The document provides links to resources about mobility data science and self-driving technologies. It lists the engineering blogs and research from major companies in the mobility industry like Uber, Lyft, Grab and Didi. It also includes links to papers and articles about topics like map matching algorithms, self-driving startups, global ride-hailing market trends and the mobility service industry in Korea. The document is a collection of references for learning about developments in mobility and transportation technologies.
Little Big Data #1 다양한 사람들의 데이터 사이언스 이야기에서 발표한 자료입니다
궁금한 것은 언제나 문의주세요 :)
행사 후기는 https://zzsza.github.io/etc/2018/04/21/little-big-data/ 에 있습니다!
(2018.5 내용 추가) 현재 회사가 없으니, 제게 관심있으신 분들도 연락 환영합니다 :)
Little Big Data #1 다양한 사람들의 데이터 사이언스 이야기에서 발표한 자료입니다
궁금한 것은 언제나 문의주세요 :)
행사 후기는 https://zzsza.github.io/etc/2018/04/21/little-big-data/ 에 있습니다!
(2018.5 내용 추가) 현재 회사가 없으니, 제게 관심있으신 분들도 연락 환영합니다 :)
2018년 6월 24일 "백수들의 Conference"에서 발표한 개발자를 위한 (블로그) 글쓰기 intro입니다
좋은 글을 많이 보는 노하우 + 꾸준히 글을 작성하는 노하우에 대해 주로 이야기했습니다! (어떻게 글을 작성하는가는 없어요!)
피드백은 언제나 환영합니다 :)
[NDC18] 야생의 땅 듀랑고의 데이터 엔지니어링 이야기: 로그 시스템 구축 경험 공유Hyojun Jeon
NDC18에서 발표하였습니다. 현재 보고 계신 슬라이드는 1부 입니다.(총 2부)
- 1부 링크: https://goo.gl/3v4DAa
- 2부 링크: https://goo.gl/wpoZpY
(SlideShare에 슬라이드 300장 제한으로 2부로 나누어 올렸습니다. 불편하시더라도 양해 부탁드립니다.)
한빛데브그라운드에서 발표했던 내용입니다.
발표 영상 : https://youtu.be/ohpfSLf0V3Y
--
스타트업 비즈니스에서 데이터를 활용한 전략 수립과 의사결정은 필수적인 요소입니다. 서비스 운영 데이터에서부터 다양한 고객의 행동 로그, 소셜 미디어 데이터까지 다양한 데이터를 모두 모아 분석 환경을 구축하기 위해서는 많은 준비와 고민이 필요합니다. 스타트업에서 빠른 속도와 최소한의 비용, 다양한 분석 Tool들과 연동되는 Data Pipeline, Data Lake, Data Warehouse 구축 경험기를 공유하고자 합니다. 이 과정을 통해 애널리틱스 파이프라인을 구축 과정과 S3, Glue, Athena,EMR, Quicksight와 같은 서버리스 애널리틱스 서비스에 대한 구축 사례를 확인하실 수 있습니다.
우리는 지금 무엇을 하고있는지를 고민하나요? 아니면 무엇이 되어가고 있는지를 고민하나요? 네 맞습니다. 우리는 매년 무엇을 할지 고민합니다. 그런데 중요한것은 방향 즉 어디를 가고 있는지 입니다.
그래서 넷플릭스의 추천 시스템이 어디를 향해 가고 있는지를 살펴보고 추천시스템의 향해 가야할 Goal에 대하여 같이 이야기를 해보고자 합니다
데브시스터즈 데이터 레이크 구축 이야기 : Data Lake architecture case study (박주홍 데이터 분석 및 인프라 팀...Amazon Web Services Korea
데브시스터즈 데이터 레이크 구축 이야기 : Data Lake architecture case study
이 세션에서는 데브시스터즈의 Case Study를 통하여 Data Lake를 만들고 사용하는데 있어 요구 되는 사항들에 대해 공유합니다. 여러 목적에 맞는 데이터를 전달하기 위해 AWS 를 활용하여 Data Lake 를 구축하게된 계기와 실제 구축 작업을 하면서 경험하게 된 것들에 대해 말씀드리고자 합니다. 기존 인프라 구조 대비 효율성 및 비용적 측면을 소개해드리고, 빅데이터를 이용한 부서별 데이터 세분화를 진행할 때 어떠한 Architecture가 사용되었는지 소개드리고자 합니다.
