# llama.cpp/example/batched The example demonstrates batched generation from a given prompt ```bash ./llama-batched -m ./models/llama-7b-v2/ggml-model-f16.gguf -p "Hello my name is" -np 4 --kv-unified ... main: n_len = 32, n_ctx = 2048, n_parallel = 4, n_kv_req = 113 Hello my name is main: generating 4 sequences ... main: stream 0 finished main: stream 1 finished main: stream 2 finished main: stream 3 finished sequence 0: Hello my name is Shirley. I am a 25-year-old female who has been working for over 5 years as a b sequence 1: Hello my name is Renee and I'm a 32 year old female from the United States. I'm looking for a man between sequence 2: Hello my name is Diana. I am looking for a housekeeping job. I have experience with children and have my own transportation. I am sequence 3: Hello my name is Cody. I am a 3 year old neutered male. I am a very friendly cat. I am very playful and main: decoded 108 tokens in 3.57 s, speed: 30.26 t/s llama_print_timings: load time = 587.00 ms llama_print_timings: sample time = 2.56 ms / 112 runs ( 0.02 ms per token, 43664.72 tokens per second) llama_print_timings: prompt eval time = 4089.11 ms / 118 tokens ( 34.65 ms per token, 28.86 tokens per second) llama_print_timings: eval time = 0.00 ms / 1 runs ( 0.00 ms per token, inf tokens per second) llama_print_timings: total time = 4156.04 ms ``` ### Using backend samplers It is possible to run this example using backend samplers so that sampling is performed on the backend device, like a GPU. ```bash ./llama-batched \ -m models/Qwen2.5-VL-3B-Instruct-Q8_0.gguf -p "Hello my name is" \ -np 4 -kvu \ --backend_sampling --top-k 80 --backend_dist ``` The `--verbose` flag can be added to see more detailed output and also show that the backend samplers are being used.