Get started with Machine Learning with Python - An introduction with Python programming examples

Overview

Machine Learning With Python

Get started with Machine Learning with Python

An engaging introduction to Machine Learning with Python

TL;DR

  • Download all Jupyter Notebooks from repo (zip-file-download).
  • Unzip download (main.zip) appropriate place.
  • Launch Ananconda and start JuPyter Notebook (Install it from here if needed)
  • Open the first Notebook from download.
  • Start watching the first video lesson (YouTube).

Machine Learning (ML)

Goal of Course

  • Learn the advantages of ML
  • Master a broad variety of ML techniques
  • Solve problems with ML
  • 15 projects with ML covering:
    • k-Nearest-Neighbors Classifier
    • Linear Classifier
    • Support Vector Classification
    • Linear Regression
    • Reinforcement Learning
    • Unsupervised Learning
    • Neural Networks
    • Deep Neural Networks (DNN)
    • Convolutional Neural Networks (CNN)
    • PyTorch classifier
    • Recurrent Neural Networks (RNN)
    • Natural Language Processing
    • Text Categorization
    • Information Retrieval
    • Information Extraction

Course Structure

  • The course puts you on an exciting journey with Machine Learning (ML) using Python.
    • It will start you off with simple ML concepts to understand and build on top of that
    • Taking you from simple classifier problems towards Deep Neural Networks and complex information extractions
  • The course is structured in 15 sessions, where each session is composed of the following elements
    • Lesson introducing new concepts and building on concepts from previous Lessons
    • Project to try out the new concepts
    • YouTube video explaining and demonstrating the concepts
      • A walkthrough of concepts in Lesson with demonstrating coding examples
      • An introduction of the Project
      • A solution of the project

Are You Good Enough?

Worried about whether you have what it takes to complete this course?

  • Do you have the necessary programming skills?
  • Mathematics and statistics?
  • Are you smart enough?

What level of Python is needed?

What about mathematics and statistics?

  • Fortunately, when it comes to the complex math and statistics behind the Machine Learning models, you do not need to understand that part.
  • All you need is to know how they work and can be used.
    • It's like driving a car. You do not have to be a car mechanic to drive it - yes, it helps you understand the basic knowledge of an engine and what the engine does.
    • Using Machine Learning models is like driving a car - you can get from A to B without being a car mechanic.

Still worried?

  • A lot of people consider me a smart guy - well, the truth is, I'm not
    • I just spend the hours learning it - I have no special talent
  • In the end, it all depends on whether you are willing to spend the hours
  • Yes, you can focus your efforts and succeed faster
    • How?
    • Well, structure it with focus and work on it consistently.
    • Structure your learning - many people try to do it all at once and fail - stay focused on one thing and learn well.
    • Yes, structure is the key to your success.

Any questions?

  • I try to answer most questions. Feel free to contact me.
Owner
Learn Python with Rune
Learn Python with Rune
TUPÃ was developed to analyze electric field properties in molecular simulations

TUPÃ: Electric field analyses for molecular simulations What is TUPÃ? TUPÃ (pronounced as tu-pan) is a python algorithm that employs MDAnalysis engine

Marcelo D. Polêto 10 Jul 17, 2022
Official Tensorflow implementation of "M-LSD: Towards Light-weight and Real-time Line Segment Detection"

M-LSD: Towards Light-weight and Real-time Line Segment Detection Official Tensorflow implementation of "M-LSD: Towards Light-weight and Real-time Line

NAVER/LINE Vision 357 Jan 04, 2023
An integration of several popular automatic augmentation methods, including OHL (Online Hyper-Parameter Learning for Auto-Augmentation Strategy) and AWS (Improving Auto Augment via Augmentation Wise Weight Sharing) by Sensetime Research.

An integration of several popular automatic augmentation methods, including OHL (Online Hyper-Parameter Learning for Auto-Augmentation Strategy) and AWS (Improving Auto Augment via Augmentation Wise

45 Dec 08, 2022
A 35mm camera, based on the Canonet G-III QL17 rangefinder, simulated in Python.

c is for Camera A 35mm camera, based on the Canonet G-III QL17 rangefinder, simulated in Python. The purpose of this project is to explore and underst

Daniele Procida 146 Sep 26, 2022
Code that accompanies the paper Semi-supervised Deep Kernel Learning: Regression with Unlabeled Data by Minimizing Predictive Variance

Semi-supervised Deep Kernel Learning This is the code that accompanies the paper Semi-supervised Deep Kernel Learning: Regression with Unlabeled Data

58 Oct 26, 2022
Normalization Calibration (NorCal) for Long-Tailed Object Detection and Instance Segmentation

NorCal Normalization Calibration (NorCal) for Long-Tailed Object Detection and Instance Segmentation On Model Calibration for Long-Tailed Object Detec

Tai-Yu (Daniel) Pan 24 Dec 25, 2022
A curated list of awesome Deep Learning tutorials, projects and communities.

