1. Introduction
Digital language technologies have transformed how we interact with information, yet their development remains highly uneven across the world’s languages. While resource-rich languages benefit from sophisticated processing tools, many historically marginalized languages face a growing “digital language divide” [
1]. Bridging this divide is not merely a technical challenge but a crucial step in preserving linguistic diversity and ensuring equitable access to the digital ecosystem.
The Amazigh language (also known as Berber) represents a compelling case study in this context. As an indigenous language family of North Africa with ancient roots, Amazigh has substantial cultural and historical significance, with speaker communities spanning Morocco, Algeria, Libya, Tunisia, and several Sahelian countries. Recent estimates suggest between 30 and 40 million speakers across this region [
2], making it one of the most widely spoken indigenous language families in Africa. Despite this substantial speaker base, Amazigh has historically been marginalized in both official policy and technological development.
The past two decades have witnessed significant changes in the sociopolitical status of Amazigh languages. Morocco’s 2011 constitutional recognition of Amazigh as an official language alongside Arabic marked a pivotal shift, followed by similar recognition in Algeria in 2016. These developments have catalyzed renewed interest in Amazigh language preservation, education, and digital integration. This period of increased digital engagement, described by researchers as a “digital awakening”, has created both opportunities and challenges for technological development [
3]. The development of comprehensive language technologies for Amazigh presents several distinct challenges. Linguistically, Amazigh features rich morphological systems with templatic patterns and extensive affixation. This complexity exceeds that of many well-resourced languages, necessitating specialized computational approaches [
4]. The language family’s dialectal diversity introduces further complications, with numerous varieties exhibiting significant phonological, lexical, and grammatical differences. This diversity challenges the development of unified processing systems and requires careful consideration of cross-dialectal applicability.
Amazigh’s orthographic variation presents additional challenges, as the language employs three distinct writing systems (Tifinagh, Latin-based, and Arabic-based), each with its own computational processing requirements. This orthographic diversity necessitates specialized approaches for text processing and recognition. These technical challenges are compounded by persistent resource scarcity, as Amazigh remains a low-resource language in computational terms, with limited availability of large-scale corpora, parallel texts, and standardized processing tools.
Developing effective language technologies requires considering not only technical implementation but also community adoption, educational applications, and sociolinguistic factors. Research indicates that these integrated factors play a crucial role in determining technological success and impact [
5]. For Amazigh language processing, these considerations have influenced a distinctive research evolution. Initial efforts focused on creating fundamental linguistic resources, which subsequently enabled the development of advanced computational methods. This trajectory parallels methodological advances in computational linguistics while maintaining focus on Amazigh-specific challenges. The current survey examines this technological progression through systematic analysis of four core areas: Natural Language Processing (NLP), Speech Technologies, Optical Character Recognition (OCR), and Machine Translation. Previous research has explored individual components of Amazigh computational processing [
6,
7,
8,
9]. However, this study provides the first integrated examination across multiple domains and methodological frameworks.
Our contributions include a systematic analysis of methodological developments in Amazigh language technology from 2010 to 2025, tracing the evolution from rule-based to neural approaches across multiple domains. We examine the domain-specific challenges and innovations in morphological analysis, part-of-speech tagging, named entity recognition, speech recognition, optical character recognition, and machine translation. The survey assesses resource development initiatives and their impact on technological capabilities, analyzes dialectal coverage and script support across different domains, and identifies persistent challenges and promising research directions for future development.
Our analysis reveals both significant achievements and remaining gaps in Amazigh language technology. Although certain domains such as morphological analysis and optical character recognition have reached high levels of maturity, others like continuous speech recognition and machine translation remain in earlier developmental stages. This uneven development reflects both technological challenges and resource allocation patterns.
The remainder of this survey is organized as follows.
Section 2 provides background on the Amazigh language and our methodology.
Section 3 examines natural language processing tasks, including morphological analysis, part-of-speech tagging, and named entity recognition.
Section 4 analyzes speech technologies, focusing on feature extraction, acoustic modeling, and recent neural approaches.
Section 5 covers optical character recognition for both printed and handwritten Tifinagh text.
Section 6 addresses the development of machine translation.
Section 7 surveys available resources and datasets, while
Section 8 examines practical applications and societal impact.
Section 9 concludes with a synthesis of findings and future research directions.
2. Background and Methodology
2.1. The Amazigh Language: Characteristics and Computational Challenges
The Amazigh language (also known as Berber) belongs to the Afroasiatic language family and is indigenous to North Africa, with speaker communities across Morocco, Algeria, Libya, Tunisia, and several Sahelian regions. Following decades, exemplified by Morocco’s 2011 constitutional establishment of Amazigh as an official language alongside Arabic.
Figure 1 illustrates the geographic distribution of major Amazigh varieties across North Africa, highlighting the extensive territorial coverage and dialectal diversity that creates computational challenges for unified language processing systems. Amazigh comprises several major varieties, including Tarifit (northern Morocco), Tachelhit (southern Morocco), Central Atlas Tamazight (central Morocco), and Kabyle (northern Algeria). This dialectal diversity creates significant challenges for computational processing, particularly for cross-dialectal applications. The Ethnologue identifies thirteen distinct Amazigh languages, though the boundaries between varieties remain subject to ongoing linguistic debate.
A defining characteristic of Amazigh is its orthographic diversity, with three distinct writing systems in active use:
From a computational perspective, Amazigh presents several distinctive challenges:
Morphological complexity: Amazigh employs templatic morphology with extensive affixation. The verbal system features complex inflectional paradigms encoding person, number, gender, aspect, mood, and negation. This complexity necessitates specialized processing approaches beyond those developed for Indo-European languages.
Syntactic structure: Amazigh typically follows VSO (verb-subject-object) word order, though with considerable dialectal variation. This differs from the SVO structure common in major resource-rich languages, creating challenges for computational parsing and generation.
Phonological variation: Amazigh dialects exhibit significant phonological differences, with phoneme inventories varying across regions. These variations manifest in both spoken language technologies and orthographic representation.
Resource scarcity: Despite recent advances in resource development, Amazigh remains under-resourced compared to major world languages, with limited availability of large-scale corpora, comprehensive lexicons, and standardized processing tools.
Figure 3 illustrates how these challenges have been addressed through technological evolution from 2010 to 2025, showing the progression from rule-based to statistical and neural approaches across four key domains.
Author Contributions
Conceptualization, O.A. and K.F.; methodology, O.A.; investigation, O.A. and M.A.; resources, O.A. and M.A.; data curation, O.A.; writing—original draft preparation, O.A.; writing—review and editing, M.A. and K.F.; visualization, O.A.; supervision, K.F.; project administration, O.A. All authors have read and agreed to the published version of the manuscript.
Funding
This research received no external funding.
Conflicts of Interest
The authors declare no conflicts of interest.
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