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Falcon-H1: A Family of Hybrid-Head Language Models Redefining Efficiency and Performance

About

In this report, we introduce Falcon-H1, a new series of large language models (LLMs) featuring hybrid architecture designs optimized for both high performance and efficiency across diverse use cases. Unlike earlier Falcon models built solely on Transformer or Mamba architectures, Falcon-H1 adopts a parallel hybrid approach that combines Transformer-based attention with State Space Models (SSMs), known for superior long-context memory and computational efficiency. We systematically revisited model design, data strategy, and training dynamics, challenging conventional practices in the field. Falcon-H1 is released in multiple configurations, including base and instruction-tuned variants at 0.5B, 1.5B, 1.5B-deep, 3B, 7B, and 34B parameters. Quantized instruction-tuned models are also available, totaling over 30 checkpoints on Hugging Face Hub. Falcon-H1 models demonstrate state-of-the-art performance and exceptional parameter and training efficiency. The flagship Falcon-H1-34B matches or outperforms models up to 70B scale, such as Qwen3-32B, Qwen2.5-72B, and Llama3.3-70B, while using fewer parameters and less data. Smaller models show similar trends: the Falcon-H1-1.5B-Deep rivals current leading 7B-10B models, and Falcon-H1-0.5B performs comparably to typical 7B models from 2024. These models excel across reasoning, mathematics, multilingual tasks, instruction following, and scientific knowledge. With support for up to 256K context tokens and 18 languages, Falcon-H1 is suitable for a wide range of applications. All models are released under a permissive open-source license, underscoring our commitment to accessible and impactful AI research.

Jingwei Zuo, Maksim Velikanov, Ilyas Chahed, Younes Belkada, Dhia Eddine Rhayem, Guillaume Kunsch, Hakim Hacid, Hamza Yous, Brahim Farhat, Ibrahim Khadraoui, Mugariya Farooq, Giulia Campesan, Ruxandra Cojocaru, Yasser Djilali, Shi Hu, Iheb Chaabane, Puneesh Khanna, Mohamed El Amine Seddik, Ngoc Dung Huynh, Phuc Le Khac, Leen AlQadi, Billel Mokeddem, Mohamed Chami, Abdalgader Abubaker, Mikhail Lubinets, Kacper Piskorski, Slim Frikha• 2025

Related benchmarks

TaskDatasetResultRank
Generative Question AnsweringBolmo Evaluation Suite GenQA 7B
GenQA Average71.7
39
Mathematical ReasoningOlmoBaseEval Math (GSM8k, GSM Symbolic, MATH)
Math Aggregate Score65.7
34
Code GenerationOlmoBaseEval Code BigCodeBench, HumanEval, DeepSeek LeetCode, DS 1000, MBPP, MultiPL
OlmoBaseEval Code Score45.3
34
Multiple Choice Non-STEM Question AnsweringOlmoBaseEval MC Non-STEM (MMLU Humanities/Social Sci, CSQA, PiQA, SocialIQA, CoQA, DROP, Jeopardy, NaturalQs, SQuAD)
Aggregate Score84.1
34
Long-context retrievalRULER
Retrieval Accuracy (8K)92
34
Multiple Choice STEM Question AnsweringOlmoBaseEval MCSTEM
MCSTEM Score75.7
22
General Language Model EvaluationOlmoBaseEval HeldOut (LBPP, BBH, MMLU Pro, etc.)
LBPP Score30.2
10
Mindfulness-Based Cognitive Therapy Adherence EvaluationXInsight-Bench MBCT 1.0
Adherence Score #1 (AS#1)0.65
8
Counseling Dialogue EvaluationXInsight-Bench CBT
CTS-R #14.19
8
Solution-Focused Brief Therapy (SFBT)XInsight-Bench
FIT#1 Score2.55
8
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