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      Colloquio per Gen AI intern

      3 gen 2026
      Candidato anonimo a colloquio
      Roorkee
      Nessuna offerta
      Esperienza positiva
      Colloquio difficile

      Candidatura

      Ho presentato la mia candidatura tramite l'università. Ho sostenuto un colloquio presso Zomato (Roorkee) nel mese di apr 2025

      Colloquio

      1. General & Average Questions (DS & LLMs)These are common "litmus test" questions for interviews or project sanity checks.Data Science FundamentalsBias-Variance Tradeoff: Why does a model that performs perfectly on training data often fail in production? (Answer: Overfitting/High Variance).Feature Engineering vs. Representation Learning: How does the way we "feed" data to a Random Forest differ from how we feed it to a Transformer?Evaluation Metrics: When would you prefer F1-Score over Accuracy? (Answer: Imbalanced datasets).LLM BasicsPre-training vs. Fine-tuning: What is the difference between teaching a model "how to speak" (Pre-training) and "how to be a medical assistant" (Fine-tuning)?Hallucinations: Why do LLMs confidently state facts that are wrong? (Answer: They are probabilistic token predictors, not database query engines).Tokenization: Why do we use sub-word tokenization (like BPE) instead of just word-level tokenization?2. In-Depth Project Review: The ChecklistWhen reviewing a project, don't just look at the code. Scrutinize the design decisions.Problem Framing: Did you actually need an LLM? Could a simple RegEx or Logistic Regression have solved 80% of the problem cheaper?Data Quality & Cleaning: How did you handle "garbage" in your training/prompting data? Did you use deduplication or toxicity filters?Architecture Choice: Why BERT (Encoder) vs. GPT (Decoder) vs. T5 (Encoder-Decoder)?BERT: Better for understanding/classification.GPT: Better for generation/creative writing.The "So What?" (Metrics): How did you measure success? Did you use LLM-specific metrics like Perplexity or human-centric ones like ROUGE/BLEU or G-Eval?3. Transformer Architecture: In-DepthThe Transformer moved us away from processing words one by one (RNNs) to processing them all at once (Parallelization).The Core ComponentsInput Embedding & Positional Encoding:Since Transformers process all words simultaneously, they have no idea about word order. We add a "signal" (sine/cosine waves) to the embeddings so the model knows "The cat sat on the mat" is different from "The mat sat on the cat."Self-Attention Mechanism (The "Secret Sauce"):This allows every word in a sentence to "look at" every other word to find context.Query (Q): What am I looking for?Key (K): What do I contain?Value (V): What information do I provide?The attention score is calculated using the formula:$$\text{Attention}(Q, K, V) = \text{softmax}\left(\frac{QK^T}{\sqrt{d_k}}\right)V$$Multi-Head Attention:Instead of one attention "view," the model has multiple (heads). One head might focus on grammar, another on the relationship between names, and another on the emotional tone.Feed-Forward Networks (FFN):After attention gathers context, the FFN processes each token's information independently to refine the representation.Residual Connections & Layer Norm:These act like "highways" that let the original signal pass through without getting lost (preventing vanishing gradients), keeping the training stable.

      Domande di colloquio [1]

      Domanda 1

      Transformers and Projects, github, and resume grill
      Rispondi alla domanda

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