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Hi there πŸ‘‹, I am Mohammad Abdo - aka Jimmy, I am originally from Egypt πŸ‡ͺπŸ‡¬

I am a Ph.D., a research scientist, and used to be an instructor.

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My honest friends and superiors agreed that my biggest weekness is software development, so that's what I picked as a part of my career 😎


  • πŸ”­ I’m currently a Modeling and simulation specialist, a machine learning staff scientist at Idaho National Laboratory, and a member of RAVEN development team, working on several projects including -but not limited to- Surrogate Construction, Reduced Order Modeling, sparse sensing, metamodeling of porous materials, scaling interpolation and representativity of mockup experiments to target real-world plants, data-driven discovery of governing physics and system identification, digital twins, Time series analysis, Koopman theory, agile software development, and more.

  • 🌱 I’d love to learn in the near future: MLOps, R, Cafee, mongoDB, MySQL,NoSQL, SCALA, Julia, SAS, SPSS, ApacheSpark, Kafka, Hadoop, Hive, MapReduce, Casandra, Weka.

  • πŸ§‘β€πŸ€β€πŸ§‘ I’m looking to collaborate on Physics-based neural networks.

  • πŸ’¬ Ask me about ROM, uncertainty quantification, sensitivity analysis, active subspaces, probabilistic error bounds, dynamic mode decomposition (DMD).
  • ⚑ Fun fact: I like basketball, volleyball, and soccer.

  • 🏑 website | πŸ‘” linkedin | researchgate |

  • 🐦 [twitter][twitter] | πŸ“Ί [youtube][youtube] | πŸ“· [instagram][instagram] |

Skills:


  • πŸ€–πŸ‘½ Machine Learning: regression, regularization, classification, clustering, collaborative filtering, support vector machines, naive Bayes, decision trees, random forests, anomaly detection, recommender systems, artificial data synthesis, ceiling analysis, Artificial Neural Networks (ANNs), Deep Neural Networks (DNNs), Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Long Short Term Memory (LSTMs), Natural Language Processing (NLP), Transformer models, Attention Mechanisms.

  • Reduced Order Modeling: PCA, PPCA, KPCA, isomap, laplacian eigenmaps, LLE, HLLE, LTSA, surrogate modeling, Koopman theory, time-delayed embeddings, dynamic mode decomposition (DMD), dynamical systems and control, data-driven (equation-free) modeling, sparse identification of dynamical systems (Sindy), compressive sensing for full map recovery from sparse measurements, time-series analysis, ARMA, ARIMA.

  • Sensitivity Analysis (SA): Sobol indices, morris screenning, PAWN, moment-independent SA.

  • Uncertainty Quantification (UQ): Forward UQ, adjoint UQ, invers UQ.

  • Optimization: Gradient-Based Optimizers, conjugate gradient, Metaheuristic: Simulated Annealing, Genetic Algorithms.

  • πŸ–₯️ Programming Languages and Packages: Bash scripting, MATLAB, Python: numpy, scipy, matplotlib, plotly, bokeh, seaborn, pandas, Jupyter notebook, ScikitLearn, Keras, Tensorflow.

  • ** High Performance Computing (HPC)**

Languages and Tools:

canvasjs vscode github git python jupyter numpy scipy matplotlib seaborn pandas plotly bokeh altair scikit_learn tensorflow keras pytorch linux matlab



Certificates


  • πŸ•―οΈ Machine Learning - Stanford|Online | Intro to ML. (i) Supervised learning (parametric/non-parametric algorithms, support vector machines, kernels, neural networks). (ii) Unsupervised learning (clustering, dimensionality reduction, recommender systems, deep learning). (iii) Best practices in machine learning (bias/variance delimma)
  • πŸ•―οΈ Neural Networks and Deep Learning - DeepLearning.AI | Build, train, and apply fully connected deep neural networks; implement efficient (vectorized) neural networks; identify key parameters in a neural network’s architecture
  • πŸ•―οΈ Improving Deep Neural Networks: Hyperparameter Tuning, Regularization and Optimization - DeepLearning.AI | L2 and dropout regularization, hyperparameter tuning, batch normalization, and gradient checking; optimization algorithms such as mini-batch gradient descent, Momentum, RMSprop and Adam, implement a neural network in TensorFlow.
  • πŸ•―οΈ Structuring Machine Learning Projects - DeepLearning.AI | Diagnose errors in a machine learning system; prioritize strategies for reducing errors; understand complex ML settings, such as mismatched training/test sets, and comparing to and/or surpassing human-level performance; and apply end-to-end learning, transfer learning, and multi-task learning.
  • πŸ•―οΈ Convolution Neural Networks - DeepLearning.AI | Build a convolutional neural network, including recent variations such as residual networks; apply convolutional networks to visual detection and recognition tasks; and use neural style transfer to generate art and apply these algorithms to a variety of image, video, and other 2D or 3D data.
  • πŸ•―οΈ Sequence Models - DeepLearning.AI | Natural Language Processing, Long Short Term Memory (LSTM), Gated Recurrent Unit (GRU), Recurrent Neural Network, Attention Models
  • πŸ•―οΈ Deep Learning Specialization - DeepLearning.AI |


