Hello, my name

Anson Antony

Machine Learning Enthusiast, Web Designer, Front End Developer, Full Stack Web Developer

About

About Me

Full Stack Web Developer & Machine Learning Enthusiast

My interests include software design and development, full stack web development, app development , artificial intelligence, machine learning, computer vision, and natural language processing.

Name: Anson Antony
Birthday: 5th March 1997
Degree: Bachelor of Engineering (Computer)
Experience: 2+ Years
Phone: +91-8806999906
Email: ansonanto53@gmail.com
Location: Pune, Maharashtra, India
Freelance: Available
Google Scholar: Anson Antony
SCOPUS: Anson Antony
Resume: Anson Antony

Skills

My Skills

Languages

Java
85%
Javascript
90%
Python
95%
C++
70%
C
70%

Web Development

HTML
95%
CSS
85%
Node JS
90%
React JS
95%
Mongodb
85%
Django
80%
Struts 2
90%
jQuery
70%

Machine Learning/Deep Learning/Computer Vision Libraries & Frameworks

Tensorflow
70%
PyTorch
90%
Keras
75%
Scikit-learn
85%
Numpy
90%
Pandas
90%
Matplotlib
90%
Seaborn
90%

Quality

Education & Expericence

My Education

Bachelor of Engineering (Computer)

JSPM's Rajarshi Shahu College of Engineering - Pune, India | 2015 - 2019

  • Took subjects such as Discrete Mathematics, Object Oriented Programming, Data Structures and Algorithms, Database Management Systems, Software Engineering and Project Management, Information Systems and Engineering Economics, Embedded Systems and Internet of Things, Software Modeling and Design, Web Technology, Artificial Intelligence and Robotics, Data Analytics, Data Mining and Warehousing, Machine Learning, Soft-Computing and Optimization Algorithms, and Cloud Computing

My Research Experience

Undergraduate Research Assistant

JSPM's Rajarshi Shahu College of Engineering - Pune, India | 2016 - 2017

  • Understanding of brain’s analytical capability to identify and imagine objects through sound, motions or emotions.
  • Acquiring and understanding of brain’s EEG signal dataset, and feeding the same to an ML model to identify a general pattern emerging from specific thoughts.
  • Using of pattern matching algorithms to map each thought’s EEG pattern with the pattern already collected for an image in the dataset and thus displaying the intended image on the screen signifying what the brain thinks.
  • Filed a patent for the same in the Indian Patent Office, 2017, which got published. Waiting for grants.

My Leadership and Management Experience

Training and Placement Coordinator

JSPM's Rajarshi Shahu College of Engineering - Pune, India | 2018 - 2019

  • Controlling a large crowd of students from across the country visiting our campus for company inteviews and tests.
  • Determine all required placement requirements and assist all apprentice participants to exchange all information appropriately.
  • Conduct orientation programs for all students and ensure optimal utilization of all college resources.
  • Coordinating with companies for their requirements, arranging the companies visit, interview process, results, etc. for the college.
  • Responsible for hospitality of the company representatives and conducting the placement drives smoothly.

My Work Experience

Full Stack Developer

A.J. Enterprises - Pune, India | 2021.06 - Present

  • Developing an in-house ERP product from scratch for the company, taking care of the analytics-end and prediction of potential market locations using Machine Learning.
Software Engineer

Yardi Software India Pvt. Ltd. - Pune, India | 2019.08 - 2021.02

  • Worked on enhancing, modifying and streamlining Yardi’s in-house product called VendorCafe.
  • Responsible for delving into client requirements, suggested suggestions and customer recommendations.
  • Took care of further modifications to ensure that the features was easily accessible and specific to a variety of client requests.
Project Intern

Zensar Technologies - Pune, India | 2018.04 - 2018.08

  • Initial training was provided and then as part of the analytics team, worked on a project which included descriptive visualization for various kinds of tickets received by the client.

Publication

My Publications

Indian Patent Office, 2017

Patent Published in India

Application Number: 201721034696

This idea presents a subjective view on the work that has been done combining machine learning with brain image visualization to advance the understanding of brain's analytical capability to identify and imagine objects through sound, motions, or emotions and thereby applying the same concepts to a computer and displaying the objects or thoughts generated by the brain onto the computer screen. As we humans, learn anything step by step by gathering necessary information and then picturing(visualizing) it for understanding purpose, so will the computer, using a lot of datasets. It will also analyze each process step by step and picturize it by comparing with the data in its dataset. After acquiring enough data the computer shall then generate a pattern based on the observations collected, each time it comes across a word or a thought, it shall then compare it with the signal pattern that had been generated earlier. Also this invention shows the possibility of future development of this technology for a more realistic and intellectual robots or humanoids that can help mankind.

