Degree in Artificial intelligence- AI
Aartificial intelligence, Amazon Athena, Amazon Simple Storage Service (S3), AWS Glue, AWS Sagemaker, Big Data Technology, Data science techniques, Data Warehousing, Database, Deep Learning, Elasticsearch, Large Language Models - LLMs, LightGBM, Machine learning techniques, MATLAB Programming, MySQL, Natural Language Processing (NLP), R Programming, SAS, SQL, Statistics, XGBoost
JP Last Mile Technology Team is seeking a Senior Data Scientist to design, evangelize, and implement state-of-the-art solutions for never-before-solved problems, helping last mile space, based in Tokyo, Japan. As Senior Data Scientist you will work closely with other research scientists, machine learning experts, and economists worldwide, to design and run experiments, research new algorithms, and find new ways to improve last mile analytics to optimize the Customer experience. You will partner with technology and product leaders to solve business and technology problems using scientific approaches to build new services that surprise and delight our customers.
Science at Amazon is a highly experimental activity, although theoretical analysis and innovation are also welcome. Our scientists work closely with software engineers to put algorithms into practice. They also work on cross-disciplinary efforts with other scientists within Amazon worldwide.
*Related information
[Department] https://www.amazon.co.jp/b?node=5637343051
[Data Analyst/Engineer] https://www.amazon.co.jp/b?node=5609906051
[Location] https://www.amazon.co.jp/b?node=5589794051
*Amazon is committed to a diverse and inclusive workplace. Amazon is an equal opportunity employer and does not discriminate on the basis of race, national origin, gender, gender identity, sexual orientation, protected veteran status, disability, age, or other legally protected status. For individuals with disabilities who would like to request an accommodation, visit https://www.amazon.jobs/disability/jp
Key job responsibilities
The key strategic objectives for this role include:
- Understanding drivers, impacts, and key influences on last mile delivery dynamics.
- Drive actions at scale to provide low prices and increased selection for customers using scientifically-based methods and decision making.
- Helping to build production systems that take inputs from multiple models and make decisions in real time.
- Automating feedback loops for algorithms in production.
- Develop input and assumptions based preexisting models to estimate the costs and savings opportunities associated with varying levels of network growth and operations.
- Utilizing Amazon systems and tools to effectively work with terabytes of data.
About the team
Last Mile Execution Analytics (LMEA) team of JP works as an integral part of Amazon Logistics to ensure that its business intelligence, analytics, tools and planning needs are met. By providing information, insight, and decision support, we strive to enable success of all parts of Amazon Logistics. Our customer set includes senior management, station operations, external vendors, long-term planning, Ops technology (Voice of the Delivery Station, Voice of the Customer), network planning, and pretty much every BI and Ops teams in Amazon Logistics.
We are open to hiring candidates to work out of one of the following locations:
Tokyo, JPN
BASIC QUALIFICATIONS
- Masters in quantitative field (Computer Science, Mathematics, Machine Learning, AI, Statistics, or equivalent).
- Knowledge and expertise with Data modelling skills, SQL with Oracle, MySQL, and Columnar Databases.
- Skilled with Java, C++, or other programming language, as well as with R, SAS, MATLAB, Python or similar scripting language.
- 5+ years of experience working in data science in a consumer product company, managing Machine Learning Scientists, Data Scientists, Research Scientists, Applied Scientists, Economists or equivalent fields.
- Experience in leading experienced scientists.
- Business level of English.
PREFERRED QUALIFICATIONS
- A PhD in a quantitative field (Computer Science, Mathematics, Machine Learning, AI, Statistics, or equivalent).
- 10+ years of experience working in data science in a consumer product company.
- 5+ years of experience managing Machine Learning Scientists, Data Scientists, Research Scientists, Applied Scientists, and/or Economists.
- Extensive knowledge and practical experience in several of the following areas: machine learning, statistics, NLP, deep learning, recommendation systems, dialogue systems, information retrieval, XGBoost, LightGBM, ElasticNet.
- Functional knowledge of AWS platforms such as S3, Glue, Athena, Sagemaker.
- Demonstrated industry leadership in the fields of Database and/or Data Warehousing, Data Sciences and Big Data processing.
- Deep understanding of data, application, server, and network security
- Successful record of developing less experienced team members to a successful career track.
Amazon.com, Inc. is an American multinational technology company with operations in cloud computing, streaming media, artificial intelligence, and e-commerce. The company has been referred to as one of the most influential economic and cultural forces in the world, and it is one of the world's most valuable brands.
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