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Termotécnica acquires PLM Solution to reduce costs and control product lifecycle management risks
Technology Category
- Functional Applications - Product Lifecycle Management Systems (PLM)
- Application Infrastructure & Middleware - Data Exchange & Integration
Applicable Industries
- Consumer Goods
- Construction & Infrastructure
- Food & Beverage
Applicable Functions
- Quality Assurance
- Product Research & Development
Use Cases
- Process Control & Optimization
- Regulatory Compliance Monitoring
Services
- Software Design & Engineering Services
- System Integration
The Challenge
Termotécnica, South America's largest transformer of EPS, faced challenges in managing and controlling the product lifecycle efficiently. The company needed a solution to monitor reliable statistical data in real-time, improve the validation phase, and reduce costs and waste associated with the process. Additionally, they required better documentation controls, access to risk analysis, and maintenance of product development stage controls to enhance planning and product quality.
About The Customer
Termotécnica is the largest transformer of EPS (Expanded Polystyrene) in South America and a major player globally. The company operates in various segments, including household appliances, civil construction, domestic utilities, agro-industry, food, beverage, and fragile products. Known for its extensive applications, Termotécnica is a key player in the EPS industry, providing innovative solutions across multiple sectors. The company is committed to quality management and continuous improvement, leveraging advanced IT solutions to maintain its competitive edge.
The Solution
Termotécnica implemented the SoftExpert PLM Suite solution to address its challenges. This system allows the company to monitor reliable statistical data in real-time, improving the validation phase and reducing costs and waste. The SE PLM Suite provides instant access to information required for better decision-making, enabling the approval of items for production based on reliable data. Additionally, the solution offers documentation controls, access to risk analysis, and maintenance of product development stage controls, facilitating better planning and enhancing the quality of the entire process and final product. The integration of the PLM solution represents a strategic and operational gain for Termotécnica, optimizing operating results and increasing the potential for investments in innovation and product development.
Operational Impact
Quantitative Benefit
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