Autoplay
Autocomplete
Previous Lesson
Complete and Continue
Internship on Deep Learning (30 Days)
Day-1 | Introduction to Data Science & Studies
Concept of Data Science (52:42)
Attachments
Day - 2 | Computer Vision
Basics of Computer Vision (49:31)
Day - 3
Neurons and Perceptron (52:54)
Day - 4
Activation Function (32:09)
Day-5
Gradient Descent (32:39)
Day - 6
Gradient Descent Types (26:16)
Day -7
Backpropogation (62:20)
Day - 8
Diabetes Detection using NN (54:21)
Day - 9
Optimizers (48:47)
Day-10
Batch Normalization (43:21)
Day- 11
Hyperparameter Tuning (32:39)
Day 12
InterPretability (59:36)
Day 13
Deep Neural Network (44:34)
Day 14 Convolutional Neural Network
Convolutional Neural Network and Its Layer (48:32)
Day- 15
CNN Architecture (52:58)
DAY 16
Different frameworks on Deep Learning (Tensorflow, Keras, PyTorch & Caffe) (45:51)
DAY 17
Object Recognition using Pre Trained Model – Caffe (42:33)
DAY 18
Image classification using Convolutional Neural Network from Scratch – Tensorflow & Keras (42:32)
DAY 19
Custom Image Classification using Transfer Learning (43:39)
Day 20
YOLO Object recognition (39:21)
DAY 21
Image Segmentation (29:41)
DAY 22
Object Recognition Using Mxnet (28:24)
DAY 23
Object Recognition using Pytorch (33:03)
DAY 24
Social Distance Monitoring (37:30)
DAY 25
Face Mask detector (49:25)
DAY 26
Introduction to RNN and LSTM (30:39)
DAY 27
Project using RNN LSTM (45:26)
DAY 28
Introduction CUDA Toolkit and cuDNN for deep learning (43:31)
DAY 29
Getting started with the Intel Movidius Neural Compute Stick (25:06)
DAY 30
Nvidia (49:45)
Mandatory Step First Step - Join the Community Here
Mandatory Step First Step - Join the Community Here
Top 100 Interview Question
Deep Learning
Teach online with
Introduction CUDA Toolkit and cuDNN for deep learning
Lesson content locked
If you're already enrolled,
you'll need to login
.
Enroll in Course to Unlock