Awesome Deep Learning Table of Contents Books Courses Videos and Lectures Papers Tutorials Researchers Websites Datasets Conferences Frameworks Tools

Christos 20k Jan 05, 2023
Official repository for the paper F, B, Alpha Matting

FBA Matting Official repository for the paper F, B, Alpha Matting. This paper and project is under heavy revision for peer reviewed publication, and s

Marco Forte 404 Jan 05, 2023
Code for the Shortformer model, from the paper by Ofir Press, Noah A. Smith and Mike Lewis.

Shortformer This repository contains the code and the final checkpoint of the Shortformer model. This file explains how to run our experiments on the

Ofir Press 138 Apr 15, 2022
a general-purpose Transformer based vision backbone

Swin Transformer By Ze Liu*, Yutong Lin*, Yue Cao*, Han Hu*, Yixuan Wei, Zheng Zhang, Stephen Lin and Baining Guo. This repo is the official implement

Microsoft 9.9k Jan 08, 2023
Dense Gaussian Processes for Few-Shot Segmentation

DGPNet - Dense Gaussian Processes for Few-Shot Segmentation Welcome to the public repository for DGPNet. The paper is available at arxiv: https://arxi

37 Jan 07, 2023
PyTorch implementation of SCAFFOLD (Stochastic Controlled Averaging for Federated Learning, ICML 2020).

Scaffold-Federated-Learning PyTorch implementation of SCAFFOLD (Stochastic Controlled Averaging for Federated Learning, ICML 2020). Environment numpy=

KI 30 Dec 29, 2022
A fast, distributed, high performance gradient boosting (GBT, GBDT, GBRT, GBM or MART) framework based on decision tree algorithms, used for ranking, classification and many other machine learning tasks.

Light Gradient Boosting Machine LightGBM is a gradient boosting framework that uses tree based learning algorithms. It is designed to be distributed a

Microsoft 14.5k Jan 08, 2023
Background Matting: The World is Your Green Screen

Background Matting: The World is Your Green Screen By Soumyadip Sengupta, Vivek Jayaram, Brian Curless, Steve Seitz, and Ira Kemelmacher-Shlizerman Th

Soumyadip Sengupta 4.6k Jan 04, 2023
Res2Net for Instance segmentation and Object detection using MaskRCNN

Res2Net for Instance segmentation and Object detection using MaskRCNN Since the MaskRCNN-benchmark of facebook is deprecated, we suggest to use our mm

Res2Net Applications 55 Oct 30, 2022
Implementation of popular bandit algorithms in batch environments.

batch-bandits Implementation of popular bandit algorithms in batch environments. Source code to our paper "The Impact of Batch Learning in Stochastic

Danil Provodin 2 Sep 11, 2022
NudeNet: Neural Nets for Nudity Classification, Detection and selective censoring

NudeNet: Neural Nets for Nudity Classification, Detection and selective censoring Uncensored version of the following image can be found at https://i.

notAI.tech 1.1k Dec 29, 2022
Implementation of the paper "Language-agnostic representation learning of source code from structure and context".

Code Transformer This is an official PyTorch implementation of the CodeTransformer model proposed in: D. Zügner, T. Kirschstein, M. Catasta, J. Leskov

Daniel Zügner 131 Dec 13, 2022
A new version of the CIDACS-RL linkage tool suitable to a cluster computing environment.

Fully Distributed CIDACS-RL The CIDACS-RL is a brazillian record linkage tool suitable to integrate large amount of data with high accuracy. However,

Robespierre Pita 5 Nov 04, 2022
The Empirical Investigation of Representation Learning for Imitation (EIRLI)

The Empirical Investigation of Representation Learning for Imitation (EIRLI)

Center for Human-Compatible AI 31 Nov 06, 2022