Saidulu  ·  Senior Azure Data Engineer  ·  6+ yrs

Mid-Level
Bengaluru6+ years experienceremote
Available within 48 hrs

About Saidulu

Saidulu Konda is an experienced Azure Data Engineer with a strong background in data engineering and cloud technologies. With over 6 years of experience, he has focused on designing and optimizing data solutions, particularly in Azure environments. His expertise includes managing end-to-end data migrations, performance tuning, and building scalable data platforms. He is proficient in various tools and technologies, including Azure Data Factory, Azure Databricks, and Spark, and has a solid understanding of SQL and Python for data manipulation and analysis.

Core expertise

AD
Azure Data Factory
cloud
9/10
Azure Databricks
cloud
9/10
PySpark
language
9/10
Spark
cloud
9/10
SQ
SQL
language
9/10
Python
language
8/10
Hive
database
8/10
AD
Azure Data Lake Storage
cloud
8/10
MySQL
database
8/10
Oracle
database
8/10

Additional skills(16)

Azure DatabricksPySparkSparkHiveHadoopOracleMySQLAzure Data FactorySQLAzure Data Lake Storage

Why hire Saidulu?

Production deploy authorityMentored 5+ juniors

Led the migration of on-premises workloads to Azure Cloud, leveraging Azure Data Factory and Azure Databricks.

Implemented performance tuning techniques in Spark and Azure Data Factory, optimizing data processing and pipeline efficiency.

Designed and built scalable infrastructure on Azure for collecting, processing, and analyzing large datasets.

Developed dynamic data pipelines using parameterization and control tables, enhancing flexibility and reusability.

Successfully interacted with business users to gather requirements and report project progress, ensuring alignment with business needs.

On-prem → Azure Cloud migration

Spark + ADF performance tuning

Project highlights(3)

Azure Data Migration ProjectAzure Data Engineer

Overview: This project focused on data extraction, integration, and migration to Azure Data Lake from various sources. Responsibilities: Responsible for data extraction and integration from different data sources into Azure Data Lake using Azure Data Factory and Azure Databricks ETL pipelines. Converted data into appropriate formats to optimize reads, memory, and calculate key metrics. Implemented Spark using Python in Databricks, leveraging Data Frames and Spark-SQL API for faster data processing. Tuned ADF copy activity efficiently and transformations using ADF Mapping Data Flows. Migrated data from on-premises and database/legacy applications to Azure using ADF and ADLS. Transformed SQL, T-SQL, and SSIS flows into Spark SQL and Data Frames in ADB, extracting from MySQL and loading into ADLS to create unmanaged tables. Validated results and created test documents for migrated tables; pushed notebooks to Azure Repos and managed pipeline changes. Fetched and processed data from Data Lake Gen2 or SQL databases in Azure Databricks. Parameterized datasets for dynamic object discovery and movement into curated zones. Fetched files from raw Data Lake containers for transformations, loading curated data into database objects, and creating snapshots/incremental data. Validated, debugged, and published pipelines, and created daily triggers for scheduling.

Azure Data FactoryAzure DatabricksPySparkSparkSQLAzure Data Lake Storage

Key outcomes:

  • Tuned Azure Data Factory copy activity and transformations using Mapping Data Flows efficiently.

  • Validated migrated data results and created comprehensive test documents.

  • Managed notebook version control and deployment using Azure Repos, including branching and merging strategies.

Demand Forecasting ProcessorPyspark Developer

Overview: This project focused on demand forecasting, processing large datasets from HDFS to identify user behavior and product expectations. Responsibilities: Participated in requirements gathering, project inception, and story sizing. Developed technical specifications based on client requirements. Analyzed data using Spark SQL queries and scripts to understand user behavior and identify desired facilities from product history. Involved in a Demand Forecasting processor to process data from HDFS and store it in Hbase. Created and partitioned Hive tables to store processed results in a tabular format. Developed Data Frames using Case classes for required input data. Created RDDs and Data Frames for input data, performing data transformations with Spark-core. Wrote SQL queries to process data using Spark SQL.

PySparkSparkSQLHiveHadoopHDFS

Key outcomes:

  • Analyzed user behavior and product expectations by performing Spark SQL queries and scripts.

  • Involved in processing demand forecasting data from HDFS.

  • Developed Data Frames using Case classes for efficient data processing.

Dynamic Data Pipeline CreationAzure Data Engineer

Overview: This project involved creating dynamic data pipelines using Azure Data Factory and Databricks, focusing on data ingestion, transformation, and export. Responsibilities: Created dynamic pipelines using parameterization and control tables. Involved in creating Hive tables, loading data, and writing Hive queries. Imported data from Oracle to Hive using Sqoop. Replaced the default Derby metadata storage system for Hive with MySQL. Loaded and transformed large sets of structured and semi-structured (logs) data. Implemented business logic using Databricks with PySpark and ADF. Imported required tables from RDBMS to Azure using ADF, mapping data to the target data model using mapping data flows. Used Hive to form an abstraction on top of structured data in HDFS, implementing Partitions, Dynamic Partitions, and Buckets on HIVE tables. Exported analyzed data to relational databases using Sqoop for visualization and Power BI reporting. Worked on Spark SQL performance tuning techniques including Execution Plan Analysis, Data Management (Catching, Broadcasting), Tungsten Leverages, and Catalyst Optimizer. Loaded files to HDFS and wrote Hive queries; used Hive queries in Spark-SQL for analysis. Experienced in using Parquet, Avro, and ORC file formats for efficient compression.

PySparkAzure DatabricksAzure Data FactorySQLHiveOracleMySQLHDFSSqoopParquetAvroORC

Key outcomes:

  • Created dynamic pipelines with parameterization and control tables, improving pipeline flexibility.

  • Implemented business logic efficiently using Databricks with PySpark and Azure Data Factory.

  • Optimized Hive tables with Partitions, Dynamic Partitions, and Buckets for efficient data abstraction and querying.

  • Improved Spark SQL performance through various tuning techniques.

6+ years of industry experience

Logistics & Supply ChainReported in resume

Ready to work with Saidulu?

Onboard within 48 hours. No long hiring cycles, no recruiter middleman.

At a Glance

LocationBengaluru
Experience6+ years
Work moderemote
Direct hirePossible
Start within48 hours
From$1,868/ month

Single contract. Billed in USD.

Typically responds within 4 business hours.

5-day replacement guarantee
48-hour onboarding, single invoice
Direct chat — no recruiter middleman

Top Skills

Azure Data Factory
9/10
Azure Databricks
9/10
PySpark
9/10
Spark
9/10
SQL
9/10
Seniority signals
Owns production deploysGreenfield architectSystem ownerCode reviewerMentor / leads juniors
VerifiedVetted by Witarist
Technical skills assessed & verified
Background & identity checked
English communication verified
Ready to onboard in 48 hours

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Saidulu

Big Data Engineer