ICML, IJCAI, AAAI, UAI, KDD,

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1 Job Description Machine Learning Research Scientist You will have the opportunity to work on challenging data problems, specializing in one or more of the following: machine learning, Big Data, data mining, algorithm research, optimization and statistics. RESPONSIBILITIES 1. Mine massive amounts of data from Tencent s social network and products to gain insights and identify patterns using machine learning techniques and complex network analysis methods. 2. Design and implement ML algorithms and models (especially deep learning models) through in-depth research and experiment with neural network models, parameter optimization, and optimization algorithms. 3. Work to accelerate the distributed implementation of existing algorithms and models and enrich the parallel algorithms library. 4. Conduct research to advance the state of the art in deep learning and provide technical solutions at scale for real world challenges in various scenarios. 5. Apply ML algorithms/models to support research on computer vision, natural language processing and recommender systems that power Tencent s products. 1. Graduate degree or PhD in computer science, AI, applied math, automation, statistics, data science, operations research or a related field. 2. Passionate about AI-related research and innovations. 3. Excellent algorithm design and development skills; solid understanding of deep learning, reinforcedlearning, pattern recognition and optimization algorithms. 4. Proficient in one or more programming languages (e.g., C/C++, Java, Python); understanding of machine learning (deep learning) infrastructure and systems (e.g., Spark, XGBoost, Caffe, Tensorflow). 5. Experience in large-scale data processing and deep learning is preferred. 6. Publication records in top-tier conferences or leading journals such as NIPS, ICML, IJCAI, AAAI, UAI, KDD, and SIGIR is a plus. 机器学习方向

2 Job Description Natural Language Processing Research Scientist RESPONSIBILITIES 1. Design and build NLP algorithms for semantic analysis, intent recognition, chatbot, machine translation, knowledge graph, and named-entity recognition. 2. Conduct research to advance the state of the art in NLP and provide technical solutions at scale for real world challenges in various scenarios. 1. Graduate degree or PhD in computer science, AI, applied math, automation, pattern recognition, bioinformatics, statistics or a related field. 2. Proficient in one or more programming languages (e.g. C/C++, Java, Python). 3. Experience in large-scale data processing and deep learning is preferred. 4. Publication records in top-tier conferences such as ACL, EMNL, NAACL, COLING, IJCAI, and AAAI is a plus. 自然语言处理方向

3 Job Description Speech Processing Research Scientist RESPONSIBILITIES 1. Design and build algorithms in the areas of spoken language understanding, intent recognition, dialogue models, chatbot, deep learning and reinforced learning. 2. Research on speech recognition/synthesis, including front-end processing, acoustic modeling, decoding, and text to speech synthesis. 3. Contribute to our knowledge graph that powers our dialogue system and intelligent question answering system. 4. Conduct research to advance the state of the art in speech recognition/synthesis and provide technical solutions at scale to real world challenges in various scenarios. 1. Graduate degree or PhD in computer science, AI, applied math, automation, pattern recognition, bioinformatics, neural science, speech recognition, machine learning, natural language processing or a related field. 2. Proficient in one or more programming languages (e.g., C/C++, Java, Python); 3. Experience in acoustic modeling, speech recognition decoder, WFST application and optimization is preferred. 4. Publication records in top-tier conferences such as ACL, EMNL, NAACL, COLING, IJCAI, and AAAI) is a plus. 语音处理方向

4 Job Description Data Scientist with WeChat Division RESPONSIBILITIES You will assist with analytics for our products and work with product managers and software engineers to translate data-driven insights into executable strategies. 1. Graduate degree in statistics, data science, operations research or a related field. 2. Excellent data analysis skills with an emphasis upon ascertaining industry-specific insights. 机器学习方向

5 Job Description Software Engineer (Back-end) A back-end software engineer is responsible for the architectural design, development, optimization and operations of Tencent s products and services. You will create an optimally designed architecture for the implementation of best-fit algorithms to provide solutions in various areas, including network access, business logic, data storage and data mining as we aim to build for our users a stable, secure, top-quality and reliable back-end support system. 1. Excellent algorithm design and development skills; proficient in one or more programming languages like C/C++/JAVA, general-purpose algorithms and data structures. 2. Familiar with TCP/UDP network protocol and inter-process communication programming. 3. Knowledge of scripting languages like Python, Shell, and Perl. 4. Knowledge of MYSQL and SQL, NoSQL, and key-value storage. 5. Solid understanding of software development, including operating systems, software engineering, design patterns, data structures, database systems, and network security. 6. Knowledge of distributed system design and development, load balancing, system disaster recovery design and high availability systems. 软件开发 后台开发方向

6 Job Description Service Reliability Engineer- Technical Consultant with the Tencent WeGame Division You will be the hub of all communication between Tencent and third-party game developers that make use of the WeGame platform. This is a pivotal role in the development, integration, and publishing of games on the WeGame platform. RESPONSIBILITIES 1. Be the project owner of game titles and oversee the entire process while achieving milestones and project goals. 2. Handle day-to-day communication with third-party game developers (studios/publishers) and internal support teams (technical/localization, etc.) 3. Establish and maintain relationships with key partners. 4. Provide technical solutions to product development and optimization. 1. Bachelors degree or graduate degree in computer science, telecommunications or a related field; solid understanding of computer network architecture and Unix/Linux operating systems. 2. Ability to handle pressure in a fast-paced environment. 3. Team player with excellent communication and interpersonal skills. 4. Passion for games and the game industry; experience in game development, operations and publishing a plus 5. PC/console gamer and/or Steam user a plus. 技术运营 咨询方向

7 Job Description Game Designer A game designer must be a game lover overflowing with creativity and inspiration, who is able to turn raw ideas into games. You will be the chief architect overseeing the construction of a virtual world and the creation of its micro-components including system design, HCI design, content creation and its mathematical underpinnings. You will be a craftsman working closely with our arts and programming teams to continuously improve your work based on user feedback and data-driven insights. This opportunity will provide you with the opportunity to grow into a professional game producer with the potential to invent what could be our next most-played game. 1. Excellent academic record; all majors welcome. 2. Quick to learn; creativity, communication and reasoning skills, and analytical skills are all required. 3. Strong interest in the internet and game industry; deep understanding of internet products and services; the ability to see things from customers point of view. 4. Passionate about games; experience in game design and programming is preferred; experience in playing games is preferred. 游戏策划培训生

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