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About the test:

ニューラルネットワークテストは、候補者のニューラルネットワーク、ディープラーニング、機械学習、Python、データサイエンス、Numpyの知識と理解を評価します。これには、Pythonのプログラミングスキルを評価するための理論的知識とコーディングの質問を評価するための複数選択の質問が含まれています。

Covered skills:

  • ニューラルネットワークの基本
  • 深いニューラルネットワーク
  • 機械学習
  • データサイエンス
  • 浅いニューラルネットワーク
  • 深い学習
  • Python
  • numpy

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9 reasons why
9 reasons why

Adaface Neural Networks Assessment Test is the most accurate way to shortlist データサイエンティストs



Reason #1

Tests for on-the-job skills

The Neural Networks 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:

  • ニューラルネットワークの基本を理解する
  • 浅いニューラルネットワークを実装する能力
  • 深いニューラルネットワークアーキテクチャの知識
  • 深い学習の概念の習熟度
  • 機械学習アルゴリズムの理解
  • ニューラルネットワークのPythonコードを作成する機能
  • データサイエンスの原則に精通しています
  • データ操作の能力
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

これらは、10,000以上の質問のライブラリからのわずかなサンプルです。これに関する実際の質問 ニューラルネットワークテスト グーグルできません.

🧐 Question

Medium

Changed decision boundary
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We have trained a model on a linearly separable training set to classify the data points into 2 sets (binary classification). Our intern recently labelled some new data points which are all correctly classified by the model. All of the new data points lie far away from the decision boundary. We added these new data points and re-trained our model- our decision boundary changed. Which of these models do you think we could be working with?
The 2 data sources use SQL Server and have a 3-character CompanyCode column. Both data sources contain an ORDER BY clause to sort the data by CompanyCode in ascending order. 

Teylor wants to make sure that the Merge Join transformation works without additional transformations. What would you recommend?
A: Perceptron
B: SVM
C: Logistic regression
D: Guassion discriminant analysis

Medium

CNN Architecture Tuning
Convolutional Neural Networks
Hyperparameter Optimization
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You are fine-tuning a Convolutional Neural Network (CNN) for image classification. The network architecture is as follows:
 image
The model is trained using the following parameters:

- Batch size: 64
- Learning rate: 0.001
- Optimizer: Adam
- Loss function: Categorical cross-entropy

After several training epochs, you observe that the training accuracy is high, but the validation accuracy plateaus and is significantly lower. This suggests possible overfitting. Which of the following adjustments would most effectively mitigate this issue without overly compromising the model's performance?
A: Increase the batch size to 128
B: Add dropout layers with a dropout rate of 0.5 after each MaxPooling2D layer
C: Replace Adam optimizer with SGD (Stochastic Gradient Descent)
D: Decrease the number of filters in each Conv2D layer by half
E: Increase the learning rate to 0.01
F: Reduce the size of the Dense layer to 64 units

Medium

CNN for Imbalanced Image Dataset
Convolutional Neural Networks
Imbalanced Datasets
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You are fine-tuning a Convolutional Neural Network (CNN) for an image classification task where the dataset is highly imbalanced. The majority class comprises 70% of the data. The initial model setup and subsequent experiments yield the following observations:

**Initial Setup:**

- CNN architecture: 6 convolutional layers with increasing filter sizes, followed by 2 fully connected layers.
- Activation function: ReLU
- No class-weighting or data augmentation.
- Results: High overall accuracy, but poor precision and recall for minority classes.

**Experiment 1:**

- Changes: Implement class-weighting to penalize mistakes on minority classes more heavily.
- Results: Improved precision and recall for minority classes, but overall accuracy slightly decreased.

**Experiment 2:**

- Changes: Add dropout layers with a rate of 0.5 after each convolutional layer.
- Results: Overall accuracy decreased, and no significant change in precision and recall for minority classes.

Given these outcomes, what is the most effective strategy to further improve the model's performance specifically for the minority classes without compromising the overall accuracy?
A: Increase the dropout rate to 0.7
B: Further fine-tune class-weighting parameters
C: Increase the number of filters in the convolutional layers
D: Add batch normalization layers after each convolutional layer
E: Use a different activation function like LeakyReLU
F: Implement more aggressive data augmentation on the minority class

Easy

Gradient descent optimization
Gradient Descent
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You are working on a regression problem using a simple neural network. You want to optimize the model's weights using gradient descent with different learning rate schedules. Consider the following pseudo code for training the neural network:
 image
Which of the following learning rate schedules would most likely result in the fastest convergence without overshooting the optimal weights?

