fabll
community[skill]
How FabLL (faebryk.core.node) maps Python node/trait declarations into the TypeGraph + instance graph, including field/trait invariants and instantiation patterns. Use when defining new components or traits, working with the Node API, or understanding type registration.
$
/plugin install atopiledetails
FabLL (Fabric Low Level) Module
fabll (primarily src/faebryk/core/node.py) is the high-level Python API for defining and working with hardware components. It bridges the gap between Python classes and the underlying TypeGraph and instance graph.
Quick Start
import faebryk.core.faebrykpy as fbrk
import faebryk.core.graph as graph
import faebryk.core.node as fabll
g = graph.GraphView.create()
tg = fbrk.TypeGraph.create(g=g)
class _App(fabll.Node):
pass
app = _App.bind_typegraph(tg=tg).create_instance(g=g)
Relevant Files
src/faebryk/core/node.py(Node/Traits/fields, type registration, binding/instantiation helpers)src/faebryk/core/faebrykpy.py(edge types used by FabLL under the hood)src/faebryk/core/graph.py(GraphView wrapper used by instances)
Dependants (Call Sites)
- Library (
src/faebryk/library/): Every component (Resistor, Capacitor, etc.) inherits fromNode. - Compiler: Generates
Nodesubclasses dynamically fromatofiles. - Solvers: Operate on
Nodeinstances to extract parameters and constraints.
How to Work With / Develop / Test
Core Concepts
- Nodes are wrappers over graph instances: a
fabll.Nodeis constructed with agraph.BoundNode. - Declaration via class attributes:
- structural children:
SomeType.MakeChild(...) - trait attachments:
Traits.MakeEdge(SomeTrait.MakeChild().put_on_type())(or similar)
- structural children:
- Binding:
- type binding:
MyType.bind_typegraph(tg) - instance creation:
.create_instance(g)
- type binding:
- Type identifiers:
- library types (
faebryk.library.*) intentionally have short identifiers (class name) for ato imports - non-library types include a module-derived suffix; type IDs must be unique (enforced in
Node._register_type)
- library types (
Development Workflow
- Prefer adding behavior as a Trait rather than deepening class hierarchies.
- If you need a new structural relation/field kind, it lives in
src/faebryk/core/node.py(field system). - Keep an eye on invariants enforced at class creation time (metaclass +
__init_subclass__).
Testing
- Core tests:
ato dev test --llm test/core/test_node.py -qandato dev test --llm test/library/test_traits.py -q
Best Practices
- Prefer Traits: Don't add methods to
Nodesubclasses if they can be a Trait. This allows them to be applied to different component families. - Avoid deep inheritance: FabLL enforces single-level subclassing for node types (
Node.__init_subclass__). - Type-safe traversal: when you must traverse trait edges manually, prefer
EdgeTrait.traverse(trait_type=...).
Internals & Runtime Behavior
Instantiation & Lifecycle
- Don’t call
MyNode()with no args: instances are created from a bound type viabind_typegraph(...).create_instance(...). - TypeGraph context is required:
import faebryk.core.graph as graph import faebryk.core.faebrykpy as fbrk g = graph.GraphView.create() tg = fbrk.TypeGraph.create(g=g) inst = MyNode.bind_typegraph(tg).create_instance(g=g) - Single-level subclassing invariant:
Node.__init_subclass__forbids “deeper than one level” inheritance for node types.
Trait Implementation
- Traits are Nodes: Traits are not just Python mixins; they are
Nodesubclasses that typically contain anImplementsTraitedge. - Trait Definition:
class MyTrait(Node): is_trait = Traits.MakeEdge(ImplementsTrait.MakeChild().put_on_type()) - Resolution: Use
node_instance.get_trait(TraitType)to retrieve a trait instance. This performs a graph traversal.
Performance & Memory
- Type Creation: Creating a type involves significant overhead (executing fields, resolving dependencies). Once created, instantiating instances is faster but still involves allocation in the Zig backend.
- Tree Structure: Nodes are linked via
EdgeComposition.add_childcreates this edge. Large trees (10k+ nodes) should be constructed carefully to avoid Python loop overhead; the underlying graph is efficient, but Python interactions cost time.
technical
- github
- atopile/atopile
- stars
- 3177
- license
- MIT
- contributors
- 41
- last commit
- 2026-04-03T20:56:37Z
- file
- .claude/skills/fabll/SKILL.md