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Westpac NZ, an Infosys Finacle customer evaluated nCino Bank OS

Swedbank, a Temenos T24 customer evaluated Oracle Flexcube

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Wayfair, a Korber HighJump WMS customer just evaluated Manhattan WMS

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Cantor Fitzgerald, a Kyriba Treasury customer evaluated GTreasury

Michelin, an e2open customer evaluated Oracle Transportation Management

List of Amazon Elastic MapReduce (EMR) Customers

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Logo Customer Industry Empl. Revenue Country Vendor Application Category When SI Insight
Ameriprise Financial Banking and Financial Services 13800 $15.5B United States Amazon Web Services (AWS) Amazon Elastic MapReduce (EMR) Extract, Transform, and Load (ETL) 2020 n/a
In 2020 Ameriprise Financial deployed Amazon Elastic MapReduce (EMR) as a core component of its Big Data processing and analytics platform to support enterprise data modeling, reporting, and machine learning pipelines. The implementation emphasized cloud-native batch and streaming workloads, using Amazon Elastic MapReduce (EMR) to run Spark, MapReduce, and Spark Streaming jobs that processed web server logs and other ingestion streams stored in Amazon S3. The EMR deployment was configured to support data lake and data warehouse patterns, with ETL and transformation logic implemented in Python and Spark, and orchestration scheduled via AWS Data Pipeline, Airflow, and Oozie for daily, weekly, and monthly job cadences. Serverless functions were introduced using AWS Lambda with assigned IAM roles and triggers from SQS and SNS to kick off Python-based processing steps and to migrate ETL outputs into AWS Glue and Amazon Athena for ad hoc querying. Integrations with core AWS services were explicit, including Amazon S3 for landing and staging, Redshift for analytical warehousing, Glue and Athena for serverless catalog and query services, and SageMaker and Elasticsearch for model development and indexed analytics. The implementation also tied into Kafka and Storm for real-time ingestion, HDFS and HBase for persistent big data stores on the Hadoop stack, and downstream visualization via Power BI and SAS Visual Analytics. Governance and operational controls included designed AWS landing zones with IAM and VPC considerations, data governance and profiling workflows, integration testing strategies for ETL jobs, and a CI CD pipeline using Docker and GitHub for deployment automation. The program delivered both infrastructural modernization for data science and reporting workloads and explicit performance tuning on the warehouse tier, with Redshift optimization noted to enable queries to perform up to 100x faster for Power BI and SAS Visual Analytics.
B3 Brazil Banking and Financial Services 2889 $2.0B Brazil Amazon Web Services (AWS) Amazon Elastic MapReduce (EMR) Extract, Transform, and Load (ETL) 2016 n/a
In 2016, B3 Brazil implemented Amazon Elastic MapReduce (EMR) in the category to operationalize Hadoop and Spark processing for core data engineering workflows. The EMR deployment was positioned to host large-scale ETL and analytic jobs that previously ran on on-premise Hadoop tooling, aligning the company, Amazon Elastic MapReduce (EMR), data engineering function. Implementation work focused on provisioning managed cluster infrastructure for batch and interactive processing, with configuration for Hive, Spark SQL, and MapReduce execution engines. Development practices included Java-based integrations using the Hadoop and Hive APIs and PySpark workloads, reflecting the team’s existing skill set in Java development and Spark SQL. Data ingestion and processing pipelines integrated explicit technologies from the environment, including Sqoop and Flume for ingestion, Hive for ELT, and Impala for ad-hoc queries, while Sentry and Kerberos were used for security and authorization controls. The environment interoperated with the Cloudera platform components that were part of the existing stack, enabling reuse of ETL patterns, metadata practices, and query tools during the EMR rollout. Operational ownership rested with B3’s data engineering and platform teams in Brazil, covering architecture, cluster maintenance, and workload scheduling. Governance work emphasized secure authentication and authorization through Kerberos and Sentry integration, and the implementation preserved existing ELT and data ingestion workflows while shifting execution to Amazon Elastic MapReduce (EMR).
Credit One Bank Banking and Financial Services 2500 $1.5B United States Amazon Web Services (AWS) Amazon Elastic MapReduce (EMR) Extract, Transform, and Load (ETL) 2017 n/a
In 2017, Credit One Bank implemented Amazon Elastic MapReduce (EMR), Apps Category . The EMR deployment served as the bank's cluster compute layer for large scale Spark and Hadoop workloads, supporting PySpark based ETL and analytic pipelines developed by the data engineering team in Las Vegas, NV. The implementation centered on Spark technologies, specifically PySpark, Spark SQL, and Spark MLlib, with Spark Streaming used to convert streaming input into micro batches for downstream processing. EMR clusters were provisioned alongside S3 for durable data lake storage and EC2 for worker nodes, with AWS CloudFormation templates used to codify multi tier application deployments and to enforce availability, fault tolerance, and auto scaling behavior. Integrations were explicit and modular, EMR ran Spark and Hive jobs that consumed data landed via Kafka REST API and Apache NiFi workflows, while Sqoop was used for relational database ingest into the Hadoop file system. AWS Glue crawler jobs were used for data cataloging and building ETL pipelines to target data marts, with downstream storage and analytics integrations including Amazon Redshift, Snowflake, and Tableau for BI consumption. Operational governance and delivery followed Agile and Scrum methodology for project and team management, with PySpark applications and GitHub used for development lifecycle control. Monitoring and access control were implemented using CloudWatch and IAM respectively, and the surrounding AWS service footprint included Lambda, SNS, SQS, RDS, DynamoDB and other platform services as part of the runtime architecture.
Banking and Financial Services 7000 $30.9B United States Amazon Web Services (AWS) Amazon Elastic MapReduce (EMR) Extract, Transform, and Load (ETL) 2018 n/a
Banking and Financial Services 48300 $53.5B United States Amazon Web Services (AWS) Amazon Elastic MapReduce (EMR) Extract, Transform, and Load (ETL) 2020 n/a
Banking and Financial Services 317233 $180.6B United States Amazon Web Services (AWS) Amazon Elastic MapReduce (EMR) Extract, Transform, and Load (ETL) 2020 n/a
Life Sciences 81000 $63.6B United States Amazon Web Services (AWS) Amazon Elastic MapReduce (EMR) Extract, Transform, and Load (ETL) 2017 n/a
Insurance 16070 $36.3B United States Amazon Web Services (AWS) Amazon Elastic MapReduce (EMR) Extract, Transform, and Load (ETL) 2022 n/a
Communications 1300 $1.0B Australia Amazon Web Services (AWS) Amazon Elastic MapReduce (EMR) Extract, Transform, and Load (ETL) 2017 n/a
Retail 13500 $12.2B United States Amazon Web Services (AWS) Amazon Elastic MapReduce (EMR) Extract, Transform, and Load (ETL) 2021 n/a
Showing 1 to 10 of 11 entries