제 15회 보아즈(BOAZ) 빅데이터 컨퍼런스 - [YouPlace 팀] : 카프카와 스파크를 활용한 유튜브 영상 속 제주 명소 검색 BOAZ Bigdata
데이터 엔지니어링 프로젝트를 진행한 YouPlace팀에서는 아래와 같은 프로젝트를 진행했습니다.
<aside>
이젠 검색도 유튜브 시대
제주여행을 계획할 때 브이로그 영상을 많이 참고하실텐데요
수많은 영상들과 영상 속 분산된 명소들을 하나 하나 찾으려 생각하면 막막하지 않으셨나요?
이러한 고민을 갖고 계신 분들을 위해, 유튜브 브이로거들이 찾아간 여행 명소들을 지도에서 한 눈에 파악할 수 있도록 만들었어요
(github : https://github.com/Boaz-Youplace)
16기 엔지니어링 고은서 | 중앙대학교 소프트웨어학부
16기 엔지니어링 류정화 | 성신여자대학교 융합보안공학과
16기 엔지니어링 송경민 | 국민대학교 소프트웨어학과
대용량 데이터레이크 마이그레이션 사례 공유 [카카오게임즈 - 레벨 200] - 조은희, 팀장, 카카오게임즈 ::: Games on AWS ...Amazon Web Services Korea
기존 온프레미스 환경에서는 비즈니스 성장에 따른 유연한 확장에 어려움 있어 AWS를 이용하여 더욱 탄력적인 환경을 구축하는 프로젝트를 수행하였습니다. 이 세션을 통해 카카오게임즈가 AWS와 함께 수행한 데이터레이크 마이그레이션의 여정과, 그 과정에서 Amazon S3, EMR, Athena, Redshift 등의 다양한 기술 요소들을 활용한 경험과 팁을 전달해 드립니다.
Building a social network in under 4 weeks with Serverless and GraphQLYan Cui
Serverless technologies drastically simplify the task of building modern, scalable APIs in the cloud, and GraphQL makes it easy for frontend teams to consume these APIs and to iterate quickly on your product idea. Together, they are a perfect combination for a product-focused, full-stack team to deliver customer values quickly.
In this talk, see how we built a new social network mobile app in under 4 weeks using Lambda, AppSync, DynamoDB and Algolia. How we approached CI/CD, testing, authentication and lessons we learnt along the way.
Recording of this talk is available at https://www.youtube.com/watch?v=evsz__BDprs
Real-world serverless podcast: https://realworldserverless.com
Learn Lambda best practices: https://lambdabestpractice.com
Blog: https://theburningmonk.com
Consulting services: https://theburningmonk.com/hire-me
Production-Ready Serverless workshop: https://productionreadyserverless.com
2018년 6월 24일 "백수들의 Conference"에서 발표한 개발자를 위한 (블로그) 글쓰기 intro입니다
좋은 글을 많이 보는 노하우 + 꾸준히 글을 작성하는 노하우에 대해 주로 이야기했습니다! (어떻게 글을 작성하는가는 없어요!)
피드백은 언제나 환영합니다 :)
[NDC18] 야생의 땅 듀랑고의 데이터 엔지니어링 이야기: 로그 시스템 구축 경험 공유Hyojun Jeon
NDC18에서 발표하였습니다. 현재 보고 계신 슬라이드는 1부 입니다.(총 2부)
- 1부 링크: https://goo.gl/3v4DAa
- 2부 링크: https://goo.gl/wpoZpY
(SlideShare에 슬라이드 300장 제한으로 2부로 나누어 올렸습니다. 불편하시더라도 양해 부탁드립니다.)
한빛데브그라운드에서 발표했던 내용입니다.
발표 영상 : https://youtu.be/ohpfSLf0V3Y
--
스타트업 비즈니스에서 데이터를 활용한 전략 수립과 의사결정은 필수적인 요소입니다. 서비스 운영 데이터에서부터 다양한 고객의 행동 로그, 소셜 미디어 데이터까지 다양한 데이터를 모두 모아 분석 환경을 구축하기 위해서는 많은 준비와 고민이 필요합니다. 스타트업에서 빠른 속도와 최소한의 비용, 다양한 분석 Tool들과 연동되는 Data Pipeline, Data Lake, Data Warehouse 구축 경험기를 공유하고자 합니다. 이 과정을 통해 애널리틱스 파이프라인을 구축 과정과 S3, Glue, Athena,EMR, Quicksight와 같은 서버리스 애널리틱스 서비스에 대한 구축 사례를 확인하실 수 있습니다.
