Cookies help us display personalized product recommendations and ensure you have great shopping experience.

By using this site, you agree to the Privacy Policy and Terms of Use.
Accept
SmartData CollectiveSmartData Collective
  • Analytics
    AnalyticsShow More
    media monitoring
    Signals In The Noise: Using Media Monitoring To Manage Negative Publicity
    5 Min Read
    data analytics
    How Data Analytics Can Help You Construct A Financial Weather Map
    4 Min Read
    financial analytics
    Financial Analytics Shows The Hidden Cost Of Not Switching Systems
    4 Min Read
    warehouse accidents
    Data Analytics and the Future of Warehouse Safety
    10 Min Read
    stock investing and data analytics
    How Data Analytics Supports Smarter Stock Trading Strategies
    4 Min Read
  • Big Data
  • BI
  • Exclusive
  • IT
  • Marketing
  • Software
Search
© 2008-25 SmartData Collective. All Rights Reserved.
Reading: How to Deliver a Data Science Project Successfully
Share
Notification
Font ResizerAa
SmartData CollectiveSmartData Collective
Font ResizerAa
Search
  • About
  • Help
  • Privacy
Follow US
© 2008-23 SmartData Collective. All Rights Reserved.
SmartData Collective > Data Management > How to Deliver a Data Science Project Successfully
Data Management

How to Deliver a Data Science Project Successfully

Rehan Ijaz
Rehan Ijaz
5 Min Read
data science and SMEs
Shutterstock Licensed Photo - By Wright Studio
SHARE

It is demanding to know where to begin once zoućve decided that, yes, you wish to dive into the fascinating world of data and AI. Just having a look at all the technologies you need to understand all the tools you’re supposed to master is enough to make you confused.

Contents
  • 1. Understanding the business
  • 2. Gather your data
  • 3. Explore and clean your data
  • 4. Enrich your dataset
  • 5. Get predictive
  • In conclusion

Well, luckily for you, creating your first data project is actually not difficult as it seems. Becoming data-powered is first and most foremost about having to learn the basic steps and following them to go from raw data to create a machine learning model, and in the end to operationalization.

Let’s jump into the following steps that will help you in successfully delivering a data science project.

1. Understanding the business

Having an understanding of the business or activity that your data project is part of is one of the major keys to ensuring its success. To motivate different participants necessary to get your project from design to creation, your project must be the answer to a clear organizational need or problem. So before you even think about the data, venture out and talk to the people in your organization whose processes you aim to improve with data.

More Read

cybersecurity measures to prevent data breaches in 2022
Smart SMBs Are Taking Advantage of Major Advances in Data Security
Apache Spark Pitfalls: The Limitations of the Big Data Processing Giant
Increased Demands for BI within Healthcare IT
BYOD: An Unstoppable Force?
Social Media Analytics: How our approach blends the best analytics technology

Afterward, sit down and define a timeline and concrete key performance indicators.

2. Gather your data

Once you’ve figured your goal out, it’s time to start looking for your crucial data. Mixing and merging data from as many sources as possible is what defines a great project, so reach out as far as possible.

Here are a few ways to gather some data:

  1. Connect to a database: Ask your data and IT teams for the data that’s openly available, or create your private database up, and start digging through it to understand what information your company has been collecting.
  2. Use APIs: Think of the APIs to all the tools your company’s been using, and the raw data these guys have been gathering. You have to work on getting these all set up so you can use those email stats, the info your sales team put in Pipedrive or similar Salesforce, the support ticked somebody filled, etc. If you’re not an expert coder, plugins in DSS can give you lots of options to bring in your external data.

3. Explore and clean your data

Once you’ve gathered your data, it’s time to get to work on it. Start digging to see what you’ve got and how you can merge everything together to answer your original goal. Start writing notes on your first analyses, and ask questions to business and people, or the IT guys, to understand what these variables mean.

4. Enrich your dataset

Now that you’ve got somewhat clean data, it’s time to manipulate it in order to get the most value of it. You should begin by joining all your different sources and group logs to specify your data down to essential features.

An example of that is to enrich your data by creating a time-based feature like:

  • Extracting time and date components
  • Calculating variations between date columns
  • Flagging holidays of national matter

5. Get predictive

This is when the actual fun starts. Machine learning algorithms can help you go a step further into acquiring insights and predicting trends of the future. Also using a data science platform is one of the easiest methods in automating your machine learning pipeline.

By working with clustering algorithms, you’re able to create models to uncover trends in the data that were not easily seen in graphs and stats. These create groups of similar events, also known as clusters, and more or less explicitly express which feature is decisive in these results.

In conclusion

In order to successfully finish your first data project, you need to be aware that your model will never be fully “finished” – for it to remain useful and accurate, you need to constantly reevaluate, retrain it and create new features.

A data scientists’ job is never actually done, but that’s what makes working with data all the more interesting!

Share This Article
Facebook Pinterest LinkedIn
Share
ByRehan Ijaz
Follow:
Rehan is an entrepreneur, business graduate, content strategist and editor overseeing contributed content at BigdataShowcase. He is passionate about writing stuff for startups. His areas of interest include digital business strategy and strategic decision making.

Follow us on Facebook

Latest News

NO-CODE
Breaking down SPARC Emulation Technology: Zero Code Re-write
Exclusive News Software
online business using analytics
Why Some Businesses Seem to Win Online Without Ever Feeling Like They Are Trying
Exclusive News
edi compliance with AI
AI Is Transforming EDI Compliance Services
Exclusive News
companies using big data
5 Industries Driving Big Data Technology Growth
Big Data Exclusive

Stay Connected

1.2KFollowersLike
33.7KFollowersFollow
222FollowersPin

You Might also Like

social media cybersecurity
ExclusiveITRisk ManagementSecurity

Understanding the Cybersecurity Implications of Daily Social Media Use

5 Min Read

Walking Through The Front Door: SQL Injections

7 Min Read

Big Data Ethics and Your Privacy [INFOGRAPHIC]

4 Min Read

A Small Idea with Big Implications

6 Min Read

SmartData Collective is one of the largest & trusted community covering technical content about Big Data, BI, Cloud, Analytics, Artificial Intelligence, IoT & more.

ai chatbot
The Art of Conversation: Enhancing Chatbots with Advanced AI Prompts
Chatbots
AI and chatbots
Chatbots and SEO: How Can Chatbots Improve Your SEO Ranking?
Artificial Intelligence Chatbots Exclusive

Quick Link

  • About
  • Contact
  • Privacy
Follow US
© 2008-25 SmartData Collective. All Rights Reserved.
Welcome Back!

Sign in to your account

Username or Email Address
Password

Lost your password?