
Muriel Schindler developed and enhanced data extraction and compliance features for the DatalandQALab repository over a three-month period, focusing on environmental and regulatory data workflows. She engineered robust JSON-based prompts for extracting ESG, financial, and energy metrics, implementing standardized unit conversions and currency handling to ensure reliable, auditable outputs. Her work included prompt engineering for SFDR disclosures, automated evaluation of corporate responsibility, and improved risk assessment workflows. By collaborating across teams and maintaining clear documentation, Muriel established repeatable, traceable processes for regulatory compliance and environmental data analysis, demonstrating depth in data extraction, JSON manipulation, and environmental regulations within the project.
February 2026 monthly summary focusing on delivering the Corporate Responsibility Compliance Prompts in DatalandQALab, with SFDR-related prompts extended and tracked via commit 3a39f610bda50f4355bfb9bc8757e015115f56b0. No major bugs reported; feature enhances regulatory risk screening and governance for clients, enabling automated evaluation of corporate responsibility across human rights and environmental regulations.
February 2026 monthly summary focusing on delivering the Corporate Responsibility Compliance Prompts in DatalandQALab, with SFDR-related prompts extended and tracked via commit 3a39f610bda50f4355bfb9bc8757e015115f56b0. No major bugs reported; feature enhances regulatory risk screening and governance for clients, enabling automated evaluation of corporate responsibility across human rights and environmental regulations.
January 2026 — DatalandQALab: Delivered energy data extraction prompts for GHG emissions and renewable energy, delivering standardized unit handling, conversion rules, and rounding for reliable climate metrics. Implemented explicit conversions (PJ ⇄ GWh, with 1 PJ ≈ 277.78 GWh) and rounded numeric outputs to two decimals. Cleaned up prompts with consistent naming and return units; removed non-applicable climate sector prompts. This work advances accurate, auditable energy data extraction for SFDR disclosures and downstream analytics.
January 2026 — DatalandQALab: Delivered energy data extraction prompts for GHG emissions and renewable energy, delivering standardized unit handling, conversion rules, and rounding for reliable climate metrics. Implemented explicit conversions (PJ ⇄ GWh, with 1 PJ ≈ 277.78 GWh) and rounded numeric outputs to two decimals. Cleaned up prompts with consistent naming and return units; removed non-applicable climate sector prompts. This work advances accurate, auditable energy data extraction for SFDR disclosures and downstream analytics.
December 2025: Key feature delivery and SFDR improvements in DatalandQALab. Implemented new data extraction prompts for ESG and financial metrics with standardized EUR outputs, improved prompt reliability and formatting, and updated SFDR-related prompts and documentation. Strong cross-team collaboration and established a foundation for repeatable data extraction workflows.
December 2025: Key feature delivery and SFDR improvements in DatalandQALab. Implemented new data extraction prompts for ESG and financial metrics with standardized EUR outputs, improved prompt reliability and formatting, and updated SFDR-related prompts and documentation. Strong cross-team collaboration and established a foundation for repeatable data extraction workflows.

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