贝壳大数据开发工程师(J68159)
社招全职8年以上研发中心地点:北京状态:招聘
任职要求
1.计算机、统计学、数学等相关专业优先,8年以上大型数据仓库建模与开发经验。 2.精通数据仓库维度模型设计方法论,丰富的项目实战经验,能根据不同业务需求设计出贴合实际、高效灵活的数仓架构。 3.熟悉 Hadoop/Spark/Flink /Kafka/ES/CK等主流大数据处理技术栈,熟悉Sql/Python/Scala/Java等编程语言。…
登录查看完整任职要求
微信扫码,1秒登录
工作职责
1.主导惠居核心业务场景的数据线上化规划,与业务团队共同梳理流程痛点,设计从业务需求到数据模型的全链路解决方案,推动业务流程数字化落地。 2.深入业务场景,穿透表面诉求识别本质痛点,通过数据建模与指标体系设计,将业务问题转化为可量化、可监控的数据方案。 3.负责数据仓库核心模型设计与 ETL 开发,构建高复用、高可靠的数据体系,通过数据资产沉淀支撑业务决策。 4.统筹算法、策略、工程研发、业务运营等团队资源,制定数据项目的技术架构与实施路径,推动数据产品的落地,通过数据驱动业务目标达成。 5.持续优化数据模型架构,沉淀行业级数据解决方案,推动 Hive/Spark/Flink 等技术栈在业务场景中的深度应用,通过技术创新提升数据处理效率与业务响应速度。 6.培养团队成员业务思维,通过案例复盘传递 “从业务问题倒推数据方案” 的工作方法。
包括英文材料
数据仓库+
https://www.youtube.com/watch?v=9GVqKuTVANE
From Zero to Data Warehouse Hero: A Full SQL Project Walkthrough and Real Industry Experience!
https://www.youtube.com/watch?v=k4tK2ttdSDg
Hadoop+
https://www.runoob.com/w3cnote/hadoop-tutorial.html
Hadoop 为庞大的计算机集群提供可靠的、可伸缩的应用层计算和存储支持,它允许使用简单的编程模型跨计算机群集分布式处理大型数据集,并且支持在单台计算机到几千台计算机之间进行扩展。
[英文] Hadoop Tutorial
https://www.tutorialspoint.com/hadoop/index.htm
Hadoop is an open-source framework that allows to store and process big data in a distributed environment across clusters of computers using simple programming models.
Spark+
[英文] Learning Spark Book
https://pages.databricks.com/rs/094-YMS-629/images/LearningSpark2.0.pdf
This new edition has been updated to reflect Apache Spark’s evolution through Spark 2.x and Spark 3.0, including its expanded ecosystem of built-in and external data sources, machine learning, and streaming technologies with which Spark is tightly integrated.
Flink+
https://nightlies.apache.org/flink/flink-docs-release-2.0/docs/learn-flink/overview/
This training presents an introduction to Apache Flink that includes just enough to get you started writing scalable streaming ETL, analytics, and event-driven applications, while leaving out a lot of (ultimately important) details.
https://www.youtube.com/watch?v=WajYe9iA2Uk&list=PLa7VYi0yPIH2GTo3vRtX8w9tgNTTyYSux
Today’s businesses are increasingly software-defined, and their business processes are being automated. Whether it’s orders and shipments, or downloads and clicks, business events can always be streamed. Flink can be used to manipulate, process, and react to these streaming events as they occur.
Kafka+
https://developer.confluent.io/what-is-apache-kafka/
https://www.youtube.com/watch?v=CU44hKLMg7k
https://www.youtube.com/watch?v=j4bqyAMMb7o&list=PLa7VYi0yPIH0KbnJQcMv5N9iW8HkZHztH
In this Apache Kafka fundamentals course, we introduce you to the basic Apache Kafka elements and APIs, as well as the broader Kafka ecosystem.
ElasticSearch+
https://www.youtube.com/watch?v=a4HBKEda_F8
Learn about Elasticsearch with this comprehensive course designed for beginners, featuring both theoretical concepts and hands-on applications using Python (though applicable to any programming language). The course is structured in two parts: first covering essential Elasticsearch fundamentals including index management, document storage, text analysis, pipeline creation, search functionality, and advanced features like semantic search and embeddings; followed by a practical section where you'll build a real-world website using Elasticsearch as a search engine, working with the Astronomy Picture of the Day (APOD) dataset to implement features such as data cleaning pipelines, tokenization, pagination, and aggregations.
还有更多 •••
相关职位
社招网易数智
1、负责网易大数据平台的Iceberg等大数据组件迭代研发。 2、负责Iceberg等技术在业务上的实践落地以及问题分析诊断。 3、 参与Hive等组件在大数据元数据服务方面的稳定性建设以及问题诊断。
更新于 2025-04-17杭州
社招A166444A
1、为大规模推荐系统设计和实现合理的离线/实时数据架构; 2、设计和实现灵活可扩展、稳定、高性能的存储系统和计算模型; 3、生产系统的Trouble-shoting,设计和实现必要的机制和工具保障生产系统整体运行的稳定性; 4、打造业界领先的离在线存储、批式流式计算框架等分布式系统,为海量数据和大规模业务系统提供可靠的基础设施。
更新于 2025-02-20北京

社招5年以上技术
1、负责哈啰街猫业务基础数据的建设,包括基础数据模型建立和维护,报表的开发,业务系统的数据开发等; 2、理解哈啰街猫投喂、电商等业务,根据业务需求建立用户画像体系和标签体系,支持推荐和用户运营; 3、参与数据产品及应用的研发工作,挖掘数据业务价值,助力数据化运营;
更新于 2025-02-12上海

社招
团队内80%+都活跃在开源社区,有多名Committer. 欢迎对大数据底层技术有兴趣的小伙伴,一起挑战自我!(非数据仓库方向) 工作base可选:苏州/北京/成都 岗位描述: 基于hadoop/flink/spark/hive/cloud native等开源技术 1. 负责大数据集群规划、运维工作;负责大数据集群技术问题攻关,集群调优,源码解读,Bug fix等; 2. 负责大数据公共组件、中间件的开发工作; 3. 负责存储组件、批处理、流计算、OLAP、ML/DL,通过技术和业务场景的紧密结合,让数据发挥最大业务价值 4. 支撑数据中台建设;支撑业务结合需求设计高扩展、高性能、高可用的大数据业务系统;
更新于 2025-02-26苏州