Sunday, April 18, 2021
  • Setup menu at Appearance » Menus and assign menu to Top Bar Navigation
Advertisement
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News
No Result
View All Result
NikolaNews
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News
No Result
View All Result
NikolaNews
No Result
View All Result
Home Data Science

Visually Explained: What Companies Get Wrong About Failure?

February 14, 2020
in Data Science
Visually Explained: What Companies Get Wrong About Failure?
585
SHARES
3.3k
VIEWS
Share on FacebookShare on Twitter

Many traditional businesses hate to fail. They embrace concepts such as Fail Fast in public, but deep inside their hearts, they are scared to fail. Failure is what gives corporate employees sleepless nights. In fact, many corporate initiatives fail, such as data science projects, for example. Why is failure so unloved, and what can we do about it? We have to change the way we think about failure.

Failure is not an event, it’s a process.

You might also like

DSC Weekly Digest 12 April 2021

6 Limitations of Desktop System That QuickBooks Hosting Helps Overcome

Robust Artificial Intelligence of Document Attestation to Ensure Identity Theft

This distinction is subtle at first glance, but it makes a huge difference in practice.

Here’s an analogy: How would you describe a child’s attempt to learn to walk? You probably wouldn’t say something along the lines of: “This kid fails to walk properly, he’s stumbling and bumping into people all the time, it hurts looking at it.” Instead, you would likely applaud every progress, no matter how small. Each step is part of a process, not a singular, stand-alone failure. The ultimate goal is to succeed and learn walking.

Failure is an inevitable process that is geared towards success.

Think of failures as of a chain of attempts. How many attempts does it take to succeed? Don’t expect the first attempt to be successful.

You’re still scared to fail?

Make more, but smaller attempts. Many data science projects fail because we start huge initiatives, which are expected to succeed instantly. “We can’t afford to fail.” goes the saying. What if you split larger initiatives into smaller ones and allow them to progress? Some will stumble and fall, others will evolve and mature. Eventually, the cumulative attempts will lead to greater success. 

You can translate Fail Fast into Fail Small and Often.
Enjoy the process!

I work in the field of Data & Technology Literacy. Please leave a comment, shoot me an email at [email protected], or reach out to me on LinkedIn.


Credit: Data Science Central By: Rafael Knuth

Previous Post

Sky-High Tesla Stock May Have Met Its Match in the Coronavirus

Next Post

Black Hat Asia 2020 postponed due to coronavirus concerns

Related Posts

DSC Weekly Digest 01 March 2021
Data Science

DSC Weekly Digest 12 April 2021

April 14, 2021
6 Limitations of Desktop System That QuickBooks Hosting Helps Overcome
Data Science

6 Limitations of Desktop System That QuickBooks Hosting Helps Overcome

April 13, 2021
Robust Artificial Intelligence of Document Attestation to Ensure Identity Theft
Data Science

Robust Artificial Intelligence of Document Attestation to Ensure Identity Theft

April 13, 2021
Trends in custom software development in 2021
Data Science

Trends in custom software development in 2021

April 13, 2021
Epoch and Map of the Energy Transition through the Consensus Validator
Data Science

Epoch and Map of the Energy Transition through the Consensus Validator

April 13, 2021
Next Post
Black Hat Asia 2020 postponed due to coronavirus concerns

Black Hat Asia 2020 postponed due to coronavirus concerns

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Recommended

Plasticity in Deep Learning: Dynamic Adaptations for AI Self-Driving Cars

Plasticity in Deep Learning: Dynamic Adaptations for AI Self-Driving Cars

January 6, 2019
Microsoft, Google Use Artificial Intelligence to Fight Hackers

Microsoft, Google Use Artificial Intelligence to Fight Hackers

January 6, 2019

Categories

  • Artificial Intelligence
  • Big Data
  • Blockchain
  • Crypto News
  • Data Science
  • Digital Marketing
  • Internet Privacy
  • Internet Security
  • Learn to Code
  • Machine Learning
  • Marketing Technology
  • Neural Networks
  • Technology Companies

Don't miss it

Researchers at MIT DAI Lab Have Recently Built Cardea: A Machine Learning Framework That Turns Health Care Data Into Insights
Machine Learning

Researchers at MIT DAI Lab Have Recently Built Cardea: A Machine Learning Framework That Turns Health Care Data Into Insights

April 18, 2021
Automating Drug Discovery With Machine Learning
Machine Learning

Automating Drug Discovery With Machine Learning

April 18, 2021
Twitter aims to fight bias by examining its own machine learning algorithms
Machine Learning

Twitter aims to fight bias by examining its own machine learning algorithms

April 18, 2021
Make Machine Learning Interpretable with Shapash
Machine Learning

Make Machine Learning Interpretable with Shapash

April 18, 2021
Why the Patent Classification System Needs an Update
Machine Learning

Why the Patent Classification System Needs an Update

April 18, 2021
What are the different roles within cybersecurity?
Internet Privacy

What are the different roles within cybersecurity?

April 18, 2021
NikolaNews

NikolaNews.com is an online News Portal which aims to share news about blockchain, AI, Big Data, and Data Privacy and more!

What’s New Here?

  • Researchers at MIT DAI Lab Have Recently Built Cardea: A Machine Learning Framework That Turns Health Care Data Into Insights April 18, 2021
  • Automating Drug Discovery With Machine Learning April 18, 2021
  • Twitter aims to fight bias by examining its own machine learning algorithms April 18, 2021
  • Make Machine Learning Interpretable with Shapash April 18, 2021

Subscribe to get more!

© 2019 NikolaNews.com - Global Tech Updates

No Result
View All Result
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News

© 2019 NikolaNews.com - Global Tech Updates