Generative AI Engineer

TEGNA Inc.New York, NY
3h

About The Position

TEGNA Inc. (NYSE: TGNA) helps people thrive in their local communities by providing the trusted local news and services that matter most. With 64 television stations in 51 U.S. markets, TEGNA reaches more than 100 million people monthly across the web, mobile apps, streaming, and linear television. Together, we are building a sustainable future for local news. We are seeking an AI Engineer to design, develop, and deploy scalable LLM-powered solutions leveraging AWS cloud services, Snowflake, and modern GenAI frameworks. This role focuses on building production-grade AI systems, optimizing LLM inference, and integrating enterprise data platforms with cutting-edge AI technologies. The ideal candidate combines strong cloud engineering expertise with hands-on experience in prompt engineering, foundation models, agentic AI systems, and data pipelines within Snowflake and AWS ecosystems

Requirements

  • 5+ years of experience in AI/ML, Software or Data engineering.
  • Proficiency in Python with solid understanding of ML fundamentals
  • Strong hands-on experience with AWS, APIs and microservices architecture
  • Experience integrating AI solutions with data systems like Snowflake.
  • Practical experience with prompt engineering
  • Experience with LLM orchestration frameworks (e.g., LangChain, LlamaIndex, Semantic Kernel, or similar
  • Experience with agentic frameworks (AutoGen, CrewAI, or equivalent).

Nice To Haves

  • Experience building RAG pipelines in enterprise environments.
  • Knowledge of MLOps best practices.
  • Experience with vector databases and embeddings.
  • Familiarity with model evaluation frameworks (e.g., LLM eval metrics).
  • Experience implementing AI governance and responsible AI practices.
  • Background in sales, media, marketing analytics, or enterprise data platforms (a plus).

Responsibilities

  • Design, develop, and deploy LLM-powered applications and agentic AI systems in production environments.
  • Implement advanced prompt engineering strategies including:
  • Prompt chaining and multi-turn orchestration
  • Few-shot learning and in-context learning
  • Chain-of-Thought (CoT) and Tree-of-Thought (ToT) prompting
  • Function calling and tool use optimization
  • Structured output generation (JSON, XML schemas)
  • Build and optimize Retrieval-Augmented Generation (RAG) systems integrating Snowflake data with LLMs.
  • Evaluate and fine-tune foundation models via AWS Bedrock or other managed AI services.
  • Develop guardrails for AI systems including hallucination mitigation, grounding, and safety controls.
  • Implement LLMOps best practices for model lifecycle management:
  • Model versioning, deployment, and rollback strategies
  • Prompt versioning and experimentation frameworks
  • Monitor and observe LLM application performance using observability tools.
  • Evaluation frameworks for LLM outputs
  • Architect scalable AI solutions using AWS services such as:
  • Bedrock - Sagemaker – Access and fine-tune foundation models
  • Lambda – Serverless LLM application deployment
  • EC2 – GPU-accelerated inference and batch processing
  • Step Functions – Orchestrate complex LLM workflows and agentic pipelines
  • CloudWatch – Monitoring, logging, and alerting for AI systems
  • Build and optimize data pipelines between Snowflake and AI services.
  • Design feature stores and embeddings pipelines using Snowflake.
  • Leverage Snowflake's Cortex LLM functions for in-database AI operations.
  • Implement vector search and semantic search capabilities.
  • Work with structured and unstructured enterprise data.
  • Ensure data quality, governance, and security.
  • Optimize Snowflake queries for AI workloads and cost efficiency.
  • Build APIs and backend services to operationalize AI solutions.
  • Integrate LLM/AI systems into internal applications, sales tools, or analytics platforms.
  • Implement streaming and real-time inference for low-latency AI applications.
  • Collaborate with stakeholders to translate use cases into production AI systems.

Benefits

  • TEGNA offers comprehensive benefits designed to safeguard the physical, mental and financial health of our employees and their families. TEGNA offers two medical plan options for full and part-time employees through Blue Cross Blue Shield of Texas, as well as access to dental and eye care coverage; fertility, surrogacy and adoption assistance; disability and life insurance.
  • Our 401(k) program offers full, part-time and temporary employees the opportunity to contribute 1% - 80% of their pay on a pre-tax basis to TEGNA’s 401(k). Contributions made up to the first 4% of pay are eligible for a 100% match from the company and are 100% vested from day one.
  • Regardless of participation in TEGNA medical plans, ALL employees and their eligible family members receive nine free virtual doctor’s appointments with a physician through Teladoc, and 12 free annual therapy sessions with a licensed clinician through Spring Health.
  • TEGNA offers a generous Paid Time Off (PTO) benefit as well as nine paid holidays per year.
  • Some jobs are covered by a collective bargaining agreement and thus some or all of the benefits described herein may not apply. For example, some newsroom bargaining unit employees receive health and retirement benefits under plans administered by the union.
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