Chodishetti Hari Satyam

AI/Machine Learning Engineer | Software Developer
S.Annavaram, IN.

About

Final-year Computer Science Engineering student with a robust foundation in software engineering, specializing in AI and Machine Learning. Proven ability to develop user-centric applications and optimize systems for performance, demonstrating expertise in AI/ML model development, web application design, and data classification. Eager to leverage strong problem-solving skills and technical proficiency to create innovative solutions in a dynamic engineering environment.

Education

K L University
Vaddeswaram, Andhra Pradesh, India

Bachelor of Technology

Computer Science Engineering

Grade: CGPA: 8.87

Triumala Jr. College
Thagrapuvalsa, Andhra Pradesh, India

Higher Secondary Education

Intermediate (BIE)

Grade: Marks: 936/1000

Triumala E.M High School
Thagarapuvalasa, Andhra Pradesh, India

High School Diploma

Secondary Education (BSEAP)

Grade: CGPA: 9.2

Languages

Telugu
English
Hindi

Certificates

AICTE AWS AI-ML INTERN

Issued By

AICTE AWS

ESSENTIALS RPA PROFESSIONAL

Issued By

N/A

ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING USING PYTHON [INDUSTRIAL AUTOMATION] (LEVEL-1)

Issued By

N/A

Skills

Programming Languages

C++, Python, HTML, CSS.

Machine Learning & AI

Machine Learning, Deep Learning, TensorFlow, Natural Language Processing (NLP), Computer Vision, Neural Networks, Random Forest Algorithm, Convolutional Neural Network (CNN).

Databases

RDBMS.

Web Development

Streamlit.

Tools & Platforms

ServiceNow Administration, AWS.

Soft Skills

Problem-Solving, Critical Thinking, Teamwork, Leadership, Adaptability, Interpersonal Communication, Written Communication, Oral Communication, Lifelong Learning, Knowledge Sharing.

Projects

Crop Recommendation System

Summary

Developed a web application using Streamlit framework to predict crop recommendations based on user requirements. Utilized a Random Forest Algorithm to achieve higher accuracy for the recommendation system, providing suitable crop suggestions.

Facial Expression Recognition Using Deep Learning

Summary

Developed a neural network architecture for high-accuracy emotion classification from the FER-2013 dataset. Implemented a CNN model to classify facial emotions (happiness, sadness, anger) and enhanced real-time detection through model optimization techniques.

Article and Document Classification

Summary

Applied Natural Language Processing (NLP) techniques, including message pre-processing, token conversion, and feature extraction, to classify documents. Utilized classifier algorithms such as Naive Bayes, SVM, and neural networks to achieve high accuracy in categorizing documents.