Foro Wanako1
¿Quieres reaccionar a este mensaje? Regístrate en el foro con unos pocos clics o inicia sesión para continuar.

Foro Wanako1

Programas Gratuitos, Desatendidos y Mucho más!!!
 
PortalPortal  ÍndiceÍndice  BuscarBuscar  Últimas imágenesÚltimas imágenes  ConectarseConectarse  RegistrarseRegistrarse  
Buscar
 
 

Resultados por:
 
Rechercher Búsqueda avanzada
Los posteadores más activos del mes
missyou123
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_lcapCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Voting_barCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_rcap 
tano1221
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_lcapCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Voting_barCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_rcap 
ПΣӨƧӨFƬ
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_lcapCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Voting_barCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_rcap 
大†Shinegumi†大
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_lcapCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Voting_barCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_rcap 
ℛeℙ@¢ᴋ€r
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_lcapCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Voting_barCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_rcap 
ronaldinho424
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_lcapCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Voting_barCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_rcap 
Engh3
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_lcapCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Voting_barCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_rcap 
geodasoft
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_lcapCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Voting_barCoursera - How to Win a Data Science Competition Learn from Top  Kagglers Vote_rcap 
Noviembre 2024
LunMarMiérJueVieSábDom
    123
45678910
11121314151617
18192021222324
252627282930 
CalendarioCalendario
Últimos temas
» Mastering Interpersonal Communication And Social Dynamics
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers EmptyHoy a las 9:56 pm por missyou123

» Mastering Epigenetics How To Hack Your Genes
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers EmptyHoy a las 8:21 pm por missyou123

» Master Accounting A-Z Crash Course for Success
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers EmptyHoy a las 8:19 pm por missyou123

» Lose Weight, Tone Up And Balance Your Hormones
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers EmptyHoy a las 8:17 pm por missyou123

» Linux Incident Response Basics
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers EmptyHoy a las 8:15 pm por missyou123

» Linkedin Mastery For Solopreneurs & Small Businesses 2024
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers EmptyHoy a las 8:13 pm por missyou123

» Linkedin - Introduction to Artificial Intelligence (2024)
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers EmptyHoy a las 8:10 pm por missyou123

» Learn Python from scratch. by Faryal Imran
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers EmptyHoy a las 7:44 pm por missyou123

» Learning Notebook LM: Your AI-Powered Research Assistant
Coursera - How to Win a Data Science Competition Learn from Top  Kagglers EmptyHoy a las 7:42 pm por missyou123

Sondeo
Visita de Paises
free counters
Free counters

Comparte | 
 

 Coursera - How to Win a Data Science Competition Learn from Top Kagglers

Ver el tema anterior Ver el tema siguiente Ir abajo 
AutorMensaje
Invitado
Invitado



Coursera - How to Win a Data Science Competition Learn from Top  Kagglers Empty
MensajeTema: Coursera - How to Win a Data Science Competition Learn from Top Kagglers   Coursera - How to Win a Data Science Competition Learn from Top  Kagglers EmptyLun Abr 27, 2020 8:10 pm

Coursera - How to Win a Data Science Competition Learn from Top  Kagglers Fbf026c4cd35752800a308f656712e75

Coursera - How to Win a Data Science Competition: Learn from Top Kagglers
WEBRip | English | MP4 | 1280 x 720 | AVC ~358 kbps | 25 fps
AAC | 128 Kbps | 44.1 KHz | 2 channels | Subs: English (.srt) | ~10 hours | 2.02 GB
Genre: eLearning Video / Computer Science, Data Science
If you want to break into competitive data science, then this course is for you! Participating in predictive modelling competitions can help you gain practical experience, improve and harness your data modelling skills in various domains such as credit, insurance, marketing, natural language processing, sales' forecasting and computer vision to name a few.

At the same time you get to do it in a competitive context against thousands of participants where each one tries to build the most predictive algorithm. Pushing each other to the limit can result in better performance and smaller prediction errors. Being able to achieve high ranks consistently can help you accelerate your career in data science.

In this course, you will learn to analyse and solve competitively such predictive modelling tasks.

