Julius is a promising new AI service for analyzing data. Iβve been using it to make sense of β and visualize β my analytics dashboard and find meaning in giant datasets.
You can use it for virtually any type of business or scientific data, or simply to categorize survey responses or interpret spreadsheets. Read on for whatβs notable about Julius and other new approaches to AI data analysis.
How Iβm using Julius
Julius has helped me make revenue projections and identify reader retention patterns. It can turn anonymized analytics data into specific actionable observations. Substack, Google Analytics, and other platforms offer limited dashboards for understanding readership trends. I have neither the budget to hire a data analyst nor the time to do deep analysis of large datasets without help. So Julius is handy at providing me with insights I can further explore. I think of it as generating idea leads β or data idea seeds. π±
Itβs remarkably versatile. You can use it to break down a scientific or geographic study, financial data, or anything else. It runs Python code, so you can replicate its analysis. It builds on the top models from OpenAI and Anthropic, tuning AI specifically to focus on data. Β Β
What you can use it for
Here are examples Juliusβ team shared with me, now that there are more than a million people using it:Β
Academic research data Biology experiment results, bioinformatics datasets, psychology doctoral thesis data, and survey data analysis.
Business data Google Ad reports, cybersecurity data, a product managerβs product usage and behavioral data, and sales forecasting.
Data science analysis Predicting housing prices based on economics data, clustering customer segments, and detecting credit card fraud.Β
How Julius differs from ChatGPT
Julius lets you upload huge data files β up to 8gb on paid accounts.
You can use Python as well as R, a preferred coding language for academic researchers.
With Julius, you can access extra shared server computing horsepower β both CPU + RAM. Basically, it can crunch more numbers faster than other AI chat services, if youβre on a paid account.
You can repeatedly reference data files once youβve uploaded them. If youβre using Julius for free, data may not be stored, though. Iβve had to re-upload files.
You can install special analysis packages/libraries for advanced projects.Β
Example: Hereβs my visualization thread with Julius exploring an Our World in Data dataset on Kaggle showing global energy consumption.
Pricing: Free for 15 queries a month; $20 for 250 queries; or $45 for unlimited. Thereβs a 50% discount for students and academics if you use a .edu account or email team@julius.ai.Β
Privacy: Julius erases data from company servers when data is deleted within the app, and each user has access only to their own data within the companyβs secure notebook file storage. Per its privacy policy, Julius works with various AI models that arenβt allowed to train on its user data.
Other AI tools for data analysis
Wobby
Wobby lets you import your own data, paste in a URL, or search for data sources. You can upload a .csv or Excel file or even copy and paste something from a spreadsheet. Youβll soon also be able to upload a PDF.
Once your data is uploaded you can chat with it, visualize it, or draft a document summarizing key data insights with AI assistance.Β
The interface centers around the creation of documents. You can create standard documents or landscape-style slides. I prefer creating docs and slides in other tools, and I prefer the Julius interface for exploring datasets.
Wobby feels a bit rough around the edges so far in my testing. It has a lot of potential as a way to turn raw data into reports you can share with colleagues. I appreciate its versatility in letting you choose to upload or search for data. If youβre frequently generating internal reports about company data, it may save you time.
Co-founder and CEO Nathan Tetroashvili recently told me about news organizations using Wobby to streamline data analysis in Europe. In one case, a small news team used Wobby to visualize local election data. They created custom data visualizations for each locality that would have been much more time consuming and difficult to produce with their prior tools.
Pricing: After a 10-day free trial itβs $36/month billed annually for individuals; more for teams.
Privacy: Wobby is incorporated under Belgian law and complies with GDPR rules that help safeguard data privacy. Read its policy for further details.
Watch a helpful, 8-minute demo video showing Tetroashvili using Wobby to analyze, visualize and draft a report about the gender breakdown of national parliaments in Scandinavia.
Bigdata is useful for analyzing market info, pricing data, job analytics β who is hiring β and other financial sources and stats.Β Itβs not for the casual user. Plans run $50 to $100/month billed annually, so I wonβt be maintaining a subscription. If youβre in finance you can likely expense it. If not, you can try it free for a month β like me β to see how AI analysis is progressing and to marvel at the kinds of questions it can answer.
ChatGPT works surprisingly well for analyzing big datasets. Tasked with breaking down global energy consumption data, it quickly produced a detailed analysis and a series of informative visualizations. Itβs also great for making sense of survey data.
Be sure to strip out names, email addresses, or other identifying or personal info before uploading data for analysis. On the free plan youβll have limited access to data analysis. For particularly tricky datasets, try a Custom GPT called Data Analyst.
Claude has also been helpful for data analysis. I use Claude Projects every day β hereβs why I find them useful β so I appreciate being able to analyze data within the context of a project Claude already understands.
Limitation: Unlike Julius and ChatGPT, it hasnβt accepted large data files Iβve tried to upload. But it has provided useful insights when Iβve given it survey data and other smaller datasets.
Perplexity is known as an AI-enhanced search engine, but it also functions well for analysis of uploaded data files. Hereβs how and why I find Perplexity so useful. Now Iβm using it for data analysis as well.
How it works: Before typing in a query, attach a data file for Perplexity to focus on. When I gave it a dataset of board game reviews I found on Kaggle β Perplexity suggested numerous useful avenues for research. It then provided clear, easy-to-understand analysis. Hereβs the thread and a screen recording.
Additional data resources
Kaggle has fascinating data sets, from the popularity of titles on Netflix, Hulu and Spotify to environmental, education and health data. Look first at the trending datasets.Β
Our World in Data is terrific at showcasing data; check the energy collection.
The Pudding publishes remarkable visual data essays.
The data journalism tool collection from
author is an excellent curated spot for new tools β AI and otherwise.Data.gov gives you direct free access to more than 300,000 US government data sets. Check out the most viewed datasets.
Hubspotβs guide to AI for data analysis sums up enterprise considerations and platforms relevant for big organizations.
Sponsored Message
Capture Every Word With VoiceHub
Meet VoiceHub, the new productivity platform from Rev. Itβs revolutionizing how businessesβfrom newsrooms to law firmsβhandle their most valuable asset: conversations. Think of it as your team's AI-powered conversation hub. While basic transcription tools might capture words, VoiceHub captures insights.
What sets VoiceHub apart? Its AI accuracy beats Microsoft, Google, and other enterprise services. But it's not just about accuracyβit's about changing how you use those accurate transcripts.
With VoiceHub, you get:
Universal capture of audio and video across mobile, desktop, and meetings
Best-in-class AI transcription in seconds
Custom AI templates that automatically extract insights & action items
Enterprise-grade security with SOC 2 Type II compliance and SSO
Seamless integration with major tools like Zoom and Slack
Thank you, your recommendation have been a great help
Good stuff Jeremy. Getting better and better...