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2 changes: 1 addition & 1 deletion src/UserGuide/Master/Table/AI-capability/AINode_apache.md
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# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.

The system architecture is shown below:
::: center
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2 changes: 1 addition & 1 deletion src/UserGuide/Master/Table/AI-capability/AINode_timecho.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.

The system architecture is shown below:
::: center
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2 changes: 1 addition & 1 deletion src/UserGuide/Master/Tree/AI-capability/AINode_apache.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.

The system architecture is shown below:
::: center
Expand Down
2 changes: 1 addition & 1 deletion src/UserGuide/Master/Tree/AI-capability/AINode_timecho.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.


The system architecture is shown below:
Expand Down
2 changes: 1 addition & 1 deletion src/UserGuide/V1.3.x/AI-capability/AINode_apache.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.


The system architecture is shown below:
Expand Down
2 changes: 1 addition & 1 deletion src/UserGuide/V1.3.x/AI-capability/AINode_timecho.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.


The system architecture is shown below:
Expand Down
2 changes: 1 addition & 1 deletion src/UserGuide/dev-1.3/AI-capability/AINode_apache.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.


The system architecture is shown below:
Expand Down
2 changes: 1 addition & 1 deletion src/UserGuide/dev-1.3/AI-capability/AINode_timecho.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.


The system architecture is shown below:
Expand Down
2 changes: 1 addition & 1 deletion src/UserGuide/latest-Table/AI-capability/AINode_apache.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.

The system architecture is shown below:
::: center
Expand Down
2 changes: 1 addition & 1 deletion src/UserGuide/latest-Table/AI-capability/AINode_timecho.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.

The system architecture is shown below:
::: center
Expand Down
2 changes: 1 addition & 1 deletion src/UserGuide/latest/AI-capability/AINode_apache.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.

The system architecture is shown below:
::: center
Expand Down
2 changes: 1 addition & 1 deletion src/UserGuide/latest/AI-capability/AINode_timecho.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode is an IoTDB native node designed to support the registration, management, and invocation of large-scale time series models. It comes with industry-leading proprietary time series models such as Timer and Sundial. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.
AINode is a native IoTDB node that supports the registration, management, and invocation of time-series-related models. It comes with built-in industry-leading self-developed time-series large models, such as the Timer series developed by Tsinghua University. These models can be invoked through standard SQL statements, enabling real-time inference of time series data at the millisecond level, and supporting application scenarios such as trend forecasting, missing value imputation, and anomaly detection for time series data.


The system architecture is shown below:
Expand Down
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode 是支持时序大模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型, Timer、Sundial 等,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。
AINode 是支持时序相关模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型,如清华自研时序模型 Timer 系列,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。

系统架构如下图所示:

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Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode 是支持时序大模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型, Timer、Sundial 等,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。
AINode 是支持时序相关模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型,如清华自研时序模型 Timer 系列,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。

系统架构如下图所示:

Expand Down
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode 是支持时序大模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型, Timer、Sundial 等,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。
AINode 是支持时序相关模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型,如清华自研时序模型 Timer 系列,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。

系统架构如下图所示:

Expand Down
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode 是支持时序大模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型, Timer、Sundial 等,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。
AINode 是支持时序相关模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型,如清华自研时序模型 Timer 系列,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。

系统架构如下图所示:

Expand Down
2 changes: 1 addition & 1 deletion src/zh/UserGuide/V1.3.x/AI-capability/AINode_apache.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode 是支持时序大模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型, Timer、Sundial 等,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。
AINode 是支持时序相关模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型,如清华自研时序模型 Timer 系列,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。

系统架构如下图所示:
::: center
Expand Down
2 changes: 1 addition & 1 deletion src/zh/UserGuide/V1.3.x/AI-capability/AINode_timecho.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode 是支持时序大模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型, Timer、Sundial 等,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。
AINode 是支持时序相关模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型,如清华自研时序模型 Timer 系列,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。

系统架构如下图所示:
::: center
Expand Down
2 changes: 1 addition & 1 deletion src/zh/UserGuide/dev-1.3/AI-capability/AINode_apache.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode 是支持时序大模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型, Timer、Sundial 等,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。
AINode 是支持时序相关模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型,如清华自研时序模型 Timer 系列,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。

系统架构如下图所示:
::: center
Expand Down
2 changes: 1 addition & 1 deletion src/zh/UserGuide/dev-1.3/AI-capability/AINode_timecho.md
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode 是支持时序大模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型, Timer、Sundial 等,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。
AINode 是支持时序相关模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型,如清华自研时序模型 Timer 系列,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。

系统架构如下图所示:
::: center
Expand Down
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,7 @@

# AINode

AINode 是支持时序大模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型, Timer、Sundial 等,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。
AINode 是支持时序相关模型注册、管理、调用的 IoTDB 原生节点,内置业界领先的自研时序大模型,如清华自研时序模型 Timer 系列,可通过标准 SQL 语句进行调用,实现时序数据的毫秒级实时推理,可支持时序趋势预测、缺失值填补、异常值检测等应用场景。

系统架构如下图所示:

Expand Down
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