Engr 1, Quality

Overview

On Site
$Based on Experience
Accepts corp to corp applications
Contract - W2
Contract - Independent
Contract - to 18/05/2026

Skills

IT Consulting
Agile
Real-time
Reporting
Quality Assurance
Decision-making
Supervision
Manufacturing
Risk Analysis
Root Cause Analysis
Use Cases
Business Cases
QA Management
Data Analysis
Collaboration
Regulatory Compliance
Artificial Intelligence
Mechanics
Network
SAP BASIS
Thought Leadership
Research
Mentorship
Innovation
Applied Mathematics
Data Science
Leadership
Analytics
Pharmaceutics
Medical Devices
Machine Learning (ML)
Clustering
Decision Trees
Presentations
Management
English
Communication
Salesforce.com
Microsoft Power BI
Python
R
HQL
TensorFlow
PyTorch
SPARQL
D3.js
Pandas
Data Manipulation
Visualization
Data Modeling
Data Engineering
Training
Prompt Engineering
Generative Artificial Intelligence (AI)
Databricks
Evaluation
Data Architecture
Big Data
Microsoft Azure
Amazon Web Services
Google Cloud Platform
Google Cloud
Multithreading
Data Processing
CPU
GPU

Job Details

Stellar Consulting Solutions is a boutique business & technology consulting company headquartered in Atlanta, GA. We deliver high quality, agile, and experienced workforce for niche technology projects of any scale. We help forward thinking clients to solve specific problems by understanding their needs and align talent that can move fluidly
to match skill supply and demand on a real-time basis.

Stellar Consulting has a unique combination of technical and digital skills to recruit, engage, and retain qualified talent. We have a stellar reputation for striving to achieve high ethical standards. Our use of Innovative techniques and industry best practices has made us one of the fastest growing boutique firms delivering to enterprise business.

Title:Engr 1, Quality:

Position is directly responsible for providing ongoing support for Manufacturing. This person facilitates engineering change projects and validation activities for sustaining production products. They will engage in discussions identifying, documenting and reporting quality issues and ensures that each issue is appropriately triaged for continual manufacturability.
Job Overview:
Quality Engineering is a fast paced, dynamic environment requiring decision making at the strategic and tactical levels. The job requires a highly motivated self-starter with an ability to work with minimal supervision in a team environment.
This role will serve as a resource to manufacturing to improve product quality, reliability, and process capability.
This role will facilitate teams in identifying, documenting, assessing, correcting and preventing quality issues using risk analysis and root cause analysis tools. This role will be responsible for quality planning and establishing and maintaining metrics to improve quality system processes, process capability, reliability and quality of products.

Accountabilities:
Develop and complete a data science strategy which is a part of the larger Digital Analytics Data Strategy aligned with Quality's goals
Understand business problems and design end-to-end data science use cases while providing business case analysis demonstrating how indicating value add
Quality Lead for complaint, installation failures, and Nonconformance data analytics
Provide Inputs to data science strategy which is a part of the larger Digital Analytics Data Strategy aligned with Quality's goals
Cross-functional Collaboration: Collaborate with other departments within Quality, the different business units and across the corporate enterprise to identify product and operational opportunities for data-driven improvements and efficiencies.
Stay up to date with emerging data and analytics technologies, recommending tools or platforms that can enhance the company's capabilities and information awareness.
Collaborate across the function to understand data, IT, and business constraints.
Collaborate with developers to implement and deploy scalable visualization solutions.
Establish best data operational practices and maintain all compliance requirements
Establish the monitoring of data science models in production.
Apply strong expertise in data science to design, prototype, and build the next-generation analytics engines and services.
Increase Data Literacy by guiding the organization about the business potential and strategy of artificial intelligence (AI)/data science.
Actively network on a regular basis with domain experts to better understand the business mechanics that generated the data.
Train and coach other business and IT staff on basic data science principles and techniques.
Actively network on a regular basis with internal and external partners.

Provide thought leadership by researching best practices, conducting experiments, and collaborating with industry leaders.

Develop processes and tools to monitor and analyze model performance and data accuracy.
Ability to obtain and document business requirements
Have a good understanding of end-to-end process
Lead and mentor a team of data scientists, fostering a culture of innovation and continuous learning

Qualifications:
Requires a minimum of a BS/MS degree in applied mathematics, engineering, or other relevant discipline. Graduate degree preferred.
Five-plus (5+) years of relevant work experience in data science.
Proven experience (5+ years) in a direct and/or matrixed leadership role in data and analytics.
Experience in a pharmaceutical, medical device or other regulated field a plus
Advanced statistical techniques and concepts and experience with applications.
Experience with a variety of machine learning techniques (clustering, decision tree learning, artificial neural networks, etc.) and their real-world advantages/drawbacks.
Experience presenting data and analysis to upper management.

Knowledge and skills:
Knowledge of statistical computer languages to manipulate data and draw insights from large data sets.
Ability to quickly develop extensive domain knowledge in various topics.
English working proficiency and communication skills (verbal and written).
Solid Working knowledge of Salesforce, PowerBI, Python, R, HQL, TensorFlow, PyTorch, SPARQL, D3JS and other dashboarding tools.
Knowledge of Pandas: Data Manipulation, Aggregation and Grouping, Visualization
Data Modeling techniques
Data Engineering is a plus
Expert skills in LLM (Model Training, Deployment)
Knowledge of Prompt Engineering (GenAI)
Experience in Azure OpenAI and Databricks
Knowledgeable in Model validation and Evaluation techniques
Knowledge of data architecture, big data architectures, experience of building solutions on Azure, AWS, Google Cloud Platform, Multi-threaded data processing on CPU and GPU architectures.
Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.