Offers “Ubisoft”

Expires soon Ubisoft

Data Scientist Yi (Ryan) Li

  • Chengdu, 中华人民共和国
  • Studies / Statistics / Data

Job description

Responsibilities:

1. Research and implement data driven solutions using machine learning technologies and advanced statistical methods to get the insights of game players
2. Develop and improve machine learning, natural language processing, and information retrieval techniques and systems to understand game players community
3. Keep tracking state-of-the-art applications and researches in machine learning and deep learning area
4. Collaborate with product managers and engineers to industrialize machine learning productions

Qualifications:

1. 3+ years’ experience in data science/machine learning
2. Strong academic background in data science/computer science/mathematics etc.
3. Experience in applying machine learning and deep learning in business systems
4. Experience in natural language processing and Chinese language is preferred
5. Excellent communication skills, teamwork awareness
6. Excellent problem analysis and handling skills, passionate about solving challenging problems.

Preferred Qualifications & Experience Requirements:

1. Familiar with Python, master numpy, scipy, pandas and other scientific computing and data analysis modules is preferred
2. Familiar with scikit-learn, TensorFlow, Keras, PyTorch and other machine learning and deep learning frameworks is preferred
3. Familiar with Hadoop Hive, Impala and Spark applications is preferred

 

 

工作职责

1. 利用机器学习技术和高级统计学方法,研究和实现相关数据驱动方案 来洞察游戏玩家;
2. 开发和改进机器学习、自然语言处理和信息获取的技术及其系统来理解游戏玩家社区;
3. 负责跟踪机器学习、深度学习领域的前沿应用和研究;
4. 与产品经理和工程师合作来产品化机器学习应用。

任职要求

1. 在数据科学和机器学习相关方面3+年的工作经验;
2. 有较强的数据科学、计算机科学和数学等相关专业方向的学术背景;
3. 具备商业系统中应用机器学习、深度学习的相关经验;
4. 具备自然语言处理的相关经验,中文语言处理优先;
5. 优秀的沟通能力、团队协合作意识;
6. 优秀的分析问题和解决问题的能力,对解决富有挑战性的问题充满激情;
7. 熟悉Python编程,掌握numpy、scipy、pandas等科学计算及数据分析模块者优先;
8. 熟悉scikit-learn、TensorFlow、PyTorch、Spark ML等机器学习、深度学习框架者优先;
9. 熟悉Hadoop Hive、Impala、Spark应用者优先;

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