tensor_utils.cpp 57.2 KB
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#include "megbrain/common.h"
#include "megbrain/dtype.h"
#include "megbrain/imperative/ops/autogen.h"
#include "megbrain/imperative/ops/backward_graph.h"
#include "megbrain/imperative/ops/utility.h"
#include "megbrain/imperative/profiler.h"
#include "megbrain/imperative/transformations/eval.h"
#include "megbrain/imperative/transformations/lazy.h"
#include "megbrain/imperative/transformations/scalar.h"
#include "megbrain/imperative/transformations/symbol.h"
#include "megbrain/imperative/transformations/trace.h"
#include "megbrain/imperative/utils/map.h"
#include "megbrain/opr/io.h"
#include "megbrain/plugin/profiler.h"

#include "./common.h"
#include "./grad.h"
#include "./graph_rt.h"
#include "./helper.h"
#include "./module_trace.h"
#include "./numpy_dtypes.h"
#include "./tensor.h"
#include "./tensor_utils.h"
#include "./transformation.h"

#include <object.h>
#include <pybind11/numpy.h>
#include <pybind11/operators.h>
#include <pybind11/pytypes.h>
#include <pyerrors.h>
#include <range/v3/all.hpp>
#include <string>

#include <unordered_map>

#include "../../src/impl/mgb_cg_impl.h"

namespace py = pybind11;
namespace views = ranges::views;

namespace mgb::imperative::python {

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/* ============== convert inputs ============== */

// map numpy.dtype.kind to priority
inline uint8_t category_priority(char c) {
    switch (c) {
        case 'f':
            return 3;  // floating-point
        case 'i':
            return 2;  // signed integer
        case 'u':
            return 2;  // unsigned integer
        case 'b':
            return 1;  // boolean
        default:
            return 0;
    }
}

// Returns the maximum value of the priority of each type in the list `types`.
uint8_t max_priority(SmallVector<PyArray_Descr*> types) {
    if (types.size() == 0) {
        return 0;
    } else {
        uint8_t max_p = 0;
        for (auto&& desc : types) {
            max_p = std::max(max_p, category_priority(desc->kind));
        }
        return max_p;
    }
}

// Returns the data type with sufficient size to hold all types of
// category `cat` in the list `types`.
PyArray_Descr* promote_types(SmallVector<PyArray_Descr*> types, uint8_t cat) {
    // Return value: New reference
    SmallVector<PyArray_Descr*> used_types;
    for (auto&& desc : types) {
        auto&& v = category_priority(desc->kind);
        if (v == cat) {
            used_types.emplace_back(desc);
        }
    }
    mgb_assert(used_types.size() > 0, "size of used_types is 0");
    PyArray_Descr* res = used_types[0];
    Py_INCREF(res);

    for (size_t i = 1; i < used_types.size(); ++i) {
        PyArray_Descr* tmp = PyArray_PromoteTypes(used_types[i], res);
        Py_DECREF(res);
        res = tmp;
    }
    return res;
}

PyArray_Descr* scalar2dtype(PyObject* arg) {
    // Return value: New reference
    if (PyBool_Check(arg)) {
        auto&& descr = PyArray_DescrFromType(NPY_BOOL);
        return descr;
    }
    if (PyLong_CheckExact(arg)) {
        auto&& descr = PyArray_DescrFromType(NPY_INT32);
        return descr;
    }
    if (PyFloat_CheckExact(arg)) {
        auto&& descr = PyArray_DescrFromType(NPY_FLOAT32);
        return descr;
    }
    return nullptr;
}

PyArray_Descr* _dtype_promotion(PyObject* const* args, size_t nargs) {
    // Return value: New reference
    SmallVector<PyArray_Descr*> tensors;
    SmallVector<PyArray_Descr*> scalars;

    bool is_tuple = false;
    PyObject* tuple = nullptr;
    if (nargs == 1 && (PyTuple_Check(args[0]) || PyList_Check(args[0]))) {
        if (PyList_Check(args[0])) {
            tuple = PyList_AsTuple(args[0]);
        } else {
            tuple = args[0];
            Py_INCREF(tuple);
        }
        nargs = PyTuple_Size(tuple);
        is_tuple = true;
    }

    for (size_t i = 0; i < nargs; ++i) {
        PyObject* handle = is_tuple ? PyTuple_GetItem(tuple, i) : args[i];
        if (handle == Py_None)
            continue;
        TensorWrapper* tw = TensorWrapper::try_cast(handle);
        if (tw) {
            mgb::DType type = tw->m_tensor->dtype();
            auto&& descr = npy::dtype_mgb2np_descr(type);
            Py_INCREF(descr.get());
            tensors.emplace_back(descr.get());
        } else {
            if (PyArray_Check(handle) || PyArray_CheckScalar(handle)) {
                auto&& descr = PyArray_DescrFromObject(handle, nullptr);
                tensors.emplace_back(descr);
                continue;
            }

            PyArray_Descr* descr = scalar2dtype(handle);
            if (descr) {
                scalars.emplace_back(descr);
                continue;
            }
        }
    }

    auto max_pri_scalars = max_priority(scalars);
    auto max_pri_tensors = max_priority(tensors);

    if (max_pri_scalars <= 0 && max_pri_tensors <= 0) {
        throw py::value_error("invalid input, no dtype avaliable");
    }
    PyArray_Descr* res;
    if (max_pri_scalars > max_pri_tensors) {
        res = promote_types(scalars, max_pri_scalars);
    } else {
        res = promote_types(tensors, max_pri_tensors);
    }
    for (auto* p : tensors) {
        Py_DECREF(p);
    }
    for (auto* p : scalars) {
        Py_DECREF(p);
    }
    Py_XDECREF(tuple);
    return res;
}

CompNode _get_device(PyObject* const* args, size_t nargs) {
    bool is_tuple = false;
    PyObject* tuple = nullptr;
    if (nargs == 1 && (PyTuple_Check(args[0]) || PyList_Check(args[0]))) {
        if (PyList_Check(args[0])) {
            tuple = PyList_AsTuple(args[0]);
        } else {
            tuple = args[0];
            Py_INCREF(tuple);
        }
        nargs = PyTuple_Size(tuple);
        is_tuple = true;
    }
    bool valid = false;
    CompNode cn;
    for (size_t i = 0; i < nargs; ++i) {
        PyObject* handle = is_tuple ? PyTuple_GetItem(tuple, i) : args[i];
        TensorWrapper* tw = TensorWrapper::try_cast(handle);

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        if (tw) {
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            if (!valid) {
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                cn = tw->m_tensor->comp_node();
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                valid = true;
            } else {
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                CompNode cn1 = tw->m_tensor->comp_node();
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                if (cn1 != cn) {
                    throw py::value_error(ssprintf(
                            "ambiguous device: %s (from %s) vs %s (from %s)",
                            cn.to_string().c_str(), cn.to_string_logical().c_str(),
                            cn1.to_string().c_str(), cn1.to_string_logical().c_str()));
                }
            }
        }
    }
    if (!valid) {
        return CompNode::load(get_default_device());
    }
    Py_XDECREF(tuple);
    return cn;
}

// Returns the dtype that would result from performing an arithmetic
// operation on the provided input tensors and scalars.
PyObject* dtype_promotion(PyObject* self, PyObject* const* args, size_t nargs) {
    if (!nargs) {
        PyErr_SetString(PyExc_TypeError, "empty input is not allowed");
        return nullptr;
    }
    try {
        PyArray_Descr* res = _dtype_promotion(args, nargs);
        return py::cast(npy::dtype_np2mgb_descr(res)).release().ptr();
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

PyObject* get_device(PyObject* self, PyObject* const* args, size_t nargs) {
    if (!nargs) {
        PyErr_SetString(PyExc_TypeError, "empty input is not allowed");
        return nullptr;
    }
    try {
        CompNode cn = _get_device(args, nargs);
        return py::cast(cn).release().ptr();
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

