Join our team and build your career with us
Join a cutting-edge initiative focused on building advanced AI voice infrastructure for Arabic-speaking markets. The project involves developing state-of-the-art Arabic speech technologies, including:
Natural Text-to-Speech (TTS)
Real-Time Automatic Speech Recognition (ASR)
End-to-End Speech-to-Speech Conversational Systems
The solutions are tailored to regional Arabic dialects, including Egyptian, Gulf, Levantine, and others.
Tasks
Job Description
We are seeking a highly skilled Senior Applied Machine Learning Engineer with deep expertise in speech and audio technologies. In this role, you will design, fine-tune, and optimize advanced machine learning models for Arabic voice applications. You will work across the full development lifecycle, from data pipeline construction and model experimentation to inference optimization and production deployment.
This position is ideal for engineers who are passionate about transforming cutting-edge research into scalable, low-latency systems that support natural and accurate Arabic speech interactions.
Key Responsibilities
Benchmark and evaluate TTS and ASR models using Arabic-specific test sets, measuring metrics such as Word Error Rate (WER), naturalness, and dialect coverage.
Fine-tune generative models for voice cloning, zero-shot speaker adaptation, and speech synthesis.
Build and maintain Arabic-focused data pipelines, including:
Audio collection and preprocessing
Diacritization (Tashkil)
Data cleaning and augmentation
Optimize model inference for production environments using:
Quantization
KV-cache tuning
Streaming inference techniques
Integrate and evaluate complete speech-to-speech conversational pipelines.
Conduct experiments based on recent research papers and convert findings into production-ready solutions.
Collaborate with engineering and product teams to deploy robust and scalable speech systems.
Requirements
Required Qualifications
5+ years of experience in Machine Learning, Applied AI, or AI Research.
Strong programming skills in Python.
Extensive hands-on experience with PyTorch and the Hugging Face ecosystem.
Proven experience training and fine-tuning neural models for:
Text-to-Speech (TTS)
Automatic Speech Recognition (ASR)
Audio codecs
Deep understanding of modern speech architectures such as:
Whisper
Conformer
HiFi-GAN
Diffusion-based models
Experience with audio processing techniques including:
Voice Activity Detection (VAD)
Speaker Diarization
Neural Vocoders
Demonstrated ability to implement and adapt research papers into practical production experiments.
Strong understanding of Arabic language challenges, including:
Diacritization (Tashkil)
Dialectal variations
Code-switching
Experience with inference optimization techniques such as:
Quantization
Streaming inference
NVIDIA TensorRT
Preferred Qualifications
Experience developing custom NVIDIA CUDA kernels for high-performance model inference.
Familiarity with speculative decoding and other advanced acceleration techniques.
Experience deploying models at scale in cloud or GPU-based production environments.
Contributions to open-source speech or machine learning projects.
Benefits
All employees benefits for free (our famous games room, daily breakfast, fruits, coffee and other hot drinks, soft drinks and juices, company days out and parties…)
Social insurance
Open-door management policy
Full Medical insurance
Accommodation and Transportation Allowance
Friendly environment that values innovation and efficiency
Exciting opportunities for career growth and talent development
Feedback encouragement
Recognition and reward programs
Competitive salaries and incentives
Friendly environment
Flexible and Comfortable schedule
Fun committees
Monetary rewards
Fun, smart and creative people
Career possibilities with growing team
Paid vacations
Social benefits