When you finish this class, you will:

- Understand how to solve predictive modelling competitions efficiently and learn which of the skills obtained can be applicable to real-world tasks.
- Learn how to preprocess the data and generate new features from various sources such as text and images.
- Be taught advanced feature engineering techniques like generating mean-encodings, using aggregated statistical measures or finding nearest neighbors as a means to improve your predictions.
- Be able to form reliable cross validation methodologies that help you benchmark your solutions and avoid overfitting or underfitting when tested with unobserved (test) data.
- Gain experience of analysing and interpreting the data. You will become aware of inconsistencies, high noise levels, errors and other data-related issues such as leakages and you will learn how to overcome them.
- Acquire knowledge of different algorithms and learn how to efficiently tune their hyperparameters and achieve top performance.
- Master the art of combining different machine learning models and learn how to ensemble.
- Get exposed to past (winning) solutions and codes and learn how to read them.

Disclaimer : This is not a machine learning course in the general sense. This course will teach you how to get high-rank solutions against thousands of competitors with focus on practical usage of machine learning methods rather than the theoretical underpinnings behind them.

Prerequisites:
- Python: work with DataFrames in pandas, Description figures in matDescriptionlib, import and train models from scikit-learn, XGBoost, LightGBM.
- Machine Learning: basic understanding of linear models, K-NN, random forest, gradient boosting and neural networks.

Syllabus

Introduction & Recap
-This week we will introduce you to competitive data science. You will learn about competitions' mechanics, the difference between competitions and a real life data science, hardware and software that people usually use in competitions. We will also briefly recap major ML models frequently used in competitions.

Feature Preprocessing and Generation with Respect to Models
-In this module we will summarize approaches to work with features: preprocessing, generation and extraction. We will see, that the choice of the machine learning model impacts both preprocessing we apply to the features and our approach to generation of new ones. We will also discuss feature extraction from text with Bag Of Words and Word2vec, and feature extraction from images with Convolution Neural Networks.

Final Project Description
-This is just a reminder, that the final project in this course is better to start soon! The final project is in fact a competition, in this module you can find an information about it.

Exploratory Data Analysis
-We will start this week with Exploratory Data Analysis (EDA). It is a very broad and exciting topic and an essential component of solving process. Besides regular videos you will find a walk through EDA process for Springleaf competition data and an example of prolific EDA for NumerAI competition with extraordinary findings.

Validation
-In this module we will discuss various validation strategies. We will see that the strategy we choose depends on the competition setup and that correct validation scheme is one of the bricks for any winning solution.

Data Leakages
-Finally, in this module we will cover something very unique to data science competitions. That is, we will see examples how it is sometimes possible to get a top position in a competition with a very little machine learning, just by exploiting a data leakage.

Metrics Optimization
-This week we will first study another component of the competitions: the evaluation metrics. We will recap the most prominent ones and then see, how we can efficiently optimize a metric given in a competition.

Advanced Feature Engineering I
-In this module we will study a very powerful technique for feature generation. It has a lot of names, but here we call it "mean encodings". We will see the intuition behind them, how to construct them, regularize and extend them.

Hyperparameter Optimization
-In this module we will talk about hyperparameter optimization process. We will also have a special video with practical tips and tricks, recorded by four instructors.

Advanced feature engineering II
-In this module we will learn about a few more advanced feature engineering techniques.

Ensembling
-Nowadays it is hard to find a competition won by a single model! Every winning solution incorporates ensembles of models. In this module we will talk about the main ensembling techniques in general, and, of course, how it is better to ensemble the models in practice.

Competitions go through
-For the 5th week we've prepared for you several "walk-through" videos. In these videos we discuss solutions to competitions we took prizes at. The video content is quite short this week to let you spend more time on the final project. Good luck!

Final Project
-Final project for the course.

General
Complete name : 010. Numeric features.mp4
Format : MPEG-4
Format profile : Base Media
Codec ID : isom (isom/iso2/avc1/mp41)
File size : 48.3 MiB
Duration : 13 min 41 s
Overall bit rate : 493 kb/s
Writing application : Lavf55.33.100

