Home Artificial Intelligence Learn how to Use ChatGPT to Learn Data Science Faster, Even If You Are Already Advanced

Learn how to Use ChatGPT to Learn Data Science Faster, Even If You Are Already Advanced

1
Learn how to Use ChatGPT to Learn Data Science Faster, Even If You Are Already Advanced

Every part has modified in a brief time period. AI tools, like ChatGPT and GPT-4, are taking up and completely changing each education and the landscape of learning technical skills. I felt that I needed to jot down this text to deal with some essential things:

  1. In the brand new age of artificial intelligence, is it still essential to learn data science?
  2. If that’s the case, what’s one of the best solution to learn these skills by leveraging the brand new technologies which can be on the market? And the way would I try this if I had to start out once more, right away?
  3. What does the long run of the information science appear like?

As AI continues to evolve, will data scientists change into obsolete or will their role be more crucial than ever?

From a private perspective, I still feel that I add more value to my clients than simply the AI would, and I’ve been in a position to (at the very least) double my work output with these recent tools available. Without delay, I feel like AI won’t take my job, but, realistically, the long run is more uncertain than ever.

Before you get scared about jobs disappearing, let’s take a take a look at the next scenario: In some future, you run an organization that has AI doing all of your analytics be just right for you.

Who would you wish running the AI, prompting it, and overseeing it? Would you wish someone with a background in data science or software engineering to oversee these programs or would you want someone who’s untrained?

Image by writer

I feel the reply is pretty obvious. You’d want someone with experience and knowledge of tips on how to work with data running these AI systems.

Within the short term, this scenario is hopefully hypothetical. Nevertheless it does give me some confidence that some aspect of those skills have resilience.

Even when the landscape changes to where data scientists are doing less hands-on coding, I still feel like these skills you develop from learning this field can be very useful in a world more heavily integrated with AI. AI is grounded in data science, and at some level we’re integrated into this method greater than other careers.

Along with that, AI still hallucinates, and we are going to need as many individuals as possible with good knowledge to oversee it and act as a feedback loop.

While I’m uncertain in regards to the future of information scientists work, there’s one thing I’m quite certain about: data, analytics, and AI will change into an excellent larger a part of our lives moving forward. Don’t you’re thinking that that individuals who’ve learned these domains can be arrange for more relative success as well?

This text would end here if I didn’t think it was still price learning data science. To be clear, I still think it continues to be 100% price it. But, to be honest, learning just data science isn’t enough anymore. You’ll want to learn tips on how to use recent AI tools as well.

The funny thing is learning each data science and these AI tools is less complicated than learning just data science alone. Let me explain.

Because it so happens, you’re entering at the right time to learn these two domains together.

Image by writer

For those who learn data science by leveraging the brand new AI tools which can be on the market, you get a twofold profit:

  1. You get a more personalized and iterative education experience from learning the information domain with the AI
  2. You furthermore mght get to upskill in AI tools at the identical time.

You get twice the profit for about half the work if my calculations are correct.

If the power to make use of AI tools can enable you to land a job and do higher work, it is healthier to know tips on how to work with them than to disregard them. Within the last three months, I feel like I’ve learned more about data science than I actually have prior to now three years combined. I attribute the vast majority of this to using ChatGPT.

Image by writer

So, how do you do that? How do you truly learn data science with AI?

This is strictly what I’d do if I had to start out over with all these tools available to me.

Step 1: Develop A Roadmap

I’d develop a roadmap. You’ll be able to do that by searching through other courses or by having a conversation with ChatGPT. You’ll be able to literally ask it to make you an information science learning roadmap based in your learning objectives.

Image by writer

For those who don’t have learning objectives, you can too ask it to create a listing for you and you’ll find ones you want.

For those who want more details about developing educational roadmaps, take a look at this text where I’m going more in-depth in regards to the subject.

Step 2: Design ChatGPT to Be My Tutor

I’d design ChatGPT to be my tutor. You’ll be able to create personas with GPT-4, which might be my favorite feature. You should use a prompt like this:

On this scenario, you’re among the finest data science teachers on the planet. Please answer my data science questions in a way that may help me develop one of the best understanding of the domain. Please use many real-world or practical examples and provides me practice problems which can be relevant along the way in which.

