Artificial Intelligence Training by Experts
Our Training Process

Artificial Intelligence - Syllabus, Fees & Duration
Module 1: Introduction to Data Science
- What is Data Science?
 - What is Machine Learning?
 - What is Deep Learning?
 - What is AI?
 - Data Analytics & it’s types
 
Module 2: Introduction to Python
- What is Python?
 - Why Python?
 - Installing Python
 - Python IDEs
 
Module 3: Python Basics
- Python Basic Data types
 - Lists
 - Slicing
 - IF statements
 - Loops
 - Dictionaries
 - Tuples
 - Functions
 - Array
 - Selection by position & Labels
 
Module 4: Python Packages
- Pandas
 - Numpy
 - Sci-kit Learn
 - Mat-plot library
 
Module 5: Importing Data
- Reading CSV files
 - Saving in Python data
 - Loading Python data objects
 - Writing data to csv file
 
Module 6: Manipulating Data
- Selecting rows/observations
 - Rounding Number
 - Selecting columns/fields
 - Merging data
 - Data aggregation
 - Data munging techniques
 
Module 7: Statistics Basics
- Central Tendency
 - Probability Basics
 - Standard Deviation
 - Bias variance Trade off
 - Distance metrics
 - Outlier analysis
 - Missing Value treatment
 - Correlation
 
Module 8: Error Metrics
- Classification
 - Regression
 
Module 9: Machine Learning
- Supervised Learning
 - Linear Regression
 - Logistic regression
 
Module 10: Unsupervised Learning
- K-Means
 - K-Means ++
 - Hierarchical Clustering
 
Module 11: SVM
- Support Vectors
 - Hyperplanes
 - 2-D Case
 - Linear Hyperplane
 
Module 12: SVM Kernel
- Linear
 - Radial
 - polynomial
 
Module 13: Other Machine Learning algorithms
- K Nearest Neighbour
 - Naïve Bayes Classifier
 - Decision Tree CART
 - Decision Tree C50
 - Random Forest
 
Module 14: ARTIFICIAL INTELLIGENCE
- Perceptron
 - Multi-Layer perceptron
 - Markov Decision Process
 - Logical Agent & First Order Logic
 - AL Applications
 
Module 15: Deep Learning Algorithms
- CNN Convolutional Neural Network
 - RNN Recurrent Neural Network
 - ANN Artificial Neural Network
 
Module 16: Introduction to NLP
- Text Pre-processing
 - Noise Removal
 - Lexicon Normalization
 - Lemmatization
 - Stemming
 - Object Standardization
 
Module 17: Text to Features
- Syntactical Parsing
 - Dependency Grammar
 - Part of Speech Tagging
 - Entity Parsing
 - Named Entity Recognition
 - Topic Modelling
 - N Grams
 - TF IDF
 - Frequency / Density Features
 - Word Embedding
 
Module 18: Tasks of NLP
- Text Classification
 - Text Matching
 - Levenshtein Distance
 - Phonetic Matching
 - Flexible String Matching
 
This syllabus is not final and can be customized as per needs/updates
			
													
												
							

								
							
			
AI uses many algorithms to method knowledge, generate data-driven judgments, and complete tasks in a manner comparable to that of a person. 
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AI approaches will support reducing these errors by automating some responsibilities or assisting workers in their work.  When it comes to acquiring and analyzing large analyzing of data to improve potency and personalization, AI is quite effective. 
In some situations, AI-enabled machines are even smarter than humans.  Professors need to spend more time one-on-one with pupils, conducting research, and current their own education, but they don't have the time to do so.  Of course, simulating human intelligence is a difficult endeavor that necessitates expertise in areas such as cybersecurity, blockchain, robotics, generative AI with virtual reality, edge AI with IoT, and edge computing.  Artificial intelligence has the possibility to be a valuable tool for forecasting the outcomes of processes and systems.  Now and again, humans make blunders.  We are here to help you from the beginning of the course until the very conclusion, including resume-building advice and interview recommendations.