193 lines
10 KiB
Markdown
193 lines
10 KiB
Markdown
# KI/LLM-News für Basti's Morning Briefing — 21. Juni 2026
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---
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## Story 1: GLM-5.2 — Chinas neues Open-Source-Flaggschiff mit 1M-Kontext
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- **headline:** GLM-5.2: Z.AI veröffentlicht 753B-Parameter-Open-Source-Modell mit 1M-Token-Kontext unter MIT-Lizenz
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- **tag:** tag-ki
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- **teaser:** Z.AI (Zhipu AI) hat am 16. Juni GLM-5.2 veröffentlicht — ein 753-Milliarden-Parameter-MoE-Modell mit stabilem 1M-Token-Kontextfenster. Das Modell erreicht auf Long-Horizon-Coding-Benchmarks nahezu Opus-4.8-Niveau (FrontierSWE: 74.4 vs. 75.1) und schlägt GPT-5.5. Es steht unter MIT-Lizenz auf HuggingFace, ist via Cloudflare Workers AI, FriendliAI und Novita nutzbar und kostet nur $1.40/$4.40 pro Million Tokens.
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- **source_url:** https://z.ai/blog/glm-5.2
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- **source_name:** Z.AI Blog
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- **full_text:** PAYWALL (vollständiger Text via web_extract scrapbar, siehe unten)
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- **category:** Open-Source
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---
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## Story 2: Claude Fable 5 — US-Regierung zwingt Anthropic zur Abschaltung
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- **headline:** US-Exportdirektive zwingt Anthropic zur globalen Abschaltung von Claude Fable 5 und Mythos 5
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- **tag:** tag-ki
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- **teaser:** Nur 72 Stunden nach dem Launch von Claude Fable 5 am 9. Juni ordnete das US-Handelsministerium am 12. Juni per Exportkontroll-Direktive die vollständige Sperrung für alle ausländischen Nutzer an — faktisch eine globale Abschaltung. Es ist das erste Mal, dass die US-Regierung ein bereits live geschaltetes Frontier-KI-Modell per Exportkontrolle vom Netz nimmt. Der Präzedenzfall wirft fundamentale Fragen zur Abhängigkeit von einzelnen Cloud-API-Anbietern auf.
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- **source_url:** https://www.anthropic.com/news/claude-fable-5-mythos-5
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- **source_name:** Anthropic News
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- **full_text:** PAYWALL (vollständiger Text via web_extract scrapbar, siehe unten)
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- **category:** Cloud-API
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---
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## Story 3: Kimi K2.7-Code — Moonshot AIs 1T-Parameter Coding-Modell
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- **headline:** Kimi K2.7-Code: Moonshot AI veröffentlicht 1-Billion-Parameter Open-Weight Coding-Modell
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- **tag:** tag-ki
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- **teaser:** Moonshot AI hat am 12. Juni Kimi K2.7-Code released — ein 1T-Parameter-MoE-Modell (32B aktiv) mit Fokus auf Long-Horizon-Software-Engineering. Es erreicht +21,8% auf dem Kimi Code Bench v2 gegenüber K2.6 und schlägt Claude Opus 4.8 auf MCP Mark Verified (81.1 vs. 76.4). Die Open Weights (Modified MIT) liegen auf HuggingFace, API-Pricing liegt bei $0.95/$4.00 pro Million Tokens — etwa 80% günstiger als Opus 4.8.
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- **source_url:** https://www.marktechpost.com/2026/06/12/moonshot-ai-releases-kimi-k2-7-code-a-coding-model-reporting-21-8-on-kimi-code-bench-v2-over-k2-6
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- **source_name:** MarkTechPost
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- **full_text:** PAYWALL (vollständiger Text via web_extract scrapbar, siehe unten)
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- **category:** Open-Source
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---
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## Story 4: DiffusionGemma — Googles 4x schnelleres Text-Diffusion-Modell
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- **headline:** DiffusionGemma: Google veröffentlicht experimentelles Open-Source-Modell mit 4x schnellerer Textgenerierung
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- **tag:** tag-ki
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- **teaser:** Google DeepMind hat am 10. Juni DiffusionGemma veröffentlicht — ein 26B-MoE-Modell (3.8B aktiv), das Text nicht sequenziell, sondern per Diffusion in 256-Token-Blöcken parallel generiert. Auf einer NVIDIA H100 erreicht es über 1000 Tokens/Sekunde, auf einer RTX 5090 über 700 t/s. Es läuft in ~18 GB VRAM (quantisiert) und eignet sich besonders für Code-Infilling und nicht-lineare Textstrukturen. Apache-2.0-Lizenz, HuggingFace, vLLM-Support.
