Full-Stack AI Engineer

Incedo Inc.
Dallas, TX

About Incedo:

Incedo is a global AI and data transformation specialist empowering companies to realize sustainable business impact from their digital investments by delivering ROI from AI@Scale. As a long-term partner for strategy to execution, we operate at the intersection of business and technology. Our integrated services and platforms are built on the foundation of AI & Data, digital engineering, and operations transformation, bringing deep domain expertise and full stack capabilities together. With over 4,000 people in the US, Canada, Latin America and India and a large, diverse portfolio of Fortune 500 enterprises and fast growing clients worldwide, we work across banking & payments, wealth management, telecom, hitech and life sciences.


Please visit the link to know about Incedo: https://www.incedoinc.com/


Full-Stack AI Engineer

Location: Dallas, TX or Tampa, FL or Basking Ridge, NJ


MUST-HAVES

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- 4 years of professional software development experience across frontend and backend.

- Proficiency in React, Python, and Node.js.

- 2 years hands-on experience with a graph database (Spanner Graph, Neo4j, or similar) including schema design and query writing.

- Strong experience with Google Cloud Platform (GCP) - Vertex AI, Cloud Run, BigQuery, Pub/Sub, Load Balancer and GCS.

- Comfortable with Elasticsearch for full-text and hybrid search, including index design, mappings, and query DSL.

- Comfortable with SQL (BigQuery / Cloud SQL) and working knowledge of vector databases (Vertex AI Vector Search, pgvector, Pinecone, etc.).

- Solid grasp of RAG architectures: chunking, embedding, vector search, reranking, deduplication and retrieval evaluation.

- Experience consuming LLM APIs (function calling, streaming, structured outputs) - Vertex AI / Gemini or Anthropic / OpenAI.

- Understanding of Graph RAG concepts - using graph structure to augment LLM context, with at least one implementation productionized.

- Hands-on experience building agentic workflows with LangGraph - state machines, multi-agent graphs, tool nodes, and human-in-the-loop patterns.

- Experience using Galileo for LLM evaluation, hallucination detection, and RAG quality monitoring.



NICE-TO-HAVES

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- Experience with Spanner Graph, LlamaIndex Property Graph, or similar graph-native RAG frameworks.

- Familiarity with entity extraction and NLP pipelines for automated graph population (spaCy, Gliner, etc.).

- Exposure to graph algorithms: PageRank, community detection, shortest path, centrality measures.

- Background in ontology or knowledge management work.

- Familiarity with GCP pipelines

- Experience with LangChain / LangGraph.



TECH STACK

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Fullstack:

React , TypeScript, Python, Node.js, FastAPI, PostgreSQL / Cloud SQL, Docker, Cloud Run


Graph & Data:

Spanner Graph, Neo4j, Cypher, Memgraph, pgvector, Pinecone, Vertex AI Vector Search, Elasticsearch


AI & Retrieval:

Vertex AI / Gemini, Anthropic / OpenAI APIs, LangGraph, LangChain.


Evaluation & Observability:

Galileo, Google Cloud Logging, Cloud Monitoring


Cloud:

Google Cloud Platform (GCP) - Vertex AI, BigQuery, GCS, Cloud Run

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