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TensorsData.cs
executable file
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/
TensorsData.cs
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/*
* Copyright (c) 2019 Samsung Electronics Co., Ltd. All Rights Reserved.
*
* Licensed under the Apache License, Version 2.0 (the License);
* you may not use this file except in compliance with the License.
* You may obtain a copy of the License at
*
* http://www.apache.org/licenses/LICENSE-2.0
*
* Unless required by applicable law or agreed to in writing, software
* distributed under the License is distributed on an AS IS BASIS,
* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
* See the License for the specific language governing permissions and
* limitations under the License.
*/
using System;
using System.Collections;
namespace Tizen.MachineLearning.Inference
{
/// <summary>
/// The TensorsData class sets and gets the buffer data for each Tensor.
/// </summary>
/// <since_tizen> 6 </since_tizen>
public class TensorsData : IDisposable
{
private IntPtr _handle = IntPtr.Zero;
private bool _disposed = false;
private TensorsInfo _tensorsInfo = null;
private ArrayList _dataList = null;
/// <summary>
/// Creates a TensorsData instance with handle which is given by TensorsInfo.
/// </summary>
/// <param name="handle">The handle of tensors data.</param>
/// <param name="info">The handle of tensors info.</param>
/// <param name="isFetch">The boolean value for fetching the data (Default: false)</param>
/// <param name="hasOwnership">The boolean value for automatic disposal (Default: true)</param>
/// <since_tizen> 6 </since_tizen>
private TensorsData(IntPtr handle, TensorsInfo info, bool isFetch = false, bool hasOwnership = true)
{
NNStreamer.CheckNNStreamerSupport();
NNStreamerError ret = NNStreamerError.None;
/* Set internal object */
_handle = handle;
/* Because developers can change the TensorsInfo object, it should be stored as a deep-copied instance. */
_tensorsInfo = info.Clone();
/* Set count */
int count = 0;
ret = Interop.Util.GetTensorsCount(_tensorsInfo.GetTensorsInfoHandle(), out count);
NNStreamer.CheckException(ret, "unable to get the count of TensorsData");
_dataList = new ArrayList(count);
if (isFetch)
{
for (int i = 0; i < count; ++i)
{
IntPtr raw_data;
byte[] bufData = null;
int size;
ret = Interop.Util.GetTensorData(_handle, i, out raw_data, out size);
NNStreamer.CheckException(ret, "unable to get the buffer of TensorsData: " + i.ToString());
bufData = Interop.Util.IntPtrToByteArray(raw_data, size);
_dataList.Add(bufData);
}
}
else
{
for (int i = 0; i < count; ++i)
{
int size = info.GetTensorSize(i);
byte[] bufData = new byte[size];
_dataList.Add(bufData);
}
}
/* If it created as DataReceivedEventArgs, do not dispose. */
_disposed = !hasOwnership;
}
/// <summary>
/// Destructor of the TensorsData instance
/// </summary>
/// <since_tizen> 6 </since_tizen>
~TensorsData()
{
Dispose(false);
}
/// <summary>
/// Gets the number of Tensor in TensorsData class
/// </summary>
/// <feature>http://tizen.org/feature/machine_learning.inference</feature>
/// <exception cref="NotSupportedException">Thrown when the feature is not supported.</exception>
/// <since_tizen> 6 </since_tizen>
public int Count
{
get {
NNStreamer.CheckNNStreamerSupport();
return _dataList.Count;
}
}
/// <summary>
/// Gets the tensors information.
/// </summary>
/// <returns>The TensorsInfo instance</returns>
/// <feature>http://tizen.org/feature/machine_learning.inference</feature>
/// <exception cref="NotSupportedException">Thrown when the feature is not supported.</exception>
/// <since_tizen> 8 </since_tizen>
public TensorsInfo TensorsInfo
{
get {
NNStreamer.CheckNNStreamerSupport();
return _tensorsInfo;
}
}
/// <summary>
/// Allocates a new TensorsData instance with the given tensors information.
/// </summary>
/// <param name="info">TensorsInfo object which has Tensor information</param>
/// <returns>The TensorsInfo instance</returns>
/// <exception cref="ArgumentException">Thrown when the method failed due to an invalid parameter.</exception>
/// <exception cref="NotSupportedException">Thrown when the feature is not supported.</exception>
/// <since_tizen> 8 </since_tizen>
public static TensorsData Allocate(TensorsInfo info)
{
NNStreamer.CheckNNStreamerSupport();
if (info == null)
throw NNStreamerExceptionFactory.CreateException(NNStreamerError.InvalidParameter, "TensorsInfo is null");
TensorsData retData = info.GetTensorsData();
return retData;
}
/// <summary>
/// Sets a tensor data to given index.