A: Constant learning rate of 0.01
B: Exponential decay with initial learning rate of 0.1 and decay rate of 0.99
C: Exponential decay with initial learning rate of 0.01 and decay rate of 0.99
D: Step decay with initial learning rate of 0.1 and decay rate of 0.5 every 100 epochs
E: Step decay with initial learning rate of 0.01 and decay rate of 0.5 every 100 epochs
F: Constant learning rate of 0.1

Medium

Less complex decision tree model
Model Complexity
Overfitting
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You are given a dataset to solve a classification problem using a decision tree algorithm. You are concerned about overfitting and decide to implement pruning to control the model's complexity. Consider the following pseudo code for creating the decision tree model:
 image
Which of the following combinations of parameters would result in a less complex decision tree model, reducing the risk of overfitting?

A: max_depth=5, min_samples_split=2, min_samples_leaf=1
B: max_depth=None, min_samples_split=5, min_samples_leaf=5
C: max_depth=3, min_samples_split=2, min_samples_leaf=1
D: max_depth=None, min_samples_split=2, min_samples_leaf=1
E: max_depth=3, min_samples_split=10, min_samples_leaf=10
F; max_depth=5, min_samples_split=5, min_samples_leaf=5

Easy

n-gram generator
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Our newest machine learning developer want to write a function to calculate the n-gram of any text. An N-gram means a sequence of N words. So for example, "black cats" is a 2-gram, "saw black cats" is a 3-gram etc. The 2-gram of the sentence "the big bad wolf fell down" would be [["the", "big"], ["big", "bad"], ["bad", "wolf"], ["wolf", "fell"], ["fell", "down"]]. Can you help them select the correct function for the same?
 image

Easy

Recommendation System Selection
Recommender Systems
Collaborative Filtering
Content-Based Filtering
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You are tasked with building a recommendation system for a newly launched e-commerce website. Given that the website is new, there is not much user interaction data available. Also, the items in the catalog have rich descriptions. Based on these requirements, which type of recommendation system approach would be the most suitable for this task?

Easy

Sensitivity and Specificity
Confusion Matrix
Model Evaluation
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You have trained a supervised learning model to classify customer reviews as either "positive" or "negative" based on a dataset with 10,000 samples and 35 features, including the review text, reviewer's name, and rating. The dataset is split into a 7,000-sample training set and a 3,000-sample test set.

After training the model, you evaluate its performance using a confusion matrix on the test set, which shows the following results:
 image
Based on the confusion matrix, what are the sensitivity and specificity of the model?

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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 image
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?
 image
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

Array Manipulation and Summation
Array Manipulation
Mathematical Operations
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Consider the following code snippet:
 image
What will be the value of G after executing the code?

Medium

Matrix Eigenvalues and Diagonalization
Linear Algebra
Matrix Operations
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Consider the following code snippet:
 image
After running this code, which of the following statements is true regarding the B matrix?
🧐 Question🔧 Skill

Medium

Changed decision boundary

2 mins

Deep Learning
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Medium

CNN Architecture Tuning
Convolutional Neural Networks
Hyperparameter Optimization

3 mins

Deep Learning
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Medium

CNN for Imbalanced Image Dataset
Convolutional Neural Networks
Imbalanced Datasets

3 mins

Deep Learning
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Easy

Gradient descent optimization
Gradient Descent

2 mins

Machine Learning
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Medium

Less complex decision tree model
Model Complexity
Overfitting

2 mins

Machine Learning
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Easy

n-gram generator

2 mins

Machine Learning
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Easy

Recommendation System Selection
Recommender Systems
Collaborative Filtering
Content-Based Filtering

2 mins

Machine Learning
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Easy

Sensitivity and Specificity
Confusion Matrix
Model Evaluation

2 mins

Machine Learning
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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

