×
SLIMA Kashif is a new open-source AI model designed specifically for Arabic
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

SILMA Kashif 2B Instruct v1.0 is a new bilingual AI model specifically designed for Arabic and English retrieval-augmented generation (RAG) tasks, with a primary focus on question answering and secondary capabilities in entity extraction.

Core capabilities and architecture: The model is built on Google Gemma’s foundation and operates within the 3-9 billion parameter range, featuring a 12,000-token context window for processing large amounts of text.

  • The model excels at answering questions in both Arabic and English languages
  • It processes both short snippets and lengthy passages effectively
  • The system can provide both concise and detailed responses based on context
  • Entity extraction capabilities allow it to identify and pull key information from text

Technical performance and benchmarks: SILMA Kashif demonstrates strong performance across multiple evaluation metrics and datasets.

  • The model achieved an overall benchmark score of 0.3478 in comprehensive testing
  • Evaluation included diverse datasets like FinQA, TatQA, MS MARCO, and others
  • Testing covered both Arabic and English language capabilities
  • Performance metrics included exact match, ROUGE1, BLEU, and BERTScore

Implementation requirements: The model offers flexibility in deployment while maintaining specific hardware recommendations for optimal performance.

  • Recommended hardware includes GPUs with 24GB memory (like NVIDIA RTX 4090)
  • Can operate on GPUs with 8GB memory with some performance impact
  • 4-bit quantization option available with minimal performance loss (2.6% drop)
  • Implementation requires simple setup through the Transformers library

Key limitations and constraints: Despite its strong capabilities, the model has several notable limitations.

  • Complex numerical and financial reasoning tasks present challenges
  • Performance is limited to text-based question answering
  • The model may struggle with tasks outside its specialized focus
  • Parameter size constrains certain advanced reasoning capabilities

Looking ahead: Arabic NLP innovation: SILMA Kashif represents an important step forward for Arabic natural language processing, offering specialized capabilities while acknowledging current technological constraints. Its open-source nature and strong performance in targeted applications suggest it could serve as a foundation for future developments in multilingual AI systems, particularly in the Middle East region.

SLIMA Kashif: The Arabic RAG Model

Recent News

UI challenges Lightcone could address to improve user experience

Addressing key interface bottlenecks could help bridge the growing gap between AI capabilities and effective human usability in the coming years.

Strategies for human-friendly superintelligence as AI hiveminds evolve

Networks of interacting AI models could create emergent superintelligent capabilities that require new approaches to ensure human values remain central to their development.

AI metrics that matter: Developing effective evaluation systems

Effective AI evaluation requires both technical performance metrics and customer value indicators to prevent misaligned goals and drive informed product decisions.