Shivani Kini

Staff Data Engineer at Machinify

Shivani Kini has a strong background in data engineering and project management. Shivani is currently a Senior Data Engineer at Machinify, Inc. since 2023. Prior to that, they worked at Oracle as a Senior Data Engineer from 2020 to 2023. Before Oracle, they were a Senior Data Engineer at Uber from 2019 to 2020. Shivani also has experience as a Project Manager at Genpact, where they worked on the Paypal project from 2018 to 2019. Shivani'searlier experience includes roles at Infosys, where they served as a Data Engineer and Technical Lead for Apple Inc. from 2007 to 2014. Shivani was also a Software Engineer at Infosys, working on projects for Apple Inc. from 2005 to 2007. During their time at Infosys, Shivani demonstrated strong leadership skills in campaign operations, customer analytics, reporting, and production support. Shivani was responsible for maintaining ETL processes and data streams, managing the Semantic Layer and BI applications, and redesigning various modules of a Product Cost Model system.

Shivani Kini completed a Bachelor of Computer Engineering degree from Fr. Conceicao Rodrigues College of Engineering from 2001 to 2005. Prior to that, they pursued their HSC (Higher Secondary Certificate) in Science at the University of Mumbai from 1999 to 2001. Additionally, they have obtained several certifications, including "Learning Data Science: Understanding the Basics" from LinkedIn in April 2018, "Get Ready for Your Coding Interview" from LinkedIn in January 2018, "Learning Python" from LinkedIn in November 2017, and "SQL: Data Reporting and Analysis" from LinkedIn in August 2017.

Location

San Francisco, United States

Links

Previous companies


Org chart

No direct reports

Teams


Offices


Machinify

1 followers

Machinify is a data-to-cash platform enabling enterprises to optimize core operations through the use of AI. Their revolutionary product empowers domain experts to go all the way from raw data to smart, automated decisions in production, massively shrinking the cycle time for developing and deploying AI-driven software.


Industries

Employees

51-200

Links