Where science and creativity meet.
Data and Documentation Technician
Location
Brazil
Posted
16 days ago
Salary
0
Seniority
Mid Level
Job Description
Data and Documentation Technician
IFF
Role Description Are you passionate about managing technical documentation, ensuring quality compliance, and supporting customers across global markets? The role is based in São Paulo (remote). Be part of a customer-focused, detail-oriented, and collaborative team where together we can achieve greatness and make a real impact. Your potential is our inspiration. - Manage customer requests related to technical documentation, quality information, and product data using centralized document and data management systems. - Serve as first-line support for customer documentation and quality-related inquiries, escalating complex topics to subject matter experts when needed. - Create, maintain, and distribute customer-facing documentation, including Product Descriptions, Certificates of Analysis, statements, and certifications. - Ensure compliance with applicable quality management systems, food safety standards, and accreditation frameworks such as: - International Organization for Standardization (ISO) - Food Safety System Certification 22000 (FSSC 22000) - Global Food Safety Initiative (GFSI) - current Good Manufacturing Practices (cGMP) - Hazard Analysis and Critical Control Points (HACCP) - Support regulatory, export, and product registration requirements, including Kosher and Halal documentation where applicable. - Support technical commercialization activities, including risk assessments and approval processes for raw materials, intermediates, finished goods, packaging, and labeling. - Maintain and manage product master data within SAP and participate in workflows for new products and product changes. - Partner with cross-functional stakeholders across Quality Assurance (QA), Quality Control (QC), Regulatory, Operations, Product Management, Sales, and Customer Service to meet customer and business needs. Qualifications - Bachelor’s degree in a Natural Science, Data Science or a related field, or equivalent relevant experience. - Experience in quality assurance, regulatory, customer quality, food ingredients, dietary supplements, or pharmaceutical environments. - Strong written and verbal communication skills with high attention to detail. - Ability to manage multiple priorities and deliver accurate results in a fast-paced environment. - Experience working with quality and food safety systems, such as Good Manufacturing Practices (GMP), HACCP, ISO, or FSSC 22000. - Proven ability to work independently while collaborating effectively within cross-functional teams. - Customer-focused mindset with a strong commitment to service excellence. - Fluency in English. Requirements - Experience working with enterprise systems such as SAP, Salesforce, SharePoint, or similar platforms. - Strong analytical and problem-solving skills with the ability to identify trends and opportunities for process improvement. - Technical aptitude to quickly understand product information, processes, and documentation requirements. Benefits - Opportunity to work in a global, science-driven organization with meaningful impact. - Collaborative and inclusive work environment. - Exposure to cross-functional teams and global markets. - Learning and development opportunities to support career growth. - Flexible working arrangements where applicable.
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