# Architecture Deep-Dive
## Pipeline Overview
```
┌─────────────────────────────────────────────────────────────┐
│ Elixir / BEAM VM │
│ │
│ Axon model ──→ Nx.Defn graph ──→ ExBurn.Backend │
│ │ │
│ ↓ │
│ ExBurn.Nif (Rustler) │
│ │ │
│ ↕ │
│ ExCubecl (GPU runtime) │
│ - Buffer management │
│ - Kernel execution │
│ - Pipeline orchestration │
│ - Async commands │
│ - Media I/O │
└─────────────────────────────┬───────────────────────────────┘
│ NIF calls
┌─────────────────────────────↓───────────────────────────────┐
│ Rust NIF Layer │
│ │
│ BurnTensor enum ──→ Burn operations ──→ CubeCL runtime │
│ │
│ Backend: Autodiff<CubeCL> │
│ - Autodiff: gradient tracking │
│ - CubeCL: GPU compute abstraction │
└─────────────────────────────┬───────────────────────────────┘
│ kernel dispatch
┌─────────────────────────────↓───────────────────────────────┐
│ GPU Hardware │
│ │
│ Metal (iOS/macOS) │ Vulkan (Android/Linux) │ CUDA │
└─────────────────────────────────────────────────────────────┘
```
## Nx Backend Protocol
`ExBurn.Backend` implements the `Nx.Backend` behaviour. Every Nx operation
is translated to a NIF call:
```elixir
# Elixir side
Nx.add(a, b)
↓
ExBurn.Backend.add(%BurnTensor{ref: ref_a}, %BurnTensor{ref: ref_b})
↓
ExBurn.Nif.add_tensor(ref_a, ref_b) # NIF call
↓
{:ok, ref_c} # New tensor reference
```
## Tensor Representation
### Elixir Side
```elixir
%ExBurn.Tensor{
ref: #Reference<...>, # Opaque NIF reference
shape: [3, 256], # Shape tracked on Elixir side
type: :f32 # Element type tag
}
```
### Rust Side
```rust
enum BurnTensor {
F32x1(Tensor<B, 1>), # 1D f32 tensor
F32x2(Tensor<B, 2>), # 2D f32 tensor
F32x3(Tensor<B, 3>), # 3D f32 tensor
F32x4(Tensor<B, 4>), # 4D f32 tensor (images)
I32x1(Tensor<B, 1, Int>),
I64x1(Tensor<B, 1, Int>),
}
```
## Memory Management
- Tensors are owned by `ResourceArc<TensorResource>` on the Rust side
- Erlang GC triggers NIF resource destructor → Burn tensor freed
- Explicit `ExBurn.Tensor.free/1` for eager deallocation
## Gradient Computation
```
Forward pass Backward pass
───────────── ─────────────
input → Linear → ReLU → output
↓
loss = cross_entropy(output, target)
↓
backward(loss) ← Autodiff<CubeCL> computes ∂L/∂W
↓
optimizer.step() ← Adam/SGD updates W -= lr * ∂L/∂W
```
## ExCubecl Integration
ExBurn uses [ExCubecl](https://hex.pm/packages/ex_cubecl) v0.4+ as its GPU compute runtime. ExCubecl provides:
- **GPU Buffers**: `ExCubecl.buffer/3` creates GPU-resident buffers with automatic GC
- **Kernel Execution**: `ExCubecl.run_kernel/4` dispatches CubeCL kernels
- **Pipelines**: `ExCubecl.pipeline/0` + `pipeline_add/5` + `pipeline_run/1` for multi-kernel orchestration
- **Async Commands**: `ExCubecl.submit/1` + `poll/1` + `wait/1` for non-blocking execution
- **Media I/O**: `ExCubecl.Media`, `ExCubecl.Video`, `ExCubecl.Audio`, `ExCubecl.Filter`, `ExCubecl.Transcode`
`ExBurn.CubeclBridge` wraps ExCubecl with a higher-level API, and `ExBurn.BurnBridge` provides ExCubecl buffer helpers.
## Performance Considerations
1. **Minimize NIF round-trips**: Use `BurnBridge` for multi-op sequences
2. **Batch conversions**: `ExBurn.Tensor.from_nx_batch/1` for multiple tensors
3. **Shape caching**: Shapes tracked on Elixir side, no NIF call needed
4. **f16 on mobile**: Use `precision: :f16` for 2x memory reduction
5. **Use ExCubecl pipelines**: Chain multiple GPU kernels without CPU round-trips
## Error Handling
All NIF functions return `{:ok, result}` or `{:error, reason}`.
The Elixir layer wraps these in `ExBurn.Error` exceptions:
```elixir
raise ExBurn.Error,
op: :matmul,
reason: "shape mismatch",
details: %{lhs: [3, 4], rhs: [5, 6]}
```
## Thread Safety
- NIF calls are scheduled on dirty CPU schedulers for long operations
- Burn's CubeCL runtime handles GPU command queue synchronization
- `ExBurn.Nif.gpu_available/0` is safe to call from any process