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Title: Google Associate-Data-Practitioner最新題庫資源 - Associate-Data-Practitioner題庫更新資訊 [Print This Page]

Author: philmar661    Time: yesterday 12:06
Title: Google Associate-Data-Practitioner最新題庫資源 - Associate-Data-Practitioner題庫更新資訊
我們Fast2test免費更新我們研究的培訓材料,這意味著你將隨時得到最新的更新的Associate-Data-Practitioner考試認證培訓資料,只要Associate-Data-Practitioner考試的目標有了變化,我們Fast2test提供的學習材料也會跟著變化,我們Fast2test知道每個考生的需求,我們將幫助你通過你的Associate-Data-Practitioner考試認證,以最優惠最實在的價格和最高超的品質來幫助每位考生,讓你們順利獲得認證。
作為IT認證考試相關資料的專業提供者,Fast2test一直在為考生們提供優秀的參考資料,並且幫助了數不清的人通過了考試。Fast2test的Associate-Data-Practitioner考古題可以給你通過考試的自信,讓你輕鬆地迎接考試。利用這個考古題,只要你經過很短時間段額準備你就可以通過考試。覺得不可思議嗎?但是,這是真的。只要你用,Fast2test就可以讓你看到奇跡的發生。
>> Google Associate-Data-Practitioner最新題庫資源 <<
Associate-Data-Practitioner最新題庫資源 |準備通過Google Cloud Associate Data Practitioner快人一步一生輾轉千萬裏,莫問成敗重幾許,得之坦然,失之淡然,與其在別人的輝煌裏仰望,不如親手點亮自己的心燈,揚帆遠航。Fast2test Google的Associate-Data-Practitioner考試培訓資料將是你成就輝煌的第一步,有了它,你一定會通過眾多人都覺得艱難無比的Google的Associate-Data-Practitioner考試認證,獲得了這個認證,你就可以在你人生中點亮你的心燈,開始你新的旅程,展翅翱翔,成就輝煌人生。
Google Associate-Data-Practitioner 考試大綱:
主題簡介
主題 1
  • Data Analysis and Presentation: This domain assesses the competencies of Data Analysts in identifying data trends, patterns, and insights using BigQuery and Jupyter notebooks. Candidates will define and execute SQL queries to generate reports and analyze data for business questions.| Data Pipeline Orchestration: This section targets Data Analysts and focuses on designing and implementing simple data pipelines. Candidates will select appropriate data transformation tools based on business needs and evaluate use cases for ELT versus ETL.
主題 2
  • Data Management: This domain measures the skills of Google Database Administrators in configuring access control and governance. Candidates will establish principles of least privilege access using Identity and Access Management (IAM) and compare methods of access control for Cloud Storage. They will also configure lifecycle management rules to manage data retention effectively. A critical skill measured is ensuring proper access control to sensitive data within Google Cloud services
主題 3
  • Data Preparation and Ingestion: This section of the exam measures the skills of Google Cloud Engineers and covers the preparation and processing of data. Candidates will differentiate between various data manipulation methodologies such as ETL, ELT, and ETLT. They will choose appropriate data transfer tools, assess data quality, and conduct data cleaning using tools like Cloud Data Fusion and BigQuery. A key skill measured is effectively assessing data quality before ingestion.

最新的 Google Cloud Platform Associate-Data-Practitioner 免費考試真題 (Q31-Q36):問題 #31
You are a data analyst at your organization. You have been given a BigQuery dataset that includes customer information. The dataset contains inconsistencies and errors, such as missing values, duplicates, and formatting issues. You need to effectively and quickly clean the dat a. What should you do?
答案:A
解題說明:
Using BigQuery's built-in functions is the most effective and efficient way to clean the dataset directly within BigQuery. BigQuery provides powerful SQL capabilities to handle missing values, remove duplicates, and resolve formatting issues without needing to export data or create complex pipelines. This approach minimizes overhead and leverages the scalability of BigQuery for large datasets, making it an ideal solution for quickly addressing data quality issues.

問題 #32
You are predicting customer churn for a subscription-based service. You have a 50 PB historical customer dataset in BigQuery that includes demographics, subscription information, and engagement metrics. You want to build a churn prediction model with minimal overhead. You want to follow the Google-recommended approach. What should you do?
答案:C
解題說明:
Using the BigQuery Python client library to query and preprocess data directly in BigQuery and then leveraging BigQueryML to train the churn prediction model is the Google-recommended approach for this scenario. BigQueryML allows you to build machine learning models directly within BigQuery using SQL, eliminating the need to export data or manage additional infrastructure. This minimizes overhead, scales effectively for a dataset as large as 50 PB, and simplifies the end-to-end process of building and training the churn prediction model.

問題 #33
You need to design a data pipeline that ingests data from CSV, Avro, and Parquet files into Cloud Storage. The data includes raw user input. You need to remove all malicious SQL injections before storing the data in BigQuery. Which data manipulation methodology should you choose?
答案:D
解題說明:
The ETL (Extract, Transform, Load) methodology is the best approach for this scenario because it allows you to extract data from the files, transform it by applying the necessary data cleansing (including removing malicious SQL injections), and then load the sanitized data into BigQuery. By transforming the data before loading it into BigQuery, you ensure that only clean and safe data is stored, which is critical for security and data quality.

問題 #34
You manage an ecommerce website that has a diverse range of products. You need to forecast future product demand accurately to ensure that your company has sufficient inventory to meet customer needs and avoid stockouts. Your company's historical sales data is stored in a BigQuery table. You need to create a scalable solution that takes into account the seasonality and historical data to predict product demand. What should you do?
答案:A
解題說明:
Comprehensive and Detailed In-Depth Explanation:
Forecasting product demand with seasonality requires a time series model, and BigQuery ML offers a scalable, serverless solution. Let's analyze:
* Option A: BigQuery ML's time series models (e.g., ARIMA_PLUS) are designed for forecasting with seasonality and trends. The ML.FORECAST function generates predictions based on historical data, storing them in a table. This is scalable (no infrastructure) and integrates natively with BigQuery, ideal for ecommerce demand prediction.
* Option B: Colab Enterprise with a custom Python model (e.g., Prophet) is flexible but requires coding, maintenance, and potentially exporting data, reducing scalability compared to BigQuery ML's in-place processing.
* Option C: Linear regression predicts continuous values but doesn't handle seasonality or time series patterns effectively, making it unsuitable for demand forecasting.

問題 #35
You have a BigQuery dataset containing sales dat
a. This data is actively queried for the first 6 months. After that, the data is not queried but needs to be retained for 3 years for compliance reasons. You need to implement a data management strategy that meets access and compliance requirements, while keeping cost and administrative overhead to a minimum. What should you do?
答案:B
解題說明:
Partitioning the BigQuery table by month allows efficient querying of recent data for the first 6 months, reducing query costs. After 6 months, exporting the data to Coldline storage minimizes storage costs for data that is rarely accessed but needs to be retained for compliance. Implementing a lifecycle policy in Cloud Storage automates the deletion of the data after 3 years, ensuring compliance while reducing administrative overhead. This approach balances cost efficiency and compliance requirements effectively.

問題 #36
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Associate-Data-Practitioner題庫更新資訊: https://tw.fast2test.com/Associate-Data-Practitioner-premium-file.html





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