- Home
- Kilas Global
- Appier highlights groundbreaking AI research with three papers accepted at NeurIPS and EMNLP
Jumat, 18 Oktober 2024 15:08:00
Appier highlights groundbreaking AI research with three papers accepted at NeurIPS and EMNLP
TAIPEI, TAIWAN - 17 October 2024 - Appier, a software-as-a-service (SaaS) company leveraging artificial intelligence (AI) to drive business decision-making, is excited to announce that all three research papers from its AI Research Team have been accepted at two of the world's most prestigious AI conferences, NeurIPS[1], and EMNLP[2].
This remarkable achievement highlights Appier's advanced AI research capabilities, particularly in the development of Large Language Models (LLMs), and reinforces the company's leadership in cutting-edge technology and innovation.
As part of its ongoing commitment to AI innovation and academic collaboration, Appier established a dedicated AI research team in February 2024 to further enhance its technical capabilities. By presenting research at globally recognized academic forums, Appier continues to demonstrate its extensive expertise. As one of the few Asia-based companies to have all its submissions selected by NeurIPS and EMNLP this year, Appier's excellence and leadership in AI and Natural Language Processing (NLP) are earning well-deserved international recognition.
These research findings will be integrated across Appier's full product suite, including its advertising, personalization, and data cloud SaaS platforms. Examples of applications include creative generation and performance optimization in advertising, knowledge bots, real-time product advisors and e-commerce customer service, hyper-personalized marketing solutions, autonomous report generation for customer data platforms, and industry-specific model optimizations. These innovations align with Appier's mission to transform AI into a measurable ROI for its clients, driving tangible business growth.
Chih-Han Yu, CEO and co-founder of Appier, said, "AI has always been at the heart of Appier's DNA, driving us to explore groundbreaking research in AI and LLMs, and their limitless potential in new frontiers. The acceptance of all three of our papers is a tremendous validation of the hard work and talent of our AI research team. With our strong R&D foundation, we are committed to accelerating data utilization and model optimization to unlock new business value and opportunities, bringing AI to the forefront of business success."
NeurIPS and EMNLP are among the most prestigious academic conferences in the fields of AI and NLP, attracting leading experts and scholars from around the world. NeurIPS, often referred to as the "Olympics of AI," has been held annually since 1987 and covers a broad range of topics, including neural networks, deep learning, and statistics. In 2024, NeurIPS received 15,600 submissions, with an acceptance rate of around 25.3% for its Datasets and Benchmarks Track. EMNLP, established in 1996, is a key conference in the NLP domain, focusing on technical breakthroughs and empirical research. This year, it received over 6,105 submissions for its Main Track, with an acceptance rate of approximately 20.8%, while the Industry Track had an acceptance rate of 36.53%.
As Appier continues to lead in AI innovation, the company remains deeply invested in pioneering AI technologies and advancing LLM research. With AI constantly evolving, Appier is committed to collaborating with top academic experts and industry leaders to explore transformative technologies, delivering practical, cutting-edge applications that will transform digital advertising and marketing.
Appier is actively recruiting research scientists, engineers, and MarTech professionals to accelerate product innovation and development, addressing the growing business needs of our clients. We warmly invite talented candidates to join us in shaping the future of AI!
[1] NeurIPS(Conference on Neural Information Processing Systems)
[2] EMNLP(Empirical Methods in Natural Language Processing)
[3] In practical applications, standardized formats (such as JSON or XML) are widely used for extracting key output information from LLMs.
The issuer is solely responsible for the content of this announcement.
Share
Komentar