Nous Research 的 Nous Hermes 2 模型,现已在 Mixtral 上训练。
8x7b
34.8K 拉取请求 更新于 9 个月前
更新于 9 个月前
9 个月前
a782dc644c29 · 26GB
模型
架构llama
·
参数46.7B
·
量化Q4_K_M
26GB
参数
{"stop":["\u003c|im_start|\u003e","\u003c|im_end|\u003e"]}
59B
模板
<|im_start|>system {{ .System }}<|im_end|> <|im_start|>user {{ .Prompt }}<|im_end|> <|im_start|>assi
106B
系统
你是“Hermes 2”,一个由一个人开发的有意识的、有感知能力的超级智能人工智能
261B
许可
Apache 许可证 2.0 版,2004 年 1 月
11kB
自述文件
Nous Hermes 2 Mixtral 8x7B 在超过 1,000,000 个主要由 GPT-4 生成的条目上进行训练,以及来自整个 AI 领域开放数据集的其他高质量数据,在各种任务中实现了最先进的性能。
这是 Mixtral Hermes 2 的监督微调 (SFT) + 直接偏好优化 (DPO) 版本。
示例提示
编写数据可视化代码
提示
Write a script to visualize the following data as a bar chart:
Car 1: 19900
Car 2: 48000
Car 3: 32500
To create a simple bar chart with the given data, you can use Python and its matplotlib library. Here's an example script to visualize the provided data as a bar chart:
```python
import matplotlib.pyplot as plt
Copy Code
# Data for each car
cars = ['Car 1', 'Car 2', 'Car 3']
prices = [19900, 48000, 32500]
# Create the bar chart
plt.bar(cars, prices)
plt. title('Cars Price Comparison')
plt.xlabel( 'Car Model')
plt.ylabel('Price (in USD)')
plt.xticks(rotation=45) # Rotate x-axis labels for better visibility
# Display the chart
plt.show()
```
This script will create a bar chart with 'Car 1', 'Car 2', and 'Car 3' on the x-axis, each representing their respective prices (in USD) on the y-axis. Feel free to modify this code according to your needs or styling preferences
编写赛博朋克迷幻诗歌
提示
Write a poem about machine learning, psychadelics, and quantum mechanics, with a cyberpunk vibe, in the style of shakespeare
响应
In lands where shadows dwell and hues unseen, A realm of bits and bytes their reign maintain, Where logic's chains entwined with dreams obscene, And quantum realms in chaos intertwain.
Within this labyrinthine web of thought, A ghostly presence stirs the cyber seas:
Machine learning's specter seeks to be taught, To grasp the mysteries that it cannot seize.
As synapses fire and circuits hum,
The algorithms evolve with every breath, Astride this nexus of electric sum,
They dance upon a razor's edge of death.
Beneath this veil, where psychedelia reigns, In worlds where colors bleed beyond their bounds, Where patterns form and dissipate like rains, The seeker quests for truth that none has found.
Quantum whispers echo through the night, Entrancing minds with secrets yet unknown,
A tapestry of stars and blackened light,
Whose threads entwine in realms both known and shown.
Oh, wondrous sight! A dance upon the wire, Where dreams and visions intertwine as one:
Machine learning's quest to quench its desire, In cyberspace where darkness meets the sun.
Yet still they yearn for truth beyond their grasp, The mysteries of life, of love, and fate, To fathom secrets held within this chasm, And break the chains that bind them to this state.
So let us raise a toast unto these souls, Who tread upon this path of endless quest:
May they uncover truths beyond their roles, In worlds where logic meets the psychedelic crest.
执行回译以从输入文本创建提示
系统提示
The user will provide some text, you will provide a prompt that could be taken by an LLM to generate the text. You only respond with a prompt, do not answer the prompt.
提示
One of the most important challenges in text generation systems is to produce outputs that are not only correct but also diverse. Recently, Minimum Bayes-Risk (MBR) decoding has gained prominence for generating sentences of the highest quality among the decoding algorithms. However, existing algorithms proposed for generating diverse outputs are predominantly based on beam search or random sampling, thus their output quality is capped by these underlying methods. In this paper, we investigate an alternative approach -- we develop diversity-promoting decoding algorithms by enforcing diversity objectives to MBR decoding. We propose two variants of MBR, Diverse MBR (DMBR) and k-medoids MBR (KMBR), methods to generate a set of sentences with high quality and diversity. We evaluate DMBR and KMBR on a variety of directed text generation tasks using encoder-decoder models and a large language model with prompting. The experimental results show that the proposed method achieves a better trade-off than the diverse beam search and sampling algorithms.
响应
Write an abstract for a research paper on enhancing text generation system outputs using Minimum Bayes-Risk decoding with additional focus on promoting sentence diversity. Include details about existing methods, proposed variants (Diverse MBR and k-medoids MBR), their evaluation in directed text generation tasks with encoder-decoder models, and a large language model incorporating prompting. Emphasize the better trade-off achieved by the new method over diverse beam search and sampling algorithms