Lead Data Architect

Karsun Solutions, LLCHerndon, VA
Remote

About The Position

Senior/Lead technical data architect to design, build, and operate enterprise data platforms that power GenAI and AI/ML use cases. This is a highly technical, hands-on role responsible for data platform architecture, end-to-end data engineering, ML/LLM pipeline design, production model onboarding, and delivery of scalable Databricks-centric solutions across cloud environments. Candidate must be AWS Certified Machine Learning – Specialty.

Requirements

  • 8+ years hands-on experience in data engineering/platform architecture; 3+ years in an architect or lead role.
  • Proven, hands-on Databricks experience (designing workspaces, Delta Lake, performance tuning, productionizing Spark jobs).
  • Deep Spark + PySpark expertise and experience with Databricks Runtime.
  • Strong experience building ML/LLM pipelines and operationalizing models (training, fine tuning, serving).
  • Practical experience with vector embeddings, semantic search, and RAG architectures.
  • Solid Python expertise and common ML libraries (PyTorch, TensorFlow, Hugging Face transformers) and MLflow.
  • Cloud platform experience (AWS strongly preferred).
  • Experience with containerization and orchestration while leveraging open-source libraries for unstructured and structured data processing, serving/inference.
  • Strong SQL skills; experience with distributed query/warehouse systems and parquet/AVRO/Delta formats.
  • CI/CD and infra-as-code experience (Terraform, GitOps, Jenkins/GitHub Actions/GitLab CI).
  • Data governance, security, and IAM experience; experience implementing row/column level access controls and data lineage.
  • Demonstrated ability to design for scalability, reliability, and cost efficiency.
  • BA or BS degree in CS, Computer Engineering, Information Technology or a related field.
  • AWS Certified Machine Learning – Specialty.

Nice To Haves

  • Prior experience with Databricks Unity Catalog, Photon, and Databricks SQL.
  • Experience integrating Databricks with vector databases (Pinecone, neo4j) and retrieval frameworks (LangChain, LlamaIndex).
  • Familiarity with AWS Bedrock or other managed LLM services.
  • Experience with real-time streaming (Kafka, Kinesis) and stream processing on Databricks Structured Streaming.
  • Databricks Certified Professional.
  • Experience with data quality and profiling tools (Great Expectations, Soda).
  • Experience with large-scale ETL frameworks and tools (Airflow, Prefect).

Responsibilities

  • Architect and implement enterprise data platforms (batch + streaming) optimized for ML, LLMs, and GenAI workloads.
  • Lead design and hands-on implementation of Databricks workspaces, Unity Catalog, Delta Lake design patterns, cluster policies, and performance tuning.
  • Build and own end-to-end data pipelines (ingest, transform, feature engineering, serving) using PySpark, Databricks Jobs, Spark SQL, Delta Lake, and orchestration tools.
  • Design and operationalize model training, fine tuning (LLM), evaluation, deployment, and monitoring pipelines (MLOps/RAG/CAG) integrating Databricks MLflow, CI/CD, and infra-as-code.
  • Implement vectorless and vectorization/embedding pipelines, vector store integrations, and retrieval layers for RAG (FAISS, Pinecone, Weaviate, Milvus).
  • Define data schemas, governance, lineage, access controls, and data product APIs; implement Unity Catalog or equivalent for centralized governance.
  • Drive cost/performance optimization for storage, compute (spot/preemptible), and query patterns.
  • Collaborate with engineers, data scientists, product owners, and security to translate business needs into production GenAI solutions.
  • Mentor and lead engineering teams; conduct architecture reviews, code reviews, and run technical deep dives.
  • Implement observability for data and ML pipelines (metrics, logging, data quality tests, alerting).
  • Create reproducible experiment tracking, model registry, and rollout strategies (canary, shadow testing, rollback).
  • Stay current on GenAI/LLM architectures and evaluate/introduce new tooling and frameworks.

Benefits

  • Consideration for employment without regard to disability, status as a protected veteran or any other status protected by applicable federal, state, local, or international law.
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