Default profile banner
AP

Asmita Patil

@asmita

Data Engineer at Jio Platforms Limited

Mumbai, Maharashtra, India

https://linkedin.com/in/asmita-patil-53023b1ba

Jio Platforms LimitedVidyalankar Institute Of Technology (Mumbai)

Asmita Rajendra Patil is a Data Engineer with over 2.5 years of experience building scalable data pipelines and optimizing workflows. She specializes in transforming raw data into reliable datasets using Apache Spark, Python, and Databricks. At Jio Platforms Limited, she has developed automated workflows and Tableau dashboards to support large-scale campaign execution for over 500 million customers. She is skilled in Azure, Hadoop, and Airflow orchestration to ensure high data availability and reliability.

Experience

Data Engineer

Jio Platforms Limited

Oct 2023 - PresentMumbai, India

Built and maintained scalable big data pipelines enabling large-scale campaign execution for Jio's 500 Million+ customer base across multiple business verticals. Designed and developed PySpark and SQL workflows to identify eligible customer cohorts and transform raw datasets into execution-ready formats. Supported migration of existing workflows from on-premise systems to Databricks. Orchestrated and automated end-to-end PySpark workflows using Apache Airflow. Developed data-driven Tableau dashboards with calculated KPIs and performance metrics.

Education

Vidyalankar Institute Of Technology (Mumbai)

Bachelors of Engineering

Information Technology

Jan 2019 - Jan 2023Grade: CGPA-9.7

Holy Angels' Junior College

HSC

Jan 2017 - Jan 2019Grade: 85.69

Swami Vivekanand Vidyamandir

SSC

Jan 2019 - Jan 2019Grade: 93.2

Licenses & Certifications

Google Data Analytics

Coursera Specialization

IBM Data Engineering

Coursera Specialization

Complete Guide to Databricks for Data Engineering

Linkedin Learning

Tableau Fundamentals

Coursera

Google IT Support Professional Certificate

Coursera Specialization

Skills

Apache Spark
Python
Pyspark
SQL
Databricks
Microsoft Azure
Azure Data Factory
Azure Databricks
Hadoop
HDFS
Hive
Spark Performance Optimization
GitHub
Airflow
Azkaban
Kafka
Data Pipelines
Tableau
Shell Scripting
Data Warehouse
Data Pipeline Orchestration