Big Data & Analytics Service
Utilize the power of data with our cutting-edge solutions. Get insights, drive growth, and make data-driven decisions today.
“Without big data, you are blind and deaf and in the middle of a freeway.”
Geoffrey Moore
Management consultant and author
Benefits of Big Data
Our Partners in Big Data Project
We help our partners to transform data into valuable insights
Point of Sales Martabak Orins
Optimize database performance using complex indexing
HSIS & HNI e-Commerce
Implementing a reliable log monitoring using non-relational database such as MongoDB
Our Big Data and Analytics Services
we offer a full suite of big data services to help you harness the power of your data and
turn it into actionable insights.
We understand the value of data and the impact it can have on your business. That’s why we offer a full suite of big data services to help you harness the power of your data and turn it into actionable insights.
- Database Performance Optimization
- Big Data Processing
- Data Warehouse / Data Lake Implementation
- Sel Service Dashboard
- Data Integration
Improving the performance of a database, typically by identifying and resolving bottlenecks, or areas where the database is underperforming.
The collection, storage, management, and analysis of extremely large and complex data sets.
This process involves several steps: data collection and ingestion, data storage, data transformation, data modeling, data access and data governance.
Type of business intelligence tool that allows users to access and analyze data without the need for technical assistance.
Bringing together data from various sources, such as transactional systems, social media, and sensor data, and making it available for reporting and analysis.
- Database Performance Optimization
- Big Data Processing
- Data Warehouse / Data Lake Implementation
- Self Service Dashboard
- Data Integration
Database Performance Optimization
Improving the performance of a database, typically by identifying and resolving bottlenecks, or areas where the database is underperforming.
Scope of Work:
- Indexing
- Reducing disk I/O
- Increasing the scalability of the database
- Query optimization
- Physical and infrastructure optimization
Big Data Processing
The collection, storage, management, and analysis of extremely large and complex data sets.
Scope of Work:
- Collection, storage, management, and analysis of extremely large and complex data sets.
- Processing data from a variety of sources, such as social media, sensor data, and transactional data. The data can be structured, semi-structured, or unstructured.
Data Warehouse / Data Lake Implementation
This process involves several steps: data collection and ingestion, data storage, data transformation, data modeling, data access and data governance.
Scope of Work:
- Data warehouse is used for reporting and OLAP (Online Analytical Processing) purposes,
- Data lake is used for OLAP and OLTP (Online Transactional Processing), and support different data processing engines such as batch, real-time, and interactive.
Self Service Dashboard
Type of business intelligence tool that allows users to access and analyze data without the need for technical assistance.
Scope of Work:
- Visualize a range of features, such as drag-and-drop interfaces, pre-built templates, and data visualization options.
- It also allow users to connect to various data sources, such as databases and spreadsheets, and perform data analysis and data mining.
Data Integration
Bringing together data from various sources, such as transactional systems, social media, and sensor data, and making it available for reporting and analysis.
Scope of Work:
- Data extraction: Collecting data from various sources and storing it in a centralized repository, such as a data warehouse or data lake.
- Data transformation: Cleaning, transforming, and integrating the data to fit the data warehouse or data lake schema. This can include tasks such as data mapping, data normalization, and data validation.
- Data loading: Loading the transformed data into the data warehouse or data lake for reporting and analysis.
- Data quality: Ensuring that the data is accurate, complete, and consistent, and identifying and resolving any data quality issues.
Improving the performance of a database, typically by identifying and resolving bottlenecks, or areas where the database is underperforming.
Scope of Work:
- Indexing
- Reducing disk I/O
- Increasing the scalability of the database
- Physical and infrastructure optimization
- Query optimization
The collection, storage, management, and analysis of extremely large and complex data sets.
Scope of Work:
- Collection, storage, management, and analysis of extremely large and complex data sets.
- Processing data from a variety of sources, such as social media, sensor data, and transactional data. The data can be structured, semi-structured, or unstructured.
This process involves several steps: data collection and ingestion, data storage, data transformation, data modeling, data access and data governance.
Scope of Work:
- Data warehouse is used for reporting and OLAP (Online Analytical Processing) purposes,
- Data lake is used for OLAP and OLTP (Online Transactional Processing), and support different data processing engines such as batch, real-time, and interactive.
Type of business intelligence tool that allows users to access and analyze data without the need for technical assistance.
Scope of Work:
- Visualize a range of features, such as drag-and-drop interfaces, pre-built templates, and data visualization options.
- It also allow users to connect to various data sources, such as databases and spreadsheets, and perform data analysis and data mining.
Bringing together data from various sources, such as transactional systems, social media, and sensor data, and making it available for reporting and analysis.
Scope of Work:
- Data extraction: Collecting data from various sources and storing it in a centralized repository, such as a data warehouse or data lake.
- Data transformation: Cleaning, transforming, and integrating the data to fit the data warehouse or data lake schema. This can include tasks such as data mapping, data normalization, and data validation.
- Data loading: Loading the transformed data into the data warehouse or data lake for reporting and analysis.
- Data quality: Ensuring that the data is accurate, complete, and consistent, and identifying and resolving any data quality issues.
Technology Stack
Tools
Programming Language
Database
Technology Stack
Tools
Programming Language
Database
Insights
Ready to step forward in building your digital legacy?
We understand you have many things to consider. IT Investment is costly, you deserve to feel safe, that everythings gonna be okay. So feel free to ask. Our team will immediately response your request.
11 years
operation
10+
national projects
350+
projects delivered
8.5/10
customer satisfaction
score