From c34594d4bab93560d7e7a2ae9e98ce177401b712 Mon Sep 17 00:00:00 2001 From: Giacomo Date: Fri, 9 Jan 2026 13:51:19 +0000 Subject: [PATCH 1/3] [update] bug fixing --- Cifar10/config.py | 2 +- ImageNet2012/config.py | 2 +- 2 files changed, 2 insertions(+), 2 deletions(-) diff --git a/Cifar10/config.py b/Cifar10/config.py index 44f5fa0..ec76a5f 100644 --- a/Cifar10/config.py +++ b/Cifar10/config.py @@ -1,7 +1,7 @@ # !NOTE: constants MUST be in uppercase to be recognized by the codebase # slice of images to evaluate the models on -N_IMAGES_SLICE = 2000 +N_IMAGES_SLICE = slice(0, 2000) # quantized models top-1 accuracies on quantized Cifar-10 output file path MODELS_ACCURACY_PATH = './datasets_data/_models_evaluation_stats.txt' diff --git a/ImageNet2012/config.py b/ImageNet2012/config.py index 05f2331..a5972c2 100644 --- a/ImageNet2012/config.py +++ b/ImageNet2012/config.py @@ -1,7 +1,7 @@ # !NOTE: constants MUST be in uppercase to be recognized by the codebase # slice of images to evaluate the models on -N_IMAGES_SLICE = 2000 +N_IMAGES_SLICE = slice(0, 2000) # quantized models top-1 accuracies on quantized Imagenet2012 output file path MODELS_ACCURACY_PATH = './datasets_data/_models_evaluation_stats.txt' From 7d028f1112385287bcf554acb440d6387da1752c Mon Sep 17 00:00:00 2001 From: Giacomo Date: Fri, 16 Jan 2026 15:57:02 +0000 Subject: [PATCH 2/3] [add] inceptionV3 x Cifar10 --- Cifar10/CNN/inceptionV3.ipynb | 1267 +++++++++++++++++++++++++++ Cifar10/cifar10_preprocessing.ipynb | 210 ++++- Cifar10/config.py | 28 + download_models.sh | 6 +- 4 files changed, 1493 insertions(+), 18 deletions(-) create mode 100644 Cifar10/CNN/inceptionV3.ipynb diff --git a/Cifar10/CNN/inceptionV3.ipynb b/Cifar10/CNN/inceptionV3.ipynb new file mode 100644 index 0000000..8e1ab3d --- /dev/null +++ b/Cifar10/CNN/inceptionV3.ipynb @@ -0,0 +1,1267 @@ +{ + "cells": [ + { + "cell_type": "code", + "execution_count": 1, + "metadata": {}, + "outputs": [ + { + "name": "stderr", + "output_type": "stream", + "text": [ + "2026-01-16 15:08:36.057581: I tensorflow/core/util/port.cc:153] oneDNN custom operations are on. You may see slightly different numerical results due to floating-point round-off errors from different computation orders. To turn them off, set the environment variable `TF_ENABLE_ONEDNN_OPTS=0`.\n", + "2026-01-16 15:08:36.064430: E external/local_xla/xla/stream_executor/cuda/cuda_fft.cc:477] Unable to register cuFFT factory: Attempting to register factory for plugin cuFFT when one has already been registered\n", + "WARNING: All log messages before absl::InitializeLog() is called are written to STDERR\n", + "E0000 00:00:1768576116.072146 1841543 cuda_dnn.cc:8310] Unable to register cuDNN factory: Attempting to register factory for plugin cuDNN when one has already been registered\n", + "E0000 00:00:1768576116.074432 1841543 cuda_blas.cc:1418] Unable to register cuBLAS factory: Attempting to register factory for plugin cuBLAS when one has already been registered\n", + "2026-01-16 15:08:36.082414: I tensorflow/core/platform/cpu_feature_guard.cc:210] This TensorFlow binary is optimized to use available CPU instructions in performance-critical operations.\n", + "To enable the following instructions: AVX2 AVX_VNNI FMA, in other operations, rebuild TensorFlow with the appropriate compiler flags.\n" + ] + } + ], + "source": [ + "import tensorflow as tf\n", + "import keras\n", + "import os" + ] + }, + { + "cell_type": "code", + "execution_count": 2, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "[PhysicalDevice(name='/physical_device:GPU:0', device_type='GPU'), PhysicalDevice(name='/physical_device:GPU:1', device_type='GPU')]\n", + "2 Physical GPUs, 1 Logical GPUs\n" + ] + }, + { + "name": "stderr", + "output_type": "stream", + "text": [ + "I0000 00:00:1768576118.216380 1841543 gpu_device.cc:2022] Created device /job:localhost/replica:0/task:0/device:GPU:0 with 14240 MB memory: -> device: 0, name: NVIDIA RTX A4000, pci bus id: 0000:01:00.0, compute capability: 8.6\n" + ] + } + ], + "source": [ + "gpus = tf.config.list_physical_devices(device_type='GPU')\n", + "print(gpus)\n", + "if gpus:\n", + " try:\n", + " for gpu in gpus:\n", + " tf.config.experimental.set_memory_growth(gpu, True)\n", + " tf.config.set_visible_devices(gpus[0], 'GPU')\n", + " logical_gpus = tf.config.list_logical_devices('GPU')\n", + " print(f\"{len(gpus)} Physical GPUs, {len(logical_gpus)} Logical GPUs\")\n", + " except RuntimeError as e:\n", + " print(e)" + ] + }, + { + "cell_type": "code", + "execution_count": 3, + "metadata": {}, + "outputs": [], + "source": [ + "(training_images, training_labels) , \\\n", + "(validation_images, validation_labels) = \\\n", + "tf.keras.datasets.cifar10.load_data()" + ] + }, + { + "cell_type": "code", + "execution_count": 4, + "metadata": {}, + "outputs": [], + "source": [ + "def preprocess_image_input(input_images):\n", + " input_images = input_images.astype('float32')\n", + " output_ims = tf.keras.applications.imagenet_utils.preprocess_input(input_images, mode='tf')\n", + " return output_ims\n", + "\n", + "train_X = preprocess_image_input(training_images)\n", + "valid_X = preprocess_image_input(validation_images)" + ] + }, + { + "cell_type": "code", + "execution_count": 5, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Downloading data from https://storage.googleapis.com/tensorflow/keras-applications/inception_v3/inception_v3_weights_tf_dim_ordering_tf_kernels_notop.h5\n", + "\u001b[1m87910968/87910968\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m15s\u001b[0m 0us/step\n" + ] + }, + { + "data": { + "text/html": [ + "
Model: \"functional\"\n",
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+       "┃ Layer (type)                     Output Shape                  Param # ┃\n",
+       "┡━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━╇━━━━━━━━━━━━━━━━━━━━━━━━╇━━━━━━━━━━━━━━━┩\n",
+       "│ input_layer (InputLayer)        │ (None, 32, 32, 3)      │             0 │\n",
+       "├─────────────────────────────────┼────────────────────────┼───────────────┤\n",
+       "│ resize_layer (ResizeLayer)      │ (None, 224, 224, 3)    │             0 │\n",
+       "├─────────────────────────────────┼────────────────────────┼───────────────┤\n",
+       "│ inception_v3 (Functional)       │ (None, 5, 5, 2048)     │    21,802,784 │\n",
+       "├─────────────────────────────────┼────────────────────────┼───────────────┤\n",
