Matt Dancho (Business Science) Profile picture
Apr 20, 2023 25 tweets 7 min read Read on X
BIG NEWS: #ChatGPT breaks #Python vs #R Barriers in Data Science!

Data science teams everywhere rejoice.

A mind-blowing thread (with a FULL chatgpt prompt walkthrough). 🧵

#datascience #rstats
It's NOT R VS Python ANYMORE!

This is 1 example of how ChatGPT can speed up data science & GET R & PYTHON people working together.

(it blew my mind)
This example combines #R, #Python, and #Docker.

I created this example in under 10 minutes from start to finish.
I’m an R guy.

And I prefer doing my business research & analysis in R.

It's awesome. It has:

1. Tidyverse - data wrangling + visualization
2. Tidymodels - Machine Learning
3. Shiny - Apps
But the rest of my team prefers Python.

And they don't like R... it's just weird to them.

So I wanted to see if I could show them how we could work together...
Let’s start with a prompt.

I asked chatgpt to find a data set that I used for this example. Image
...ChatGPT found it... Image
... And gave me this code to read the data... Image
I prefer the tidyverse, so I asked Chatgpt to update the code. Image
That looks better. Image
With the data in hand, it’s time for some Data Science.

I asked this simple question. Image
ChatGPT's response was impressive. Image
But, even though I’m an R guy, my team uses Python for Deployment…

In the past, that’s a huge problem.

(resulting in days of translations from R to Python with Google and StackOverflow)
But now, that’s 1 minute of effort with chatGPT.

Can I show you?
I asked chatgpt to convert the R script to python... Image
And in 10 seconds chatgpt made this python code with pandas and scikit learn. Image
ChatGPT did in 10 seconds something that would have taken me 2 hours.

But let’s continue.

The reason we had to convert to Python is for “deployment”

Deployment is just a fancy word for allowing others to access my model so they can use it on-demand.
So I asked chatGPT this: Image
And ChatGPT made me a Python API using FastAPI. Image
But this code is useless…

… Without a docker environment.

So I asked chatGPT to make one: Image
And chatGPT delivered my Docker Environment's Dockerfile: Image
So in under 10 minutes, I had ChatGPT:

1. Make my research script in R.

2. Create my production script in Python for my Team

3. And create the API + Docker File to deploy it.
But when I showed my Python team, instead of excited...

...They were worried.

And I said, "Listen. There's nothing to be afraid of."

"ChatGPT is a productivity enhancer."

They didn't believe me.
My Conclusion:

You have a choice. You can rule AI.

Or, you can let AI rule you.

What do you think the better choice is?
If you want help, I'd like you to join me on a free #ChatGPT for #DataScientists Workshop on April 26th. And I will help you Rule AI.

What's the next step?

👉Register Here: us02web.zoom.us/webinar/regist… Image

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In 4 minutes, I'll demolish your confusion.

Let's go! Image
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Discrete distributions are used when the data can take on only specific, distinct values. These values are often integers, like the number of sales calls made or the number of customers that converted.
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It's packed with data on: cost drops, efficiency, benchmarks, adoption.

This report is a cheat code for your career in 2026.

I pulled the most important charts + what they mean for your career: 🧵 Image
First: this isn’t “AI hype.”

It’s measured trends on what’s getting cheaper, what’s getting better, and what’s spreading across the economy and regulation.

(Bookmark this. You’ll reuse it.)
1. Cost + efficiency

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That’s why AI is moving from “demo” to “default.”
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This 277-page PDF unlocks the secrets of Large Language Models.

Here's what's inside: 🧵 Image
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This is the foundation of large language models, and common pre-training methods and model architectures will be discussed here. Image
Chapter 2 introduces generative models, which are the large language models we commonly refer to today.

After presenting the basic process of building these models, you explore how to scale up model training and handle long texts. Image
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Feb 20
🚨 BREAKING: Microsoft launches a free Python library that converts ANY document to Markdown

Introducing Markitdown. Let me explain. 🧵 Image
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MarkItDown is a lightweight Python utility for converting various files to Markdown for use with LLMs and related text analysis pipelines. Image
2. Supported Documents

MarkItDown supports:

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Read 8 tweets

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