Required Skills: AWS AI/ML Tools, Building LLMs, Data Handling, Python, Bedrock, S3, Lambda, SageMaker
Job Description
we have an immediate opening with resume review and interview times for next week. We will need them to do Apex Technical Screening before being presented. Similar skills to some of the recent roles at BNY and Rational Exponent excepts this is 100% on-site in Cincinnati, OH. Do not waste time sending remote candidates or candidates who will relocate in 2-3 months. On-site, 100%, Day 1 and onward Only.
Manager Notes
- Experience: Building LLMs, not just integrating APIs.
- AWS AI/ML Tools: Comfort with AWS AI/ML tools — especially Amazon Bedrock.
- Knowledge Areas:
- Structured vs unstructured data handling
- Risk classification & mitigation strategies in AWS
- Translating business problems into AWS architectural solutions
- Experience Level: 6–10 years of relevant experience preferred.
Role Focus & Needs
- Expertise Required: AWS services, especially around Bedrock and how to use it to create or fine-tune LLMs (Large Language Models).
- Role Responsibilities: Support the transition of AI/LLM development from the existing AI Transformation team into Hima’s team.
- Project Evaluation: Help evaluate projects in the pipeline and determine the best AWS services to apply per use case.
- Service Matching: AWS platform is vast — need someone who can match services to business needs effectively.
Overview: Apex Systems is seeking a dynamic Senior AI Engineer with strong consultative skills. The role is hands-on and intensely focused on developing advanced deep learning models for real-world AI and NLP initiatives. As a Senior AI Engineer, you will be at the forefront of research and development, focusing on the design and implementation of AI Applications and fine-tuning of LLM models.
Responsibilities:
- Optimize models for running on embedded hardware or scaling model parallelization on the servers.
- Utilize AWS AI services, such as Bedrock, and LLMs like Claude 3 Sonnet, LLaMa, etc. to build intelligent, scalable applications.
- Develop and maintain NLP pipelines for risk assessment, threat classification, named entity recognition, information retrieval, summarization etc.
- Collaborate closely with Data Science, Cloud Engineering, and Applications Development teams to align on project goals and technical requirements.
- Comprehensive knowledge and hands-on experience with fine-tuning approaches and training models.
- Lead and contribute to the design and implementation of NLP models and algorithms that can scale across diverse languages and dialects, taking into consideration the linguistic variations and complexities present in different language communities
- Perform data preprocessing of structured and unstructured data sources for model serving.
- Outstanding communication skills, both written and verbal, to effectively collaborate with internal teams and present solutions to clients
Technical Requirements:
- 8 years of experience writing and deploying production quality AI models.
- Strong hands-on Python programming experience.
- Strong experience in AWS including services such as Bedrock, S3, Lambda, SageMaker.
- Hands-on technical experience with extensive background in deep learning networks.
- In-depth experience in Natural Language Processing (NLP), with a particular emphasis on Large Language Models (LLMs) and Transformer architectures
- Strong innovator who understands the nuances of large language models and in-depth hands-on experience working with Amazon Bedrock and foundational LLMs like Claude 3 Sonnet, GPT, LLAMA, Transformer-based architectures or other GPT variants.
- Knowledge of model adaptation techniques such as RAG, fine tuning, LoRA, feature engineering, etc.
- Proficient knowledge of NLP techniques, including tokenization, language modeling, and embeddings
- Experience in data preprocessing, including both structured and unstructured data, for serving AI models.
- Strong experience in model fine tuning and performance evaluation
- Experience in developing Gen AI applications using LangChain or LlamaIndex Library preferred.
- Familiarity with database management systems, such as Pinecone, Weaviate DB, vector search algorithms, and LLM embedding layers preferred.
Published research in the NLP field is highly desirable but not specifically required, indicating an ability to not only understand but also contribute to cutting-edge research