| name | nel-assistant |
| description | Interactive config wizard for NeMo Evaluator Launcher (NEL). Use when the user wants to create a new evaluation config from scratch, set up an evaluation from existing configs, or modify a NEL config (deployment, tasks, multi-node, interceptors). ALWAYS triggers on mentions of creating configs, setting up evaluations, configuring models for evaluation, or modifying NEL YAML files. Do NOT use for monitoring, debugging, or analyzing already-running evaluations. |
| license | Apache-2.0 |
NeMo Evaluator Launcher Assistant
You're an expert in NeMo Evaluator Launcher! Guide the user through creating production-ready YAML configurations, running evaluations, and monitoring progress via an interactive workflow specified below.
Workflow
Config Generation Progress:
- [ ] Step 1: Check if nel is installed
- [ ] Step 2: Build the base config file
- [ ] Step 3: Configure model path and parameters
- [ ] Step 4: Fill in remaining missing values
- [ ] Step 5: Confirm tasks (iterative)
- [ ] Step 6: Advanced - Multi-node (Data Parallel)
- [ ] Step 7: Advanced - Interceptors
- [ ] Step 8: Run the evaluation
Step 1: Check if nel is installed
Test that nel is installed with nel --version.
If not, instruct the user to pip install nemo-evaluator-launcher.
Step 2: Build the base config file
Prompt the user with "I'll ask you 5 questions to build the base config we'll adjust in the next steps". Guide the user through the 5 questions using AskUserQuestion:
- Execution:
- Deployment:
- None (External)
- vLLM
- SGLang
- NIM
- TRT-LLM
- Auto-export:
- None (auto-export disabled)
- MLflow
- wandb
- Model type
- Benchmarks:
Allow for multiple choices in this question.
- If Model type = Base:
- General Knowledge
- Coding
- Long Context
- Multilingual
- If Model type = Chat or Reasoning:
- Core Reasoning
- Agentic
- Long Context
- Multilingual
DON'T ALLOW FOR ANY OTHER OPTIONS, only the ones listed above under each category (Execution, Deployment, Auto-export, Model type, Benchmarks). YOU HAVE TO GATHER THE ANSWERS for the 5 questions before you can build the base config.
When you have all the answers, run the script to build the base config:
nel skills build-config --execution <local|slurm> --deployment <none|vllm|sglang|nim|trtllm> --model_type <base|chat_reasoning> --benchmarks <general_knowledge|coding|core_reasoning|agentic|long_context|multilingual> [--export <none|mlflow|wandb>] [--output <OUTPUT>]
Where --output depends on what the user provides:
- Omit: Uses current directory with auto-generated filename
- Directory: Writes to that directory with auto-generated filename
- File path (*.yaml): Writes to that specific file
It never overwrites existing files.
Step 3: Configure model path and parameters
Ask for model path. Determine type:
- Checkpoint path (starts with
/ or ./) → set deployment.checkpoint_path: <path> and deployment.hf_model_handle: null
- HF handle (e.g.,
org/model-name) → set deployment.hf_model_handle: <handle> and deployment.checkpoint_path: null
Use WebSearch to find model card (HuggingFace, build.nvidia.com). Read it carefully, the FULL text, the devil is in the details. Extract ALL relevant configurations:
- Sampling params (
temperature, top_p)
- Context length (
deployment.extra_args: "--max-model-len <value>")
- TP/DP settings (to set them appropriately, AskUserQuestion on how many GPUs the model will be deployed)
- Reasoning config (if applicable):
- reasoning on/off: use either:
adapter_config.custom_system_prompt (like /think, /no_think) and no adapter_config.params_to_add (leave params_to_add unrelated to reasoning untouched)
adapter_config.params_to_add for payload modifier (like "chat_template_kwargs": {"enable_thinking": true/false}) and no adapter_config.custom_system_prompt and adapter_config.use_system_prompt: false (leave custom_system_prompt and use_system_prompt unrelated to reasoning untouched).
- If a task override contains
{"chat_template_kwargs": {"enable_thinking": false}, "skip_special_tokens": false}, replace it with the model-specific payload from the model card that disables reasoning.
- For pure-chat models, remove
adapter_config.params_to_add completely if the model card does not define a reasoning toggle.
- reasoning effort (if it's configurable, AskUserQuestion what reasoning effort they want)
- higher
max_new_tokens
- etc.
- Deployment-specific
extra_args for vLLM/SGLang (look for the vLLM/SGLang deployment command)
- Deployment-specific vLLM/SGLang versions (by default we use latest docker images, but you can control it with
deployment.image e.g. vLLM above vllm/vllm-openai:v0.11.0 stopped supporting rope-scaling arg used by Qwen models)
- ARM64 / non-standard GPU compatibility: The default
vllm/vllm-openai image only supports common GPU architectures. For ARM64 platforms or GPUs with non-standard compute capabilities (e.g., NVIDIA GB10 with sm_121), use NGC vLLM images instead:
- Example:
deployment.image: nvcr.io/nvidia/vllm:26.01-py3
- AskUserQuestion about their GPU architecture if the model card doesn't specify deployment constraints
- Tool-calling requirements:
- If the selected benchmarks include
agentic, you MUST configure tool calling end-to-end.
