-
Notifications
You must be signed in to change notification settings - Fork 1
New issue
Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.
By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.
Already on GitHub? Sign in to your account
chore(deps): update dependency mlflow to v2.15.1 #14
Conversation
b27208b
to
e1b0bb2
Compare
e1b0bb2
to
3e0acea
Compare
3e0acea
to
61cd92d
Compare
61cd92d
to
24c262a
Compare
24c262a
to
cbf5cc7
Compare
cbf5cc7
to
2348bac
Compare
2348bac
to
10c12cd
Compare
10c12cd
to
0fb2dec
Compare
0fb2dec
to
390a0ed
Compare
390a0ed
to
61b172b
Compare
61b172b
to
8c0b9f9
Compare
8c0b9f9
to
e16a904
Compare
e16a904
to
712092c
Compare
712092c
to
a017ec4
Compare
a017ec4
to
67a5f62
Compare
67a5f62
to
a10435f
Compare
a10435f
to
3750674
Compare
3750674
to
cdb6d0e
Compare
cdb6d0e
to
d70ebde
Compare
d70ebde
to
88367b3
Compare
88367b3
to
63a4873
Compare
Edited/Blocked NotificationRenovate will not automatically rebase this PR, because it does not recognize the last commit author and assumes somebody else may have edited the PR. You can manually request rebase by checking the rebase/retry box above. |
63a4873
to
7997aaf
Compare
7997aaf
to
0756c5e
Compare
Renovate Ignore NotificationBecause you closed this PR without merging, Renovate will ignore this update ( If you accidentally closed this PR, or if you changed your mind: rename this PR to get a fresh replacement PR. |
This PR contains the following updates:
==2.6.0
->==2.15.1
Warning
Some dependencies could not be looked up. Check the Dependency Dashboard for more information.
Release Notes
mlflow/mlflow (mlflow)
v2.15.1
Compare Source
MLflow 2.15.1 is a patch release that addresses several bug fixes.
Bug fixes:
mlflow.evaluate
crash on binary classification with data subset only contains single class (#12825, @serena-ruan)Documentation updates:
Small bug fixes and documentation updates:
#12823, #12860, #12844, #12843, @B-Step62; #12863, #12828, @harupy; #12845, @djliden; #12820, @annzhang-db; #12831, @chenmoneygithub
v2.15.0
Compare Source
We are excited to announce the release candidate for MLflow 2.15.0. This release includes many major features and improvements!
Major features:
LlamaIndex Flavor🦙 - MLflow now offers a native integration with LlamaIndex, one of the most popular libraries for building GenAI apps centered around custom data. This integration allows you to log LlamaIndex indices within MLflow, allowing for the loading and deployment of your indexed data for inference tasks with different engine types. MLflow also provides comprehensive tracing support for LlamaIndex operations, offering unprecedented transparency into complex queries. Check out the MLflow LlamaIndex documentation to get started! (#12633, @michael-berk, @B-Step62)
OpenAI Tracing🔍 - We've enhanced our OpenAI integration with a new tracing feature that works seamlessly with MLflow OpenAI autologging. You can now enable tracing of their OpenAI API usage with a single
mlflow.openai.autolog()
call, thereby MLflow will automatically log valuable metadata such as token usage and a history of your interactions, providing deeper insights into your OpenAI-powered applications. To start exploring this new capability, please check out the tracing documentation! (#12267, @gabrielfu)Enhanced Model Deployment with New Validation Feature✅ - To improve the reliability of model deployments, MLflow has added a new method to validate your model before deploying it to an inference endpoint. This feature helps to eliminate typical errors in input and output handling, streamlining the process of model deployment and increasing confidence in your deployed models. By catching potential issues early, you can ensure a smoother transition from development to production. (#12710, @serena-ruan)
Custom Metrics Definition Recording for Evaluations📊 - We've strengthened the flexibility of defining custom metrics for model evaluation by automatically logging and versioning metrics definitions, including models used as judges and prompt templates. With this new capability, you can ensure reproducibility of evaluations across different runs and easily reuse evaluation setups for consistency, facilitating more meaningful comparisons between different models or versions. (#12487, #12509, @xq-yin)
