ml
Machine learning is the practice of teaching a computer to learn. The concept uses pattern recognition, as well as other forms of predictive algorithms, to make judgments on incoming data. This field is closely related to artificial intelligence and computational statistics.
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We should sort imports with isort to keep the import section clean
MLflow Roadmap Item
This is an MLflow Roadmap item that has been prioritized by the MLflow maintainers. We’ve identified this feature as a highly requested addition to the MLflow package based on community feedback.
We're seeking a community contribution for the implementation of this feature and will enthusiastically support the development and review of a submitted PR for this.
Con
/kind bug
What steps did you take and what happened:
Right now the Notebooks controller will be appending new Pod conditions to the Notebook's status https://github.com/kubeflow/kubeflow/blob/master/components/notebook-controller/controllers/notebook_controller.go#L247.
This means that a Notebook could end up with the following conditions being present at the same time:
{
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Is there an existing issue for this?
- I have searched the existing issues
Is your feature request related to a problem? Please describe.
Local Databases require to run a Ngrok tunnel to establish a connection when integrating databases to MindsDB
Describe the solution you'd like.
Include a description of using Ngrok Tunnel for local databases in the SQL API/CREATE/DATABASE do
Typo under the description: Returns a containing. Returns a what?
Document Details
- ID: d2dc315d-96d7-e54f-6e90-fec6ed09481c
- Version Independent ID: ab5d0a68-35d6-ef5f-786e-d89e7fee8034
- Content: [DataFrameColumn.Info Method (Microsoft.Data.Analysis)](https://docs.microsoft.com/e
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Jun 27, 2022 - C++
Is your feature request related to a problem? Please describe.
In time series plotting module, lot of plots are customized at the end - template, fig size, etc. Since the same code is repeated in all these plots, maybe this could be modularized and reused.
with fig.batch_update():
template = _resolve_dict_keys(
dict_=fig_kwargs, key="template", defaults=fig_defaultWe currently have read and write capabilities but do not support deleting. We could add a few calls like delete delete_all and some recursive way of deleting.
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Oct 22, 2020 - Python
🚨 🚨 Feature Request
- A new implementation (Improvement, Extension)
Is your feature request related to a problem?
Currently, if a user tries to access an index that is larger than the dataset length or tensor length, an internal error is thrown which is not easy to understand.
Description of the possible solution
We can catch the error and throw a more descriptive e
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In Ue format string it represent float with comma separator, it crash css style
To fix it you can Round/replace/incluse culture info
samples/csharp/end-to-end-apps/ScalableSentimentAnalysisBlazorWebApp/BlazorSentiment.Client/Shared/HappinessScale.razor
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Jun 27, 2022 - Python
你好,请问怎么装载 ONNX 模型,目前只看到 Oneflow->ONNX 工具,没有找到 ONNX->Oneflow 工具。
I have a simple regression task (using a LightGBMRegressor) where I want to penalize negative predictions more than positive ones. Is there a way to achieve this with the default regression LightGBM objectives (see https://lightgbm.readthedocs.io/en/latest/Parameters.html)? If not, is it somehow possible to define (many example for default LightGBM model) and pass a custom regression objective?
Is your feature request related to a problem? Please describe.
Right now, feast assumes that the feature_store.yaml is always located at the root of the feature repo. This is a reasonable assumption, but introduces some issues for users - when using multiple environments (e.g. staging vs production) users need to duplicate their feature definitions into multiple directories.
**Describe
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- Wikipedia
- Wikipedia

Current implementation of Go binding can not specify options.
GPUOptions struct is in internal package. And
go generatedoesn't work for protobuf directory. So we can't specify GPUOptions forNewSession.