小米小米汽车-软件架构师-TSP
社招全职10年以上A44033地点:南京状态:招聘
任职要求
1.本科以上学历,10年以上工作经验,至少3车联网/智能网联/IOT物联网云平台架构设计经验 2.主导设计开发至少一个车联网/智能网联云平台,项目并量产上线实际接入车辆数据 3.具备丰富车联网/智能网联TSP技术架构经验,并具备车联网接入网关、协议解析、数据转发路由、大数据计算/存储、微服务等设计/开发经验 4.熟悉Hadoop/Kafka/Spa…
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工作职责
1.负责智能网联TSP基础平台及应用平台技术规划、架构设计及技术选型 2.负责智能网联TSP基础台及应用平台技术架构落地推动,关键技术攻关实现 3.负责智能网联TSP基础台及应用平台运维监控,应急响应,运维工具化设计及推动落地 4.负责智能网联TSP基础台及应用平台线上环境部署架构、资源规划,参与多中心机房建设工作 5.参与智能网联TSP基础台及应用平台开发规范及研发流程建设
包括英文材料
学历+
IOT+
https://microsoft.github.io/IoT-For-Beginners/#/
Azure Cloud Advocates at Microsoft are pleased to offer a 12-week, 24-lesson curriculum all about IoT basics.
https://www.ibm.com/think/topics/internet-of-things
The Internet of Things (IoT) refers to a network of physical devices, vehicles, appliances, and other physical objects that are embedded with sensors, software, and network connectivity, allowing them to collect and share data.
https://www.youtube.com/watch?v=1KVrBjSqS5s
The term 'Internet of Things' was coined by Kevin Ashton in 1999 to refer to connecting the Internet to the physical world via sensors.
系统设计+
https://roadmap.sh/system-design
Everything you need to know about designing large scale systems.
https://www.youtube.com/watch?v=F2FmTdLtb_4
This complete system design tutorial covers scalability, reliability, data handling, and high-level architecture with clear explanations, real-world examples, and practical strategies.
大数据+
https://www.youtube.com/watch?v=bAyrObl7TYE
https://www.youtube.com/watch?v=H4bf_uuMC-g
With all this talk of Big Data, we got Rebecca Tickle to explain just what makes data into Big Data.
微服务+
https://learn.microsoft.com/en-us/training/modules/dotnet-microservices/
Microservice applications are composed of small, independently versioned, and scalable customer-focused services that communicate with each other by using standard protocols and well-defined interfaces.
https://microservices.io/
Microservices - also known as the microservice architecture - is an architectural style that structures an application as a collection of two or more services.
https://spring.io/microservices
Building small, self-contained, ready to run applications can bring great flexibility and added resilience to your code.
https://www.ibm.com/think/topics/microservices
Microservices, or microservices architecture, is a cloud-native architectural approach in which a single application is composed of many loosely coupled and independently deployable smaller components or services.
https://www.youtube.com/watch?v=CqCDOosvZIk
https://www.youtube.com/watch?v=hmkF77F9TLw
Learn about software system design and microservices.
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.
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.
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.
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北京|上海