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Data Engineer
Location
Texas
Posted
15 days ago
Salary
0
Seniority
Senior
Job Description
Data Engineer
Higginbotham
• The Data Engineer designs, builds, and maintains scalable data pipelines and analytics solutions across our Azure cloud environment • This role transforms raw data from multiple source systems into reliable, business-ready information that powers reporting, analytics, and operational decision-making • The Data Engineer works closely with analysts, application developers, and business stakeholders to deliver high-quality data solutions on Snowflake, Azure Data Lake, and Microsoft Power BI • Design, develop, and maintain ETL/ELT pipelines in Azure to ingest, transform, and integrate data from multiple source systems • Build and optimize Snowflake-based data solutions for scalable storage, transformation, and analytics workloads • Manage and support Azure Data Lake structures for both structured and unstructured data • Develop interactive dashboards and reports in Microsoft Power BI to support business intelligence and operational reporting • Implement integration solutions that connect Azure services, Snowflake, and downstream reporting platforms • Monitor pipeline performance, troubleshoot failures, and implement enhancements to improve efficiency and reliability • Ensure data quality, integrity, security, and consistency across all cloud data platforms • Partner with analysts, developers, and business stakeholders to gather and refine data and reporting requirements
Job Requirements
- Minimum 3 years of hands-on experience in data engineering or a closely related field
- Demonstrated experience with Snowflake, including data loading, transformation, and query optimization
- Proficiency in Microsoft Power BI, including dashboard development, report design, and data visualization
- Experience working with Azure Data Lake and large-scale datasets
- Strong SQL skills and working knowledge of data modeling and cloud-based data integration concepts
- Understanding of ETL/ELT processes and data warehousing principles within Azure environments
- Familiarity with Azure data services and techniques for tuning cloud data pipeline performance
- Proficient with Microsoft Suite
- Proficient in a scripting or programming language, i.e. – Python
- Experience with the broader Azure data platform and modern cloud data architecture
- Working knowledge of data governance and data security best practices
Benefits
- Health insurance
- Retirement plans
- Paid time off
- Flexible work arrangements
- Professional development
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Sr Clinical Data Abstractor
NateraWe are a global leader in cell-free DNA (cfDNA) testing, dedicated to oncology, women’s health, and organ health.
Role Description Perform high-quality medical record abstraction by combining proficient-level experiences in data management and software with medical terminology, medical coding, information encoding, and analytical capabilities. Interpret and manage complex clinical patient data for research, quality improvement, and regulatory reporting. - Data Abstraction: Accurately review, interpret, and abstract clinical patient data from various electronic health record (EHR) systems, paper charts, and other source documents in accordance with defined project or research protocols, clinical, data, and technical specifications, and dictionaries. - Coding and Classification: Apply knowledge of medical coding systems (e.g., ICD-10, MedDRA, CPT, HCPCS) and standard of care guidelines to interpret, classify, and categorize abstracted clinical data points from unstructured text to standardized machine-readable data in one common database schema. - Electronic Data Capture (EDC): Utilize specialized data management software (e.g., REDCap, registries, and custom-built EDC systems) to enter, track, and maintain the integrity of clinical data encoded into queryable databases. - Technical Support: Aid cross-functional teams in translating clinical and data abstraction and encoding requirements. Support prompt engineering and design for all AI and LLM initiatives. - Data Management: Apply and support establishing program-specific clinical data management best practices (CGDMP) and good clinical practice (GCP) during the abstraction and encoding process resulting in accurate, legible, contemporaneous, original, attributable, complete, and consistent for end-to-end ETL workflows. - Quality Assurance and Control: Apply industry standard best practices for utilizing real-world data for research, quality monitoring, and regulatory reporting using technical and analytical software such as running MACROs and using Excel/Google Sheets functions and formulas, and pivot tables to support ensuring abstracted data are accurate and clinically complete. - Mentoring and Subject Matter Expertise (SME): Conduct peer reviews on medical record data interpreted and encoded by abstraction peers to ensure quality and productivity performance align with the program's expectations. - Protocol Adherence: Maintain strict adherence to all project and research protocols, institutional review board (IRB) requirements, HIPAA regulations, data management best practices (e.g., DAMA, SCDM, ACRP, and SOCRA), and organizational policies regarding patient privacy and data security. - Process Improvement: Participate in the development and refinement of abstraction and quality guidelines, tools, and standard operating procedures. - Daily Operations: Provide timely and accurate daily, weekly, or monthly abstraction submissions, productivity reporting, and actively participate in team meetings and workshops. - Certifications: Maintenance of all relevant clinical or technical licensures. - Other duties and responsibilities to be performed as assigned. 