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About the test:

Pytorch -testen evaluerer en kandidats viden og færdigheder i Pytorch, en populær dyb læringsramme. Den vurderer deres forståelse af datavidenskab, dyb læring, maskinlæring, Python, Python Pandas, Python Linux, Numpy og Data Structures.

Covered skills:

  • Pytorch tensorer
  • Transformerer i pytorch
  • Optimzing modelparametre med pytorch
  • Grundlæggende om Python
  • Datasæt og dataloadere i Pytorch
  • Bygningsmodeller med Pytorch
  • Fundamentals for datavidenskab
  • Programmering i Python

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9 reasons why
9 reasons why

Adaface PyTorch Assessment Test is the most accurate way to shortlist Dataforskers



Reason #1

Tests for on-the-job skills

The PyTorch Test helps recruiters and hiring managers identify qualified candidates from a pool of resumes, and helps in taking objective hiring decisions. It reduces the administrative overhead of interviewing too many candidates and saves time by filtering out unqualified candidates at the first step of the hiring process.

The test screens for the following skills that hiring managers look for in candidates:

  • Forståelse og arbejde med pytorch tensorer
  • Oprettelse og brug af datasæt og dataloadere i Pytorch
  • Anvendelse af transformationer i Pytorch
  • Bygningsmodeller med Pytorch
  • Optimering af modelparametre med pytorch
  • Implementering af Data Science Fundamentals
  • Demonstration af færdigheder i Bython Basics
  • Effektiv programmering i Python
Reason #2

No trick questions

no trick questions

Traditional assessment tools use trick questions and puzzles for the screening, which creates a lot of frustration among candidates about having to go through irrelevant screening assessments.

View sample questions

The main reason we started Adaface is that traditional pre-employment assessment platforms are not a fair way for companies to evaluate candidates. At Adaface, our mission is to help companies find great candidates by assessing on-the-job skills required for a role.

Why we started Adaface
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Reason #3

Non-googleable questions

We have a very high focus on the quality of questions that test for on-the-job skills. Every question is non-googleable and we have a very high bar for the level of subject matter experts we onboard to create these questions. We have crawlers to check if any of the questions are leaked online. If/ when a question gets leaked, we get an alert. We change the question for you & let you know.

How we design questions

Dette er kun en lille prøve fra vores bibliotek med 10.000+ spørgsmål. De faktiske spørgsmål om dette Pytorch -test vil være ikke-gåbart.

🧐 Question

Medium

ZeroDivisionError and IndexError
Exceptions
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What will the following Python code output?
 image

Medium

Session
File Handling
Dictionary
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The function high_sess should compute the highest number of events per session of each user in the database by reading a comma-separated value input file of session data. The result should be returned from the function as a dictionary. The first column of each line in the input file is expected to contain the user’s name represented as a string. The second column is expected to contain an integer representing the events in a session. Here is an example input file:
Tony,10
Stark,12
Black,25
Your program should ignore a non-conforming line like this one.
Stark,3
Widow,6
Widow,14
The resulting return value for this file should be the following dictionary: { 'Stark':12, 'Black':25, 'Tony':10, 'Widow':14 }
What should replace the CODE TO FILL line to complete the function?
 image

Medium

Max Code
Arrays
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Below are code lines to create a Python function. Ignoring indentation, what lines should be used and in what order for the following function to be complete:
 image

Medium

Recursive Function
Recursion
Dictionary
Lists
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Consider the following Python code:
 image
In the above code, recursive_search is a function that takes a dictionary (data) and a target key (target) as arguments. It searches for the target key within the dictionary, which could potentially have nested dictionaries and lists as values, and returns the value associated with the target key. If the target key is not found, it returns None.

nested_dict is a dictionary that contains multiple levels of nested dictionaries and lists. The recursive_search function is then called with nested_dict as the data and 'target_key' as the target.

What will the output be after executing the above code?

Medium

Stacking problem
Stack
Linkedlist
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What does the below function ‘fun’ does?
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A: Sum of digits of the number passed to fun.
B: Number of digits of the number passed to fun.
C: 0 if the number passed to fun is divisible by 10. 1 otherwise.
D: Sum of all digits number passed to fun except for the last digit.