/// </summary>
/// <param name="index">The index of the tensor.</param>
/// <param name="buffer">Raw tensor data to be set.</param>
/// <feature>http://tizen.org/feature/machine_learning.inference</feature>
/// <exception cref="NotSupportedException">Thrown when the feature is not supported.</exception>
/// <exception cref="ArgumentException">Thrown when the data is not valid.</exception>
/// <since_tizen> 6 </since_tizen>
public void SetTensorData(int index, byte[] buffer)
{
NNStreamer.CheckNNStreamerSupport();
CheckIndex(index);
CheckDataBuffer(index, buffer);
_dataList[index] = buffer;
}
/// <summary>
/// Gets a tensor data to given index.
/// </summary>
/// <param name="index">The index of the tensor.</param>
/// <returns>Raw tensor data</returns>
/// <feature>http://tizen.org/feature/machine_learning.inference</feature>
/// <exception cref="ArgumentException">Thrown when the method failed due to an invalid parameter.</exception>
/// <exception cref="NotSupportedException">Thrown when the feature is not supported.</exception>
/// <since_tizen> 6 </since_tizen>
public byte[] GetTensorData(int index)
{
NNStreamer.CheckNNStreamerSupport();
CheckIndex(index);
return (byte[])_dataList[index];
}
/// <summary>
/// Releases any unmanaged resources used by this object.
/// </summary>
/// <since_tizen> 6 </since_tizen>
public void Dispose()
{
Dispose(true);
GC.SuppressFinalize(this);
}
/// <summary>
/// Releases any unmanaged resources used by this object. Can also dispose any other disposable objects.
/// </summary>
/// <param name="disposing">If true, disposes any disposable objects. If false, does not dispose disposable objects.</param>
protected virtual void Dispose(bool disposing)
{
if (_disposed)
return;
if (disposing)
{
// release managed object
_tensorsInfo.Dispose();
_tensorsInfo = null;
}
// release unmanaged objects
if (_handle != IntPtr.Zero)
{
NNStreamerError ret = Interop.Util.DestroyTensorsData(_handle);
if (ret != NNStreamerError.None)
{
Log.Error(NNStreamer.TAG, "failed to destroy TensorsData object");
}
_handle = IntPtr.Zero;
}
_disposed = true;
}
internal IntPtr GetHandle()
{
return _handle;
}
internal void PrepareInvoke()
{
NNStreamerError ret = NNStreamerError.None;
int count = _dataList.Count;
for (int i = 0; i < count; ++i)
{
byte[] data = (byte[])_dataList[i];
ret = Interop.Util.SetTensorData(_handle, i, data, data.Length);
NNStreamer.CheckException(ret, "unable to set the buffer of TensorsData: " + i.ToString());
}
}
internal static TensorsData CreateFromNativeHandle(IntPtr dataHandle, IntPtr infoHandle, bool isFetch = false, bool hasOwnership = true)
{
TensorsInfo info = null;
if (infoHandle != IntPtr.Zero)
{
info = TensorsInfo.ConvertTensorsInfoFromHandle(infoHandle);
}
return new TensorsData(dataHandle, info, isFetch, hasOwnership);
}
private void CheckIndex(int index)
{
if (index < 0 || index >= _dataList.Count)
{
string msg = "Invalid index [" + index + "] of the tensors";
throw NNStreamerExceptionFactory.CreateException(NNStreamerError.InvalidParameter, msg);
}
}
private void CheckDataBuffer(int index, byte[] data)
{
if (data == null)
{
string msg = "data is not valid";
throw NNStreamerExceptionFactory.CreateException(NNStreamerError.InvalidParameter, msg);
}
if (index >= Tensor.SizeLimit)
{
string msg = "Max size of the tensors is " + Tensor.SizeLimit;
throw NNStreamerExceptionFactory.CreateException(NNStreamerError.QuotaExceeded, msg);
}
if (_tensorsInfo != null)
{
if (index >= _tensorsInfo.Count)
{
string msg = "Current information has " + _tensorsInfo.Count + " tensors";
throw NNStreamerExceptionFactory.CreateException(NNStreamerError.QuotaExceeded, msg);
}
int size = _tensorsInfo.GetTensorSize(index);
if (data.Length != size)
{
string msg = "Invalid buffer size, required size is " + size.ToString();
throw NNStreamerExceptionFactory.CreateException(NNStreamerError.InvalidParameter, msg);
}
}
}
}
}