Model: praveenkrovvidi/rl-cas-trl-agent Source: Original Platform
license, language, base_model, pipeline_tag, tags
| license | language | base_model | pipeline_tag | tags | |||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| apache-2.0 |
|
Qwen/Qwen2.5-3B-Instruct | text-generation |
|
RL-CAS TRL Agent
Fine-tuned Qwen2.5-3B-Instruct that selects enterprise tools to resolve customer service queries. Trained via SFT + GRPO on expert trajectories from an RL-trained SAC agent.
Training Pipeline
- SAC-Discrete (Round 1) -- MLP [256,256] trained for 3,000 episodes on a 14-signal dense reward environment with 13 actions (7 API tools + 5 terminal + 1 meta)
- SFT (Round 2a) -- QLoRA fine-tuning on SAC expert trajectories (reward >= 5.0), 3 epochs, lr=2e-4
- GRPO (Round 2b) -- RL with live environment rewards, 482 steps, lr=5e-5, 4 completions/prompt
Model Details
| Base model | Qwen/Qwen2.5-3B-Instruct |
| Architecture | Qwen2ForCausalLM, 36 layers, 2048 hidden, GQA (16 heads / 2 KV) |
| Parameters | 3B (fp16, 5.8 GB) |
| Context length | 32,768 tokens |
| Fine-tuning | QLoRA (rank=16, alpha=32, 4-bit NF4) merged to fp16 |
| Hardware | NVIDIA A10G (24 GB VRAM) |
Input / Output
Input: System prompt + user query describing a customer service issue.
Output: JSON with chain-of-thought reasoning and action ID.
{"reasoning": "Customer needs order status. I should look up their order first.", "action_id": 0}
Action Space
| ID | Action | Type |
|---|---|---|
| 0 | invoke_order_service |
tool |
| 1 | invoke_refund_service |
tool |
| 2 | invoke_customer_service |
tool |
| 3 | invoke_auth_service |
tool |
| 4 | invoke_logistics_service |
tool |
| 5 | invoke_inventory_service |
tool |
| 6 | invoke_knowledge_base |
tool |
| 7 | resolve_query |
terminal |
| 8 | request_customer_information |
terminal |
| 9 | route_to_billing_department |
terminal |
| 10 | route_to_technical_support |
terminal |
| 11 | escalate_to_human_agent |
terminal |
| 12 | consult_llm |
meta |
Benchmark (100 Queries, 8 Categories)
| Agent | Avg Reward | Resolution | Avg Steps |
|---|---|---|---|
| GPT-4o-mini (zero-shot) | 19.43 | 100% | 2.5 |
| SAC (MLP policy) | 19.36 | 100% | 3.0 |
| Gemini-2.5-flash | 16.46 | 100% | 2.2 |
| This model (TRL) | 15.58 | 97% | 3.1 |
Intended Use
Designed for the RL-CAS customer service environment. Selects tools from a fixed action space -- does not generate free-form customer responses.
Limitations
- 97% resolution rate (struggles with
authandrefundmulti-tool sequences) - Requires the RL-CAS mock backend for tool execution
- Trained on synthetic customer service data, not real customer interactions
Citation
@misc{rlcas2026,
title={RL-CAS: Reinforcement Learning for Customer Service Agent},
author={Praveen Krovvidi},
year={2026},
url={https://huggingface.co/praveenkrovvidi/rl-cas-trl-agent}
}
Description
Languages
Jinja
100%