Deep learning is an AI function that mimics the workings of the human brain in processing data for use in detecting objects, recognizing speech, translating languages, and making decisions. Deep learning AI is able to learn without human supervision, drawing from data that is both unstructured and unlabeled. Also known as deep neural learning or deep neural network.
DEEP LEARNING TRAINING BY INDUSTRY EXPERT
Duration : 10 Weeks
Deep learning is an AI function that mimics the workings of the human brain in processing data for use in detecting objects, recognizing speech, translating languages, and making decisions. Deep learning AI is able to learn without human supervision, drawing from data that is both unstructured and unlabeled. Also known as deep neural learning or deep neural network.
What is deep learning examples?
Deep learning utilizes both structured and unstructured data for training. Practical examples of deep learning are Virtual assistants, vision for driverless cars, money laundering, face recognition and many more.
Where is deep learning used?
Deep learning applications are used in industries from automated driving to medical devices. Automated Driving: Automotive researchers are using deep learning to automatically detect objects such as stop signs and traffic lights. In addition, deep learning is used to detect pedestrians, which helps decrease accidents.
Contents – Basics
Nuts & Bolts
1.Introduction to Github & Kaggle
2.Introduction to Machine Learning Concepts
3.Mathematics of Artificial Neural Network.
4.Single neuron prediction model.
TensorFlow 2.x
1.Introduction to Google’s TensorFlow Framework for Deep Learning
2.Data types in TF, key data transformation Methods.
3.Implement TensorFlow data pipeline using Tfrecords and tf.data methods
Construct Deep Learning Network
1.Construct a Deep Learning Model to predict an Image.
2.Details of Sequential vs functional API of TF Keras implementation.
3.Hyper Parameter tunning of model.
Image Processing
Image Classification
1.Convolution Neural Network
2.Advanced CNN Networks – AlexNet, Residual Networks (ResNet)
3.Implement ResNET model in Google Colab.
Transfer Learning
1.Introduction to TensorFlow Hub
1.Open Source labelling tools for custom data annotation.
2.Fine tune pre trained ResNet & Inception V4 models.
Object Detection & Image Segmentation
1.TF’s Object Detection API
2.FasterRCNN algorithm.
3.MaskRCNN for image segmentation
Text Processing
Text Classification
1.Introduction to Word Embeddings
2.Recurrent Neural Networks (RNN)
3.LSTM / Bi LSTM & GRU Networks
Text Extraction
1.Named Entity Extraction using spaCy library
1.Construct a custom NER model using BiLSTM netowrk
2.Hyper Parameter Tunning of BiLSTM and spaCy’s model
BERT – attention-based models
1.Introduction to BERT architecture
2.Introduction to Hugging face’s BERT methods
3.Fine Tune a Question & Answering Model on Custom data set
Suitable Combo Programs:-
Python Scripting + Data science with machine learning + Deep Learning