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חברה חסויה
Location: Herzliya
Job Type: Full Time
We're building AI to tackle one of the hardest operational challenges in business: getting workforce management right across many markets, each with its own tax rules, labor laws, payment rails, and constantly shifting policies.
In this role on our AI team, you'll focus on agentic workflow automation. You'll design, build, and deploy reliable AI agents that automate complex HR, payroll, and payment workflows, handling decision-making, document intelligence, and complex tasks that typically require human judgment.
What You'll Do:
Design and build agent-based systems that automate document processing, business insights, and complex enterprise workflows
Build observability, evaluation, and feedback loops for agent behavior to improve reliability, accuracy, and trust in production
Own the technical architecture and engineering standards for agentic systems
Build or manage data pipelines to process large volumes of documents and unstructured data
Collaborate with domain experts to identify high-value automation targets and deliver end-to-end solutions
Stay current on agent frameworks, LLM capabilities and limitations, and apply emerging patterns pragmatically in production
Requirements:
4+ years of experience in software engineering, AI/ML engineering, or a similar role with strong engineering fundamentals
Experience building or integrating production LLM systems, AI agents, or workflow automation solutions
Strong Python skills and solid software engineering principles
Familiarity with orchestration and agent frameworks such as LangGraph, OpenAI/Claude Agents SDK, or similar tools
Strong understanding of prompting, retrieval, tool use, and orchestration patterns, including their limitations in production
Experience with cloud platforms and containerized deployments
High ownership, strong problem-solving skills, and comfort working in ambiguous environments
BS/MS in Computer Science, Engineering, Data Science, or equivalent practical experience
This position is open to all candidates.
 
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חברה חסויה
Location: Herzliya
Job Type: Full Time
We're building AI to tackle one of the hardest operational challenges in business: getting workforce management right across many markets, each with its own tax rules, labor laws, payment rails, and constantly shifting policies.
In this role on our AI team, you'll build and scale core AI systems that power products. You'll work across agentic document intelligence, autonomous agents, compliance AI, and ML-powered insights, prototyping quickly, building robust evaluations, and shipping production-grade AI with real business impact.
What You'll Do:
Build and ship AI/ML solutions using LLMs, agents, RAG, and document understanding models, alongside classic ML
Prototype quickly, validate feasibility, and turn strong POCs into production systems
Evaluate models and architectures, apply testing and guardrails to improve agent and service reliability
Research and apply emerging techniques: multimodal/document AI, agentic frameworks, synthetic data generation, and new architectural approaches
Work cross-functionally with product, R&D, and compliance teams to deliver end-to-end solutions
Contribute to scalable, secure architecture and engineering best practices for AI delivery
Requirements:
5+ years of experience in AI/ML engineering or applied data science with production engineering responsibilities
Strong Python skills and solid software fundamentals
Experience building production LLM-powered systems, including prompt design, embeddings, fine-tuning, RAG; agent experience is a plus
Solid ML foundations; NLP, document AI, or multimodal experience is a plus
Hands-on experience with modern AI tooling (Hugging Face, PyTorch, LangChain, LangGraph) and cloud infrastructure (AWS preferred)
Strong communication and collaboration skills; comfortable working cross-functionally with product and domain teams
BS/MS/PhD in Computer Science, Data Science, or Engineering (MS/PhD a plus)
This position is open to all candidates.
 
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Location: Herzliya
Job Type: Full Time
This is a high-ownership, builder-first Sr. Software Engineer role. You will design, build, and ship AI-integrated data systems from concept through production - owning outcomes end-to-end, including deployment, monitoring, cost, and business impact.

We are seeking a candidate who views AI tooling as a fundamental force multiplier in their daily engineering process. This position is central to our transition into an AI-native function, requiring an individual capable of making decisive, pragmatic architectural choices on reversible matters to maintain momentum. We need an experienced builder of production-grade, data-centric systems who is obsessed with delivering customer value and possesses a deep, curious enthusiasm for the transformative potential of AI.

