Postdoctoral Fellow, AI Native Agentic Document Analysis
About the role
Ancestry is a human-centered company dedicated to connecting everyone with their past. We are the global leader in family history, offering over 65 billion records, 3.5 million subscribers, and a DNA network of over 27 million people. Our commitment to location flexibility allows employees to work in offices, from home, or a combination of both.
Responsibilities
- Innovate with state-of-the-art AI: Implement cutting-edge AI solutions for key Document Understanding tasks like OCR/HTR, transcription, NER, RE, Coreference Resolution, Summarization, and Knowledge Graphs using diverse genealogical and historical collections.
- Design and implement multi-agent workflows using frameworks like LangChain, LangGraph, CrewAI, AutoGen, AgentCore, Strands, Google ADK, A2A, etc., to automate complex multi-step reasoning tasks in historical document analysis and information extraction.
- Analyze and optimize multi-modal models, evaluating performance of models like GPT, Gemini, Claude, Llama, and Qwen for zero-shot and few-shot scenarios in comprehensive document understanding.
- Collaborate on cloud deployment, partnering with ML Ops to deploy datasets, models, and pipelines in cloud environments like AWS (S3, SageMaker, Bedrock, ECS, EKS) and GCP (Vertex AI, Gemini API).
Requirements
A Ph.D. (recent graduate or near completion) in Computer Science, Data Science, Statistics, Linguistics, Engineering, or a related quantitative field with a strong research focus. A strong record of academic publications in NLP, CV, or Agentic AI is preferred. Specialization in AI & LLMs, including familiarity with foundational models such as GPT, Gemini, Qwen, Llama, Claude, etc. Research in inference efficiency and optimization, potentially using vLLM, LoRA, QLoRA, and quantization approaches. Familiarity with embeddings, vector databases, and transformer models, with software development experience. Strong proficiency in Python and relevant tools and libraries, including transformer models and multi-modal models. Familiarity with cloud platforms and related AI/ML services such as Google Cloud Platform, GCP, Gemini API, Vertex AI, AWS EC2, S3, SageMaker, Model Registry, and Bedrock are a plus. Ability to clearly present complex technical solutions to both technical and non-technical stakeholders.
Qualifications
Ph.D. (recent graduate or near completion) in Computer Science, Data Science, Statistics, Linguistics, Engineering, or a related quantitative field with a strong research focus.
Skills
Strong proficiency in Python and relevant tools and libraries, including transformer models and multi-modal models.
Benefits
Location flexibility, including the option to work in the nearest office, from home, or a hybrid of both (subject to location restrictions and roles that are required to be in the office- see the full list of eligible US locations HERE).
Pay
Competitive salary and benefits package.
Schedule
Flexible work schedule, with options to work in the nearest office, from home, or a hybrid of both (subject to location restrictions and roles that are required to be in the office- see the full list of eligible US locations HERE).