Large model privatization refers to deploying advanced large language models to enterprise internal servers or private cloud environments, where enterprises can fully control the model's operation, data processing, and optimization processes, ensuring data security and highly customized business needs. At the same time, enterprises can build their own knowledge bases or train privatized proprietary models to make the privatized large models more aligned with their own business scenarios, thereby achieving precise decision-making, efficient operations, and innovative services, building unique advantages for enterprises in digital competition.

Knowledge Base Building

Knowledge Base Building

A high-quality knowledge base is the cornerstone of efficient operation of large models. The core of knowledge base construction is through the closed loop of "collection → governance → organization → update → collaboration", transforming fragmented enterprise data, industry knowledge, historical cases, and experience into structured knowledge that models can understand and utilize. This not only provides the model with training materials covering all business scenarios, but also endows the model with reasoning capabilities through technologies such as knowledge graphs and dynamic retrieval, enabling it to make more intelligent and explainable decisions based on comprehensive information, ultimately achieving the upgrade from "data-driven business" to "knowledge-driven intelligence".

Knowledge Base Building
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01
Data Collection
For data from different sources and of different types, different data collection tools and methods must be employed. At the same time, corresponding collection strategies and data integrity verification rules should be formulated.
02
Data Cleaning and Preprocessing
After data collection, it is necessary to clean the data, for example: deduplication, error correction, supplementing missing data, data desensitization, etc. Then, perform data standardization processing, such as: unifying data formats and languages. Provide a high-quality data foundation for the application of privatized large model scenarios.
03
Knowledge Graph Construction
The process of building a knowledge graph involves organizing the relationships between data to form a structured knowledge network, thereby enabling models to better understand and utilize knowledge, ultimately achieving more accurate semantic understanding and reasoning.

Private Exclusive Model Training

Build Private LLM

Demand Analysis

Business Pain Point Analysis + Goal Alignment
Ensure the model solves practical problems

Model Selection and Customization

Basic Model Screening(such as LLaMA/Alpaca variants)
Architecture Adjustment+Parameter Optimization(adapted to business scenarios)

Data Annotation and Training

Annotation: Adding Labels → Supervisory Signals
Training: Large-scale Data Parameter Tuning → Enhancing Business Understanding

The Benefits of Privatization

The Benefits of Private LLM

Data Privacy Protection

Emphasizes that during the model training process, all data is processed in the enterprise's private environment, strictly complying with data security regulations, ensuring that enterprise data is not leaked, and protecting the enterprise's core competitiveness.

Significant Customization Effects

Compared to general models, privatized exclusive models are trained on enterprise-specific business data, enabling more precise understanding and execution of enterprise tasks. For example, in a risk assessment scenario at a financial enterprise, the model's accuracy improved by 72 percentage points compared to general models, providing more reliable support for enterprise decision-making.

Success Cases

Success Cases

Brand Name

Brand Name

Technology Network

Emphasize that during the model training process, all data is processed within the enterprise's private environment, strictly adhering to data security regulations, ensuring that enterprise data is not leaked, and protecting the enterprise's core competitiveness.

———— Brand MG

75%

Cost reduction

75%

Efficiency improvement

95%

Customer satisfaction has improved

Brand Name
Brand Name

Brand Name

Technology Network

Emphasize that during the model training process, all data is processed within the enterprise's private environment, strictly adhering to data security regulations, ensuring that enterprise data is not leaked, and protecting the enterprise's core competitiveness.

———— Brand MG

75%

Cost reduction

75%

Efficiency improvement

95%

Customer satisfaction has improved

Brand Name