Halliburton Landmark AI assistant for Seismic Engine workflow creation
Halliburton Landmark built an AI-powered assistant for Seismic Engine to convert natural-language requests into executable seismic workflows and answer questions from documentation. The solution uses Amazon Bedrock Knowledge Bases, Amazon Nova Lite, Amazon OpenSearch Serverless, Amazon Titan Text Embeddings V2, Amazon App Runner, and Amazon DynamoDB in a conversational workflow-generation and Q&A architecture.
- Organization
- Halliburton Landmark
- Industry
- Energy & Utilities
- Location
- United States
- Published
- May 2026
Reported outcomes
97%
workflow generation success rateAdoption & scale
Strategic outcomes
Catalog median for adoption & scale deployments: +85.5% across 46 reported metrics. Compare benchmarks →
Primary read
Use case focus
Showing 1 of 1
- 1Planning automation
- Creating seismic processing workflows in Seismic Engine previously required manual configuration of about 100 specialized tools.
- The process was time-consuming, error-prone, and required deep expertise, limiting accessibility and productivity.
- Halliburton partnered with the AWS Generative AI Innovation Center to build a conversational assistant for Seismic Engine.
- An intent router powered by Amazon Nova Lite classifies requests into workflow generation, Q&A, or general questions.
- Q&A uses Amazon Bedrock Knowledge Bases over S3 documentation with Amazon OpenSearch Serverless and Amazon Titan Text Embeddings V2.
- Workflow generation uses Claude models on Amazon Bedrock to select among 82 tools and generate YAML workflows, with DynamoDB storing chat history and interaction logs.
- Workflow generation success rates reached 84-97%.
- Workflow creation time was reduced by over 95%, from minutes to seconds.
- Complete workflows were generated in about 5.9-16.6 seconds.
Architecture
A FastAPI application deployed on AWS App Runner handles user queries through a streaming interface. An intent router powered by Amazon Nova Lite classifies requests into workflow generation, Q&A, or general questions. For Q&A, the system uses Amazon Bedrock Knowledge Bases with Amazon OpenSearch Serverless and Amazon Titan Text Embeddings V2 over documentation stored in S3. For workflow generation, a generation agent using Claude on Amazon Bedrock selects from 82 Seismic Engine tools and generates YAML workflows. Amazon DynamoDB stores chat history and interaction logging for multi-turn conversations.
Implementation partners1
Sources & evidence1
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