Skip to content
My journey as a Data Scientist
• THE HUMAN SIDE OF AI •
Primary Navigation Menu
Menu
  • Home
  • Table of Contents
  • Blog
    • Career tips
    • Interviews
    • Conferences
    • Notebooks
      • R
      • Python
    • Recommendations
  • About
    • Contact
    • LinkedIn

datascience

How to manage a data science team? Interview with Kasper Pors Hansen, former Senior Manager in Arla Foods.

2021-02-17
By: Sandra
On: 17/02/2021
In: Interviews
With: 6 Comments

How to manage a data science team? What are the skills of future in a data driven world? Learn from experience of former Arla Foods data and analytics area leader.Read More →

6 data science oriented podcasts you should check out!

2021-02-11
By: Sandra Radgowska
On: 11/02/2021
In: Data Science, Recommendations
With: 0 Comments

Staying up-to-date in data driven reality can be really demanding! Those 6 podcasts will help you to follow all trends and news from the world of Machine Learning, AI and Data Science.Read More →

Introduction to text mining and sentiment analysis in R with Jane Austen’s novels

2021-02-04
By: Sandra Radgowska
On: 04/02/2021
In: Notebooks, R
With: 1 Comment

Sentiment analysis provides a way to understand the attitudes and opinions expressed in texts. In this article, I have explored how to approach sentiment analysis using tidy data principles.Read More →

How to do exploratory data analysis in 10 steps in R and Python

2020-11-16
By: Sandra Radgowska
On: 16/11/2020
In: Python, R
With: 0 Comments

One of the most common dilemmas for beginners in Data Science is whether to learn Python or R. People tend to focus on the technology and tools but forgot that the key to success is understanding your data. It doesn’t matter whether you’ll choose Excel, Python, R or Julia –Read More →

How to improve your dataviz skills in 6 steps with Cole Nussbaumer Knaflic

2020-10-26
By: Sandra Radgowska
On: 26/10/2020
In: Notebooks, R, Recommendations
With: 1 Comment

People who can call themselves “bookworms” tend to have their favourite positions – books, which had a true impact on their life. Assuming that you are one of data enthusiasts (or hopefully become one of us after reading this post), I would like to share with you a true pearlRead More →

Looking for anything specific?

Welcome to DataScientistDiary!

I’m so glad you’re there!

My name is Sandra and I’ve created this website to share my enthusiasm about data science, machine learning and data driven reality.

I’ll do my best so that you got inspired and caught “this virus” called passion. 🙂

Recent Posts

  • When is it worth for you team to build MLOps tool from scratch? Interview with Jakub Czakon, Chief Marketing Officer and Data Scientist from Neptune.ai.
  • 31 Days of Coding – spring challenge for R/Python programming skills improvement.
  • Seeking for the right career path according to your talents with joint forces of data science and CliftonStrengths assessment.
  • How Deep Learning can be used for social good? Interview with Karol Majek, the expert in the field of mobile robotics, self-driving cars and computer vision.
  • Using Azure Databricks MLFlow to track ML experiments.

Tags

AI algorithms API Big data books business career development charts classification coding conferences correlation data analytics Data Driven data preparation data preprocessing datascience Data Science data visualization dataviz EDA exploratory data analysis full stack data science graphs inspiration interview kNN leadership learning Machine Learning management mentor mentoring ML motivation plots python r R programming sentiment analysis soft skills software engineering Spotify API tips web scrapping

Archives

  • April 2022
  • February 2022
  • January 2022
  • December 2021
  • November 2021
  • October 2021
  • September 2021
  • August 2021
  • July 2021
  • June 2021
  • May 2021
  • April 2021
  • March 2021
  • February 2021
  • January 2021
  • December 2020
  • November 2020
  • October 2020

Designed using Hoot Business. Powered by WordPress.

This site uses cookies: Find out more.