LangTalks
פודקסט טכני בעברית על בניית סוכנים ואפליקציות עם מודלי שפה. הצטרפו לקהילת הווטסאפ שלנו לדיונים ושאלות: https://chat.whatsapp.com/JKVFSNFMVQu8G1KWx1jqap ניוזלטר עם סיכום דו-שבועי של כל הנושאים הכי חמים: www.langtalks.ai
54 - Permissions | Or Weis (Permit.io)

Enabling secured flexibility to your agents and MCP servers
53 - Search & Retrieval | Guy Itach (Fiverr)

techniques to combine classic search with agentic retrieval
52 - Agents at scale | Adam Cohen Hillel

The story of building Suna - the open source alternative of Manus the generalist autonomous agent https://github.com/kortix-ai/suna
51 - Our AI-driven coding workflow | Oren Melamed

Sharing our workflow with Cursor, Claude Code, GitHub Copilot and others. Listed the useful MCPs and tools, how to measure efficiency gains, and our vision for the future of coding
50 - A2A protocol

Is this Agent2Agent new protocol by Google going to be the next MCP?
49 - Documents analysis

How to handle long docs like PDF and Docx effectively with LLMs
48 - Vibe coding | Sahar Carmel

Tips for AI-driven coding
47 - Tech stack for Agents

Python or JS? LangChain or Vanilla? In this episode we gave guidelines on important things to notice when picking a tech stack for new project or a company's platform
46 - Building coding multi-agent (LangTalks '25 conf)

Building SWE multi-agent with LangGraph: Zero to Hero | Lee & Gal (LangTalks GenAI 2025 Conference)
45 - AI PM: Spec for copilot feature

Example of product specification required from an AI PM for a new feature
44 - MCP intro

all you need to know about MCP and how to get started as a developer
43 - Building with GenAI-powered tools | Idan Benaun

this episode has 2 aspects - best practices to start a new product in 2025 and what tools can accelerate your process
42 - Text to SQL

how to build a text to sql agent
41 - GraphRAG

Deep dive on why GraphRAG approach was created and how it works
40 - Advanced RAG | Nir Diamant

advanced RAG techniques like RAPTOR and using Clues
39 - Code generation agents | Ziv Bakhajian

Cursor, RepoAgent, Aider, and some more coding agents - overview and interesting architectural concepts
38 - OpenAI Realtime API

Technical review of the new Realtime API introduced on the dev day
37 - Upgrading LLM | Dolev Pomeranz (Gong)

How to migrate the llm provider in your AI app safely
36 - MVP with open-source LLM | Yael Daihes (Anecdotes)

If you need to build an llm-app that uses an open-source llm, this episode is for you. Intermediate level
35 - LLM app dev guide | Almog Baku

end to end guide on how to get started and deploy to production your llm app
34 - Legal documents | Yaron Vazana (Darrow)

Build LLM-app with legal documents that have many references and domain verbiage
33 - LangGraph | Eden Marco

Getting started with LangGraph, the most popular multi agent framework
32 - AI PM: No-code Tools | Galit Galperin

Utilize no-code tools for fast POCs
31- Multi agents | Assaf Elovic ("GPT Researcher")

Review of why and how to build a multi-agent system. Assaf is Head of R&D @ Wix and GPT-researcher open source creator.
30 - Open Source Security | Avi Lumelsky (Oligo)

everything about adopting open source code and models for your llm app
29 - AI PM: trust & evaluation | Shira Weinberg Harel

build trust with users and stakeholders - transparency and explainability, reliability and consistency (how to fail safely), automation vs user control. how to evaluate with uncertainty, prompt engineering, effective bug reports
28 - Advanced agents

examples and practices of advanced agents, and use of LangGraph for effective tool usage by agents
27 - Real Time | Dor Ringel

how to solve latency issues with minimal compromise on quality and cost
26 - 12 RAG Pain Points and Proposed Solutions

The 12 most common challenges around building an effective RAG pipeline and the best practices for solutions
25 - Reranking

exploring the reranker component in the 2 stage retrieval system
24 - MVP best practices

how to define effective requirements for llm apps, and first steps after going to production
23 - LLM theory | Mike Erlihson

What are transformers, why it is so expensive to train a Transformer-based model and what is the architecture of the future LLMs
22 - LangChain v0.1

LCEL, LangGraph, LangSmith
21 - Knowledge Graph | Jesús Barrasa (Neo4j, ENG)

Indexing knowledgebases with KG for RAG applications
20 - RAG Evaluation | Jonathan Yarkoni

ragas framework for evaluating unstructured retrievals and generations
19 - RAG

Retrieval Augmented Generation process, Llama index vs LangChain, indexing
18 - OpenAI Dev Day

OpenAI DevDay announcements recap
17 - Evaluation | Philip Tannor (DeepChecks)

Evaluating LLMs and AI pipeline in dev and production environments. How to work with datasets
16 - Multi modal

multimodality is a type of model that can analyze multiple data types like language, images, voice, etc.
15 - Initiatives and volunteers matching

Find the most suitable project for volunteer support "Iron swords" war efforts