1,093 Student Reviews
Objectives – Having 18.5 years of experience As a Technical Lead and Architect, I am passionate about leveraging my expertise in Databricks, Data Build Tool, Spark, Confluent Kafka, Data Lake, Lake House and Cloud Solutions to drive innovation and efficiency. With a solid background in data architecture and IT Infrastructure, I am to contribute to the robust and vision of your company by providing ro bust technical solutions that align with strategic business goals. My Goal is to enhance data-driven decision-making processes, optimize big data pipelines and implement secure and scalable cloud architectures that people the organization forward in the ever-evolving technical landscape. Certification & Achievements – 1. Confluent Certified Administrator for Apache Kafka: expiry July 2026. Confluent Certified Administrator for Apache Kafka • Amit Raj • Confluent 2. Databricks Certified Data Engineer Professional: expiry Aug 2026 Databricks Certified Data Engineer Professional • Amit Raj • Databricks Badges 3. Databricks Accredited Lakehouse Fundamentals: expiry June 2025 Academy Accreditation - Databricks Lakehouse Fundamentals • Amit Raj • Databricks Badges 4. Microsoft Certified: Azure Administrator Associate (AZ104): Microsoft certification ID: 1100039942 Expires on: August 3, 2025 Credentials - AmitRaj-8869 | Microsoft Learn 5. Microsoft Certified: Azure Security Engineer Associate (AZ500): Microsoft certification ID: 1100039942 Expires on: August 6, 2025 Credentials - AmitRaj-8869 | Microsoft Learn 6. Recognition certificate from Fidelity for designing global solutions for Data exchange. 7. Got Achievement medal from DIB(Client) with appreciation for design event-based enterprise architecture & contribution – EventHub SUMMARY • Overall total of 18.5+ years of Experience years of Experience in Application Design, Development & Deployment of Hadoop Eco System/Java/J2EE systems with good exposure to Enterprise Architecture. • Relevant Experience 9.2 years in Big Data technologies working with multiple clients and domain knowledge. • Experienced in Cassandra data modelling, cluster setup and data management. • Experienced in working with Spark-SQL, Spark SQL and Spark Structure Streaming, MLib to process and analyse data queries. • Experienced in designing solutions using Spark Streaming and Kafka Streaming for Payment Gateway/point of sales events. • Individual Contribution (Kafka Architect): Delivered UAT and PROD Cluster within the timeline for Kafka cluster using Cloudera 6.x, CSP 2.0. • Implemented a unified data platform to gather data from different sources using Kafka Producers and consumers in Scala and java. • Solid background in Object-Oriented analysis & design, UML and various design patterns. • Worked using Azure cloud(Blob, EventHub), Kubernetes, docker with Spark, scala, Schema Registry, Avro Schema with home security application for Honeywell • Implemented KSQL, KTable and KStream using Confluent Kafka along with Kafka Connect. • Hands-on Data bricks - Databricks Clusters, Data Lakehouse, Delta lake, DBFS, EXPLORE, Analyze, Clean, Transform and Load Data using Databricks. • Experience with Azure: Azure Synapse Analytics, ADLS, ADF, CosmoDB, Azure Function, Stream Analytics, Power BI. • Experience with SQL and NoSQL databases including Mysql, Oracle, Cassandra, and PostgreSQL. BigTable • Experience building and optimizing the ‘big data’ data pipeline. • Experince with Azure Devops, CI/CD pipeline, Kubernetes and docker • Motivated Technical Architect with 5 years of progressive experience. • Having Experience AWS (Ec2,S3) • Having experience with Snowflake to design data lake and load data from multiple sources to the Snowflake database. • Effectively manages assignments and team members. • Dedicated to self-development to provide expectation-exceeding service. Customer-focused, successfully contributing to company profits by improving team efficiency and productivity. • Utilizes excellent organizational skills to enhance efficiency and lead teams to achieve outstanding delivery. SKILLS == =================== Database architecture Database architecture development Data Architecture Big Data ETL Technical solution development Azure data solutions Data insight provision Technical guidance IT Architecture Technical solutions Big data frameworks Technical Skills: Hortonworks2.5, Cloudera5/6, Apache Hadoop2/3 ,Spark2/3,Apache Kafka, Confluent Kafka, Hive 2/3, Impala, Sqoop, OOZie, Zookeeper, Snowflake, Data Build tool (DBT), HBase, Apache Cassandra /DataStax Cassandra, Data Bricks, Azure Cloud, AWS cloud, Talend, Airflow etc. Programming Language Python , Scala & Java Other Tools Kibana, Logstash, ElasticSearch, ELK. ============================= PROJECT UNDERTAKEN: Project: Implementation of Data Warehouse and reporting platform