Company Introduction
PatSnap is a a SaaS-based tech innovation intelligence service provider. Patsnap helps R&D leaders to maximise the value of innovation intelligence within their R&D workflow and strategic planning. As the global leaders in
connected innovation intelligence, PatSnap use AI-powered and machine learning technology to comb through billions of datasets, and help innovators connect the dots. Patsnap recently completed a Series E funding round of $300 million, led by Tencent and the SoftBank Vision Fund II. This represents the largest round of funding in the SaaS sector since 2020, Patsnap is a unicorn in the SaaS track.
Department Introduction
The R&D SG Department is dedicated to building leading capabilities in natural language processing technology and services. This is achieved by leveraging technologies such as Deep Learning, NLP, CV, and Knowledge Graph to create top-tier products.
Job description
We are looking for an experienced Senior Natural Language Processing Engineer to help us improve various business outcomes and drive innovation. You will join a multidisciplinary team helping to shape our Product development. This is an excellent opportunity to take advantage of emerging trends and technologies to a real-world difference.
Responsibilities
Utilise natural language processing, machine learning, and data mining technologies to build models to achieve business objectives
Proficient in using NER and relationship extraction to solve business problems
Study and transform various kind of structured and unstructured data
Organising data in to usable formats
Enhancing the data collection process
Create visualisations of data
Analysing unstructured data using basic NLP techniques and extract important fields
Develop NLP systems according to requirements
Perform statistical analysis of results and refine models
Remain updated in the rapidly changing field of machine learning
Deploy models, optimise inference speed, and processing big data
Requirements
Familiar with at least one field among ML, NLP, Knowledge Graph, LLM, and up-to-date with industry and academic progress
Solid foundation in algorithms and have passion for technology development and application
Proficient in programming languages such as Python, and has a good grasp of deep learning frameworks like PyTorch, and TensorFlow
Familiar with name entity recognition and relationship extraction
Experience in optimising pre-trained models, such as bert and gpt-based papers published in ACL/AAAI/KDD/NIPS/CVPR and other conferences will be preferred.