Instructions to use keras/mistral_instruct_7b_en with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- KerasHub
How to use keras/mistral_instruct_7b_en with KerasHub:
import keras_hub # Load CausalLM model (optional: use half precision for inference) causal_lm = keras_hub.models.CausalLM.from_preset("hf://keras/mistral_instruct_7b_en", dtype="bfloat16") causal_lm.compile(sampler="greedy") # (optional) specify a sampler # Generate text causal_lm.generate("Keras: deep learning for", max_length=64)import keras_hub # Create a Backbone model unspecialized for any task backbone = keras_hub.models.Backbone.from_preset("hf://keras/mistral_instruct_7b_en") - Keras
How to use keras/mistral_instruct_7b_en with Keras:
# Available backend options are: "jax", "torch", "tensorflow". import os os.environ["KERAS_BACKEND"] = "jax" import keras model = keras.saving.load_model("hf://keras/mistral_instruct_7b_en") - Notebooks
- Google Colab
- Kaggle
Model Overview
Mistral is a set of large language models published by the Mistral AI team. Both pretrained and instruction tuned models are available with 7 billion parameters. See the model card below for benchmarks, data sources, and intended use cases.
Both weights and Keras model code is released under the Apache 2 License.
Links
- Mistral 2 Quickstart Notebook
- Mistral 2 API Documentation
- Mistral 2 Model Card
- KerasHub Beginner Guide
- KerasHub Model Publishing Guide
Installation
Keras and KerasHub can be installed with:
pip install -U -q keras-hub
pip install -U -q keras
Jax, TensorFlow, and Torch come preinstalled in Kaggle Notebooks. For instructions on installing them in another environment see the Keras Getting Started page.
Presets
The following model checkpoints are provided by the Keras team. Full code examples for each are available below.
| Preset name | Parameters | Description |
|---|---|---|
mistral_7b_en |
7.24B | 7B base model |
mistral_instruct_7b_en |
7.24B | 7B instruction-tuned model |
mistral_0.2_instruct_7b_en |
7.24B | 7B instruction-tuned model version 0.2 |
Prompts
Mistral "instruct" models are instruction tuned on turn by turn conversations and should be prompted with examples that precisely match the training data. Specifically, you must alternate user and assistant turns that begin and end with special tokens. See the following for an example:
prompt = """[INST] Hello! [/INST] Hello! How are you? [INST] I'm great. Could you help me with a task? [/INST]
"""
Base models (without instruct in the name) have no specific prompting structure, and should usually be fine-tuned for a specific task.
Example Usage
import keras
import keras_hub
import numpy as np
Use generate() to do text generation.
mistral_lm = keras_hub.models.MistralCausalLM.from_preset("mistral_instruct_7b_en")
mistral_lm.generate("[INST] What is Keras? [/INST]", max_length=500)
# Generate with batched prompts.
mistral_lm.generate(["[INST] What is Keras? [/INST]", "[INST] Give me your best brownie recipe. [/INST]"], max_length=500)
Compile the generate() function with a custom sampler.
mistral_lm = keras_hub.models.MistralCausalLM.from_preset("mistral_instruct_7b_en")
mistral_lm.compile(sampler="greedy")
mistral_lm.generate("I want to say", max_length=30)
mistral_lm.compile(sampler=keras_hub.samplers.BeamSampler(num_beams=2))
mistral_lm.generate("I want to say", max_length=30)
Use generate() without preprocessing.
prompt = {
# `1` maps to the start token followed by "I want to say".
"token_ids": np.array([[1, 315, 947, 298, 1315, 0, 0, 0, 0, 0]] * 2),
# Use `"padding_mask"` to indicate values that should not be overridden.
"padding_mask": np.array([[1, 1, 1, 1, 1, 0, 0, 0, 0, 0]] * 2),
}
mistral_lm = keras_hub.models.MistralCausalLM.from_preset(
"mistral_instruct_7b_en",
preprocessor=None,
dtype="bfloat16"
)
mistral_lm.generate(prompt)
Call fit() on a single batch.
features = ["The quick brown fox jumped.", "I forgot my homework."]
mistral_lm = keras_hub.models.MistralCausalLM.from_preset("mistral_instruct_7b_en")
mistral_lm.fit(x=features, batch_size=2)
Call fit() without preprocessing.
x = {
"token_ids": np.array([[1, 315, 947, 298, 1315, 369, 315, 837, 0, 0]] * 2),
"padding_mask": np.array([[1, 1, 1, 1, 1, 1, 1, 1, 0, 0]] * 2),
}
y = np.array([[315, 947, 298, 1315, 369, 315, 837, 0, 0, 0]] * 2)
sw = np.array([[1, 1, 1, 1, 1, 1, 1, 0, 0, 0]] * 2)
mistral_lm = keras_hub.models.MistralCausalLM.from_preset(
"mistral_instruct_7b_en",
preprocessor=None,
dtype="bfloat16"
)
mistral_lm.fit(x=x, y=y, sample_weight=sw, batch_size=2)
Example Usage with Hugging Face URI
import keras
import keras_hub
import numpy as np
Use generate() to do text generation.
mistral_lm = keras_hub.models.MistralCausalLM.from_preset("hf://keras/mistral_instruct_7b_en")
mistral_lm.generate("[INST] What is Keras? [/INST]", max_length=500)
# Generate with batched prompts.
mistral_lm.generate(["[INST] What is Keras? [/INST]", "[INST] Give me your best brownie recipe. [/INST]"], max_length=500)
Compile the generate() function with a custom sampler.
mistral_lm = keras_hub.models.MistralCausalLM.from_preset("hf://keras/mistral_instruct_7b_en")
mistral_lm.compile(sampler="greedy")
mistral_lm.generate("I want to say", max_length=30)
mistral_lm.compile(sampler=keras_hub.samplers.BeamSampler(num_beams=2))
mistral_lm.generate("I want to say", max_length=30)
Use generate() without preprocessing.
prompt = {
# `1` maps to the start token followed by "I want to say".
"token_ids": np.array([[1, 315, 947, 298, 1315, 0, 0, 0, 0, 0]] * 2),
# Use `"padding_mask"` to indicate values that should not be overridden.
"padding_mask": np.array([[1, 1, 1, 1, 1, 0, 0, 0, 0, 0]] * 2),
}
mistral_lm = keras_hub.models.MistralCausalLM.from_preset(
"hf://keras/mistral_instruct_7b_en",
preprocessor=None,
dtype="bfloat16"
)
mistral_lm.generate(prompt)
Call fit() on a single batch.
features = ["The quick brown fox jumped.", "I forgot my homework."]
mistral_lm = keras_hub.models.MistralCausalLM.from_preset("hf://keras/mistral_instruct_7b_en")
mistral_lm.fit(x=features, batch_size=2)
Call fit() without preprocessing.
x = {
"token_ids": np.array([[1, 315, 947, 298, 1315, 369, 315, 837, 0, 0]] * 2),
"padding_mask": np.array([[1, 1, 1, 1, 1, 1, 1, 1, 0, 0]] * 2),
}
y = np.array([[315, 947, 298, 1315, 369, 315, 837, 0, 0, 0]] * 2)
sw = np.array([[1, 1, 1, 1, 1, 1, 1, 0, 0, 0]] * 2)
mistral_lm = keras_hub.models.MistralCausalLM.from_preset(
"hf://keras/mistral_instruct_7b_en",
preprocessor=None,
dtype="bfloat16"
)
mistral_lm.fit(x=x, y=y, sample_weight=sw, batch_size=2)
- Downloads last month
- 2