W
AI

Senior Applied Machine Learning Engineer - Speech Language Systems (Confidential Project)

WASAMAAN LLP · الرياض, S01, SA

Actively hiring Posted 4 months ago

Job Title

Senior Applied Machine Learning Engineer – Speech & Language Systems (Confidential Project)

Location

Remote (Full-Time)

GCC Time Zone Preferred

About the Role

We are building a next-generation multilingual speech and language intelligence system designed for real-time, production-grade deployment.

This is a greenfield, R&D-intensive role for an engineer who has hands-on experience fine-tuning large speech and language models using modern parameter-efficient techniques.

We are specifically looking for someone who has built and deployed custom ASR, TTS, and LLM systems not someone who has only integrated APIs.

What You’ll Work On

  • Fine-tuning state-of-the-art speech recognition models for dialect-heavy, real-world audio
  • Training and attaching LoRA / PEFT adapters to transformer-based language models
  • Improving intent understanding for noisy, informal, and code-switched language
  • Fine-tuning multi-speaker TTS models for natural prosody and accent control
  • Building low-latency inference pipelines for streaming audio systems
  • Designing scalable data pipelines for large-scale speech dataset processing
  • Optimizing quantized models for real-time deployment

Required Technical Experience

We are only considering candidates with hands-on experience in the following areas:

Speech Recognition (ASR)

  • Fine-tuning models such as Whisper, wav2vec2, or similar architectures
  • Adapter-based training (LoRA / PEFT)
  • Training on domain-specific or dialect-heavy datasets
  • Handling noisy, real-world audio

Large Language Models (LLMs)

  • Supervised fine-tuning
  • Adapter-based training
  • Intent classification & slot extraction systems
  • Retrieval-Augmented Generation (RAG)
  • Model quantization (4-bit / 8-bit)

Text-to-Speech (TTS)

  • Tacotron, VITS, XTTS, or similar architectures
  • Multi-speaker training
  • Accent and prosody adaptation
  • Speaker embedding tuning

Infrastructure

  • PyTorch
  • HuggingFace Transformers
  • Distributed training workflows
  • Model serving optimization
  • Real-time inference pipelines

Strong Plus

  • Experience with dialectal or low-resource languages
  • Experience building telephony-integrated speech systems
  • Experience training on custom speech corpora
  • Experience reducing ASR WER in non-standard speech environments

What This Role Is NOT

  • Not a generic data science role
  • Not an analytics or dashboard position
  • Not prompt engineering only
  • Not API-only AI development

This is a deep applied ML engineering role focused on model training, adaptation, and production deployment.

Ideal Candidate Profile

  • 5+ years of ML engineering experience
  • Has personally fine-tuned large-scale models
  • Has deployed speech systems in production
  • Comfortable with experimental R&D
  • Strong mathematical and optimization background
  • Thinks in terms of systems architecture, not demos

Compensation

Competitive salary + equity (depending on experience and impact potential).

Confidential project details shared after technical screening.

Job Type: Full-time

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