Step 3: Develop a Course of Study

I’m almost definitely biased, but I feel that free courses or paid courses, like mine, are still an excellent option for making a structure for learning. As you undergo the course of study, you’ll be able to ask your ChatGPT tutor to provide you examples, expand on topics, and provide you with practice problems.

Step 4: Try Advanced Tools Like AutoGPT

For those who’re just a little more advanced on the AI front, you can use a tool like AutoGPT to generate a course curriculum for you. I could try to do that and see what it comes up with. If I do, I’ll share it on my GitHub. I also interviewed GPT-4 on my podcast where I’m going more in-depth about what GPT-4 is.

Step 5: Do Projects

For those who’re already comfortable with coding, you can probably skip to doing projects. I actually have personally learned so much from doing projects in tandem with ChatGPT. I did this for the real estate Kaggle challenge.

Whether it is your very first project, just asking for it to do things is high-quality, but as you progress, you would like to be more intentional and interactive about how you utilize it.

Let’s compare how a beginner versus a complicated practitioner should go about learning on a project.

A Beginner’s Project Walkthrough

An example of a beginner’s project walkthrough could appear like this:

  1. You feed ChatGPT the knowledge in regards to the rows and columns of the information
  2. You ask it to create boilerplate code to explore this data for null values, outliers, and normality
  3. You ask it what questions you must ask of this data
  4. You ask it to scrub the information and construct the model so that you can make a prediction on the dependent variable

While it could look like it’s doing all of the be just right for you, you continue to need to get this project to run in your environment. You might be also prompting and problem solving as you go along.

There isn’t a guarantee that it would work like there’s while you’re copying another person’s project, so I feel like this can be a nice learning middle ground for involvement.

An Advanced Practitioner’s Project Walkthrough

Now, let’s take into consideration how a more advanced practitioner would use this:

1. You could possibly follow the identical steps of generating boilerplate code, but this must be expanded upon. So, it is advisable to experiment with more hands-on exploration of the information and hypothesis testing. Perhaps, select one or two questions you would like to answer with data and descriptive statistics and begin analyzing it.

Image by writer

2. For somebody who has done a number of projects, I like to recommend generating a number of the code yourself. Let’s say you made a straightforward bar chart in plotly. You could possibly feed that in and ask ChatGPT to reformat it, to vary the colour or the dimensions, etc.

Image by writer

By doing this, you’ll be able to rapidly iterate on visualizations, and you’ll be able to see in real time how different tweaks to the code change the graph. This immediate feedback is great for learning.

Image by writer

3. I also think it is necessary that you simply review these changes and see how they were made. Also if you happen to don’t understand something, just ask ChatGPT right there to expand on what it did.

4. More advanced practitioners also needs to focus more heavily on the information engineering and the pipelines for productionizing code. These are things that you simply still must be fairly hands-on with. I discovered that ChatGPT was in a position to get me a part of the way in which there, but I needed to do lots of debugging myself.

5. From there, chances are you’ll need to undergo and have the AI run some algorithms and do parameter tuning. To be honest, I feel this can be the part of information science that can be automated the fastest. I feel parameter tuning will see diminishing returns for normal practitioners, but perhaps not for the best level Kagglers.

6. You need to focus your time on feature engineering and have creation. This can be something that the AI models can assist with, but not completely master. After you’ve got some decent models, see what data you’ll be able to add, what features you’ll be able to create, or what transforms you’ll be able to do to extend your results.

In a world with these advanced AI tools, I feel it’s much more essential to do projects than ever. You’ve to construct things, and share your work. Fortunately, with these AI tools, it is usually easier than ever to try this. It’s easier produce an online app. It’s easier to work with recent packages that you simply’ve never worked with before.

Image by writer

I’d highly encourage you to create real-world impact and tangible things in your data science work. That can be the brand new solution to differentiate when others are also using these tools to learn and construct.

The world is changing, and so is data science. Are you able to embrace the challenge and create a real-world impact together with your projects?

I alluded to it earlier, but I feel the way in which all of us work is changing. I feel it’s an uncertain time for all fields, including data science.

Alternatively, I feel that data science is a wonderful mixture of technical and problem-solving skills that scale well to almost any recent world or field.

I’ve talked at length in my podcast about how I feel data science is considered one of the closest fields to pure entrepreneurship on the market. I feel that, in a world modified by AI, we are going to must leverage that entrepreneurial spirit as much as possible.

1 COMMENT

LEAVE A REPLY

Please enter your comment!
Please enter your name here