Data Scientist (AI Engineer)

Tel Aviv
1 month ago
Applications closed

Related Jobs

View all jobs

Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist - Gen AI + Recommender Systems

Data Scientist- Consumer Behaviour

Data Scientist (AI Engineer)
Salary dependent on skills and experience plus share options in a hyper-growth startup.
Hybrid – office in Central Tel Aviv.
The Company
Streamlining business development for Dealmakers.
This SaaS startup aims to tackle inefficiencies, disconnected systems, and missed opportunities to help organisations grow smarter and faster. With innovation at its core, the platform strives to simplify business growth using cutting-edge AI technology.
The Role
Join a small, dynamic, and growing team of experienced professionals dedicated to revolutionising business development. As the Founding AI Engineer, you will work closely with the co-founders to rapidly iterate on product ideas and help shape the technical vision from the ground up. This is a hands-on role that requires deep technical expertise, entrepreneurial drive, and the ability to turn ideas into scalable solutions.
You’ll have the opportunity to build the product from the earliest stages, solving real customer problems, and playing a key role in the company’s journey towards achieving its business milestones.
Key Responsibilities but not limited to:

  • Collaborate with cross-functional teams to identify business opportunities and design data-driven solutions to address them.
  • Develop, fine-tune, and deploy machine learning and deep learning models, including neural networks, that enhance the platform’s insights and intelligence.
  • Integrate large language models (LLMs) into our product pipeline, exploring cutting-edge techniques such as Retrieval-Augmented Generation (RAG) for improved data insights and user interaction.
  • Leverage LLM frameworks like LangChain to build and manage LLM-based workflows, adapting pipelines to respond to evolving data and user needs.
  • Perform exploratory data analysis, data processing, and feature engineering to support model building.
  • Partner with engineering teams to integrate data solutions into the product, ensuring scalable and reliable deployment.
  • Create and manage data pipelines, ensuring data integrity, quality, and compliance with industry standards (SOC 2, ISO 27001).
  • Conduct experiments, validate hypotheses, and iteratively improve models based on real-world feedback.
  • Communicate findings and insights to non-technical stakeholders to inform decision-making.
  • Establish best practices in data science, data science, ML/AI, and deep learning, setting standards for a growing data team.
    Key Skills:
  • Fluency in English.
  • Minimum 3-5 years of professional or academic experience in data science, machine learning, AI, deep learning etc.
  • Strong proficiency in Python, with experience using machine learning and deep learning libraries (e.g., Scikit-learn, TensorFlow, PyTorch).
  • Familiarity with key machine learning algorithms, including but not limited to decision trees, gradient boosting, clustering, and neural networks for complex data modelling.
  • Practical experience deploying AI/ML models, including LLMs, using techniques such as RAG, fine-tuning, and prompt engineering.
  • Familiarity with LLM pipelines and frameworks such as LangChain to enhance product capabilities and model integration.
  • Strong experience with data analytics, statistical modelling, and predictive analytics.
  • Solid understanding of SQL and experience with relational and non-relational databases; familiarity with cloud data solutions (e.g., AWS Redshift, Azure Synapse) is a plus.
  • Experience working with large datasets and data pipeline frameworks (e.g., Spark, Airflow).
  • Knowledge of cloud platforms (AWS, Azure) and scalable infrastructure for ML, deep learning, and LLM pipelines.
  • Experience with LLMs, NLP, LLM techniques such as RAG.
  • Bonus: Interest or experience in M&A, finance or business strategy.
  • An entrepreneurial mindset with a passion for using data to drive innovation and solve real business challenges.
    Why Join us?
    This role is ideal for someone who is excited about building a product from the ground up, working in a fast-moving startup, and solving real customer problems. You'llhave the opportunity to grow within the company as we scale and make a meaningful impact on the future of dealmaking.
    Interested? If you feel that you possess the relevant skills and experience, then please submit your CV.
    INDHS

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

10 Ways AI Pros Stay Inspired: Boost Creativity with Side Projects, Hackathons & More

In the rapidly evolving world of Artificial Intelligence (AI), creativity and innovation are critical. AI professionals—whether data scientists, machine learning engineers, or research scientists—must constantly rejuvenate their thinking to solve complex challenges. But how exactly do these experts stay energised and creative in their work? The answer often lies in a combination of strategic habits, side projects, hackathons, Kaggle competitions, reading the latest research, and consciously stepping out of comfort zones. This article will explore why these activities are so valuable, as well as provide actionable tips for anyone looking to spark new ideas and enrich their AI career. Below, we’ll delve into tried-and-tested strategies that AI pros employ to drive innovation, foster creativity, and maintain an inspired outlook in an industry that can be both exhilarating and daunting. Whether you’re just starting your AI journey or you’re an experienced professional aiming to sharpen your skills, these insights will help you break out of ruts, discover fresh perspectives, and bring your boldest ideas to life.

Top 10 AI Career Myths Debunked: Key Facts for Aspiring Professionals

Artificial Intelligence (AI) is one of the most dynamic and rapidly growing sectors in technology today. The lure of AI-related roles continues to draw a diverse range of job seekers—from seasoned software engineers to recent graduates in fields such as mathematics, physics, or data science. Yet, despite AI’s growing prominence and accessibility, there remains a dizzying array of myths surrounding careers in this field. From ideas about requiring near-superhuman technical prowess to assumptions that machines themselves will replace these jobs, the stories we hear sometimes do more harm than good. In reality, the AI job market offers far more opportunities than the alarmist headlines and misconceptions might suggest. Here at ArtificialIntelligenceJobs.co.uk, we witness firsthand the myriad roles, backgrounds, and success stories that drive the industry forward. In this blog post, we aim to separate fact from fiction—taking the most pervasive myths about AI careers and debunking them with clear, evidence-based insights. Whether you are an established professional considering a career pivot into data science, or a student uncertain about whether AI is the right path, this article will help you gain a realistic perspective on what AI careers entail. Let’s uncover the truth behind the most common myths and discover the actual opportunities and realities you can expect in this vibrant sector.

Global vs. Local: Comparing the UK AI Job Market to International Landscapes

How to navigate salaries, opportunities, and work culture in AI across the UK, the US, Europe, and Asia Artificial Intelligence (AI) has evolved from a niche field of research to an integral component of modern industries—powering everything from chatbots and driverless cars to sophisticated data analytics in finance and healthcare. The job market for AI professionals is consequently booming, with thousands of new positions posted each month worldwide. In this blog post, we will explore how the UK’s AI job market compares to that of the United States, Europe, and Asia, delving into differences in job demand, salaries, and workplace culture. Additionally, we will provide insights for candidates considering remote or international opportunities. Whether you are a freshly qualified graduate in data science, an experienced machine learning engineer, or a professional from a parallel domain looking to transition into AI, understanding the global vs. local landscape can help you make an informed decision about your career trajectory. As the demand for artificial intelligence skills grows—and borders become more porous with hybrid and remote work—the possibilities for ambitious job-seekers are expanding exponentially. This article will offer a comprehensive look at the various regional markets, exploring how the UK fares in comparison to other major AI hubs. We’ll also suggest factors to consider when choosing where in the world to work, whether physically or remotely. By the end, you’ll have a clearer picture of the AI employment landscape, and you’ll be better prepared to carve out your own path.