Array Manipulation and Summation
Array Manipulation
Mathematical Operations

2 mins

NumPy
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Medium

Matrix Eigenvalues and Diagonalization
Linear Algebra
Matrix Operations

3 mins

NumPy
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🧐 Question🔧 Skill💪 Difficulty⌛ Time
Changed decision boundary
Deep Learning
Medium2 mins
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CNN Architecture Tuning
Convolutional Neural Networks
Hyperparameter Optimization
Deep Learning
Medium3 mins
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CNN for Imbalanced Image Dataset
Convolutional Neural Networks
Imbalanced Datasets
Deep Learning
Medium3 mins
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Gradient descent optimization
Gradient Descent
Machine Learning
Easy2 mins
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Less complex decision tree model
Model Complexity
Overfitting
Machine Learning
Medium2 mins
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n-gram generator
Machine Learning
Easy2 mins
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Recommendation System Selection
Recommender Systems
Collaborative Filtering
Content-Based Filtering
Machine Learning
Easy2 mins
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Sensitivity and Specificity
Confusion Matrix
Model Evaluation
Machine Learning
Easy2 mins
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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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Array Manipulation and Summation
Array Manipulation
Mathematical Operations
NumPy
Medium2 mins
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Matrix Eigenvalues and Diagonalization
Linear Algebra
Matrix Operations
NumPy
Medium3 mins
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Reason #4

1200+ customers in 75 countries

customers in 75 countries
Brandon

Adaface を使用することで、最初の選考プロセスを 75% 以上最適化することができ、採用担当マネージャーと人材獲得チームの両方にとって貴重な時間を同様に解放することができました。


Brandon Lee, 人々の責任者, Love, Bonito

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Reason #5

Designed for elimination, not selection

The most important thing while implementing the pre-employment ニューラルネットワークテスト 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 ニューラルネットワークテスト 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

サンプルスコアカードを表示します
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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 Neural Networks Online Test

Why you should use Pre-employment Neural Networks Test?

The ニューラルネットワークテスト 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:

  • ニューラルネットワークの基本を理解する
  • 浅いニューラルネットワークの実装
  • 深いニューラルネットワークの構築
  • 深い学習原則を適用します
  • 機械学習モデルの作成
  • ニューラルネットワークにPythonを使用します
  • データサイエンスの概念を適用します
  • numpyアレイを使用します
  • ニューラルネットワークの最適化の実装
  • 高度な深い学習技術の適用

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 Neural Networks Test?

  • ニューラルネットワークの基本

    ニューラルネットワークの基本とは、構造、操作、学習アルゴリズムを含むニューラルネットワークの基本的な概念と原則を指します。このスキルは、ニューラルネットワークの基礎に関する候補者の理解と、この知識を実際のシナリオに適用する能力を評価するためにテストで測定されます。隠し層が1つしかないニューラルネットワークで。このスキルは、比較的単純なタスクのためのシンプルなニューラルネットワークの設計とトレーニングに関する候補者の理解を評価します。このスキルは、複雑なニューラルネットワークを開発および最適化して階層的な表現学習を必要とするより複雑な問題に取り組む候補者の専門知識を評価します。大規模で構造化されていないデータセットから意味のあるパターンを学習および抽出するネットワーク。このスキルを測定すると、候補者の深い学習技術を効果的に活用し、実際のアプリケーションの最先端のアーキテクチャとアルゴリズムを利用する能力を評価します。コンピューターがデータに基づいて学習し、予測または決定を下すことを可能にするアルゴリズムと統計モデルのトレーニングについて。このスキルを測定することで、機能エンジニアリング、モデル選択、パフォーマンス評価など、機械学習の概念を候補者の把握を評価するのに役立ちます。機械学習。このスキルは、NumpyやPandasなどのライブラリを使用して、ニューラルネットワークを実装し、さまざまなデータ操作および分析技術を適用するためにPythonコードを作成する候補者の能力を評価します。さまざまな科学的方法、アルゴリズム、およびプロセスを通じて、データから洞察と知識を抽出する学際的な分野。このスキルの測定は、現実世界の問題を解決するために必要なデータの前処理、視覚化、特徴抽出、およびその他の重要な側面に関するデータに関する候補者の理解を評価します。 Pythonでは、数値コンピューティングと大規模な多次元アレイとマトリックスの効率的な取り扱いを行います。このスキルは、数学操作、線形代数、およびデータ操作タスクにnumpyを利用する能力を測定します。これらは、ニューラルネットワークの構築とトレーニングに重要です。

  • 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 ニューラルネットワークテスト to be based on.

