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Hi, I'm Rudrax Dave ✨

I'm currently pursuing my Masters of Science in Electrical Engineering and Computer Science, with a specialization in Machine Learning and Data Science, from the University of Southern California - USC Viterbi School of Engineering. I'm actively seeking full-time -2023 Job opportunities.

As a learner with alacrity, an elementary, results-driven leader, and a team player, I've led multi-disciplinary technical and financial festivals and events.

My qualifications include:

  • Budding Machine Learning & Data Science Engineer
  • Full Stack Android Development
  • Cloud Database & Business Intelligence
  • Data Analytics Applications
  • Antenna Design and Development
  • Large-scale event plotting and execution
  • Public relations and liaisons
  • Research and analysis
  • Small Scale Fund Raising
  • Creative Designer
  • -:-Teamwork . Hardworking . Technical Skills. Management . Communication . Confidence -:-

Current Projects

  • πŸ”­ I'm currently working on a Fullstack project using Machine Learning Algorithms and Data Processing to predict forest fires based on weather data collected from the regions. I've tasked feature engineering to multiply the feature and used PCA methods for selection of the concerned best features, and implemented it on various different models. I'm also working on the Deep Learning Project of American Sign Language Reader with Neural Networks and GAN.
  • 🌱 I'm currently learning Advanced Machine Learning Algorithms, Algorithms and Data Structures.
  • πŸ‘― I'm looking to collaborate on DL, ML, and Data Science Projects.

Reach Me

Feel free to ask me about #usc, #research, #losangeles, #datasciences, and #machinelearningalgorithms.

Previous Experience

A highly motivated and results-driven Machine Learning and Data Science Engineer with over 2 years of intern/Part-time experience in various roles, including ML Research Intern at World Resources Institute, BISAG(N), Android Developer at USC CSI-Cancer research, SDE at GRE Electronics Pvt. Ltd., and Coca-Cola Beverages Pvt. LTD.

I have interned with organizations like Bhaskaracharya National Institute for Space Applications and Geo-Informatics (BISAG-N), Govt. of India as a Researcher, where I worked on Machine Learning and Deep Learning Algorithms to result in Buildings and Road Detection for Urban & Rural Area Development with Open-Source Data of Satellite Imagery, which integrated the two concepts together of CNN and GIS from their advantages over traditional classifiers and remote sensing techniques and goes on to implementing deep learning models and change detection after detection of Buildings and Roads in a particular Dataset and later assess the change in the span of the period and giving the analysis of the output. I also interned at GRE Electronics Pvt. Ltd for SOLAR Innovations for Everyday Life research, Hindustan Coca-Cola Beverages Pvt. Ltd., and West Coast Pharmaceuticals Pvt. Ltd. as Data-Base Management, ERP Software, and E-commerce Business Intern.

I've handled various responsibilities in my previous intern, college, and international positions and quickly established talents in prioritizing tasks, meeting deadlines, and finding solutions to eliminate obstacles. I currently work part-time as a Technical Assistant for USC Information Technology Services.

My career has enabled me to develop and establish skills in such key areas:

  • Data Science, Data Analytics & Perseverance to Learn and Improve.
  • Research And Analysis, Administration & Management
  • Machine Learning, Deep Learning, Android & Software Development.

In summary, I am a passionate Machine Learning and Data Science Engineer who is committed to applying technical expertise to solve real-world problems in a collaborative environment.

Projects

I have worked on Machine Learning Projects such as DFS for Foreclosure rates Mysql Analysis, Forest Fire Prediction, ASL Reader, Urbanization Detection, Sales Forecasting, Android Applications like Lost'N Found, Campus Notify, etc.

Rudrax Dave's Projects

americansignlanguage_reader icon americansignlanguage_reader

Project Data: The Dataset is 1.11 GB in Size. The images in the dataset are manually captured and not computer-generated. The dataset linked above contains images from 29 classes (26 alphabets, SPACE, DELETE, and NOTHING). Each class contains 3000 images in the training set and each image is a 200 x 200 RGB image. The training data set contains 87,000 images, of which 26 are for the letters A-Z and 3 classes for SPACE, DELETE, and NOTHING. These 3 classes are very helpful in real-time applications and classification. The test data set contains a mere 29 images, to encourage the use of real-world test images.>the test set is very small. We plan to Experiment with different architectures and hyperparameters. First, implement the CNN architecture described in the Models of [8] and apply our training data to generate the classification of 26 Letters. Our goal is to map images from a particular domain to a Letter that it means. We will be finetuning (transfer learning) existing models that perform classification on RGB images. We will Look at the levels of RGB images in Particular Centroidal Pixels and We can Classify from the Centre Which Shape is Defined. We are Planing to Use RESNET - Residual Neural Networks or Similar to be able to argue and analyze the better Accuracy between all of the Networks.

beaconnotify icon beaconnotify

This embedded app, allows user to get notifications for a particular designed content when they are in range of a beacon! As Nearby notification and Physical web have been terminated by Google, we needed an external app to get notification from beacons. I've placed the screenshot of the notification when you are in range, out of the range and th…

campusnavigation icon campusnavigation

final-project-RudraxDave created by GitHub Classroom - This project focuses on using data structures in C++ and implementing various graph algorithms to build a map application.

forestfires_prediction icon forestfires_prediction

This dataset contains weather data from 2 regions in Algeria over the period of 3 months and the goal is to predict if a fire occurred at any day within that period. To create a real-world scenario, we want to predict if there will be a fire in a future date as provided by the dataset. The fire prediction is based on weather data collected from the regions. Problem type: Classification.

gene_disease_association_prediction_with_gat icon gene_disease_association_prediction_with_gat

This project focuses on analyzing and predicting Gene-Disease Associations (GDA) using graph-based machine learning techniques. It leverages curated datasets, protein-protein interaction (PPI) data, and various node features to construct graph representations of gene-disease associations. Two graph neural network architectures, GraphSAGE and GAT.

lostnfound icon lostnfound

Lost-and-Found Application for University Operations -Solved problem of Lost or Recovered items with features such as image uploads, image recognition, and smart matching with technologies like Android Studio, Google Firebase- Storage, Authentication, Realtime Database, and Google Analytics β€’ Built an interface for mobile application will let people report when found or lost something at a specific concerned location allowing users to capture and upload files into the system cloud and save them in the database, can be automatically matched to images in the database- and shown to users in the recovery section of the app.

urbanizationdetection_roadnbuilding icon urbanizationdetection_roadnbuilding

Building and Road Extraction for Urban and Rural Development and Annotations of Imagery -Jan 2021 - Jun 2021 Associated with Bhaskaracharya Institute For Space Applications and Geo-Informatics -Utilizing Open-Source Datasets from Google Earth Engine & NASA USGS (Sentinel, Landsat-8) of 2 certain timestamps, equalizing tiff files by Histogram Eq. Method, Clustering data by PCA + K-means Methodology, trained and segmented Data by Deep Learning Algorithms with U-NET Architecture, computed results by confusion matrix and attaining accuracy 89 percentage. β€’ For mapping from high resolution imagery or GIS database construction and its update, automatic object-based image analysis, also animated change- after Change Detection Model so users come to know how urbanization occurs or growth happens over a decade.

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