+       "│ global_average_pooling2d        │ (None, 2048)           │             0 │\n",
+       "│ (GlobalAveragePooling2D)        │                        │               │\n",
+       "├─────────────────────────────────┼────────────────────────┼───────────────┤\n",
+       "│ flatten (Flatten)               │ (None, 2048)           │             0 │\n",
+       "├─────────────────────────────────┼────────────────────────┼───────────────┤\n",
+       "│ dense (Dense)                   │ (None, 512)            │     1,049,088 │\n",
+       "├─────────────────────────────────┼────────────────────────┼───────────────┤\n",
+       "│ classification (Dense)          │ (None, 10)             │         5,130 │\n",
+       "└─────────────────────────────────┴────────────────────────┴───────────────┘\n",
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Devices:\n", + "I0000 00:00:1768576177.786765 1841701 service.cc:156] StreamExecutor device (0): NVIDIA RTX A4000, Compute Capability 8.6\n", + "2026-01-16 15:09:38.106213: I tensorflow/compiler/mlir/tensorflow/utils/dump_mlir_util.cc:268] disabling MLIR crash reproducer, set env var `MLIR_CRASH_REPRODUCER_DIRECTORY` to enable.\n", + "I0000 00:00:1768576178.999261 1841701 cuda_dnn.cc:529] Loaded cuDNN version 90300\n", + "2026-01-16 15:09:40.132753: I external/local_xla/xla/stream_executor/cuda/cuda_asm_compiler.cc:397] ptxas warning : Registers are spilled to local memory in function 'gemm_fusion_dot_14775_0', 204 bytes spill stores, 204 bytes spill loads\n", + "\n", + "2026-01-16 15:09:40.333152: I external/local_xla/xla/stream_executor/cuda/cuda_asm_compiler.cc:397] ptxas warning : Registers are spilled to local memory in function 'gemm_fusion_dot_14970', 128 bytes spill stores, 128 bytes spill loads\n", + "\n", + "2026-01-16 15:09:40.380166: I external/local_xla/xla/stream_executor/cuda/cuda_asm_compiler.cc:397] ptxas warning : Registers are spilled to local memory in function 'gemm_fusion_dot_14775', 192 bytes spill stores, 512 bytes spill loads\n", + "\n", + "2026-01-16 15:09:40.468967: I external/local_xla/xla/stream_executor/cuda/cuda_asm_compiler.cc:397] ptxas warning : Registers are spilled to local memory in function 'gemm_fusion_dot_14970', 120 bytes spill stores, 120 bytes spill loads\n", + "\n", + "2026-01-16 15:10:01.387196: I external/local_xla/xla/stream_executor/cuda/cuda_asm_compiler.cc:397] ptxas warning : Registers are spilled to local memory in function 'input_add_reduce_fusion', 4 bytes spill stores, 4 bytes spill loads\n", + "\n", + "I0000 00:00:1768576201.457425 1841701 device_compiler.h:188] Compiled cluster using XLA! This line is logged at most once for the lifetime of the process.\n" + ] + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ + "\u001b[1m782/782\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m163s\u001b[0m 172ms/step - accuracy: 0.7604 - loss: 0.7794 - val_accuracy: 0.9334 - val_loss: 0.2045\n", + "Epoch 2/3\n", + "\u001b[1m782/782\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m118s\u001b[0m 151ms/step - accuracy: 0.9578 - loss: 0.1339 - val_accuracy: 0.9498 - val_loss: 0.1530\n", + "Epoch 3/3\n", + "\u001b[1m782/782\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m119s\u001b[0m 152ms/step - accuracy: 0.9824 - loss: 0.0582 - val_accuracy: 0.9481 - val_loss: 0.1719\n" + ] + } + ], + "source": [ + "EPOCHS = 3\n", + "\n", + "history = model.fit(train_X, \n", + " training_labels, \n", + " epochs=EPOCHS, \n", + " validation_data = (valid_X, validation_labels), \n", + " batch_size=64)" + ] + }, + { + "cell_type": "code", + "execution_count": 7, + "metadata": {}, + "outputs": [], + "source": [ + "MODEL_PATH = \"../models_data/inceptionv3/\"\n", + "os.makedirs(MODEL_PATH, exist_ok=True)\n", + "model.save(MODEL_PATH+'inceptionv3_fp32_cifar10.keras')" + ] + }, + { + "cell_type": "code", + "execution_count": 9, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "\u001b[1m313/313\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m7s\u001b[0m 23ms/step - accuracy: 0.9453 - loss: 0.1852\n", + "\u001b[1m313/313\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m7s\u001b[0m 23ms/step - accuracy: 0.9453 - loss: 0.1852\n" + ] + }, + { + "data": { + "text/plain": [ + "[0.17191655933856964, 0.9480999708175659]" + ] + }, + "execution_count": 9, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "model.evaluate(valid_X, validation_labels)\n", + "model.evaluate(valid_X[:10000], validation_labels[:10000])" + ] + }, + { + "cell_type": "code", + "execution_count": 10, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "INFO:tensorflow:Assets written to: /tmp/tmphhjrzrua/assets\n" + ] + }, + { + "name": "stderr", + "output_type": "stream", + "text": [ + "INFO:tensorflow:Assets written to: /tmp/tmphhjrzrua/assets\n" + ] + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Saved artifact at '/tmp/tmphhjrzrua'. The following endpoints are available:\n", + "\n", + "* Endpoint 'serve'\n", + " args_0 (POSITIONAL_ONLY): TensorSpec(shape=(None, 32, 32, 3), dtype=tf.float32, name='input_layer')\n", + "Output Type:\n", + " TensorSpec(shape=(None, 10), dtype=tf.float32, name=None)\n", + "Captures:\n", + " 140452550063584: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550104816: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550106576: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550101648: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550110272: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550107984: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550112560: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550111680: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550134240: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550136880: 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TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547036080: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547036256: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546961552: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546968768: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546967360: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546961728: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546965776: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546964544: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546963136: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547100912: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547101968: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547102144: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547038192: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547044176: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547045056: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140455436543152: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140455436548256: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140455436535232: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140458121233152: TensorSpec(shape=(), dtype=tf.resource, name=None)\n" + ] + }, + { + "name": "stderr", + "output_type": "stream", + "text": [ + "/home/g.perlo/jacki_venv/lib/python3.10/site-packages/tensorflow/lite/python/convert.py:997: UserWarning: Statistics for quantized inputs were expected, but not specified; continuing anyway.