Hi, I'm Anand Raj.

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Experienced and focused engineer with good coding skills and a background in professional software engineering. Driven by a passion for data and a strong desire to explore machine learning and sophisticated analytics, I aim to contribute to the company's advancement while also fostering personal growth.

About

I am currently pursuing a graduate degree in Data Science at George Washington University(expected graduation - May 2025). I take pleasure in collaborating with like-minded individuals who share similar interests, as it allows for the development of both personal and professional skills within the peer. I am looking for a dynamic role that challenges me to utilize my Software Engineering skills, providing chances for professional growth, exciting experiences, and personal development.

  • Programming languages: R, Python, and C.
  • Database: SQL, MongoDB, and Neo4j (Graph Database).
  • Machine Learning Algorithms: Linear/Logistic/Lasso/Ridge Regression, Decision Trees, Naive Bayes, KNN, Random Forest, Stacking, SVM, XGBM, Bagging Methods, Cascading Classifiers.
  • Data Mining: PCA, t-SNE, Recommendation Systems & Matrix Factorization, and Clustering - K Means, Hierarchical, DBSCAN.
  • Time series analysis/Forecasting: AR, ARMA, ARIMA, and SARIMA.
  • Deep Learning: Artificial Neural Networks, Convolutional Neural Networks, Multilayer Perceptron, Long Short Term Memory(LSTM), Recurrent Neural Network(RNN) and Generative adversarial networks(GAN).
  • Product Development: Agile Methodology, Product Life Cycle, JIRA for Ticketing, Git, GitHub.
  • Others: Tableau, Flask, AWS EC-2, Streamlit and Heroku.

Experience

Technical Writer
  • Technical Writer for TowardsAI and Stackademic.
  • Authored engaging technical blogs focused on Artificial Intelligence and Autonomous Cars.
Jan 2024 - Till date | Virginia, USA
Software Engineer
  • Worked on Advanced Driving Assistance Systems and developed products like Emergency Brake Assist, and Rear Pre-Crash Predict. Major products: Volkswagen ID Buzz and Mercedes Benz Sprinter Van.
  • Developed algorithm using C. Implemented automation using Python scripting.
  • Provided problem-solving solutions to customer-reported problems in the simulation environment.
  • Delivered better performance with just 2 false positives per 10,000 kilometers, optimizing key performance indicators.
  • Skills learnt: Development in C, Python for scripting, Git, GTest for Testing, QAC for Quality, JIRA for ticketing, Product Development, Agile Methodologies, ASPICE.
Sep 2021 - Aug 2023 | Bangalore, India | Total experience - 2 years
Data Science Intern
  • Collaborated with a dynamic team to conduct in-depth data analysis utilizing Python and Tableau, providing valuable insights into client's sales data. Analyzed user behavior, temporal trends, and distinctions between free and paid users.
  • Formulated data-driven recommendations and compelling narratives and communicated to our client
  • Skills learnt:Python, Data Analysis, ML Modelling, Flask.
Jun 2020 - Aug 2020 | Bangalore, India | Total experience - 3 months
Intern
  • Worked on validation and verification process standards in avionics hardware.
  • Collaborating with different teams and Reviewing standards of all the Validation and verification processes.
  • Skills learnt: DO-254 and DAL-C Certification of Hardware.
Jan 2020 - Feb 2020 | Bangalore, India | Total experience - 2 months

Projects

Screenshot of web app
EzFlow.ai Platform

User-friendly software product designed to democratize machine learning.

Accomplishments
  • Tools: Python, Flask, HTML and CSS.
  • Leading the development of EzFlow.ai, a user-friendly platform designed to empower users with no coding experience to learn and implement machine learning projects.
  • By automating data preprocessing, model training, and result visualization, EzFlow.ai provides users with predictions and comprehensive summary reports.
Screenshot of  web app
Quora question pair similarity

Aims to identify duplicate questions using natural language processing

Accomplishments
  • Tools: Python, Flask, HTML and CSS.
  • Applied Natural Language Processing techniques to determine if two questions have similar meaning.
  • Performed comprehensive data analysis, feature engineering, and text data featurization to develop a predictive model.
Taxi trip
New York City Taxi Trip Duration

To predict the total ride duration of taxi trips in New York city

Accomplishments
  • Tools: Python
  • Developed a model for predicting trip duration using New York City pick-up and drop-off coordinates, involving extensive data cleaning, analysis, and training various ML models, achieving the lowest RMSE of 224 seconds.
Screenshot of  web app
Sentiment Prediction from Amazon reviews

Employs advanced NLP and ML to analyze Amazon reviews

Accomplishments
  • Tools: Python, Flask, AWS-for deployment.
  • Developed a model to predict if a text review of a product given by user is positive or negative
  • Performed extensive text cleaning and featurizing text data, achieved an AUC score of 0.90 using SGD Classifier.
  • Deployed using Flask on AWS EC-2 virtual machine.
quiz app
Artificial Music Generator

Model to Generate music using LSTM neural networks.

Accomplishments
  • Tools: Python, Keras, Tensorflow
  • Implements an Artificial Music Generator using LSTM (Long Short-Term Memory) networks, a type of recurrent neural network (RNN).
  • The system generates music character by character based on a given input dataset.
  • LSTM model is trained on a corpus of music data and then sampled from the trained model to generate new music compositions.
Screenshot of  web app
University Recommendation System using Neo4j

A recommendation system for Recommending Similar Universities

Accomplishments
  • Tools: Neo4j, Flask.
  • NEO4J's graph database reimagines higher education by enabling highly personalized, context-aware university recommendations, transforming the educational landscape.

Research Publications

music streaming app
Facial Emotion Analysis

Facial Feature Extraction and Emotional Analysis Using ML

Accomplishments
  • Challenges in facial expression recognition.
  • Introduction of a deep learning approach with Convolutional Neural Networks(CNN).
  • Emphasis on CNNs' role in feature learning for emotion detection.
  • Click on the link to view the research paper for detailed information.
music streaming app
Prediction Algorithm evaluation

Performance Comparison of Prediction Algorithms for Forecasting of Wind Power Generation

Accomplishments
  • Research compares ARIMA, SARIMAX, and ARMA algorithms for Wind power generation forecasting.
  • ARIMA identified as the most accurate with the lowest MSE (523.01).
  • Accurate forecasting minimizes errors, enhances power grid reliability.
  • Click on the link to view the IEEE paper for detailed information.

Skills

Languages and Databases

Python
C
R
SQL
MangoDB
Neo4j

Libraries

NumPy
Pandas
scikit-learn
matplotlib
seaborn
OpenCV
TensorFlow
Keras
Plotly
Folium
Rmarkdown

Frameworks

Flask
Dash

Other

Git
GitHub
VS Code
Jupyter notebook
PyCharm

Education

George Washington University

Washington DC, USA

Degree: Master of Science in Data Science
CGPA: 4.0/4.0

    Relevant Courseworks:

    • Data Warehousing
    • Introduction to Data Science
    • Introduction to Data Mining
    • Machine Learning
    • Data Visualization
    • Algorithms for Data Science

    Aug 2023 - May 2025(Expected) | Washington DC, USA

RNS Institute of Technology

Bangalore, India

Degree: Bachelor of Engineering in Electrical and Electronics Engineering
GPA: 7.68/10

    Relevant Courseworks:

    • Programming in C and Data Structures
    • Engineering Mathematics
    • Engineering Physics
    • Object Oriented Programming Using C++
    • Python Application Programming

Aug 2017 - Sept 2021 | Bangalore, India

Blogs

  • You can visit my medium account here:
  • - Checkout MEDIUM

Contact