HC Software

Data AI/ML

“Unlocking insights and driving innovation through intelligent data automation.”

Our Data AI/ML service harnesses the power of artificial intelligence and machine learning to transform raw data into actionable insights. We specialize in migrating on-premise data to the cloud, building scalable data lake solutions, and implementing AI/ML-driven automation to optimize decision-making processes. Whether it’s big data management or deploying AI models, we help you unlock the full potential of your data to drive innovation, efficiency, and business growth.

1

Case Study

Healthcare Provider's Data Migration to AWS Cloud

Customer Challenges:

A healthcare provider was managing vast amounts of patient data on-premise. The data storage was nearing capacity, and maintaining on-premise hardware was becoming costly and time-consuming. The client was also concerned about security, compliance with healthcare regulations (HIPAA), and data access during the migration.

Solution Delivered:

CESREI provided a comprehensive cloud migration plan. We implemented a secure, HIPAA-compliant migration of the on-premise data to AWS cloud, ensuring minimal disruption and zero data loss. Data encryption, access controls, and compliance auditing were part of the migration plan. We used real-time, zero-downtime migration techniques to keep services operational during the migration.

Results/Outcomes:

The healthcare provider successfully moved 90% of its data to the cloud, reducing operational costs by 40%. The migration improved data accessibility for healthcare workers, resulting in quicker decision-making. Data security and compliance were enhanced, with built-in encryption and regulatory reporting.

2

Case Study

Media Company Implements a Data Lake for Unified Data Access

Customer Challenges:

A media company had multiple data sources, including customer engagement data, social media interactions, and subscription records. The data was siloed across different platforms, making it hard to gain holistic insights. Ingesting, storing, and analyzing the massive volumes of unstructured data was a constant challenge.

Solution Delivered:

CESREI designed and implemented a scalable data lake on Microsoft Azure. We built automated ETL pipelines to ingest data from various sources into the data lake in real-time. The data lake supported both structured and unstructured data, with robust governance and security policies. Machine learning models were integrated into the data lake for advanced analytics.

Results/Outcomes:

The media company saw a 75% reduction in the time needed to gather insights across multiple data sources. The data lake unified their data into a single platform, enabling better customer targeting, optimized marketing efforts, and improved decision-making. This led to a 20% increase in customer retention.

3

Case Study

Retail Giant Implements Big Data Analytics for Demand Forecasting

Customer Challenges:

A global retail company was experiencing challenges in managing and processing the huge amounts of transactional data generated daily. They struggled to perform real-time demand forecasting, resulting in overstock and stockout situations. Manual processes for data ingestion and analytics were too slow to keep up with real-time operations.

Solution Delivered:

CESREI implemented a big data solution using Apache Spark and Hadoop on a cloud platform to ingest, process, and analyze real-time data at scale. We automated the data ingestion process, designed a scalable data pipeline, and developed machine learning models for demand forecasting and trend analysis.

Results/Outcomes:

The retail company improved demand forecasting accuracy by 30%, leading to a reduction in stockouts by 25% and overstock by 20%. Real-time data analytics allowed the company to adjust stock levels quickly, improving supply chain efficiency and increasing revenue by 15%.

4

Case Study

Financial Institution Implements Cloud Data Warehouse for Reporting

Customer Challenges:

A financial institution was dealing with slow and inefficient reporting processes. Their on-premise data warehouse was unable to handle the growing data volume and lacked scalability. Extracting insights and running reports required long lead times, which negatively affected business decisions.

Solution Delivered:

CESREI implemented a cloud-based data warehouse on AWS Redshift. We re-engineered the client’s ETL processes to load data faster and optimized queries for reporting. We also implemented data governance frameworks to secure sensitive financial data and ensure compliance with industry standards. Self-service analytics tools were integrated for business users.

Results/Outcomes:

The new data warehouse reduced reporting times from hours to minutes, significantly improving decision-making. The financial institution saw a 50% increase in operational efficiency with self-service analytics. The scalability of the cloud platform also allowed the company to handle increased data volumes without additional costs.

5

Case Study

Manufacturing Company Implements AI/ML for Predictive Maintenance

Customer Challenges:

A manufacturing company faced frequent equipment breakdowns that disrupted production schedules and increased maintenance costs. The company relied on reactive maintenance, which led to costly repairs and unplanned downtime. They sought an AI-driven solution to predict equipment failures and optimize maintenance schedules.

Solution Delivered:

CESREI implemented a predictive maintenance solution powered by AI/ML. We developed machine learning models that analyzed historical equipment data, identifying patterns leading to failures. These models were integrated with IoT sensors that collected real-time data from equipment. The system automatically generated maintenance alerts based on the likelihood of failures.

Results/Outcomes:

The company reduced unplanned downtime by 40% and extended equipment life by 20%. Maintenance costs were reduced by 30%, and overall production efficiency increased by 25%. The predictive maintenance solution also allowed the company to schedule maintenance more efficiently, preventing costly breakdowns.