Roles: Databricks Architect & Engineer Teams: 12 members Technical Skills: Azure Cloud, Azure Data Factory (ADF), ADLS, Databricks, Spark3.x, Python, Scala2.15, DB2, Oracle 12g, Azure SQL My Contribution Data Bricks Infrastructure Solution: - Configured Unified Data Access Control using Unity Catalog – E1 & BY System provide a specific set of permissions, like Read Only, or, Write Only to a specific Group of Users on one, or, some of the Delta Tables, or, even at the Row Level, or, Column Level, which can contain Personally Identifiable Information, i.e., PII, of that Delta Tables - Provide Data Governance with centralized place: administer (TAI) the access to the data, and, also audit the access to the data. - Applied Data lineage for E1 & BY tables with look-up tables using Unity Catalog. - Implemented Data sharing protocol to apply secure data sharing downstream using Unity Catalog and - Design Architecture of Unity Catalog which can be linked to multiple Databricks Workspaces- DEV, UAT, PROD environment. - Created Metastore for the Unity Catalog - Apply User Management of the Unity Catalog for the TAI Lakehouse project: Users, Groups, or, the Service Principle, and, the permissions those have - Configure Data Bricks Cluste with spark 3.x for DEV, UAT & PROD for TAI -E1 & BY System. - Design & apply medallion architecture, Setup a Data Lake house with Bronze, Silver and Gold layers of a storage system using Azure Data Lake Gen2. Azure Cloud Infra and Security: - Install self-hosted integration runtime for the DB2 ON DEV, UAT & PROD and Oracle on-prem cluster on the source system. - Install Azure Virtual network managed IR On DEV, UAT & PROD. - Installed Db2 connector on DEV, UAT & PROD. - Created linked service lnk_BY_Azure_SQL, lnk_E1_Azure_SQL, lnk_Db2_E1 - Install and Configure Azure Key-Vault, added all the credential for Azure SQL, ADLS, Databricks, Users, global users, linked service to Azure Key Vault. – DEV, UAT & PROD. - Created 3 nodes for DEV and 5 nodes for PROD cluster to migrate data. - Setup and configure Azure Active Directory to provide team access policy for Databricks cluster, Azure Data Factory, Azure SQL, Azure Data Lake house. - Coordinate with TAI Client and Microsoft support team to resolve throughput issues. As Azure & Databricks Data Engineer: - developed most critical data ingestion pipelines using Azure Data Factory (ADF) for E1 to migrate 12.8TB of 120 tables from Db2 to ADLS RAW as a parquet file. There are many large tables with 2-4 TB of volume data containing 400 to 800 million records. - Initial & Incremental migration pipelines for both the E1 and BY sources with a watermark based on Julian's date & time - Design Audit table (Process log) and Control table (System) to achieve dynamic pipeline and audit information for master and child pipeline. - Design architecture solution to achieve delete for PKSNAPSHOT – E1 & BY. - Build dynamic delete pipeline using ADF (load PKTBL), Databricks PySpark for Daily, Weekly, OnDemand, and Yearly frequency to delete records from target (Analytics layer – gold layer) based on source system delete column and delete table - Build transformation using Datarbicks Spark with Scala for E1 to - Apply a transformation with a lookup table and transform to the Silver layer. - Build transformation to transform on Analytics layer (Gold) using Databricks Spark & scala. - Implemented UPSERT using Spark Structure Streaming with 5 minutes on the Analytics layer - Design pipeline architecture for master pipeline, child pipeline with different activity ID, Pipeline ID, Master pipeline ID with different pipeline Run ID to make sure for smooth transition audit. - Build logic, developed using Pyspark on Datarbicks – applied on DEV, UAT & PROD to check counter – master pipeline IN PROGRESS - or NOT so that pipeline execution should not overlap. - Pass pipeline parameter to insert or update Audit/Control table using Databricks -Pyspark. - Monitor Performance in DEV & PROD, worked with the team to reduce time. - Milestone – to achieve 10-minute SLA for Incremental load on E1 & BY (end-to-end completion time) - Milestone – achieved 1.53.45hrs to load (400millions record with2.3TB) at RAW as parquet file using ADF pipeline - Interact with Azure Devos’s engineer to build a CICD pipeline for DEV, UAT & PROD with - Develop pipeline as POC using Databricks Workflow, compare the cost with Azure Pipeline, and present to the client. My Contribution to Past Project: Project: Data Exchange (Security Framework) Roles: Technical Lead & Architect – Confluent KStream & KSQL Client: Fidelity & Westpac Team: 9 members Technical Skills: AzureDevops, Jdk 19.0, Confluent Kafka, Kstream, KSQL, Azure Databricks, DBFS, Delta lake, Azure Data Factory, ADLSGen2, Confluent Schema Registry, AES Algorithm, Hash Algorithm, Kubernetes Cluster(AKS).
