그랑 서울, Tower 1, 7층, 서울특별시, 종로구, 종로 33, 서울시, korea, 01359
스페이시즈 그랑 서울 업무공간
Gran Seoul is located on the 7th floor of 24-storey Gran Seoul Tower. The location is just a stone's throw away from Gwanghwamun, the largest gate of Gyeongbukgung Palace which is one of the most popular tourist attractions and national landmark in the heart of Seoul. Spaces Gran Seoul can be conveniently accessed by public transportation with Kwanghwamoon subway station located just 500 meters away and only a few minutes’ walk to Jonggak subway station. Also located nearby and within 15 minutes ride is Seoul Station where five lines of bullet train, subway, and airport train are started.
The Gran Seoul Tower is a grade-A commercial building combining office space, world class hotel, department store, major companies, finance enterprises, government offices and banks. Surrounded by historical and cultural facilities symbolizing Seoul’s pride, Gran Seoul is an ideal workspace for all businesses from start-ups to large international companies looking for established business location in the heart of Seoul's CBD.
센터원센터
서울시, 중구, 을지로 5길 26, 센터원빌딩 서관 27층, 서울시, korea, 04539
Center 1 is conveniently located at the core of Seoul's central business district (CBD). Center 1 is one of the most advanced green building in Korea. Offers smartly landscaped park for rest and for a showcase of media technology as a front yard. It also features top class amenities such as prestigious retail shops and wide range of sophisticated restaurants (Italian, Japanese, Thai, Chinese, Korean, Indian, and Mexican) and breezy cafes. Business, dining, and shopping are under one roof at Center 1. Many financial institutions, investment banks, and insurance companies are located in close proximity, including the headquarter for the Bank of Korea. Seoul's political, public administration, media, cultural and economic venues are all within walking distance of Center 1. Also hotels, department stores and other amenities are within walking distance.
Explore Our Courses
Data Mining with Weka
14 HoursSPSS Modeler
14 HoursData Mining with Excel
14 HoursCluster Analysis with R and SAS
14 HoursData Mining and Analysis
28 HoursData Mining
21 HoursData Mining with Python
14 HoursData Mining with R
14 HoursData Visualization
28 HoursData Science for Big Data Analytics
35 HoursFoundation R
7 HoursKNIME Analytics Platform for BI
21 HoursIntroductory R for Biologists
28 HoursProcess Mining
21 HoursLast Updated:
회원 평가 (10)
how the trainor shows his knowledge in the subject he's teachign
john ernesto ii fernandez - Philippine AXA Life Insurance Corporation
Course - Data Vault: Building a Scalable Data Warehouse
Open discussion with trainer
Tomek Danowski - GE Medical Systems Polska Sp. Z O.O.
Course - Process Mining
Very useful in because it helps me understand what we can do with the data in our context. It will also help me
Nicolas NEMORIN - Adecco Groupe France
Course - KNIME Analytics Platform for BI
I genuinely enjoyed the hands passed exercises.
Yunfa Zhu - Environmental and Climate Change Canada
Course - Foundation R
Richard's training style kept it interesting, the real world examples used helped to drive the concepts home.
Jamie Martin-Royle - NBrown Group
Course - From Data to Decision with Big Data and Predictive Analytics
The example and training material were sufficient and made it easy to understand what you are doing.
Teboho Makenete
Course - Data Science for Big Data Analytics
I thought that the information was interesting.
Allison May
Course - Data Visualization
I like the exercises done.
Nour Assaf
Course - Data Mining and Analysis
Very tailored to needs.
Yashan Wang
Course - Data Mining with R
The trainer was so knowledgeable and included areas I was interested in.
Mohamed Salama
Course - Data Mining & Machine Learning with R
Upcoming Courses
Other Countries
These courses are also available in other countriesConsulting
데이터 수집 Consulting
서울의데이터 수집트레이닝 코스, 서울의 주말데이터 수집코스, 서울의 밤의데이터 수집트레이닝, 서울의 강사가 가르치는데이터 수집s, 서울의 강사가 가르치는데이터 수집s, 서울의 데이터 수집부트 캠프, 서울의 주말데이터 수집트레이닝, 서울의 데이터 수집교육, 서울의 데이터 수집트레이너, 서울의 데이터 수집강사, 서울의 데이터 수집개인 코스, 서울의 현장 데이터 수집s교육, 서울의 데이터 수집1 대 1 교육, 서울의 밤의데이터 수집코스, 서울의 데이터 수집클래스