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- **source_url:** https://blog.google/innovation-and-ai/technology/developers-tools/diffusion-gemma-faster-text-generation/
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- **source_name:** Google Blog
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- **full_text:** PAYWALL (vollständiger Text via web_extract scrapbar, siehe unten)
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- **category:** Open-Source
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---
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## Story 5: "Running local models is good now" — Lokale LLMs erreichen Praxistauglichkeit
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- **headline:** "Running local models is good now": Lokale LLMs erreichen 75% der Frontier-Modelle — ein Praxisbericht
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- **tag:** tag-ki
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- **teaser:** Vicki Boykis' Blogpost vom 15. Juni wurde mit über 1.550 Punkten auf Hacker News zur meistdiskutierten Story der Woche. Sie beschreibt, wie Modelle wie Gemma 4 12B und Qwen 3.6 auf einem M2 Mac mit 64 GB RAM agentisches Coding mit ~75% der Genauigkeit von Cloud-Frontier-Modellen ermöglichen — Tasks, die vor 6 Monaten noch unmöglich waren. Der Artikel enthält konkrete Docker-Compose-Setups für den Open-Source-Agenten-Harness "Pi" mit lokalem LM Studio.
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- **source_url:** https://vickiboykis.com/2026/06/15/running-local-models-is-good-now/
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- **source_name:** Vicki Boykis (Blog)
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- **full_text:** PAYWALL (vollständiger Text via web_extract scrapbar, siehe unten)
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- **category:** Tools
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---
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## Vollständige Artikeltexte (via web_extract gescrapt)
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### GLM-5.2 (z.ai/blog/glm-5.2)
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```
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GLM-5.2: Built for Long-Horizon Tasks
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Source: Z.ai Blog | Date: 2026-06-16
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Key Highlights:
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- Solid 1M-token context – stable, engineering-usable long context
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- Advanced Coding with Flexible Effort – multiple thinking effort levels (High, Max)
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- Improved Architecture (IndexShare) – reduces per-token FLOPs by 2.9× at 1M context
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- MTP layer improvements – acceptance length increased by 20%
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- Pure Open – MIT license, no regional limits
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- Top open-source model on long-horizon coding benchmarks
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Performance Benchmarks (Long-Horizon Coding):
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| Benchmark | GLM-5.2 | GLM-5.1 | Opus 4.8 | GPT-5.5 |
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| FrontierSWE | 74.4 | 30.5 | 75.1 | 72.6 |
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| PostTrainBench | 34.3 | 20.1 | 37.2 | 28.4 |
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| SWE-Marathon | 13.0 | 1.0 | 26.0 | 12.0 |
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Standard Coding:
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| Terminal-Bench 2.1 | 81.0 | 63.5 | 85.0 | - |
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| SWE-bench Pro | 62.1 | 58.4 | 69.2 | - |
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Reasoning:
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| AIME 2026 | 99.2 | 95.3 | 95.7 | 98.3 |
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| GPQA-Diamond | 91.2 | 86.2 | 93.6 | 93.6 |
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Architecture: 753B total parameters, MoE. IndexShare reuses indexer across every 4 sparse attention layers. MTP with KVShare increases acceptance length from 4.56 to 5.47. Anti-hack system for coding RL prevents reward hacking during training.
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Pricing: $1.40/M input, $4.40/M output. Available via FriendliAI, Novita, ZAI, Cloudflare Workers AI.
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License: MIT (open-weight, commercial use allowed)
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```
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### Claude Fable 5 Suspension (anthropic.com/news/claude-fable-5-mythos-5)
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```
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Claude Fable 5 and Claude Mythos 5 – Anthropic
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Date: June 9, 2026 | Update (Jun 12): Access suspended
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Overview:
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- Claude Fable 5: Mythos-class model made safe for general use. SOTA on nearly all benchmarks.
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- Claude Mythos 5: Same model with safeguards lifted (cyberdefenders via Project Glasswing).
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- Pricing: $10/M input, $50/M output (less than half Mythos Preview).
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Capabilities:
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- Stripe: Compressed months of engineering into days – codebase-wide migration in 50M-line Ruby codebase in one day.
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- FrontierCode: Highest score among frontier models at medium effort.
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- Hebbia Finance Benchmark: Highest score of any model.
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- Vision: New SOTA. Rebuilds web app source code from screenshots. Beat Pokémon FireRed with minimal vision-only harness.