Buyer Intent: Companies Evaluating Amazon Elastic MapReduce (EMR)

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FAQ - APPS RUN THE WORLD Amazon Elastic MapReduce (EMR) Coverage

Amazon Elastic MapReduce (EMR) is a Extract, Transform, and Load (ETL) solution from Amazon Web Services (AWS).

Companies worldwide use Amazon Elastic MapReduce (EMR), from small firms to large enterprises across 21+ industries.

Organizations such as JPMorgan Chase, Pfizer, Goldman Sachs, Triton Health System and Fannie Mae are recorded users of Amazon Elastic MapReduce (EMR) for Extract, Transform, and Load (ETL).

Companies using Amazon Elastic MapReduce (EMR) are most concentrated in Banking and Financial Services, Life Sciences and Insurance, with adoption spanning over 21 industries.

Companies using Amazon Elastic MapReduce (EMR) are most concentrated in United States, with adoption tracked across 195 countries worldwide. This global distribution highlights the popularity of Amazon Elastic MapReduce (EMR) across Americas, EMEA, and APAC.

Companies using Amazon Elastic MapReduce (EMR) range from small businesses with 0-100 employees - 0%, to mid-sized firms with 101-1,000 employees - 0%, large organizations with 1,001-10,000 employees - 36.36%, and global enterprises with 10,000+ employees - 63.64%.

Customers of Amazon Elastic MapReduce (EMR) include firms across all revenue levels — from $0-100M, to $101M-$1B, $1B-$10B, and $10B+ global corporations.

Contact APPS RUN THE WORLD to access the full verified Amazon Elastic MapReduce (EMR) customer database with detailed Firmographics such as industry, geography, revenue, and employee breakdowns as well as key decision makers in charge of Extract, Transform, and Load (ETL).