What You Will Build
AI-Native Systems Development. Design, build, and own scalable data and ML pipelines, backend services, and AI-powered capabilities that are part of the platform's production decision-making layer. AI and ML components are runtime dependencies in this role - not research projects or experiments. Candidates will have strong back end and data engineering skills to thrive in this space.
Daily Shipping. Decompose complex work into safely mergeable increments and ship them daily. Treat large, multi-day pull requests as a risk to momentum. Use feature flags, canary releases, and rollback architecture to manage risk through isolation - not through avoidance.
AI-Augmented Engineering Workflow. Leverage AI-assisted development tooling (code generation, automated testing, architecture prototyping) as a core workflow multiplier. Evaluate and experiment with emerging AI tools and frameworks with direct hands-on engagement. Bring technical depth to AI fluency - architecture and capability tradeoffs, not surface-level awareness.
End-to-End Ownership. Own your work from design through production deployment, operational monitoring, and business impact measurement. Accountability extends beyond the feature to CI/CD pipeline health, observability, cost efficiency, and domain-level outcomes.
Architectural Decision-Making. Make pragmatic, timely architectural choices that balance modern AI and data technologies with reliability, cost, and delivery speed. Distinguish reversible vs. irreversible decisions and move forward without waiting for consensus on the former. Document decisions in lightweight ADRs and own the outcomes.
Cross-Functional Collaboration. Partner with product, design, infrastructure, and GTM teams to translate customer and business needs into technical solutions. Operate with business awareness - understand how your systems impact revenue, customer outcomes, and strategic priorities.
Requirements:
Required
5+ years building and shipping production-grade back end and data systems in distributed cloud environments (AWS and/or GCP).
Hands-on AI/ML integration in production workflows. You have shipped systems where AI, LLM, or agent-based components are part of the production runtime - not just prototypes or research. You can speak to the architectural tradeoffs of integrating AI into live backend systems.
Active use of AI-assisted development tooling as a workflow multiplier. You currently use AI tooling (Copilot, Cursor, or equivalent) to accelerate your engineering output and can articulate specifically how it increases your throughput. You stay current on relevant tooling without being directed to do so.
Strong back end expertise in Java (Spring Boot), Python, and/or Go. Hands-on experience with relational and non-relational databases, data modeling, and query optimization.
Demonstrated expertise in automated testing, CI/CD, and observability.
High-Velocity ownership - candidates should thrive in high-ownership, builder-first environments where shipping daily and owning outcomes are fundamental to the role.
Demonstrated ability to break work into small, incremental deliveries and maintain strong delivery flow.
This position is open to all candidates.
 
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חברה חסויה
Location: Herzliya
Job Type: Full Time
Join our Analytics Research team and help shape next-generation Customer Engagement and Interaction Analytics solutions. You will design, research, and productionize advanced NLP and agent-based AI capabilities that autonomously reason, plan, and act across complex customer interaction workflows.
Youll work end-to-end-from foundational research and rapid experimentation to scalable deployment-building systems that combine LLMs, tools, memory, and orchestration to deliver trusted, enterprise-grade AI used by customers worldwide.
What Youll Do:
Research, design, and develop state-of-the-art NLP, LLM, and Agentic AI systems
Build and evolve autonomous and semi-autonomous agents for interaction analysis and customer engagement use cases
Advance analytics capabilities using reasoning, planning, tool use, and multi-agent collaboration
Tackle complex research problems over large-scale conversational and multimodal data
Collaborate on broader analytics initiatives, including scalable ML systems and data-intensive pipelines
Design and run experiments, evaluate agent behavior and model quality, and communicate results clearly
Take solutions from prototype to production, balancing research innovation with robustness and performance
Requirements:
M.Sc. or Ph.D. in Computer Science, AI, Data Science, or equivalent practical experience
2-3+ years of industry experience in applied ML, NLP, or AI research
Strong foundation in Machine Learning, Deep Learning, and modern LLM-based architectures
Hands-on experience with PyTorch and/or TensorFlow
Proven experience with NLP and transformer-based models
Familiarity with or strong interest in Agentic AI concepts (tool use, planning, memory, orchestration, evaluation)
Strong problem-solving skills and algorithmic thinking
Excellent programming abilities and experience delivering production-quality systems
Proven ability to design experiments, analyze results, and present insights
Strong collaboration and communication skills
Nice to Have:
Experience building or evaluating LLM-based agents or multi-agent systems
Experience owning full ML lifecycles in production environments
Familiarity with large and complex codebases and system-level design
Experience with Linux/Windows, cloud platforms (AWS, Azure), and scalable AI infrastructure
Background in speech analytics, conversational AI, or customer interaction data
This position is open to all candidates.
 