    アクティベーション機能
    フィードフォワードプロセス
    BackPropagationアルゴリズム
    勾配降下
    コスト関数
    正規化手法
    畳み込みニューラルネットワーク(CNN)
    再発性ニューラルネットワーク(RNN)
    長期記憶(LSTM)
    自動エンコーダー
    深い信念ネットワーク(DBN)
    生成的敵対ネットワーク(GAN)
    ドロップアウトの正規化
    転送学習
    ハイパーパラメーターチューニング
    画像認識
    自然言語処理(NLP)
    オブジェクトの検出
    過剰適合と装着
    サポートベクターマシン(SVM)
    決定木
    ランダムフォレスト
    k-nearest Neighbors(k-nn)
    線形回帰
    ロジスティック回帰
    k-meansクラスタリング
    主成分分析(PCA)
    評価メトリック
    相互検証
    ワンホットエンコーディング
    データクリーニング
    データの前処理
    Scikit-Learnライブラリ
    Pandas Library
    Matplotlibライブラリ
    データの視覚化
    データ分析
    Python構文
    条件付きステートメント
    ループ
    機能
    リスト操作
    文字列操作
    ファイル処理
    例外処理
    モジュールのインポート
    numpyアレイ
    配列操作
    インデックス作成とスライス
    マトリックス操作
    線形代数
    統計関数
    データ型変換
    乱数生成
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What roles can I use the Neural Networks Test for?

  • データサイエンティスト
  • 機械学習エンジニア
  • AI研究者
  • データアナリスト
  • Python開発者
  • データエンジニア
  • 人工知能スペシャリスト
  • 研究科学者
  • ビッグデータエンジニア
  • ソフトウェアエンジニア

How is the Neural Networks 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

  • 機械学習アルゴリズムを利用します
  • ニューラルネットワークにPythonライブラリを使用します
  • 深い学習に数学的概念を適用します
  • ニューラルネットワークアーキテクチャの実装
  • ニューラルネットワークの分析と視覚化の結果
  • 現実世界のシナリオでニューラルネットワークを適用します
  • ニューラルネットワークの正規化手法の理解
  • ニューラルネットワークの最適化ハイパーパラメーター
  • 深い学習に転送学習を適用します
  • 生成的な敵対的なネットワークの設計とトレーニング
Singapore government logo

採用担当者は、パネル面接中に尋ねる専門的な質問を通じて、どの候補者がより良いスコアを持っているかを判断し、スコアがそれほど高くない候補者と区別できると感じました。彼らです 非常に満足 Adaface のスクリーニングで最終候補者リストに選ばれた候補者の質を重視します。


85%
スクリーニング時間の短縮

Neural Networks Hiring Test よくある質問

複数のスキルを1つのカスタム評価に組み合わせることはできますか?

そのとおり。カスタム評価は、職務内容に基づいて設定され、指定したすべての必須スキルに関する質問が含まれます。

アンチチートまたは監督の機能はありますか?

次のアンチチート機能があります。

  • グーグル不可能な質問
  • IP監督
  • Webの提案
  • ウェブカメラの監督
  • 盗作の検出
  • 安全なブラウザ

[プロクチャリング機能](https://www.adaface.com/proctoring)の詳細をご覧ください。

テストスコアを解釈するにはどうすればよいですか?

留意すべき主なことは、評価が選択ツールではなく排除ツールであることです。スキル評価が最適化され、技術的にその役割の資格がない候補者を排除するのに役立ちます。これは、役割の最良の候補者を見つけるのに役立つために最適化されていません。したがって、評価を使用する理想的な方法は、しきい値スコア(通常は55%、ベンチマークを支援します)を決定し、インタビューの次のラウンドのしきい値を超えてスコアを上回るすべての候補者を招待することです。

このテストを使用できますか?

各ADAFACE評価は、職務記述書/理想的な候補者のペルソナにカスタマイズされます(当社の主題の専門家は、10000以上の質問のライブラリからあなたの評価に適切な質問を選択します)。この評価は、あらゆる経験レベルでカスタマイズできます。

すべての候補者は同じ質問を受け取りますか?

私は候補者です。練習テストを試すことはできますか?

いいえ。残念ながら、現時点では練習テストをサポートしていません。ただし、[サンプルの質問](https://www.adaface.com/questions)を使用するには、練習できます。

このテストを使用するコストはいくらですか?

無料トライアルを受けることはできますか?

私はちょうど有料プランに移りました。カスタム評価をリクエストするにはどうすればよいですか?

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