J Surendranath Jampula

J Surendranath Jampula

Data Engineer
India
Hindi, English

About Me

Dynamic Data Engineer with over 6+ years of experience in building high-performance data pipelines and architectural solutions leveraging Azure technologies. Proficient in constructing ETL pipelines, optimising data stor…

Experience

Consultant (data engineer)

Capgemini Technology Services India Limited
Present

Constructed dependable ETL pipelines using Delta Live Tables (DLT) to facilitate automated data transformation with lineage tracking and quality checks, thereby enhancing data reliability through incremental processing and versioning using change data capture (CDC). Devised and managed efficient ETL pipelines leveraging Azure Databricks and Python for transforming, cleaning, and loading data from diverse sources into the Azure Data Lake. Engineered and implemented Unity Catalog for lineage tracking, access control, and centralised data governance across Databricks workspaces while supervising audit logs and enforcing role-based access control (RBAC) to safeguard data assets. Created streaming and batch ingestion pipelines using Databricks Autoloader, enabling automatic file detection and schema evolution for structured and semi-structured data sources, optimising incremental data processing for scalable performance with Delta Lake. Implemented real-time data ingestion pipelines using Azure Stream Analytics and Azure Event Hubs for collecting and processing data from various IoT devices, sensors, and web logs, enabling near real-time insights for informed business decisions. Automated the data integration process, minimising manual interventions by instituting scheduling and orchestration through Azure Databricks. Optimised large-scale data storage solutions in Azure Data Lake and Azure SQL Database through effective data partitioning, indexing, and compression strategies to enhance query performance. Built and optimised data warehouse solutions on Azure Synapse Analytics, facilitating faster querying and reporting. Designed a star schema model to support business intelligence (BI) and data reporting requirements, ensuring optimal performance for complex queries. Championed data processing efforts using Apache Spark in Azure Databricks, applying PySpark to perform transformations, aggregations, and data wrangling on large datasets, resulting in a 30% improvement in processing times. Utilised Azure Data Factory Monitoring and Azure Databricks performance metrics to continuously assess and optimise data pipeline performance, ensuring smooth and efficient execution. Collaborated directly with data scientists, business analysts, and data architects to identify data requirements and deliver actionable insights, promoting data-driven decision-making throughout the organisation. Implemented robust data governance policies in streaming environments, encompassing data quality validation checks, schema validation, and error handling to ensure compliance with business standards. Coordinated with Azure Data Lake Analytics to define data retention policies, ensuring consistent archiving and purging of real-time data streams based on retention rules.

Consultant (data engineer)

Capgemini Technology Services India Limited, Bangalore
Present

Constructed dependable ETL pipelines using Delta Live Tables (DLT) to facilitate automated data transformation with lineage tracking and quality checks, thereby enhancing data reliability through incremental processing and versioning using change data capture (CDC).
Devised and managed efficient ETL pipelines leveraging Azure Databricks and Python for transforming, cleaning, and loading data from diverse sources into the Azure Data Lake.
Engineered and implemented Unity Catalog for lineage tracking, access control, and centralised data governance across Databricks workspaces while supervising audit logs and enforcing role-based access control (RBAC) to safeguard data assets.
Created streaming and batch ingestion pipelines using Databricks Autoloader, enabling automatic file detection and schema evolution for structured and semi-structured data sources, optimising incremental data processing for scalable performance with Delta Lake.
Implemented real-time data ingestion pipelines using Azure Stream Analytics and Azure Event Hubs for collecting and processing data from various IoT devices, sensors, and web logs, enabling near real-time insights for informed business decisions.
Automated the data integration process, minimising manual interventions by instituting scheduling and orchestration through Azure Databricks.
Optimised large-scale data storage solutions in Azure Data Lake and Azure SQL Database through effective data partitioning, indexing, and compression strategies to enhance query performance.
Built and optimised data warehouse solutions on Azure Synapse Analytics, facilitating faster querying and reporting.
Designed a star schema model to support business intelligence (BI) and data reporting requirements, ensuring optimal performance for complex queries.
Championed data processing efforts using Apache Spark in Azure Databricks, applying PySpark to perform transformations, aggregations, and data wrangling on large datasets, resulting in a 30% improvement in processing times.
Utilised Azure Data Factory Monitoring and Azure Databricks performance metrics to continuously assess and optimise data pipeline performance, ensuring smooth and efficient execution.
Collaborated directly with data scientists, business analysts, and data architects to identify data requirements and deliver actionable insights, promoting data-driven decision-making throughout the organisation.
Implemented robust data governance policies in streaming environments, encompassing data quality validation checks, schema validation, and error handling to ensure compliance with business standards.
Coordinated with Azure Data Lake Analytics to define data retention policies, ensuring consistent archiving and purging of real-time data streams based on retention rules.