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bool is_scalar(PyObject* tensor) {
    auto* tw = TensorWrapper::try_cast(tensor);
    if (tw) {
        return tw->m_tensor->is_scalar();
    }
    return PyArray_CheckAnyScalar(tensor);
}

bool is_bool_list(PyObject* arg) {
    if (!PyList_Check(arg)) {
        return false;
    }
    size_t sz = PyList_Size(arg);
    if (!sz) {
        return false;
    }
    for (size_t i = 0; i < sz; ++i) {
        PyObject* handle = PyList_GetItem(arg, i);
        if (!PyBool_Check(handle)) {
            return false;
        }
    }
    return true;
}

bool is_bool_dtype(PyObject* args) {
    if (!PyObject_HasAttrString(args, "dtype"))
        return false;
    PyObject* dobj = PyObject_GetAttrString(args, "dtype");
    PyArray_Descr* dtype;
    PyArray_DescrConverter(dobj, &dtype);
    bool ret = (dtype->kind == 'b');
    Py_XDECREF(dtype);
    Py_XDECREF(dobj);
    return ret;
}

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py::object device2obj(py::handle device, bool mapping = false) {
    if (device.ptr() == Py_None) {
        return py::cast(CompNode::load(get_default_device()));
    } else if (py::isinstance<py::str>(device)) {
        if (mapping) {
            py::object dmap = getattr(
                    py::reinterpret_borrow<py::object>((PyObject*)py_tensor_type),
                    "dmap_callback");
            if (dmap.ptr() != Py_None) {
                return device2obj(dmap(device), false);
            }
        }
        return py::cast(CompNode::load(device.cast<std::string>()));

    } else if (py::isinstance<CompNode>(device)) {
        return py::reinterpret_borrow<py::object>(device);
    } else {
        return getattr(device, "_cn");
    }
}

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py::object _Const(py::handle value, py::handle dtype, py::handle device) {
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    py::object val = py::reinterpret_borrow<py::object>(value);
    if (PyArray_Check(value.ptr())) {
        py::tuple strides =
                py::reinterpret_borrow<py::tuple>(getattr(value, "strides"));
        bool need_squeeze = false;
        for (size_t i = 0; i < strides.size(); ++i) {
            if (strides[i].cast<ptrdiff_t>() == 0) {
                need_squeeze = true;
            }
        }
        if (need_squeeze) {
            val = py::reinterpret_borrow<py::array>(value);
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            py::object orig_shp = val.attr("shape");
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            val = val.attr("squeeze")();
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            val = val.attr("reshape")(orig_shp);
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        }
    }
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    py::object device_obj = device2obj(device, true);
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    py::tuple tup =
            py::make_tuple(val, dtype, device_obj, true, false, py::none(), py::none());
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    return TensorWrapper::make(py_tensor_type, tup.ptr(), nullptr);
}

py::tuple _make_shape_tuple(py::handle shape) {
    py::list orig;
    py::list ret(0);
    auto solve_one = [&](py::handle val) {
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        if (TensorWrapper::try_cast(val.ptr())) {
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            py::object np = getattr(val, "numpy")();
            PyArrayObject* arr = (PyArrayObject*)np.ptr();
            PyObject* maybe_list = PyArray_ToList(arr);
            if (PyList_Check(maybe_list)) {
                py::list may = py::reinterpret_steal<py::list>(maybe_list);
                for (size_t i = 0; i < may.size(); ++i) {
                    ret.append(may[i]);
                }
            } else {
                mgb_assert(PyLong_Check(maybe_list));
                ret.append(PyLong_AsLong(maybe_list));
                Py_XDECREF(maybe_list);
            }
        } else if (PyArray_Check(val.ptr())) {
            ret.append(PyArray_PyIntAsInt(val.ptr()));
        } else {
            ret.append(PyLong_AsLong(val.ptr()));
        }
    };
    if (PyArray_Check(shape.ptr()) && !PyArray_CheckAnyScalar(shape.ptr())) {
        orig = py::reinterpret_steal<py::list>(
                PyArray_ToList((PyArrayObject*)shape.ptr()));
        for (size_t i = 0; i < orig.size(); ++i) {
            solve_one(orig[i]);
        }
    } else if (PyList_Check(shape.ptr())) {
        orig = py::reinterpret_borrow<py::list>(shape);
        for (size_t i = 0; i < orig.size(); ++i) {
            solve_one(orig[i]);
        }
    } else if (PyTuple_Check(shape.ptr())) {
        py::tuple tup = py::reinterpret_borrow<py::tuple>(shape);
        for (size_t i = 0; i < tup.size(); ++i) {
            solve_one(tup[i]);
        }
    } else {
        solve_one(shape);
    }
    return py::reinterpret_steal<py::tuple>(PyList_AsTuple(ret.ptr()));
}

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bool is_tensor(py::handle arg) {
    return bool(TensorWrapper::try_cast(arg.ptr()));
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}

bool is_py_sequence(py::handle arg) {
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    if (PyArray_Check(arg.ptr()) || TensorWrapper::try_cast(arg.ptr())) {
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        return false;
    }
    return PySequence_Check(arg.ptr());
}

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py::object get_res_by_refhdl(
        py::handle value, py::handle dtype, py::handle device, py::handle ref_hdl) {
    py::object res = _Const(value, dtype, device);
    py::object ref;
    if (py::isinstance<py::tuple>(ref_hdl)) {
        py::tuple tup = py::reinterpret_borrow<py::tuple>(ref_hdl);
        if (tup.size()) {
            ref = tup[0];
        } else {
            ref = py::none();
        }
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    } else {
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        ref = py::reinterpret_borrow<py::object>(ref_hdl);
    }
    if (PyObject_TypeCheck(ref.ptr(), py_varnode_type)) {
        auto temp = dtype.cast<mgb::DType>();
        ComputingGraph* graph = getattr(ref, "graph").cast<ComputingGraph*>();
        cg::VarNode* node = getattr(ref, "var").cast<cg::VarNode*>();
        CompNode cn;
        if (device.ptr() == Py_None) {
            cn = node->comp_node();
        } else {
            cn = device2obj(device).cast<CompNode>();
        }
        OperatorNodeConfig config(cn);
        auto hv = npy::np2tensor(
                value.ptr(), npy::Meth::borrow(cn), dtype.cast<mgb::DType>());
        auto typeobj = ref.get_type();
        return typeobj(opr::ImmutableTensor::make(*graph, hv, config).node());
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    }
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    return res;
}

mgb::DType _get_dtype(py::handle tensor) {
    auto tw = TensorWrapper::try_cast(tensor.ptr());
    return tw->m_tensor->dtype();
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}

py::object _astype_cpp(py::handle tensor, py::handle dtype_hdl) {
    PyArray_Descr* descr;
    if (!PyArray_DescrConverter(dtype_hdl.ptr(), &descr)) {
        throw py::value_error(ssprintf(
                "can not convert to numpy.dtype from %s",
                dtype_hdl.ptr()->ob_type->tp_name));
    }
    PyArray_Descr* cur = npy::dtype_mgb2np_descr(_get_dtype(tensor)).get();
    if (!dtype_equal(cur, descr)) {
        std::shared_ptr<OpDef> op = TypeCvt::make(npy::dtype_np2mgb_descr(descr));
        py::object Op = py::cast(op);
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        PyObject* p[2] = {Op.ptr(), tensor.ptr()};
        py::tuple ret = py::reinterpret_steal<py::object>(py_apply(NULL, p, 2));
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        return ret[0];
    } else {
        return py::reinterpret_borrow<py::object>(tensor);
    }
}

py::object _convert_single_value_cpp(
        py::handle value, py::handle dtype, py::handle device) {
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    if (is_tensor(value)) {
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        if (_get_dtype(value).category() != DTypeCategory::QUANTIZED) {
            return _astype_cpp(value, dtype);
        }
    } else {
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        return _Const(value, dtype, device);
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    }
    return py::reinterpret_borrow<py::object>(value);
}

py::object _convert_inputs_cpp(
        PyObject* const* args, size_t nargs, py::object dtype, py::object device) {
    ComputingGraph* graph = nullptr;
    py::handle typeobj;
    py::list lis;
    for (size_t i = 0; i < nargs; ++i) {
        py::handle h = py::handle(args[i]);
        lis.append(h);
    }
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    auto convert = [&](py::object value) {
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        if (value.is_none()) {
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            return value;
        }
        return _convert_single_value_cpp(value, dtype, device);
    };
    for (size_t i = 0; i < lis.size(); ++i) {
        lis[i] = convert(lis[i]);
    }
    return py::reinterpret_steal<py::tuple>(PyList_AsTuple(lis.ptr()));
}

