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Remote Huggingface Jobs in Virginia (NOW HIRING)

Strong proficiency with PyTorch and the HuggingFace ecosystem (Transformers, PEFT, Datasets ... remote sensing imagery * Familiarity with electro-optical and SAR satellite imagery formats and ...

Remote Huggingface information

What is the difference between Remote Huggingface vs Remote Machine Learning Engineer?

AspectRemote HuggingfaceRemote Machine Learning Engineer
CredentialsExperience with NLP, Python, and ML frameworks; familiarity with Huggingface librariesDegree in Computer Science or related field; experience with ML algorithms, Python, and cloud platforms
Work EnvironmentCollaborative, often project-based, with a focus on NLP and AI modelsDeveloping, testing, and deploying ML models across various domains, including NLP, CV, and more
Industry UsagePrimarily in AI/ML companies, research labs, and startups focusing on NLPAcross tech companies, startups, and research institutions working on machine learning solutions

Remote Huggingface roles focus on NLP and AI model development using Huggingface libraries, requiring specific NLP expertise. Remote Machine Learning Engineers have broader responsibilities across ML domains, with a wider skill set. Both roles are remote-friendly but differ in specialization and scope.

What are some common challenges faced by remote Huggingface engineers when collaborating with global teams?

Remote Huggingface engineers often collaborate with colleagues across multiple time zones, which can make scheduling meetings and ensuring real-time communication challenging. To overcome this, teams rely heavily on asynchronous communication tools, thorough documentation, and clear workflows. Another challenge is staying up to date with rapid developments in machine learning models and open-source contributions, requiring proactive engagement with the Huggingface community and internal knowledge-sharing sessions. Despite these hurdles, remote engineers typically benefit from a flexible work environment and access to a vibrant, supportive team.

What are the key skills and qualifications needed to thrive as a Remote Hugging Face Engineer, and why are they important?

To thrive as a Remote Hugging Face Engineer, you need a strong background in machine learning, deep learning frameworks, and proficiency in Python, often supported by a degree in computer science or related fields. Experience with Hugging Face Transformers, PyTorch or TensorFlow, and version control systems like Git is typically required. Excellent communication, self-motivation, and collaboration skills are essential for working effectively in a distributed team environment. These skills and qualities are crucial for building robust AI solutions, contributing to open-source projects, and ensuring project success in a remote setting.

What are Remote Huggingface jobs?

Remote Huggingface jobs are positions offered by Hugging Face, a company known for its open-source machine learning and natural language processing tools, that allow employees to work from anywhere outside of a traditional office setting. These roles can include engineering, research, product management, and other tech-related positions. Working remotely for Hugging Face gives employees flexibility while contributing to cutting-edge AI projects and collaborating with an international team using digital communication tools. Remote employees are typically expected to have reliable internet connections and be proactive in virtual collaboration. Hugging Face is committed to supporting remote work and fostering an inclusive, global workplace.

Does Hugging Face offer remote work?

Hugging Face offers remote work opportunities for many roles, including those related to machine learning, software engineering, and research. Employees can often work remotely depending on the position and team requirements, with some roles requiring occasional in-office presence or specific time zone considerations.
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AI/Machine Learning Engineer - Geospatial (TS/SCI) with Security Clearance

AI/Machine Learning Engineer - Geospatial (TS/SCI) with Security Clearance

LaunchCode

Herndon, VA • On-site, Remote

$175K - $250K/yr

Other

Posted 7 days ago


Job description

Title: AI/Machine Learning Engineer – Vision Language Models / Multimodal AI (NGA)
Location: Springfield or Herndon, VA (onsite)
Clearance: TS/SCI (CI Poly preferred)
Position Type: Full-Time, Direct Hire
Pay: $175,000 to $250,000 for an SME Company: The name of our partner organization will be disclosed during the interview
process. This is not a direct role with LaunchCode; it is a position through LaunchCode,
working with one of our partner companies. Disclaimer: We are unable to provide work sponsorship for this role Overview: We’re hiring a AI/Machine Learning Engineer with strong experience in multimodal AI and
large-scale model training to support advanced vision-language initiatives in a secure
government environment. This role will focus on fine-tuning Vision Language Models
(VLMs) on domain-specific geospatial imagery, building scalable AWS training
infrastructure, and developing evaluation frameworks for image understanding and spatial
reasoning. Ideal candidates will have deep experience with PyTorch, HuggingFace,
distributed training, and computer vision, along with the ability to optimize and deploy
multimodal models in mission-critical environments. Huge plus for candidates who have hands-on experience taking multimodal models such
as CLIP, LLaVA, Qwen-VL, or similar Vision Language Models and fine-tuning them on
classified or mission-specific imagery datasets. The ideal candidate can build the AWS
infrastructure needed to train and scale these models, evaluate performance
improvements across real-world use cases, and deploy solutions into secure government
or air-gapped environments. Key Responsibilities: • Design and execute fine-tuning pipelines for Vision Language Models (VLMs) using domain-specific imagery datasets • Handle data preprocessing, training orchestration, and hyperparameter optimization for multimodal models • Build evaluation frameworks for image understanding, visual question answering, and spatial reasoning tasks • Develop scalable AWS-based ML infrastructure using SageMaker and GPU-enabled EC2 for distributed training • Create data pipelines for curating, annotating, and transforming geospatial imagery into model-ready datasets • Partner with applied scientists and architects on model architecture improvements, LoRA/QLoRA strategies, and inference optimization, Required Qualifications: • Active TS/SCI with CI Poly • 5+ years of machine learning engineering experience focused on deep learning • 1+ year of hands-on experience fine-tuning foundation models (LLMs or VLMs) • Experience with LoRA, QLoRA, adapters, supervised fine-tuning, instruction tuning, and RLHF/DPO • 4+ years of advanced Python development for ML workloads • Strong PyTorch and HuggingFace experience (Transformers, PEFT, Datasets, Accelerate) • Experience with distributed training frameworks such as DeepSpeed, FSDP, or Megatron • 3+ years working with computer vision or multimodal models • Familiarity with vision transformer architectures (ViT, CLIP, LLaVA, etc.) • Experience processing and augmenting image datasets at scale • 3+ years with AWS ML infrastructure including SageMaker, EC2 GPU environments, and S3 • Experience with ML evaluation pipelines, benchmarking, metrics, and result analysis • Strong software engineering fundamentals including version control, testing, and CI/CD Preferred Qualifications: • 2+ years working with geospatial or remote sensing imagery • Experience with EO or SAR satellite imagery • Understanding of geospatial metadata, coordinate systems, and imagery preprocessing • Experience with model quantization / inference optimization (vLLM, TensorRT, ONNX) • MLOps tooling experience (MLflow, Weights & Biases, SageMaker Experiments) • Familiarity with annotation tools and active learning workflows • Containerized ML experience with Docker / ECR / ECS / EKS • Experience supporting ATO processes and NIST 800-53 compliance • Experience deploying in air-gapped/disconnected environments • Familiarity with multimodal evaluation benchmarks (MMMU, MMBench, GQA) • Publications or contributions in computer vision, multimodal AI, or VLMs • Synthetic data generation experience for training augmentation