Personal Information
Organization / Workplace
Kakinada, Andhra Pradesh India
Industry
Education
Website
About
I (Dr. Chandra Sekhar Sanaboina) am currently working as an Assistant Professor in the Department of Computer Science and Engineering from University College of Engineering Kakinada, JNTUK University Kakinada.
Obtained my Bachelors (B. Tech) degree in Electronics and Computer Science Engineering from Koneru Lakshmaiah College of Engineering in the year 2005. Later obtained my Masters (M. Tech) degree in Computer Science and Engineering from Vellore Institute of Technology in the year 2008. Complete Doctorate of Philosophy (Ph. D) in the area of Internet of Things from JNTUK in the year 2020.
I had over 11 years of teaching experience and around 8 years of research experience.
Contact Details
Tags
pipeline interface
pipelines
parameter selection
recursive feature elimination
iterative feature selection
model-based feature selection
univariate statistics
automatic feature selection
univariate nonlinear transform
polynomial features
interactions
discretization
binning
onehotencoder
get_dummies
one hot encoding
categorical values
engineering features
representing features
feature engineering
dbscan clustering
agglomerative clustering
k-means clustering
clustering
manifold learning - tsne
non negative matrix factorizat
eigen faces - feature extract
principal component analysis
manifold learning
feature extraction
dimensionality reduction
effect of preprocessing
transformations using scaling
types of scaling in ml
scaling
preprocessing
challenges in unsupervised ml
types unsupervised ml
unsupervised machine learning
uncertainty estimates
weaknesses of supervised ml
strengths of supervised ml
hyperparameters
support vector machines
gradient boosting algorithms
random forests
ensembles of decision trees
decision trees
naive bayes algorithm
logistic regression
lasso regression
ridge regression
linear regression
k-nearest neighbors
overfitting
underfitting
generalization
regression
classification
classification example - iris
tools and libraries for ml
python distributions for ml
importance of python in ml
importance of data
types of machine learning
prerequisites of ml
history of ml
machine learning
cyber security exams
cyber security jobs
cyber security
path
career
security
cyber
procedure oriented programming
pop vs oop
pop
oop
object oriented programming
introduction to c++
evolution of c++
disadvantages of oops
difference between c and c++
advantages of oops
scope of access specifiers
parameterized constructors
overloading member function
objects
nested class
destructors
defining member function
declaring objects
constructors
classes in c++
class
characteristics of constructor and destructor
application with constructor
access specifiers
try
specifying exceptions
multiple catch statements
catch
throw
principles of exception handling
exception handling
linked lists with templates
templates vs macros
bubble sort using function templates
overloading of template function
normal function templates
definition of class templates
need for templates
generic programming using templates
templates
virtual destructor
rules for virtual function
virtual functions
binding in c++
polymorphisms
binding
pointer to base class
pointer to derived classes
this pointer
pointer object
pointer to class
pointer declaration
features of pointers
pointer
disadvantages of inheritance
advantages of inheritance
abstract classes
object as a class member
virtual base classes
types of inheritance
reusability
inheritance
rules for overloading operators
overloading assignment operator
operator return type
overloading unary operator
operator keyword
keyword
overloading
operator overloading
See more
- Presentations
- Documents
- Infographics