py::object _astensor1d_cpp(
        py::handle value, py::handle dtype, py::handle device, py::handle ref) {
    py::object ret;
    py::object device_obj = py::none();
    py::object ndim_obj = py::none();
    if (device.ptr() != Py_None) {
        device_obj = device2obj(device);
    }
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    if (PyObject_TypeCheck(value.ptr(), py_varnode_type)) {
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        try {
            getattr(value, "ndim");
        } catch (py::error_already_set& err) {
            if (dtype.ptr() != Py_None) {
                ret = _astype_cpp(value, dtype);
            } else {
                ret = py::reinterpret_borrow<py::object>(value);
            }
            if (device.ptr() != Py_None) {
                std::shared_ptr<OpDef> op = Copy::make(device_obj.cast<CompNode>());
                py::object Op = py::cast(op);
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                PyObject* p[2] = {Op.ptr(), ret.ptr()};
                py::tuple copy_ret =
                        py::reinterpret_steal<py::object>(py_apply(NULL, p, 2));
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                return copy_ret[0];
            }
            return ret;
        }
    }
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    size_t ndim = 999;
    if (hasattr(value, "ndim")) {
        ndim = getattr(value, "ndim").cast<size_t>();
        if (ndim != 0 && ndim != 1) {
            throw py::value_error("ndim != 1 or 0, get : " + std::to_string(ndim));
        }
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        if (!is_tensor(value)) {
            return get_res_by_refhdl(value, dtype, device, ref);
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        } else {
            return py::reinterpret_borrow<py::object>(value);
        }
    }
    if (!is_py_sequence(value)) {
        throw py::type_error();
    }
    py::list lis = py::reinterpret_steal<py::list>(PySequence_List(value.ptr()));
    bool need_concat = false;
    for (size_t i = 0; i < lis.size(); ++i) {
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        if (is_tensor(lis[i])) {
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            need_concat = true;
            break;
        }
    }
    if (!need_concat) {
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        return get_res_by_refhdl(value, dtype, device, ref);
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    }
    if (lis.size() > 1) {
        std::vector<PyObject*> c_args(lis.size() + 1);
        for (size_t i = 0; i < lis.size(); ++i) {
            c_args[i] = lis[i].ptr();
        }
        c_args[lis.size()] = Py_None;
        py::tuple inp_tup = py::reinterpret_steal<py::tuple>(
                convert_inputs_cpp(NULL, c_args.data(), c_args.size()));
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        if (device_obj.is_none()) {
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            std::vector<PyObject*> inp(inp_tup.size());
            for (size_t i = 0; i < inp_tup.size(); ++i) {
                inp[i] = inp_tup[i].ptr();
            }
            device_obj = py::cast(_get_device(inp.data(), inp.size()));
        }
        std::shared_ptr<OpDef> op = Concat::make(0, device_obj.cast<CompNode>());
        py::object Op = py::cast(op);
        std::vector<PyObject*> p;
        p.resize(inp_tup.size() + 1);
        p[0] = Op.ptr();
        for (size_t i = 0; i < inp_tup.size(); ++i) {
            p[i + 1] = inp_tup[i].ptr();
        }
        py::tuple concat_ret =
                py::reinterpret_steal<py::object>(py_apply(NULL, p.data(), p.size()));
        ret = concat_ret[0];
    } else {
        ret = lis[0];
    }
    if (dtype.ptr() != Py_None) {
        return _astype_cpp(ret, dtype);
    } else {
        return ret;
    }
}

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py::object _get_index(py::object tensor, py::object src) {
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    if (!TensorWrapper::try_cast(tensor.ptr())) {
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        auto get_const = [&](mgb::DType dtype) -> py::object {
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            return _Const(tensor, py::cast(dtype), src.attr("device"));
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        };
        if (is_bool_list(tensor.ptr()) || is_bool_dtype(tensor.ptr())) {
            tensor = get_const(dtype::Bool());
        } else {
            tensor = get_const(dtype::Int32());
        }
        if (!is_bool_dtype(tensor.ptr())) {
            return tensor;
        }
    } else {
        if (!is_bool_dtype(tensor.ptr())) {
            return tensor;
        }
    }
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    std::shared_ptr<OpDef> op = CondTake::make();
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    py::object Op = py::cast(op);
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    PyObject* p[3] = {Op.ptr(), tensor.ptr(), tensor.ptr()};
    py::tuple ret = py::reinterpret_steal<py::object>(py_apply(NULL, p, 3));
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    return ret[1];
}

py::tuple _try_cond_take(py::handle tensor, py::handle index) {
    if (!hasattr(index, "dtype") || !hasattr(index, "shape")) {
        return py::tuple();
    }
    if (!is_bool_dtype(index.ptr()) ||
        _make_shape_tuple(getattr(index, "shape"))
                .not_equal(_make_shape_tuple(getattr(tensor, "shape")))) {
        return py::tuple();
    }
    py::object iobj;
    if (PyArray_Check(index.ptr())) {
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        iobj = _Const(
                index, py::cast((mgb::DType)dtype::Bool()), getattr(tensor, "device"));
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    } else {
        iobj = py::reinterpret_borrow<py::object>(index);
    }
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    std::shared_ptr<OpDef> op = CondTake::make();
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    py::object Op = py::cast(op);
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    PyObject* p[3] = {Op.ptr(), tensor.ptr(), iobj.ptr()};
    py::tuple ret = py::reinterpret_steal<py::object>(py_apply(NULL, p, 3));
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    return ret;
}

py::tuple _remove_ellipsis(py::object tensor, py::tuple tuple_val) {
    size_t tuple_size = tuple_val.size();
    size_t ndim_sum = 0, cur_sum = 0;
    int pos = -1;
    bool has_unknown_ndim_bool_index = false;
    for (size_t i = 0; i < tuple_size; ++i) {
        py::object handle = tuple_val[i];
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        if (handle.is_none()) {
            continue;
        } else if (handle.ptr() == Py_Ellipsis) {
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            pos = static_cast<int>(i);
            for (size_t j = 0; j < i; ++j) {
                py::object t = tuple_val[j];
                if (t.ptr() == Py_Ellipsis) {
                    throw py::index_error("only one ellipsis is allowed.");
                }
            }
        } else {
            size_t ndim_incr = 1;
            if (hasattr(handle, "dtype") && is_bool_dtype(handle.ptr()) &&
                hasattr(handle, "ndim")) {
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                py::object ndim;
                try {
                    ndim = getattr(handle, "ndim");
                } catch (py::error_already_set& err) {
                    has_unknown_ndim_bool_index = true;
                }
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                if (PyLong_Check(ndim.ptr())) {
                    ndim_incr = PyLong_AsLong(ndim.ptr());
                } else {
                    has_unknown_ndim_bool_index = true;
                }
            }
            cur_sum += ndim_incr;
        }
    }
    if (pos == -1) {
        return tuple_val;
    } else {
        if (has_unknown_ndim_bool_index) {
            throw py::index_error(
                    "does not support bool index with unknown shape when using "
                    "Ellipsis.");
        }
        try {
            ndim_sum = getattr(tensor, "ndim").cast<size_t>();
        } catch (py::error_already_set& err) {
            throw py::index_error(
                    "does not support Ellipsis when tensor's ndim is unknown.");
        }
        py::tuple ret(ndim_sum - cur_sum + tuple_size - 1);
        size_t idx = 0;
        for (size_t i = 0; i < tuple_size; ++i) {
            if (i == pos) {
                for (size_t j = cur_sum; j < ndim_sum; ++j) {
                    ret[idx++] = PySlice_New(NULL, NULL, NULL);
                }
            } else {
                ret[idx++] = tuple_val[i];
            }
        }
        return ret;
    }
}

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py::object _reshape_cpp(py::handle inp_hdl, py::handle args);