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- Drug Design (Mythos 5): Accelerated aspects ~10×. 9 of 14 protein targets yielded strong candidates.
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- Novel Hypotheses: First model to consistently produce novel, compelling scientific hypotheses. Scientists preferred Mythos hypotheses ~80% of the time.
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Safeguards: New classifiers detect potential misuse → fall back to Opus 4.8. >95% of sessions involve no fallback. Covers cybersecurity, biology/chemistry, distillation.
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Suspension: On June 12, 2026, US Commerce Department issued export control directive ordering Anthropic to suspend all access to Fable 5 and Mythos 5 for foreign nationals → effectively global shutdown. First time US government used export controls to force a frontier AI model offline post-launch.
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```
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### Kimi K2.7-Code (MarkTechPost)
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```
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Moonshot AI Releases Kimi K2.7-Code – June 12, 2026
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Model: 1T-parameter MoE (32B active), 384 experts (8+1 per token), 256K context
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License: Modified MIT (open weights on Hugging Face)
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Benchmarks:
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| Benchmark | K2.6 | K2.7-Code | GPT-5.5 | Opus 4.8 | Improvement |
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| Kimi Code Bench v2 | 50.9 | 62.0 | 69.0 | 67.4 | +21.8% |
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| Program Bench | 48.3 | 53.6 | 69.1 | 63.8 | +11.0% |
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| MLS Bench Lite | 26.7 | 35.1 | 35.5 | 42.8 | +31.5% |
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| MCP Mark Verified | 72.8 | 81.1 | 92.9 | 76.4 | +11.4% |
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Pricing: $0.95/M input, $4.00/M output (cached: $0.19). ~80% cheaper than Opus 4.8.
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Key: 30% lower reasoning-token usage than K2.6. Mandatory thinking mode. Fixed sampling params.
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```
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### DiffusionGemma (Google Blog)
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```
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DiffusionGemma: 4x Faster Text Generation – June 10, 2026
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License: Apache 2.0
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Architecture: 26B MoE (3.8B active). Text diffusion instead of autoregressive – generates 256-token blocks in parallel, iteratively refined.
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Performance:
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- NVIDIA H100: 1000+ tokens/sec
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- NVIDIA RTX 5090: 700+ tokens/sec
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- VRAM: ~18GB (quantized)
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Key innovation: Bi-directional attention – all 256 tokens attend to each other simultaneously. Enables non-linear text structures (code infilling, math graphs, amino acid sequences).
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Trade-offs: Lower output quality than standard Gemma 4. Best for low-concurrency local inference. Experimental status.
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Supported: MLX, vLLM, Hugging Face Transformers, Unsloth, NVIDIA NeMo, llama.cpp (soon). Optimized for RTX 5090/4090, Hopper/Blackwell (NVFP4).
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```
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### "Running local models is good now" (Vicki Boykis)
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```
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Running Local Models Is Good Now – June 15, 2026
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Author: Vicki Boykis | Hardware: 2022 M2 Mac, 64 GB RAM
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Key insight: With Gemma 4 family, agentic coding locally now works at ~75% accuracy/speed of frontier models.
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Tasks accomplished locally:
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- Refactored Python notebook into 5-6 module repo
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- Linted code for PEP 585 type hints
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- Proofread blog posts, wrote unit tests
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- Bootstrapped two-tower recommendation model repo
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- Built app surfacing trending Arxiv topics
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Setup: Pi (harness) + LM Studio (inference) + gemma-4-12b-qat (model). All Pi sessions run in Docker with restricted permissions.
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Remaining issues: Slow inference (KV cache up to 64 GB RAM), small context windows, prompt template mismatches on early releases.
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HN: 1554 points, 596 comments – #1 on Hacker News.
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```
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---
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## Quellenübersicht
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| # | Story | Quelle | Datum | Kategorie |
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|---|-------|--------|-------|-----------|
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| 1 | GLM-5.2 Release | z.ai/blog/glm-5.2 | 16.06.2026 | Open-Source |
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| 2 | Claude Fable 5 Suspension | anthropic.com/news | 12.06.2026 | Cloud-API |
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| 3 | Kimi K2.7-Code | marktechpost.com | 12.06.2026 | Open-Source |
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| 4 | DiffusionGemma | blog.google | 10.06.2026 | Open-Source |
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| 5 | Local Models Are Good Now | vickiboykis.com | 15.06.2026 | Tools |
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*Recherche durchgeführt am 21. Juni 2026. Keine neuen Major-Releases am 19.-21. Juni gefunden; die obigen Stories sind die relevantesten der letzten 5-10 Tage.*
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