- 1639 Views
- 2 replies
- 1 kudos
Keeping track of ML models and data assets with Unity Catalogue
Hi all,Our company has trouble keeping track of existing ML models developed by several different teams.On top of this it is hard to keep track of all the data assets collected by all our different divisions.Does Unity Catalogue keep track of ML mode...
- 1639 Views
- 2 replies
- 1 kudos
- 1 kudos
Hi @Nico3 Hope you are well. Just wanted to see if you were able to find an answer to your question and would you like to mark an answer as best? It would be really helpful for the other members too. Cheers!
- 1 kudos
- 2248 Views
- 2 replies
- 2 kudos
Resolved! How to use ml flow with pytorch?
Excited to learn how can I efficiently and quickly log metrics in ml flow from my pytorch model? #summit23
- 2248 Views
- 2 replies
- 2 kudos
- 2 kudos
Hi @Dawid Hope you are well. Just wanted to see if you were able to find an answer to your question and would you like to mark an answer as best? It would be really helpful for the other members too. Cheers!
- 2 kudos
- 1601 Views
- 2 replies
- 0 kudos
- 1601 Views
- 2 replies
- 0 kudos
- 0 kudos
Hi @bb_s Hope you are well. Just wanted to see if you were able to find an answer to your question and would you like to mark an answer as best? It would be really helpful for the other members too. Cheers!
- 0 kudos
- 833 Views
- 0 replies
- 0 kudos
Can't get R html visualisation to work
I'm trying to get a visualisation made using R's networkD3 package to show up in my notebook, but it simply refuses to work. I simply get an empty cell result. Apparently this is a common problem for HTML/JS packages (cfr. https://github.com/Microsof...
- 833 Views
- 0 replies
- 0 kudos
- 1746 Views
- 2 replies
- 0 kudos
Pathway to becoming a ML Associate
Hey guys! I wanted to know how many hours it will take me to become a ML Associate? Any feedback would be appreciated.
- 1746 Views
- 2 replies
- 0 kudos
- 0 kudos
Hi @gkrishnan82 We haven't heard from you since the last response from @Kumaran ​, and I was checking back to see if her suggestions helped you. Or else, If you have any solution, please share it with the community, as it can be helpful to others. ...
- 0 kudos
- 2409 Views
- 2 replies
- 1 kudos
Resolved! LLM experience in production
Are LLMs really ready for production deployment?
- 2409 Views
- 2 replies
- 1 kudos
- 1 kudos
We have been facing issues serving even simple models in production:https://community.databricks.com/t5/machine-learning/errors-using-dolly-deployed-as-a-rest-api/m-p/37405#M1939
- 1 kudos
- 1171 Views
- 0 replies
- 0 kudos
Logging Machine Learning model to a centralized workspace from a Databricks workspace
hi all,I have been working on the concept on of centralized workspace where I have been trying to create a centralized workspace repo.I am running my model on Workspace A, while I am logging my model on to a remote Databricks workspace B, I have conn...
- 1171 Views
- 0 replies
- 0 kudos
- 960 Views
- 1 replies
- 0 kudos
Data and AI Summit
Really a nice experience to go through latest progress on Generative AI!
- 960 Views
- 1 replies
- 0 kudos
- 1473 Views
- 1 replies
- 0 kudos
Databricks Conference
The dolly2.0 session involving RAGs was very informative!
- 1473 Views
- 1 replies
- 0 kudos
- 4649 Views
- 4 replies
- 6 kudos
Get mlflow to work with with custom Databricks docker container compute
We need conda for our python things, so i set up a Compute unit with a custom dockerfile. Now one of our ki engeniers tried to get mlflow working but it seems not connected to the mlflow of Databricks. How can i get mlflow in my container to work wit...
- 4649 Views
- 4 replies
- 6 kudos
- 6 kudos
We have this same issues. Did you ever manage to solve this?
- 6 kudos
- 4991 Views
- 2 replies
- 2 kudos
Resolved! Alternatives for xg boost
Are there any alternatives for xg boost that work well with pyspark?
- 4991 Views
- 2 replies
- 2 kudos
- 2 kudos
Spark MLlib GBT: Spark MLlib, the machine learning library included with Apache Spark, provides its own implementation of gradient boosting trees (GBT). It offers similar functionality to XGBoost and can be used directly within PySpark ML pipelines w...
- 2 kudos
- 894 Views
- 0 replies
- 0 kudos
Data+AI summit Expo
It's a great experience here to learn all the fast moving pieces on both open/close source tools to speed up LLM usage in industry. Out of curiosity, any company already started with LLM agent with success?
- 894 Views
- 0 replies
- 0 kudos
- 2111 Views
- 0 replies
- 0 kudos
Has anyone tried faster-whisper? It seems like few times faster than the base whisper
https://github.com/guillaumekln/faster-whisper
- 2111 Views
- 0 replies
- 0 kudos
- 863 Views
- 1 replies
- 0 kudos
Mlflow
How to running time series validation with mlflow?
- 863 Views
- 1 replies
- 0 kudos
- 0 kudos
And is there a native package for time series test train split?
- 0 kudos
- 1254 Views
- 0 replies
- 0 kudos
LLM Retrieval Internal vs External Knowledge Base
What are the best strategies for creating an LLM chat platform that can retrieve company info when necessary but also respond based on its internal knowledge when necessary.
- 1254 Views
- 0 replies
- 0 kudos
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