Objectives – Having 18.5 years of experience As a Technical Lead and Architect, I am passionate about leveraging my expertise in Databricks, Data Build Tool, Spark, Confluent Kafka, Data Lake, Lake House and Cloud Solutions to drive innovation and efficiency. With a solid background in data architecture and IT Infrastructure, I am to contribute to the robust and vision of your company by providing ro bust technical solutions that align with strategic business goals. My Goal is to enhance data-driven decision-making processes, optimize big data pipelines and implement secure and scalable cloud architectures that people the organization forward in the ever-evolving technical landscape. Certification & Achievements – 1. Confluent Certified Administrator for Apache Kafka: expiry July 2026. Confluent Certified Administrator for Apache Kafka • Amit Raj • Confluent 2. Databricks Certified Data Engineer Professional: expiry Aug 2026 Databricks Certified Data Engineer Professional • Amit Raj • Databricks Badges 3. Databricks Accredited Lakehouse Fundamentals: expiry June 2025 Academy Accreditation - Databricks Lakehouse Fundamentals • Amit Raj • Databricks Badges 4. Microsoft Certified: Azure Administrator Associate (AZ104): Microsoft certification ID: 1100039942 Expires on: August 3, 2025 Credentials - AmitRaj-8869 | Microsoft Learn 5. Microsoft Certified: Azure Security Engineer Associate (AZ500): Microsoft certification ID: 1100039942 Expires on: August 6, 2025 Credentials - AmitRaj-8869 | Microsoft Learn 6. Recognition certificate from Fidelity for designing global solutions for Data exchange. 7. Got Achievement medal from DIB(Client) with appreciation for design event-based enterprise architecture & contribution – EventHub SUMMARY • Overall total of 18.5+ years of Experience years of Experience in Application Design, Development & Deployment of Hadoop Eco System/Java/J2EE systems with good exposure to Enterprise Architecture. • Relevant Experience 9.2 years in Big Data technologies working with multiple clients and domain knowledge. • Experienced in Cassandra data modelling, cluster setup and data management. • Experienced in working with Spark-SQL, Spark SQL and Spark Structure Streaming, MLib to process and analyse data queries. • Experienced in designing solutions using Spark Streaming and Kafka Streaming for Payment Gateway/point of sales events. • Individual Contribution (Kafka Architect): Delivered UAT and PROD Cluster within the timeline for Kafka cluster using Cloudera 6.x, CSP 2.0. • Implemented a unified data platform to gather data from different sources using Kafka Producers and consumers in Scala and java. • Solid background in Object-Oriented analysis & design, UML and various design patterns. • Worked using Azure cloud(Blob, EventHub), Kubernetes, docker with Spark, scala, Schema Registry, Avro Schema with home security application for Honeywell • Implemented KSQL, KTable and KStream using Confluent Kafka along with Kafka Connect. • Hands-on Data bricks - Databricks Clusters, Data Lakehouse, Delta lake, DBFS, EXPLORE, Analyze, Clean, Transform and Load Data using Databricks. • Experience with Azure: Azure Synapse Analytics, ADLS, ADF, CosmoDB, Azure Function, Stream Analytics, Power BI. • Experience with SQL and NoSQL databases including Mysql, Oracle, Cassandra, and PostgreSQL. BigTable • Experience building and optimizing the ‘big data’ data pipeline. • Experince with Azure Devops, CI/CD pipeline, Kubernetes and docker • Motivated Technical Architect with 5 years of progressive experience. • Having Experience AWS (Ec2,S3) • Having experience with Snowflake to design data lake and load data from multiple sources to the Snowflake database. • Effectively manages assignments and team members. • Dedicated to