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הגשת מועמדותהגש מועמדות
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2 ימים
Location: Herzliya
Job Type: Full Time and Hybrid work
Required Senior AI-Native Software Engineer
Role summary:
You will join a high-impact AI engineering team within R&D, owning problems end-to-end from understanding the business need, through architecture and implementation, to production monitoring. This is a new way of working: you'll work directly with business stakeholders, ship AI-driven capabilities at speed, and help define the methodology as we build it.
As a member of the AI Foundations organization, you will lead best practices, champion early adoption of new technologies, and influence the direction of our R&D guild - building and shipping cutting-edge agentic applications that deliver seamless experiences to our users.
Location:
Hybrid - Herzliya, Israel
Full-time
What you'll do:
Own the full development loop understand the business problem, define the solution, architect it, build it, ship it, and monitor it in production
Use AI as your primary development tool, achieving in a day what used to take a team a week
Collaborate with your team and business stakeholders to define decision logic, risk thresholds, and success metrics
Design and build evaluation frameworks as part of every solution you don't ship what you can't measure
Own production readiness monitoring, alerting, and observability go in on day one
Contribute to shaping team practices, tooling, and engineering standards across the pod
Decompose business problems into agentic workflows, orchestrated flows, and reusable capabilities.
Requirements:
5+ years of software engineering experience, building and operating production systems
Hands-on experience with AI/ML systems in production not just prototyping, but shipping, monitoring, and iterating
Genuine fluency with AI-powered development tools you use them daily to move faster
Experience designing agentic architectures: orchestration, multi-step workflows, RAG pipelines, fallback and error handling
Strong evaluation instincts you define metrics, build test sets, and validate before shipping
Comfortable across the full stack you move between prompt engineering, backend services, data pipelines, and infrastructure as needed
High degree of independence you lead work from problem definition to production without waiting for detailed specs
Excellent communication you flag risks early, give direct feedback, and collaborate openly Fintech or regulated-environment experience is an advantage.
This position is open to all candidates.
 
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הגשת מועמדותהגש מועמדות
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חברה חסויה
Location: Herzliya
Job Type: Full Time
Play a part in shaping the future of human-computer interaction. As an MLOps Engineer, you will be the backbone of the machine learning infrastructure that powers our speech, audio, and conversational AI teams - ensuring their models are trained on the best possible data.
You will bridge the gap between research, data science, and engineering, owning the full ML lifecycle from large-scale data pipelines and distributed GPU training through to low-latency, high-fidelity inference and optimization. You'll partner closely with Audio ML Engineers, Speech ML Engineers, and ML Data Scientists to remove friction across their workflows and accelerate the path from research to product.

The MLOps Engineer will drive end-to-end quality and operational excellence across data ingestion, model training, deployment pipelines, and MLOps tooling for our speech and audio ML platforms. This hire will build, deploy, and optimize production-grade systems with a strong emphasis on scalable, GPU-accelerated infrastructure. You will own the training infrastructure that powers distributed and self-supervised model training on HPC and Slurm-managed clusters, as well as the inference pipelines that bring low-latency, high-fidelity audio and speech models to production. You will establish standard methodologies for model integration, deployment, monitoring, and reproducibility using CI/CD principles.

Responsibilities
Design, build, and operate large-scale data pipelines for proprietary audio and speech datasets - supporting curation, quality monitoring, and validation at scale alongside our ML Data Science team.
Partner closely with Audio ML Engineers, Speech ML Engineers, ML Data Scientists, and product teams to define metrics, gather requirements, and bring new capabilities to life.
Build and operate distributed GPU training workflows, including job scheduling and resource management on Slurm-managed HPC clusters, for both supervised and self-supervised methods.
Optimize model inference for low latency and high-fidelity streaming across serving environments, including optimization for Apple silicon.
Design and maintain automated pipelines for model training, evaluation, versioning, and deployment, with special attention to speech, audio, and signal-processing workflows.
Identify and resolve bottlenecks in ML and data workflows, improving system reliability, latency, and throughput at scale.
Requirements:
Minimum Qualifications
3 years in software engineering with demonstrated experience in large-scale software system design and implementation.
Bachelor's Degree in Software Engineering, Computer Science, Electrical Engineering, Statistics, Machine Learning, Operations Research, or a related field.
Proven track record of shipping and maintaining production-grade ML systems end-to-end.
Hands-on experience with GPU-based model training and inference, including distributed/multi-node training.
Experience operating workloads on HPC environments and job schedulers such as Slurm.
Proficiency in Python and familiarity with deep learning frameworks such as PyTorch, TensorFlow, or JAX.

Preferred Qualifications
Experience supporting speech and audio ML pipelines (e.g., ASR, TTS, speaker recognition, voice isolation, generative speech) and large-scale audio data processing.
Experience with infrastructure for self-supervised and large-model training.
Deep familiarity with GPU performance tuning, mixed-precision training, and distributed training frameworks.
Familiarity with data quality frameworks, model monitoring, drift detection, and observability practices in production
Experience optimizing models for on-device or Apple silicon inference
This position is open to all candidates.
 
