Contents

Unsure of know how to clean a dataset the right way?

If you struggle with data cleansing, normalizationstandardization or consolidation, this article is for you.

We’ll lay down a simple scenario from the retail world, but the concepts are applicable in a lot of other situations

Let us take the following tables.

These are transactional data for the same vendor that come from different sources & different schemas:

Our Objective

Clean, Transform, and Merge the data to look like the following:

The Challenges

If we only had these nine rows to deal with, it’s not an issue — copy and paste within MS Excel or Google Sheets and manually clean it up.

But in the real world, the problems come in various forms:

  • Size of datasets: Whether it is a couple of thousand rows or millions, a regular spreadsheet isn’t designed to handle the transformation required to achieve the end state
  • Constant inflow of data & the need for automation: Data today is rarely static. They are continually growing, and all the modifications needed become a repetitive nightmare.
  • Unavoidable data messiness: Additional column names, inconsistent content, different schemas — these are real-world problems that are almost impossible to fix at the source. They need to be handled during data consolidation.

Mammoth’s code-free, time-saving, automated solution

Let us show you how you can resolve this in a couple of minutes, without writing any code.

For those who don’t know about Mammoth Analytics, it is a lightweight, code-free data management platform.

It provides powerful tools for the entire data journey, including data retrieval, consolidation, storage, cleanup, reshaping, analysis, insights, alerts and more.

Step 1 — Transform and normalize the three datasets

First, bring your data into the Mammoth Data Library.

For this example, we have simple CSV files that we uploaded directly into Mammoth, but the platform supports a lot of additional ways to ingest your data.

With Mammoth’s extensive data transformation functions, we can shape the data in a variety of ways to get it in the format

We’ll perform a couple of transformations here to get the data in the right shape:

Step 2 — Save the Datasets into a Master Dataset

Now that we have transformed the data let’s save it into a Master Dataset.

For this action, we will utilize a powerful function called “Save to Dataset”. This function allows multiple, potentially inconsistent and incompatible datasets to be merged into a single master dataset.

From Dataset 1, we will create a Master Dataset

Now with Dataset 2 and 3, we’ll add the data into the Master Dataset

And we’re done

We can now see the “Master Dataset” in the Data Library. If we open that up, we’ll see our cleaned up and consolidated data.

We have achieved a code-free solution to combining multiple, incompatible datasets in a couple of minutes.

This a small example of some of the benefits of using the Mammoth Analytics platform.

To learn more, check out some of the features.

Try Mammoth 7-Days Free

From messy data to insights, 10x faster​

Mammoth cleans, transforms, and automates your data in minutes. 7-day free trial, then only $19/month.

Featured post

Bottom line up front: If you have data engineers who write Python, use Airflow or Prefect. If you need business users to build workflows without IT, use Mammoth or Alteryx. The data orchestration market has exploded. What used to be a choice between Airflow and maybe two alternatives is now 50+ tools. Here’s what matters: […]

Recent posts

Here’s a question: Why does closing your books take longer now than it did five years ago, even though you have “better” software? The answer is simple. Your financial data lives in more places than ever. QuickBooks handles accounting, Stripe processes payments, Expensify tracks expenses, and your ERP manages operations. Each system works great individually, […]

If you’re spending hours cleaning data in Excel before creating dashboards, waiting days for IT to update reports, or struggling with tools that require a computer science degree to use, you need better business intelligence software. This guide compares the 15 best BI tools and shows you exactly which one fits your team’s needs and […]

If you’re manually pulling SAP reports, wrestling with Excel spreadsheets, or waiting weeks for answers that should take hours, you need supply chain analytics software. This guide shows you the 15 best platforms and exactly which one to choose based on your team’s needs and budget. Bottom line: Most supply chain teams need powerful data […]