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Connect with me:

mohammad abdo mohammad abdo researchgate mohammad abdo

jimmy-inl's Projects

tf_trt_models icon tf_trt_models

TensorFlow object detection models accelerated with NVIDIA TensorRT (TF-TRT)

tftransform-demo icon tftransform-demo

tf.Transform example for building digital twin with Apache Beam and Tensorflow

the-complete-python-3-course-beginner-to-advanced icon the-complete-python-3-course-beginner-to-advanced

While doing this course i worked on multiple technologies and python as base language for programming. These are all of the projects i did throughout this course. I know the instructor hasn't provided codes for anything so you can fork my repository and try.

the-python-mega-course-build-10-real-world-applications- icon the-python-mega-course-build-10-real-world-applications-

The Python Mega Course is one of the top online Python courses with over 100,000 enrolled students and is targeted toward people with little or no previous programming experience. The course follows a modern-teaching approach where students learn by doing. You will start Python from scratch by first creating simple programs. Once you learn the basics you will then be guided on how to create 10 real-world complex applications in Python 3 through easy video explanations and support by the course instructor. Some of the applications you will build during the course are database web apps, desktop apps, web scraping scripts, webcam object detectors, web maps, and more. These programs are not only great examples to master Python, you can also use any of them as a portfolio once you have built them. By buying the course you will gain lifetime access to all its videos, coding exercises, quizzes, code notebooks, and the Q&A inside the course where you can ask your questions and get an answer the same day. On top of that you are covered by the Udemy 30-day money back guarantee, so you can easily return the course if you don't like it. If you don't know anything about Python, do not worry! In the first two sections, you will learn Python basics such as functions, loops, and conditionals. If you already know the basics, then the first two sections can serve as a refresher. The other 22 sections focus entirely on building real-world applications. The applications you will build cover a wide range of interesting topics: Web applications Desktop applications Database applications Web scraping Web mapping Data analysis Data visualization Computer vision Object-Oriented Programming Specifically, the 10 Python applications you will build are: A program that returns English-word definitions A program that blocks access to distracting websites A web map visualizing volcanoes and population data A portfolio website A desktop-graphical program with a database backend A webcam motion detector A web scraper of real estate data An interactive web graph A database web application A web service that converts addresses to geographic coordinates To consider yourself a professional programmer you need to know how to make professional programs and there's no other course that teaches you that, so join thousands of other students who have successfully applied their Python skills in the real world. Sign up and start learning Python today! What you’ll learn Go from a total beginner to an advanced-Python programmer Create 10 real-world Python programs (no useless programs) Solidify your skills with bonus practice activities throughout the course Create an app that translates English words Create a web-mapping app Create a portfolio website Create a desktop app for storing book information Create a webcam video app that detects objects Create a web scraper Create a data visualization app Create a database app Create a geocoding web app Create a website blocker Send automated emails Analyze and visualize data Use Python to schedule programs based on computer events. Learn OOP (Object-Oriented Programming) Learn GUIs (Graphical-User Interfaces) Are there any course requirements or prerequisites? A computer (Windows, Mac, or Linux). No prior knowledge of Python is required. No previous programming experience needed. Who this course is for: Those with no prior knowledge of Python. Those who know Python basics and want to master Python

thefaultengine icon thefaultengine

The Fault Engine consists three modules - 1. Transient Alarm detection, 2. Root cause Analysis, 3. Correlated Clusters

thinkdsp icon thinkdsp

Think DSP: Digital Signal Processing in Python, by Allen B. Downey.

thinkstats2 icon thinkstats2

Text and supporting code for Think Stats, 2nd Edition

tigramite icon tigramite

Tigramite is a python package for causal inference with a focus on time series data. The Tigramite documentation is at

time-series-forcasting-1 icon time-series-forcasting-1

In this repository i have implemented various Deep Learning multivariate and multiheaded time series forecasting models . Apart from that i have also uploaded the Ipython file of Grid_Search and Ensemble_Learning technique which i have implemented during my summer intern of IIT-Mandi(May 2019)

time-series-prediction-and-text-generation icon time-series-prediction-and-text-generation

Built RNNs that can generate sequences based on input data - with a focus on two applications: used real market data in order to predict future Apple stock prices using an RNN model. The second one will be trained on Sir Arthur Conan Doyle's classic novel Sherlock Holmes and generates wacky sentences based on it that may - or may not - become the next great Sherlock Holmes novel.

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