Springer, 2020

Proceedings of International Conference on Image Processing and Capsule Networks.

Part of the Advances in Intelligent Systems and Computing book series(AISC, volume 1200), Bangkok, Thailand. DOI: 10.1007/978-3-030-51859-2_66

This paper intends to highlight a solution that has been obtained by the amalgamation of machine learning and brain image visualization. This solution has been presented to improve the comprehension of a brain’s logical proficiency to recognize and visualize objects and elements by means of noise, movements, and possible through emotions as well. This is achieved by executing the same ideas on a computer and exhibiting the objects or ideas that are produced by the brain on the screen of the computer. In relation to the tendency of humans in learning everything sequentially by amassing data and then producing a picture of it in our mind, the computers will follow the same concept by making use of datasets. Likewise, it evaluates every process consecutively by creating an image and associating it with the data presented in the dataset. After the extraction of ample data the computer further produces a pattern depending on the collected interpretations. Every time a word or a notion flashes, it tends to compare the word with the previously produced signal pattern. It also potentially exhibits the advancement of this technology for enhanced and smart robots that benefit mankind.

IEEE, 2021

Proceedings of 5th International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud)

DOI: 10.1109/I-SMAC52330.2021.9640786

Epilepsy is a neurological illness of around 1-2 percent world population prevalence. The feature of epilepsy is repeated seizures known as "epileptic seizures." The human brain is also the most outstanding and sophisticated organ of any system of human body. It has great space-time dynamics. The electroencephalographic signal is the spontaneous electrical activity recorded in the brain during a short period of time. The word EEG refers to a signal from the head that is obtained from the brain. The neuronal bombardment in the brain causes it. The EEG signal provides useful information on brain function and neurobiological illnesses, as it provides visual indications of the recorded waveform and enables approaches for computer-supporting signal processing to be characterized. This is why the most advanced digital signal processing techniques for EEG signal analysis are being used. Our research focuses on analyzing and classifying the signals received by EEG employing signals, such as waves. The EEG characteristics are taken from the statistical analysis of wavelet transformation. The second aim is to enhance classification accuracy once the feature has been extracted. A total of 300 EEG data subjects were analyzed. These data have been classified into three categories: normal, epileptic, epileptic and non-seizure. We employed for this purpose a back-propagation-based neural network classifier. The second aim is to enhance classification accuracy once the feature has been extracted. 100 subjects from the set and from the data dividing the proposed algorithm for training, testing and validation were assessed for extraction and categorization of functions.

AIP Conference Proceedings (SCOPUS), 2021

Proceedings of International Conference on Advancements in Computation & Computer Technologies (ICACCT-2021)

Accepted for publication

With the good development of robotic technology, good communication of robots regarded as the most sought after achievement by researchers these days. If the robot can identify the feelings and intentions of the contact person, which can lead to more robots useful. Electroencephalography (EEG) is considered one of the most effective recording methods the emotions and motives of the brain user. The various types of machine learning are as follows used successfully to separate EEG data accurately. K-closest neighbor, Besesi network, Artificial Neural and Support Vector Machine networks are within the appropriate machine learning methods for classifying EEG data. The purpose of this concept is to explore different machine learning techniques to differentiate EEG data associated with specific emotional / emotional conditions. Different ways based on differences signal-processing techniques are studied Different numbers of EEG data elements are used to identify those that give the best results different classification techniques. Various methods are designed to format the database for EEG data. Formatted data sets were tested in various machine learning techniques in order to find out which process can place EEG data accurately according to it emotional / emotional conditions. On the other hand this study is to study the electronic learning methods by various EEG tools. Continuous EEG is an exciting approach to cerebral function performance testing in intensive care unit and more. A systematic approach of this work derives various important outcome on EEG.

Springer, 2021

Proceedings of International Conference on Machine Learning and Autonomous System. Part of the Smart Innovation, Systems and Technologies book series(AISC, volume 1200

DOI: 10.1007/978-981-16-7996-4_9

Phishing involves attempts to trick the user by extracting crucial important information that should otherwise not be leaked. Data like bank account numbers, social media accounts, company revenue reports, online transactions secrets are some of the examples that an at- tacker hopes to extract by exploiting the vulnerability of the user. In today’s day and age, it is very important to warn the populace against such attacks and provide relevant security awareness. Through our research, we aim to provide a brief study of how machine learning and im- age visualization can be used to detect phishing web pages using a two part implementation technique. First part involves analysis and overview of different machine learning classifiers across different datasets and features to find the most relevant technique to detect phishing websites efficiently. The second part introduces a novel approach of how discrete fourier transform and image comparison can be used to compare suspicious web pages with real ones. This study aims at providing a new direction for researchers to understand how machine learning and automation can be inculcated in phishing detection to avoid any data breach.

