ONE PIECE
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Alternative(s): ワンピース; 海贼王; 원피스; One Piece (Russian, Indonesian, Danish, French, German, Portuguese, Spanish, Swedish, Italian, Norwegian, Finnish); Đảo hải tặc (Vietnamese); وان پیس, یک قطعه (Persian); Één stuk (Dutch); All'Arrembaggio(Italian); Jeden Kawałek (Polish); O piesă (Română); Ντρέικ(Greek); ون بيس ، قطعة واحدة (arabic); Bir Parça (Turkish); Isang Piraso (Filipino); Budak Getah (Malaysia); วัน พีซ (Thai)
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Junjhamcc17
Junjhamcc17
Aug 24, 2018
#One-PiecePor fin q comienze el desmadre
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Clion
Clion
Aug 24, 2018
#One-PieceBieeen, otro capítulo de relleno!!!
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pizzaconpiña
pizzaconpiña
Aug 17, 2018
#One-Punch-Mantardan mucho en actualizar. 😢
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nimrod c
nimrod c
Aug 15, 2018
#One-Punch-Manfalta que aparesca saitama
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CaroNeko
CaroNeko
Aug 14, 2018
#One-Punch-ManCaLvO cOn CaPa???????? >:'v
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Aranza Yuritzi Palomares Lopez
Aranza Yuritzi Palomares Lopez
Aug 12, 2018
#One-PieceRealmente me recomiendan leerlo?? está bueno??
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kumi - san
kumi - san
May 06, 2020
One of the games I love
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Xx Luna dog xX
Xx Luna dog xX
Jul 07, 2020
Um one of them is daek and the other one is not
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Izanami •
Izanami •
Aug 14, 2018
#One-Punch-Manles recomiendo ONE mas avanzado pero - calidad , y pues a esperar abril dl 2019 😋
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Clear Ann Rayos
Clear Ann Rayos
Oct 17, 2020
No One Is Ever Born Evil
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Francisco Gabino
Francisco Gabino
Aug 19, 2018
#One-Pieceshokugeki no sanji simplemente perturbadross :v
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?Funji?
?Funji?
Aug 14, 2018
#One-Punch-Man¿ya se calmaron? ,¿felices?
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NoUsername
NoUsername
Aug 14, 2018
#One-Punch-Manese yasui esta bien op
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drakedanielz
drakedanielz
Aug 14, 2018
#One-Punch-ManWow muchas gracias estuvo genial
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OTAKUFORLIFE888
OTAKUFORLIFE888
Aug 15, 2018
#ONE-SIDED-LOVETHEY R DROPPING THE TRANSLATIONS?!!! DANGGGGGG!!! i guess ill read the chinese one😒
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ishan09
ishan09
Dec 07, 2022
Beginner’s Guide For The Data Scientist ?

data Science is a mix of different instruments, calculations, and AI standards to find concealed designs from crude information. What makes it not quite the same as measurements is that information researchers utilize different high-level AI calculations to distinguish the event of a specific occasion from now on. An Information Researcher will take a gander at the information from many points, some of the time points not known before.


data Perception

Information Perception is one of the main parts of information science. It is one of the fundamental apparatuses used to investigate and concentrate on connections between various factors. Information perception apparatuses like to disperse plots, line diagrams, bar plots, histograms, Q-Q plots, smooth densities, box plots, match plots, heat maps, and so on can be utilized for enlightening examination. Information perception is additionally utilized in AI for information preprocessing and examination, highlight determination, model structure, model testing, and model assessment.


Exceptions data science course in pune


An exception is a piece of information, that is totally different from the dataset. Exceptions are many times simply terrible information, made because of a broken down sensor, debased examinations, or human mistake in recording information. At times, exceptions could show something genuine like a glitch in a framework. Anomalies are extremely normal and are normal in enormous datasets. One familiar method for distinguishing exceptions in a dataset is by utilizing a container plot.


data Ascription

Most datasets contain missing qualities. The most straightforward method for managing missing information is just to discard the data of interest. Different addition procedures can be utilized for this reason to assess the missing qualities from the other preparation tests in the dataset. One of the most widely recognized addition methods is mean attribution where the missing worth is supplanted with the mean worth of the whole component section.


Information Scaling

Information scaling works on the quality and prescient force of the information model. Information scaling can be accomplished by normalizing or normalizing genuine esteemed info and result factors.
data science classes in pune
There are two sorts of information scaling accessible standardization and normalization.



Head Part Examination

Huge datasets with hundreds or thousands of highlights frequently lead to overt repetitiveness particularly when elements are connected with one another. Preparing a model on a high-layered dataset having an excessive number of elements can at times prompt overfitting. Head Part Examination (PCA) is a factual strategy that is utilized for include extraction. PCA is utilized for high-layered and related information. The essential thought of PCA is to change the first space of elements into the space of the important part.


Direct Discriminant Investigation

The objective of the direct discriminant investigation is to find the component subspace that enhances class distinctness and diminishes dimensionality. Thus, LDA is a directed calculation.

data science training in pune

Information Apportioning

In AI, the dataset is frequently divided into preparing and testing sets. The model is prepared on the preparation dataset and afterward tried on the testing dataset. The testing dataset hence goes about as the concealed dataset, which can be utilized to gauge a speculation blunder (the mistake expected when the model is applied to a genuine world dataset after the model has been sent).


Regulated Learning

These are AI calculations that perform advancing by concentrating on the connection between the component factors and the known objective variable. Administered learning has two subcategories like ceaseless objective factors and discrete objective factors.




In unaided learning, unlabeled information or information of obscure construction are managed. Utilizing solo learning strategies, one can investigate the design of the information to extricate significant data without the direction of a known result variable or prize capability. K-implies bunching is an illustration of an unaided learning ca
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Gotenks
Gotenks
Aug 24, 2018
#One-PieceNo era lo que esperaba pero estoy satisfecho :v
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[ShiroYasha]
[ShiroYasha]
Aug 17, 2018
#One-Piecese prendió estabmierda :v
.
wat tha fackkkk?????? ren .-.
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Estevane
Estevane
Aug 16, 2018
#One-PieceEstoy hasta la madre de esperar >:v!
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DARKCLAW793
DARKCLAW793
Aug 14, 2018
#One-Punch-Mantantas páginas, y de Saitama nino...ninoticias
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