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Data Scientist IV
Location
India
Posted
11 days ago
Salary
0
Seniority
Lead
Job Description
Data Scientist IV
Astreya
• Designs, develops and programs methods, processes, and systems to consolidate and analyze unstructured, diverse “big data” sources to generate actionable insights and solutions. • Responsible for statistical modeling, and analysis of structured and unstructured datasets to develop metrics, reports, and visualizations of trends and patterns. • Leads in the development and coding of software programs, algorithms and automated processes to cleanse, integrate and evaluate large datasets from multiple disparate sources • Identifies meaningful insights from large data and metadata sources interprets and communicates insights and findings from analysis and experiments to product, service, and business managers • Propose solutions and strategies to business challenges and presents to the executive board • Create data visualizations • Leads and mentors others on the team • Build predictive models and machine-learning algorithms • Troubleshoot and test database technical issues with development team • Independently analyze data sets to identify opportunities for increased accuracy and efficiency • Perform quality assurance on data to determine potential data gaps • Assemble large, complex data sets that meet functional / non-functional business.
Job Requirements
- Bachelor’s degree (B.S/B.A) from four-college or university and 8+ years’ related experience and/or training; or equivalent combination of education and experience
- Excellent analytical skills, tenacious problem solver with strong verbal communication skills
- Experience working with Big Data to provide EDA to senior team leads
- SQL skills; including creating and modifying macros, as well as creating dashboards using SQL coding
- Excellent written communication skills
- High level of attention to detail
- Ability to independently analyze large amounts of data; including the ability to identify, analyze, and interpret trends, gaps, patterns in complex data sets
- Proficient in data engineering on GCP, AWS, and Azure, as well as in Python, R, and TensorFlow
- Experience using AI/ML and Generative AI for Analytics, Modelling and data science
Benefits
- Professional development opportunities
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