우리는 지금 무엇을 하고있는지를 고민하나요? 아니면 무엇이 되어가고 있는지를 고민하나요? 네 맞습니다. 우리는 매년 무엇을 할지 고민합니다. 그런데 중요한것은 방향 즉 어디를 가고 있는지 입니다.
그래서 넷플릭스의 추천 시스템이 어디를 향해 가고 있는지를 살펴보고 추천시스템의 향해 가야할 Goal에 대하여 같이 이야기를 해보고자 합니다
데브시스터즈 데이터 레이크 구축 이야기 : Data Lake architecture case study (박주홍 데이터 분석 및 인프라 팀...Amazon Web Services Korea
데브시스터즈 데이터 레이크 구축 이야기 : Data Lake architecture case study
이 세션에서는 데브시스터즈의 Case Study를 통하여 Data Lake를 만들고 사용하는데 있어 요구 되는 사항들에 대해 공유합니다. 여러 목적에 맞는 데이터를 전달하기 위해 AWS 를 활용하여 Data Lake 를 구축하게된 계기와 실제 구축 작업을 하면서 경험하게 된 것들에 대해 말씀드리고자 합니다. 기존 인프라 구조 대비 효율성 및 비용적 측면을 소개해드리고, 빅데이터를 이용한 부서별 데이터 세분화를 진행할 때 어떠한 Architecture가 사용되었는지 소개드리고자 합니다.
제 15회 보아즈(BOAZ) 빅데이터 컨퍼런스 - [YouPlace 팀] : 카프카와 스파크를 활용한 유튜브 영상 속 제주 명소 검색 BOAZ Bigdata
데이터 엔지니어링 프로젝트를 진행한 YouPlace팀에서는 아래와 같은 프로젝트를 진행했습니다.
<aside>
이젠 검색도 유튜브 시대
제주여행을 계획할 때 브이로그 영상을 많이 참고하실텐데요
수많은 영상들과 영상 속 분산된 명소들을 하나 하나 찾으려 생각하면 막막하지 않으셨나요?
이러한 고민을 갖고 계신 분들을 위해, 유튜브 브이로거들이 찾아간 여행 명소들을 지도에서 한 눈에 파악할 수 있도록 만들었어요
(github : https://github.com/Boaz-Youplace)
16기 엔지니어링 고은서 | 중앙대학교 소프트웨어학부
16기 엔지니어링 류정화 | 성신여자대학교 융합보안공학과
16기 엔지니어링 송경민 | 국민대학교 소프트웨어학과
대용량 데이터레이크 마이그레이션 사례 공유 [카카오게임즈 - 레벨 200] - 조은희, 팀장, 카카오게임즈 ::: Games on AWS ...Amazon Web Services Korea
기존 온프레미스 환경에서는 비즈니스 성장에 따른 유연한 확장에 어려움 있어 AWS를 이용하여 더욱 탄력적인 환경을 구축하는 프로젝트를 수행하였습니다. 이 세션을 통해 카카오게임즈가 AWS와 함께 수행한 데이터레이크 마이그레이션의 여정과, 그 과정에서 Amazon S3, EMR, Athena, Redshift 등의 다양한 기술 요소들을 활용한 경험과 팁을 전달해 드립니다.
Building a social network in under 4 weeks with Serverless and GraphQLYan Cui
Serverless technologies drastically simplify the task of building modern, scalable APIs in the cloud, and GraphQL makes it easy for frontend teams to consume these APIs and to iterate quickly on your product idea. Together, they are a perfect combination for a product-focused, full-stack team to deliver customer values quickly.
In this talk, see how we built a new social network mobile app in under 4 weeks using Lambda, AppSync, DynamoDB and Algolia. How we approached CI/CD, testing, authentication and lessons we learnt along the way.
Recording of this talk is available at https://www.youtube.com/watch?v=evsz__BDprs
Real-world serverless podcast: https://realworldserverless.com
Learn Lambda best practices: https://lambdabestpractice.com
Blog: https://theburningmonk.com
Consulting services: https://theburningmonk.com/hire-me
Production-Ready Serverless workshop: https://productionreadyserverless.com
Building a social network in under 4 weeks with Serverless and GraphQLYan Cui
Serverless technologies drastically simplify the task of building modern, scalable APIs in the cloud, and GraphQL makes it easy for frontend teams to consume these APIs and to iterate quickly on your product idea. Together, they are a perfect combination for a product-focused, full-stack team to deliver customer values quickly.
In this talk, see how we built a new social network mobile app in under 4 weeks using Lambda, AppSync, DynamoDB and Algolia. How we approached CI/CD, testing, authentication and lessons we learnt along the way.
