I use that IQ since I am preparing cohorts for health investment research.
External reviews
External reviews are not included in the AWS star rating for the product.
Collaboration and traceability boost team's efficiency
What is our primary use case?
What is most valuable?
Traceability and collaboration are essential for me. I have eight or nine engineers working together. Integration with machine learning is also crucial for us.
Additionally, traceability is vital since I manage many cohorts, and collaboration is key as I have multiple engineers substituting for one another.
What needs improvement?
I need more experience in the sector, which is health. The license is very expensive. It would be great to have an intermediate license for basic treatments that do not require extensive experience.
For how long have I used the solution?
I have used the solution for six or seven years.
What do I think about the scalability of the solution?
The solution is scalable. I rate it nine out of ten.
How are customer service and support?
The customer service team is helpful and responsive, more or less on time. I rated them seven out of ten.
How would you rate customer service and support?
Neutral
How was the initial setup?
Deployment should take four or five hours, yet customization takes more time.
What about the implementation team?
Two or three engineers took part in the installation process.
What was our ROI?
I do not care about financial benefits, however, I am sure they exist. It has supported our compliance with industry regulations one hundred percent.
What's my experience with pricing, setup cost, and licensing?
There are no extra expenses beyond the existing licensing cost.
Which other solutions did I evaluate?
What other advice do I have?
The user interface is useful for collaborative tools that allow multiple professionals to work together.
I rate the overall product as eight out of ten.
The platform organizes workflows visually and efficiently
What is our primary use case?
Dataiku is an AI platform that we use for oil and gas exploration. Even though I can't provide specific details, this is the primary use case for us.
What is most valuable?
One of the valuable features of Dataiku is the workflow capability. It allows us to organize a workflow efficiently. The platform has a visual interface, making it much easier for educated professionals to organize their work. This feature is useful because it simplifies tasks and eliminates the need for a data scientist. If you are knowledgeable about AI, you can directly write using primitive tools like Pantera flow, PyTorch, and Scikit-learn. However, Dataiku makes this process much easier.
What needs improvement?
One area for improvement is the need for more capabilities similar to those provided by NVIDIA for parallel machine learning training. We still encounter some integration issues.
For how long have I used the solution?
We have been using Dataiku for three years.
How are customer service and support?
Customer service is somewhat different because Dataiku partners with local industry experts who understand the business better and provide support. It can be challenging to determine the provider of better support, however, overall, the support is good.
How would you rate customer service and support?
Positive
Which solution did I use previously and why did I switch?
We are only using Dataiku.
What was our ROI?
I believe the return on investment looks positive.
Which other solutions did I evaluate?
I considered another option that excels in parallel processing. However, it falls short in other areas. No product is perfect. If these two solutions worked together, it would be advantageous. Unfortunately, one has strengths in certain areas while the other excels in another.
What other advice do I have?
Why not? BHP sold the energy part to a company called Woodside. It has changed because they are now part of Woodside.
Overall, I rate the product eight out of ten.
Dataiku for Grad Student
Advanced features might have a steep learning curve for beginners
Pricing can be high for students and small projects
ML
very good
Data okie for Project Management
Streamlining Data Science Workflows
Helpful for project collaboration
Gives different aspects of modeling approaches and good for multiple teams' collaboration
What is our primary use case?
My current client has Dataiku. We do sentiment analysis and some small large language models right now. We use Dataiku as a Jupyter Notebook.
We use it a lot for marketing and analytics. The marketing and sales team uses Dataiku.
What is most valuable?
It's got good feature selection and creation of feature stores, and it also gives different aspects of modeling approaches. There are a lot of similarities with DataRobot.
So feature selection, different modeling, and financial metrics are good aspects.
What needs improvement?
The no-code/low-code aspect, where DataRobot doesn't need much coding at all.
Dataiku still needs some coding, and that could be a difference where business data scientists would go for DataRobot more than Dataiku because you still have to code and use either Python or R, or Scala. However, with DataRobot, you don't have to do that at all.
For how long have I used the solution?
I've used Dataiku for about four years.
How are customer service and support?
The company is based in France. But they're more and more in America as well.
So, the support was okay.
How would you rate customer service and support?
Positive
Which solution did I use previously and why did I switch?
I used DataRobot. Dataiku has a different kind of structure to it. It's not financially heavy like DataRobot, which caters more to financial companies, like banks. Dataiku doesn't have that yet. I think they are also working on that area. But yeah, there are some key differences between the two products.
DataRobot has an additional feature with financial firms that it creates all these financial metrics when you run a time series analysis. Those things I have not seen in Dataiku.
If any financial company is choosing between DataRobot and Dataiku, they will definitely go for DataRobot because it creates all these financial metrics. It creates deltas, time series, time difference fields, and things like that. So, that is an added feature that DataRobot has.
What's my experience with pricing, setup cost, and licensing?
Pricing is pretty steep. Dataiku is also not that cheap. It depends on the client and how much they want to spend towards a tool.
What other advice do I have?
Overall, I would rate it an eight out of ten, except for some coding things that are there, which some people may not want to do, like certain business data scientists.
Dataiku is good for multiple teams' collaboration. If many teams are collaborating and sharing Jupyter notebooks, it's very useful. It has a good data processing structure and includes most of the models. I haven't checked the large language models in it yet, but it's a pretty good tool. It does well with analytics and has a sound structure on the back end.
Some coding aspects are necessary, but it generates SQL code, which is an added feature. A lot of data engineers like Dataiku because it generates SQL code on the right side.
Best tool to Analysis and Presenting data in different Dimention
Dataiku is the best tool to present data different views and representation data.
It can made available with other tool where they can connect the date to analyze it.