You will get AI Response Rating & LLM Data Quality Assurance


Project details
I evaluate and audit AI-generated responses for accuracy,
instruction-following, and safety alignment — catching hallucinations
and factual errors that a surface-level read would miss. With
experience across multiple AI training platforms, I don't just assign
a score; every rating comes with a specific, cited reason tied to the
actual prompt and response, so you get a defensible result your team
can act on immediately. I also work across English and Tagalog, which
matters if any of your data touches Southeast Asian markets or
code-switched content.
instruction-following, and safety alignment — catching hallucinations
and factual errors that a surface-level read would miss. With
experience across multiple AI training platforms, I don't just assign
a score; every rating comes with a specific, cited reason tied to the
actual prompt and response, so you get a defensible result your team
can act on immediately. I also work across English and Tagalog, which
matters if any of your data touches Southeast Asian markets or
code-switched content.
AI Algorithms
Large Language Model, Multimodal Large Language Model, Transformer ModelAI Applications
AI Chatbot, Anomaly Detection, Automatic Speech Recognition, Machine Translation, Natural Language Generation, Natural Language Understanding, Sentiment AnalysisAI Development Language
PythonAI Tools
Hugging FaceAI Models
BERT, ChatGPT, GPT-4, LLaMA, WhisperWhat's included
| Service Tiers |
Starter
$15
|
Standard
$30
|
Advanced
$60
|
|---|---|---|---|
| Delivery Time | 1 day | 1 day | 2 days |
Number of Revisions | 0 | 1 | 2 |
AI Model Integration | - | - | - |
Batch Normalization | - | - | - |
Database Integration | - | - | - |
Detailed Code Comments | - | - | - |
Image Upscaling | - | - | - |
MLOps | - | - | - |
Model Deployment | - | - | - |
Model Documentation | - | - | |
Model Monitoring | - | - | |
Model Testing & Optimization | - | - | - |
Model Tuning | - | - | - |
Natural Language Processing | |||
NLP Tokenization | - | - | - |
Pre-Training | - | - | - |
Prompt Engineering | - | ||
Setup File | - | - | - |
Source Code | - | - | - |
Optional add-ons
You can add these on the next page.
Fast Delivery
+$8
Additional Revision
+$5Frequently asked questions
3 reviews
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DM
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Great annotator and willing to work beyond the timelines
About Allen Gabriel
Native Tagalog Translator | AI/LLM Auditor | Filipino QA
80%
Job Success
Cajidiocan, Philippines - 9:57 am local time
✅ 4+ years in AI training data & Filipino linguistic work
✅ Native Tagalog & Hiligaynon speaker, fluent in English
✅ 5.0 rating · 100% Job Success soon
What I Do
✅ Audit AI voice conversations (Utility, Naturalness, Conversational Dynamics)
✅ Rate LLM responses for accuracy, tone, and safety — with evidence, not guesses
✅ Transcribe Tagalog audio verbatim, with speaker labels & timestamps
✅ Translate & localize Tagalog↔English — natural, not word-for-word
Why Me
✅ Every rating comes with a cited reason
✅ Every file gets a self-QA pass before delivery
✅ I catch what English-only evaluators miss
Hit invite 😉
Steps for completing your project
After purchasing the project, send requirements so Allen Gabriel can start the project.
Delivery time starts when Allen Gabriel receives requirements from you.
Allen Gabriel works on your project following the steps below.
Revisions may occur after the delivery date.
Review prompts & rubric
I review the prompt/response pairs and confirm which rubric or dimensions to score against before starting.
Rate each response
I score each response against the agreed dimensions (e.g. Task Success, Accuracy, Safety), checking claims against the actual prompt rather than assuming correctness.