Real-world serverless podcast: https://realworldserverless.com
Learn Lambda best practices: https://lambdabestpractice.com
Blog: https://theburningmonk.com
Consulting services: https://theburningmonk.com/hire-me
Production-Ready Serverless workshop: https://productionreadyserverless.com
Serverless technologies drastically simplify the task of building modern, scalable APIs in the cloud, and GraphQL makes it easy for frontend teams to consume these APIs and to iterate quickly on your product idea. Together, they are a perfect combination for a product-focused, full-stack team to deliver customer values quickly.
In this talk, see how we built a new social network mobile app in under 4 weeks using Lambda, AppSync, DynamoDB and Algolia. How we approached CI/CD, testing, authentication and lessons we learnt along the way.
Real-world serverless podcast: https://realworldserverless.com
Learn Lambda best practices: https://lambdabestpractice.com
Blog: https://theburningmonk.com
Consulting services: https://theburningmonk.com/hire-me
Production-Ready Serverless workshop: https://productionreadyserverless.com
Creating a timeline is a method for picturing or seeing events as they take place over time. By documenting major occurrences in chronological order, evaluators are able to identify patterns, themes, or trends that they may not have seen otherwise. A timeline allows evaluators to “zoom out” and look at the broader landscape, so that they are better positioned to think through and understand the context in which events occur. Having a timeline is especially useful for complex, multi-year evaluation projects with several threads of evaluation, where documenting the process is just as important as measuring the outcome itself. Creating a timeline has three key components: planning, populating, and revising. This presentation shows how to incorporate a timeline into a report, how to use a timeline to track progress internally, and how to utilize data visualization principles to create a visual timeline.
Highlights of this presentation are also available in our handout titled "Putting Data in Context: Timelining for Evaluators (HANDOUT)".
[Link: http://www.slideshare.net/InnoNet_Eval/putting-data-in-context-timelining-for-evaluators-handout ]
Build a social network in 4 weeks with Serverless and GraphQLYan Cui
Serverless technologies drastically simplify the task of building modern, scalable APIs in the cloud, and GraphQL makes it easy for frontend teams to consume these APIs and to iterate quickly on your product idea. Together, they are a perfect combination for a product-focused, full-stack team to deliver customer values quickly.
In this talk, see how we built a new social network mobile app in under 4 weeks using Lambda, AppSync, DynamoDB and Algolia. How we approached CI/CD, testing, authentication and lessons we learnt along the way.
Recording: https://www.youtube.com/watch?v=evsz__BDprs
Real-world serverless podcast: https://realworldserverless.com
Learn Lambda best practices: https://lambdabestpractice.com
Blog: https://theburningmonk.com
Consulting services: https://theburningmonk.com/hire-me
Production-Ready Serverless workshop: https://productionreadyserverless.com
Securing your web application and protecting your users are 2 of the most important things to a developer nowadays. We all know about the dangers of cross site scripting and sql injection, but did you know that you can also make the browser do its share? In this presentation we'll dive into the world of the HTTP security headers, which will make the browser help protect your users.
2016 - IGNITE - The Cynefin Model for Operational Transformationdevopsdaysaustin
Ignite Presentation by Dave Mangot
The Cynefin Framework gives us a model for describing and categorizing problems especially in the realm of chaotic or complex adaptive systems. In this talk, we'll share some observations about how you can use this to mature the operations practice at your organization.
Explore our comprehensive data analysis project presentation on predicting product ad campaign performance. Learn how data-driven insights can optimize your marketing strategies and enhance campaign effectiveness. Perfect for professionals and students looking to understand the power of data analysis in advertising. for more details visit: https://bostoninstituteofanalytics.org/data-science-and-artificial-intelligence/
Levelwise PageRank with Loop-Based Dead End Handling Strategy : SHORT REPORT ...Subhajit Sahu
Abstract — Levelwise PageRank is an alternative method of PageRank computation which decomposes the input graph into a directed acyclic block-graph of strongly connected components, and processes them in topological order, one level at a time. This enables calculation for ranks in a distributed fashion without per-iteration communication, unlike the standard method where all vertices are processed in each iteration. It however comes with a precondition of the absence of dead ends in the input graph. Here, the native non-distributed performance of Levelwise PageRank was compared against Monolithic PageRank on a CPU as well as a GPU. To ensure a fair comparison, Monolithic PageRank was also performed on a graph where vertices were split by components. Results indicate that Levelwise PageRank is about as fast as Monolithic PageRank on the CPU, but quite a bit slower on the GPU. Slowdown on the GPU is likely caused by a large submission of small workloads, and expected to be non-issue when the computation is performed on massive graphs.