Medium

Amazon electronics product feedback
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Amazon's electronics store division has over the last few months focused on getting customer feedback on their products, and marking them as safe/ unsafe. Their data science team has used decision trees for this. 
The training set has these features: product ID, data, summary of feedback, detailed feedback and a binary safe/unsafe tag. During training, the data science team dropped any feedback records with missing features. The test set has a few records with missing "detailed feedback" field. What would you recommend?
A: Remove the test samples with missing detailed feedback text fields
B: Generate synthetic data to fill in missing fields
C: Use an algorithm that handles missing data better than decision trees
D: Fill in the missing detailed feedback text field with the summary of feedback field.

Easy

Fraud detection model
Logistic Regression
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Your friend T-Rex is working on a logistic regression model for a bank, for a fraud detection usecase. The accuracy of the model is 98%. T-Rex's manager's concern is that 85% of fraud cases are not being recognized by the model. Which of the following will surely help the model recognize more than 15% of fraud cases?

Medium

Rox's decision tree classifier
Decision Tree Classifier
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Your data science intern Rox was asked to create a decision tree classifier with 12 input variables. The tree used 7 of the 12 variables, and was 5 levels deep. Few nodes of the tree contain 3 data points. The area under the curve (AUC) is 0.86. As Rox's mentor, what is your interpretation?
A. The AUC is high, and the small nodes are all very pure- the model looks accurate.
B. The tree might be overfitting- try fitting shallower trees and using an ensemble method.
C. The AUC is high, so overall the model is accurate. It might not be well-calibrated, because the small nodes will give poor estimates of probability.
D. The tree did not split on all the input variables. We need a larger data set to get a more accurate model.
🧐 Question🔧 Skill

Medium

ZeroDivisionError and IndexError
Exceptions

2 mins

Python
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Medium

Session
File Handling
Dictionary

2 mins

Python
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Medium

Max Code
Arrays

2 mins

Python
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Medium

Recursive Function
Recursion
Dictionary
Lists

3 mins

Python
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Medium

Stacking problem
Stack
Linkedlist

4 mins

Python
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Medium

Amazon electronics product feedback

2 mins

Data Science
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Easy

Fraud detection model
Logistic Regression

2 mins

Data Science
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Medium

Rox's decision tree classifier
Decision Tree Classifier

2 mins

Data Science
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🧐 Question🔧 Skill💪 Difficulty⌛ Time
ZeroDivisionError and IndexError
Exceptions
Python
Medium2 mins
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Session
File Handling
Dictionary
Python
Medium2 mins
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Max Code
Arrays
Python
Medium2 mins
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Recursive Function
Recursion
Dictionary
Lists
Python
Medium3 mins
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Stacking problem
Stack
Linkedlist
Python
Medium4 mins
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Amazon electronics product feedback
Data Science
Medium2 mins
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Fraud detection model
Logistic Regression
Data Science
Easy2 mins
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Rox's decision tree classifier
Decision Tree Classifier
Data Science
Medium2 mins
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Reason #4

1200+ customers in 75 countries

customers in 75 countries
Brandon

Med Adaface var vi i stand til at optimere vores indledende screeningsproces med op mod 75 %, hvilket frigjorde kostbar tid for både ansættelsesledere og vores talentanskaffelsesteam!


Brandon Lee, Leder af mennesker, Love, Bonito

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Reason #5

Designed for elimination, not selection

The most important thing while implementing the pre-employment Pytorch -test in your hiring process is that it is an elimination tool, not a selection tool. In other words: you want to use the test to eliminate the candidates who do poorly on the test, not to select the candidates who come out at the top. While they are super valuable, pre-employment tests do not paint the entire picture of a candidate’s abilities, knowledge, and motivations. Multiple easy questions are more predictive of a candidate's ability than fewer hard questions. Harder questions are often "trick" based questions, which do not provide any meaningful signal about the candidate's skillset.

Science behind Adaface tests
Reason #6

1 click candidate invites

Email invites: You can send candidates an email invite to the Pytorch -test from your dashboard by entering their email address.

Public link: You can create a public link for each test that you can share with candidates.

API or integrations: You can invite candidates directly from your ATS by using our pre-built integrations with popular ATS systems or building a custom integration with your in-house ATS.

invite candidates
Reason #7

Detailed scorecards & benchmarks

Se prøvescorekort
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Reason #8

High completion rate

Adaface tests are conversational, low-stress, and take just 25-40 mins to complete.

This is why Adaface has the highest test-completion rate (86%), which is more than 2x better than traditional assessments.

test completion rate
Reason #9

Advanced Proctoring


Learn more

About the PyTorch Online Test

Why you should use Pre-employment PyTorch Test?