- For self-deployment, extract the exact tool-calling flags/settings from the model card (for example vLLM/SGLang tool parser flags) and apply them.
- For external endpoints, confirm the endpoint already supports tool calling before proceeding.
- Any preparation requirements (e.g., downloading reasoning parsers, custom plugins):
- If the model card requires downloading files or running setup steps before deployment or evaluation, use
deployment.pre_cmd or evaluation.pre_cmd for non-local execution.
- In
pre_cmd script:
- Use
curl instead of wget as it's more widely available in Docker containers. Example: pre_cmd: curl -L -o reasoning_parser.py https://huggingface.co/.../reasoning_parser.py
- Always use
--no-cache-dir when installing Python packages to avoid cross-device link errors in Docker containers (the pip cache and temp directories may be on different filesystems). Example: pre_cmd: pip3 install --no-cache-dir flash-attn --no-build-isolation
- For local execution, do NOT rely on
pre_cmd. Run the preparation steps yourself on the host first, then mount the resulting files/directories into the container if needed.
- Short mount examples:
- deployment:
execution.mounts.deployment: {"/absolute/path/to/reasoning_parser.py": "/vllm-workspace/reasoning_parser.py"}
- evaluation:
execution.mounts.evaluation: {"/absolute/path/to/hf_cache": "/root/.cache/huggingface"}
- Env vars:
- Use
deployment.env_vars for deployment-side settings, evaluation.env_vars for evaluation-wide settings, and evaluation.tasks[].env_vars for task-specific overrides.
- Supported value types:
host:VAR_NAME = read the value from the host env var VAR_NAME; lit:value = use the literal value directly; runtime:VAR_NAME = resolve VAR_NAME only at runtime inside the execution environment.
- Any other model-specific requirements
Remember to check evaluation.nemo_evaluator_config and evaluation.tasks.*.nemo_evaluator_config overrides too for parameters to adjust (e.g. disabling reasoning)!
Present findings, explain each setting, ask user to confirm or adjust. If no model card found, ask user directly for the above configurations.
Step 4: Fill in remaining missing values
- Find all remaining
??? missing values in the config.
- Ask the user only for values that couldn't be auto-discovered from the model card (e.g., SLURM hostname, account, output directory, MLflow/wandb tracking URI). Don't propose any defaults here. Let the user give you the values in plain text.
- Ask the user if they want to change any other defaults e.g. execution partition or walltime (if running on SLURM) or add MLflow/wandb tags (if auto-export enabled).
Step 5: Confirm tasks (iterative)
Show tasks in the current config. Loop until the user confirms the task list is final:
- Tell the user: "Run
nel ls tasks to see all available tasks".
- Ask if they want to add/remove tasks or add/remove/modify task-specific parameter overrides.
To add per-task
nemo_evaluator_config as specified by the user, e.g.:
tasks:
- name: <task>
nemo_evaluator_config:
config:
params:
temperature: <value>
max_new_tokens: <value>
...
- Apply changes.
- Show updated list and ask: "Is the task list final, or do you want to make more changes?"
Step 6: Advanced - Multi-node
There are two multi-node patterns. Ask the user which applies:
Pattern A: Multi-instance (independent instances with HAProxy)
Only if model >120B parameters or user wants more throughput. Explain: "Each node runs an independent deployment instance. HAProxy load-balances requests across all instances."
execution:
num_nodes: 4
num_instances: 4
Pattern B: Multi-node single instance (Ray TP/PP across nodes)
When a single model is too large for one node and needs pipeline parallelism across nodes. Use vllm_ray deployment config:
defaults:
- deployment: vllm_ray
execution:
num_nodes: 2
deployment:
tensor_parallel_size: 8
pipeline_parallel_size: 2
Pattern A+B combined: Multi-instance with multi-node instances
For very large models needing both cross-node parallelism AND multiple instances:
defaults:
- deployment: vllm_ray
execution:
num_nodes: 4
num_instances: 2
deployment:
tensor_parallel_size: 8
pipeline_parallel_size: 2
Multi-node performance tips
Common Confusions
num_instances controls independent deployment instances with HAProxy. data_parallel_size controls DP replicas within a single instance.
- Global data parallelism is
num_instances x data_parallel_size (e.g., 2 instances x 8 DP each = 16 replicas).
- With multi-instance,
parallelism in task config is the total concurrent requests across all instances, not per-instance.
num_nodes must be divisible by num_instances.
