Saturday, March 2, 2019

Best AI Training Institute In Noida





Inovi Technologies propels is the Best (AI) Artificial Intelligence course gives getting ready in the aptitudes required for a calling in AI. This Artificial Intelligence course gives planning in the aptitudes required for an occupation in AI. Best AI training institute in noida You will expert TensorFlow, Machine Learning, and other AI thoughts, notwithstanding the programming tongues expected to structure quick administrators, significant learning computations and advanced phony neural frameworks that use insightful examination to deal with nonstop fundamental initiative issues. Inovi Technologies Artificial Intelligence Deep Learning with TensorFlow course is an industry-organized attestation getting ready to expert Convolutional Neural Network (CNN), Perceptron in CNN, TensorFlow, TensorFlow-Code, chart portrayal, trade learning, irregular neural frameworks, significant learning libraries, Keras and TFLearn API, GPU in significant learning, backpropagation, and hyperparameters through hands-on endeavors. We give numerous courses Ace AI in this Artificial Intelligence Deep Learning accreditation course. Visit here for more info: https://www.inovitechnologies.com/corporate-training/Best-Artificial-Intelligence-training-institute-in-noida/



Course content


Multi-layered Neural Networks

Prologue to Multi Layer Network, Concept of Deep neural systems, Regularization. Multi-layer perceptron, limit and overfitting, neural system hyperparameters, rationale doors, the various activation functions in neural systems like Sigmoid, ReLu and Softmax, hyperbolic capacities. Backpropagation, union, forward proliferation, overfitting, hyperparameters.

Preparing Of Neural Networks

The diverse techniques used in planning of phony neural frameworks, tendency dive rule, perceptron learning rule, tuning learning rate, stochastic process, upgrade strategies, regularization methodology, backslide techniques Lasso L1, Ridge L2, vanishing points, trade learning, unsupervised pre-getting ready, Xavier presentation, vanishing inclines.

Profound Learning Libraries

How Deep Learning Works, Activation Functions, Illustrate Perceptron, Training a Perceptron, Important Parameters of Perceptron,Multi-layer Perceptron What is Tensorflow, Introduction to TensorFlow open source programming library for arranging, fabricating and getting ready Deep Learning models, Python Library behind TensorFlow, Tensor Processing Unit (TPU) programmable AI enlivening specialist by Google,Tensorflow code-basics, Graph Visualization, Constants, Placeholders, Variables, Step by Step – Use-Case Implementation, Keras.

Introduction to Keras API

Keras abnormal state neural system for taking a shot at best of TensorFlow, characterizing complex multi-yield models, making models utilizing Keras, consecutive and practical creation, bunch standardization, conveying Keras with TensorBoard, neural system preparing process customization.


TFLearn API for TensorFLow


Realizing neural frameworks using TFLearn API, describing and making models using TFLearn, sending TensorBoard with TFLearn.

DNN: Deep Neural Networks

Mapping the human identity with Deep Neural Networks, the diverse building squares of Artificial Neural Networks, the plan of DNN, its building prevents, bolster learning in DNN, the distinctive parameters, layers, commencement limits and streamlining computations in DNN.

CNN: Convolutional Neural Networks

What is a Convolutional Neural Network, understanding the structure of CNN, use occurrences of CNN, what is a pooling layer, how to envision using CNN, how to align a Convolutional Neural Network, what is Transfer Learning and understanding Recurrent Neural Networks,feature maps, Kernel channel, pooling, sending convolutional neural framework in TensorFlow


RNN: Recurrent Neural Networks

Prologue to RNN Model, Application use occasions of RNN, Modeling courses of action, Training RNNs with Backpropagation, Long Short-Term memory (LSTM), Recursive Neural Tensor Network Theory, Recurrent Neural Network Model, central RNN cell, spread out RNN, getting ready of RNN, dynamic RNN, time-game plan desires.


GPU in Deep Learning

Preface to GPUs and how they differentiate from CPUs, the noteworthiness of GPUs in getting ready Deep Learning Networks, the forward pass and in switch pass planning framework, the GPU constituent with less demanding focus and concurrent gear.

Autoencoders and Restricted Boltzmann Machine (RBM)


Introduction to RBM and autoencoders, passing on it for significant neural frameworks, communitarian isolating using RBM, features of autoencoders, usages of autoencoders.


Our More Course Are:



DevOps

Data Scientist

Python

JAVA

AWS

MEAN Stack

RPA(Robotic Process Automation)

Salesforce

Linux

Hadoop

Artificial Intelligence


Mobile No. 8810643463, 9354482334

Phone No. 91-120-4213880

Email- info@inovitechnologies.comAddress. F7 Sector-3 Noida UP 201301 India.