As Europe's leading economic powerhouse and the fourth-largest hashtag#economy globally, Germany stands at the forefront of innovation and industrial might. Renowned for its precision engineering and high-tech sectors, Germany's economic structure is heavily supported by a robust service industry, accounting for approximately 68% of its GDP. This economic clout and strategic geopolitical stance position Germany as a focal point in the global cyber threat landscape.
In the face of escalating global tensions, particularly those emanating from geopolitical disputes with nations like hashtag#Russia and hashtag#China, hashtag#Germany has witnessed a significant uptick in targeted cyber operations. Our analysis indicates a marked increase in hashtag#cyberattack sophistication aimed at critical infrastructure and key industrial sectors. These attacks range from ransomware campaigns to hashtag#AdvancedPersistentThreats (hashtag#APTs), threatening national security and business integrity.
🔑 Key findings include:
🔍 Increased frequency and complexity of cyber threats.
🔍 Escalation of state-sponsored and criminally motivated cyber operations.
🔍 Active dark web exchanges of malicious tools and tactics.
Our comprehensive report delves into these challenges, using a blend of open-source and proprietary data collection techniques. By monitoring activity on critical networks and analyzing attack patterns, our team provides a detailed overview of the threats facing German entities.
This report aims to equip stakeholders across public and private sectors with the knowledge to enhance their defensive strategies, reduce exposure to cyber risks, and reinforce Germany's resilience against cyber threats.
Opendatabay - Open Data Marketplace.pptxOpendatabay
Opendatabay.com unlocks the power of data for everyone. Open Data Marketplace fosters a collaborative hub for data enthusiasts to explore, share, and contribute to a vast collection of datasets.
First ever open hub for data enthusiasts to collaborate and innovate. A platform to explore, share, and contribute to a vast collection of datasets. Through robust quality control and innovative technologies like blockchain verification, opendatabay ensures the authenticity and reliability of datasets, empowering users to make data-driven decisions with confidence. Leverage cutting-edge AI technologies to enhance the data exploration, analysis, and discovery experience.
From intelligent search and recommendations to automated data productisation and quotation, Opendatabay AI-driven features streamline the data workflow. Finding the data you need shouldn't be a complex. Opendatabay simplifies the data acquisition process with an intuitive interface and robust search tools. Effortlessly explore, discover, and access the data you need, allowing you to focus on extracting valuable insights. Opendatabay breaks new ground with a dedicated, AI-generated, synthetic datasets.
Leverage these privacy-preserving datasets for training and testing AI models without compromising sensitive information. Opendatabay prioritizes transparency by providing detailed metadata, provenance information, and usage guidelines for each dataset, ensuring users have a comprehensive understanding of the data they're working with. By leveraging a powerful combination of distributed ledger technology and rigorous third-party audits Opendatabay ensures the authenticity and reliability of every dataset. Security is at the core of Opendatabay. Marketplace implements stringent security measures, including encryption, access controls, and regular vulnerability assessments, to safeguard your data and protect your privacy.
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...John Andrews
SlideShare Description for "Chatty Kathy - UNC Bootcamp Final Project Presentation"
Title: Chatty Kathy: Enhancing Physical Activity Among Older Adults
Description:
Discover how Chatty Kathy, an innovative project developed at the UNC Bootcamp, aims to tackle the challenge of low physical activity among older adults. Our AI-driven solution uses peer interaction to boost and sustain exercise levels, significantly improving health outcomes. This presentation covers our problem statement, the rationale behind Chatty Kathy, synthetic data and persona creation, model performance metrics, a visual demonstration of the project, and potential future developments. Join us for an insightful Q&A session to explore the potential of this groundbreaking project.
Project Team: Jay Requarth, Jana Avery, John Andrews, Dr. Dick Davis II, Nee Buntoum, Nam Yeongjin & Mat Nicholas
18. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
19. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
20. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
21. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
22. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
23. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
24. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
25. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
26.
27.
28.
29.
30. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
31. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
32. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
33. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
34. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
35. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
36. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
37. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
38. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
39. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
40. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
41. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
42. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
43.
44. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
45. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
46. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
47. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
48. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
49. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
50. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
51. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
52. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
53. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
54.
Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
55. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
56. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
57. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
58. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
59. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
60. Icons made by Freepik from www.flaticon.com is licensed by CC 3.0 BY
https://www.researchgate.net/publication/267420061_High_Integrity_Map_Matching_Algorithms_for_Advanced_Transport_Telematics_Applications