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py::tuple _expand_bool_dim(py::object tensor, py::tuple tuple_val) {
    py::tuple cur_shape = _make_shape_tuple(py::handle(getattr(tensor, "shape")));
    py::list new_tuple_val(0);

    size_t offset = 0;
    size_t tdim = 0;
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    size_t nonedim = 0;
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    for (size_t i = 0; i < tuple_val.size(); ++i) {
        py::handle k = tuple_val[i];
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        if (k.ptr() == Py_None) {
            nonedim++;
            new_tuple_val.append(k);
            continue;
        }
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        if (is_bool_dtype(k.ptr())) {
            size_t ndim = getattr(k, "ndim").cast<size_t>();
            if (ndim > 1) {
                py::tuple ishape = _make_shape_tuple(py::handle(getattr(k, "shape")));
                for (size_t j = 0; j < ndim; ++j) {
                    if (cur_shape[tdim + j - offset].cast<size_t>() !=
                        ishape[j].cast<size_t>()) {
                        std::string msg =
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                                "boolean index did not match tensor along "
                                "dimension " +
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                                std::to_string(tdim + j) + "; dimension is " +
                                std::to_string(
                                        cur_shape[tdim + j - offset].cast<size_t>()) +
                                " but corresponding boolean dimension is " +
                                std::to_string(ishape[j].cast<size_t>());
                        throw py::index_error(msg.c_str());
                    }
                }
                py::object new_k = getattr(k, "reshape")(-1);
                py::object kshape = getattr(new_k, "shape");
                py::list new_shape(0);
                PyObject* sym = PyObject_CallObject(cpp_use_symbolic_shape, nullptr);
                bool is_sym = (sym == Py_True);
                Py_XDECREF(sym);
                if (is_sym) {
                    py::object tshape = getattr(tensor, "shape");
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                    for (size_t j = 0; j < i - nonedim; ++j) {
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                        new_shape.append(tshape[py::int_(j)]);
                    }
                    new_shape.append(kshape[py::int_(0)]);
                    for (size_t j = tdim + ndim - offset; j < cur_shape.size(); ++j) {
                        new_shape.append(cur_shape[j]);
                    }
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                    py::object shape_tensor = _astensor1d_cpp(
                            new_shape, py::none(), py::none(), py::none());
                    tensor = _reshape_cpp(tensor, shape_tensor);
                    cur_shape = _make_shape_tuple(shape_tensor);
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                } else {
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                    for (size_t j = 0; j < i - nonedim; ++j) {
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                        new_shape.append(cur_shape[j]);
                    }
                    new_shape.append(py::reinterpret_borrow<py::tuple>(kshape)[0]);
                    for (size_t j = tdim + ndim - offset; j < cur_shape.size(); ++j) {
                        new_shape.append(cur_shape[j]);
                    }
                    cur_shape = new_shape;
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                    tensor = _reshape_cpp(tensor, cur_shape);
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                }
                offset++;
                tdim += ndim;
            }
            new_tuple_val.append(k);
        } else {
            new_tuple_val.append(k);
            tdim++;
        }
    }
    return py::make_tuple(tensor, py::reinterpret_borrow<py::tuple>(new_tuple_val));
}

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std::pair<size_t, bool> get_ndim_safe(py::handle tensor) {
    if (auto p = TensorWrapper::try_cast(tensor.ptr())) {
        return {p->m_tensor->shape()->ndim, true};
    }

    try {
        return {getattr(tensor, "ndim").cast<size_t>(), true};
    } catch (py::error_already_set& err) {
        return {0, false};
    }
}

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py::tuple _unpack_indexes(py::handle inp_hdl, py::handle idx_hdl) {
    py::object inp = py::reinterpret_borrow<py::object>(inp_hdl);
    py::tuple tuple_val;
    if (py::isinstance<py::tuple>(idx_hdl)) {
        tuple_val = py::reinterpret_borrow<py::tuple>(idx_hdl);
    } else {
        tuple_val = py::make_tuple(idx_hdl);
    }

    bool use_subtensor = true;
    bool need_remove_ellipsis = false;
    bool need_expand_bool_dim = false;
    size_t idx_ndim = 0;
    for (size_t i = 0; i < tuple_val.size(); ++i) {
        py::object k = tuple_val[i];
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        if (k.is_none()) {
            continue;
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        } else if (k.ptr() == Py_Ellipsis) {
            need_remove_ellipsis = true;
        } else {
            if (is_bool_dtype(k.ptr()) && hasattr(k, "ndim")) {
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                size_t ndim = get_ndim_safe(k).first;
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                idx_ndim += ndim;
                if (ndim > 1) {
                    need_expand_bool_dim = true;
                }
            } else {
                idx_ndim++;
            }
        }
    }
    try {
        size_t inp_ndim = getattr(inp, "ndim").cast<size_t>();
        if (idx_ndim > inp_ndim) {
            std::string msg = "too many indices for tensor: tensor is " +
                              std::to_string(inp_ndim) + "-dimensional, but " +
                              std::to_string(idx_ndim) + " were indexed";
            throw py::index_error(msg.c_str());
        }
    } catch (py::error_already_set& err) {
        ;  // ignore
    }
    if (need_remove_ellipsis) {
        tuple_val = _remove_ellipsis(inp, tuple_val);
    }

    if (need_expand_bool_dim) {
        py::object shape = getattr(inp, "shape");
        if (shape.ptr() != Py_None) {
            py::tuple ret = _expand_bool_dim(inp, tuple_val);
            inp = ret[0];
            tuple_val = ret[1];
        }
    }

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    std::vector<int32_t> axis;
    for (size_t i = 0; i < tuple_val.size(); ++i) {
        if (tuple_val[i].is_none()) {
            axis.push_back(i);
        }
    }
    if (axis.size()) {
        std::shared_ptr<OpDef> op = AddAxis::make(axis);
        py::object Op = py::cast(op);
        PyObject* p[2] = {Op.ptr(), inp.ptr()};
        py::tuple ret = py::reinterpret_steal<py::object>(py_apply(NULL, p, 2));
        inp = ret[0];
    }

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    py::list items;
    py::list tensors;
    int cur_axis = -1;

    for (size_t i = 0; i < tuple_val.size(); ++i) {
        py::object handle = tuple_val[i];
        cur_axis++;
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        if (handle.is_none()) {
            continue;
        }
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        if (!is_scalar(handle.ptr()) && !PySlice_Check(handle.ptr())) {
            use_subtensor = false;
        }
        py::list item;
        item.append(cur_axis);
        auto push = [&](PyObject* v) {
            if (v == Py_None) {
                item.append(false);
            } else {
                item.append(true);
                tensors.append(_get_index(py::reinterpret_borrow<py::object>(v), inp));
            }
        };

        if (PySlice_Check(handle.ptr())) {
            PySliceObject* s = (PySliceObject*)handle.ptr();
            if (s->start == Py_None && s->stop == Py_None && s->step == Py_None) {
                continue;
            }
            push(s->start);
            push(s->stop);
            push(s->step);
            item.append(false);
        } else {
            for (size_t j = 0; j < 3; j++)
                item.append(false);
            push(handle.ptr());
        }
        items.append(item);
    }

    return py::make_tuple(inp, tensors, items, use_subtensor, need_expand_bool_dim);
}

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py::object _expand_args(py::handle args) {
    if (!PyTuple_Check(args.ptr())) {
        return py::reinterpret_borrow<py::object>(args);
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    }
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    py::tuple args_tup = py::reinterpret_borrow<py::tuple>(args.ptr());
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    if (args_tup.size() == 1 &&
        (PySequence_Check(args_tup[0].ptr()) || is_tensor(args_tup[0].ptr()))) {
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        return py::reinterpret_borrow<py::object>(args_tup[0]);
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    } else {
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        return py::reinterpret_steal<py::list>(PySequence_List(args_tup.ptr()));
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    }
}