The Pytorch -test makes use of scenario-based questions to test for on-the-job skills as opposed to theoretical knowledge, ensuring that candidates who do well on this screening test have the relavant skills. The questions are designed to covered following on-the-job aspects:

  • Oprettelse og manipulering af pytorch -tensorer
  • Brug af datasæt og dataloadere i Pytorch
  • Anvendelse af transformationer i Pytorch
  • Bygningsmodeller med Pytorch
  • Optimering af modelparametre med pytorch
  • Forståelse af datavidenskabelige grundlæggende elementer
  • Python Basics and Syntax
  • Programmering i Python
  • Arbejder med Python -pakker og biblioteker
  • Datamanipulation og analyse i Python

Once the test is sent to a candidate, the candidate receives a link in email to take the test. For each candidate, you will receive a detailed report with skills breakdown and benchmarks to shortlist the top candidates from your pool.

What topics are covered in the PyTorch Test?

  • datasæt og dataloadere i Pytorch

    datasæt og dataloadere i Pytorch Tillad effektiv håndtering og behandling af store datasæt. Disse komponenter muliggør let dataindlæsning, transformation og batching, som er afgørende for træning og evaluering af maskinindlæringsmodeller.

  • transformerer i Pytorch

    Transforms i Pytorch giver et sæt operationer til forbehandling og forstærkedata. De muliggør opgaver såsom at ændre størrelse, beskæring og normalisering af data, hvilket forbedrer kvaliteten og variationen af ​​input til modeller. Testekspertise i Pytorch -transformationer er vigtigt for at sikre robust og effektiv dataforberedelse.

  • bygningsmodeller med Pytorch

    Bygningsmodeller med Pytorch involverer at bruge sine kraftfulde værktøjer og API'er til at definere og tilpasse neuralt netværk Arkitekturer. Denne færdighed er afgørende for at designe modeller, der er skræddersyet til specifikke opgaver, hvilket muliggør fleksibilitet og innovation i maskinindlæringsapplikationer.

  • Optimering af modelparametre med pytorch </H4> <p> Optimering af modelparametre med pytorch involverer anvendelse af teknikker som backpropagation og gradientafstamning for effektivt at opdatere og optimere modelvægte. Denne færdighed er vigtig for at forbedre modelydelsen og opnå højere nøjagtighed i maskinlæringsopgaver. </p> <h4> Data Science Fundamentals

    Data Science Fundamentals omfatter en bred vifte af koncepter og teknikker, der bruges til analyse og fortolkning data. Måling af denne færdighed sikrer, at en kandidat har den grundlæggende viden, der kræves for effektivt at arbejde med data og tage informerede beslutninger.

  • python -grundlæggende

    python -grundlæggende inkluderer vigtige programmeringskoncepter og syntaks i Python. Måling af denne færdighed sikrer, at en kandidat har den nødvendige viden til at skrive og forstå Python -kode, som er vidt brugt i dataanalyse og maskinlæring.

  • programmering i Python

    Programmering i Python involverer Anvendelse af Python-sprogfærdigheder til at løse problemer i den virkelige verden. Denne færdighed måler en kandidats færdigheder i implementering af algoritmer, skrivning af effektiv kode og håndtering af forskellige datastrukturer, som alle er vigtige i forbindelse med at udvikle og implementere maskinlæringsmodeller.

  • Full list of covered topics

    The actual topics of the questions in the final test will depend on your job description and requirements. However, here's a list of topics you can expect the questions for Pytorch -test to be based on.

    Pytorch tensorer
    Pytorch Autograd
    Pytorch fremad og bagudformering
    PyTorch Model Training
    Pytorch -tabsfunktioner
    Pytorch -aktiveringsfunktioner
    Pytorch -optimizers
    Pytorch -dataindlæsning
    Pytorch -dataforøgelse
    Pytorch -datapræbehandling
    Pytorch -datasætopdeling
    Pytorch Model Architecture
    Pytorch -modelevaluering
    Pytorch Hyperparameter Tuning
    Datavidenskabsprincipper
    Statistisk analyse
    Datavisualisering
    Maskinindlæringsalgoritmer
    Python -syntaks og datatyper
    Betingede udsagn
    Loops og iteration
    Funktioner og moduler
    Filhåndtering
    Objektorienteret programmering
    Undtagelseshåndtering
    Datakonstruktioner
    Grundlæggende SQL- og databaseinteraktioner
    Regelmæssige udtryk
    Debugging -teknikker
    Kodeoptimering
    Dokumentation og kommentering
    Enhedstestning i Python
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What roles can I use the PyTorch Test for?