Step 7: Advanced - Interceptors
- Tell the user they should see: https://docs.nvidia.com/nemo/evaluator/latest/libraries/nemo-evaluator/interceptors/index.html .
- DON'T provide any general information about what interceptors typically do in API frameworks without reading the docs. If the user asks about interceptors, only then read the webpage to provide precise information.
- If the user asks you to configure some interceptor, then read the webpage of this interceptor and configure it according to the
--overrides syntax but put the values in the YAML config under evaluation.nemo_evaluator_config.config.target.api_endpoint.adapter_config (NOT under target.api_endpoint.adapter_config) instead of using CLI overrides.
By defining interceptors list you'd override the full chain of interceptors which can have unintended consequences like disabling default interceptors. That's why use the fields specified in the CLI Configuration section after the --overrides keyword to configure interceptors in the YAML config.
Documentation Errata
- The docs may show incorrect parameter names for logging. Use
max_logged_requests and max_logged_responses (NOT max_saved_* or max_*).
Step 8: Run the evaluation
Print the following commands to the user. Propose to execute them in order to confirm the config works as expected before the full run.
Important: Ensure required environment variables are available. Ask the user to provide HF_TOKEN, even if they are not using a gated model (like Llama) or dataset (like GPQA), to reduce Hugging Face rate limiting errors. Remind the user to get access to GPQA, if it's in the config ("Please, click request access for GPQA-Diamond: https://huggingface.co/datasets/Idavidrein/gpqa"), and ask them to put missing tokens or keys (e.g. HF_TOKEN, NVIDIA_API_KEY, api_key_name from the config) in a .env file in the project root. NEL automatically reads .env — no need to source it manually.
export NEMO_EVALUATOR_TRUST_PRE_CMD=1
-
Dry-run (validates config without running):
nel run --config <config_path> --dry-run
-
Test with limited samples (quick validation run):
nel run --config <config_path> -o ++evaluation.nemo_evaluator_config.config.params.limit_samples=10
For multi-instance deployments, also scale down to a single instance to validate the deployment faster:
nel run --config <config_path> \
-o execution.num_nodes=1 \
-o execution.num_instances=1 \
-o evaluation.nemo_evaluator_config.config.params.parallelism=5 \
-o ++evaluation.nemo_evaluator_config.config.params.limit_samples=10
Adjust num_nodes to match the number of nodes a single model instance needs (e.g., 2 for a model requiring 2-node Ray TP).
-
Re-run a single task (useful for debugging or re-testing after config changes):
nel run --config <config_path> -t <task_name>
Combine with -o for limited samples: nel run --config <config_path> -t <task_name> -o ++evaluation.nemo_evaluator_config.config.params.limit_samples=10
-
Full evaluation (production run):
nel run --config <config_path>
After the dry-run, check the output from nel for any problems with the config. If there are no problems, propose to first execute the test run with limited samples and then execute the full evaluation. If there are problems, resolve them before executing the full evaluation.
Monitoring Progress
After job submission, you can monitor progress using:
-
Check job status:
nel status <invocation_id>
nel info <invocation_id>
-
Stream logs (Local execution only):
nel logs <invocation_id>
Note: nel logs is not supported for SLURM execution.
-
Inspect logs via SSH (SLURM workaround):
When nel logs is unavailable (SLURM), use SSH to inspect logs directly:
First, get log locations:
nel info <invocation_id> --logs
Then, use SSH to view logs:
Check server deployment logs:
ssh <username>@<hostname> "tail -100 <log path from `nel info <invocation_id> --logs`>/server-<slurm_job_id>-*.log"
Shows vLLM server startup, model loading, and deployment errors (e.g., missing wget/curl).
Check evaluation client logs:
ssh <username>@<hostname> "tail -100 <log path from `nel info <invocation_id> --logs`>/client-<slurm_job_id>.log"
Shows evaluation progress, task execution, and results.
Check SLURM scheduler logs:
ssh <username>@<hostname> "tail -100 <log path from `nel info <invocation_id> --logs`>/slurm-<slurm_job_id>.log"
Shows job scheduling, health checks, and overall execution flow.
Search for errors:
ssh <username>@<hostname> "grep -i 'error\|warning\|failed' <log path from `nel info <invocation_id> --logs`>/*.log"
Advanced workflow: For more detailed run monitoring, debugging failed evaluations, and post-run analysis, see the launching-evals skill.
Direct users with issues to:
Now, copy this checklist and track your progress:
Config Generation Progress:
- [ ] Step 1: Check if nel is installed
- [ ] Step 2: Build the base config file
- [ ] Step 3: Configure model path and parameters
- [ ] Step 4: Fill in remaining missing values
- [ ] Step 5: Confirm tasks (iterative)
- [ ] Step 6: Advanced - Multi-node (Data Parallel)
- [ ] Step 7: Advanced - Interceptors
- [ ] Step 8: Run the evaluation