Applied AI Researcher (GenAI / NLP / Agentic AI / Applied... | Findjobs
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Applied AI Researcher (GenAI / NLP / Agentic AI / Applied Machine Learning)
USG, Inc.
Location
🇺🇸 Jersey City, United States
Type
intern
Salary
Undisclosed
Posted
1d ago
Job Description
Applied AI Researcher (GenAI / NLP / Agentic AI / Applied Machine Learning) Location: 210 Hudson Street, Jersey City, NJ, 07311 (3-4 days onsite per week) Interview: May require an in-person (F2F) interview after Video Call Duration: 12 Month
About the Role
seeking an Applied AI Researcher to bridge advanced AI research and practical enterprise use cases by validating models, methods, and prototypes that can become production-grade AIRP (AI Ready Platform) solutions.
The role
focuses on measurable business value, rigorous experimentation, model behavior, and safe translation of research into banking-relevant applications. Client-Specific Emphasis • Research must be grounded in enterprise business use cases, not generic AI experimentation. • Candidates should understand how model, retrieval, data, evaluation, latency, cost, and safety decisions affect production delivery on AIRP. • Cloud/AWS awareness is valuable because successful research outputs must be handed off to engineering teams building on AWS-hosted AIRP. Primary Ownership • Applied research agenda for LLMs, NLP, RAG, evaluation, multimodal AI, and agentic workflows relevant to enterprise use cases. • Prototypes, experiments, benchmark design, model-selection recommendations, and production-readiness evidence. • Research-to-production handoff with AI engineering, AIRP platform, product, risk, and governance teams.
Key Responsibilities
Conduct applied research in LLMs, GenAI, NLP, information retrieval, multimodal AI, synthetic data, and agentic AI.
Design experiments to evaluate model performance, robustness, safety, scalability, interpretability, enterprise usefulness, and production feasibility.
Prototype AI solutions for KYC, credit underwriting, governance tracking, pitch book generation, Banker 360, Customer 360, deal library intelligence, financial crime quality, and sanctions screening.
Develop evaluation methodologies using golden datasets, adversarial testing, offline benchmarks, human review, business outcome metrics, and risk-specific acceptance criteria.
Assess prompt optimization, RAG, fine-tuning, instruction tuning, synthetic data generation, distillation, and model adaptation techniques.
Document model limitations, data assumptions, hallucination patterns, bias risks, performance boundaries, and control recommendations for regulated deployment.
Collaborate with engineers to convert prototypes into production-ready AIRP
requirements
, including latency, cost, observability, security, and AWS/cloud deployment considerations. • Track emerging AI research and translate relevant advances into practical recommendations for the enterprise. Must-Have
Qualifications
Advanced degree preferred, usually MS or PhD in AI, ML, computer science, statistics, computational linguistics, mathematics, or related field.
Strong foundation in machine learning, deep learning, NLP, transformers, information retrieval, and generative AI.
Hands-on experience with LLMs, embeddings, RAG, model evaluation, and applied GenAI experimentation.
Python skills with PyTorch, TensorFlow, Hugging Face, scikit-learn, or equivalent research frameworks.
Ability to design rigorous experiments and communicate findings to technical, product, business, risk, and governance stakeholders.
Ability to translate research results into production
requirements
suitable for an AWS-hosted enterprise platform. Preferred Experience • Research or applied science experience in banking, finance, compliance, risk, legal, operations, financial crime, sanctions, or enterprise knowledge systems. • Experience with AWS Bedrock, SageMaker, vector search, MLflow, Databricks, model evaluation tooling, or cloud-based experimentation environments. • Publications, patents, internal research contributions, open-source AI contributions, or prior research-to-production handoffs. • Familiarity with Responsible AI, model validation, privacy constraints, audit documentation, and regulated deployment environments. eye