diff --git a/docs/clearml_agent.md b/docs/clearml_agent.md
index 0750c4b8..768b8e9a 100644
--- a/docs/clearml_agent.md
+++ b/docs/clearml_agent.md
@@ -17,7 +17,7 @@ title: ClearML Agent
**ClearML Agent** is a virtual environment and execution manager for DL / ML solutions on GPU machines. It integrates with the **ClearML Python Package** and ClearML Server to provide a full AI cluster solution.
Its main focus is around:
-- Reproducing tasks, including their complete environments.
+- Reproducing task runs, including their complete environments.
- Scaling workflows on multiple target machines.
ClearML Agent executes a task or other workflow by reproducing the state of the code from the original machine
@@ -46,7 +46,7 @@ install Python, so make sure to use a container or environment with the version
While the agent is running, it continuously reports system metrics to the ClearML Server (these can be monitored in the
[**Orchestration**](webapp/webapp_workers_queues.md) page).
-Continue using ClearML Agent once it is running on a target machine. Reproduce tasks and execute
+Continue using ClearML Agent once it is running on a target machine. Reproducing task runs and execute
automated workflows in one (or both) of the following ways:
* Programmatically (using [`Task.enqueue()`](references/sdk/task.md#taskenqueue) or [`Task.execute_remotely()`](references/sdk/task.md#execute_remotely))
* Through the ClearML Web UI (without working directly with code), by cloning tasks and enqueuing them to the
diff --git a/docs/getting_started/remote_execution.md b/docs/getting_started/remote_execution.md
index 3f7fab5f..dbb98ce6 100644
--- a/docs/getting_started/remote_execution.md
+++ b/docs/getting_started/remote_execution.md
@@ -14,7 +14,7 @@ powerful remote machine. This is useful for:
* Managing execution through ClearML's queue system.
This guide focuses on transitioning a locally executed process to a remote machine for scalable execution. To learn how
-to reproduce a previously executed process on a remote machine, see [Reproducing Tasks](reproduce_tasks.md).
+to reproduce a previously executed process on a remote machine, see [Reproducing Task Runs](reproduce_tasks.md).
## Running a Task Remotely
diff --git a/docs/getting_started/reproduce_tasks.md b/docs/getting_started/reproduce_tasks.md
index 57bb1a98..4f73077b 100644
--- a/docs/getting_started/reproduce_tasks.md
+++ b/docs/getting_started/reproduce_tasks.md
@@ -1,5 +1,5 @@
---
-title: Reproducing Tasks
+title: Reproducing Task Runs
---
:::note
diff --git a/docs/integrations/autokeras.md b/docs/integrations/autokeras.md
index ece401ad..86e9d7ed 100644
--- a/docs/integrations/autokeras.md
+++ b/docs/integrations/autokeras.md
@@ -77,7 +77,7 @@ See more information about explicitly logging information to a ClearML Task:
See [Explicit Reporting Tutorial](../guides/reporting/explicit_reporting.md).
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -93,7 +93,7 @@ Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md) to h
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/catboost.md b/docs/integrations/catboost.md
index fb2841ce..fe0cbb18 100644
--- a/docs/integrations/catboost.md
+++ b/docs/integrations/catboost.md
@@ -76,7 +76,7 @@ See more information about explicitly logging information to a ClearML Task:
See [Explicit Reporting Tutorial](../guides/reporting/explicit_reporting.md).
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -92,7 +92,7 @@ Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md) to h
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/fastai.md b/docs/integrations/fastai.md
index e5ff1653..332bf75e 100644
--- a/docs/integrations/fastai.md
+++ b/docs/integrations/fastai.md
@@ -75,7 +75,7 @@ See more information about explicitly logging information to a ClearML Task:
See [Explicit Reporting Tutorial](../guides/reporting/explicit_reporting.md).
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -91,7 +91,7 @@ Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md) to h
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/keras.md b/docs/integrations/keras.md
index e1270272..c95a631c 100644
--- a/docs/integrations/keras.md
+++ b/docs/integrations/keras.md
@@ -87,7 +87,7 @@ and debug samples, plots, and scalars logged to TensorBoard
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -103,7 +103,7 @@ Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md) to h
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/lightgbm.md b/docs/integrations/lightgbm.md
index b611ac22..bbb0f487 100644
--- a/docs/integrations/lightgbm.md
+++ b/docs/integrations/lightgbm.md
@@ -76,7 +76,7 @@ See more information about explicitly logging information to a ClearML Task:
See [Explicit Reporting Tutorial](../guides/reporting/explicit_reporting.md).