\n", + " warnings.warn(\n", + "W0000 00:00:1768576667.962645 1841543 tf_tfl_flatbuffer_helpers.cc:365] Ignored output_format.\n", + "W0000 00:00:1768576667.962656 1841543 tf_tfl_flatbuffer_helpers.cc:368] Ignored drop_control_dependency.\n", + "2026-01-16 15:17:47.962891: I tensorflow/cc/saved_model/reader.cc:83] Reading SavedModel from: /tmp/tmphhjrzrua\n", + "2026-01-16 15:17:47.969533: I tensorflow/cc/saved_model/reader.cc:52] Reading meta graph with tags { serve }\n", + "2026-01-16 15:17:47.969544: I tensorflow/cc/saved_model/reader.cc:147] Reading SavedModel debug info (if present) from: /tmp/tmphhjrzrua\n", + "I0000 00:00:1768576668.041551 1841543 mlir_graph_optimization_pass.cc:401] MLIR V1 optimization pass is not enabled\n", + "2026-01-16 15:17:48.053834: I tensorflow/cc/saved_model/loader.cc:236] Restoring SavedModel bundle.\n", + "2026-01-16 15:17:48.557814: I tensorflow/cc/saved_model/loader.cc:220] Running initialization op on SavedModel bundle at path: /tmp/tmphhjrzrua\n", + "2026-01-16 15:17:48.674035: I tensorflow/cc/saved_model/loader.cc:466] SavedModel load for tags { serve }; Status: success: OK. Took 711146 microseconds.\n", + "2026-01-16 15:19:08.247940: I tensorflow/core/framework/local_rendezvous.cc:405] Local rendezvous is aborting with status: OUT_OF_RANGE: End of sequence\n", + "fully_quantize: 0, inference_type: 6, input_inference_type: UINT8, output_inference_type: UINT8\n" + ] + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ + "INFO:tensorflow:Assets written to: /tmp/tmpmj9jeg1d/assets\n" + ] + }, + { + "name": "stderr", + "output_type": "stream", + "text": [ + "INFO:tensorflow:Assets written to: /tmp/tmpmj9jeg1d/assets\n" + ] + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Saved artifact at '/tmp/tmpmj9jeg1d'. The following endpoints are available:\n", + "\n", + "* Endpoint 'serve'\n", + " args_0 (POSITIONAL_ONLY): TensorSpec(shape=(None, 32, 32, 3), dtype=tf.float32, name='input_layer')\n", + "Output Type:\n", + " TensorSpec(shape=(None, 10), dtype=tf.float32, name=None)\n", + "Captures:\n", + " 140452550063584: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550104816: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550106576: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550101648: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550110272: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550107984: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550112560: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550111680: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550134240: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550136880: 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TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548198464: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548135392: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548200400: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548214304: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547281664: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547287824: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547286592: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547291696: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547284128: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547292224: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547293104: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547332752: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547293632: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547336976: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547338912: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547337504: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547335920: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547332048: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547334688: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547346128: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547463296: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547461360: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547461888: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547468048: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547461712: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547468576: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547469456: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547475440: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547474560: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547528832: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547531648: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547530240: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547527248: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547468928: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547527776: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547538864: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547536928: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548804672: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547539920: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548805728: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547535696: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547539040: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547540448: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548810480: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