We are looking for an exceptional Research Scientist to develop next-generation AI technologies, focusing on user representation learning, semantic understanding, and generative AI applications.
You will conduct applied research that advances representation learning, multimodal understanding, and transformer-based modeling while working closely with engineering teams to translate research into production systems. The ideal candidate combines strong scientific thinking with practical engineering skills and enjoys solving challenging problems using large-scale real-world data.
Responsibilities:Conduct Applied AI Research
- Research and develop novel machine learning algorithms for user representation learning, semantic embeddings, and foundation-model applications.
- Design, prototype, evaluate, and deploy transformer-based generative AI solutions from research through deployment.
- Develop scalable representation learning techniques using transformers, contrastive learning, self-supervised learning, and retrieval-based architectures.
- Investigate multimodal learning approaches that jointly model structured, behavioral, textual, and other heterogeneous data.
Build Large-Scale AI Systems
- Train and evaluate models using large-scale behavioral, transactional, social, temporal, and content datasets.
- Design embedding models, retrieval systems, vector databases, and semantic search pipelines.
- Collaborate with platform and infrastructure engineers to deploy production-quality AI models.
- Design rigorous offline and online evaluation methodologies and establish reproducible benchmarking pipelines.
Collaborate Across Teams
- Work closely with product, engineering, and domain experts to identify impactful research opportunities.
- Translate ambiguous business problems into measurable machine learning objectives.
- Communicate research findings clearly to both technical and non-technical audiences.
- Contribute to the long-term AI research roadmap and technical strategy.
Education
- PhD (completed or near completion) in Computer Science, Machine Learning, Artificial Intelligence, Statistics, or a related quantitative discipline.
- Equivalent industrial research experience will also be considered.
Technical Expertise
Strong background in one or more of the following:
- Deep Learning
- Representation Learning
- Transformer architectures
- Generative AI Models
- Contrastive Learning
- Self-supervised Learning
- Embedding Models
- Retrieval-Augmented Generation (RAG)
- Vector Search
- Semantic Search
- Information Retrieval
Experience with:
- Python
- PyTorch (preferred) or JAX
- Large-scale distributed data processing
- Model experimentation and evaluation
- End-to-end machine learning system development
- GPU Computing
- NVIDIA GPU architecture and CUDA programming fundamentals
- Multi-GPU and distributed training using PyTorch Distributed
- Mixed precision training (FP16/BF16/FP8)
- Profiling and optimizing GPU utilization, communication overhead, and training throughput
Research Mindset
Candidates should demonstrate:
- Strong scientific rigor
- Ability to establish meaningful baselines before pursuing more complex models
- Well-designed experiments and reproducible evaluations
- Data-driven decision making
- Intellectual curiosity and independent problem solving
- Combine research excellence with strong engineering execution.
- Enjoy working with ambiguous, real-world business problems.
- Can independently drive projects from idea to production.
- Thrive in highly collaborative, cross-functional environments.
- Have excellent written and verbal communication skills.
- Are passionate about building practical generative AI systems that create measurable business impact.
- 5 years of industrial or applied research experience preferred (including internships).
Skills Required
- PhD in Computer Science, Machine Learning, AI, Statistics, or related quantitative field (or equivalent industrial research experience)
- Deep Learning
- Representation Learning
- Transformer architectures
- Generative AI Models
- Contrastive Learning
- Self-supervised Learning
- Embedding Models
- Retrieval-Augmented Generation (RAG)
- Vector Search and Vector Databases
- Semantic Search and Information Retrieval
- Python
- PyTorch (preferred)
- JAX
- Large-scale distributed data processing
- Model experimentation and evaluation
- End-to-end machine learning system development
- GPU computing and multi-GPU distributed training
- NVIDIA GPU architecture and CUDA programming fundamentals
- PyTorch Distributed
- Mixed precision training (FP16/BF16/FP8)
- Profiling and optimizing GPU utilization, communication overhead, and training throughput
- Strong scientific rigor, reproducible experiments, and data-driven decision making
- Excellent written and verbal communication skills
- 5 years of industrial or applied research experience (preferred, including internships)
What We Do
ShareThis has unlocked the power of global digital behavior by synthesizing social share, interest, and intent data since 2007. Powered by consumer behavior on over three million global domains, ShareThis observes real-time actions from real people on real digital destinations. ShareThis transforms user-level behavioral data to better understand, validate, and expand consumer behavior for targeting and activation, customer acquisition, and insights and analytics. Awards: - Fortune’s Best Small Workplaces: 2021, 2019, 2018, 2017 - ShareThis won the #10 spot on Ad Age’s 2017 Best Places to Work list - Silver Winner for Best in Biz Awards' Best Place to Work - Small category Interested in joining our team? Check out open positions on our Hiring Page (https://sharethis.com/careers/) and follow us on LinkedIn!








