Posted in

Senior Architect – Data

Senior Architect – Data

CompanyCredera
LocationAtlanta, GA, USA
Salary$Not Provided – $Not Provided
TypeFull-Time
DegreesBachelor’s, Master’s
Experience LevelSenior, Expert or higher

Requirements

  • Minimum of 8+ years of technical, hands-on experience building, optimizing, and implementing data pipelines and architecture
  • Experience leading teams to wrangle, explore, and analyze data to answer specific business questions and identify opportunities for improvement
  • Strong communication and interpersonal skills, and the ability to engage customers at a business level in addition to a technical level
  • Deep understanding of data governance and data privacy best practices
  • Incorporate the usage of AI tooling, efficiencies, and code assistance tooling in everyday workflows
  • Degree in Computer Science, Computer Engineering, Engineering, Mathematics, Management Information Systems or a related field of study

Responsibilities

  • Lead teams in implementing modern data architecture, data engineering pipelines, and advanced analytical solutions
  • Act as the primary architect and technical lead on projects to scope and estimate work streams
  • Architect and model technical solutions to meet business requirements
  • Serve as a technical expert in client communications
  • Mentor junior project team members
  • Participate in design sessions, build data structures for an enterprise data lake or statistical models for a machine learning algorithm, coach junior resources, and manage technical backlogs and release management tools
  • Seek out new business development opportunities at existing and new clients

Preferred Qualifications

  • Recent technical knowledge of programming languages (e.g. Python, Java, C++, Scala, etc.)
  • SQL and NoSQL databases (MySQL, DynamoDB, CosmosDB, Cassandra, MongoDB, etc.)
  • Data pipeline and workflow management tools (Airflow, Dagster, AWS Step Functions, Azure Data Factory, etc.)
  • Stream-processing systems (e.g. Storm, Spark-Streaming, Pulsar, Flink, etc.)
  • Data Warehouse design (Databricks, Snowflake, Delta Lake, Lake formation, Iceberg)
  • MLOps platforms (Sagemaker, Azure ML, Vertex.ai, MLFlow)
  • Container Orchestration (e.g. Kubernetes, Docker Swarm, etc.)
  • Metadata management tools (Collibra, Atlas, DataHub, etc.)
  • Experience with the data platform components on one or more of the following cloud service providers: AWS, Google Cloud Platform, Azure