548809776: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548809072: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548805024: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548827920: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548832144: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548830032: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548826864: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548827744: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548825456: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548821056: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548823520: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548823168: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548821760: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548811008: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548812416: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548906672: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548908432: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548907552: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548905968: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548913536: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548904384: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548912480: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548913888: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548918288: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548917584: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549006912: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549008848: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549008496: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549002160: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549003920: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549004448: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549013952: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549014832: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549067344: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549070512: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549069632: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549068752: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549016416: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549068048: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549081600: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549081248: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549080016: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549077376: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549187136: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549194000: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549192240: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549186960: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549190480: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549189600: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549185024: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549188016: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549185904: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549184848: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549184672: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549182736: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549269408: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549265888: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549272048: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549270816: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549275920: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549268352: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549276448: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452549277328: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548300288: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548298352: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548300464: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548306976: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548306448: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548301520: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548303984: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548301872: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548311728: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548312608: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548400528: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548402464: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548401056: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548399472: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548399296: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548398240: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548513456: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548409680: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548410384: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548408800: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548517680: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548525600: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548524192: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548511872: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548522432: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548521024: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548515920: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548519264: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548517856: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548509760: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548512400: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548515040: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548698784: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548695264: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548701424: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548700192: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548704768: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546479552: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452548699664: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