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Silicon Valley Associates- Specialist IT Recruitment Agency in Hong Kong, Shanghai, Singapore, Dubai and Japan
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RECRUITER SUMMARY
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Description:
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HOT_HK Junior Data Scientist, Tensorflow Sckit-learn Python Tableau SQL $30K HKD
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Date
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07 / 00 / 2022
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Nationality
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HK
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Residence
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HK
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Experience Summary
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1.5 Years of Work Experience
Current & Previous Employers and jobs include XXXX & Data Science Intern, XXXX & Analyst, and XXXX and Quantitative Research Intern
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Education
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XXXXX
Master of Science in Business Analytics
09/2020-06/2021
Bachelor of Economics and Finance
09/2015-01/2020
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Motives & Seeking
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He has just graduated and is looking for a Data Scientist position, he was told that he will be given aposition upon graduation in his internship but due to the pandemic, the company decided to not hire anymore people. He is looking forward to join a new company as a Data Scientist and to have more guidance from seniors to build up the skill sets and techniques, and machine learning tools on a dialy basis.
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Languages
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English- Fluent
Cantonese- Native
Mandarin- Native
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Recent / Current Salary
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$ 13K HKD Fixed Per Month Fixed
+ 9K – 10K HKD Performance Bonus
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Expected Salary
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$ 29K – 35K HKD Per Month Fixed
+ HKD Bonus
+ Medical / Any Other Benefits
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Notice
Period
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Immediately Available
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Interview Availability
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1 day notice for an interview
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Interview Assessment Notes
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Could you introduce yourself and tell us about you? Your current / recent jobs and employers? Previous companies and jobs?
He is currently a Data Science Intern, he was responsible for the strategy for the head trader so after transforming into quantitative strategies, started from scratch, main idea is to use classes to analyse the sentiment and use it to trade, used data extraction first, regression to clean the dates and extract the useful information and the variables when construct the strategies and do some analysis, a lot of data cleaning job and the circle, have to do the back test and do the data ready, linear regression and use the data to predict or classify how well those research papers will affect the stock market,
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What skill(s) / experience would you self-describe as strongest or specialist in?
He is strongest in Scikit-learn and TensorFlow model trainer and Python for automation. Would rate himself 3.5 out of 5 in Python, SQL, TensorFlow and Tableau and 2.5 out of 5 in Pytorch. A project he has done is trying to quantify different variables, assume that the trader’s researchers published the papers, include the headline, from positive, negative or neutral, determined sentiments by trained BERT model. Related to the last earning of the company and did a lot of high policies testing on how to label the data, follow the rules or recommendation and test it out whether the stock prices will go in that direction, and finally if the market prices did end up going up. At first, he used the simple linear regression, there can be some other linear regression not captured so he used something else that uses the bootstrap to sampling data. Use these models for his daily trading and the results were exciting and he was able to have some commission.
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Recruiters
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Employment Agency
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Silicon Valley Associates Recruitment.
907, 9th Floor, Silvercord Tower 2, Tsim Sha Tsui. Kowloon, Hong Kong
25F, Central Plaza, Xin Tian Di, Shanghai
Ubi TechPark #01-08, Singapore
Sunshine Technology & Innovation Centre, No.1003 Nanxin Road, Nanshan, Shenzhen
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Job-Seeker Agreement
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The Candidate has agreed that Silicon Valley Associates Recruitment may disclose their profile to potential employers for the purpose of seeking new employment. Silicon Valley Associates Recruitment will never charge any fees from job-seekers.
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Employer Terms
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General Terms and Conditions apply to all requests, offers, and agreements regarding the provision of services, and are available upon request. These can be sent to you on request or can be found on our website: svarecruitment.com.
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