Wednesday, February 6, 2019

AI training institute in noida





Inovi Technologies advances is the Best (AI) Artificial Intelligence course gives preparing in the aptitudes required for a profession in AI. This Artificial Intelligence course gives preparing in the aptitudes required for a vocation in AI. AI training institute in noida You will ace TensorFlow, Machine Learning, and other AI ideas, in addition to the programming dialects expected to structure shrewd operators, profound learning calculations and progressed fake neural systems that utilization prescient investigation to take care of continuous basic leadership issues. Inovi Technologies Artificial Intelligence Deep Learning with TensorFlow course is an industry-structured affirmation preparing to ace Convolutional Neural Network (CNN), Perceptron in CNN, TensorFlow, TensorFlow-Code, diagram representation, exchange learning, intermittent neural systems, profound learning libraries, Keras and TFLearn API, GPU in profound learning, backpropagation, and hyperparameters through hands-on undertakings. We provide many courses Ace AI in this Artificial Intelligence Deep Learning accreditation course.Visit here for more info: https://www.inovitechnologies.com/corporate-training/Best-Artificial-Intelligence-training-institute-in-noida/





Course content


Multi-layered Neural Networks


Prologue to Multi Layer Network, Concept of Deep neural systems, Regularization. Multi-layer perceptron, limit and overfitting, neural system hyperparameters, rationale doors, thevariousactivationfunctions in neural systems like Sigmoid, ReLu and Softmax, hyperbolic capacities. Backpropagation, union, forward proliferation, overfitting, hyperparameters.


Preparing Of Neural Networks

The diverse techniques used in planning of phony neural frameworks, tendency dive rule, perceptron learning rule, tuning learning rate, stochastic process, upgrade strategies, regularization methodology, backslide techniques Lasso L1, Ridge L2, vanishing points, trade learning, unsupervised pre-getting ready, Xavier presentation, vanishing inclines.

Profound Learning Libraries

How Deep Learning Works, Activation Functions, Illustrate Perceptron, Training a Perceptron, Important Parameters of Perceptron,Multi-layer Perceptron What is Tensorflow, Introduction to TensorFlow open source programming library for arranging, fabricating and getting ready Deep Learning models, Python Library behind TensorFlow, Tensor Processing Unit (TPU) programmable AI enlivening specialist by Google,Tensorflow code-basics, Graph Visualization, Constants, Placeholders, Variables, Step by Step – Use-Case Implementation, Keras.

Introduction to Keras API

Keras abnormal state neural system for taking a shot at best of TensorFlow, characterizing complex multi-yield models, making models utilizing Keras, consecutive and practical creation, bunch standardization, conveying Keras with TensorBoard, neural system preparing process customization.


TFLearn API for TensorFLow

Realizing neural frameworks using TFLearn API, describing and making models using TFLearn, sending TensorBoard with TFLearn.

DNN: Deep Neural Networks

Mapping the human identity with Deep Neural Networks, the diverse building squares of Artificial Neural Networks, the plan of DNN, its building prevents, bolster learning in DNN, the distinctive parameters, layers, commencement limits and streamlining computations in DNN.

CNN: Convolutional Neural Networks


What is a Convolutional Neural Network, understanding the structure of CNN, use occurrences of CNN, what is a pooling layer, how to envision using CNN, how to align a Convolutional Neural Network, what is Transfer Learning and understanding Recurrent Neural Networks,feature maps, Kernel channel, pooling, sending convolutional neural framework in TensorFlow


RNN: Recurrent Neural Networks

Prologue to RNN Model, Application use occasions of RNN, Modeling courses of action, Training RNNs with Backpropagation, Long Short-Term memory (LSTM), Recursive Neural Tensor Network Theory, Recurrent Neural Network Model, central RNN cell, spread out RNN, getting ready of RNN, dynamic RNN, time-game plan desires.


GPU in Deep Learning

Preface to GPUs and how they differentiate from CPUs, the noteworthiness of GPUs in getting ready Deep Learning Networks, the forward pass and in switch pass planning framework, the GPU constituent with less demanding focus and concurrent gear.

Autoencoders and Restricted Boltzmann Machine (RBM)

Introduction to RBM and autoencoders, passing on it for significant neural frameworks, communitarian isolating using RBM, features of autoencoders, usages of autoencoders.


Our More Course Are:

1.DevOps

2. Data Scientist

3. Python

4. JAVA

5. AWS

6. MEAN Stack

7.RPA(Robotic Process Automation)

8. Salesforce

9. Linux

10. Hadoop

11. Artificial Intelligence


Mobile No. 8810643463, 9354482334

Phone No. 91-120-4213880

Email- info@inovitechnologies.comAddress. F7 Sector-3 Noida UP 201301 India.