546478672: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546485712: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546482896: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546484128: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546491520: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546490112: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546482368: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546485888: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546487296: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546285936: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546284000: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140458120805568: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140457671021088: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550100944: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550016544: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452550053904: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546287520: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546297552: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546295440: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546293328: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452683492768: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546304432: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546310768: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546308304: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546305312: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546306016: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546304960: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546300384: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546304080: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546302320: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546300560: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546299856: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546298624: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546351648: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546350064: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546356224: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546354464: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546357632: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546350592: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546360448: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546359744: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546398688: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546359568: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546401680: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546405552: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546403440: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546396928: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546398512: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546402912: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546409776: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546410128: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546498048: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546500864: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546499456: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546496992: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546497696: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546494704: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546508608: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546505088: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546504208: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546509664: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546582784: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546580848: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546581200: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546588592: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546587184: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546582608: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546576624: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546584368: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546632992: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546630880: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546628416: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546588240: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546716848: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546711216: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546714032: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546712624: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546708224: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546708928: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546709456: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546634752: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546636688: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546640560: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546634928: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546638976: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546637744: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546636336: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546806528: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546807056: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546808112: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546712448: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546717376: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546718256: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546819024: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546815504: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546819552: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546820432: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546860432: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546820960: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546858848: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546866240: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546864832: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546860256: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546863248: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546862016: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546959792: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546957680: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546955216: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452546870992: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547043648: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547038016: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547040832: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547039424: TensorSpec(shape=(), dtype=tf.resource, name=None)\n", + " 140452547035200: 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drop_control_dependency.