jobs(software): updated resume and coverletter for DataAnnotation
This commit is contained in:
parent
fdd0b5693f
commit
9c831333c9
4 changed files with 21 additions and 29 deletions
Binary file not shown.
|
|
@ -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 @@ I’m 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. I’ve 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.
|
|
@ -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-----------
|
||||
|
|
|
|||
Loading…
Add table
Add a link
Reference in a new issue