The Heavy Lifting on our path to Intelligence.

what is data?

Data is the foundation of modern society, driving innovation, progress, and decision-making across all sectors and industries. From the smallest startups to the largest corporations, data plays a critical role in understanding customer behavior, optimizing operations, and developing new products and services. It has transformed the way we live, work, and interact with each other.

At its core, data refers to any set of information that can be collected, analyzed, and used to gain insights and make informed decisions. This includes everything from structured data such as numbers and statistics, to unstructured data such as social media posts and images. With the explosion of data in recent years, new technologies and tools have emerged to help individuals and organizations collect, store, manage, and analyze data more efficiently and effectively.

As the world becomes increasingly digital, the importance of data and the ability to extract value from it will only continue to grow. It is essential for anyone looking to succeed in today’s economy to understand the basics of data and how it can be leveraged to drive innovation and growth.

what is data munging?

Data munging, also known as data wrangling, is the process of cleaning, structuring, and transforming raw data into a format that is suitable for analysis. In the context of intelligence, data munging is a critical step in the data analysis process as it helps ensure that the data used for intelligence purposes is accurate, consistent, and relevant. This involves removing duplicates, correcting errors, standardizing formats, and combining data from different sources. The ultimate goal of data munging for intelligence is to produce high-quality data that can be analyzed and transformed into actionable insights, helping organizations make informed decisions and gain a competitive edge.

what data features can I use?

The data munging features that are available for testing are described via the cards below. For each feature available for use, there are descriptions of how to use, use cases of why to use and case studies of what the features have been used for


Modern forecasting involves using advanced data analysis techniques, including machine learning and artificial intelligence (AI), to predict future trends and outcomes with greater accuracy and speed. AI-based forecasting methods use complex algorithms and models to analyze vast amounts of data

More »

Generic Requests

The Generic Requestor allows you to submit a process request with appropriate key:value pairs that will  execute process and deliver results.

More »

what are capabilities of data munging processes?

The capabilities of data munging processes are defined in the sections below.

Data sourcing is the process of gathering and acquiring data from various sources for analysis and decision-making. With the increasing amount of data available today, it is crucial to have a systematic approach to sourcing data. This process involves identifying the data needed, determining the best sources to obtain the

Read More »

Data standardization refers to the process of converting data from various sources into a consistent format. This involves ensuring that data follows a set of defined rules, structures, and definitions, making it easier to analyze, share, and integrate with other datasets. By standardizing data, organizations can reduce errors, improve data

Read More »

Data transformation is the process of converting raw data into a more useful format for analysis or other purposes. This may involve cleaning, filtering, aggregating, or otherwise manipulating data to make it easier to work with. Data transformation is a critical step in data processing and analysis, as it can

Read More »

Data delivery is the process of transmitting information from one location to another, typically over a network or the internet. It involves the transfer of digital data such as text, images, audio, and video, from a source to a destination in a secure and reliable manner. The delivery of data

Read More »

practices and definitions


Data practices and definitions refer to the various methods, techniques, and standards that organizations use to collect, store, analyze, and use data. In today’s digital age, data has become an integral part of almost every industry and business, and it is crucial for companies to have clear definitions and practices in place to ensure the accuracy, security, and ethical use of data. This includes defining key terms, such as data quality and data privacy, establishing protocols for data collection and analysis, implementing appropriate security measures, and complying with relevant laws and regulations. Effective data practices and definitions can help organizations maximize the value of their data while minimizing risks and ensuring ethical conduct.


Data modeling is the process of creating a conceptual representation


Data models are abstractions that represent real-world entities, relationships, and


There are various tools available for data management that aid