Model artifacts and experiments published by ZamAI Labs (training results and references).
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Updated
Mar 26, 2026 - Python
Model artifacts and experiments published by ZamAI Labs (training results and references).
Training pipelines and data workflow tools for building and fine-tuning ZamAI models.
Pashto-focused work with mT5 (experiments, fine-tuning, references) in ZamAI Labs.
ZamAI Labs — datasets, Pashto processing, models, and training pipelines powering the ecosystem.
AI scholar assistant providing Islamic guidance, fatwa references, and religious knowledge.
Comprehensive Islamic companion app for daily worship, prayer times, and community.
Smart invoicing, expense tracking, and financial management for freelancers and SMBs.
Cultural Hub — a public-facing platform for Pashto and Afghan cultural + learning experiences.
Curated and processed Pashto datasets for ZamAI Labs (with source attribution and dataset documentation).
AI-powered language learning coach focusing on pronunciation and conversation practice.
Template and starter structure for Pashto language projects in ZamAI Labs.
zamai.dev — the public website for ZamAI (Home of Zeerak).
Zeerak — the flagship AI assistant by ZamAI (public product hub; private-by-choice implementation).
Pashto instruction-tuned LoRA adaptation of microsoft/Phi-3-mini-4k-instruct (ZamAI Labs).
Reusable training and experiment spaces for ZamAI Labs (templates, scripts, and runs).
AI-powered creative studio environment for code, design, and content.
Core processing utilities and pipelines for Pashto text (normalization, cleaning, preprocessing).
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