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Direct experience performing data mapping, standardization, and harmonization. - Quality and Compliance: Demonstrated commitment to data integrity, quality control processes, and adherence to HIPAA and other data privacy regulations. - Technical Proficiency: Proficient with Microsoft Office Suite or Google Suite, creating pivot tables, generating reports, data analysis, and using clinical data systems or databases common in clinical data abstraction, research, or clinical data management (e.g., fillable forms, ECDs, data registries). - Certifications/Industry Expertise: CCDM, CCRP, ACR-P, or CRA preferred. - Communication: Excellent written and verbal communication skills, with the ability to effectively collaborate with clinical and non-clinical teams. - Autonomy: Proven ability to work independently, manage time effectively, prioritize and organize tasks, and meet strict productivity and quality deadlines. - General Expertise: Possess a high level of initiative and self-motivation. 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Company Description Natera™ is a global leader in cell-free DNA (cfDNA) testing, dedicated to oncology, women’s health, and organ health. Our aim is to make personalized genetic testing and diagnostics part of the standard of care to protect health and enable earlier and more targeted interventions that lead to longer, healthier lives. The Natera team consists of highly dedicated statisticians, geneticists, doctors, laboratory scientists, business professionals, software engineers, and many other professionals from world-class institutions, who care deeply for our work and each other. When you join Natera, you’ll work hard and grow quickly. Working alongside the elite of the industry, you’ll be stretched and challenged, and take pride in being part of a company that is changing the landscape of genetic disease management.
Junior Data Engineer
Cutsforth Inc.Truly innovative, quality products for the Power Generation Industry designed to solve problems like never before.
• Regularly design, develop, and maintain data pipelines and ML workflows to support operational and analytical needs • Write clean, efficient, and well-documented Python code for data processing, model development, and automation tasks • Analyze and interpret complex datasets, including time-series and machine health data to surface meaningful insights and support decision-making • Build, validate, and monitor AI/ML models in production, proactively identifying and resolving performance issues • Communicate technical findings and recommendations clearly to both technical and non-technical stakeholders across teams • Participate in cross-functional meetings and planning sessions to align data engineering efforts with broader business goals • Stay current with advancements in AI/ML techniques, tools, and industry-specific applications, particularly within power, oil, and gas environments • Document processes, models, and systems in a way that supports knowledge sharing and team continuity
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• Manage day-to-day IT operational services, ensuring stability, availability, and performance of critical systems and infrastructure. • Monitor operational KPIs, SLAs, OLAs, and service quality metrics. • Coordinate incident, problem, change, and service request management processes. • Lead operational governance meetings and service review sessions. • Ensure operational compliance with internal standards and IT governance frameworks. • Lead process mapping initiatives for IT operations and service management workflows. • Analyze current-state processes and design optimized future-state operational models. • Identify process gaps, inefficiencies, bottlenecks, and operational risks. • Document end-to-end workflows, SOPs, RACI matrices, and operational procedures. • Standardize operational routines and governance practices across teams. • Identify recurring operational issues and implement corrective and preventive actions. • Coordinate root cause analysis (RCA) and continuous service improvement plans. • Support transition from project delivery into stable operational support models. • Ensure operational readiness for new services, applications, and infrastructure deployments. • Identify automation opportunities across operational and service management processes. • Partner with infrastructure, cloud, DevOps, and engineering teams to implement automation solutions. • Improve operational efficiency through workflow automation, monitoring enhancements, and self-service capabilities. • Promote a culture of continuous improvement and operational excellence. • Support implementation and optimization of ITSM and monitoring tools. • Establish and maintain strong operational routines with key business and IT stakeholders. • Act as the primary point of contact for operational service discussions and escalations. • Facilitate recurring governance meetings, status reviews, and executive reporting. • Ensure clear communication of operational performance, risks, and improvement initiatives. • Build collaborative relationships across technical and business teams.