\n", + "2026-01-16 15:19:13.913675: I tensorflow/cc/saved_model/reader.cc:83] Reading SavedModel from: /tmp/tmpmj9jeg1d\n", + "2026-01-16 15:19:13.923356: I tensorflow/cc/saved_model/reader.cc:52] Reading meta graph with tags { serve }\n", + "2026-01-16 15:19:13.923368: I tensorflow/cc/saved_model/reader.cc:147] Reading SavedModel debug info (if present) from: /tmp/tmpmj9jeg1d\n", + "2026-01-16 15:19:14.009045: I tensorflow/cc/saved_model/loader.cc:236] Restoring SavedModel bundle.\n", + "2026-01-16 15:19:14.540896: I tensorflow/cc/saved_model/loader.cc:220] Running initialization op on SavedModel bundle at path: /tmp/tmpmj9jeg1d\n", + "2026-01-16 15:19:14.660268: I tensorflow/cc/saved_model/loader.cc:466] SavedModel load for tags { serve }; Status: success: OK. Took 746594 microseconds.\n", + "2026-01-16 15:20:34.013812: I tensorflow/core/framework/local_rendezvous.cc:405] Local rendezvous is aborting with status: OUT_OF_RANGE: End of sequence\n", + "fully_quantize: 0, inference_type: 6, input_inference_type: INT8, output_inference_type: INT8\n" + ] + } + ], + "source": [ + "def representative_dataset():\n", + " for images in tf.data.Dataset.from_tensor_slices(train_X).batch(1).take(1000):\n", + " yield [images]\n", + "\n", + "loaded_model = keras.saving.load_model(\"../models_data/inceptionv3/inceptionv3_fp32_cifar10.keras\")\n", + "converter = tf.lite.TFLiteConverter.from_keras_model(loaded_model)\n", + "converter.optimizations = [tf.lite.Optimize.DEFAULT] \n", + "converter.representative_dataset = representative_dataset\n", + "\n", + "converter.target_spec.supported_ops = [tf.lite.OpsSet.TFLITE_BUILTINS_INT8]\n", + "converter.inference_input_type = tf.uint8\n", + "converter.inference_output_type = tf.uint8\n", + "tflite_quant_model = converter.convert()\n", + "with open('../models_data/inceptionv3/inceptionv3_uint8_cifar10.tflite', 'wb') as f:\n", + " f.write(tflite_quant_model)\n", + "\n", + "converter.target_spec.supported_ops = [tf.lite.OpsSet.TFLITE_BUILTINS_INT8]\n", + "converter.inference_input_type = tf.int8\n", + "converter.inference_output_type = tf.int8\n", + "tflite_quant_model = converter.convert()\n", + "with open('../models_data/inceptionv3/inceptionv3_int8_cifar10.tflite', 'wb') as f:\n", + " f.write(tflite_quant_model)" + ] + } + ], + "metadata": { + "kernelspec": { + "display_name": "jacki_venv", + "language": "python", + "name": "python3" + }, + "language_info": { + "codemirror_mode": { + "name": "ipython", + "version": 3 + }, + "file_extension": ".py", + "mimetype": "text/x-python", + "name": "python", + "nbconvert_exporter": "python", + "pygments_lexer": "ipython3", + "version": "3.10.12" + } + }, + "nbformat": 4, + "nbformat_minor": 2 +} diff --git a/Cifar10/cifar10_preprocessing.ipynb b/Cifar10/cifar10_preprocessing.ipynb index 721358f..61a7dcc 100644 --- a/Cifar10/cifar10_preprocessing.ipynb +++ b/Cifar10/cifar10_preprocessing.ipynb @@ -9,12 +9,12 @@ "name": "stderr", "output_type": "stream", "text": [ - "2025-09-05 12:43:05.210469: I tensorflow/core/util/port.cc:153] oneDNN custom operations are on. You may see slightly different numerical results due to floating-point round-off errors from different computation orders. To turn them off, set the environment variable `TF_ENABLE_ONEDNN_OPTS=0`.\n", - "2025-09-05 12:43:05.216917: E external/local_xla/xla/stream_executor/cuda/cuda_fft.cc:477] Unable to register cuFFT factory: Attempting to register factory for plugin cuFFT when one has already been registered\n", + "2026-01-16 15:22:20.481141: I tensorflow/core/util/port.cc:153] oneDNN custom operations are on. You may see slightly different numerical results due to floating-point round-off errors from different computation orders. To turn them off, set the environment variable `TF_ENABLE_ONEDNN_OPTS=0`.\n", + "2026-01-16 15:22:20.487976: E external/local_xla/xla/stream_executor/cuda/cuda_fft.cc:477] Unable to register cuFFT factory: Attempting to register factory for plugin cuFFT when one has already been registered\n", "WARNING: All log messages before absl::InitializeLog() is called are written to STDERR\n", - "E0000 00:00:1757076185.224839 106477 cuda_dnn.cc:8310] Unable to register cuDNN factory: Attempting to register factory for plugin cuDNN when one has already been registered\n", - "E0000 00:00:1757076185.227208 106477 cuda_blas.cc:1418] Unable to register cuBLAS factory: Attempting to register factory for plugin cuBLAS when one has already been registered\n", - "2025-09-05 12:43:05.235273: I tensorflow/core/platform/cpu_feature_guard.cc:210] This TensorFlow binary is optimized to use available CPU instructions in performance-critical operations.\n", + "E0000 00:00:1768576940.496059 1847186 cuda_dnn.cc:8310] Unable to register cuDNN factory: Attempting to register factory for plugin cuDNN when one has already been registered\n", + "E0000 00:00:1768576940.498419 1847186 cuda_blas.cc:1418] Unable to register cuBLAS factory: Attempting to register factory for plugin cuBLAS when one has already been registered\n", + "2026-01-16 15:22:20.506444: I tensorflow/core/platform/cpu_feature_guard.cc:210] This TensorFlow binary is optimized to use available CPU instructions in performance-critical operations.\n", "To enable the following instructions: AVX2 AVX_VNNI FMA, in other operations, rebuild TensorFlow with the appropriate compiler flags.