You’ve explored the power of GPT-3 & ChatGPT; now you can apply that power to your own data by bringing GPT-3 to your database with MindsDB, to deliver additional insights & value to your existing data.
MindsDB is an Open-Source ML Platform for Developers
Well done launching such a richly featured product 🔥!
I was wondering - do you allow users to train a model against existing data in one's database? And as part of the training do you allow them modify parameters etc?
@ed_forson absolutely! please join our community on slack, Patricio Cerda from our team, has implemented the ability to finetune based on your data.
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@ed_forson Yes, MindsDB allows users to train models against existing data in their database. The training process involves feeding the data into the MindsDB engine, which uses machine learning algorithms to learn the relationships between the input features and the target variables. During the training process, users have the option to modify various parameters, such as the learning rate, the number of trees, the maximum depth of the trees, and more, to optimize the performance of the model.
In addition, MindsDB provides a user-friendly interface that makes it easy for users to train, test, and deploy their models. The interface allows users to visualize their data, set their target variables, and perform feature engineering tasks like normalizing and transforming their data. Once the model is trained, users can evaluate its performance using metrics like accuracy, precision, recall, and F1 score, and make further adjustments as needed.
Overall, MindsDB is designed to be a flexible and user-friendly tool for building and deploying AI models and allows users to train models against their own data and adjust various parameters to optimize performance.
@usamaejaz Thanks a lot. MindsDB community will always be there to help you in your ML journey.
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Amazing product, amazing team, I see that there are some noSQL databases supported, any plans on integrating Google Firestore support on the product, do you have any sort of benchmarks for tabular data that show the performance of AutoML or the battery-included models?
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@david_cardozo1 We are constantly integrating and receiving contributions for new integrations, if you are a developer I encourage you to create an integration (or many!)
https://docs.mindsdb.com/contrib...
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@david_cardozo1 Hey David! Thanks for your kind words.
Here's a sheet that compares the default AutoML engine with other alternatives via the OpenML AutoML benchmarking suite: https://docs.google.com/spreadsh....
Hope it helps establish a rough idea on its performance! It's pretty old but we have a release procedure that helps us keep the accuracy, at the very least, so it should set a lower bound on what you should see for tabular regression and classification tasks.
@david_cardozo1 THANK YOU! Firestore would be a great addition, lets chat about building one.
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@david_cardozo1 MindsDB is constantly working on new integrations. You can easily open a Feature Request asking for the same and can even try writing the integration yourself if you want to.
MindsDB does provide performance benchmarks for their battery-included models, which are available on their website. These benchmarks show the accuracy and speed of their models on a variety of datasets and tasks. Additionally, MindsDB's AutoML capabilities allow users to train custom models that can outperform the battery-included models for specific use cases.
Overall, it's important to keep in mind that the performance of MindsDB's models will depend on many factors, including the size and complexity of the data, the type of task, and the computational resources available.
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By the way, MindsDB team is also expanding check the opportunities here: https://mindsdb.com/careers
Psstttt ... The work culture is amazing and it is remote first!
Love it! Any more new NLP features on the roadmap?
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@tomhuds We're close to shipping support for fine-tuned OpenAI completion models! After that, we'll look into doing the same for HuggingFace.
As an aside, our MLOps features (particularly, model versioning and projects) enable you to effectively store, navigate and use all previous training runs for ML integrations that support the "retrain" and "adjust" commands with locally-stored models, which is quite convenient in use cases with long model lifecycles.
This is a pretty impressive set of features for a Database @adam_carrigan . I do work a lot in building our own ML models. However, I have a question that is not clear from watching the video - Let's say we're labeling a bunch of videos for training our ML models and we do this manually, is there any way MindsDB can help us with doing it more effectively?
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