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職場數據點評 讓職場人少走彎路
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工作 公司 工資 專業(yè)

quality engineer

data engineer

工作職責:
1.不合格品處理.(包括原材料,半成品及成品);
2.處理QC異常報告單問題直至解決;
3.每周/每月FTQ匯總,分析前5大問題,組織小組分析解決問題.
4.根據計劃完成產品/過程審核.支持體系和客戶審核.
5.組織團隊對主要不良問題解決.
6. 質量文件定期更新.
7.支持系統(tǒng)審核TS16949/ISO14001,支持第三方審核/客戶審核
8.協(xié)助CQE解決客戶投訴問題,針對退貨產品匯總,分析原因采取措施.
9.質量主管安排其他工作
任職資格:
1.??埔陨蠈W歷,有汽車行業(yè)和塑料零部件的工作經驗;
2.具備PPAP, APQP, MSA, SPC, PFMEA,VDA, 6sigma的知識和應用經驗
3.具備IATF 16949和VDA 6.3內部審核員優(yōu)先考慮
4.熟悉整車廠CSR,如BIQS,Q1,VQE, Formal Q等。
更新于 2026-01-13
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Amazon Global Selling has been helping individuals businesses increase sales reach new customers around the globe. Today, more than 50% of Amazons total unit sales come from third-party selection. The Global Selling team in China is responsible frecruiting local businesses to sell on Amazon’s 19+ overseas marketplaces supporting local Sellers’ success growth on the Amazon. Our vision is to be the first choice fall types of Chinese business to go globally.
The Amazon Global Selling Analytics, Intelligence, Technology (AGS-AIT) team serves as the research, automation, insight arm of the International Seller Service data hub, enabling rapid delivery of growth insights through strategic investments in regional data foundations, self-service business intelligence solutions, artificial intelligence tools.
The AGS-AIT team is positioned to establish AI-ready foundational capabilities across the AGSganization while maintaining excellence in business insight generation, self-service BI/AI application development.

AGS-AIT is looking fa Data Engineer to collaborate with cross-functional teams to design develop data infrastructure analytics capabilities fAGS AI Automation initiatives.

Key job responsibilities
? Design implement end-to-end data pipelines (ETL) to ensure efficient data collection, cleansing, transformation, storage, supporting both real-time offline analytics needs.
? Develop automated data monitoring tools interactive dashboards to enhance business teams’ insights core metrics (e.g., user behavior, AI model performance).
? Collaborate with cross-functional teams (e.g., Product, Operations, Tech) to align data logic, integrate multi-source data (e.g., user behavior, transaction logs, AI outputs), build a unified data layer.
? Establish data standardization governance policies to ensure consistency, accuracy, compliance.
? Provide structured data inputs fAI model training inference (e.g., LLM applications, recommendation systems), optimizing feature engineering workflows.

Basic qualifications

1+ years of data engineering experience
Experience with data modeling, warehousing building ETL pipelines
Experience with one more query language (e.g., SQL, PL/SQL, DDL, MDX, HiveQL, SparkSQL, Scala)
Experience with one more scripting language (e.g., Python, KornShell)

Preferred qualifications

Experience with big data technologies such as: Hadoop, Hive, Spark, EMR
Experience with any ETL tool like, Informatica, ODI, SSIS, BODI, Datastage, etc.
Experience with AWS technologies like Redshift, S3, AWS Glue, EMR, Kinesis, FireHose, Lambda, IAM roles permissions
更新于 2026-01-26
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工資待遇區(qū)別

崗位名稱
平均工資
較上年
¥15.2K
--
¥25.8K
--
說明:quality engineer和data engineer哪個工資高?quality engineer低于data engineer。quality engineer平均工資¥15.2K/月,2026年工資¥K,data engineer平均工資¥25.8K/月,2026年工資¥K,統(tǒng)計依賴于各大平臺發(fā)布的公開數據,系統(tǒng)穩(wěn)定性會影響客觀性,僅供參考。

就業(yè)前景區(qū)別(歷年招聘趨勢)

崗位名稱
2025年職位量
較2024年
說明:quality engineer和data engineer哪個就業(yè)前景好?quality engineer2025年招聘職位量 250,較2024年增長了 4%。data engineer2025年招聘職位量 126,較2024年增長了 14%。統(tǒng)計依賴于各大平臺發(fā)布的公開數據,系統(tǒng)穩(wěn)定性會影響客觀性,僅供參考。

學歷要求區(qū)別

本科 82.4%
大專 16.5%
不限學歷 1.2%
本科 89.1%
碩士 7.3%
不限學歷 3.6%
說明:quality engineer和data engineer的區(qū)別? quality engineer需要什么學歷?本科占82.4%,大專占16.5%,不限學歷占1.2%。 data engineer需要什么學歷?本科占89.1%,碩士占7.3%,不限學歷占3.6%。

經驗要求區(qū)別

5-10年 37.6%
3-5年 31.8%
不限經驗 22.4%
1-3年 8.2%
5-10年 34.5%
3-5年 29.1%
不限經驗 20.0%
1-3年 14.5%
應屆畢業(yè)生 1.8%
說明:quality engineer和data engineer的區(qū)別? quality engineer經驗要求哪個最多?5-10年占37.6%,3-5年占31.8%,不限經驗占22.4%,1-3年占8.2%。 data engineer經驗要求哪個最多?5-10年占34.5%,3-5年占29.1%,不限經驗占20.0%,1-3年占14.5%,應屆畢業(yè)生占1.8%。

quality engineer與其他崗位進行PK

data engineer與其他崗位進行PK