Work process

Step by step

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Step 1. Analisys

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Step 2. Creative concept

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Data Services

At Ingress, we understand that data is the lifeblood of modern businesses and organizations. However, data, in its raw form, can be overwhelming and complex to manage. That's where our Data Collection & Preparation Services come into play. We specialize in turning raw data into a valuable asset, providing you with the insights you need to make informed decisions and drive your business forward.

Our Approach

Our approach to Data Collection & Preparation is meticulous and strategic. We believe that the quality of insights derived from data is heavily reliant on how well the data is collected, cleaned, and prepared. Here's how we do it:

1. Data Collection: 



Source Identification: We work closely with you to identify the sources of data that are relevant to your business. This could include internal databases, external data providers, IoT devices, social media, and more.

Data Retrieval: We employ advanced techniques to retrieve data from various sources, ensuring that we capture the most up-to-date and relevant information.

Data Integration: Integrating data from multiple sources is a critical step. We ensure that data is consolidated and standardized for consistency.


2. Data Cleaning: 

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Data Validation: We meticulously validate data for accuracy and completeness, identifying and rectifying any discrepancies or errors.

Deduplication: Duplicate records can skew insights. We employ deduplication techniques to ensure that each data point is unique and relevant.

Outlier Detection: Outliers can negatively impact analysis. We identify and handle outliers appropriately, whether through removal, transformation, or flagging.

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