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std::tuple<std::vector<int32_t>, bool> tuple2vector(py::object shape) {
    std::vector<int32_t> shp;
    if (!PyTuple_Check(shape.ptr())) {
        return {shp, false};
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    }
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    py::tuple tup = py::reinterpret_borrow<py::tuple>(shape);
    for (size_t i = 0; i < tup.size(); ++i) {
        if (!PyLong_Check(tup[i].ptr())) {
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            shp.clear();
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            return {shp, false};
        } else {
            shp.push_back(tup[i].cast<int32_t>());
        }
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    }
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    return {shp, true};
}

bool enable_fastpath(py::handle inp) {
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    auto&& tm_tr = TransformationManager::get_instance()
                           .segments[TransformationManager::Segment::ModuleTrace];
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    bool is_varnode = PyObject_TypeCheck(inp.ptr(), py_varnode_type);
    if (is_varnode ||
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        TransformationManager::get_instance()
                        .segments[TransformationManager::Segment::Trace]
                        .size() > 0 ||
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        (tm_tr.size() > 0 &&
         reinterpret_cast<ModuleTraceTransformation*>(tm_tr[0].get())->enabled())) {
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        return false;
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    }
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    return true;
}
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py::object _broadcast_cpp(py::handle input, py::handle args) {
    py::object shape = _expand_args(args);
    py::list dims;
    bool all_imm;
    if (PyList_Check(shape.ptr()) || PyTuple_Check(shape.ptr())) {
        dims = py::reinterpret_steal<py::list>(PySequence_List(shape.ptr()));
        mgb_assert(!dims.is_none());
        all_imm = true;
        py::object inp_shape = py::none();
        size_t inp_ndim;
        for (size_t i = 0; i < dims.size(); ++i) {
            py::object dim = dims[i];
            if (dim.is_none()) {
                ptrdiff_t right = (ptrdiff_t)i - dims.size();
                if (inp_shape.is_none()) {
                    inp_shape = input.attr("shape");
                    mgb_assert(!inp_shape.is_none());
                    inp_ndim = py::len(inp_shape);
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                }
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                if ((ptrdiff_t)inp_ndim + right < 0) {
                    throw py::value_error("size connot be `None` for new axis");
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                }
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                dim = inp_shape.attr("__getitem__")(right);
                dims[i] = dim;
            }
            if (py::int_::check_(dim)) {
                if (dim.cast<long>() < 0) {
                    throw py::value_error(ssprintf(
                            "expect shape[%zu] >= 0 or use `None` to auto infer, got "
                            "%s",
                            i, py::repr(dims[i]).cast<std::string>().c_str()));
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                }
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            } else {
                all_imm = false;
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            }
        }
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        shape = dims;
    } else {
        all_imm = false;
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    }
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    bool fastpath = all_imm && enable_fastpath(input);
    if ((!fastpath) && (!is_tensor(shape))) {
        shape = _astensor1d_cpp(
                shape, py::cast((mgb::DType)dtype::Int32()), input.attr("device"),
                input);
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    }
    std::shared_ptr<OpDef> op;
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    SmallVector<PyObject*> p(2);
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    if (fastpath) {
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        std::vector<int32_t> shape_vec;
        for (auto&& dim : dims) {
            shape_vec.push_back(dim.cast<long>());
        }
        op = Broadcast::make(shape_vec);
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    } else {
        op = Broadcast::make();
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        p.push_back(shape.ptr());
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    }
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    py::object py_op = py::cast(op);
    p[0] = py_op.ptr();
    p[1] = input.ptr();
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    py::tuple ret =
            py::reinterpret_steal<py::object>(py_apply(NULL, p.data(), p.size()));
    return ret[0];
}

py::object _reshape_cpp(py::handle inp_hdl, py::handle args) {
    py::object shape_hdl = _expand_args(args);
    py::object shape_tuple;
    try {
        shape_tuple = _make_shape_tuple(shape_hdl);
    } catch (py::error_already_set& err) {
        shape_tuple = py::reinterpret_borrow<py::object>(shape_hdl);
    }
    int32_t unspec_axis = -1;
    if (PyTuple_Check(shape_tuple.ptr())) {
        py::tuple tup = py::reinterpret_borrow<py::tuple>(shape_tuple);
        for (size_t i = 0; i < tup.size(); ++i) {
            py::object obj = py::reinterpret_borrow<py::object>(tup[i]);
            if (obj < py::int_(0)) {
                if (obj.not_equal(py::int_(-1))) {
                    throw py::value_error(
                            "expect shape [" + std::to_string(i) + "] >= -1, got " +
                            repr(obj).cast<std::string>());
                }
                if (unspec_axis >= 0) {
                    throw py::value_error(
                            "multiple -1 in shape: " + std::to_string(unspec_axis) +
                            " & " + std::to_string(i));
                }
                unspec_axis = i;
            }
        }
    }
    auto [shape, fastpath] = tuple2vector(shape_tuple);
    fastpath &= enable_fastpath(inp_hdl);
    std::shared_ptr<OpDef> op;
    std::vector<PyObject*> p;
    py::object shape_tensor;
    if (fastpath) {
        if (unspec_axis >= 0) {
            op = Reshape::make(unspec_axis, shape);
        } else {
            op = Reshape::make(::megdnn::param::OptionalAxisV1::INVALID_AXIS, shape);
        }
        p.resize(2);
    } else {
        shape.clear();
        if (unspec_axis >= 0) {
            op = Reshape::make(unspec_axis, shape);
        } else {
            op = Reshape::make();
        }
        shape_tensor = _astensor1d_cpp(
                shape_hdl, py::cast((mgb::DType)dtype::Int32()),
                getattr(inp_hdl, "device"), inp_hdl);
        p.resize(3);
        p[2] = shape_tensor.ptr();
    }
    py::object Op = py::cast(op);
    p[0] = Op.ptr();
    p[1] = inp_hdl.ptr();
    py::tuple ret =
            py::reinterpret_steal<py::object>(py_apply(NULL, p.data(), p.size()));
    return ret[0];
}

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py::object _adaptive_pool2d_cpp(
        py::handle inp_hdl, py::handle shape_val_hdl, py::handle pool_mode_hdl) {
    py::object shape_hdl = py::reinterpret_borrow<py::object>(shape_val_hdl);
    py::list shps(0);
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    auto mode_string = pool_mode_hdl.cast<std::string>();
    ::megdnn::param::AdaptivePooling::Mode pool_mode =
            ::megdnn::param::AdaptivePooling::Mode::MAX;
    if (mode_string.compare(std::string("AVERAGE")) == 0) {
        pool_mode = ::megdnn::param::AdaptivePooling::Mode::AVERAGE;
    }
    std::shared_ptr<OpDef> op;
    std::vector<PyObject*> p;
    auto pool_format = ::megdnn::param::AdaptivePooling::Format::NCHW;
    auto inp_format = getattr(inp_hdl, "format").cast<std::string>();
    if (inp_format == "nhwc") {
        pool_format = ::megdnn::param::AdaptivePooling::Format::NHWC;
    }
    if (TensorWrapper::try_cast(shape_val_hdl.ptr())) {
        std::vector<int32_t> shp;
        op = AdaptivePooling::make(pool_mode, pool_format, shp);
        py::object Op = py::cast(op);
        p.resize(3);
        p[0] = Op.ptr();
        p[1] = inp_hdl.ptr();
        p[2] = shape_val_hdl.ptr();
        py::tuple ret =
                py::reinterpret_steal<py::object>(py_apply(NULL, p.data(), p.size()));
        return ret[0];
    } else if (!PyTuple_Check(shape_val_hdl.ptr())) {
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        shps.append(PyLong_AsLong(shape_val_hdl.ptr()));
        shps.append(PyLong_AsLong(shape_val_hdl.ptr()));

        shape_hdl = py::reinterpret_borrow<py::object>(shps);
    }
    py::object shape_tuple;
    try {
        shape_tuple = _make_shape_tuple(shape_hdl);
    } catch (py::error_already_set& err) {
        shape_tuple = py::reinterpret_borrow<py::object>(shape_hdl);
    }
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    auto [shape, fastpath] = tuple2vector(shape_tuple);
    fastpath &= enable_fastpath(inp_hdl);
    py::object shape_tensor;
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    op = AdaptivePooling::make(pool_mode, pool_format, shape);
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    if (fastpath) {
        p.resize(2);
    } else {
        p.resize(3);
        shape_tensor = _astensor1d_cpp(
                shape_hdl, py::cast((mgb::DType)dtype::Int32()),
                getattr(inp_hdl, "device"), inp_hdl);
        p[2] = shape_tensor.ptr();
    }
    py::object Op = py::cast(op);
    p[0] = Op.ptr();
    p[1] = inp_hdl.ptr();
    py::tuple ret =
            py::reinterpret_steal<py::object>(py_apply(NULL, p.data(), p.size()));
    return ret[0];
}

