We are dedicated to sharing the knowledge that we’ve learned with our community through the tech radar, meetups, blog, and podcast.
What is the radar?
An Opinionated map of the latest technologies and trends in the Israeli Tech industry. The 9th edition of the Israeli Tech Radar was built in collaboration with leading tech companies such as: Bluevine, CyberArk, Guesty, Redis and more.
2025-26 Tech Trends
Agentic SDLC: AI reshaping software development
AI is reshaping the entire SDLC—from fast, prompt-driven “vibe coding” to structured, AI-assisted development and broader organizational adoption.
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Agentic architectures powering autonomous AI systems
Beyond developer tools, there’s a clear shift toward building more advanced autonomous AI systems and standardizing how they interact.
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Modern data architectures for AI and real-time analytics
The demands of AI and real-time analytics are driving major changes in how data is stored, processed, and governed.
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FinOps and AIOps: Optimizing cloud & LLMs spend
As AI workloads grow more compute-intensive and token-based pricing models for LLMs become the norm, managing cloud costs has become a critical concern.
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Fullstack complexity and the shifting JavaScript ecosystem
The fullstack development landscape is increasingly shaped by frustration with rising complexity.
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Tikal News
Tech Radar News May Edition
Individual Contributor panel
We are dedicated to sharing the knowledge that we’ve learned with our community.
A practical walkthrough of designing a fraud detection ML system—Shani Cohen and Israel Sofer explore modeling, versioning, orchestration, and real-time prediction in a fintech environment.
ML Development Process from a Realistic Perspective
Shani Cohen and Barak Amar unpack the real-world mess of ML pipelines—ownership, observability, versioning, and what actually helps teams succeed in production. A practical deep dive.
Shani Cohen and Guy Eshet dive into the ML platform ecosystem—how to choose tools, scale models, and navigate the challenges of production ML with clarity.