Im Rampenlicht
Anthropic vs. OpenAI: Die beiden KI-Giganten im Vergleich
Wir vergleichen Anthropic und OpenAI hinsichtlich Modellfähigkeiten, Sicherheitsphilosophie, Entwicklertools, Preisgestaltung und Unternehmenseinsatz, um Ihnen bei der Wahl der richtigen KI-Plattform zu helfen.
Khalid Abdelaty
23. März 2026
Training für 2 oder mehr Personen?Probiere es mit DataCamp for Business
Im Trend
12 GPT-4 Open-Source-Alternativen
GPT-4 Open-Source-Alternativen, die eine ähnliche Leistung bieten können und weniger Rechenressourcen für die Ausführung benötigen. Diese Projekte werden mit Anleitungen, Codequellen, Modellgewichten, Datensätzen und Chatbot-UI geliefert.
Abid Ali Awan
10. September 2024
12 GPT-4 Open-Source-Alternativen
GPT-4 Open-Source-Alternativen, die eine ähnliche Leistung bieten können und weniger Rechenressourcen für die Ausführung benötigen. Diese Projekte werden mit Anleitungen, Codequellen, Modellgewichten, Datensätzen und Chatbot-UI geliefert.
Abid Ali Awan
10. September 2024
Alle Beiträge
Correlation vs. Causation: Understanding the Difference in Data Analysis
Learn the critical difference between correlation and causation in data analysis. Understand real-world examples and avoid common pitfalls in interpreting data.
Richie Cotton
12. September 2024
Data Demystified: The Difference Between Data Science, Machine Learning, Deep Learning, and Artificial Intelligence
In the third entry of data demystified, we’ll define the most common pieces of jargon you hear in data science today. From machine learning to deep learning, here’s all the subfields of data you need to know.
Richie Cotton
1. September 2022
Data Demystified: What Exactly is Data?
Welcome to Data Demystified! A blog-series breaking down key concepts everyone should know about in data. In the first entry of the series, we’ll answer the most basic question of them all, what exactly is data?
Richie Cotton
1. September 2022
Data Demystified: What is A/B Testing?
In part seven of data demystified, we’ll break down one of the most common use cases of statistical analysis in data science: A/B testing.
Richie Cotton
1. September 2022
Data Demystified: Avoiding the AI Hype Trap
In part 11 of data demystified, we examine how AI is covered in the news, how it can lead to the AI hype trap, and how to not fall into it.
Richie Cotton
1. September 2022
Data Demystified: Quantitative vs. Qualitative Data
In the second entry of data demystified, we’ll take a look at the two most common data types: Quantitative vs Qualitative Data. For more data demystified blogs, check out the first entry in the series.
Richie Cotton
1. September 2022
Announcing Data Literacy Month
This September, we’re dedicating an entire month to covering data literacy. Here’s what you can expect.
Adel Nehme
1. September 2022
Data Demystified: The Four Types of Analytics
In the fourth entry of data demystified, we’ll break down the four types of analytics. From a descriptive to prescriptive, we’ll look at how analytics can answer the most pressing questions.
Richie Cotton
1. September 2022
Data Demystified: Data Visualizations that Capture Trends
In part eight of data demystified, we’ll dive deep into the world of data visualization, starting off with visualizations that capture trends.
Richie Cotton
1. September 2022
How Technical Recruiters Can Stay Competitive in Changing Economic Times
The current market dynamics, state of inflation and fears of a recession have made recruiting for technical talent even more complex. Despite this, there are opportunities for technical recruiters to stay competitive and beat out the competition for top top talent.
Meredith Esquivel
31. August 2022
Power BI vs Excel: Which Should You Use?
Learn the differences and similarities between Power BI and Excel, and when you should use each.
Joleen Bothma
24. Januar 2025
15 Best Machine Learning Books to Read in 2026
Machine learning is one of the hottest topics in data science. Here is a list of 15 books to break into the field or become an expert
Javier Canales Luna
31. Mai 2024