OpenFactory Shared Schemas#
Shared Deployment Configuration Schemas for OpenFactory
This module defines reusable Pydantic models that represent container deployment settings and resource constraints. These models are intended to be shared across device and connector configuration schemas.
Components:#
ResourcesDefinition: Represents CPU and memory values for a container.
Resources: Groups reservations and limits for container resources.
Placement: Defines constraints for container placement on specific nodes.
Deploy: Complete deployment configuration including replicas, resource configs, and placement rules.
Key Features:#
Express CPU and memory constraints using common formats (e.g., 0.5 CPUs, “1Gi” memory)
Define both resource requests and limits for containers
Support placement constraints for scheduling on labeled nodes
Modular, reusable across multiple OpenFactory schema modules
Example Usage:#
Define a deployment configuration:
>>> Deploy(
... replicas=2,
... resources=Resources(
... reservations=ResourcesDefinition(cpus=0.5, memory="512Mi"),
... limits=ResourcesDefinition(cpus=1.0, memory="1Gi")
... ),
... placement=Placement(
... constraints=["node.labels.zone == eu-west"]
... )
... )
This module is typically used as part of device, connector, or application schemas that involve resource scheduling or orchestration.
- class openfactory.schemas.common.Deploy(**data)[source]#
Bases:
BaseModelDefines deployment configuration such as replicas, resources, and placement.
- class openfactory.schemas.common.Placement(**data)[source]#
Bases:
BaseModelDefines placement constraints for scheduling containers.
- class openfactory.schemas.common.Resources(**data)[source]#
Bases:
BaseModelSpecifies resource requests and limits for a container deployment.
- limits: ResourcesDefinition | None#
- model_config: ClassVar[ConfigDict] = {}#
Configuration for the model, should be a dictionary conforming to [ConfigDict][pydantic.config.ConfigDict].
- reservations: ResourcesDefinition | None#
- class openfactory.schemas.common.ResourcesDefinition(**data)[source]#
Bases:
BaseModelDefines resource limits or reservations such as CPU and memory.
- openfactory.schemas.common.constraints(deploy)[source]#
Retrieve and normalize placement constraints from a Deploy object for Docker deployments.
- This function:
Extracts the
constraintslist fromdeploy.placementif available.Converts single
'='into' == 'for Docker/Docker Swarm API compatibility.Normalizes spacing around
'=='.Returns None if no constraints are defined.
- Parameters:
deploy (Optional[Deploy]) – Deployment configuration containing optional placement info.
- Returns:
Optional[List[str]] – List of normalized constraint strings, or None if empty or undefined.
- openfactory.schemas.common.cpus_limit(deploy, default=1.0)[source]#
Retrieve the CPU limit value from a Deploy object, returning a default if unavailable.
- openfactory.schemas.common.cpus_reservation(deploy, default=0.5)[source]#
Retrieve the CPU reservation value from a Deploy object, returning a default if unavailable.
- openfactory.schemas.common.parse_memory_to_bytes(mem_str)[source]#
Convert a memory size string into an integer number of bytes.
This function accepts memory strings using common units like bytes (
B), kilobytes (K,KB), megabytes (M,MB,Mi), and gigabytes (G,GB,Gi), case-insensitive. It also handles fractional values (e.g.,0.5Gi).If no unit is provided, the string is interpreted as bytes.
Usage example
>>> parse_memory_to_bytes("512Mi") 536870912 >>> parse_memory_to_bytes("1Gi") 1073741824 >>> parse_memory_to_bytes("0.5Gi") 536870912 >>> parse_memory_to_bytes("1024") 1024
- Parameters:
mem_str (str) – Memory size string, e.g.,
512Mi,1Gi,1024.- Returns:
int – Memory size in bytes.
- Raises:
ValueError – If the string cannot be parsed into a valid number.
- Return type:
- openfactory.schemas.common.resources(deploy)[source]#
Retrieve and normalize resources from a Deploy object for Docker deployments.
Extracts CPU and memory settings from
deploy.resourcesand converts them into the dictionary format expected by Docker.- Return type:
- Parameters:
deploy (Optional[Deploy]) – Deployment configuration for an application.
- Returns:
Optional[Dict[str, Dict[str, Any]]] – Dictionary with
LimitsandReservationskeys, containing CPU (NanoCPUs) and Memory (MemoryBytes) in Docker format. Returns None if no resource info is provided.