• Home
  • Members
  • Team
  • Help
  • Search
  • Register
  • Login
  • Home
  • Members
  • Help
  • Search

Krafty Internet Marketing Forum Internet Marketing Tips, Tricks, Courses & Bots! Internet Marketing Special Downloads! Machine Learning Career Guide - Technical Interview

 
  • 0 Vote(s) - 0 Average
Machine Learning Career Guide - Technical Interview
G_P2018
Offline

VIP Member

VIP Member
Posts: 6,428
Threads: 6,423
Joined: Jun 2018
Reputation: 12
#1
05-03-2019, 06:00 AM
[center][Image: G-PMachine-Learning-Career-Guide-Technic...erview.jpg][/center]
[center]Machine Learning Career Guide - Technical Interview
mp4 | AVC: 1280x720 G_P| Audio:AAC LC 128 Kbps | Total files:105 | mp4, txt, vtt | 1.02 GB
Genre: eLearning | Language: English[/center]


General:
Quote:What you'll learn

Prepare for machine learning technical questions
Improve or refresh knowledge in machine learning
Get a great intuition of the machine learning topics
Recall fundamental aspects of data processing
Know variety of feature engineering methods
Handle dimensionality reduction questions
Recall many classification and regression models
Understand the pros and cons between machine learning methods
Handle advanced questions on supervised learning
Discuss hyperparameters and how to apply cross-validation
Build an understanding of good experiment design
Recall the concepts of feature selection
Describe different types of dataset balancing methods
Have an intuition of main сlustering algorithms
Get practice with model evaluation questions

Requirements

Some high school mathematics level
Basic knowledge in probability theory and statistics
Basic understanding of data science concepts
Basic understanding of machine learning algorithms
Some prior computer science experience

Description

This course is designed to become a convenient resource for preparing for a technical machine learning interview. It helps you to get ready for an interview with 50 lectures covering questions and answers on a varied range of topics. The course is intended not only for candidates with a full understanding of possible questions but also for recalling knowledge in machine learning.

We will systematically cover the data preparation methods including data normalization, outliers handling, feature engineering, and dimensionality reduction techniques.

After processing the data in the next section, we will move on to the supervised machine learning methods. We will consider simple linear algorithms, regularization, maximum likelihood method. Besides, we will also talk about the Bayes theorem and the naive Bayes classifier. Several lectures in this section are devoted to the support vector machine model. Most of the lectures after this will be dedicated to algorithms based on decision-making trees: we will consider bagging algorithm, random forest, AdaBoost, and gradient boosting.

Having finished reviewing the interview questions on algorithms, we will move on to the subject area of machine learning and discuss such topics as good experiment design, cross-validation methods, overfitting and underfitting, feature selection methods, unbalanced data problem.

This course also includes several lectures on clustering algorithms, covering the most well-known methods and their concepts. In addition, as part of this course, we will consider various metrics for assessing the quality of supervised and unsupervised models.

In summary, this course will help you to recall the methods used by real machine learning experts and prepare you for this hot career path.
Who this course is for:

Anyone who wants to prepare for a Machine Learning interview
Anyone who wants to improve or recall Machine Learning skills
Anyone who wants to start or switch their career to Data Science

Video:
Quote:Width: 1280 pixels
Height: 720 pixels
Format: AVC
Codec: AVC
Duration: 9min 18s
Bit rate: 546 Kbps
Frame rate: 30.000 fps
Aspect ratio: 16:9
Bit depth: 8 bits
Color space: YUV
~Golden_Plaza~
Subtitles: N/A

Audio:
Quote:Audio track: 1
Language: N/A
Codec: AAC LC
Channels: 2
Bit rate: 128 Kbps N/A
Compression: Lossy
Sampling rate: 48 Khz

[Image: G-PMachine-Learning-Career-Guide-Technic...erview.jpg]
[Image: G-PMachine-Learning-Career-Guide-Technic...erview.jpg]
[Image: G-PMachine-Learning-Career-Guide-Technic...erview.jpg]
[Image: G-PMachine-Learning-Career-Guide-Technic...erview.jpg]

[Image: download.png]
Download from NitroFlare

Code:
http://nitroflare.com/view/0971C11EFC27421/G_PMachine_Learning_Career_Guide_%3F_Technical_Interview.z01
http://nitroflare.com/view/2A624766CAA24F2/G_PMachine_Learning_Career_Guide_%3F_Technical_Interview.zip

Download from UploadGig

Code:
https://uploadgig.com/file/download/DD4663fFE50416aa/G_PMachine_Learning_Career_Guide_%E2%80%93_Technical_Interview.z01
https://uploadgig.com/file/download/BD7B1240007fF955/G_PMachine_Learning_Career_Guide_%E2%80%93_Technical_Interview.zip

Extract the archives with Winrar 5 or WinZip(zip files) & password
Password: Golden_Plaza
« Next Oldest | Next Newest »

Users browsing this thread: 1 Guest(s)



Possibly Related Threads…
Thread Author Replies Views Last Post
  Ben Settle - The Email Client Machine smack 0 137 04-13-2025, 03:54 PM
Last Post: smack
  Julien Decker - The Ultimate Guide For Meeting Women On Tinder smack 0 127 04-10-2025, 04:27 PM
Last Post: smack
  Wolf Trading - Day Trading Guide smack 0 238 03-20-2025, 11:15 AM
Last Post: smack
  Flux Academy - Design Career Kickstarter Bundle smack 0 229 03-16-2025, 01:06 PM
Last Post: smack
  Michael Simmons - The Learning Ritual 2025 smack 0 322 03-02-2025, 11:49 PM
Last Post: smack
  Howard Berg - Learning Genius Student Bundle smack 0 222 02-18-2025, 12:54 PM
Last Post: smack
  The Outsource Profit Machine 2.0 smack 0 264 02-17-2025, 05:42 PM
Last Post: smack
  MasterClass - A Sommelier's Snob-Free Guide to Wine by Emily Wines smack 0 182 02-12-2025, 06:05 PM
Last Post: smack
  TradingView Pine Script 102 - The Complete Strategy Guide smack 0 304 12-23-2024, 07:49 PM
Last Post: smack
  Erica Scheider & Rob Lennon - Content Editing 101 - AI Learning Guides & Editor smack 0 296 12-22-2024, 06:37 PM
Last Post: smack

  • View a Printable Version
  • Subscribe to this thread
Forum Jump:

© Designed by D&D - Powered by MyBB

Linear Mode
Threaded Mode