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mod compress; mod slice; use tract_hir::internal::*; use tract_hir::ops::array; use crate::model::{OnnxOpRegister, ParsingContext}; use crate::pb::*; use tract_num_traits::AsPrimitive; pub fn register_all_ops(reg: &mut OnnxOpRegister) { reg.insert("Compress", compress::compress); reg.insert("Concat", concat); reg.insert("ConstantLike", constant_like); reg.insert("ConstantOfShape", constant_of_shape); reg.insert("Expand", |_, _| Ok((Box::new(array::MultiBroadcastTo::default()), vec![]))); reg.insert("EyeLike", eye_like); reg.insert("Flatten", flatten); reg.insert("Gather", gather); reg.insert("Pad", pad); reg.insert("Reshape", |_, _| Ok((Box::new(array::Reshape::default()), vec![]))); reg.insert("Shape", |_, _| Ok((Box::new(array::Shape::new(DatumType::I64)), vec![]))); reg.insert("Size", |_, _| Ok((Box::new(array::Size::new(DatumType::I64)), vec![]))); reg.insert("Transpose", transpose); reg.insert("Tile", |_, _| Ok((Box::new(array::Tile::default()), vec![]))); reg.insert("Slice", slice::slice); reg.insert("Split", split); reg.insert("Squeeze", squeeze); reg.insert("Unsqueeze", unsqueeze); } pub fn concat( _ctx: &ParsingContext, node: &NodeProto, ) -> TractResult<(Box<dyn InferenceOp>, Vec<String>)> { let axis = node.get_attr("axis")?; Ok((Box::new(array::Concat::new(axis)), vec![])) } pub fn make_const<T>(shape: &[usize], v: f32) -> TractResult<Arc<Tensor>> where T: Copy + Datum, f32: AsPrimitive<T>, { Ok(tract_ndarray::Array::<T, _>::from_elem(shape, v.as_()).into_arc_tensor()) } pub fn constant_like( _ctx: &ParsingContext, node: &NodeProto, ) -> TractResult<(Box<dyn InferenceOp>, Vec<String>)> { let value = node.get_attr_opt("value")?.unwrap_or(0.); if node.input.len() == 0 { let dt = node.get_attr_opt("dtype")?.unwrap_or(f32::datum_type()); let shape: Vec<usize> = node.get_attr_vec("shape")?; let tensor = dispatch_numbers!(self::make_const(dt)(&shape, value))?; Ok((Box::new(tract_hir::ops::konst::Const::new(tensor)), vec![])) } else { Ok((Box::new(array::ConstantLike::new(value)), vec![])) } } pub fn constant_of_shape( _ctx: &ParsingContext, node: &NodeProto, ) -> TractResult<(Box<dyn InferenceOp>, Vec<String>)> { let value = match node.get_attr_opt::<Tensor>("value")? { Some(val) => val.into_arc_tensor(), None => make_const::<f32>(&vec![1], 0.0 as f32)?, }; Ok((Box::new(array::ConstantOfShape::new(value)), vec![])) } pub fn eye_like( _ctx: &ParsingContext, node: &NodeProto, ) -> TractResult<(Box<dyn InferenceOp>, Vec<String>)> { let dt = node.get_attr_opt("dtype")?; let k = node.get_attr_opt("k")?.unwrap_or(0); Ok((Box::new(array::EyeLike::new(dt, k)), vec![])) } pub fn flatten( _ctx: &ParsingContext, node: &NodeProto, ) -> TractResult<(Box<dyn InferenceOp>, Vec<String>)> { let axis = node.get_attr_opt("axis")?.unwrap_or(1); Ok((Box::new(array::Flatten::new(axis)), vec![])) } pub fn gather( _ctx: &ParsingContext, node: &NodeProto, ) -> TractResult<(Box<dyn InferenceOp>, Vec<String>)> { let axis = node.get_attr_opt("axis")?.unwrap_or(0); Ok((Box::new(array::Gather::new(axis)), vec![])) } pub fn pad( _ctx: &ParsingContext, node: &NodeProto, ) -> TractResult<(Box<dyn InferenceOp>, Vec<String>)> { let value: f32 = node.get_attr_opt("value")?.unwrap_or(0.0); let mode = match node.get_attr_opt("mode")? { None | Some("constant") => None, Some(mode) => node.check_value( "mode", match mode { "reflect" => Ok(Some(array::PadMode::Reflect)), "edge" => Ok(Some(array::PadMode::Edge)), _ => Err(mode), }, )?, } .unwrap_or_else(|| array::PadMode::Constant(Arc::new(value.into()))); let pads = node.get_attr_tvec("pads")?; let rank = pads.len() / 2; let pads = (0..rank).map(|ax| (pads[ax], pads[ax + rank])).collect(); Ok((Box::new(array::Pad::new(pads, mode)), vec![])) } pub fn split( _ctx: &ParsingContext, node: &NodeProto, ) -> TractResult<(Box<dyn InferenceOp>, Vec<String>)> { let axis = node.get_attr_opt("axis")?.unwrap_or(0); let split = node.get_attr_opt_vec("split")?; Ok((Box::new(array::Split::new(axis, node.output.len(), split)), vec![])) } pub fn squeeze( _ctx: &ParsingContext, node: &NodeProto, ) -> TractResult<(Box<dyn InferenceOp>, Vec<String>)> { let axes = node.get_attr_opt_vec("axes")?; Ok((Box::new(array::Squeeze::new(axes)), vec![])) } pub fn transpose( _ctx: &ParsingContext, node: &NodeProto, ) -> TractResult<(Box<dyn InferenceOp>, Vec<String>)> { let perm = node.get_attr_opt_vec("perm")?; Ok((Box::new(array::PermuteAxes::new(perm)), vec![])) } pub fn unsqueeze( _ctx: &ParsingContext, node: &NodeProto, ) -> TractResult<(Box<dyn InferenceOp>, Vec<String>)> { let axes = node.get_attr_vec("axes")?; Ok((Box::new(array::AddDims::new(axes)), vec![])) }