for the presence of a specified key, regardless of its value.

  4. !: Validates the absence of a specified key. (i.e., DoesNotExist)

  5. gt: Checks if the key's value is greater than a specified value.

  6. lt: Checks if the key's value is less than a specified value.

  7. = & ==: Used for exact match comparisons between the key’s value and a specified value.

  8. !=: Validates that the key’s value doesn't match a specified value.

Example Usage

Filter jobs with a label whose key is "environment" and value is "development":

bacalhau job list --labels 'environment=development'

Filter jobs with a label whose key is "version" and value is greater than "2.0":

bacalhau job list --labels 'version gt 2.0'

Filter jobs with a label "project" existing:

bacalhau job list --labels 'project'

Filter jobs without a "project" label:

bacalhau job list --labels '!project'

Practical Applications

  • Job Management: Enables efficient management of jobs by categorizing them based on distinct attributes or criteria.

  • Automation: Facilitates the automation of job deployment and management processes by allowing scripts and tools to target specific categories of jobs.

  • Monitoring & Analytics: Enhances monitoring and analytics by grouping jobs into meaningful categories, allowing for detailed insights and analysis.

Conclusion

The Labels block is instrumental in the enhanced management, filtering, and operation of jobs within Bacalhau. By understanding and utilizing the available operators and label parameters effectively, users can optimize their workflow, automate processes, and achieve detailed insights into their jobs.

PreviousConstraint SpecificationNextMeta Specification

Was this helpful?