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py::object _getitem_cpp(py::handle inp_hdl, py::handle idx_hdl) {
    py::tuple try_res = _try_cond_take(inp_hdl, idx_hdl);
    if (try_res.size() == 2) {
        return try_res[0];
    }
    py::tuple up = _unpack_indexes(inp_hdl, idx_hdl);
    py::object tensor = py::reinterpret_borrow<py::object>(up[0]);
    py::list tensors = py::reinterpret_borrow<py::list>(up[1]);
    py::list py_items = py::reinterpret_borrow<py::list>(up[2]);
    std::vector<std::tuple<int8_t, bool, bool, bool, bool>> cpp_items;
    for (size_t i = 0; i < py_items.size(); ++i) {
        py::list item = py::reinterpret_borrow<py::list>(py_items[i]);
        cpp_items.push_back(
                {item[0].cast<int8_t>(), item[1].cast<bool>(), item[2].cast<bool>(),
                 item[3].cast<bool>(), item[4].cast<bool>()});
    }
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    std::shared_ptr<OpDef> op;
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    if (up[3].cast<bool>()) {
        op = Subtensor::make(cpp_items);
    } else {
        op = IndexingMultiAxisVec::make(cpp_items);
    }
    std::vector<PyObject*> p;
    p.resize(tensors.size() + 2);
    py::object Op = py::cast(op);
    p[0] = Op.ptr();
    p[1] = tensor.ptr();
    for (size_t i = 0; i < tensors.size(); ++i) {
        p[i + 2] = tensors[i].ptr();
    }
    py::tuple ret =
            py::reinterpret_steal<py::object>(py_apply(NULL, p.data(), p.size()));
    return ret[0];
}

py::object _setitem_cpp(py::handle inp_hdl, py::handle idx_hdl, py::handle val_hdl) {
    py::object org_shape = getattr(inp_hdl, "shape");
    py::object val = py::reinterpret_borrow<py::object>(val_hdl);
1154 1155
    if (!TensorWrapper::try_cast(val.ptr())) {
        val = _Const(val_hdl, getattr(inp_hdl, "dtype"), getattr(inp_hdl, "device"));
1156 1157 1158 1159 1160 1161 1162 1163 1164 1165 1166 1167 1168
    }

    py::tuple up = _unpack_indexes(inp_hdl, idx_hdl);
    py::object tensor = py::reinterpret_borrow<py::object>(up[0]);
    py::list tensors = py::reinterpret_borrow<py::list>(up[1]);
    py::list py_items = py::reinterpret_borrow<py::list>(up[2]);
    std::vector<std::tuple<int8_t, bool, bool, bool, bool>> cpp_items;
    for (size_t i = 0; i < py_items.size(); ++i) {
        py::list item = py::reinterpret_borrow<py::list>(py_items[i]);
        cpp_items.push_back(
                {item[0].cast<int8_t>(), item[1].cast<bool>(), item[2].cast<bool>(),
                 item[3].cast<bool>(), item[4].cast<bool>()});
    }
1169
    std::shared_ptr<OpDef> op, set_op;
1170 1171 1172 1173 1174 1175 1176 1177 1178 1179 1180 1181 1182 1183 1184 1185 1186 1187 1188 1189 1190 1191
    if (up[3].cast<bool>()) {
        op = Subtensor::make(cpp_items);
    } else {
        op = IndexingMultiAxisVec::make(cpp_items);
    }
    std::vector<PyObject*> p;
    p.resize(tensors.size() + 2);
    py::object Op = py::cast(op);
    p[0] = Op.ptr();
    p[1] = tensor.ptr();
    for (size_t i = 0; i < tensors.size(); ++i) {
        p[i + 2] = tensors[i].ptr();
    }
    py::tuple ret =
            py::reinterpret_steal<py::object>(py_apply(NULL, p.data(), p.size()));
    py::object tmp_result = ret[0];

    try {
        py::tuple value_shape =
                py::reinterpret_borrow<py::tuple>(val.attr("_tuple_shape"));
        py::tuple tmp_result_shape =
                py::reinterpret_borrow<py::tuple>(tmp_result.attr("_tuple_shape"));
1192 1193 1194 1195 1196 1197 1198 1199 1200 1201 1202 1203 1204 1205 1206 1207 1208 1209 1210 1211 1212 1213 1214 1215
        for (size_t i = 0; i < value_shape.size() && i < tmp_result_shape.size(); ++i) {
            size_t vs = value_shape[value_shape.size() - i - 1].cast<size_t>();
            size_t ts =
                    tmp_result_shape[tmp_result_shape.size() - i - 1].cast<size_t>();
            if (vs != 1 && vs != ts) {
                std::string lhs = "", rhs = "";
                for (size_t j = 0; j < tmp_result_shape.size(); ++j) {
                    lhs += std::to_string(tmp_result_shape[j].cast<size_t>());
                    if (j)
                        lhs += ",";
                }
                for (size_t j = 0; j < value_shape.size(); ++j) {
                    rhs += std::to_string(value_shape[j].cast<size_t>());
                    if (j)
                        rhs += ",";
                }
                throw py::value_error(
                        "cannot copy tensor with shape (" + rhs +
                        ") to subtensor with shape (" + lhs + ")");
            }
        }
    } catch (py::error_already_set& err) {
        ;
    }
1216
    val = _broadcast_cpp(val, getattr(tmp_result, "shape"));
1217 1218 1219 1220 1221 1222 1223 1224 1225 1226 1227 1228 1229 1230 1231 1232 1233 1234 1235 1236
    if (up[3].cast<bool>()) {
        set_op = SetSubtensor::make(cpp_items);
    } else {
        set_op = IndexingSetMultiAxisVec::make(cpp_items);
    }

    std::vector<PyObject*> q;
    q.resize(tensors.size() + 3);
    py::object Set_Op = py::cast(set_op);
    q[0] = Set_Op.ptr();
    q[1] = tensor.ptr();
    q[2] = val.ptr();
    for (size_t i = 0; i < tensors.size(); ++i) {
        q[i + 3] = tensors[i].ptr();
    }
    py::tuple result =
            py::reinterpret_steal<py::object>(py_apply(NULL, q.data(), q.size()));
    py::object res = result[0];

    if (up[4].cast<bool>()) {
1237
        res = _reshape_cpp(res, org_shape);
1238 1239 1240 1241 1242
    }

    return res;
}

1243 1244 1245 1246 1247 1248 1249 1250 1251 1252 1253 1254 1255 1256 1257 1258 1259 1260 1261 1262 1263 1264 1265 1266 1267 1268 1269 1270 1271 1272 1273 1274 1275 1276 1277 1278
py::object _split_cpp(
        py::handle inp_hdl, py::handle nsplits_or_sections_hdl, py::handle axis_hdl) {
    py::object shape_obj = getattr(inp_hdl, "shape");
    py::object n_total = shape_obj[axis_hdl];
    int ndim = shape_obj.attr("__len__")().cast<int>();
    int axis = axis_hdl.cast<int>();
    if (axis >= ndim) {
        throw py::value_error("Invalid axis " + std::to_string(axis));
    }
    int n_sections;
    bool is_array;
    if (is_py_sequence(nsplits_or_sections_hdl)) {
        n_sections = PySequence_Length(nsplits_or_sections_hdl.ptr()) + 1;
        is_array = true;
    } else {
        n_sections = getattr(nsplits_or_sections_hdl, "__int__")().cast<int>();
        is_array = false;
    }
    py::list partitions;
    std::shared_ptr<OpDef> op;
    std::vector<PyObject*> p;
    if (is_array) {
        py::list div_points;
        py::list sections = py::reinterpret_borrow<py::object>(nsplits_or_sections_hdl);
        div_points.append(0);
        for (size_t i = 0; i < sections.size(); ++i) {
            div_points.append(sections[i]);
        }
        div_points.append(n_total);
        for (size_t i = 1; i < div_points.size(); ++i) {
            if (div_points[i - 1] > div_points[i]) {
                throw py::value_error(
                        "Invalid nsplits_or_secions: " +
                        repr(nsplits_or_sections_hdl).cast<std::string>());
            }
            py::object pos = div_points[i] - div_points[i - 1];
1279
            if (is_tensor(pos)) {
1280 1281 1282 1283
                partitions.append(pos);
            } else {
                partitions.append(
                        _Const(pos, py::cast((mgb::DType)dtype::Int32()),
1284
                               getattr(inp_hdl, "device")));
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            }
        }
        op = Split::make(axis, 0);
        p.resize(partitions.size() + 2);
        for (size_t i = 0; i < partitions.size(); ++i) {
            p[i + 2] = partitions[i].ptr();
        }
    } else {
        if (n_sections <= 0) {
            throw py::value_error("Number sections must be larger than 0");
        }
        if (py::int_(n_sections) > n_total) {
            throw py::value_error(
                    "The size " + repr(n_total).cast<std::string>() + " at dim " +
                    std::to_string(axis) + " cannot be split into " +
                    std::to_string(n_sections) + " sections");
        }
        op = Split::make(axis, n_sections);
        p.resize(2);
    }
    py::object Op = py::cast(op);
    p[0] = Op.ptr();
    p[1] = inp_hdl.ptr();
    return py::reinterpret_steal<py::object>(py_apply(NULL, p.data(), p.size()));
}

