MBA Investment Intern(Web 3 Remote IR)

Tearline
Sheffield
1 year ago
Applications closed

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Senior Data Scientist - Game Analytics

Data Scientist - Game Analytics

Manager, Data Science - Shipping

Responsibility :


  • Design, optimize, and implement daily operational processes to ensure efficient execution.
  • Address customer complaints and suggestions to improve customer satisfaction and loyalty.
  • Collect customer feedback, analyze changing needs, and propose product or service enhancements.
  • Build relationships with investment banks, venture capital firms, and angel investors.
  • Develop investor communication strategies and provide regular updates on company status.
  • Organize investor meetings and roadshows to present the company's development plans and performance.
  • Participate in negotiations of financing contracts, ensuring fair and transparent terms. Review contract terms to ensure legal compliance.


Requirement :


  • MBA or Master in Computer Science, Artificial Intelligence, Mathematics, or related fields from QS Top 100 University (Stanford, Harvard, Columbia and etc)
  • Mandarin and English MUST be fluent
  • Strong in deep learning theory and mainstream frameworks like PyTorch and TensorFlow.
  • Proven experience in developing and deploying large language models, with a deep understanding of natural language processing (NLP) techniques.
  • Work experience with Web3 project company preferred (DeFi, GameFi, Ton Mini App)
  • Preferred local citizen passport holder.

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