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -92,7 +92,7 @@ Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md) to h
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/megengine.md b/docs/integrations/megengine.md
index 6cbeb627..ab0fd305 100644
--- a/docs/integrations/megengine.md
+++ b/docs/integrations/megengine.md
@@ -72,7 +72,7 @@ See more information about explicitly logging information to a ClearML Task:
See [Explicit Reporting Tutorial](../guides/reporting/explicit_reporting.md).
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -88,7 +88,7 @@ Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md) to h
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/pytorch.md b/docs/integrations/pytorch.md
index 39ee2f83..24b227f3 100644
--- a/docs/integrations/pytorch.md
+++ b/docs/integrations/pytorch.md
@@ -97,7 +97,7 @@ additional tools, like argparse, TensorBoard, and matplotlib:
* [PyTorch Distributed](../guides/frameworks/pytorch/pytorch_distributed_example.md) - Demonstrates using ClearML with the [PyTorch Distributed Communications Package (`torch.distributed`)](https://pytorch.org/tutorials/beginner/dist_overview.html)
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -113,7 +113,7 @@ Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md) to h
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/pytorch_lightning.md b/docs/integrations/pytorch_lightning.md
index 977c545e..e91b33ec 100644
--- a/docs/integrations/pytorch_lightning.md
+++ b/docs/integrations/pytorch_lightning.md
@@ -102,7 +102,7 @@ See more information about explicitly logging information to a ClearML Task:
See [Explicit Reporting Tutorial](../guides/reporting/explicit_reporting.md).
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -118,7 +118,7 @@ Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md), to
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/scikit_learn.md b/docs/integrations/scikit_learn.md
index 61049811..86d6b663 100644
--- a/docs/integrations/scikit_learn.md
+++ b/docs/integrations/scikit_learn.md
@@ -78,7 +78,7 @@ additional tools, like Matplotlib:
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -94,7 +94,7 @@ Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md) to h
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/tao.md b/docs/integrations/tao.md
index 07a11249..63af9a85 100644
--- a/docs/integrations/tao.md
+++ b/docs/integrations/tao.md
@@ -94,7 +94,7 @@ You can view all of this captured information in the [ClearML Web UI](../webapp/

## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is
enqueued, the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -111,7 +111,7 @@ cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents:
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/tensorflow.md b/docs/integrations/tensorflow.md
index 2f175e7b..2613ff9a 100644
--- a/docs/integrations/tensorflow.md
+++ b/docs/integrations/tensorflow.md
@@ -89,7 +89,7 @@ TensorBoard scalars, histograms, images, and text, as well as all console output
ClearML's automatic logging of parameters defined using `absl.flags`
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -105,7 +105,7 @@ Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md) to h
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/transformers.md b/docs/integrations/transformers.md
index 0c0c9a5d..c6f4ff07 100644
--- a/docs/integrations/transformers.md
+++ b/docs/integrations/transformers.md
@@ -60,7 +60,7 @@ You can also select multiple tasks and directly [compare](../webapp/webapp_exp_c
See an example of Transformers and ClearML in action [here](../guides/frameworks/huggingface/transformers.md).
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is
enqueued, the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
diff --git a/docs/integrations/xgboost.md b/docs/integrations/xgboost.md
index 5a5b326f..44dcbde0 100644
--- a/docs/integrations/xgboost.md
+++ b/docs/integrations/xgboost.md
@@ -103,7 +103,7 @@ additional tools, like Matplotlib and scikit-learn:
* [XGBoost and scikit-learn](../guides/frameworks/xgboost/xgboost_sample.md) - Demonstrates ClearML automatic logging of XGBoost scalars and models
## Remote Execution
-ClearML logs all the information required to reproduce a task on a different machine (installed packages,
+ClearML logs all the information required to reproduce a task run on a different machine (installed packages,
uncommitted changes etc.). The [ClearML Agent](../clearml_agent.md) listens to designated queues and when a task is enqueued,
the agent pulls it, recreates its execution environment, and runs it, reporting its scalars, plots, etc. to the
task manager.
@@ -119,7 +119,7 @@ Use the ClearML [Autoscalers](../cloud_autoscaling/autoscaling_overview.md) to h
cloud of your choice (AWS, GCP, Azure) and automatically deploy ClearML agents: the autoscaler automatically spins up
and shuts down instances as needed, according to a resource budget that you set.
-### Reproducing Tasks
+### Reproducing Task Runs


diff --git a/docs/integrations/yolov5.md b/docs/integrations/yolov5.md
index 1f353427..d574a184 100644
--- a/docs/integrations/yolov5.md
+++ b/docs/integrations/yolov5.md
@@ -150,7 +150,7 @@ python train.py --img 640 --batch 16 --epochs 3 --data clearml://