Associate Software Engineer (data engineer)

Quantyum Technology Solutions Private Limited

Engaged closely with end customers to gather and comprehend requirements for designing and developing an agile data architecture in the Azure Cloud, optimally supporting the storage and management of retail data via Data Lake solutions. Collaborated with pipeline teams to automate deployment and integration pipelines, enhancing practices for data workflows in Azure Databricks. Developed and maintained Power BI dashboards and reports, transforming raw data into insightful business intelligence reports for executive and operational decision-making. Utilised Azure Monitor and Log Analytics to track pipeline health and proactively identify and resolve issues, ensuring smooth operations. Implemented Delta Lake for ACID transactions and schema evolution, safeguarding data consistency in data lakes and enhancing data governance. Constructed pipelines for managing intricate workflows of extraction, transformation, and aggregation from source systems, storing the processed data into ADLS using Azure Databricks Notebooks. Created tables and stored procedures in T-SQL for data extraction requested by business users. Assisted service developers in locating relevant content within existing reference models.

Associate Software Engineer (data engineer)

Quantyum Technology Solutions Private Limited, Hyderabad

Engaged closely with end customers to gather and comprehend requirements for designing and developing an agile data architecture in the Azure Cloud, optimally supporting the storage and management of retail data via Data Lake solutions.
Collaborated with pipeline teams to automate deployment and integration pipelines, enhancing practices for data workflows in Azure Databricks.
Developed and maintained Power BI dashboards and reports, transforming raw data into insightful business intelligence reports for executive and operational decision-making.
Utilised Azure Monitor and Log Analytics to track pipeline health and proactively identify and resolve issues, ensuring smooth operations.
Implemented Delta Lake for ACID transactions and schema evolution, safeguarding data consistency in data lakes and enhancing data governance.
Constructed pipelines for managing intricate workflows of extraction, transformation, and aggregation from source systems, storing the processed data into ADLS using Azure Databricks Notebooks.
Created tables and stored procedures in T-SQL for data extraction requested by business users.
Assisted service developers in locating relevant content within existing reference models.

Certifications

Databricks Certified Data Engineer Associate

AZURE · Bangalore, India · 2025

AWS Certified Cloud Practitioner

AWS · Bangalore, India · 2024

Skills

Documentation Java Python Structured Query Language (SQL) Problem Solving Communication Data Governance Data Modeling DevOps PySpark T-SQL Collaboration Version Control Amazon Web Services (AWS) Power BI Data Engineering Azure Platform Azure Databricks Azure Synapse Analytics Data Security Agile Methodologies Metadata Management Data Lineage Schema Management Azure DevOps Data Pipelines Data Lake Storage Delta Lake ETL/ELT Azure SQL Database Azure RBAC Cost Optimization Delta Live Tables (DLT) Change Data Capture (CDC) Unity Catalog Databricks Autoloader Azure Stream Analytics Azure Event Hubs Apache Spark Azure Data Factory Monitoring Azure Data Lake Analytics Azure Monitor Log Analytics ACID Transactions Stored Procedures Team Leadership Data-driven Decision Making Innovation
Report this Profile?