Databricks SDK Integration🔐 - MLflow's interaction with Databricks endpoints has been fully migrated to use the Databricks SDK. This change brings more robust and reliable connections between MLflow and Databricks, and access to the latest Databricks features and capabilities. We mark the legacy databricks-cli support as deprecated and will remove in the future release. (#12313, @WeichenXu123)
Spark VectorUDT Support💥 - MLflow's Model Signature framework now supports Spark Vector UDT (User Defined Type), enabling logging and deployment of models using Spark VectorUDT with robust type validation. (#12758, @WeichenXu123)
Other Notable Changes
Features:
parent_id
as a parameter to thestart_run
fluent API for alternative control flows (#12721, @Flametaa)mlflow gc
(#12451, @M4nouel)ChatModel
interface for GenAI flavors (#12612, @WeichenXu123)iloc
for accessing rows (#12410, @julcsii)Bug fixes:
.batch
call due to thread unsafety (#12701, @B-Step62)log_model
issue in MLflow >= 2.13 that causes databricks DLT py4j service crashing (#12514, @WeichenXu123)predict_stream
forAgentExecutor
and other non-Runnable chains (#12518, @B-Step62)Documentation updates:
fork
vsspawn
method when using multiprocessing for parallel runs (#12337, @B-Step62)extract_fields
formlflow.search_traces
(#12319, @xq-yin)Small bug fixes and documentation updates:
#12727, #12709, #12685, #12667, #12673, #12602, #12601, #12655, #12641, #12635, #12634, #12584, #12428, #12388, #12352, #12298, #12750, #12727, #12757, @daniellok-db; #12726, #12733, #12691, #12622, #12579, #12581, #12285, #12311, #12357, #12339, #12338, #12705, #12797, #12787, #12784, #12771, #12737, @B-Step62; #12715, @hubertzub-db; #12722, #12804, @annzhang-db; #12676, #12680, #12665, #12664, #12671, #12651, #12649, #12647, #12637, #12632, #12603, #12343, #12328, #12286, #12793, #12770, @serena-ruan; #12670, #12613, #12473, #12506, #12485, #12477, #12468, #12464, #12443, #12807, #12800, #10874, #12761, @WeichenXu123; #12690, #12678, #12686, #12545, #12621, #12598, #12583, #12582, #12510, #12580, #12570, #12571, #12559, #12538, #12537, #12519, #12515, #12507, #12508, #12502, #12499, #12497, #12447, #12467, #12426, #12448, #12430, #12420, #12385, #12371, #12359, #12284, #12345, #12316, #12287, #12303, #12291, #12795, #12786, #12796, #12792, #12791, #12778, #12777, #12755, #12751, #12753, #12749, @harupy; #12742, #12702, #12742 @edwardfeng-db; #12605, @alxhslm; #12662, @freemso; #12577, @rafyzg; #12512, @Jaishree2310; #12491, #1274, @BenWilson2; #12549, @besarthoxhaj; #12476, @jessechancy; #12541, @amanjam; #12479, #12472, #12433, #12289, @xq-yin; #12486, #12474, #11406, @jgiannuzzi; #12463, @jsuchome; #12460, @Venki1402; #12449, @yukimori; #12318, @RistoAle97; #12440, @victolee0; #12416, @Dev-98; #11771, @lababidi; #12417, @dannikay; #12663, @cgilviadee; #12410, @julcsii; #12600, @ZTZK; #12803, @hcmturner; #12747, @michael-berk; #12342, @kriscon-db; #12766, @artjen;
v2.14.3
Compare Source
MLflow 2.14.3 is a patch release that addresses bug fixes and additional documentation for released features
Features:
Bug fixes:
Documentation updates:
Small bug fixes and documentation updates:
#12556, #12628, @B-Step62; #12582, #12560, @harupy; #12553, @nojaf
v2.14.2
Compare Source
MLflow 2.14.2 is a patch release that includes several important bug fixes and documentation enhancements.
Bug fixes:
llm/v1/xxx
task definitions. (#12551, @B-Step62)log_model
introduced in MLflow 2.13.0 that causes Databricks DLT service to crash in some situations (#12514, @WeichenXu123)predict_stream
implementation for LangChain AgentExecutor and other non-Runnable chains (#12518, @B-Step62)predict_proba
inference method in thesklearn
flavor when loading an sklearn pipeline object aspyfunc
(#12554, @WeichenXu123)Documentation updates:
Small bug fixes and documentation updates:
#12311, #12285, #12535, #12543, #12320, #12444, @B-Step62; #12310, #12340, @serena-ruan; #12409, #12432, #12471, #12497, #12499, @harupy; #12555, @nojaf; #12472, #12431, @xq-yin; #12530, #12529, #12528, #12527, #12526, #12524, #12531, #12523, #12525, #12522, @dbczumar; #12483, @jsuchome; #12465, #12441, @BenWilson2; #12450, @StarryZhang-whu
v2.14.1
Compare Source
MLflow 2.14.1 is a patch release that contains several bug fixes and documentation improvements
Bug fixes:
install_mlflow=False
(#12388, @daniellok-db)Documentation updates:
Small bug fixes and documentation updates:
#12415, #12396, #12394, @harupy; #12403, #12382, @BenWilson2; #12397, @B-Step62
v2.14.0
Compare Source
MLflow 2.14.0 includes several major features and improvements that we're very excited to announce!