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Location: Herzliya
Job Type: Full Time
Join our team as a Machine Learning Engineer and help shape the future of on-device AI. You'll research, design, and deploy cutting-edge deep learning models optimized for our silicon edge devices, working across the full ML lifecycle alongside hardware, software, and product teams.

We are looking for a talented and motivated Machine Learning Engineer to join our team. You will work within a collaborative, research-driven engineering culture that values innovation and rigor, with the opportunity to build impactful AI products deployed at scale on real devices. We offer competitive compensation, benefits, and opportunities for professional growth.

Responsibilities
Research and design state-of-the-art deep learning models optimized for resource-constrained our silicon edge devices.
Drive projects across the full ML lifecycle, from ideation and experimentation to production deployment.
Collaborate closely with cross-functional teams including hardware, software, and product.
Continuously evaluate and adopt new techniques to improve model performance and efficiency on-device.
Requirements:
Minimum Qualifications
M.Sc. or Ph.D. in Computer Science, Electrical Engineering, or a related field - or equivalent practical experience.
Strong foundation in deep learning theory and hands-on experience training large-scale models.
Proficiency in Python and deep learning frameworks such as PyTorch or TensorFlow/JAX.
Hands-on experience with model compression and optimization techniques (quantization, pruning, distillation, etc.).
Familiarity with on-device inference frameworks such as Core ML, TensorFlow Lite, ONNX Runtime, or TensorRT.
Experience working with multimodal data (e.g., images, audio, time-series, or sensor fusion).
Strong analytical and problem-solving skills; ability to translate research ideas into production-quality code.

Preferred Qualifications
Experience deploying models to embedded systems, mobile devices, or custom silicon (NPU/DSP).
Familiarity with hardware-aware neural architecture search (NAS) or AutoML techniques.
Exposure to low-level optimization techniques such as mixed-precision training or operator fusion.
Hands-on experience with our Neural Engine and Core ML for on-device inference.
Publications or open-source contributions in efficient deep learning or edge AI.
Experience with MLOps workflows and CI/CD pipelines for model development.
This position is open to all candidates.
 
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Location: Herzliya
Job Type: Full Time
Play a part in shaping the future of human communication technology. Contribute to a unique multidisciplinary system that models and understands human interaction, redefining what's possible with computer vision, physics, and signal processing at the edge.

In this role, you'll be at the forefront of a one-of-a-kind technical challenge, developing and implementing novel methods for processing and enhancing a proprietary sensor that models human communication. You'll work hands-on with exclusive data: designing the algorithms that process it, and defining the metrics that evaluate and drive its continuous improvement.

Your insights will carry real weight, directly informing sensor decisions and shaping the architecture of the broader system. You'll lead multi-level research efforts to advance a truly unique sensor, drawing on a rich and diverse technical toolkit spanning signal processing, computer vision, physics, and state-of-the-art deep learning. You'll own proprietary data collections using high-end computer vision techniques, studying signals from their raw-level behavior all the way through to their top-level impact on product performance.

This is a role that lives at the intersection of deep research and real-world impact. You'll conduct cutting-edge investigations and translate your findings directly into product outcomes, influencing decisions across the full stack, from hardware choices and algorithmic pipelines to the features that reach the final product.

Responsibilities
Develop and implement novel algorithms for modeling and understanding human communication, combining 2D/3D computer vision, signal processing, and deep learning.
Work with unique proprietary datasets - design large-scale data processing pipelines, define quality metrics, and provide actionable feedback to improve data collection and labeling workflows.
Devise and implement rigorous evaluation frameworks to measure model and data quality, and drive continuous improvement across the system.
Design neural network architectures optimized for SOTA accuracy and computational efficiency.
Stay current with the latest research across computer vision, signal processing, and efficient ML; evaluate and integrate relevant advances into the team's work.
Contribute to internal tooling and best practices for reproducible, scalable ML research and deployment.
Requirements:
Minimum Qualifications
M.Sc. in Computer Science, Electrical Engineering, or a related field, with a thesis in AI, computer vision, data science, or an equivalent discipline.
At least 3 years of hands-on experience in machine learning.
At least 3 years of hands-on experience in image processing and computer vision.
Strong foundation in deep learning theory and practical experience training large-scale models.
Proficiency in Python and deep learning frameworks such as PyTorch.
Background in signal processing and physics-based modeling.
Practical experience with large-scale data processing, pipeline design, and performance evaluation.
Experience utilizing modern frameworks and keeping up with recent research.

Preferred Qualifications
Knowledge and experience with 3D data (e.g., point clouds, depth sensing, 3D reconstruction).
Ph.D. in a relevant field.
Hands-on experience with model compression techniques (quantization, pruning, distillation).
Experience with MLOps workflows and CI/CD pipelines for model development.
This position is open to all candidates.
 
