Theoretical Paper
- Computer Organization
- Data Structure
- Digital Electronics
- Object Oriented Programming
- Discrete Mathematics
- Graph Theory
- Operating Systems
- Software Engineering
- Computer Graphics
- Database Management System
- Operation Research
- Computer Networking
- Image Processing
- Internet Technologies
- Micro Processor
- E-Commerce & ERP
- Numerical Methods Tutorial
Practical Paper
- C Programming
- C
- Data Structure Using C, C ++
- Programming in R
- Programming with Python
- Machine Learning
- Swift
- Firebase
- Android
- iOS Development
- Django
- PHP
- Arduino
- Internet of Technology
- IOT Projects
- Dart Programming
- Flutter
- Flutter Tutorials
- Kotlin Tutorial
- Laravel Tutorial
- VueJS Tutorial
- Go Lang
- Rust
- Apex
Industrial Training
Artificial Inteligance
Venue : RND Consultancy Services, Serampore, Chatra, Hooghly, WB.
Phone : +919830546476 / +918240819346
Lesson: 1
The three different types of machine learning
Supervised, unsupervised, reinforcement learning
An introduction to the basic terminology and notations
A roadmap for building machine learning systems
Using Python for machine learning
Lesson: 2
Introduction to Python language
Environmental setup for Python, Anaconda, Jupyter, Spider etc
Data types of Python, numbers, string
Run a python program in jupyter/spider/ipython
if, elif, loops and function in python
Module, exception of Python
Lesson: 3
Different types of Data structure list, tuple, dictionary, set etc
What is List comprehension
Different functions of List, Set, Dictionary, Tuple
push and pop on Set
Difference between different data structures
Lesson: 4
Introduction to Numpy and Panda
Creating Numpy array and its different operations
Slicing and indexing of Numpy Array
Introduction to Panda and Data frame
Programs using Panda Data frame
Data visualization using Matplotlib
Lesson: 5
Dealing with missing data
Handling categorical data
Partitioning a dataset in training and test sets
Selecting meaningful features
Reduce dimensionality using PCA (Principal Component Analysis)
Lesson: 6
What is regression
Simple Linear Regression and Multiple Linear Regression
Regression example by Decision Tree Regressor
Regression using Random Forest Regressor
Lesson: 7
Choosing a classification algorithm
First steps with scikit-learn
Modeling class probabilities via logistic regression
Solving nonlinear problems using a kernel SVM
Decision Tree and Random Forest Classifier
K-Nearest Neighbors – a lazy learning algorithm
Text based classification using Naïve Bayes algorithm
Lesson: 8
Unsupervised learning and clustering
Different types of unsupervised learning
K-means clustering in python
Hierarchical clustering
Difference between hierarchical and K means clustering
Lesson: 9
Data Science overview
Data Analytics overview
Statistical Analysis and Business Application
Introduction to Natural language processing using Scikit learn
Uses of Tensor Flow and Open CV in data science problem
On completion of the training, participants will be able to do data analysis using Python. Audience will be able to identify between classification and regression problem in real life data. Participants will be able to do some real life prediction like email spam filtering, stock market price prediction, loan prediction, crime data analysis etc using some machine learning tools in python.
No experience is required; however basic understanding of Python and some Basic Mathematics is highly required.