1311
std::vector<int32_t> list2vector(py::handle li) {
1312
    std::vector<int32_t> axis;
1313
    if (is_py_sequence(li)) {
1314
        py::list tmp_list = py::reinterpret_steal<py::list>(PySequence_List(li.ptr()));
1315 1316 1317 1318
        for (size_t i = 0; i < tmp_list.size(); ++i) {
            axis.push_back(tmp_list[i].attr("__int__")().cast<int32_t>());
        }
    } else {
1319
        axis.push_back(getattr(li, "__int__")().cast<int32_t>());
1320
    }
1321 1322 1323 1324 1325
    return axis;
}

py::object _expand_dims_cpp(py::handle inp_hdl, py::handle axis_hdl) {
    std::vector<int32_t> axis = list2vector(axis_hdl);
1326 1327 1328 1329 1330 1331 1332 1333 1334
    bool unknown_ndim = true;
    size_t ndim = axis.size();
    if (auto p = TensorWrapper::try_cast(inp_hdl.ptr())) {
        auto&& shape = p->m_tensor->shape();
        if (shape) {
            unknown_ndim = false;
            ndim += shape->ndim;
        }
    } else {
1335 1336
        auto&& inp_ndim = get_ndim_safe(inp_hdl);
        ndim += inp_ndim.first;
1337
        unknown_ndim &= !inp_ndim.second;
1338 1339 1340 1341 1342 1343 1344 1345
    }
    for (size_t i = 0; i < axis.size(); ++i) {
        if (axis[i] < 0) {
            if (unknown_ndim) {
                throw py::index_error(
                        "Does not support negative index when tensor's ndim is "
                        "unknown");
            }
1346
            axis[i] += static_cast<int32_t>(ndim);
1347 1348 1349 1350 1351 1352 1353 1354
        }
    }
    if (!axis.size()) {
        throw py::index_error("axis could not be empty");
    }
    std::sort(axis.begin(), axis.end());
    std::shared_ptr<OpDef> op = AddAxis::make(axis = axis);
    py::object Op = py::cast(op);
1355 1356
    PyObject* p[2] = {Op.ptr(), inp_hdl.ptr()};
    py::tuple ret = py::reinterpret_steal<py::object>(py_apply(NULL, p, 2));
1357 1358 1359
    return ret[0];
}

1360 1361 1362 1363 1364 1365 1366 1367 1368 1369 1370 1371 1372 1373 1374 1375 1376 1377 1378
py::object _squeeze_cpp(py::handle inp_hdl, py::handle axis_hdl) {
    std::vector<int32_t> axis;
    size_t ndim;
    if (axis_hdl.ptr() != Py_None) {
        axis = list2vector(axis_hdl);
    }
    if (auto p = TensorWrapper::try_cast(inp_hdl.ptr())) {
        auto&& shape = p->m_tensor->shape();
        if (shape) {
            ndim = shape->ndim;
            if (axis_hdl.ptr() == Py_None) {
                for (size_t i = 0; i < shape->ndim; ++i) {
                    if (shape->shape[i] == 1) {
                        axis.push_back(i);
                    }
                }
            }
        }
    } else {
1379 1380 1381 1382 1383 1384 1385
        py::tuple shape =
                py::reinterpret_borrow<py::tuple>(getattr(inp_hdl, "_tuple_shape"));
        ndim = shape.size();
        if (axis_hdl.ptr() == Py_None) {
            for (size_t i = 0; i < shape.size(); ++i) {
                if (shape[i].cast<size_t>() == 1) {
                    axis.push_back(i);
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                }
            }
        }
    }
    for (size_t i = 0; i < axis.size(); ++i) {
        if (axis[i] < 0) {
            axis[i] += static_cast<int32_t>(ndim);
        }
    }
    std::sort(axis.begin(), axis.end());
    for (size_t i = 0; i < axis.size(); ++i) {
        axis[i] -= static_cast<int32_t>(i);
    }
    std::shared_ptr<OpDef> op = RemoveAxis::make(axis = axis);
    py::object Op = py::cast(op);
1401 1402
    PyObject* p[2] = {Op.ptr(), inp_hdl.ptr()};
    py::tuple ret = py::reinterpret_steal<py::object>(py_apply(NULL, p, 2));
1403 1404
    return ret[0];
}
1405

1406 1407 1408
py::object _transpose_cpp(py::handle inp_hdl, py::handle args) {
    py::object obj = _expand_args(args);
    py::list lis;
1409
    if (!is_tensor(obj.ptr()) && PySequence_Check(obj.ptr())) {
1410 1411 1412 1413 1414 1415 1416 1417 1418
        lis = py::reinterpret_steal<py::list>(PySequence_List(obj.ptr()));
    } else {
        py::object np = getattr(obj, "numpy")();
        PyArrayObject* arr = (PyArrayObject*)np.ptr();
        PyObject* maybe_list = PyArray_ToList(arr);
        if (PyList_Check(maybe_list)) {
            lis = py::reinterpret_steal<py::list>(maybe_list);
        }
    }
1419
    if (get_ndim_safe(inp_hdl).first == 0) {
1420
        if (lis.size() != 0) {
1421 1422 1423 1424 1425 1426
            throw py::index_error(
                    "transpose for scalar does not accept additional args");
        }
        return getattr(inp_hdl, "to")(getattr(inp_hdl, "device"));
    }
    std::vector<int32_t> pattern;
1427
    if (!lis.size()) {
1428 1429 1430 1431 1432 1433 1434 1435 1436 1437 1438 1439 1440 1441 1442 1443 1444
        size_t ndim = getattr(inp_hdl, "ndim").cast<size_t>();
        for (size_t i = 0; i < ndim; ++i) {
            pattern.push_back(ndim - i - 1);
        }
    } else {
        for (size_t i = 0; i < lis.size(); ++i) {
            if (PyLong_Check(lis[i].ptr())) {
                pattern.push_back(lis[i].cast<int32_t>());
            } else {
                if (lis[i].cast<std::string>() == "x") {
                    pattern.push_back(-1);
                }
            }
        }
    }
    std::shared_ptr<OpDef> op = Dimshuffle::make(pattern);
    py::object Op = py::cast(op);
1445 1446
    PyObject* p[2] = {Op.ptr(), inp_hdl.ptr()};
    py::tuple ret = py::reinterpret_steal<py::object>(py_apply(NULL, p, 2));
1447 1448 1449
    return ret[0];
}