\n" ] } @@ -61,9 +61,95 @@ }, { "cell_type": "code", - "execution_count": null, + "execution_count": 3, "metadata": {}, - "outputs": [], + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "=== Confronto Original vs Enhanced ===\n" + ] + }, + { + "data": { + "image/png": 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" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Original shape: (32, 32, 3)\n", + "Enhanced shape: (256, 256, 3)\n", + "\n", + "=== Confronto metodi di enhancement ===\n" + ] + }, + { + "data": { + "image/png": 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", + "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ + "\n", + "=== Super enhancement ===\n" + ] + }, + { + "data": { + "image/png": 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", + "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Super enhanced image - Class: horse\n", + "Original: (32, 32, 3) -> Enhanced: (384, 384, 3)\n", + "\n", + "=== Griglia di immagini enhanced ===\n" + ] + }, + { + "data": { + "image/png": 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", + "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], "source": [ "import tensorflow as tf\n", "import matplotlib.pyplot as plt\n", @@ -241,7 +327,7 @@ }, { "cell_type": "code", - "execution_count": 3, + "execution_count": 4, "metadata": {}, "outputs": [], "source": [ @@ -305,7 +391,7 @@ }, { "cell_type": "code", - "execution_count": 3, + "execution_count": 5, "metadata": {}, "outputs": [], "source": [ @@ -320,7 +406,7 @@ }, { "cell_type": "code", - "execution_count": 5, + "execution_count": 6, "metadata": {}, "outputs": [], "source": [ @@ -389,6 +475,47 @@ "save_int8_cifar10_x_alexnet_data()" ] }, + { + "cell_type": "code", + "execution_count": 7, + "metadata": {}, + "outputs": [ + { + "name": "stderr", + "output_type": "stream", + "text": [ + "INFO: Created TensorFlow Lite XNNPACK delegate for CPU.\n", + "I0000 00:00:1768576964.912611 1847186 gpu_device.cc:2022] Created device /job:localhost/replica:0/task:0/device:GPU:0 with 7665 MB memory: -> device: 0, name: NVIDIA RTX A4000, pci bus id: 0000:01:00.0, compute capability: 8.6\n", + "I0000 00:00:1768576964.912886 1847186 gpu_device.cc:2022] Created device /job:localhost/replica:0/task:0/device:GPU:1 with 14300 MB memory: -> device: 1, name: NVIDIA RTX A4000, pci bus id: 0000:06:00.0, compute capability: 8.6\n" + ] + } + ], + "source": [ + "\"\"\"\n", + " Save the CIFAR-10 pre-processed and quantized images uint8, int8 for \n", + " inceptionV3 quantized models, in the specified paths.\n", + "\"\"\"\n", + "\n", + "def save_uint8_cifar10_x_inceptionv3_data():\n", + " model = tf.lite.Interpreter(model_path=config.INCEPTIONV3_U8_MODEL_PATH)\n", + " model.allocate_tensors()\n", + " _train_X = pre_process_images_for_quantized_models(training_images, model, 'uint8')\n", + " valid_X = pre_process_images_for_quantized_models(validation_images, model, 'uint8')\n", + " np.save(config.INCEPTIONV3_U8_VALIDATION_SET_PREPROCESSED_PATH, valid_X)\n", + " np.save(config.INCEPTIONV3_U8_2K_VALIDATION_SET_PREPROCESSED_PATH, valid_X[:2000])\n", + " \n", + "def save_int8_cifar10_x_inceptionv3_data():\n", + " model = tf.lite.Interpreter(model_path=config.INCEPTIONV3_I8_MODEL_PATH)\n", + " model.allocate_tensors()\n", + " _train_X = pre_process_images_for_quantized_models(training_images, model, 'int8')\n", + " valid_X = pre_process_images_for_quantized_models(validation_images, model, 'int8')\n", + " np.save(config.INCEPTIONV3_I8_VALIDATION_SET_PREPROCESSED_PATH, valid_X)\n", + " np.save(config.INCEPTIONV3_I8_2K_VALIDATION_SET_PREPROCESSED_PATH, valid_X[:2000])\n", + "\n", + "save_uint8_cifar10_x_inceptionv3_data()\n", + "save_int8_cifar10_x_inceptionv3_data()" + ] + }, { "cell_type": "code", "execution_count": null, @@ -420,6 +547,37 @@ "save_int8_cifar10_x_resnet18_data()" ] }, + { + "cell_type": "code", + "execution_count": 8, + "metadata": {}, + "outputs": [], + "source": [ + "\"\"\"\n", + " Save the CIFAR-10 pre-processed and quantized images uint8, int8 for \n", + " resnet34 quantized models, in the specified paths.\n", + "\"\"\"\n", + "\n", + "def save_uint8_cifar10_x_resnet34_data():\n", + " model = tf.lite.Interpreter(model_path=config.RESNET34_U8_MODEL_PATH)\n", + " model.allocate_tensors()\n", + " _train_X = pre_process_images_for_quantized_models(training_images, model, 'uint8')\n", + " valid_X = pre_process_images_for_quantized_models(validation_images, model, 'uint8')\n", + " np.save(config.RESNET34_U8_VALIDATION_SET_PREPROCESSED_PATH, valid_X)\n", + " np.save(config.RESNET34_U8_2K_VALIDATION_SET_PREPROCESSED_PATH, valid_X[:2000])\n", + "\n", + "def save_int8_cifar10_x_resnet34_data():\n", + " model = tf.lite.Interpreter(model_path=config.RESNET34_I8_MODEL_PATH)\n", + " model.allocate_tensors()\n", + " _train_X = pre_process_images_for_quantized_models(training_images, model, 'int8')\n", + " valid_X = pre_process_images_for_quantized_models(validation_images, model, 'int8')\n", + " np.save(config.RESNET34_I8_VALIDATION_SET_PREPROCESSED_PATH, valid_X)\n", + " np.save(config.RESNET34_I8_2K_VALIDATION_SET_PREPROCESSED_PATH, valid_X[:2000])\n", + "\n", + "#save_uint8_cifar10_x_resnet34_data()\n", + "save_int8_cifar10_x_resnet34_data()" + ] + }, { "cell_type": "code", "execution_count": null, @@ -484,9 +642,19 @@ }, { "cell_type": "code", - "execution_count": null, + "execution_count": 8, "metadata": {}, - "outputs": [], + "outputs": [ + { + "name": "stderr", + "output_type": "stream", + "text": [ + "INFO: Created TensorFlow Lite XNNPACK delegate for CPU.\n", + "I0000 00:00:1768057786.694151 2831354 gpu_device.cc:2022] Created device /job:localhost/replica:0/task:0/device:GPU:0 with 14240 MB memory: -> device: 0, name: NVIDIA RTX A4000, pci bus id: 0000:01:00.0, compute capability: 8.6\n", + "I0000 00:00:1768057786.694312 2831354 gpu_device.cc:2022] Created device /job:localhost/replica:0/task:0/device:GPU:1 with 14300 MB memory: -> device: 1, name: NVIDIA RTX A4000, pci bus id: 0000:06:00.0, compute capability: 8.6\n" + ] + } + ], "source": [ "\"\"\"\n", " Save the CIFAR-10 pre-processed and quantized images uint8, int8 for \n", @@ -509,7 +677,7 @@ " np.save(config.VGG16_I8_VALIDATION_SET_PREPROCESSED_PATH, valid_X)\n", " np.save(config.VGG16_I8_2K_VALIDATION_SET_PREPROCESSED_PATH, valid_X[:2000])\n", "\n", - "save_uint8_cifar10_x_vgg16_data()\n", + "#save_uint8_cifar10_x_vgg16_data()\n", "save_int8_cifar10_x_vgg16_data()" ] }, @@ -587,9 +755,19 @@ }, { "cell_type": "code", - "execution_count": null, + "execution_count": 7, "metadata": {}, - "outputs": [], + "outputs": [ + { + "name": "stderr", + "output_type": "stream", + "text": [ + "INFO: Created TensorFlow Lite XNNPACK delegate for CPU.