# Build a Data Analyst Portfolio in 9 Minutes (Full Tutorial)

## Метаданные

- **Канал:** Avery Smith | Data Analyst
- **YouTube:** https://www.youtube.com/watch?v=0QqsQrt0f40
- **Дата:** 12.05.2026
- **Длительность:** 9:21
- **Просмотры:** 1,824
- **Источник:** https://ekstraktznaniy.ru/video/52855

## Описание

I made a tool that turns your GitHub projects into a real portfolio. Here's what it looks like in action.

BUILD YOUR OWN PORTFOLIO: https://dcj.app/mydatafolio-0QqsQr

💌 Join 10k+ aspiring data analysts & get my tips in your inbox weekly 👉 https://dcj.app/newsletter-0QqsQr
🆘 Feeling stuck in your data journey? Come to my next free "How to Land Your First Data Job" training 👉 https://dcj.app/training-0QqsQr
👩‍💻 Want to land a data job in less than 90 days? 👉 https://dcj.app/daa-0QqsQr
👔 Ace The Interview with Confidence 👉 https://datacareerjumpstart.com/interviewsimulator

⌚ TIMESTAMPS
00:20 – Meet My Data Folio
01:50 – First project
05:35 – Second project
07:58 – Finished portfolio
08:20 – Time to build yours

🔗 CONNECT WITH GRAHAM
🤝 LinkedIn: https://linkedin.com/in/graham-smith-2656931a6/

🔗 CONNECT WITH AVERY
🎥 YouTube Channel: https://youtube.com/@averysmith
🤝 LinkedIn: https://linkedin.com/in/averyjsmith/
📸 Instagram: https://instagram.com/datacareerjumpstart
🎵 TikTok: https://ti

## Транскрипт

### Meet My Data Folio [0:20]

portfolio from scratch is called My DataFolio, and it's a new tool that lets you build a really beautiful portfolio website pretty dang quickly. And actually, full disclosure, it's actually made by me. Uh and it's what I would like to have in a data portfolio. So, link in the description down below to try it out. All right, so the first thing that we're going to do is set up Graham's profile on My DataFolio. Just give a name, a portfolio URL. We'll just do a headline of data analyst. And for a bio, what should your bio be? Something like that? — Looks great. — Data analyst with a BS in statistics located Provo, Utah. We'll also add a quick profile picture, which I will just steal from Graham's LinkedIn, even though it's not the best photo of all time. There we go. What skills do you have, Graham? — Python, R, cell, Pandas, Power BI. All right. Power BI. We can add some other ones like Claude is another one that you have used. Anything else? ChatGPT. Okay, awesome. We'll go ahead and link to your GitHub profile as well and your LinkedIn, so that way people can contact you. And we'll go ahead and upload your resume. And then, what color scheme do you like? — with the nice forest green right there. Nice forest green. We'll leave your contact section blank for right now. And do you need to do any password protection for any of your projects? — I don't think so. Do you have a custom domain you'd like to use? Not at this moment in time. Okay, let's go ahead and hit save profile. Okay, and just like that, you have a portfolio already made for you. Boom. — Woah, that's pretty cool. — Yeah, but uh you'll notice this portfolio is missing something pretty important. Any work. Anything. Any projects, right? — Yeah. So, let's go ahead and uh add some

### First project [1:50]

projects. So, when you're adding a project, there's three different ways that we can do it. The right manually, which is the way I used to do all of my projects. And but we also have two other AI features, which is an AI import and an AI guided form. We're going to focus today, just cuz we're in a time crunch to try and do this as quickly as possible, with the AI import, which basically allows you to import any sort of GitHub repos, Tableau public links, any files like Excel files or Python files or R files you've done, and write the first draft of your project for you. GitHub repos are something we can try? Oh, we got a couple that we can try. Okay, so let's go ahead and try the AI import. All right, this is Graham's GitHub uh repositories. It's definitely a little bit messy, definitely maybe needs some love, but um let's take a look. Which one of these repos do you feel like could be your first project? Which one would be good? — Let's start with the non-parametric log-linear medical costs. Okay, we'll start here. Yeah. Okay, awesome. And what is what exactly is this repo, I guess? — It's a school project that delves into different like information data to quantify uh like how smoking and different factors affect medical costs on an annual basis. — like a homework assignment? — Yes. So like anyone who has done any sort of homework assignment, this is basically just a homework assignment. Yes. And it looks like it's in Python? Yeah. Okay, interesting. I don't know much about this, so we're just going to try it. So all you have to do is grab uh the repo link right here, go back to our AI import, go ahead and give the URL. Is there any other details that we should give it or any other instructions? I don't know. All right, let's just go ahead and hit generate project article. This will take a few seconds to read through everything inside of this GitHub repo and actually do the write-up. All right, so it just finished doing your project write-up here. It made the title non-parametric and log-linear medical cost analysis. That's an interesting name. Okay, we're just going to keep it as it is. It gave you this URL slug. summary. A case study that combines non-parametric techniques and log-linear modeling to predict and interpret highly skewed medical cost data, improving forecasting robustness and interpretability. Sounds pretty professional. — That sounds very professional. And then here's an overview, the problem, the approach, data and methodology, key findings, results and impact, conclusion. All written for you. Let's look at the uh results and impact. It says more Do you remember anything about this project? — Yeah. Take a look. Can you read these results and impact and see if it makes sense or not? — Yeah. Do you want me to Yeah, read it aloud. — Okay. More reliable budgeting, improved forecasting accuracy on aggregate expenditures helps finance teams set reserve level with greater confidence. — remember that at all? Uh yes. There was like a They had like standard questions with like the data set for the like the presentation project. And there was like findings that there was like very significant correlation between like different factors and their predicted cost difference. — it's not necessarily wrong. — No. Okay. What about the Let's do this one, I guess, right here. — The log-linear coefficients in the two-part decomposition allowed me to identify which variables most strongly influenced utilization versus conditional costs, guiding targeted interventions. That's also true because they're like filtered out different factors and variables. And I think smoking was by far the like most influential factor. — Okay. So, it gets some of the results right. I guess it also said that the log of the cost was a more stable coefficient and linear relationship. So, the log was the right way to do this modeling. Okay, so this doesn't feel 100% wrong to you. — No. — Okay, cool. And it's telling you kind of an overview of the project, what the problem is, which is predicting the medical cost of something for like budgeting reasons. And then it gives you, you know, kind of how you did the data exploration, you did the transformations, and then the modeling, and then basically evaluate everything right. Okay. Very cool. So, we can hit save project right here on this project. And now if you go back to your portfolio and you hit refresh, boom! You got a project right here, right there, all ready for you to Real easy. That's what I like to hear. Okay, awesome. Let's do a another one. What is another project or another repo that we should do? Let's

