Senior Engineer (SA1 PD - FinOps Data Engineer)
Bangalore, Karnataka, India
Roles & responsibilities
·Required 3 or more years of experience with Cloud (IaaS, PaaS) · Manage and Analyze cloud billing, cloud resources sizing and utilization data ·Analyze tagging compliance and suggest improvements to increase visibility for cloud expenditures ·Work with Data Engineer, interpret data sets, find data trends and patterns valuable for diagnostics, predictive analytics efforts, and achieving business objectives ·Create various reports based on cloud billing, forecasts, optimization opportunity analysis ·Prepare forecasting based on past cloud spend using various statistical/regression models ·Build scalable solution to support the dynamic cloud environment financials ·Visualize the data using tools like PowerBI and Tableau ·Partner with various stakeholders (e.g. cloudops, application teams, architects, product owners, data analysts) to better understand requirements, find bottlenecks, and recommend resolutions ·Automate data analysis using scripts and data pipelines (python, spark, jupyter, alteryx) to clean, transform, and aggregate data from disparate sources ·Work on anomaly management and unit economics reporting ·Identify optimization opportunities.Preferred technical & functional skills
·Strong oral and written communication skills with the ability to communicate technical and non-technical concepts to peers and stakeholders ·Ability to work independently with minimal supervision, and escalate when needed ·4+ years of relevant experience ·Microsoft Azure certification ·FinOps certified Practitioner (Optional)Key behavioral attributes/requirements
—Ability to mentor juniors —Ability to own project deliverables, not just individual tasks —Understand business objectives and functions to support data needsRoles & responsibilities
·Required 3 or more years of experience with Cloud (IaaS, PaaS) · Manage and Analyze cloud billing, cloud resources sizing and utilization data ·Analyze tagging compliance and suggest improvements to increase visibility for cloud expenditures ·Work with Data Engineer, interpret data sets, find data trends and patterns valuable for diagnostics, predictive analytics efforts, and achieving business objectives ·Create various reports based on cloud billing, forecasts, optimization opportunity analysis ·Prepare forecasting based on past cloud spend using various statistical/regression models ·Build scalable solution to support the dynamic cloud environment financials ·Visualize the data using tools like PowerBI and Tableau ·Partner with various stakeholders (e.g. cloudops, application teams, architects, product owners, data analysts) to better understand requirements, find bottlenecks, and recommend resolutions ·Automate data analysis using scripts and data pipelines (python, spark, jupyter, alteryx) to clean, transform, and aggregate data from disparate sources ·Work on anomaly management and unit economics reporting ·Identify optimization opportunities.Preferred technical & functional skills
·Strong oral and written communication skills with the ability to communicate technical and non-technical concepts to peers and stakeholders ·Ability to work independently with minimal supervision, and escalate when needed ·4+ years of relevant experience ·Microsoft Azure certification ·FinOps certified Practitioner (Optional)Key behavioral attributes/requirements
—Ability to mentor juniors —Ability to own project deliverables, not just individual tasks —Understand business objectives and functions to support data needsThis role is for you if you have the below
Educational qualifications
-Education: B.E/B.Tech/ MCA/ MTech in Computer Science or related technical discipline is required.Work experience
•4+ Years of FinOps Experience* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: Azure Computer Science Data analysis Data pipelines Economics Jupyter Pipelines Power BI Python Spark Statistics Tableau
More jobs like this
Explore more career opportunities
Find even more open roles below ordered by popularity of job title or skills/products/technologies used.