Video
ID : 1
Format : AVC
Format/Info : Advanced Video Codec
Format profile : Main@L3.1
Format settings : CABAC / 4 Ref Frames
Format settings, CABAC : Yes
Format settings, RefFrames : 4 frames
Codec ID : avc1
Codec ID/Info : Advanced Video Coding
Duration : 13 min 41 s
Bit rate : 358 kb/s
Width : 1 280 pixels
Height : 720 pixels
Display aspect ratio : 16:9
Frame rate mode : Constant
Frame rate : 25.000 FPS
Color space : YUV
Chroma subsampling : 4:2:0
Bit depth : 8 bits
Scan type : Progressive
Bits/(Pixel*Frame) : 0.016
Stream size : 35.1 MiB (73%)
Writing library : x264 core 142
Encoding settings : cabac=1 / ref=3 / deblock=1:0:0 / analyse=0x1:0x111 / me=hex / subme=7 / psy=1 / psy_rd=1.00:0.00 / mixed_ref=1 / me_range=16 / chroma_me=1 / trellis=1 / 8x8dct=0 / cqm=0 / deadzone=21,11 / fast_pskip=1 / chroma_qp_offset=-2 / threads=12 / lookahead_threads=2 / sliced_threads=0 / nr=0 / decimate=1 / interlaced=0 / bluray_compat=0 / constrained_intra=0 / bframes=3 / b_pyramid=2 / b_adapt=1 / b_bias=0 / direct=1 / weightb=1 / open_gop=0 / weightp=2 / keyint=250 / keyint_min=25 / scenecut=40 / intra_refresh=0 / rc_lookahead=40 / rc=crf / mbtree=1 / crf=24.0 / qcomp=0.60 / qpmin=0 / qpmax=69 / qpstep=4 / ip_ratio=1.40 / aq=1:1.00
Language : English

Audio
ID : 2
Format : AAC
Format/Info : Advanced Audio Codec
Format profile : LC
Codec ID : mp4a-40-2
Duration : 13 min 41 s
Duration_LastFrame : -6 ms
Bit rate mode : Constant
Bit rate : 128 kb/s
Channel(s) : 2 channels
Channel positions : Front: L R
Sampling rate : 44.1 kHz
Frame rate : 43.066 FPS (1024 SPF)
Compression mode : Lossy
Stream size : 12.5 MiB (26%)
Language : English
Default : Yes
Alternate group : 1

Screenshots

Coursera - How to Win a Data Science Competition Learn from Top  Kagglers 1b51bdf4c3e84ac63ec2d5bb0fda6ed2

Coursera - How to Win a Data Science Competition Learn from Top  Kagglers B9add9926c46ce6d6531b5e057d9d6df
Download link:
Citación :
rapidgator_net:
https://rapidgator.net/file/dc3e21627a428fd072316a9e035ae333/wf45a.Coursera..How.to.Win.a.Data.Science.Competition.Learn.from.Top.Kagglers.part1.rar.html
https://rapidgator.net/file/3005f9e606288ef070e0c7cea1cc0129/wf45a.Coursera..How.to.Win.a.Data.Science.Competition.Learn.from.Top.Kagglers.part2.rar.html
https://rapidgator.net/file/92e818cb771338cd8763ac2f032f1fa8/wf45a.Coursera..How.to.Win.a.Data.Science.Competition.Learn.from.Top.Kagglers.part3.rar.html

nitroflare_com:
https://nitroflare.com/view/A3D9FF1BFDF2CC6/wf45a.Coursera..How.to.Win.a.Data.Science.Competition.Learn.from.Top.Kagglers.part1.rar
https://nitroflare.com/view/32D62038604AED8/wf45a.Coursera..How.to.Win.a.Data.Science.Competition.Learn.from.Top.Kagglers.part2.rar
https://nitroflare.com/view/8321D89B1F64CFF/wf45a.Coursera..How.to.Win.a.Data.Science.Competition.Learn.from.Top.Kagglers.part3.rar

uploadgig_com:
http://uploadgig.com/file/download/39f0ea725773f974/wf45a.Coursera..How.to.Win.a.Data.Science.Competition.Learn.from.Top.Kagglers.part1.rar
http://uploadgig.com/file/download/fa7c25d56532DBcF/wf45a.Coursera..How.to.Win.a.Data.Science.Competition.Learn.from.Top.Kagglers.part2.rar
http://uploadgig.com/file/download/734E28f15b57534c/wf45a.Coursera..How.to.Win.a.Data.Science.Competition.Learn.from.Top.Kagglers.part3.rar

Links are Interchangeable - No Password - Single Extraction
Volver arriba Ir abajo
 

Coursera - How to Win a Data Science Competition Learn from Top Kagglers

Ver el tema anterior Ver el tema siguiente Volver arriba 
Página 1 de 1.

 Temas similares

-
» Coursera - Foundations Data, Data, Everywhere
» Coursera Learn to Program The Fundamentals (University of Toronto)
» Coursera - Learn English Specialization by Tsinghua University
» Coursera - Web Intelligence and Big Data
» Coursera - Learn to Program Crafting Quality Code (University of Toronto)

Permisos de este foro:No puedes responder a temas en este foro.
Foro Wanako1 :: Programas o Aplicaciónes :: Ayuda, Tutoriales-