self-development to provide expectation-exceeding service. Customer-focused, successfully contributing to company profits by improving team efficiency and productivity. • Utilizes excellent organizational skills to enhance efficiency and lead teams to achieve outstanding delivery. SKILLS == =================== Database architecture Database architecture development Data Architecture Big Data ETL Technical solution development Azure data solutions Data insight provision Technical guidance IT Architecture Technical solutions Big data frameworks Technical Skills: Hortonworks2.5, Cloudera5/6, Apache Hadoop2/3 ,Spark2/3,Apache Kafka, Confluent Kafka, Hive 2/3, Impala, Sqoop, OOZie, Zookeeper, Snowflake, Data Build tool (DBT), HBase, Apache Cassandra /DataStax Cassandra, Data Bricks, Azure Cloud, AWS cloud, Talend, Airflow etc. Programming Language Python , Scala & Java Other Tools Kibana, Logstash, ElasticSearch, ELK. ============================= PROJECT UNDERTAKEN: Project: Implementation of Data Warehouse and reporting platform Roles: Databricks Architect & Engineer Teams: 12 members Technical Skills: Azure Cloud, Azure Data Factory (ADF), ADLS, Databricks, Spark3.x, Python, Scala2.15, DB2, Oracle 12g, Azure SQL My Contribution Data Bricks Infrastructure Solution: - Configured Unified Data Access Control using Unity Catalog – E1 & BY System provide a specific set of permissions, like Read Only, or, Write Only to a specific Group of Users on one, or, some of the Delta Tables, or, even at the Row Level, or, Column Level, which can contain Personally Identifiable Information, i.e., PII, of that Delta Tables - Provide Data Governance with centralized place: administer (TAI) the access to the data, and, also audit the access to the data. - Applied Data lineage for E1 & BY tables with look-up tables using Unity Catalog. - Implemented Data sharing protocol to apply secure data sharing downstream using Unity Catalog and - Design Architecture of Unity Catalog which can be linked to multiple Databricks Workspaces- DEV, UAT, PROD environment. - Created Metastore for the Unity Catalog - Apply User Management of the Unity Catalog for the TAI Lakehouse project: Users, Groups, or, the Service Principle, and, the permissions those have - Configure Data Bricks Cluste with spark 3.x for DEV, UAT & PROD for TAI -E1 & BY System. - Design & apply medallion architecture, Setup a Data Lake house with Bronze, Silver and Gold layers of a storage system using Azure Data Lake Gen2. Azure Cloud Infra and Security: - Install self-hosted integration runtime for the DB2 ON DEV, UAT & PROD and Oracle on-prem cluster on the source system. - Install Azure Virtual network managed IR On DEV, UAT & PROD. - Installed Db2 connector on DEV, UAT & PROD. - Created linked service lnk_BY_Azure_SQL, lnk_E1_Azure_SQL, lnk_Db2_E1 - Install and Configure Azure Key-Vault, added all the credential for Azure SQL, ADLS, Databricks, Users, global users, linked service to Azure Key Vault. – DEV, UAT & PROD. - Created 3 nodes for DEV and 5 nodes for PROD cluster to migrate data. - Setup and configure Azure Active Directory to provide team access policy for Databricks cluster, Azure Data Factory, Azure SQL, Azure Data Lake house. - Coordinate with TAI Client and Microsoft support team to resolve throughput issues. As Azure & Databricks Data Engineer: - developed most critical data ingestion pipelines using Azure Data Factory (ADF) for E1 to migrate 12.8TB of 120 tables from Db2 to ADLS RAW as a parquet file. There are many large tables with 2-4 TB of volume data containing 400 to 800 million records. - Initial & Incremental migration pipelines for both the E1 and BY sources with a watermark based on Julian's date & time - Design Audit table (Process log) and Control table (System) to achieve dynamic pipeline and audit information for master and child pipeline. - Design architecture solution to achieve delete for PKSNAPSHOT – E1 & BY. - Build dynamic delete pipeline using ADF (load PKTBL), Databricks PySpark for Daily, Weekly, OnDemand, and Yearly frequency to delete records from target (Analytics layer – gold layer) based on source system delete column and delete table - Build transformation using Datarbicks Spark with Scala for E1 to - Apply a transformation with a lookup table and transform to the Silver layer. - Build transformation to transform on Analytics layer (Gold) using Databricks Spark & scala. - Implemented UPSERT using Spark Structure Streaming with 5 minutes on the Analytics layer - Design pipeline architecture for master pipeline, child pipeline with different activity ID, Pipeline ID, Master pipeline ID with different pipeline Run ID to make sure for smooth transition audit. - Build logic, developed using Pyspark on Datarbicks – applied on DEV, UAT & PROD to check counter – master pipeline IN PROGRESS - or NOT so that pipeline execution should not overlap. - Pass pipeline parameter to insert or update Audit/Control table using Databricks -Pyspark. - Monitor Performance in DEV & PROD, worked with the team to reduce time. - Milestone – to achieve 10-minute SLA for Incremental load on E1 & BY (end-to-end completion time) - Milestone – achieved 1.53.45hrs to load (400millions record with2.3TB) at RAW as parquet file using ADF pipeline - Interact with Azure Devos’s engineer to build a CICD pipeline for DEV, UAT & PROD with - Develop pipeline as POC using Databricks Workflow, compare the cost with Azure Pipeline, and present to the client. My Contribution to Past Project: Project: Data Exchange (Security Framework) Roles: Technical Lead & Architect – Confluent KStream & KSQL Client: Fidelity & Westpac Team: 9 members Technical Skills: AzureDevops, Jdk 19.0, Confluent Kafka, Kstream, KSQL, Azure Databricks, DBFS, Delta lake, Azure Data Factory, ADLSGen2, Confluent Schema Registry, AES Algorithm, Hash Algorithm, Kubernetes Cluster(AKS).
I am an experienced engineer offering expert tuition in a diverse range of skills, encompassing Python programming, AI, data science, machine learning (ML), cloud computing, data analytics, database management, web development, JavaScript, Java, C++, MATLAB, R, SQL, big data technologies (Hadoop, Apache Spark), version control systems (Git, GitHub), DevOps tools (Docker, Jenkins), Agile methodologies, data structures, and algorithms. With a comprehensive understanding of these vital areas, I provide students with complete guidance to enhance their proficiency in these fundamental software skills. By emphasizing practical applications, problem-solving techniques, and collaborative learning, I strive to equip students with the necessary knowledge and skills to excel in the dynamic field of engineering and software development.
I am an experienced engineer offering expert tuition in a diverse range of skills, encompassing Python programming, AI, data science, machine learning (ML), cloud computing, data analytics, database management, web development, JavaScript, Java, C++, MATLAB, R, SQL, big data technologies (Hadoop, Apache Spark), version control systems (Git, GitHub), DevOps tools (Docker, Jenkins), Agile methodologies, data structures, and algorithms. With a comprehensive understanding of these vital areas, I provide students with complete guidance to enhance their proficiency in these fundamental software skills. By emphasizing practical applications, problem-solving techniques, and collaborative learning, I strive to equip students with the necessary knowledge and skills to excel in the dynamic field of engineering and software development.