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25/06/2026
Location: Herzliya
Job Type: Full Time
We are seeking a highly motivated AI Solutions Engineer to join a team leading the evaluation, adoption, and integration of AI-based tools into our development processes.
This role involves identifying opportunities to enhance workflows through AI, implementing internal tools that leverage AI capabilities, and collaborating with cross-functional teams to ensure seamless integration and usability.
Responsibilities:
Lead end-to-end AI initiatives from ideation to production
Design and deploy AI agents, automations, and data-driven solutions
Partner with business and engineering teams to deliver impactful use casesDrive prioritization based on business value and strategic impact
Define KPIs and monitoring to track performance, adoption, and ROI
Provide insights to leadership and lead cross-functional efforts in a matrix environment
Lead technical AI sessions, workshops, and internal enablement programs to drive adoption and upskill teams.
Requirements:
Hands-on experience building AI solutions, agents, or automations
Strong experience with Azure and modern AI ecosystems
Hands-on software development experience
Experience with AI Agents like GitHub Copilot or Claude Code
Strong communication skills with ability to work with senior stakeholders
Strong problem-solving, systems thinking, and ownership mindset
Experience driving AI adoption and evangelizing best practices across engineering teams.
This position is open to all candidates.
 
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הגשת מועמדותהגש מועמדות
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חברה חסויה
Location: Herzliya
Job Type: Full Time
As a member of our fast-paced group, youll have the unique and rewarding opportunity to shape the future. We are looking for people with excellent applied machine learning, NLP experience and solid engineering skills.

This role will have the following responsibilities:
Developing and integrating AI systems (e.g RAG, agents) into deliverable products.
Developing and evaluating domain specific Large Language Models for various tasks and applications.
Understanding product requirements, translating them into modeling tasks and engineering tasks.
Collaborating with Hardware and Software teams across us.
Translating theoretical ideas into tangible innovations.
Requirements:
Minimum Qualifications:
BSc/MSc in Computer Science or Electrical Engineering or related fields.
Minimum of 3 years relevant industry experience.
Excellent knowledge and good practical skills in major Machine Learning algorithms.
Strong prototyping skills to build demos for early feedback.
Experience in Machine Learning model development.
Good interpersonal skills and team player.

Preferred Qualifications:
Proficiency in LLM application frameworks such as LangChain, LlamaIndex, or Haystack.
Strong programming skills.
Willingness to dive into production code.
This position is open to all candidates.
 
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הגשת מועמדותהגש מועמדות
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חברה חסויה
Location: Herzliya
Job Type: Full Time
We are looking for a talented and curious Audio Machine Learning Engineer to join our growing Machine Learning team in Herzliya. In this role, you will help create the full data lifecycle that underpins our models: from designing what data we collect, through curation and quality monitoring, to running rigorous experiments that drive model improvements. You will work closely with other ML and Data Engineering teams to ensure our models are trained on the best possible data, reaching the best accuracy, and that we deeply understand when and why they don't perform as expected.

Redefine the future of human-computer interaction and the way people communicate. Contribute to products that shape mobile computing and create breakthrough technologies in the audio domain.
In this role, you will push the boundaries of audio solutions across the full stack - from data pipelines and model training to optimization for our silicon. You'll collaborate with world-class researchers and engineers to ship technology that reaches hundreds of millions of users, while upholding our unwavering commitment to privacy.

Responsibilities
Work with unique, proprietary datasets - developing algorithms to process them and devising metrics to evaluate and improve quality.
Design and implement machine learning models focused on the audio domain, for low-latency feedback and high-fidelity streaming.
Drive data quality insights and influence the design of our end-to-end system.
Conduct both cutting-edge research and product-oriented development.
Collaborate closely with researchers, engineers, and product teams to bring new capabilities to life.
Requirements:
Minimum Qualifications
BS or MS in CS, EE, or related degree.
3+ years of industry experience in deep learning through applied research roles.
Deep understanding of Machine Learning fundamentals.
Proficiency in Python and at least one deep learning framework (PyTorch, TensorFlow, or JAX).
Collaborative skills for dependable and consistent steering of novel research alongside fellow teams.

Preferred Qualifications
Ph.D. in CS, EE or a related field.
Advanced background and hands-on experience in speech ML technology (e.g., multi-modals, speaker embeddings, voice isolation, ASR, multichannel sensor fusion, generative speech).
Background in digital signal processing (DSP) for audio signals.
Experience training large models using both supervised and self-supervised methods.
Track record of shipping ML features in a production environment.
This position is open to all candidates.
 
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