@ai-on-browser/data-analysis-models
Version:
Data analysis model package without any dependencies
76 lines (70 loc) • 2.26 kB
JavaScript
import { onnx } from '../onnx_exporter.js'
const acceptTypes = [
onnx.TensorProto.DataType.INT8,
onnx.TensorProto.DataType.INT16,
onnx.TensorProto.DataType.INT32,
onnx.TensorProto.DataType.INT64,
onnx.TensorProto.DataType.UINT8,
onnx.TensorProto.DataType.UINT16,
onnx.TensorProto.DataType.UINT32,
onnx.TensorProto.DataType.UINT64,
]
/**
* Handle bitwise or layer
*/
export default {
/**
* Export to onnx object.
* @param {onnx.ModelProto} model Model object
* @param {import("../../graph").LayerObject & {type: 'bitwise_or'}} obj Node object
* @param {{[key: string]: {type: onnx.TensorProto.DataType; size: number[]}}} info Output informatino of other layers
* @returns {{type: onnx.TensorProto.DataType; size: number[]} | undefined} Output information of this layer
*/
export(model, obj, info) {
if (!Array.isArray(obj.input)) {
throw new Error(`Invalid attribute 'input' value ${obj.input}.`)
}
const graph = model.getGraph()
const node = new onnx.NodeProto()
if (obj.input.length === 1) {
node.setOpType('Identity')
node.addInput(obj.input[0])
node.addOutput(obj.name)
graph.addNode(node)
return
}
const intInputs = []
for (const i of obj.input) {
if (acceptTypes.includes(info[i].type)) {
intInputs.push(i)
} else {
const castnode = new onnx.NodeProto()
castnode.setOpType('Cast')
castnode.addInput(i)
castnode.addOutput(`${obj.name}_${i}_cast`)
const to = new onnx.AttributeProto()
to.setName('to')
to.setType(onnx.AttributeProto.AttributeType.INT)
to.setI(onnx.TensorProto.DataType.INT32)
castnode.addAttribute(to)
graph.addNode(castnode)
intInputs.push(`${obj.name}_${i}_cast`)
}
}
let prev_in = intInputs[0]
for (let i = 1; i < intInputs.length - 1; i++) {
const node_bitwiseor = new onnx.NodeProto()
node_bitwiseor.setOpType('BitwiseOr')
node_bitwiseor.addInput(prev_in)
node_bitwiseor.addInput(intInputs[i])
node_bitwiseor.addOutput((prev_in = obj.name + `_bitwiseor_${i - 1}`))
graph.addNode(node_bitwiseor)
}
node.setOpType('BitwiseOr')
node.addInput(prev_in)
node.addInput(intInputs.at(-1))
node.addOutput(obj.name)
graph.addNode(node)
return { type: onnx.TensorProto.DataType.INT32 }
},
}