i am BigData Engineer, working for MNC. I provide BigData Hadoop Spark training from 6 am to 8 am daily morning. Session recording provided,Cource duration : 60 days, flexible based on reception of learners. production level cluster access given for 180 days. Interview preparation, case studies(4) and mock interviews. Fee : 20k( 7 days free, 10k to be paid within 10 days, 10k to be paid after 30 days)
i am BigData Engineer, working for MNC. I provide BigData Hadoop Spark training from 6 am to 8 am daily morning. Session recording provided,Cource duration : 60 days, flexible based on reception of learners. production level cluster access given for 180 days. Interview preparation, case studies(4) and mock interviews. Fee : 20k( 7 days free, 10k to be paid within 10 days, 10k to be paid after 30 days)
I have been working as Data Engineer for the last 4 years. over all I have 9.5 year of experience, which includes Java, JEE, Spring, Scala, Apache Spark and Hadoop. I have conducted scala & spark workshop in my organization. And I have given external training on Scala for two batches
I have been working as Data Engineer for the last 4 years. over all I have 9.5 year of experience, which includes Java, JEE, Spring, Scala, Apache Spark and Hadoop. I have conducted scala & spark workshop in my organization. And I have given external training on Scala for two batches
Intial and Professional training for Big data and Hadoop. Ensuring and Meeting Standards Industry with respect to Hadoop. Setting up Hadoop Environment in Local and as well as in Aws Instance. Dailed overview of each and every component in Hadoop Ecosystem and Hands On. Experience in Teaching Top Most Universities in India ., Manipal, Nit Trichy, Jadavpur University, Coimbtore Institute of Tech, VIT , BMS, Etc
Intial and Professional training for Big data and Hadoop. Ensuring and Meeting Standards Industry with respect to Hadoop. Setting up Hadoop Environment in Local and as well as in Aws Instance. Dailed overview of each and every component in Hadoop Ecosystem and Hands On. Experience in Teaching Top Most Universities in India ., Manipal, Nit Trichy, Jadavpur University, Coimbtore Institute of Tech, VIT , BMS, Etc
I am having 8 years of experience in Java and Hadoop technologies. I am proficient in both java and hadoop. Teaching is my fashion and very much enjoying with teaching. I worked for different MNC companies like Cap gemini,ITC. Currently I am working as IT consultant in TCS since more than 3 years.
I am having 8 years of experience in Java and Hadoop technologies. I am proficient in both java and hadoop. Teaching is my fashion and very much enjoying with teaching. I worked for different MNC companies like Cap gemini,ITC. Currently I am working as IT consultant in TCS since more than 3 years.
Having total 4 years of solid experience in Hadoop Administration. Currently working on world's 3rd largest business cluster. Previously worked on 1200 nodes cluster with end to end administration. Big Data Overview Hadoop Overview HDFS (Storage Layer) Hadoop 1X Installation in pseudo mode Hadoop 1X Installation in distribution mode Hadoop 2X Installation with NameNode High Availability MapReduce (Processing Layer) Hadoop 1X Installation in pseudo mode with JT & TT Hadoop 1X Installation in distribution mode with JT & TT Hadoop 2X Installation in distribution mode with RM & NM Hadoop 2X Installation in distribution mode with RM High Availability Cluster Planning Installation of Cloudera Monitoring & Administering Cloudera Cluster Hadoop Ecosystem Tools Introduction to Sqoop Introduction to Pig Introduction to Hive Introduction to HBase Introduction to Oozie Hadoop Cluster Backup Hadoop Cluster Upgrade OS & Hadoop Patching Real Time Concepts Day to Day Admin Activities Frequently Occurring Issues Roles and Responsibilities
Having total 4 years of solid experience in Hadoop Administration. Currently working on world's 3rd largest business cluster. Previously worked on 1200 nodes cluster with end to end administration. Big Data Overview Hadoop Overview HDFS (Storage Layer) Hadoop 1X Installation in pseudo mode Hadoop 1X Installation in distribution mode Hadoop 2X Installation with NameNode High Availability MapReduce (Processing Layer) Hadoop 1X Installation in pseudo mode with JT & TT Hadoop 1X Installation in distribution mode with JT & TT Hadoop 2X Installation in distribution mode with RM & NM Hadoop 2X Installation in distribution mode with RM High Availability Cluster Planning Installation of Cloudera Monitoring & Administering Cloudera Cluster Hadoop Ecosystem Tools Introduction to Sqoop Introduction to Pig Introduction to Hive Introduction to HBase Introduction to Oozie Hadoop Cluster Backup Hadoop Cluster Upgrade OS & Hadoop Patching Real Time Concepts Day to Day Admin Activities Frequently Occurring Issues Roles and Responsibilities
Having 10+ Years of professional experience in Teaching and IT industry including 8+ years of experience in Hadoop/Big Data. Extensive experience on Hadoop Ecosystem components like HDFS, YARN, MapReduce, Hive, Sqoop, Oozie, HBase, In-Mem DB like Presto and NoSQL like ElasticSearch, Solr and Cassandra, In-Mem processing like spark.