### Second project [5:35]

do the NBA heat map. — let's do NBA heat map right here. Just going to copy and paste up here, go back to add project, AI import, paste this right here. Any other instructions? No, I think my dot MD files are pretty good. Okay, generate project article and we'll see what it does. All right, it just finished NBA shot heat map explorer. Let's see. So, I built an NBA shot heat map explorer to turn raw NBA shot and play-by-play data into actionable, visible, intuitive insights. Is that what this project's all about? — what it's about. — Okay, let's see. So, then it goes through problem, the approach, data and method methodology. So, you're getting the data from the NBA API. Correct. Okay, then doing some filtering, some special aggregation with a hex bin stuff going on. Okay, awesome. Then you're doing some kernel density estimators. Okay, great. Key findings, distinct row low profiles are clearly displayed. Hidden inefficiencies surface quickly. Strategic matchup. So, you can do team level heat maps to show. Okay, very cool. Visual artifact, very nice. So, obviously we're just pulling straight from the GitHub, right? So, it just has whatever you have in here, which I'm guessing it doesn't have like any saved images, right? — Not in that folder particularly, no. Okay, see. Well, that's something you could have told me earlier when I said, "Do you want to add anything else? " Okay, now you know. We can actually like go in and add those images as well. So, that would help you. So, let's go ahead and save project. Let's go back to our portfolio and let's get refresh on the full portfolio and boom, you got two projects. Now, I did see that on your LinkedIn the other day you had posted about this project, right? Yes. So, let's see. Here's your LinkedIn page and here's the image I saw that you posted. I'm going to actually right click on this image and I'm going to go back to our project. to the heat map explorer here. I'm going to upload that image as a cover image right here and see how it looks. Whoa. Let's go back, refresh. It looks way better. Boom, you open it up, it actually includes that image at the top now. So, I like that. Do we have any other images on your LinkedIn of this? No. Boo. Not yet? — Not yet. Okay, sweet. This is a project on our portfolio. It shows what different libraries you use in Python and obviously Python here. At the top, it will allow people to view your code and you have your full write-up down here. Um it allows people to see other projects. So, here's your other project once again. Um here's the different libraries you used here. Um and then you can always have your users go back to

### Finished portfolio [7:58]

your portfolio. You can send this to people. You can try dark mode or light mode. It has your GitHub, your LinkedIn, your resume, your little summary, your different skills up here at the top, your projects, and then a call to action down here at the bottom to work to get to work. That's awesome. Thank you so much. That's going to be very helpful for me, I think. — Okay, the other thing I wanted to show you is it actually we have these KPIs here for the pro plan of my datafolio, which actually shows you how many page

### Time to build yours [8:20]

views you have and how many visitors. So, I'm the only person who's visited, so I'm still the one. — So far. — But like basically, it'll let you see that this has four views, this has one view, so on and so forth. Um that This is kind of exciting cuz when someone actually looks at it, you'll know. Yeah, you can actually see if like a recruiter or a hiring person is actually looking at it. — Exactly. So, you can always edit the projects, share a unique project, and share your portfolio from right here. That's awesome. I'm excited to actually use this and get in there and edit a few things around. All right, there you have it, folks. I don't know how many minutes that took, but hopefully less than 20. And Graham went from having no portfolio, just like some loose homework projects or some projects that he's done in GitHub. You can even just upload a file, for instance, in up add projects. You can actually just upload like your Python file or your Excel file, and it will try to do its best. Obviously, the more information you give it, the better it'll do. But hopefully that gets you guys excited to go try out mydatafolio. com and try it out for themselves. — Yeah, I'm excited to go and actually try and apply to a few more jobs with this. — All right, link in the description, check it out. Let me know what you guys think.
