
Research Scientist — Sovereign AI Research
Dream · Tel Aviv-Yafo, Tel Aviv District, Israel
- On site
- Full-time
- $150,000 / year
- Tel Aviv-Yafo, Tel Aviv District, Israel
Job highlights
- Conduct cutting-edge AI research for cyber defense.
- Develop novel models for critical infrastructure protection.
- Collaborate across AI disciplines and engineering.
- Work with scarce data and noisy labels.
- Drive research projects from concept to production.
About the role
Research Scientist — Sovereign AI Research
At Dream, we redefine cyber defense vision by combining AI and human expertise to create products that protect nations and critical infrastructure. This is more than a job; it’s a Dream job. Dream is where we tackle real-world challenges, redefine AI and security, and make the digital world safer. Let’s build something extraordinary together.
Dream's AI cybersecurity platform applies a new, out-of-the-ordinary, multi-layered approach, covering endless and evolving security challenges across the entire infrastructure of the most critical and sensitive networks. Built as part of a broader sovereign AI platform, our technology is designed to operate in on-premise, private cloud, and air-gapped environments, enabling nations to maintain full control over their data, infrastructure, and AI capabilities. Central to Dream's proprietary Cyber Language Models are innovative technologies that provide contextual intelligence for the future of cybersecurity.
At Dream, our talented team, driven by passion, expertise, and innovative minds, inspires us daily. We are not just dreamers, we are dream-makers.
The Dream Job:
Nations are waking up to a hard truth: critical intelligence infrastructure built on hyperscaler black boxes isn't a solution it's a dependency. The DREAM Sovereign AI Research Group exists to answer that differently.
We're not fine-tuning what already exists. We're rethinking the models architecture from the ground up modular, composable, and built with compute governance as a first-class design constraint, not an afterthought.
We operate under real-world constraints. The interesting problems live at the intersections of disciplines. That's where we operate.
The Dream-Maker Responsibilities:
Open Research Tracks
We are hiring across the following specializations. We expect depth in at least one area and the intellectual range to collaborate across them.
- Computer Vision: object detection, segmentation, multimodal grounding, vision-language models, contrastive and self-supervised representation learning, low-resource and few-shot visual recognition.
- NLP / Speech: LLMs, NERs, relation extraction, span-based and generative IE, semantic textual similarity, multilingual and cross-lingual transfer.
- Reinforcement Learning: MDPs, POMDPs, model-based and model-free RL, Online Offline methods, reward modeling, sim-to-real transfer, compute-aware planning.
- Graph Learning: GNNs, graph clustering, community structure, generative methods, knowledge graph embeddings, dense and sparse semantic retrieval.
- Optimization: convex and nonconvex optimization, constrained and Lagrangian methods, combinatorial and integer programming, knowledge distillation (response, feature, and relation-based), test-time optimization, Bayesian optimization, resource-aware inference.
- Representation Learning: contrastive learning, self-supervised and unsupervised pre-training, disentangled representations, metric learning and embedding spaces, cross-modal and multimodal alignment, meta learning (hypernetworks), transfer learning and domain adaptation, probing and interpretability of learned representations, world models.
- Neurosymbolic AI: neuro-symbolic integration, differentiable theorem proving, inductive logic programming (ILP), probabilistic soft logic (PSL), causal inference and structural causal models (SCMs), programmatic and compositional reasoning
Responsibilities:
- Define and execute research within your track, experiments, quality gates, and upper bounds in a rigorous manner.
- Collaborate across tracks on system integration and cross-disciplinary research.
- Collaborate with engineering teams until production.
- Mentor junior researchers and contribute to a culture of technical excellence.
The Dream Skill Set:
- PhD in Computer Science, Electrical Engineering, Mathematics, or a related field OR a Distinguished MSc with a strong publication record or demonstrated research impact equivalent to doctoral-level work (5+ years of experience).
- Strong publication record at top venues (NeurIPS, ICML, ICLR, ACL, CVPR, ICCV, EMNLP, AAAI, or equivalent).
- Proficiency in Python and deep learning frameworks (PyTorch, JAX).
- Demonstrated ability to drive independent research projects end-to-end.
- Hands-on experience with data pipelines: sourcing, structuring, cleaning, and transforming raw data into training-ready assets is treated here as a core research competency, not a support task.
We work on hard problems where data is scarce, labels are noisy. We expect researchers who don't wait for better conditions, who will reformulate the problem when needed, devise novel strategies to generate or simulate data, and find signal where others see noise. If your instinct when blocked is to push harder rather than halt, you'll thrive here.
Never Stop Dreaming...
If you think this role doesn't fully match your skills but are eager to grow and break glass ceilings, we’d love to hear from you!
Key skills/competency
- AI Research
- Cybersecurity
- Computer Vision
- Natural Language Processing
- Reinforcement Learning
- Graph Learning
- Representation Learning
- Neurosymbolic AI
- Deep Learning
- Python
Skills & topics
- Research Scientist
- Sovereign AI
- Artificial Intelligence
- Cybersecurity
- Machine Learning
- Deep Learning
- Computer Vision
- NLP
- Reinforcement Learning
- Python
How to get hired
- Tailor your resume: Highlight your PhD or equivalent research experience and publication record at top AI venues.
- Showcase research impact: Emphasize end-to-end project leadership and experience with challenging data scenarios.
- Demonstrate technical skills: Detail your proficiency in Python and deep learning frameworks like PyTorch or JAX.
- Prepare for technical interviews: Be ready to discuss your research, problem-solving approach, and collaboration style.
- Express passion for Dream's mission: Connect your research interests to protecting national infrastructure and advancing sovereign AI.
Technical preparation
Behavioral questions
Frequently asked questions
- What are the key research areas for the Research Scientist role at Dream?
- The Research Scientist role at Dream focuses on several key areas including Computer Vision, NLP/Speech, Reinforcement Learning, Graph Learning, Optimization, Representation Learning, and Neurosymbolic AI. Candidates are expected to have depth in at least one area and the ability to collaborate across these specializations.
- What qualifications are essential for a Research Scientist at Dream?
- Essential qualifications include a PhD in a related field or an MSc with significant research impact, a strong publication record at top-tier conferences, proficiency in Python and deep learning frameworks (PyTorch, JAX), and demonstrated ability to lead independent research projects end-to-end. Experience with data pipelines is also a core competency.
- How does Dream approach AI research differently from other companies?
- Dream differentiates itself by focusing on sovereign AI for cyber defense, building models from the ground up with compute governance as a primary constraint, and operating under real-world conditions with scarce data. They are not just fine-tuning existing models but rethinking architectures for modularity and composability.
- What kind of challenges can I expect as a Research Scientist at Dream?
- You can expect to work on hard problems involving scarce data and noisy labels. The role requires researchers who can reformulate problems, devise novel strategies for data generation or simulation, and find signal in complex environments. The focus is on pushing boundaries and overcoming obstacles.
- What is the typical work arrangement for a Research Scientist at Dream?
- The job description mentions the technology is designed to operate in on-premise, private cloud, and air-gapped environments, implying a strong focus on secure and potentially on-site or hybrid work setups. While not explicitly stated as remote, the nature of sovereign AI research often involves secure, controlled environments.
- How important is collaboration in the Research Scientist role at Dream?
- Collaboration is highly emphasized. You will be expected to collaborate across different research tracks for system integration and cross-disciplinary research, as well as work closely with engineering teams until production. Mentoring junior researchers is also a key responsibility.
- What is Dream's mission regarding AI and cybersecurity?