Agentic AI Architect (GCP)
Atlanta, Georgia, United States
Tiger Analytics
An Advanced Analytics and AI consulting services company. Trusted Data sciences, Data engineering partner for Fortune 1000 firms.Simplify data. Explore moreTiger Analytics is looking for experienced Agentic AI Architect (GCP) with Gen AI experience to join our fast-growing advanced analytics consulting firm. Our employees bring deep expertise in Machine Learning, Data Science, and AI. We are the trusted analytics partner for multiple Fortune 500 companies, enabling them to generate business value from data. Our business value and leadership has been recognized by various market research firms, including Forrester and Gartner.
We are looking for top-notch talent as we continue to build the best global analytics consulting team in the world. You will be responsible for:
Lead the design and development of an Agentic AI platform. Deep expertise in machine learning, system architecture, and AI agent frameworks to build scalable, autonomous systems.
Architect and implement core systems for agent-based AI workflows.
Design and deploy LLM-based pipelines, agent orchestration, and vector-based memory systems.
Develop and optimize ML models, pipelines, and orchestration logic.
Drive technical strategy, tooling, and infrastructure decisions.
Architect and implement agentic AI systems leveraging GCP services (Vertex AI, BigQuery, Cloud Functions, Pub/Sub, etc.).
Requirements
Technical Skills Required:
· Programming Languages: Proficiency in Python is essential; C++ experience is ideal but not required.
· Agentic AI : Expertise in LangChain/LangGraph, CrewAI, Semantic Kernel/Autogen and Open AI Agentic SDK
· Machine Learning Frameworks: Experience with TensorFlow, PyTorch, Scikit-learn, and AutoML.
· Generative AI: Hands-on experience with generative AI models, RAG (Retrieval-Augmented Generation) architecture, and Natural Language Processing (NLP).
· Cloud Platforms: Familiarity with AWS (SageMaker, EC2, S3) and/or Google Cloud Platform (GCP).
· Data Engineering: Proficiency in data preprocessing and feature engineering.
· Version Control: Experience with GitHub for version control.
· Development Tools: Proficiency with development tools such as VS Code and Jupyter Notebook.
· Containerization: Experience with Docker containerization and deployment techniques.
· Data Warehousing: Knowledge of Snowflake and Oracle is a plus.
· APIs: Familiarity with AWS Bedrock API and/or other GenAI APIs.
· Data Science Practices: Skills in building models, testing/validation, and deployment.
· Collaboration: Experience working in an Agile framework.
Desired Skills:
· RAG Architecture: Experience with data ingestion, data retrieval, and data generation using optimal methods such as hybrid search.
· Insurance/Financial Domain: Knowledge of the insurance industry is a big plus.
· Google Cloud Platform: Working knowledge is a preferred
Additional Expertise:
· Industry Experience: 8+ years of industry experience in AI/ML and data engineering, with a track record of working in large-scale programs and solving complex use cases using GCP AI Platform/Vertex AI.
· Agentic AI Architecture: Exceptional command in Agentic AI architecture, development, testing, and research of both Neural-based & Symbolic agents, using current-generation deployments and next-generation patterns/research.
· Agentic Systems: Expertise in building agentic systems using techniques including Multi-agent systems, Reinforcement learning, flexible/dynamic workflows, caching/memory management, and concurrent orchestration. Proficiency in one or more Agentic AI frameworks such as LangGraph, Crew AI, Semantic Kernel, etc.
· Python Proficiency: Expertise in Python language to build large, scalable applications, conduct performance analysis, and tuning.
· Prompt Engineering: Strong skills in prompt engineering and its techniques including design, development, and refinement of prompts (zero-shot, few-shot, and chain-of-thought approaches) to maximize accuracy and leverage optimization tools.
· IR/RAG Systems: Experience in designing, building, and implementing IR/RAG systems with Vector DB and Knowledge Graph.
· Model Evaluation: Strong skills in the evaluation of models and their tools. Experience in conducting rigorous A/B testing and performance benchmarking of prompt/LLM variations, using both quantitative metrics and qualitative feedback.
Benefits
This position offers an excellent opportunity for significant career development in a fast-growing and challenging entrepreneurial environment with a high degree of individual responsibility.
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: A/B testing Agile APIs Architecture AWS BigQuery Consulting Consulting firm Data Warehousing Docker EC2 Engineering Feature engineering GCP Generative AI GitHub Google Cloud Jupyter LangChain LLMs Machine Learning Market research ML models NLP Oracle Pipelines Prompt engineering Python PyTorch RAG Reinforcement Learning Research SageMaker Scikit-learn Snowflake TensorFlow Testing Vertex AI
Perks/benefits: Career development Flex hours
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