Match score not available

Data Engineer

Remote: 
Full Remote
Experience: 
Mid-level (2-5 years)
Work from: 

Cummins Inc. logo
Cummins Inc. XLarge http://www.cummins.com/
10001 Employees
See all jobs

Job description

Description

Please note even though the GPP mentions Remote, this is a Hybrid role.

Key Responsibilities

  • Implement and automate deployment of distributed systems for ingesting and transforming data from various sources (relational, event-based, unstructured).
  • Continuously monitor and troubleshoot data quality and integrity issues.
  • Implement data governance processes and methods for managing metadata, access, and retention for internal and external users.
  • Develop reliable, efficient, scalable, and quality data pipelines with monitoring and alert mechanisms using ETL/ELT tools or scripting languages.
  • Develop physical data models and implement data storage architectures as per design guidelines.
  • Analyze complex data elements and systems, data flow, dependencies, and relationships to contribute to conceptual, physical, and logical data models.
  • Participate in testing and troubleshooting of data pipelines.
  • Develop and operate large-scale data storage and processing solutions using distributed and cloud-based platforms (e.g., Data Lakes, Hadoop, Hbase, Cassandra, MongoDB, Accumulo, DynamoDB).
  • Use agile development technologies, such as DevOps, Scrum, Kanban, and continuous improvement cycles, for data-driven applications.

Responsibilities

Qualifications:

  • College, university, or equivalent degree in a relevant technical discipline, or relevant equivalent experience required.
  • This position may require licensing for compliance with export controls or sanctions regulations.

Competencies

  • System Requirements Engineering: Translate stakeholder needs into verifiable requirements and establish acceptance criteria.
  • Collaborates: Build partnerships and work collaboratively with others to meet shared objectives.
  • Communicates Effectively: Develop and deliver multi-mode communications that convey a clear understanding of the unique needs of different audiences.
  • Customer Focus: Build strong customer relationships and deliver customer-centric solutions.
  • Decision Quality: Make good and timely decisions that keep the organization moving forward.
  • Data Extraction: Perform ETL activities from various sources and transform them for consumption by downstream applications and users.
  • Programming: Create, write, and test computer code, test scripts, and build scripts using industry standards and tools.
  • Quality Assurance Metrics: Apply measurement science to assess whether a solution meets its intended outcomes.
  • Solution Documentation: Document information and solutions based on knowledge gained during product development activities.
  • Solution Validation Testing: Validate configuration item changes or solutions using best practices.
  • Data Quality: Identify, understand, and correct flaws in data to support effective information governance.
  • Problem Solving: Solve problems using systematic analysis processes and industry-standard methodologies.
  • Values Differences: Recognize the value that different perspectives and cultures bring to an organization.

Qualifications

Skills and Experience Needed:

  • Must-Have:
  • 3-5 years of experience in data engineering with a strong background in Azure Databricks and Scala/Python.
  • Hands-on experience with Spark (Scala/PySpark) and SQL.
  • Experience with SPARK Streaming, SPARK Internals, and Query Optimization.
  • Proficiency in Azure Cloud Services.
  • Agile Development experience.
  • Unit Testing of ETL.
  • Experience creating ETL pipelines with ML model integration.
  • Knowledge of Big Data storage strategies (optimization and performance).
  • Critical problem-solving skills.
  • Basic understanding of Data Models (SQL/NoSQL) including Delta Lake or Lakehouse.
  • Quick learner.
  • Nice-to-Have:
  • Understanding of the ML lifecycle.
  • Exposure to Big Data open source technologies.
  • Experience with SPARK, Scala/Java, Map-Reduce, Hive, Hbase, and Kafka.
  • SQL query language proficiency.
  • Experience with clustered compute cloud-based implementations.
  • Familiarity with developing applications requiring large file movement for a cloud-based environment.
  • Exposure to Agile software development.
  • Experience building analytical solutions.
  • Exposure to IoT technology.

Work Schedule: Most of the work will be with stakeholders in the US, with an overlap of 2-3 hours during EST hours on a need basis.

Job Systems/Information Technology

Organization Cummins Inc.

Role Category Remote

Job Type Exempt - Experienced

ReqID 2409179

Relocation Package Yes

Required profile

Experience

Level of experience: Mid-level (2-5 years)
Spoken language(s):
English
Check out the description to know which languages are mandatory.

Other Skills

  • Decision Making
  • Collaboration
  • Communication
  • Problem Solving

Data Engineer Related jobs