  • Dataforsker
  • Machine Learning Engineer
  • Deep Learning Engineer
  • Dataanalytiker
  • Python -udvikler
  • Software ingeniør
  • Forsker
  • Kunstig efterretningsingeniør
  • Dataingeniør
  • Dataarkitekt

How is the PyTorch Test customized for senior candidates?

For intermediate/ experienced candidates, we customize the assessment questions to include advanced topics and increase the difficulty level of the questions. This might include adding questions on topics like

  • Implementering af maskinlæringsalgoritmer med Pytorch
  • Evaluering af maskinlæringsmodeller ved hjælp af Pytorch
  • Forståelse af neurale netværk og dyb læring
  • Anvendelse af teknikker til neurale netværkstræning
  • Implementering af konvolutionale neurale netværk (CNN'er)
  • Arbejde med tilbagevendende neurale netværk (RNN'er)
  • Brug af overførselslæring i Pytorch
  • Implementering af Natural Language Processing (NLP) med Pytorch
  • Anvendelse af computervisionsteknikker med pytorch
  • Implementering af forstærkningslæringsalgoritmer med Pytorch
Singapore government logo

Ansættelseslederne mente, at de gennem de tekniske spørgsmål, som de stillede under panelinterviewene, var i stand til at fortælle, hvilke kandidater der havde bedre score og differentieret med dem, der ikke scorede så godt. De er meget tilfreds med kvaliteten af ​​de kandidater, der er nomineret med Adaface-screeningen.


85%
Reduktion i screeningstid

PyTorch Hiring Test Ofte stillede spørgsmål

Kan jeg kombinere flere færdigheder i en brugerdefineret vurdering?

Ja absolut. Brugerdefinerede vurderinger er oprettet baseret på din jobbeskrivelse og vil omfatte spørgsmål om alle must-have-færdigheder, du angiver.

Har du nogen anti-cheating eller proctoring-funktioner på plads?

Vi har følgende anti-cheating-funktioner på plads:

  • Ikke-gåbare spørgsmål
  • IP Proctoring
  • Webproctoring
  • Webcam Proctoring
  • Detektion af plagiering
  • Sikker browser

Læs mere om Proctoring Features.

Hvordan fortolker jeg testresultater?

Den primære ting at huske på er, at en vurdering er et elimineringsværktøj, ikke et udvælgelsesværktøj. En færdighedsvurdering er optimeret for at hjælpe dig med at eliminere kandidater, der ikke er teknisk kvalificerede til rollen, den er ikke optimeret til at hjælpe dig med at finde den bedste kandidat til rollen. Så den ideelle måde at bruge en vurdering på er at beslutte en tærskelværdi (typisk 55%, vi hjælper dig med benchmark) og inviterer alle kandidater, der scorer over tærsklen for de næste interviewrunder.

Hvilken oplevelsesniveau kan jeg bruge denne test til?

Hver Adaface -vurdering tilpasses til din jobbeskrivelse/ ideel kandidatperson (vores emneeksperter vælger de rigtige spørgsmål til din vurdering fra vores bibliotek på 10000+ spørgsmål). Denne vurdering kan tilpasses til ethvert erfaringsniveau.

Får hver kandidat de samme spørgsmål?

Ja, det gør det meget lettere for dig at sammenligne kandidater. Valgmuligheder for MCQ -spørgsmål og rækkefølgen af ​​spørgsmål randomiseres. Vi har anti-cheating/proctoring funktioner på plads. I vores virksomhedsplan har vi også muligheden for at oprette flere versioner af den samme vurdering med spørgsmål om lignende vanskelighedsniveauer.

Jeg er kandidat. Kan jeg prøve en øvelsestest?

Nej. Desværre understøtter vi ikke praksisforsøg i øjeblikket. Du kan dog bruge vores eksempler på spørgsmål til praksis.

Hvad er omkostningerne ved at bruge denne test?

Du kan tjekke vores prisplaner.

Kan jeg få en gratis prøve?

Ja, du kan tilmelde dig gratis og forhåndsvise denne test.

Jeg flyttede lige til en betalt plan. Hvordan kan jeg anmode om en brugerdefineret vurdering?

Her er en hurtig guide til hvordan man anmoder om en brugerdefineret vurdering på adaface.

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