Major features:
Other Notable Features:
Bug fixes:
Documentation updates:
Small bug fixes and documentation updates:
#12359, #12308, #12350, #12284, #12345, #12316, #12287, #12303, #12291, #12288, #12265, #12170, #12248, #12263, #12249, #12251, #12239, #12241, #12240, #12235, #12242, #12172, #12215, #12228, #12216, #12164, #12225, #12203, #12181, #12198, #12195, #12192, #12146, #12171, #12163, #12166, #12124, #12106, #12113, #12112, #12074, #12077, #12058, @harupy; #12355, #12326, #12114, #12343, #12328, #12327, #12340, #12286, #12310, #12200, #12209, #12189, #12194, #12201, #12196, #12174, #12107, @serena-ruan; #12364, #12352, #12354, #12353, #12351, #12298, #12297, #12220, #12155, @daniellok-db; #12311, #12357, #12346, #12312, #12339, #12281, #12283, #12282, #12268, #12236, #12247, #12199, #12232, #12233, #12221, #12229, #12207, #12212, #12193, #12167, #12137, #12147, #12148, #12138, #12127, #12065, @B-Step62; #12289, #12253, #12330 @xq-yin; #11771, @lababidi; #12280, #12275, @BenWilson2; #12246, #12244, #12211, #12066, #12061, @WeichenXu123; #12278, @sunishsheth2009; #12136, @kriscon-db; #11911, @jessechancy; #12169, @hubertzub-db
v2.13.2
Compare Source
MLflow 2.13.2 is a patch release that includes several bug fixes and integration improvements to existing
features.
Features:
urllib
's connection number and max size (#12227, @chenmoneygithub)Bug fixes:
mlflow[gateway]
as dependency when usingmlflow.deployment
module (#12264, @B-Step62)/
before logging as params (#12190, @sunishsheth2009)Small bug fixes and documentation updates:
#12268, #12210, @B-Step62; #12214, @harupy; #12223, #12226, @annzhang-db; #12260, #12237, @prithvikannan; #12261, @BenWilson2; #12231, @serena-ruan; #12238, @sunishsheth2009
v2.13.1
Compare Source
MLflow 2.13.1 is a patch release that includes several bug fixes and integration improvements to existing features. New features that are introduced in this patch release are intended to provide a foundation to further major features that will be released in the next release.
Features:
mlflow[langchain]
extra that installs recommended versions of langchain with MLflow (#12182, @sunishsheth2009)Bug fixes:
getUserLocalTempDir
andgetUserNFSTempDir
to replacegetReplLocalTempDir
andgetReplNFSTempDir
in databricks runtime (#12105, @WeichenXu123)load_context
when inferring signature in pyfunc (#12099, @sunishsheth2009)Small bug fixes and documentation updates:
#12180, #12152, #12128, #12126, #12100, #12086, #12084, #12079, #12071, #12067, #12062, @serena-ruan; #12175, #12167, #12137, #12134, #12127, #12123, #12111, #12109, #12078, #12080, #12064, @B-Step62; #12142, @2maz; #12171, #12168, #12159, #12153, #12144, #12104, #12095, #12083, @harupy; #12160, @aravind-segu; #11990, @kriscon-db; #12178, #12176, #12090, #12036, @sunishsheth2009; #12162, #12110, #12088, #11937, #12075, @daniellok-db; #12133, #12131, @prithvikannan; #12132, #12035, @annzhang-db; #12121, #12120, @liangz1; #12122, #12094, @dbczumar; #12098, #12055, @mparkhe
v2.13.0
Compare Source
MLflow 2.13.0 includes several major features and improvements
With this release, we're happy to introduce several features that enhance the usability of MLflow broadly across a range of use cases.
Major Features and Improvements:
Streamable Python Models: The newly introduced
predict_stream
API for Python Models allows for custom model implementations that support the return of a generator object, permitting full customization for GenAI applications.Enhanced Code Dependency Inference: A new feature for automatically inferrring code dependencies based on detected dependencies within a model's implementation. As a supplement to the
code_paths
parameter, the introducedinfer_model_code_paths
option when logging a model will determine which additional code modules are needed in order to ensure that your models can be loaded in isolation, deployed, and reliably stored.Standardization of MLflow Deployment Server: Outputs from the Deployment Server's endpoints now conform to OpenAI's interfaces to provide a simpler integration with commonly used services.
Features:
Togetherai
as a supported provider for the MLflow Deployments Server (#11557, @FotiosBistas)predict_stream
API support for Python Models (#11791, @WeichenXu123)Bug fixes:
Configuration
📅 Schedule: Branch creation - "every weekday" in timezone UTC, Automerge - At any time (no schedule defined).
🚦 Automerge: Disabled by config. Please merge this manually once you are satisfied.
♻ Rebasing: Whenever PR becomes conflicted, or you tick the rebase/retry checkbox.
🔕 Ignore: Close this PR and you won't be reminded about this update again.
This PR has been generated by Renovate Bot.