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Data Analytics Specialist-(Onsite)
- Shuvel Digital (El Segundo, CA)
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Clearance Requirement: Must have an active Secret Clearance to be considered
Required Skills:
+ Must be able to support onsite in-office in Los Angeles (El Segundo) 4-5x a week.
+ Bachelor's Degree in Computer Science, Engineering, Mathematics, or similar (considerations for substitution of relevant work experience)
+ 5+ years of relevant experience in analytics, data visualization, and data science (e.g., algorithm development, data analysis, NLP, etc.)
+ Demonstrated knowledge of advanced data analytics, data visualization and business intelligence principles, and relevant tools (e.g., R, Python Tableau, PowerBI)
+ Demonstrated experience leading the development of advanced analytics products and applying data visualization and statistical programming tools to enterprise data in order to enable key mission outcomes
+ Strong written and verbal/communication skills with the ability to convey technical concepts to various stakeholders and audiences
Preferred Skills:
+ Master's or other advanced degree in Computer Science, Engineering, Mathematics, Data Science, or a related field.
+ Extensive experience with project management frameworks and methodologies, as well as innovation and design thinking frameworks.
+ Strong experience in AI/ML algorithm development
+ Excellent analytical skills with extensive experience in analyzing data and providing strategic recommendations.
+ Proficiency in advanced data analytics tools and programming languages such as Python, R, SQL, and experience with AI/ML frameworks like TensorFlow, PyTorch, and Scikit-Learn.
+ Agile development experience along with related technologies
+ Familiarity with cloud platforms (e.g., AWS, Azure, Google Cloud) and big data technologies (e.g., Hadoop, Spark).
+ Experience with data engineering processes, including ETL, data integration, and data pipeline development.
+ Knowledge of human centered-design principles and UI/UX best practices for data visualization
+ Proven ability to design and implement scalable architectures and robust access control mechanisms.
+ Familiarity with DevOps practices for machine learning (MLOps) and tools like Databricks MLFlow.
+ Ability to manage multiple projects simultaneously and prioritize tasks effectively.
+ Proficient problem-solving skills and the ability to think strategically.
+ Willingness to continuously learn and adapt to new technologies."
Day-to-day Responsibilities: The selected candidate will be responsible for driving the analytical efforts and delivering high-quality insights to support our client's strategic objectives. You will be involved in the full spectrum analytic technical support to mission operations: requirements collection and refinement, translating user requirements into technical requirements, conducting exploratory data analysis, model development, selection, and evaluation, identifying insights from analytical products and then communicating those results to a nontechnical audience. You will be part of a dynamic team environment that will support data analysis and visualization, process improvements, business innovation, and workforce modernization.
+ Establish advanced analysis and data visualization methodologies, models, and tools to derive mission outcomes and impacts
+ Identify and process raw data, trends, analysis, and assessments in order to aggregate disparate information, leveraging both analytic and visualization tools (e.g., Tableau, PowerBI)
+ Develop AI/ML models, as needed, with attention to model accuracy
+ Execute data science methods using python or similar libraries for Data Cleaning/Wrangling, Exploratory Data Analysis (EDA), Statistical Analysis, Data Visualization while delivering in an Agile environment
+ Design, deploy, and maintain scalable AI architectures with quality monitoring and access control, ensuring proper documentation and automated deployment.
+ Lead and mentor junior practitioners in the data analytics workstream, fostering their development by providing guidance, support, and feedback, while ensuring they meet project expectations and contribute to high-quality deliverables.
+ Provide tailored communications to innovation stakeholders in meetings, demos, and other customer engagements, as well as support analytic innovation, development, and data analytics activities to customers and stakeholders
Expected Deliverables:
+ Collaboration and Requirement Gathering
+ Business Question Understanding
+ Translation of Business Understanding
+ Analytic Tool Identification
+ Technical Requirements Identification
+ Performance Metrics Aggregation
+ Data Set Definition
+ AI Opportunities Assessment
+ Exploratory Data Analysis (EDA)
+ Dashboard or Analytic Models/Tools Development
+ Product Deployment and Monitoring
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