\n", + "I0000 00:00:1758890356.998765 2213619 gpu_device.cc:2022] Created device /job:localhost/replica:0/task:0/device:GPU:0 with 14310 MB memory: -> device: 0, name: NVIDIA RTX A4000, pci bus id: 0000:01:00.0, compute capability: 8.6\n", + "I0000 00:00:1758890356.998909 2213619 gpu_device.cc:2022] Created device /job:localhost/replica:0/task:0/device:GPU:1 with 14400 MB memory: -> device: 1, name: NVIDIA RTX A4000, pci bus id: 0000:05:00.0, compute capability: 8.6\n" + ] + } + ], "source": [ "\"\"\"\n", " Save the CIFAR-10 pre-processed and quantized images uint8, int8 for \n", @@ -612,7 +790,7 @@ " np.save(config.EFFICIENTNETB0_I8_VALIDATION_SET_PREPROCESSED_PATH, valid_X)\n", " np.save(config.EFFICIENTNETB0_I8_2K_VALIDATION_SET_PREPROCESSED_PATH, valid_X[:2000])\n", "\n", - "save_uint8_cifar10_x_efficientnetB0_data()\n", + "#save_uint8_cifar10_x_efficientnetB0_data()\n", "save_int8_cifar10_x_efficientnetB0_data()" ] } diff --git a/Cifar10/config.py b/Cifar10/config.py index ec76a5f..683a783 100644 --- a/Cifar10/config.py +++ b/Cifar10/config.py @@ -46,6 +46,34 @@ #============================================================ +# cifar10 x inceptionV3 uint8 preprocessed validation images outputs path +INCEPTIONV3_U8_MODEL_PATH = "./models_data/inceptionV3/inceptionV3_uint8_cifar10.tflite" +INCEPTIONV3_U8_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_inceptionV3/uint8/cifar10_u8_inceptionV3_validation' +INCEPTIONV3_U8_2K_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_inceptionV3/uint8/cifar10_u8_inceptionV3_2k_validation' +INCEPTIONV3_U8_500_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_inceptionV3/uint8/cifar10_u8_inceptionV3_500_validation' + +# cifar10 x inceptionV3 int8 preprocessed validation images outputs path +INCEPTIONV3_I8_MODEL_PATH = "./models_data/inceptionV3/inceptionV3_int8_cifar10.tflite" +INCEPTIONV3_I8_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_inceptionV3/int8/cifar10_i8_inceptionV3_validation' +INCEPTIONV3_I8_2K_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_inceptionV3/int8/cifar10_i8_inceptionV3_2k_validation' +INCEPTIONV3_I8_500_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_inceptionV3/int8/cifar10_i8_inceptionV3_500_validation' + +#============================================================ + +# cifar10 x resnet34 uint8 preprocessed validation images outputs path +RESNET34_U8_MODEL_PATH = "./models_data/resnet34/resnet34_uint8_cifar10.tflite" +RESNET34_U8_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_resnet34/uint8/cifar10_u8_resnet34_validation' +RESNET34_U8_2K_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_resnet34/uint8/cifar10_u8_resnet34_2k_validation' +RESNET34_U8_500_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_resnet34/uint8/cifar10_u8_resnet34_500_validation' + +# cifar10 x resnet34 int8 preprocessed validation images outputs path +RESNET34_I8_MODEL_PATH = "./models_data/resnet34/resnet34_int8_cifar10.tflite" +RESNET34_I8_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_resnet34/int8/cifar10_i8_resnet34_validation' +RESNET34_I8_2K_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_resnet34/int8/cifar10_i8_resnet34_2k_validation' +RESNET34_I8_500_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_resnet34/int8/cifar10_i8_resnet34_500_validation' + +#============================================================ + # cifar10 x resnet50 uint8 preprocessed validation images outputs path RESNET50_U8_MODEL_PATH = "./models_data/resnet50/resnet50_uint8_cifar10.tflite" RESNET50_U8_VALIDATION_SET_PREPROCESSED_PATH = './datasets_data/cifar10_x_resnet50/uint8/cifar10_u8_resnet50_validation' diff --git a/download_models.sh b/download_models.sh index 2b776c9..c02b16e 100755 --- a/download_models.sh +++ b/download_models.sh @@ -23,7 +23,7 @@ case "$dataset" in models=("efficientnetB0" "mobilenet" "mobilenetV2" "resnet50" "resnet152" "vgg16" "vit-b_16p_224") ;; "cifar10") - models=("alexnet" "efficientnetB0" "mobilenet" "mobilenetV2" "resnet18" "resnet34" "resnet50" "resnet152" "vgg16") + models=("alexnet" "efficientnetB0" "mobilenet" "mobilenetV2" "resnet18" "resnet34" "resnet50" "resnet152" "vgg16" "inceptionV3") ;; "gtsrb") models=("mobilenet" "mobilenetV2" "resnet18" "resnet34") @@ -44,7 +44,7 @@ done # Step 3: Select precision ######################################### case "$model" in - "lenet5"|"efficientnetB0"|"mobilenet"|"mobilenetV2"|"vgg16"|"alexnet"|'resnet18'|'resnet34'|'resnet50'|"resnet152"|"vit-b_16p_224") + "lenet5"|"efficientnetB0"|"mobilenet"|"mobilenetV2"|"vgg16"|"alexnet"|'resnet18'|'resnet34'|'resnet50'|"resnet152"|"vit-b_16p_224"|"inceptionV3") precisions=("fp32" "uint8" "int8") ;; *) @@ -90,6 +90,8 @@ elif [[ "$model" == "mobilenetV2" && "$dataset" == "cifar10" ]]; then REPO_ID="jack-perlo/MobileNetV2-Cifar10" elif [[ "$model" == "vgg16" && "$dataset" == "cifar10" ]]; then REPO_ID="jack-perlo/Vgg16-Cifar10" +elif [[ "$model" == "inceptionV3" && "$dataset" == "cifar10" ]]; then + REPO_ID="jack-perlo/InceptionV3-Cifar10" elif [[ "$model" == "resnet50" && "$dataset" == "imagenet2012" ]]; then REPO_ID="jack-perlo/ResNet50-ImageNet2012" elif [[ "$model" == "resnet152" && "$dataset" == "imagenet2012" ]]; then From dc51e815688aa4014c033ac17c91384e43fe5a61 Mon Sep 17 00:00:00 2001 From: Giacomo Date: Fri, 16 Jan 2026 16:02:31 +0000 Subject: [PATCH 3/3] [update] image --- readme_assets/accuracy_map.png | Bin 103196 -> 110578 bytes readme_assets/utils.ipynb | 19 +++++++++++++------ 2 files changed, 13 insertions(+), 6 deletions(-) diff --git a/readme_assets/accuracy_map.png b/readme_assets/accuracy_map.png index f44cfd186a6a67cbb4a209abcf920f9ea20f7bce..0a8631b23b4edffcdca65b3a15ae8f740c1d2abf 100644 GIT binary patch literal 110578 zcmdqJ2{>2l|2Ddi2pP&087pIkN*c(R2$d;HgQ`*Yv-v##qLR$oiUMMn_C z+JhSV^$22hIzdns(5}YcM6G5I#<#tWYR4S)ZO=KnnAx8t4w*UHU9@$)Xl2gteAeE< z%J$L@$!*e-(p&j09Ubi)_DV_F{P#~t+S;F&3b#LIkE^V)(>U%x5KLy|{}h>u8CC=Z zK^)w#Y;Yxh3C@mcv)^i(S7)&lw8&GxH1n z$Cuc-@w<5h%YS@DtYy&tk3X{9F_xBA+y5V57b+`Q|MLS`)KvQa@#Foe?EjN4P+Ixs 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" ] }, "metadata": {}, @@ -191,7 +198,7 @@ ], "metadata": { "kernelspec": { - "display_name": "base", + "display_name": "jacki_venv", "language": "python", "name": "python3" }, @@ -205,7 +212,7 @@ "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", - "version": "3.11.7" + "version": "3.10.12" } }, "nbformat": 4,