Having 10+ Years of professional experience in Teaching and IT industry including 8+ years of experience in Hadoop/Big Data. Extensive experience on Hadoop Ecosystem components like HDFS, YARN, MapReduce, Hive, Sqoop, Oozie, HBase, In-Mem DB like Presto and NoSQL like ElasticSearch, Solr and Cassandra, In-Mem processing like spark.
My self is Natraj having 7+ yes of experience in spark and scala and java. Currently I am working for TCS as IT Consultant. Teaching is my passion and enjoying teaching alot. I worked for big multi national company like Cap gemini,ITC Infotech.
My self is Natraj having 7+ yes of experience in spark and scala and java. Currently I am working for TCS as IT Consultant. Teaching is my passion and enjoying teaching alot. I worked for big multi national company like Cap gemini,ITC Infotech.
Over 12+ years of experience as technical consultant in oracle fusion (hcm/scm/finance/hcm and e-business suite r12. Handing technical lead role and carrying internal training's to train and deploy resources as per the project requirements. Developed outbound and inbound integrations using oic. Developed oic integrations to sync data from oracle sales cloud to oracle payable s. Importing bulk data into oracle erp cloud using fbdi through oic. Worked on integrations using oic with different banks such as velosys, mq, edge. Worked on integrations using oic with different banks such as hdfc,axis,yes.
Over 12+ years of experience as technical consultant in oracle fusion (hcm/scm/finance/hcm and e-business suite r12. Handing technical lead role and carrying internal training's to train and deploy resources as per the project requirements. Developed outbound and inbound integrations using oic. Developed oic integrations to sync data from oracle sales cloud to oracle payable s. Importing bulk data into oracle erp cloud using fbdi through oic. Worked on integrations using oic with different banks such as velosys, mq, edge. Worked on integrations using oic with different banks such as hdfc,axis,yes.
Browse hundreds of experienced dance tutors across Bangalore. Compare profiles, teaching styles, reviews, and class timings to find the one that fits your goals — whether it's Apache Spark, Hadoop, Scala,
Select your preferred tutor and book a free demo session. Experience their teaching style, ask questions, and understand the class flow before you commit.
Once you're satisfied, make the payment securely through UrbanPro and start your dance journey! Learn at your own pace — online or in-person — and track your progress easily.
Find the best Big Data Tutor Training
Selected Location Do you offer Big Data Training?
Create Free Profile >>You can browse the list of best Big Data tutors on UrbanPro.com. You can even book a free demo class to decide which Tutor to start classes with.
The fee charged varies between online and offline classes. Generally you get the best quality at the lowest cost in the online classes, as the best tutors don’t like to travel to the Student’s location.
It definitely helps to join Big Data Training near me in Anandapura Circle, Bangalore, as you get the desired motivation from a Teacher to learn. If you need personal attention and if your budget allows, select 1-1 Class. If you need peer interaction or have budget constraints, select a Group Class.
UrbanPro has a list of best Big Data Training
Scope of Big Data: A Comprehensive Overview As an experienced tutor registered on UrbanPro.com specializing...
Hi we are providing Bigdata training with Best in Real Time Curriculum. Training contains free placement...
Hadoop is a kind of framework that can handle the huge volume of Big Data and process it, whereas Big...
Basic programming. Data warehousing. Basic statistics. Python. Java. SQL.
You are saying that you are from non technical background so it is better to choose Data science even...
PowerPivot is an add-in for Microsoft Excel 2010 that enables you to import millions of rows of data from multiple data sources into a single Excel workbook,...
Analysis> Separation of a whole into its component parts> Looks backwards over time, providing marketers with a historical view of what has happened Analytics...
Analysis> Separation of a whole into its component parts> Looks backwards over time, providing marketers with a historical view of what has happened Analytics...
CHECK POINTING Checkpointing process is one of the vital concept/activity under Hadoop. The Name node stores the metadata information in its hard...
Microsoft Outlook is the preferred email client used to access Microsoft Exchange Server email. Not only does Microsoft Outlook provide access to Exchange...