jobs(software): updated resume and coverletter for DataAnnotation

This commit is contained in:
Murtadha 2025-05-16 11:49:49 -04:00
parent fdd0b5693f
commit 9c831333c9
4 changed files with 21 additions and 29 deletions

Binary file not shown.

View file

@ -6,10 +6,10 @@
% Define variables
%% Job related
\newcommand{\companyName}{Devopie Inc.}
\newcommand{\companyName}{DataAnnotation}
\newcommand{\hiringManager}{Hiring Team}
\newcommand{\companyAddress}{Hamilton, ON}
\newcommand{\position}{Backend Developer}
\newcommand{\companyAddress}{Kitchener, ON}
\newcommand{\position}{Cloud Engineer - AI Trainer}
%% Personal
\newcommand{\name}{Murtadha Nisyif}
@ -49,14 +49,10 @@ Im eager to contribute my skills and energy to a team committed to technical
% MAIN BODY SECTION
%=============================
\vspace{1em}
\noindent My experience in software engineering at the University of Guelph has honed my skills in writing high-performance, scalable code in C and Python. I have worked on real-time systems for robotics applications and deployed machine learning models on hardware-accelerated SoCs (Xilinx Kria). These projects strengthened my understanding of system reliability, latency sensitivity, and performance tuning.
\noindent My technical experience includes training ML models, deploying microservices, and integrating code into automated testing workflows. Ive developed a heart disease prediction app using Flask and scikit-learn, engineered full-stack projects with React and Java, and maintained a Docker-based homelab environment running CI/CD and container orchestration. Other projects include memory allocation simulators in C, car classification using CNNs, reinforcement-based dynamic noise cancellation, and an accessibility-focused Braille converter powered by Raspberry Pi.
\vspace{1em}
At the Robotics Institute, I developed and deployed a backend system with Node.js and PostgresDB for an accessibility-focused application. Hosted on AWS EC2, the system featured a web frontend that enabled real-time user activity monitoring and analytics. I maintained the entire stack, ensuring dependency updates, feedback integration, and security hardening. This hands-on work gave me direct experience with cloud infrastructure, devops tools, and end-to-end application management.
\vspace{1em}
In addition, I manage a personal homelab where I design, test, and monitor containerized services using Docker and Jenkins CI/CD pipelines. This setup has allowed me to explore concepts like automated testing, rollback strategies, and deployment resilience knowledge I continuously apply to side projects like ML inference APIs, Flask applications, and object storage management.
In addition to my programming work, I bring strong written communication skills and attention to detail. Whether writing technical documentation, explaining model decisions, or debugging tricky outputs, I enjoy breaking down complex problems and analyzing code quality. I am confident in evaluating code for correctness, performance, and clarity. I look forward to helping shape models that do the same.
%=============================
% CLOSING SECTION

Binary file not shown.

View file

@ -117,13 +117,9 @@
\end{tabular*}
\vspace{-10pt}
%----------Highlights----------
\section{\color{blue}Highlights}
\resumeItemListStart
\resumeItem {Developed a Flask web app to predict heart disease using ML models, including feature encoding, scaling, and real-time prediction}\vspace{-5pt}
\resumeItem {Designed nested MongoDB schemas using Mongoose to support flexible, multi-representation document structures}\vspace{-5pt}
\resumeItem {Dockerized and deployed backend/frontend using Jenkins CI/CD with rollback capability and uptime focus}\vspace{-5pt}
\resumeItemListEnd
%----------Summary----------
\section{\color{blue}Summary}
Versatile software engineer with hands-on experience in backend systems, machine learning, DevOps, and embedded platforms. Proficient in Python, C++, Rust and JS, with a portfolio of applied AI, web services, and hardware integrated projects. Passionate about writing clean, testable code and clearly communicating technical insights
\vspace{-5pt}
%----------Experience----------
@ -164,24 +160,24 @@
%-----------SKILLS-----------
\section{\color{blue}Skills}
\begin{tabular}{ @{} >{\bfseries}l @{\hspace{1.2ex}}l}
\textbf{Languages:} & Python, C++, JavaScript, SQL, Bash \\
\textbf{Frameworks:} & Flask, React, Node.js, ROS, Express.js \\
\textbf{Databases:} & MongoDB (Mongoose), PostgreSQL, SQLite \\
\textbf{DevOps:} & Docker, Jenkins, Git, Terraform, AWS \\
\textbf{Tools:} & GitHub, Postman, Swagger, Nginx, iperf3 \\
\textbf{Languages:} &Python, C++, JavaScript, C, SQL, Java, C\#, Bash \\
\textbf{Frameworks:} &Flask, FastAPI, Node.js, React, TensorFlow, PyTorch, ROS2 \\
\textbf{Databases:} &MongoDB, PostgreSQL, SQLite \\
\textbf{Tools:} &Docker, Kubernetes, Git, Jenkins, Terraform, AWS, Vitis AI \\
\end{tabular}
\vspace{-8pt}
%-----------PROJECTS-----------
\section{\color{blue}Projects}
\resumeSubHeadingListStart
\resumeSubItem{\textbf{\color{black}Heart Condition Prediction Web App}}
{Built a Flask-based app to predict heart disease risk using ML models with real-time input processing, encoding, and instant output.}
\resumeSubItem{\textbf{\color{black}Full-stack Portfolio Project}}
{Dockerized frontend/backend using React and Java; deployed using Jenkins pipeline with AWS S3 for static hosting and MinIO for object storage.}
\resumeSubItem{\textbf{\color{black}DevOps Homelab}}
{Maintained home lab infrastructure with Docker, Kubernetes, Ceph, and Jenkins. Built versioned CI/CD pipelines for staging + rollback experiments.}
\resumeSubHeadingListEnd
\begin{itemize}[leftmargin=0.15in, label={}]
\item \textbf{Heart Disease Predictor} Flask app with sklearn model, real-time prediction, and input feature scaling \vspace{-5pt}
\item \textbf{StonkBot} Discord bot for fantasy stock trading using Python, Matplotlib, and live API feeds \vspace{-5pt}
\item \textbf{Car Model Classifier} CNN trained on Stanford Cars dataset with ResNet/EfficientNet architectures\vspace{-5pt}
\item \textbf{Memory Allocator Simulator} C implementation of First/Best/Worst fit memory management\vspace{-5pt}
\item \textbf{Braille Converter Device} Raspberry Pi-based image-to-Braille translator for accessibility\vspace{-5pt}
\item \textbf{Clean Architecture Backend} C\# backend for portfolio website, CI/CD-ready with REST API\vspace{-5pt}
\item \textbf{RL Noise Cancelling} Real-time audio filtering using RL and sparse training (PyTorch)\vspace{-5pt}
\end{itemize}
\vspace{-10pt}
%-----------EDUCATION-----------