diff --git a/.generated/model-agnostic-featimp-thread.json b/.generated/model-agnostic-featimp-thread.json new file mode 100644 index 0000000..13de437 --- /dev/null +++ b/.generated/model-agnostic-featimp-thread.json @@ -0,0 +1,34 @@ +{ + "post_slug": "model agnostic featimp", + "tweets": [ + { + "content": "```json [ \"1/5 Ever wonder *why* a prediction model makes a certain guess. \ud83e\udd14 It's not magic. But understanding *how* is tricky. \n\u2501\u2501\u2501\n. I dug into a cool paper that breaks it down. You won't believe the \\\"aha. \\\" moments. \u2728 Check this out: https://mani2106", + "character_count": 255, + "engagement_elements": [], + "hashtags": [], + "position": 1, + "hook_type": "curiosity" + } + ], + "hook_variations": [ + "Alright, buckle up, internet friends! \ud83d\ude80 This is gonna be SO cool! I've been diving deep into this paper, \"Explaining prediction models and individual predictions,\" and let me tell ya, it's a whole new world! \u2728", + "We're talking about how to actually *see* what makes a model tick, not just guess. And guess what? I figured out how to implement it! \ud83e\udd2f It's like getting a peek behind the curtain of those fancy algorithms.", + "So, I've put together a little something for you. A Twitter thread! \ud83c\udf89 It's gonna break down how to take this awesome idea and actually *use* it. We'll go through the code, the data, the whole shebang. Get ready to have your mind blown! \ud83d\udca5" + ], + "hashtags": [ + "#python", + "#git" + ], + "engagement_score": 0.0, + "model_used": "google/gemini-2.5-flash-lite", + "prompt_version": "1.0.0", + "generated_at": "2025-10-18T11:53:33.679102", + "style_profile_version": "1.0.0", + "thread_plan": { + "hook_type": "curiosity", + "main_points": [], + "call_to_action": "", + "estimated_tweets": 5, + "engagement_strategy": "" + } +} \ No newline at end of file