1450 1451 1452
py::object _matmul_cpp(
        py::handle inp1, py::handle inp2, py::handle dim1, py::handle dim2,
        py::handle transpose_a, py::handle transpose_b, py::handle compute_mode,
1453
        py::handle profile, py::handle deterministic) {
1454 1455 1456 1457 1458 1459 1460 1461 1462
    ::megdnn::param::MatrixMul::ComputeMode mode =
            ::megdnn::param::MatrixMul::ComputeMode::DEFAULT;
    if (compute_mode.cast<std::string>().compare(std::string("float32")) == 0) {
        mode = ::megdnn::param::MatrixMul::ComputeMode::FLOAT32;
    }
    ::megdnn::param::ExecutionPolicy::Strategy cstrategy =
            static_cast<::megdnn::param::ExecutionPolicy::Strategy>(0);
    if (profile.cast<bool>()) {
        cstrategy |= ::megdnn::param::ExecutionPolicy::Strategy::PROFILE;
1463
    } else {
1464
        cstrategy |= ::megdnn::param::ExecutionPolicy::Strategy::HEURISTIC;
1465
    }
1466
    if (deterministic.cast<bool>()) {
1467 1468 1469 1470 1471 1472 1473 1474 1475 1476 1477
        cstrategy |= ::megdnn::param::ExecutionPolicy::Strategy::REPRODUCIBLE;
    }
    std::shared_ptr<OpDef> op = MatrixMul::make(
            transpose_a.cast<bool>(), transpose_b.cast<bool>(), mode,
            ::megdnn::param::MatrixMul::Format::DEFAULT, cstrategy, UINT64_MAX,
            dim1.cast<uint32_t>(), dim2.cast<uint32_t>());

    py::object Op = py::cast(op);
    PyObject* p[3] = {Op.ptr(), inp1.ptr(), inp2.ptr()};
    py::tuple ret = py::reinterpret_steal<py::object>(py_apply(NULL, p, 3));
    return ret[0];
1478 1479 1480 1481 1482
}

py::object _batched_matmul_cpp(
        py::handle inp1, py::handle inp2, py::handle dim1, py::handle dim2,
        py::handle transpose_a, py::handle transpose_b, py::handle compute_mode,
1483
        py::handle profile, py::handle deterministic) {
1484 1485 1486 1487 1488 1489 1490 1491 1492
    ::megdnn::param::MatrixMul::ComputeMode mode =
            ::megdnn::param::MatrixMul::ComputeMode::DEFAULT;
    if (compute_mode.cast<std::string>().compare(std::string("float32")) == 0) {
        mode = ::megdnn::param::MatrixMul::ComputeMode::FLOAT32;
    }
    ::megdnn::param::ExecutionPolicy::Strategy cstrategy =
            static_cast<::megdnn::param::ExecutionPolicy::Strategy>(0);
    if (profile.cast<bool>()) {
        cstrategy |= ::megdnn::param::ExecutionPolicy::Strategy::PROFILE;
1493
    } else {
1494
        cstrategy |= ::megdnn::param::ExecutionPolicy::Strategy::HEURISTIC;
1495
    }
1496
    if (deterministic.cast<bool>()) {
1497 1498 1499 1500 1501 1502 1503 1504 1505 1506 1507
        cstrategy |= ::megdnn::param::ExecutionPolicy::Strategy::REPRODUCIBLE;
    }
    std::shared_ptr<OpDef> op = BatchedMatrixMul::make(
            transpose_a.cast<bool>(), transpose_b.cast<bool>(), mode,
            ::megdnn::param::MatrixMul::Format::DEFAULT, cstrategy, UINT64_MAX,
            dim1.cast<uint32_t>(), dim2.cast<uint32_t>());

    py::object Op = py::cast(op);
    PyObject* p[3] = {Op.ptr(), inp1.ptr(), inp2.ptr()};
    py::tuple ret = py::reinterpret_steal<py::object>(py_apply(NULL, p, 3));
    return ret[0];
1508 1509
}

1510 1511 1512 1513 1514 1515 1516 1517 1518 1519 1520 1521 1522
py::object _pixel_shuffle_cpp(py::handle inp, py::handle val, py::handle func) {
    if (enable_fastpath(inp) && PyLong_Check(val.ptr())) {
        std::shared_ptr<OpDef> op = PixelShuffle::make(val.cast<int32_t>());
        py::object Op = py::cast(op);
        PyObject* p[2] = {Op.ptr(), inp.ptr()};
        py::tuple ret = py::reinterpret_steal<py::object>(py_apply(NULL, p, 2));
        return ret[0];
    } else {
        // fallback to traceable subgraph implement
        return func(inp, val);
    }
}

1523 1524
PyObject* make_shape_tuple(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1525
        return _make_shape_tuple(args[0]).release().ptr();
1526 1527 1528 1529 1530 1531
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

PyObject* getitem_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1532
        return _getitem_cpp(args[0], args[1]).release().ptr();
1533 1534 1535 1536 1537 1538
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

PyObject* setitem_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1539
        return _setitem_cpp(args[0], args[1], args[2]).release().ptr();
1540 1541 1542 1543
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1544 1545
PyObject* split_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1546
        return _split_cpp(args[0], args[1], args[2]).release().ptr();
1547 1548 1549 1550
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1551 1552
PyObject* expand_dims_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1553
        return _expand_dims_cpp(args[0], args[1]).release().ptr();
1554 1555 1556 1557
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1558 1559
PyObject* squeeze_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1560
        return _squeeze_cpp(args[0], args[1]).release().ptr();
1561 1562 1563 1564
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1565 1566
PyObject* transpose_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1567
        return _transpose_cpp(args[0], args[1]).release().ptr();
1568 1569 1570 1571
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1572 1573
PyObject* broadcast_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1574
        return _broadcast_cpp(args[0], args[1]).release().ptr();
1575 1576 1577 1578 1579 1580
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

PyObject* reshape_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1581
        return _reshape_cpp(args[0], args[1]).release().ptr();
1582 1583 1584 1585
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1586 1587 1588 1589 1590 1591 1592
PyObject* adaptive_pool2d_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
        return _adaptive_pool2d_cpp(args[0], args[1], args[2]).release().ptr();
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1593 1594 1595 1596 1597 1598 1599
PyObject* pixel_shuffle_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
        return _pixel_shuffle_cpp(args[0], args[1], args[2]).release().ptr();
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1600 1601
PyObject* Const(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1602
        return _Const(args[0], args[1], args[2]).release().ptr();
1603 1604 1605 1606
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1607 1608
PyObject* astype_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1609
        return _astype_cpp(args[0], args[1]).release().ptr();
1610 1611 1612 1613
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1614 1615 1616 1617
PyObject* matmul_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
        return _matmul_cpp(
                       args[0], args[1], args[2], args[3], args[4], args[5], args[6],
1618
                       args[7], args[8])
1619 1620 1621 1622 1623 1624 1625 1626 1627 1628
                .release()
                .ptr();
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

PyObject* batched_matmul_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
        return _batched_matmul_cpp(
                       args[0], args[1], args[2], args[3], args[4], args[5], args[6],
1629
                       args[7], args[8])
1630 1631 1632 1633 1634 1635
                .release()
                .ptr();
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1636 1637 1638
PyObject* convert_single_value_cpp(
        PyObject* self, PyObject* const* args, size_t nargs) {
    try {
1639
        return _convert_single_value_cpp(args[0], args[1], args[2]).release().ptr();
1640 1641 1642 1643 1644 1645 1646 1647 1648 1649 1650 1651 1652 1653 1654 1655 1656 1657 1658 1659
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

PyObject* convert_inputs_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
        py::object dtype = py::reinterpret_steal<py::object>(
                dtype_promotion(self, args, nargs - 1));
        py::object device;
        if (args[nargs - 1] == Py_None) {
            device = py::reinterpret_steal<py::object>(
                    get_device(self, args, nargs - 1));
        } else {
            device = py::reinterpret_borrow<py::object>(args[nargs - 1]);
        }
        return _convert_inputs_cpp(args, nargs - 1, dtype, device).release().ptr();
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1660 1661 1662 1663 1664 1665 1666
PyObject* astensor1d_cpp(PyObject* self, PyObject* const* args, size_t nargs) {
    try {
        return _astensor1d_cpp(args[0], args[1], args[2], args[3]).release().ptr();
    }
    PYEXT17_TRANSLATE_EXC_RET(nullptr)
}

1667
}  // namespace mgb::imperative::python