Elsevier - Material Today: Proceedings Journal, 2021

Proceedings of The International Conference on Artificial Intelligence and Energy Systems (AIES 2021)

DOI: 10.1016/j.matpr.2022.02.350

Agriculture productivity has large effect on the economy of the country. The agriculture productivity can be increased of the by the detect plant disease at the early stage. The automated techniques plays an important role to detect diseases at early stage and detection will be accurate. The automated techniques detect the disease when the symptoms are start appearing on the leave of the plant. This paper presents an automated technique for the plant disease detection which is based on the four operations which are pre-processing, segmentation, feature extraction, and classification. This paper also covers literature survey of various techniques which are already proposed by the authors. The symptoms analysis of the plant leaf is done using GLCM algorithm and classification of the disease is done using voting classification which are key aspects of this paper. The voting classification method is the combination of the decision trees, support vector machines, k nearest neighbor methods which will improvise accuracy of the disease detection at early stage.

IEEE, 2021

Proceedings of OITS International Conference on Information Technology (OCIT 2021)

DOI: 10.1109/OCIT53463.2021.00075

The objective of this research is to analyze the security flaws of CAPTCHA generating model in order to build more resilient CAPTCHAs without such risks associated with human attempt and fail attempts. In this work, a more efficient DOCR-CAPTCHA model has presented which is deep learning approach based on an optical character recognition (OCR) to address the concerns of lower efficiency and inadequate performance of existing CAPTCHA detection algorithms. First, the DOCR-CAPTCHA model preprocesses the images to enhance the quality by following gray scale conversion, cropping and resizing the image. Second, it extracts the character to create a dictionary and mapping each character with labeling. Next, it performs classification using OCR technique and train the model. It also performed the validation on the same data. The simulation has done on the CAPTCHA images dataset. The recognition rate of this simulated model results achieved a high accuracy rate of 99.98 percent and minimized error rate of 0.0051 for the CAPTCHA train dataset. It has also compared with the existing YOLO technique and found that it has outperformed than YOLO.

IEEE, 2021

Proceedings of 5th International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud)

DOI: 10.1109/I-SMAC52330.2021.9640781

This project presents the design of smart IOT based indoor farming analysis and monitoring using fuzzy logic techniques. Since climatic parameters of indoor farming are dependent on each other therefore, it is bit difficult to control them for this reason a system is designed which will monitor and analyse all the parameters on the basis of fuzzy logic algorithm. The main purpose of designed system is to monitor and to control parameters with the help of actuators present in the system to produce special quality vegetables at a faster rate and by revoking the necessity of the arduous activities generally associated with farming. Apart from that, remote monitoring and controlling of the artificial environment to eliminate the dependency on the natural habitat to ensure year-round availability of all plants and vegetables is one of the main objectives of this project. Environmental factors included air temperature, air humidity, illumination, soil moisture, and CO2 concentration. The sensor layer is IOT based consisting of Soil Moisture Sensor, Humidity and Temperature Sensor and LDR sensor. The whole system was identified on an application with a static IP and a domain name. The recorded temperature and humidity are stored in a cloud database (ThingSpeak), and the results are displayed in a webpage, from where the user can view them directly. So this project is to implement the automation in Farming system, where it increases the efficiency in farming effective water irrigation, motion monitor around the indoor field and fertility of soil.

Springer, 2021

Proceedings of 3rd International Conference on Mobile Computing and Sustainable Informatics (ICMCSI 2022)

Accepted for publication

Stroke is the world’s second-largest cause of death, and it continues to be a significant health burden for both people and national healthcare systems. Hypertension, heart illness, diabetes, glucose metabolism dysregulation, atrial fibrillation, and lifestyle variables are all potentially modifiable risk factors for stroke. Stroke is a medical emergency. A stroke occurs when blood flow to a part of your brain is interrupted or reduced, preventing brain tissue from getting oxygen and nutrients. Brain cells begin to die within minutes. The authors aimed to derive a model equation for developing a stroke pre-diagnosis algorithm with the potentially modifiable risk factors. Ischemic embolic and haemorrhagic strokes account for the bulk of strokes. An ischaemic embolic stroke occurs when a blood clot develops distant from the patient’s brain, generally in the heart, and travels via the circulation to lodge in the patient’s smaller brain arteries. Another form of brain stroke is haemorrhagic stroke, which occurs when a blood vessel in the brain ruptures or spills blood. Stroke is the world’s second-largest cause of mortality and one of the most life-threatening diseases for people over the age of 65. By the method proposed, we could mitigate the strokes occurring by approximate 96 percent of the items from the data received from the patient.

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